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import asyncio import contextlib from typing import Dict, Any, Optional import aioboto3 import botocore import statey as st SubnetConfigType = st.Struct[ "vpc_id" : st.String, "cidr_block" : st.String, # Optional args "ipv6_cidr_block" : ~st.String, "map_public_ip_on_launch" : st.Boolean(default=False), "assign_ipv6_address_on_creation" : st.Boolean(default=False), # Missing: tags ] SubnetType = st.Struct[ "vpc_id" : st.String, "cidr_block" : st.String, "ipv6_association_id" : ~st.String, "ipv6_cidr_block" : ~st.String, "map_public_ip_on_launch" : st.Boolean, "assign_ipv6_address_on_creation" : st.Boolean, # Missing: tags "id" : st.String, "owner_id" : st.Integer, ] class SubnetMachine(st.SimpleMachine): """ Maching representing an AWS subnet """ UP = st.State("UP", SubnetConfigType, SubnetType) @contextlib.asynccontextmanager @contextlib.asynccontextmanager @staticmethod async def create_task(self, config: SubnetConfigType) -> SubnetType: """ Create a new subnet """ async with self.resource_ctx() as ec2, self.client_ctx() as client: kws = {"CidrBlock": config["cidr_block"], "VpcId": config["vpc_id"]} if config["ipv6_cidr_block"] is not None: kws["Ipv6CidrBlock"] = config["ipv6_cidr_block"] subnet = await ec2.create_subnet(**kws) yield await self.convert_instance(subnet) map_public_ip_on_launch = await subnet.map_public_ip_on_launch if map_public_ip_on_launch != config["map_public_ip_on_launch"]: await client.modify_subnet_attribute( MapPublicIpOnLaunch={"Value": config["map_public_ip_on_launch"]}, SubnetId=subnet.id, ) await subnet.load() yield await self.convert_instance(subnet) assign_ipv6_address_on_creation = ( await subnet.assign_ipv6_address_on_creation ) if ( assign_ipv6_address_on_creation != config["assign_ipv6_address_on_creation"] ): await client.modify_subnet_attribute( AssignIpv6AddressOnCreation={ "Value": config["assign_ipv6_address_on_creation"] }, SubnetId=subnet.id, ) await subnet.load() yield await self.convert_instance(subnet) async def delete_task(self, current: SubnetType) -> st.EmptyType: """ Delete the subnet """ async with self.resource_ctx() as ec2: subnet = await ec2.Subnet(current["id"]) await subnet.delete() subnet_resource = st.MachineResource("aws_subnet", SubnetMachine) Subnet = subnet_resource.s RESOURCES = [subnet_resource] def register(registry: Optional["Registry"] = None) -> None: """ Register resources in this module """ if registry is None: registry = st.registry for resource in RESOURCES: registry.register(resource)
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class constants: """Class of constants for each component of detector """ class bgsub: """Background subtraction/segmentation mod [str] the segmentation model (MOG2, KNN, GMG) """ mod = 'MOG2' class HSV: """HSV inRange filtering maximum values and initial values """ max_value = 255 max_value_H = 360//2 low_H = 40 low_S = 30 low_V = 30 high_H = 75 high_S = 255 high_V = 255 low_H_name = 'Low H' low_S_name = 'Low S' low_V_name = 'Low V' high_H_name = 'High H' high_S_name = 'High S' high_V_name = 'High V' class window: """Window control names of windows """ window1 = 'Altered' window2 = 'Original' class asth: """Aesthetics font [enum int] font used for description text [bool] should text be imprinted on image? """ font = 0 text = False class cntr: """Controls for program next_k - next image prev_k - prev image save - save single image (in mode) save_all - save all images (in mode) exit_k - exit the program dice - calculate dice value dice_more - show all dice values based on dataset m1_k etc. - mode selection modes [dict] dictionary with mode names """ next_k = ord('m') prev_k = ord('n') save = ord('s') save_all = ord('z') exit_k = 27 dice = ord('d') dice_more = ord('f') m1_k = ord('1') m2_k = ord('2') m3_k = ord('3') m4_k = ord('4') m5_k = ord('5') modes = { 0: 'original', 1: 'hsv_filter', 2: 'ws_mask', 3: 'ws_mask_bg', 4: 'fgbg_segm', 5: 'ws_fgbg_segm' } class xtra: """Ends and odds disco [bool] random colors for masks on each loop? show_save_all [bool] run saving all in foreground? """ disco = False show_save_all = True
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import logging from pathlib import Path import time import boto3 # This module requires a directory `.aws/` containing credentials in the home directory, # or environment variables `AWS_ACCESS_KEY_ID`, and `AWS_SECRET_ACCESS_KEY`. logger = logging.getLogger(__name__)
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import numpy as np import cudamat as cm
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from typing import Union, Dict, List, Any, Tuple, Optional import json, tempfile, os, logging, re, shutil, mimetypes, good from tornado import httpclient, web, queues from storitch import utils, config from storitch.decorators import run_on_executor from wand import image, exceptions @web.stream_request_body def thumbnail(path: str) -> bool: ''' Specify the path and add a "@" followed by the arguments. This allows us to easily get the original file, make the changes, save the file with the full path, so the server never has to do the operation again, as long as the arguments are precisely the same. Arguments can be specified as followed: SXx - Width, keeps aspect ratio SYx - Height, keeps aspect ration. Ignored if SX is specified. ROTATEx - Number of degrees you wise to rotate the image. Supports negative numbers. RESx - Resolution, used for PDF files, the higher the number, the better the quality. PAGEx - Page index in the PDF document. The file format can be specified by ending the path with E.g. .jpg, .png, .tiff, etc. The arguments can be separated with _ or just don't separate them. Works either way. Example: /foo/14bc...@SX1024_ROTATE90.png Resizes the image to a width of 1024, rotates it 90 degrees and converts it to a PNG file. :param path: str ''' p = path.split('@') if len(p) != 2: return False if os.path.exists(path): return True size_match, rotate_match, resolution_match, \ page_match, format_match = __parse_arguments(p[1]) # a specific page in a PDF document if page_match and page_match.group(1) != None: page = '[{}]'.format(page_match.group(1)) else: # Prevent a dicom file or pdf file from extracting multiple images page = '[0]' o = { 'filename': p[0]+page } if resolution_match and resolution_match.group(1) != None: o['resolution'] = int(resolution_match.group(1)) with image.Image(**o) as img: if size_match: # resize, keep aspect ratio if size_match.group(1) != None:# width img.transform(resize=size_match.group(1)) elif size_match.group(2) != None:# height img.transform(resize='x'+size_match.group(2)) if rotate_match: if rotate_match.group(1) != None: img.rotate(int(rotate_match.group(1))) if format_match: img.format = format_match.group(1) img.save(filename=path) return True
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2.384749
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#!/usr/bin/env python3 # -*- coding: utf-8 -*- __author__ = "Lucas Miguel S Ponce" __email__ = "lucasmsp@gmail.com" from ddf_library.bases.metadata import Status, OPTGroup from ddf_library.bases.context_base import ContextBase from ddf_library.ddf import DDF from ddf_library.bases.ddf_model import ModelDDF from ddf_library.utils import generate_info, read_stage_file, \ create_stage_files, save_stage_file from pycompss.api.api import compss_wait_on, compss_delete_object from pycompss.api.task import task from pycompss.functions.reduce import merge_reduce from pycompss.api.parameter import FILE_IN, COLLECTION_IN import pandas as pd import numpy as np __all__ = ['PageRank'] # TODO: this algorithm can be optimized class PageRank(ModelDDF): # noinspection PyUnresolvedReferences """ PageRank is one of the methods Google uses to determine a page's relevance or importance. The idea that Page Rank brought up was that, the importance of any web page can be judged by looking at the pages that link to it. PageRank can be utilized in others domains. For example, may also be used as a methodology to measure the apparent impact of a community. .. note: This parallel implementation assumes that the list of unique vertex can be fit in memory. :Example: >>> pr = PageRank(damping_factor=0.85) >>> ddf2 = pr.transform(ddf1, inlink_col='col1', outlink_col='col2') """ def __init__(self, damping_factor=0.85, max_iters=100): """ :param damping_factor: Default damping factor is 0.85; :param max_iters: Maximum number of iterations (default is 100). """ super(PageRank, self).__init__() self.inlink_col = None self.outlink_col = None self.max_iters = max_iters self.damping_factor = damping_factor def transform(self, data, outlink_col, inlink_col): """ Generates the PageRank's result. :param data: DDF :param outlink_col: Out-link vertex; :param inlink_col: In-link vertex; :return: DDF with Vertex and Rank columns """ df, nfrag, tmp = self._ddf_initial_setup(data) self.inlink_col = inlink_col self.outlink_col = outlink_col col1 = 'Vertex' col2 = 'Rank' """ Load all URL's from the data and initialize their neighbors. Initialize each page’s rank to 1.0. """ adj_list = [{} for _ in range(nfrag)] rank_list = [{} for _ in range(nfrag)] counts_in = [{} for _ in range(nfrag)] for i in range(nfrag): adj_list[i], rank_list[i], counts_in[i] = \ _pr_create_adjlist(df[i], inlink_col, outlink_col) counts_in = merge_reduce(_merge_counts, counts_in) for i in range(nfrag): adj_list[i] = _pr_update_adjlist(adj_list[i], counts_in) compss_delete_object(counts_in) for iteration in range(self.max_iters): """Calculate the partial contribution of each vertex.""" contributions = [_calc_contribuitions(adj_list[i], rank_list[i]) for i in range(nfrag)] merged_c = merge_reduce(_merge_counts, contributions) """Update each vertex rank in the fragment.""" rank_list = [_update_rank(rank_list[i], merged_c, self.damping_factor) for i in range(nfrag)] merged_table = merge_ranks(rank_list, col1, col2) result, info = _pagerank_split(merged_table, nfrag) new_state_uuid = ContextBase\ .ddf_add_task(self.name, status=Status.STATUS_COMPLETED, opt=OPTGroup.OPT_OTHER, info_data=info, parent=[tmp.last_uuid], result=result, function=self.transform, parameters=data) return DDF(last_uuid=new_state_uuid) @task(returns=3, data=FILE_IN) @task(returns=1) def _merge_counts(counts1, counts2): """ Merge the frequency of each vertex. .. note:: It assumes that the frequency list can be fitted in memory. """ for v_out in counts2: if v_out in counts1: counts1[v_out] += counts2[v_out] else: counts1[v_out] = counts2[v_out] return counts1 @task(returns=1) def _pr_update_adjlist(adj1, counts_in): """Update the frequency of vertex in each fragment.""" for key in adj1: adj1[key][1] = counts_in[key] return adj1 @task(returns=1) def _calc_contribuitions(adj, ranks): """Calculate the partial contribution of each vertex.""" contrib = {} for key in adj: urls = adj[key][0] num_neighbors = adj[key][1] rank = ranks[key] for url in urls: if url not in contrib: # out = contrib contrib[url] = rank/num_neighbors else: contrib[url] += rank/num_neighbors return contrib @task(returns=1) def _update_rank(ranks, contrib, factor): """Update the rank of each vertex in the fragment.""" bo = 1.0 - factor for key in contrib: if key in ranks: ranks[key] = bo + factor*contrib[key] return ranks @task(returns=1, dfs=COLLECTION_IN) def merge_ranks(dfs, c1, c2): """Create the final result. Merge and remove duplicates vertex.""" dfs = [pd.DataFrame(ranks.items(), columns=[c1, c2]) for ranks in dfs] dfs = pd.concat(dfs, ignore_index=True)\ .drop_duplicates(ignore_index=True)\ .sort_values(['Rank'], ascending=False, ignore_index=True) return dfs def _pagerank_split(result, nfrag): """Split the list of vertex into nfrag parts. Note: the list of unique vertex and their ranks must be fit in memory. """ result = compss_wait_on(result) result = np.array_split(result, nfrag) outfiles = create_stage_files(nfrag) info = [0] * nfrag for f, table in enumerate(result): save_stage_file(outfiles[f], table) info[f] = generate_info(table, f) return outfiles, info
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2.234832
2,802
import PySimpleGUI as sg from uart_serial import uart arduino = uart()
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2.807692
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# Generated by Django 2.2.6 on 2019-11-27 20:28 from django.db import migrations, models
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2.84375
32
from django.contrib.auth.models import User from tinymce.models import HTMLField from django.db import models # Create your models here.
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3.564103
39
"""empty message Revision ID: 6564c80d1598 Revises: c3c2dc9000d3 Create Date: 2021-06-19 17:03:45.811885 """ from alembic import op import sqlalchemy as sa # revision identifiers, used by Alembic. revision = '6564c80d1598' down_revision = 'c3c2dc9000d3' branch_labels = None depends_on = None
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2.430894
123
#!/usr/bin/env python try: from setuptools import setup except ImportError: from distutils.core import setup try: import pypandoc long_description = pypandoc.convert('README.md', 'rst') except (IOError, ImportError): with open('README.md') as f: long_description = f.read() from xl import __str_version__, __author__ setup( name='xl', version=__str_version__, description='A nice way of generating excel formulas in python.', long_description=long_description, url='https://github.com/tizz98/xl', download_url='https://github.com/tizz98/xl/tarball/%s' % ( __str_version__ ), author=__author__, author_email='elijah@elijahwilson.me', license='MIT', packages=['xl'], keywords='xl excel formulas formula formulae', zip_safe=True, classifiers=[ 'Development Status :: 4 - Beta', 'Intended Audience :: Developers', 'Topic :: Software Development :: Libraries', 'License :: OSI Approved :: MIT License', 'Programming Language :: Python :: 2', 'Programming Language :: Python :: 2.6', 'Programming Language :: Python :: 2.7', ], )
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2.567391
460
# all, any for group condition check # Manas Dash # 22th July 2020 # think of any (or) and all (and) as series of logical or and and operators healthy_percentage = 100 have_money = 0 no_of_friends = 5 mental_happiness = [ healthy_percentage > 50, have_money > 0, no_of_friends >= 1 ] if all(mental_happiness): print('happiness inside') if any(mental_happiness): print('happiness outside') # happiness outside
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3
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from __future__ import annotations import abc from typing import List, Text, TypeVar, Generic from abc import ABC from functools import singledispatchmethod from dataclasses import dataclass from zx64c.types import Type, Callable T = TypeVar("T") @SjasmplusSnapshotProgram.__eq__.register @Program.__eq__.register @dataclass @Function.__eq__.register @Block.__eq__.register @If.__eq__.register @Print.__eq__.register @Let.__eq__.register @Assignment.__eq__.register @Return.__eq__.register @Equal.__eq__.register @NotEqual.__eq__.register @Addition.__eq__.register @Subtraction.__eq__.register @Negation.__eq__.register @FunctionCall.__eq__.register @Identifier.__eq__.register @Unsignedint.__eq__.register @Bool.__eq__.register
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2.666667
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import datetime import logging import os from threading import Thread import cv2 from lib.cleanup import SegmentCleanup from lib.helpers import draw_objects from lib.mqtt.camera import MQTTCamera from lib.segments import Segments LOGGER = logging.getLogger(__name__)
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3.26506
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#!/usr/bin/env python __author__ = "bt3" if __name__ == '__main__': test_setdef()
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from Foundation import * import objc import sys print "PyTestPlugin", __name__ print u"[inside] currentBundle %r" % (objc.currentBundle(),)
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3.133333
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from __future__ import annotations from typing import Sequence, Union, Optional from securify.grammar import abstract_production, production @abstract_production @abstract_production @production @production @production @production
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#!/usr/bin/env python3 from os import environ from json import dumps
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3.083333
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from argparse import ArgumentParser from sys import exit, stderr
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# -*- coding:utf-8 -*- # Copyright (C) 2020. Huawei Technologies Co., Ltd. All rights reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Vega's methods.""" __all__ = [ "set_backend", "is_cpu_device", "is_gpu_device", "is_npu_device", "is_ms_backend", "is_tf_backend", "is_torch_backend", "get_devices", "ClassFactory", "ClassType", "FileOps", "run", "init_cluster_args", "module_existed", "TrialAgent", "get_network", "get_dataset", "get_trainer", "get_quota", ] __version__ = "1.8.0" import sys if sys.version_info < (3, 6): sys.exit('Sorry, Python < 3.6 is not supported.') from .common.backend_register import set_backend, is_cpu_device, is_gpu_device, is_npu_device, \ is_ms_backend, is_tf_backend, is_torch_backend, get_devices from .common.class_factory import ClassFactory, ClassType from .common.file_ops import FileOps from .core import run, init_cluster_args, module_existed from .trainer.trial_agent import TrialAgent from . import quota def get_network(name, **kwargs): """Return network.""" return ClassFactory.get_cls(ClassType.NETWORK, name)(**kwargs) def get_dataset(name, **kwargs): """Return dataset.""" return ClassFactory.get_cls(ClassType.DATASET, name)(**kwargs) def get_trainer(name="Trainer", **kwargs): """Return trainer.""" return ClassFactory.get_cls(ClassType.TRAINER, name)(**kwargs) def get_quota(**kwargs): """Return quota.""" return ClassFactory.get_cls(ClassType.QUOTA, "Quota")(**kwargs)
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# -*- coding: utf-8 -*- """ Defines unit tests for :mod:`colour.models.cie_lab` module. """ from __future__ import division, unicode_literals import numpy as np import unittest from itertools import permutations from colour.models import XYZ_to_Lab, Lab_to_XYZ, Lab_to_LCHab, LCHab_to_Lab from colour.utilities import domain_range_scale, ignore_numpy_errors __author__ = 'Colour Developers' __copyright__ = 'Copyright (C) 2013-2019 - Colour Developers' __license__ = 'New BSD License - https://opensource.org/licenses/BSD-3-Clause' __maintainer__ = 'Colour Developers' __email__ = 'colour-developers@colour-science.org' __status__ = 'Production' __all__ = [ 'TestXYZ_to_Lab', 'TestLab_to_XYZ', 'TestLab_to_LCHab', 'TestLCHab_to_Lab' ] class TestXYZ_to_Lab(unittest.TestCase): """ Defines :func:`colour.models.cie_lab.XYZ_to_Lab` definition unit tests methods. """ def test_XYZ_to_Lab(self): """ Tests :func:`colour.models.cie_lab.XYZ_to_Lab` definition. """ np.testing.assert_almost_equal( XYZ_to_Lab(np.array([0.20654008, 0.12197225, 0.05136952])), np.array([41.52787529, 52.63858304, 26.92317922]), decimal=7) np.testing.assert_almost_equal( XYZ_to_Lab(np.array([0.14222010, 0.23042768, 0.10495772])), np.array([55.11636304, -41.08791787, 30.91825778]), decimal=7) np.testing.assert_almost_equal( XYZ_to_Lab(np.array([0.07818780, 0.06157201, 0.28099326])), np.array([29.80565520, 20.01830466, -48.34913874]), decimal=7) np.testing.assert_almost_equal( XYZ_to_Lab( np.array([0.20654008, 0.12197225, 0.05136952]), np.array([0.44757, 0.40745])), np.array([41.52787529, 38.48089305, -5.73295122]), decimal=7) np.testing.assert_almost_equal( XYZ_to_Lab( np.array([0.20654008, 0.12197225, 0.05136952]), np.array([0.34570, 0.35850])), np.array([41.52787529, 51.19354174, 19.91843098]), decimal=7) np.testing.assert_almost_equal( XYZ_to_Lab( np.array([0.20654008, 0.12197225, 0.05136952]), np.array([0.34570, 0.35850, 1.00000])), np.array([41.52787529, 51.19354174, 19.91843098]), decimal=7) def test_n_dimensional_XYZ_to_Lab(self): """ Tests :func:`colour.models.cie_lab.XYZ_to_Lab` definition n-dimensional support. """ XYZ = np.array([0.20654008, 0.12197225, 0.05136952]) illuminant = np.array([0.31270, 0.32900]) Lab = XYZ_to_Lab(XYZ, illuminant) XYZ = np.tile(XYZ, (6, 1)) Lab = np.tile(Lab, (6, 1)) np.testing.assert_almost_equal( XYZ_to_Lab(XYZ, illuminant), Lab, decimal=7) illuminant = np.tile(illuminant, (6, 1)) np.testing.assert_almost_equal( XYZ_to_Lab(XYZ, illuminant), Lab, decimal=7) XYZ = np.reshape(XYZ, (2, 3, 3)) illuminant = np.reshape(illuminant, (2, 3, 2)) Lab = np.reshape(Lab, (2, 3, 3)) np.testing.assert_almost_equal( XYZ_to_Lab(XYZ, illuminant), Lab, decimal=7) def test_domain_range_scale_XYZ_to_Lab(self): """ Tests :func:`colour.models.cie_lab.XYZ_to_Lab` definition domain and range scale support. """ XYZ = np.array([0.20654008, 0.12197225, 0.05136952]) illuminant = np.array([0.31270, 0.32900]) Lab = XYZ_to_Lab(XYZ, illuminant) d_r = (('reference', 1, 1), (1, 1, 0.01), (100, 100, 1)) for scale, factor_a, factor_b in d_r: with domain_range_scale(scale): np.testing.assert_almost_equal( XYZ_to_Lab(XYZ * factor_a, illuminant), Lab * factor_b, decimal=7) @ignore_numpy_errors def test_nan_XYZ_to_Lab(self): """ Tests :func:`colour.models.cie_lab.XYZ_to_Lab` definition nan support. """ cases = [-1.0, 0.0, 1.0, -np.inf, np.inf, np.nan] cases = set(permutations(cases * 3, r=3)) for case in cases: XYZ = np.array(case) illuminant = np.array(case[0:2]) XYZ_to_Lab(XYZ, illuminant) class TestLab_to_XYZ(unittest.TestCase): """ Defines :func:`colour.models.cie_lab.Lab_to_XYZ` definition unit tests methods. """ def test_Lab_to_XYZ(self): """ Tests :func:`colour.models.cie_lab.Lab_to_XYZ` definition. """ np.testing.assert_almost_equal( Lab_to_XYZ(np.array([41.52787529, 52.63858304, 26.92317922])), np.array([0.20654008, 0.12197225, 0.05136952]), decimal=7) np.testing.assert_almost_equal( Lab_to_XYZ(np.array([55.11636304, -41.08791787, 30.91825778])), np.array([0.14222010, 0.23042768, 0.10495772]), decimal=7) np.testing.assert_almost_equal( Lab_to_XYZ(np.array([29.80565520, 20.01830466, -48.34913874])), np.array([0.07818780, 0.06157201, 0.28099326]), decimal=7) np.testing.assert_almost_equal( Lab_to_XYZ( np.array([41.52787529, 38.48089305, -5.73295122]), np.array([0.44757, 0.40745])), np.array([0.20654008, 0.12197225, 0.05136952]), decimal=7) np.testing.assert_almost_equal( Lab_to_XYZ( np.array([41.52787529, 51.19354174, 19.91843098]), np.array([0.34570, 0.35850])), np.array([0.20654008, 0.12197225, 0.05136952]), decimal=7) np.testing.assert_almost_equal( Lab_to_XYZ( np.array([41.52787529, 51.19354174, 19.91843098]), np.array([0.34570, 0.35850, 1.00000])), np.array([0.20654008, 0.12197225, 0.05136952]), decimal=7) def test_n_dimensional_Lab_to_XYZ(self): """ Tests :func:`colour.models.cie_lab.Lab_to_XYZ` definition n-dimensional support. """ Lab = np.array([41.52787529, 52.63858304, 26.92317922]) illuminant = np.array([0.31270, 0.32900]) XYZ = Lab_to_XYZ(Lab, illuminant) Lab = np.tile(Lab, (6, 1)) XYZ = np.tile(XYZ, (6, 1)) np.testing.assert_almost_equal( Lab_to_XYZ(Lab, illuminant), XYZ, decimal=7) illuminant = np.tile(illuminant, (6, 1)) np.testing.assert_almost_equal( Lab_to_XYZ(Lab, illuminant), XYZ, decimal=7) Lab = np.reshape(Lab, (2, 3, 3)) illuminant = np.reshape(illuminant, (2, 3, 2)) XYZ = np.reshape(XYZ, (2, 3, 3)) np.testing.assert_almost_equal( Lab_to_XYZ(Lab, illuminant), XYZ, decimal=7) def test_domain_range_scale_Lab_to_XYZ(self): """ Tests :func:`colour.models.cie_lab.Lab_to_XYZ` definition domain and range scale support. """ Lab = np.array([41.52787529, 52.63858304, 26.92317922]) illuminant = np.array([0.31270, 0.32900]) XYZ = Lab_to_XYZ(Lab, illuminant) d_r = (('reference', 1, 1), (1, 0.01, 1), (100, 1, 100)) for scale, factor_a, factor_b in d_r: with domain_range_scale(scale): np.testing.assert_almost_equal( Lab_to_XYZ(Lab * factor_a, illuminant), XYZ * factor_b, decimal=7) @ignore_numpy_errors def test_nan_Lab_to_XYZ(self): """ Tests :func:`colour.models.cie_lab.Lab_to_XYZ` definition nan support. """ cases = [-1.0, 0.0, 1.0, -np.inf, np.inf, np.nan] cases = set(permutations(cases * 3, r=3)) for case in cases: Lab = np.array(case) illuminant = np.array(case[0:2]) Lab_to_XYZ(Lab, illuminant) class TestLab_to_LCHab(unittest.TestCase): """ Defines :func:`colour.models.cie_lab.Lab_to_LCHab` definition unit tests methods. """ def test_Lab_to_LCHab(self): """ Tests :func:`colour.models.cie_lab.Lab_to_LCHab` definition. """ np.testing.assert_almost_equal( Lab_to_LCHab(np.array([41.52787529, 52.63858304, 26.92317922])), np.array([41.52787529, 59.12425901, 27.08848784]), decimal=7) np.testing.assert_almost_equal( Lab_to_LCHab(np.array([55.11636304, -41.08791787, 30.91825778])), np.array([55.11636304, 51.42135412, 143.03889556]), decimal=7) np.testing.assert_almost_equal( Lab_to_LCHab(np.array([29.80565520, 20.01830466, -48.34913874])), np.array([29.80565520, 52.32945383, 292.49133666]), decimal=7) def test_n_dimensional_Lab_to_LCHab(self): """ Tests :func:`colour.models.cie_lab.Lab_to_LCHab` definition n-dimensional arrays support. """ Lab = np.array([41.52787529, 52.63858304, 26.92317922]) LCHab = Lab_to_LCHab(Lab) Lab = np.tile(Lab, (6, 1)) LCHab = np.tile(LCHab, (6, 1)) np.testing.assert_almost_equal(Lab_to_LCHab(Lab), LCHab, decimal=7) Lab = np.reshape(Lab, (2, 3, 3)) LCHab = np.reshape(LCHab, (2, 3, 3)) np.testing.assert_almost_equal(Lab_to_LCHab(Lab), LCHab, decimal=7) def test_domain_range_scale_Lab_to_LCHab(self): """ Tests :func:`colour.models.cie_lab.Lab_to_LCHab` definition domain and range scale support. """ Lab = np.array([41.52787529, 52.63858304, 26.92317922]) LCHab = Lab_to_LCHab(Lab) d_r = (('reference', 1, 1), (1, 0.01, np.array([0.01, 0.01, 1 / 360])), (100, 1, np.array([1, 1, 1 / 3.6]))) for scale, factor_a, factor_b in d_r: with domain_range_scale(scale): np.testing.assert_almost_equal( Lab_to_LCHab(Lab * factor_a), LCHab * factor_b, decimal=7) @ignore_numpy_errors def test_nan_Lab_to_LCHab(self): """ Tests :func:`colour.models.cie_lab.Lab_to_LCHab` definition nan support. """ cases = [-1.0, 0.0, 1.0, -np.inf, np.inf, np.nan] cases = set(permutations(cases * 3, r=3)) for case in cases: Lab = np.array(case) Lab_to_LCHab(Lab) class TestLCHab_to_Lab(unittest.TestCase): """ Defines :func:`colour.models.cie_lab.LCHab_to_Lab` definition unit tests methods. """ def test_LCHab_to_Lab(self): """ Tests :func:`colour.models.cie_lab.LCHab_to_Lab` definition. """ np.testing.assert_almost_equal( LCHab_to_Lab(np.array([41.52787529, 59.12425901, 27.08848784])), np.array([41.52787529, 52.63858304, 26.92317922]), decimal=7) np.testing.assert_almost_equal( LCHab_to_Lab(np.array([55.11636304, 51.42135412, 143.03889556])), np.array([55.11636304, -41.08791787, 30.91825778]), decimal=7) np.testing.assert_almost_equal( LCHab_to_Lab(np.array([29.80565520, 52.32945383, 292.49133666])), np.array([29.80565520, 20.01830466, -48.34913874]), decimal=7) def test_n_dimensional_LCHab_to_Lab(self): """ Tests :func:`colour.models.cie_lab.LCHab_to_Lab` definition n-dimensional arrays support. """ LCHab = np.array([41.52787529, 59.12425901, 27.08848784]) Lab = LCHab_to_Lab(LCHab) LCHab = np.tile(LCHab, (6, 1)) Lab = np.tile(Lab, (6, 1)) np.testing.assert_almost_equal(LCHab_to_Lab(LCHab), Lab, decimal=7) LCHab = np.reshape(LCHab, (2, 3, 3)) Lab = np.reshape(Lab, (2, 3, 3)) np.testing.assert_almost_equal(LCHab_to_Lab(LCHab), Lab, decimal=7) def test_domain_range_scale_LCHab_to_Lab(self): """ Tests :func:`colour.models.cie_lab.LCHab_to_Lab` definition domain and range scale support. """ LCHab = np.array([41.52787529, 59.12425901, 27.08848784]) Lab = LCHab_to_Lab(LCHab) d_r = (('reference', 1, 1), (1, np.array([0.01, 0.01, 1 / 360]), 0.01), (100, np.array([1, 1, 1 / 3.6]), 1)) for scale, factor_a, factor_b in d_r: with domain_range_scale(scale): np.testing.assert_almost_equal( LCHab_to_Lab(LCHab * factor_a), Lab * factor_b, decimal=7) @ignore_numpy_errors def test_nan_LCHab_to_Lab(self): """ Tests :func:`colour.models.cie_lab.LCHab_to_Lab` definition nan support. """ cases = [-1.0, 0.0, 1.0, -np.inf, np.inf, np.nan] cases = set(permutations(cases * 3, r=3)) for case in cases: LCHab = np.array(case) LCHab_to_Lab(LCHab) if __name__ == '__main__': unittest.main()
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from delphin import tdl, itsdb from delphin.tokens import YYTokenLattice import glob, sys, pathlib import json, pickle import numpy as np from collections import OrderedDict import pos_map from datetime import datetime CONTEXT_WINDOW = 2 DEV = ['ws212', 'ecpa'] TEST = ['cb', 'ecpr', 'jhk', 'jhu', 'tgk', 'tgu', 'psk', 'psu', #'rondane', 'vm32', 'ws213', 'ws214', 'petet', 'wsj23'] IGNORE = ['ntucle', 'omw', 'wlb03', 'wnb03'] NONTRAIN = DEV + TEST + IGNORE class LexTypeExtractor: ''' Assume a numpy table coming in. Get e.g. tokens 2 through 5 in sentences 4 and 5, for the test suite #20 in the data. ''' if __name__ == "__main__": args = sys.argv[1:] dt_str = '-'.join(str(datetime.now()).split()).replace(':','.') run_id = sys.argv[3] + dt_str if len(sys.argv) > 3: autoreg = sys.argv[4] == 'autoreg' out_dir = './output/' + run_id pathlib.Path(out_dir).mkdir(parents=True, exist_ok=False) le = LexTypeExtractor() le.parse_lexicons(args[0]) le.stats['total lextypes'] = len(le.lextypes) if autoreg: le.process_testsuites_autoreg(args[1],le.lextypes,out_dir) else: le.process_testsuites_nonautoreg(args[1],le.lextypes,out_dir) with open(out_dir + '/lextypes','wb') as f: lextypes = set([str(v) for v in list(le.lextypes.values())]) pickle.dump(lextypes,f)
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"""Support for the Environment Canada radar imagery.""" from __future__ import annotations import voluptuous as vol from homeassistant.components.camera import Camera from homeassistant.config_entries import ConfigEntry from homeassistant.core import HomeAssistant from homeassistant.helpers.entity_platform import ( AddEntitiesCallback, async_get_current_platform, ) from homeassistant.helpers.update_coordinator import CoordinatorEntity from .const import ATTR_OBSERVATION_TIME, DOMAIN SERVICE_SET_RADAR_TYPE = "set_radar_type" SET_RADAR_TYPE_SCHEMA = { vol.Required("radar_type"): vol.In(["Auto", "Rain", "Snow"]), } async def async_setup_entry( hass: HomeAssistant, config_entry: ConfigEntry, async_add_entities: AddEntitiesCallback, ) -> None: """Add a weather entity from a config_entry.""" coordinator = hass.data[DOMAIN][config_entry.entry_id]["radar_coordinator"] async_add_entities([ECCamera(coordinator)]) platform = async_get_current_platform() platform.async_register_entity_service( SERVICE_SET_RADAR_TYPE, SET_RADAR_TYPE_SCHEMA, "async_set_radar_type", ) class ECCamera(CoordinatorEntity, Camera): """Implementation of an Environment Canada radar camera.""" def __init__(self, coordinator): """Initialize the camera.""" super().__init__(coordinator) Camera.__init__(self) self.radar_object = coordinator.ec_data self._attr_name = f"{coordinator.config_entry.title} Radar" self._attr_unique_id = f"{coordinator.config_entry.unique_id}-radar" self._attr_attribution = self.radar_object.metadata["attribution"] self._attr_entity_registry_enabled_default = False self.content_type = "image/gif" def camera_image( self, width: int | None = None, height: int | None = None ) -> bytes | None: """Return bytes of camera image.""" self._attr_extra_state_attributes = { ATTR_OBSERVATION_TIME: self.radar_object.timestamp, } return self.radar_object.image async def async_set_radar_type(self, radar_type: str): """Set the type of radar to retrieve.""" self.radar_object.precip_type = radar_type.lower() await self.radar_object.update()
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from urllib.request import urlopen from io import StringIO import csv data = urlopen("http://pythonscraping.com/files/MontyPythonAlbums.csv").read().decode('ascii', 'ignore') dataFile = StringIO(data) dictReader = csv.DictReader(dataFile) print(dictReader.fieldnames) for row in dictReader: print(row)
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# Write an algorithm such that if an element in MxN matrix is 0, it's entire row and column are set to 0. matrix = [[1,1,1,1],[1,1,1,1],[1,1,0,1],[1,1,1,1],[1,1,1,0]] matrixZero(matrix) print('\n'.join(['\t'.join([str(cell) for cell in row]) for row in matrix]))
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# -*- coding: utf-8 -*- """ Created on Wed Nov 4 18:55:46 2020 @author: Jonathan Browning """ import numpy as np from scipy.stats import gaussian_kde as kdf from scipy import special as sp
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# Copyright (C) 2017 Google Inc. # Licensed under http://www.apache.org/licenses/LICENSE-2.0 <see LICENSE file> """ Set empty next_cycle_start_date Create Date: 2017-09-25 13:56:32.087965 """ # disable Invalid constant name pylint warning for mandatory Alembic variables. # pylint: disable=invalid-name from alembic import op # revision identifiers, used by Alembic. revision = '3ebe14ae9547' down_revision = '4991c5731711' def upgrade(): """Upgrade database schema and/or data, creating a new revision.""" op.execute("UPDATE workflows, ( " "SELECT w.id " "FROM workflows AS w " "LEFT JOIN task_groups AS tg ON tg.workflow_id = w.id " "LEFT JOIN task_group_tasks AS t ON t.task_group_id = tg.id " "WHERE t.id IS NULL AND w.next_cycle_start_date IS NOT NULL " ") AS t " "SET workflows.next_cycle_start_date = NULL " "WHERE workflows.id = t.id;") def downgrade(): """Downgrade database schema and/or data back to the previous revision.""" pass
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""" Tests for the :class:`cpymad.madx.Madx` API. """ import os import sys import numpy as np from numpy.testing import assert_allclose, assert_equal from pytest import approx, fixture, mark, raises import cpymad from cpymad.madx import Madx, Sequence, metadata @fixture @fixture SEQU = """ ! constants QP_K1 = 2; ! elements qp: quadrupole, k1:=QP_K1, l=1; sb: sbend, l=2, angle=3.14/4; dr: drift, l=1; ! sequences s1: sequence, l=8, refer=center; dr, at=0.5; ! dr[1] ~ betx_full1[1] qp, at=1.5; dr, at=2.5; ! dr[2] ~ betx_full1[3] ~ betx_range[0] qp, at=3.5; ! ~ betx_full1[4] ~ betx_range[1] dr, at=4.5; sb, at=6.0; ! ~ betx_range[3] dr, at=7.5; endsequence; s2: sequence, l=3, refer=entry; qp1: qp, at=0, k1=3; qp2: qp, at=1, l=2; endsequence; """ def normalize(path): """Normalize path name to eliminate different spellings of the same path. This is needed for path comparisons in tests, especially on windows where pathes are case insensitive and allow a multitude of spellings.""" return os.path.normcase(os.path.normpath(path)) def test_version(mad): """Check that the Madx.version attribute can be used as expected.""" version = mad.version # check format: major, minor, micro = map(int, version.release.split('.')) # We need at least MAD-X 5.05.00: assert (major, minor, micro) >= (5, 5, 0) # check format: year, month, day = map(int, version.date.split('.')) assert (year, month, day) >= (2019, 5, 10) assert 1 <= month <= 12 assert 1 <= day <= 31 assert str(version).startswith( 'MAD-X {}'.format(version.release)) # TODO: We need to fix this on windows, but for now, I just need it to # pass so that the CI builds the release... @mark.xfail( sys.platform != 'linux', reason='Output is sometimes garbled on MacOS and windows.', ) @mark.xfail( sys.platform != 'linux', reason='Output is sometimes garbled on MacOS and windows.', ) def test_command_log(): """Check that the command log contains all input commands.""" # create a new Madx instance that uses the history feature: history_filename = '_test_madx.madx.tmp' try: # feed some input lines and compare with history file: lines = """ l = 5; f = 200; fodo: sequence, refer=entry, l=100; QF: quadrupole, l=5, at= 0, k1= 1/(f*l); QD: quadrupole, l=5, at=50, k1=-1/(f*l); endsequence; beam, particle=proton, energy=2; use, sequence=fodo; """.splitlines() lines = [line.strip() for line in lines if line.strip()] with Madx(command_log=history_filename) as mad: for line in lines: mad.input(line) with open(history_filename) as history_file: history = history_file.read() assert history.strip() == '\n'.join(lines).strip() finally: # remove history file os.remove(history_filename) def test_append_semicolon(): """Check that semicolon is automatically appended to input() text.""" # Regression test for #73 log = [] with Madx(command_log=log.append) as mad: mad.input('a = 0') mad.input('b = 1') assert log == ['a = 0;', 'b = 1;'] assert mad.globals.a == 0 assert mad.globals.b == 1 # def test_sequence_get_expanded_elements(): def test_crash(mad): """Check that a RuntimeError is raised in case MAD-X crashes.""" assert bool(mad) # a.t.m. MAD-X crashes on this input, because the L (length) # parametere is missing: raises(RuntimeError, mad.input, 'XXX: sequence;') assert not bool(mad)
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""" File: single_objective_engine.py Author: ngocjr7 Email: ngocjr7@gmail.com Github: https://github.com/ngocjr7 Description: """ from __future__ import absolute_import from typing import List, Union, Callable from functools import wraps from collections import OrderedDict from ..geneticengine import GeneticEngine from ...core.population import Population from ...core.operators import Selection, Crossover, Mutation, Replacement from ...core.individual import Individual from ...callbacks import Callback, CallbackList from ...callbacks import History import math
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# timing.py import datetime, calendar today = datetime.date.today() yesterday = today - datetime.timedelta(days = 1) tomorrow = today + datetime.timedelta(days = 1) print(yesterday, today, tomorrow) # ------------------------- ''' last_friday = datetime.date.today() oneday = datetime.timedelta(days = 1) while last_friday.weekday() != calendar.FRIDAY : last_friday = oneday print(last_friday.strftime('%A, %d-%b-%Y')) ''' t = datetime.datetime(2012,9,3,21,30) k = datetime.date.today() print(t, '\n', k)
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from manticore.utils.helpers import CacheDict from .expression import * from functools import lru_cache import logging import operator logger = logging.getLogger(__name__) class Visitor(object): ''' Class/Type Visitor Inherit your class visitor from this one and get called on a different visiting function for each type of expression. It will call the first implemented method for the __mro__ class order. For example for a BitVecAdd it will try visit_BitVecAdd() if not defined then it will try with visit_BitVecOperation() if not defined then it will try with visit_BitVec() if not defined then it will try with visit_Operation() if not defined then it will try with visit_Expression() Other class named visitors are: visit_Constant() visit_Variable() visit_Operation() visit_BitVec() visit_Bool() visit_Array() ''' @property def visit(self, node, use_fixed_point=False): ''' The entry point of the visitor. The exploration algorithm is a DFS post-order traversal The implementation used two stacks instead of a recursion The final result is store in self.result :param node: Node to explore :type node: Expression :param use_fixed_point: if True, it runs _methods until a fixed point is found :type use_fixed_point: Bool ''' cache = self._cache visited = set() stack = [] stack.append(node) while stack: node = stack.pop() if node in cache: self.push(cache[node]) elif isinstance(node, Operation): if node in visited: operands = [self.pop() for _ in range(len(node.operands))] value = self._method(node, *operands) visited.remove(node) self.push(value) cache[node] = value else: visited.add(node) stack.append(node) stack.extend(node.operands) else: self.push(self._method(node)) if use_fixed_point: old_value = None new_value = self.pop() while old_value is not new_value: self.visit(new_value) old_value = new_value new_value = self.pop() self.push(new_value) @staticmethod class Translator(Visitor): ''' Simple visitor to translate an expression into something else ''' class GetDeclarations(Visitor): ''' Simple visitor to collect all variables in an expression or set of expressions ''' @property class GetDepth(Translator): ''' Simple visitor to collect all variables in an expression or set of expressions ''' constant_folder_simplifier_cache = CacheDict(max_size=150000, flush_perc=25) @lru_cache(maxsize=128) arithmetic_simplifier_cache = CacheDict(max_size=150000, flush_perc=25) @lru_cache(maxsize=128) @lru_cache(maxsize=128) class TranslatorSmtlib(Translator): ''' Simple visitor to translate an expression to its smtlib representation ''' unique = 0 @property translation_table = { BoolNot: 'not', BoolEq: '=', BoolAnd: 'and', BoolOr: 'or', BoolXor: 'xor', BoolITE: 'ite', BitVecAdd: 'bvadd', BitVecSub: 'bvsub', BitVecMul: 'bvmul', BitVecDiv: 'bvsdiv', BitVecUnsignedDiv: 'bvudiv', BitVecMod: 'bvsmod', BitVecRem: 'bvsrem', BitVecUnsignedRem: 'bvurem', BitVecShiftLeft: 'bvshl', BitVecShiftRight: 'bvlshr', BitVecArithmeticShiftLeft: 'bvashl', BitVecArithmeticShiftRight: 'bvashr', BitVecAnd: 'bvand', BitVecOr: 'bvor', BitVecXor: 'bvxor', BitVecNot: 'bvnot', BitVecNeg: 'bvneg', LessThan: 'bvslt', LessOrEqual: 'bvsle', Equal: '=', GreaterThan: 'bvsgt', GreaterOrEqual: 'bvsge', UnsignedLessThan: 'bvult', UnsignedLessOrEqual: 'bvule', UnsignedGreaterThan: 'bvugt', UnsignedGreaterOrEqual: 'bvuge', BitVecSignExtend: '(_ sign_extend %d)', BitVecZeroExtend: '(_ zero_extend %d)', BitVecExtract: '(_ extract %d %d)', BitVecConcat: 'concat', BitVecITE: 'ite', ArrayStore: 'store', ArraySelect: 'select', } @property @property class Replace(Visitor): ''' Simple visitor to replaces expressions '''
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2.106525
2,253
from django import urls from django.conf.urls import include, url from django.contrib.auth.forms import AdminPasswordChangeForm from django.urls import path from .views import * urlpatterns = [ path(r'user/<str:usr>/', accountView), path('register_/', register_), ]
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2.857143
98
# -*- coding: utf-8 -*- """try: import jieba except: print("please install jieba first.") input("press any key to continue") quit()"""
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2.5
60
""" This is the C{admin.py} file for C{map_annotate_app}. For more details, see the documentation for C{map_annotate_app}. """ from django.contrib import admin from .models import Crime from .models import CrimeType from .models import Location from .models import Sansad admin.site.register(Location) admin.site.register(Crime) admin.site.register(CrimeType) admin.site.register(Sansad)
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3.258333
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#!/usr/bin/env python3 # -*- coding: utf-8 -*- # Copyright 2018, University of California, Berkeley # author: Kevin Laeufer <laeufer@cs.berkeley.edu> from collections import defaultdict if __name__ == "__main__": g = Grammar() S, B, D, E, F = non_term = g.non_terminal('S', 'B', 'D', 'E', 'F') u, v, w, x, y, z = term = g.terminal('u', 'v', 'w', 'x', 'y', 'z') g.r(S, [u, B, D, z]) g.r(B, [B, v]) g.r(B, [w]) g.r(D, [E, F]) g.r(E, [y]) g.r(E, []) g.r(F, [x]) g.r(F, []) for nt in non_term: print(f"FIRST({nt}): {g.first(nt)}") print() for nt in non_term: print(f"FOLLOW({nt}): {g.follow(nt)}") print() print(g.ll_one(check_conflicts=False))
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import socket, threading HOST = "127.0.0.1" PORT = 9999 server = socket.socket(socket.AF_INET, socket.SOCK_STREAM) server.bind((HOST, PORT)) server.listen() clients = [] nicknames = [] # broadcast func # handle func # receive func print("******Server is running******") receive()
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# # Copyright (c) 2015, Adam Meily <meily.adam@gmail.com> # Pypsi - https://github.com/ameily/pypsi # # Permission to use, copy, modify, and/or distribute this software for any # purpose with or without fee is hereby granted, provided that the above # copyright notice and this permission notice appear in all copies. # # THE SOFTWARE IS PROVIDED "AS IS" AND THE AUTHOR DISCLAIMS ALL WARRANTIES # WITH REGARD TO THIS SOFTWARE INCLUDING ALL IMPLIED WARRANTIES OF # MERCHANTABILITY AND FITNESS. IN NO EVENT SHALL THE AUTHOR BE LIABLE FOR # ANY SPECIAL, DIRECT, INDIRECT, OR CONSEQUENTIAL DAMAGES OR ANY DAMAGES # WHATSOEVER RESULTING FROM LOSS OF USE, DATA OR PROFITS, WHETHER IN AN # ACTION OF CONTRACT, NEGLIGENCE OR OTHER TORTIOUS ACTION, ARISING OUT OF # OR IN CONNECTION WITH THE USE OR PERFORMANCE OF THIS SOFTWARE. # ''' Base classes for developing pluggable commands and plugins. ''' import argparse import sys from pypsi.ansi import AnsiCodes, AnsiCode from pypsi.format import get_lines, wrap_line class Plugin(object): ''' A plugin is an object that is able to modify a :py:class:`pypsi.shell.Shell` object's behavior. Whereas a command can be execute from user input, the `Plugin` class does not contain a `run()` function. ''' def __init__(self, preprocess=None, postprocess=None): ''' Constructor can take two parameters: `preprocess` and `postprocess` These values determine where the plugin resides inside of the preprocess and postprocess list. This list, inside of :class:`pypsi.shell.Shell`, is iterated sequentially, from most priority to least. So, the highest priority value is 0, which means it will be the first plugin to run, and the lowest value is 100, which means it will be the last plugin to run. If either value is `None`, the plugin is not added to the processing list. For example, if this plugin only provides a preprocessing functionality, then postprocess should be set to :const:`None`. :param int preprocess: the preprocess priority :param int postprocess: the postprocess priority ''' self.preprocess = preprocess self.postprocess = postprocess def setup(self, shell): # pylint: disable=unused-argument ''' Called after the plugin has been registered to the active shell. :param pypsi.shell.Shell shell: the active shell :returns int: 0 on success, -1 on failure ''' return 0 def on_input(self, shell, line): # pylint: disable=unused-argument ''' Called after input from the user has been received. The return value is the preprocessed line. This means that modifying the line argument will not populate back. If this function does no preprocessing, return line unmodified. :param pypsi.shell.Shell shell: the active shell :param str line: the current input statement string :returns str: the preprocessed line ''' return line def on_tokenize(self, shell, tokens, origin): # pylint: disable=unused-argument ''' Called after an input string has been tokenized. If this function performs no preprocessing, return the tokens unmodified. :param pypsi.shell.Shell shell: the active shell :param list tokens: the list of :class:`pypsi.cmdline.Token` objects :param str origin: the origin of the input, can be either 'input' if received from a call to `input()` or 'prompt' if the input is the prompt to display to the user :returns list: the list of preprocessed :class:`pypsi.cmdline.Token` objects ''' return tokens def on_input_canceled(self, shell): # pylint: disable=unused-argument ''' Called when the user can canceled entering a statement via SIGINT (Ctrl+C). :param pypsi.shell.Shell shell: the active shell :returns int: 0 on success, -1 on error ''' return 0 def on_statement_finished(self, shell, rc): # pylint: disable=unused-argument ''' Called when a statement has been completely executed. :param pypsi.shell.Shell shell: the active shell :returns int: 0 on success, -1 on error ''' return 0 class Command(object): ''' A pluggable command that users can execute. All commands need to derive from this class. When a command is executed by a user, the command's :meth:`run` method will be called. The return value of the :meth:`run` method is used when processing forthcoming commands in the active statement. The return value must be an :class:`int` and follows the Unix standard: 0 on success, less than 0 on error, and greater than 0 given invalid input or incorrect usage. Each command has a topic associated with it. This topic can be referenced by commands such as :class:`pypsi.commands.help.HelpCommand` to categorize commands in help messages. A command can be used as a fallback handler by implementing the :meth:`fallback` method. This is similar to the :meth:`run` method, except that is accepts one more argument: the command name to execute that wasn't found by the shell. The return value of :meth:`fallback` holds the same purpose as the return value of :meth:`run`. By the time :meth:`run` is called, the system streams have been updated to point to the current file streams issued in the statement. For example, if the statement redirects standard out (:attr:`sys.stdout`) to a file, the destination file is automatically opened and :attr:`sys.stdout` is redirected to the opened file stream. Once the command has complete execution, the redirected stream is automatically closed and :attr:`sys.stdout` is set to its original stream. ''' def __init__(self, name, usage=None, brief=None, topic=None, pipe='str'): ''' :param str name: the name of the command which the user will reference in the shell :param str usage: the usage message to be displayed to the user :param str brief: a brief description of the command :param str topic: the topic that this command belongs to :param str pipe: the type of data that will be read from and written to any pipes ''' self.name = name self.usage = usage or '' self.brief = brief or '' self.topic = topic or '' self.pipe = pipe or 'str' def complete(self, shell, args, prefix): # pylint: disable=unused-argument ''' Called when the user attempts a tab-completion action for this command. :param pypsi.shell.Shell shell: the active shell :param list args: the list of arguments, the last one containing the cursor position :param str prefix: the prefix that all items returned must start with :returns list: the list of strings that could complete the current action ''' return [] def usage_error(self, shell, *args): ''' Display an error message that indicates incorrect usage of this command. After the error is displayed, the usage is printed. :param pypsi.shell.Shell shell: the active shell :param args: list of strings that are the error message ''' self.error(shell, *args) print(AnsiCodes.yellow, self.usage, AnsiCodes.reset, sep='') def error(self, shell, *args): # pylint: disable=unused-argument ''' Display an error message to the user. :param pypsi.shell.Shell shell: the active shell :param args: the error message to display ''' msg = "{}: {}".format(self.name, ''.join([str(a) for a in args])) print(AnsiCodes.red, msg, AnsiCodes.reset, file=sys.stderr, sep='') def run(self, shell, args): ''' Execute the command. All commands need to implement this method. :param pypsi.shell.Shell shell: the active shell :param list args: list of string arguments :returns int: 0 on success, less than 0 on error, and greater than 0 on invalid usage ''' raise NotImplementedError() def setup(self, shell): # pylint: disable=unused-argument ''' Called when the plugin has been registered to the active shell. :param pypsi.shell.Shell shell: the active shell :returns int: 0 on success, -1 on error ''' return 0 def fallback(self, shell, name, args): # pylint: disable=unused-argument ''' Called when this command was set as the fallback command. The only difference between this and :meth:`run` is that this method accepts the command name that was entered by the user. :param pypsi.shell.Shell shell: the active shell :param str name: the name of the command to run :param list args: arguments :returns int: 0 on success, less than 0 on error, and greater than 0 on invalid usage ''' return None class CommandShortCircuit(Exception): ''' Exception raised when the user enter invalid arguments or requests usage information via the -h and --help flags. ''' def __init__(self, code): ''' :param int code: the code the command should return ''' super().__init__(code) self.code = code class PypsiArgParser(argparse.ArgumentParser): ''' Customized :class:`argparse.ArgumentParser` for use in pypsi. This class slightly modifies the base ArgumentParser so that the following occurs: - The whole program does not exit on printing the help message or bad arguments - Any error messages are intercepted and printed on the active shell's error stream - Adds the option to provide callbacks for tab-completing options and parameters ''' def get_options(self): ''' :return: All optional arguments (ex, '-v'/'--verbose') ''' return list(self._op_completers.keys()) def get_option_completer(self, option): ''' Returns the callback for the specified optional argument, Or None if one was not specified. :param str option: The Option :return function: The callback function or None ''' return self._op_completers.get(option, None) def has_value(self, arg): ''' Check if the optional argument has a value associated with it. :param str arg: Optional argument to check :return: True if arg has a value, false otherwise ''' # pylint: disable=protected-access # _option_string_actions is a dictionary containing all of the optional # arguments and the argparse action they should perform. Currently, the # only two actions that store a value are _AppendAction/_StoreAction. # These represent the value passed to 'action' in add_argument: # parser.add_argument('-l', '--long', action='store') action = self._option_string_actions.get(arg, None) return isinstance(action, (argparse._AppendAction, argparse._StoreAction)) def get_positional_completer(self, pos): ''' Get the callback for a positional parameter :param pos: index of the parameter - first param's index = 0 :return: The callback if it exists, else None ''' try: return self._pos_completers[pos] except IndexError: if self._repeating_cb: # A positional parameter is set to repeat return self._repeating_cb return None def get_positional_arg_index(self, args): ''' Get the positional index of a cursor, based on optional arguments and positional arguments :param list args: List of str arguments from the Command Line :return: ''' index = 0 for token in args: if token in self._option_string_actions: # Token is an optional argument ( ex, '-v' / '--verbose' ) if self.has_value(token): # Optional Argument has a value associated with it, so # reduce index to not count it's value as a pos param index -= 1 else: # Is a positional param or value for an optional argument index += 1 # return zero-based index return index - 1 def add_argument(self, *args, completer=None, **kwargs): # pylint: disable=arguments-differ ''' Override add_argument function of argparse.ArgumentParser to handle callback functions. :param args: Positional arguments to pass up to argparse :param function completer: Optional callback function for argument :param kwargs: Keywork arguments to pass up to argparse :return: ''' cb = completer nargs = kwargs.get('nargs', None) chars = self.prefix_chars if not args or len(args) == 1 and args[0][0] not in chars: # If no positional args are supplied or only one is supplied and # it doesn't look like an option string, parse a positional # argument ( from argparse ) if nargs and nargs in ('+', '*', argparse.REMAINDER): # Positional param can repeat # Currently only stores the last repeating completer specified self._repeating_cb = cb self._pos_completers.append(cb) else: # Add an optional argument for arg in args: self._op_completers[arg] = cb # Call argparse.add_argument() return super().add_argument(*args, **kwargs) def pypsi_print(*args, sep=' ', end='\n', file=None, flush=True, width=None, wrap=True, wrap_prefix=None, replace_errors=True): ''' Wraps the functionality of the Python builtin `print` function. The :meth:`pypsi.shell.Shell.bootstrap` overrides the Python :meth:`print` function with :meth:`pypsi_print`. :param str sep: string to print between arguments :param str end: string to print at the end of the output :param file file: output stream, if this is :const:`None`, the default is :data:`sys.stdout` :param bool flush: whether to flush the output stream :param int width: override the stream's width :param bool wrap: whether to word wrap the output :param str wrap_prefix: prefix string to print prior to every new line that is wrapped :param bool replace_errors: replace invalid character points with the '?' character ''' file = file or sys.stdout last = len(args) - 1 def write_safe(data): ''' Write the input str to the file and, if an encoding error occurs and replace_errors is ``True``, remove invalid code points and print again. ''' try: file.write(data) except UnicodeEncodeError: if replace_errors: enc = getattr(file, 'encoding', sys.getdefaultencoding()) file.write(data.encode(enc, errors='replace').decode(enc)) else: raise if wrap and hasattr(file, 'width') and file.width: width = width or file.width parts = [] for arg in args: if isinstance(arg, str): parts.append(arg) elif arg is None: parts.append('') elif isinstance(arg, AnsiCode): if file.isatty(): parts.append(str(arg)) elif arg.s is not None: parts.append(str(arg.s)) else: parts.append(str(arg)) txt = sep.join(parts) for (line, endl) in get_lines(txt): if line: first = True wrapno = 0 for wrapped in wrap_line(line, width, wrap_prefix=wrap_prefix): if not wrapped: continue wrapno += 1 if not first: file.write('\n') else: first = False write_safe(wrapped) if not line or endl: file.write('\n') else: last = len(args) - 1 for (i, arg) in enumerate(args): write_safe(str(arg)) if sep and i != last: write_safe(sep) if end: write_safe(end) if flush: file.flush()
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QUESTIONS = ['a', 'b', 'c', 'x', 'y', 'z'] if __name__ == '__main__': with open('input') as file: groups = [] group = [] for row in file: row = row.strip() if not row: groups.append(group) group = [] continue group.append(row) groups.append(group) print(sum(map(anyone, groups))) print(sum(map(everyone, groups)))
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from dataclasses import dataclass from typing import Any, Dict, Generator, List, Optional from .base import ( Blob, Bucket, BucketClient, BucketEntry, ClientError, PathyScanDir, PurePathy, ) try: from google.api_core import exceptions as gcs_errors # type:ignore from google.auth.exceptions import DefaultCredentialsError # type:ignore from google.cloud.storage import Blob as GCSNativeBlob # type:ignore from google.cloud.storage import Bucket as GCSNativeBucket # type:ignore from google.cloud.storage import Client as GCSNativeClient # type:ignore has_gcs = True except ImportError: GCSNativeBlob = Any DefaultCredentialsError = BaseException gcs_errors = Any GCSNativeBucket = Any GCSNativeClient = Any has_gcs = False _MISSING_DEPS = """You are using the GCS functionality of Pathy without having the required dependencies installed. Please try installing them: pip install pathy[gcs] """ @dataclass @dataclass
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# -*- coding: utf-8 -*- from time import sleep from bs4 import BeautifulSoup import csv import requests links = [] items = [] for i in range(1,38): endpoint = f"https://baby.webteb.com/baby-names/%D8%A7%D8%B3%D9%85%D8%A7%D8%A1-%D8%A7%D9%88%D9%84%D8%A7%D8%AF-%D9%88%D8%A8%D9%86%D8%A7%D8%AA?pageindex={i}" get_response = requests.get(endpoint) # print(get_response.content) soup = BeautifulSoup(get_response.content, 'lxml') # print(soup.prettify()) section = soup.find('div', {'class':'page-section'}) for li in section.find_all('li'): links.append(li.a['href']) print(f'{i}', li.a['href']) for i, link in zip(range(1,len(links)+1), links): url = f"https://baby.webteb.com{link}" get_response = requests.get(url) soup = BeautifulSoup(get_response.content, 'lxml') content = soup.find('div', {'class':'section name'}) section1 = content.find('div', {'class':'section'}) name_detail = content.find('div', {'class':'name-details'}) section2 = name_detail.find('div', {'class':'section'}) span = section2.find('span', {'class':'latin'}) item = {} if content.h1.text: item['arabic_name'] = content.h1.text if section1.p.text: item['meaning'] = section1.p.text if span.text: item['english_name'] = span.text print(i, content.h1.text, section1.p.text, span.text) items.append(item) filename = '/home/naga/dev/babyNamesScraping/project/both.csv' with open(filename, 'w', newline='') as f: w = csv.DictWriter(f, fieldnames=['arabic_name','meaning', 'english_name'], extrasaction='ignore' , delimiter = ';') w.writeheader() print(items) for item in items: w.writerow(item) print(item)
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from typing import Tuple import haiku as hk import jax.numpy as jnp import numpyro from absl import flags from numpyro.distributions.continuous import MultivariateNormal from sde import drifts, diffusions Array = jnp.ndarray flags.DEFINE_enum("solver", "strong_3_halfs", ["euler_maruyama", "strong_3_halfs"], "Solver to use.") FLAGS = flags.FLAGS solvers_dict = { "euler_maruyama": EulerMaruyamaSolver, "strong_3_halfs": Strong3HalfsSolver }
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# # PySNMP MIB module JUNIPER-SONET-MIB (http://snmplabs.com/pysmi) # ASN.1 source file:///Users/davwang4/Dev/mibs.snmplabs.com/asn1/JUNIPER-SONET-MIB # Produced by pysmi-0.3.4 at Mon Apr 29 19:50:16 2019 # On host DAVWANG4-M-1475 platform Darwin version 18.5.0 by user davwang4 # Using Python version 3.7.3 (default, Mar 27 2019, 09:23:15) # OctetString, ObjectIdentifier, Integer = mibBuilder.importSymbols("ASN1", "OctetString", "ObjectIdentifier", "Integer") NamedValues, = mibBuilder.importSymbols("ASN1-ENUMERATION", "NamedValues") ValueRangeConstraint, SingleValueConstraint, ConstraintsUnion, ConstraintsIntersection, ValueSizeConstraint = mibBuilder.importSymbols("ASN1-REFINEMENT", "ValueRangeConstraint", "SingleValueConstraint", "ConstraintsUnion", "ConstraintsIntersection", "ValueSizeConstraint") ifIndex, ifDescr = mibBuilder.importSymbols("IF-MIB", "ifIndex", "ifDescr") jnxMibs, jnxSonetNotifications = mibBuilder.importSymbols("JUNIPER-SMI", "jnxMibs", "jnxSonetNotifications") NotificationGroup, ModuleCompliance = mibBuilder.importSymbols("SNMPv2-CONF", "NotificationGroup", "ModuleCompliance") MibIdentifier, Gauge32, iso, ObjectIdentity, TimeTicks, ModuleIdentity, Integer32, Counter32, Unsigned32, MibScalar, MibTable, MibTableRow, MibTableColumn, NotificationType, Counter64, IpAddress, Bits = mibBuilder.importSymbols("SNMPv2-SMI", "MibIdentifier", "Gauge32", "iso", "ObjectIdentity", "TimeTicks", "ModuleIdentity", "Integer32", "Counter32", "Unsigned32", "MibScalar", "MibTable", "MibTableRow", "MibTableColumn", "NotificationType", "Counter64", "IpAddress", "Bits") DisplayString, DateAndTime, TextualConvention = mibBuilder.importSymbols("SNMPv2-TC", "DisplayString", "DateAndTime", "TextualConvention") jnxSonet = ModuleIdentity((1, 3, 6, 1, 4, 1, 2636, 3, 20)) jnxSonet.setRevisions(('2002-12-12 00:00', '2002-08-08 00:00',)) if mibBuilder.loadTexts: jnxSonet.setLastUpdated('200307182154Z') if mibBuilder.loadTexts: jnxSonet.setOrganization('Juniper Networks, Inc.') jnxSonetAlarms = MibIdentifier((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1)) jnxSonetAlarmTable = MibTable((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1), ) if mibBuilder.loadTexts: jnxSonetAlarmTable.setStatus('current') jnxSonetAlarmEntry = MibTableRow((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1, 1), ).setIndexNames((0, "IF-MIB", "ifIndex")) if mibBuilder.loadTexts: jnxSonetAlarmEntry.setStatus('current') jnxSonetCurrentAlarms = MibTableColumn((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1, 1, 1), JnxSonetAlarmId()).setMaxAccess("readonly") if mibBuilder.loadTexts: jnxSonetCurrentAlarms.setStatus('current') jnxSonetLastAlarmId = MibTableColumn((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1, 1, 2), JnxSonetAlarmId()).setMaxAccess("readonly") if mibBuilder.loadTexts: jnxSonetLastAlarmId.setStatus('current') jnxSonetLastAlarmTime = MibTableColumn((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1, 1, 3), TimeTicks()).setMaxAccess("readonly") if mibBuilder.loadTexts: jnxSonetLastAlarmTime.setStatus('current') jnxSonetLastAlarmDate = MibTableColumn((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1, 1, 4), DateAndTime()).setMaxAccess("readonly") if mibBuilder.loadTexts: jnxSonetLastAlarmDate.setStatus('current') jnxSonetLastAlarmEvent = MibTableColumn((1, 3, 6, 1, 4, 1, 2636, 3, 20, 1, 1, 1, 5), Integer32().subtype(subtypeSpec=ConstraintsUnion(SingleValueConstraint(1, 2, 3))).clone(namedValues=NamedValues(("none", 1), ("set", 2), ("cleared", 3)))).setMaxAccess("readonly") if mibBuilder.loadTexts: jnxSonetLastAlarmEvent.setStatus('current') jnxSonetNotificationPrefix = MibIdentifier((1, 3, 6, 1, 4, 1, 2636, 4, 6, 0)) jnxSonetAlarmSet = NotificationType((1, 3, 6, 1, 4, 1, 2636, 4, 6, 0, 1)).setObjects(("IF-MIB", "ifDescr"), ("JUNIPER-SONET-MIB", "jnxSonetLastAlarmId"), ("JUNIPER-SONET-MIB", "jnxSonetCurrentAlarms"), ("JUNIPER-SONET-MIB", "jnxSonetLastAlarmDate")) if mibBuilder.loadTexts: jnxSonetAlarmSet.setStatus('current') jnxSonetAlarmCleared = NotificationType((1, 3, 6, 1, 4, 1, 2636, 4, 6, 0, 2)).setObjects(("IF-MIB", "ifDescr"), ("JUNIPER-SONET-MIB", "jnxSonetLastAlarmId"), ("JUNIPER-SONET-MIB", "jnxSonetCurrentAlarms"), ("JUNIPER-SONET-MIB", "jnxSonetLastAlarmDate")) if mibBuilder.loadTexts: jnxSonetAlarmCleared.setStatus('current') mibBuilder.exportSymbols("JUNIPER-SONET-MIB", jnxSonetAlarms=jnxSonetAlarms, jnxSonetCurrentAlarms=jnxSonetCurrentAlarms, jnxSonetLastAlarmTime=jnxSonetLastAlarmTime, jnxSonetAlarmTable=jnxSonetAlarmTable, JnxSonetAlarmId=JnxSonetAlarmId, jnxSonetLastAlarmEvent=jnxSonetLastAlarmEvent, jnxSonetAlarmSet=jnxSonetAlarmSet, PYSNMP_MODULE_ID=jnxSonet, jnxSonetNotificationPrefix=jnxSonetNotificationPrefix, jnxSonetAlarmCleared=jnxSonetAlarmCleared, jnxSonetAlarmEntry=jnxSonetAlarmEntry, jnxSonet=jnxSonet, jnxSonetLastAlarmId=jnxSonetLastAlarmId, jnxSonetLastAlarmDate=jnxSonetLastAlarmDate)
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4906, 22882, 28, 3103, 2536, 6003, 38176, 7, 28008, 11395, 3103, 2536, 2913, 7, 16, 11, 362, 11, 513, 4008, 737, 21018, 7, 13190, 40161, 28, 45, 2434, 40161, 7, 7203, 23108, 1600, 352, 828, 5855, 2617, 1600, 362, 828, 5855, 2375, 1144, 1600, 513, 22305, 737, 2617, 11518, 15457, 7203, 961, 8807, 4943, 198, 361, 285, 571, 32875, 13, 2220, 8206, 82, 25, 474, 77, 87, 31056, 316, 5956, 2348, 1670, 9237, 13, 2617, 19580, 10786, 14421, 11537, 198, 73, 77, 87, 31056, 316, 3673, 2649, 36698, 844, 796, 337, 571, 33234, 7483, 19510, 16, 11, 513, 11, 718, 11, 352, 11, 604, 11, 352, 11, 2608, 2623, 11, 604, 11, 718, 11, 657, 4008, 198, 73, 77, 87, 31056, 316, 2348, 1670, 7248, 796, 42808, 6030, 19510, 16, 11, 513, 11, 718, 11, 352, 11, 604, 11, 352, 11, 2608, 2623, 11, 604, 11, 718, 11, 657, 11, 352, 29720, 2617, 10267, 82, 7, 7203, 5064, 12, 8895, 33, 1600, 366, 361, 24564, 81, 12340, 5855, 41, 4944, 4061, 1137, 12, 11782, 2767, 12, 8895, 33, 1600, 366, 73, 77, 87, 31056, 316, 5956, 2348, 1670, 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5956, 2348, 1670, 10430, 48774, 198, 361, 285, 571, 32875, 13, 2220, 8206, 82, 25, 474, 77, 87, 31056, 316, 2348, 1670, 34349, 1144, 13, 2617, 19580, 10786, 14421, 11537, 198, 76, 571, 32875, 13, 39344, 13940, 2022, 10220, 7203, 41, 4944, 4061, 1137, 12, 11782, 2767, 12, 8895, 33, 1600, 474, 77, 87, 31056, 316, 2348, 8357, 28, 73, 77, 87, 31056, 316, 2348, 8357, 11, 474, 77, 87, 31056, 316, 11297, 2348, 8357, 28, 73, 77, 87, 31056, 316, 11297, 2348, 8357, 11, 474, 77, 87, 31056, 316, 5956, 2348, 1670, 7575, 28, 73, 77, 87, 31056, 316, 5956, 2348, 1670, 7575, 11, 474, 77, 87, 31056, 316, 2348, 1670, 10962, 28, 73, 77, 87, 31056, 316, 2348, 1670, 10962, 11, 449, 77, 87, 31056, 316, 2348, 1670, 7390, 28, 41, 77, 87, 31056, 316, 2348, 1670, 7390, 11, 474, 77, 87, 31056, 316, 5956, 2348, 1670, 9237, 28, 73, 77, 87, 31056, 316, 5956, 2348, 1670, 9237, 11, 474, 77, 87, 31056, 316, 2348, 1670, 7248, 28, 73, 77, 87, 31056, 316, 2348, 1670, 7248, 11, 350, 56, 15571, 7378, 62, 33365, 24212, 62, 2389, 28, 73, 77, 87, 31056, 316, 11, 474, 77, 87, 31056, 316, 3673, 2649, 36698, 844, 28, 73, 77, 87, 31056, 316, 3673, 2649, 36698, 844, 11, 474, 77, 87, 31056, 316, 2348, 1670, 34349, 1144, 28, 73, 77, 87, 31056, 316, 2348, 1670, 34349, 1144, 11, 474, 77, 87, 31056, 316, 2348, 1670, 30150, 28, 73, 77, 87, 31056, 316, 2348, 1670, 30150, 11, 474, 77, 87, 31056, 316, 28, 73, 77, 87, 31056, 316, 11, 474, 77, 87, 31056, 316, 5956, 2348, 1670, 7390, 28, 73, 77, 87, 31056, 316, 5956, 2348, 1670, 7390, 11, 474, 77, 87, 31056, 316, 5956, 2348, 1670, 10430, 28, 73, 77, 87, 31056, 316, 5956, 2348, 1670, 10430, 8, 198 ]
2.417255
1,982
from unit.applications.lang.python import TestApplicationPython
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4.333333
15
#!/usr/bin/env python from batch_demographics import create_app from config import DevConfig app = create_app(DevConfig()) if __name__ == "__main__": app.run(host="0.0.0.0", port=8000)
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2.753623
69
from django.contrib import admin from .models import supeHero # Register your models here. admin.site.register(supeHero) # Register your models here.
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3.511628
43
from easygui.boxes.choice_box import choicebox from easygui.boxes.text_box import textbox from phase1 import phase1 from phase2 import phase2 __author__ = 'po0ya' choices = [ 'Phase1', 'Phase2' ] choice = choicebox(msg='Please select project phase:', choices=choices) if choice == choices[0]: phase1() else: phase2()
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2.785124
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# -*- coding: utf-8 -*- # Copyright 2015 Donne Martin. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"). You # may not use this file except in compliance with the License. A copy of # the License is located at # # http://www.apache.org/licenses/LICENSE-2.0 # # or in the "license" file accompanying this file. This file is # distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF # ANY KIND, either express or implied. See the License for the specific # language governing permissions and limitations under the License. from __future__ import unicode_literals from __future__ import print_function import re try: from collections import OrderedDict except: from ordereddict import OrderedDict class DataUtil(object): """Utility class to read from the data folder. Attributes: * None. """ def create_header_to_type_map(self, headers, data_type): """Creates a dict mapping headers to ResourceTypes. Headers are the resource headers as they appear in the RESOURCES.txt. Headers are mapped to their corresponding ResourceType. Args: * headers: A string that represents the header. * data_type: An Enum specifying the data type. Returns: An OrderedDict mapping headers to ResourceTypes. """ command_types = [] for item in data_type: if item != data_type.NUM_TYPES: command_types.append(item) return OrderedDict(zip(headers, command_types)) def get_data(self, data_file_path, header_to_type_map, data_type): """Gets all data from the specified data file. Args: * data_file_path: A string representing the full file path of the data file. * header_to_type_map: A dictionary mapping the data header labels to the data types. * data_type: An Enum specifying the data type. Returns: A list, where each element is a list of completions for each data_type """ data_lists = [[] for x in range(data_type.NUM_TYPES.value)] with open(data_file_path) as f: for line in f: line = re.sub('\n', '', line) parsing_header = False # Check if we are reading in a data header to determine # which set of data we are parsing for key, value in header_to_type_map.items(): if key in line: data_type = value parsing_header = True break if not parsing_header: # Store the data in its associated list if line.strip() != '': data_lists[data_type.value].append(line) for data_list in data_lists: data_list.sort() return data_lists
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2.345912
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# Generated by Django 3.1.3 on 2021-06-23 02:36 from django.db import migrations, models import django.db.models.deletion
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2.818182
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''' 33. Search in Rotated Sorted Array Medium Suppose an array sorted in ascending order is rotated at some pivot unknown to you beforehand. (i.e., [0,1,2,4,5,6,7] might become [4,5,6,7,0,1,2]). You are given a target value to search. If found in the array return its index, otherwise return -1. You may assume no duplicate exists in the array. Your algorithm's runtime complexity must be in the order of O(log n). Example 1: Input: nums = [4,5,6,7,0,1,2], target = 0 Output: 4 Example 2: Input: nums = [4,5,6,7,0,1,2], target = 3 Output: -1 '''
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2.78392
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""" glashammer.bundles.contrib.auth.openidauth ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ Open ID Support for Glashammer :copyright: 2010 Glashammer Developers :license: MIT """ from openid.consumer.consumer import Consumer, SUCCESS, CANCEL from werkzeug import redirect from glashammer.utils import sibpath, url_for, Response from glashammer.bundles.sessions import setup_sessions, get_session from glashammer.bundles.auth import setup_auth, login
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import pandas as pd import numpy as np import os import pickle as pkl import json from tqdm import tqdm single_task = ['5849', '25000', '41401', '4019'] for task in single_task: path = 'data/preprocessed_data/baseline/' + task if not os.path.exists(path): os.makedirs(path) train_data, dim = preprocess_data('data/raw_data/' + task + '/train', task) save(train_data, 'data/preprocessed_data/baseline/' + task, 'train') test_data, dim = preprocess_data('data/raw_data/' + task + '/test', task) save(test_data, 'data/preprocessed_data/baseline/' + task, 'test')
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import webapp2 from webapp2_extras import jinja2 class BaseHandler(webapp2.RequestHandler): """Provide a cached Jinja environment to each request.""" @webapp2.cached_property app = webapp2.WSGIApplication([("/_ah/warmup", MainPage), ('/', MainPage), ])
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import unittest from src.choice import Choice from src.choice.exceptions import InvalidChoiceException class UserChoiceTests(unittest.TestCase): """Tests for the user choice class""" def test_valid_choice(self): """Test valid user input""" choice = Choice('r') self.assertTrue(choice.is_valid()) self.assertEqual(choice.get_choice(), 0) def test_invalid_choice(self): """Test invalid user input""" choice = Choice('h') self.assertFalse(choice.is_valid()) with self.assertRaises(InvalidChoiceException): choice.get_choice() if __name__ == '__main__': unittest.main()
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#!/usr/bin/env python3 import unittest import os import networkit as nk if __name__ == "__main__": unittest.main()
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# -*- coding: utf-8 -*- """ Created on Fri Feb 28 15:03:12 2020 @author: Ayantika """ # Importing necessary libraries import numpy as np import pandas as pd from pandas import Series, DataFrame from sklearn.model_selection import train_test_split from sklearn.linear_model import LogisticRegression import pickle # Reading the data Wine = pd.read_csv("Wine.csv") print(Wine.head()) #iris.drop("Id", axis=1, inplace = True) y = Wine['Customer_Segment'] Wine.drop(columns='Customer_Segment',inplace=True) X = Wine[['Alcohol', 'Malic_Acid', 'Ash', 'Ash_Alcanity', 'Magnesium', 'Total_Phenols', 'Flavanoids', 'Nonflavanoid_Phenols', 'Proanthocyanins', 'Color_Intensity', 'Hue', 'OD280', 'Proline']] # Training the model x_train,x_test,y_train,y_test = train_test_split(X,y, test_size=0.3) model = LogisticRegression() model.fit(x_train,y_train) pickle.dump(model,open('model.pkl','wb'))
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from app import app from models import db, connect_db, User, Issue, Comment, Priority, Status, Category, Role # Drop db tables and create them anew db.drop_all() db.create_all() # Priority p1 = Priority( priority_id=0, priority_label="Low" ) p2 = Priority( priority_id=1, priority_label="Medium" ) p3 = Priority( priority_id=2, priority_label="High" ) p4 = Priority( priority_id=3, priority_label="Urgent" ) # Status s1 = Status( status_id=0, status_label="Submitted" ) s2 = Status( status_id=1, status_label="Assigned" ) s3 = Status( status_id=2, status_label="Resolved" ) # Category c1 = Category( category_id=0, category_label="Technical Issue" ) c2 = Category( category_id=1, category_label="Customer Complaint" ) c3 = Category( category_id=2, category_label="Product Request" ) ro1 = Role( role_id=0, role_label="user" ) ro2 = Role( role_id=1, role_label="assignee" ) ro3 = Role( role_id=2, role_label="admin" ) db.session.add_all([p1,p2,p3,p4,s1,s2,s3,c1,c2,c3,ro1,ro2,ro3]) db.session.commit() # Sample users. # u1 = User.register( # email="user1@example.com", # first_name="Admin", # last_name="User", # password="password1" # ) # u2 = User.register( # email="user2@example.com", # first_name="Regular", # last_name="User", # password="password2" # ) # u3 = User.register( # email="user3@example.com", # first_name="Assignee", # last_name="User", # password="password3" # ) # u1.role = 2 # u3.role = 1 # db.session.commit() # # Sample issues # i1 = Issue( # title="Printer on fire!", # text="Huge flames are shooting out of paper tray 1!!! Please bring fire extinguisher ASAP!!!", # reporter=2 # ) # i2 = Issue( # title="Computer not responding", # text="My PC is showing the loading spinner and will not respond to keyboard or mouse input. It has been doing this for 6 weeks.", # reporter=2 # ) # i3 = Issue( # title="Please bring in nacho flavored Beanfields chips", # text="We're not saying you're going to get addicted to our slamming NACHO, but we're also not going to say you won't. Nacho-lly we're biased since it is our best seller. NACHO just has unmatched taste that makes being cheesy, well, cool and vegan. The kinda vegan you want at your barbecue so you can say, 'yeah NACHO came with me. We're good like that.' Nacho average tortilla chip.", # category=2, # reporter=3 # ) # i4 = Issue( # title="Clerk was rude and dismissive", # text="She told me to wear a mask, and I don't wanna!", # category=1, # reporter=3 # ) # db.session.add_all([i1,i2,i3,i4]) # db.session.commit()
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from main import app app.run(host='127.0.0.1', port=8090, debug=True)
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""" :py:mod:`pymco.ssl` ------------------- Contains SSL security provider plugin. """ from __future__ import print_function import base64 import os try: from Crypto.Signature import PKCS1_v1_5 from Crypto.Hash import SHA except ImportError as exc: print('You need install pycrypto for using SSL security provider') raise exc from .. import exc from . import SecurityProvider from .. import utils class SSLProvider(SecurityProvider): """Provide SSL security provider plugin. See http://docs.puppetlabs.com/mcollective/reference/plugins/security_ssl.html for further information. """ def sign(self, msg): """Implement :py:meth:`pymco.security.SecurityProvider.sign`.""" msg[':callerid'] = self.callerid msg[':hash'] = self.get_hash(msg) return msg def verify(self, msg): """Implement :py:meth:`pymco.security.SecurityProvider.verify`.""" hash_ = SHA.new(msg[':body'].encode('utf8')) verifier = PKCS1_v1_5.new(self.server_public_key) signature = base64.b64decode(msg[':hash']) if not verifier.verify(hash_, signature): raise exc.VerificationError( 'Message {0} can\'t be verified'.format(msg)) return msg def get_hash(self, msg): """Get the hash for the given message. :arg pymco.message.Message msg: message to get hash for. :return: message hash so the receiver can verify the message. """ hashed_signature = SHA.new(msg[':body'].encode('utf8')) signer = PKCS1_v1_5.new(self.private_key) hashed_signature = signer.sign(hashed_signature) return base64.b64encode(hashed_signature) @property def callerid(self): """Property returning the MCollective SSL caller id. As MCollective docs states, the caller ID will be the name of public key filename, without the extension part. """ if not self._caller_id: caller_id = os.path.basename( self.config['plugin.ssl_client_public']).split('.')[0] self._caller_id = 'cert={0}'.format(caller_id) return self._caller_id @property def server_public_key(self): """Property returning the server public key after being loaded.""" return self._load_rsa_key(key='plugin.ssl_server_public', cache=self._server_public_key) @property def private_key(self): """Property returning the private key after being loaded.""" return self._load_rsa_key(key='plugin.ssl_client_private', cache=self._private_key) @property def serializer(self): """Property returning the serializer object. Serailzer object should be any subclass :py:class:`pymco.serializer.Serializer`, depending on configuration. However, right now, only YAML serialization can be supported, since the default serializer (Marshal) isn't portable. """ if not self._serializer: self._serializer = self.config.get_serializer('plugin.ssl_serializer') return self._serializer
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import inspect import pkgutil from importlib import import_module from pathlib import Path from client.connection import Connection from client.exceptions import ArkParameterException from client.resource import Resource
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import avalon.api from reveries.maya import lib, capsule from reveries.maya.plugins import ReferenceLoader class CameraLoader(ReferenceLoader, avalon.api.Loader): """Specific loader for the reveries.camera family""" label = "Reference camera" order = -10 icon = "code-fork" color = "orange" hosts = ["maya"] families = ["reveries.camera"] representations = [ "mayaAscii", "Alembic", "FBX", ]
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# encoding: utf-8 # module renderdoc # from P:\1-Scripts\_Python\Py-Autocomplete\renderdoc.pyd # by generator 1.146 # no doc # imports import enum as __enum from .SwigPyObject import SwigPyObject class D3D12OM(SwigPyObject): """ Describes the current state of the output-merger stage of the D3D12 pipeline. """ def __eq__(self, *args, **kwargs): # real signature unknown """ Return self==value. """ pass def __ge__(self, *args, **kwargs): # real signature unknown """ Return self>=value. """ pass def __gt__(self, *args, **kwargs): # real signature unknown """ Return self>value. """ pass def __hash__(self, *args, **kwargs): # real signature unknown """ Return hash(self). """ pass def __le__(self, *args, **kwargs): # real signature unknown """ Return self<=value. """ pass def __lt__(self, *args, **kwargs): # real signature unknown """ Return self<value. """ pass @staticmethod # known case of __new__ def __new__(*args, **kwargs): # real signature unknown """ Create and return a new object. See help(type) for accurate signature. """ pass def __ne__(self, *args, **kwargs): # real signature unknown """ Return self!=value. """ pass blendState = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """A :class:`D3D12BlendState` with the details of the blend state.""" depthReadOnly = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """``True`` if depth access to the depth-stencil target is read-only.""" depthStencilState = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """A :class:`D3D12DepthStencilState` with the details of the depth-stencil state.""" depthTarget = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """A :class:`D3D12View` with details of the bound depth-stencil target.""" multiSampleCount = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """The sample count used for rendering.""" multiSampleQuality = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """The MSAA quality level used for rendering.""" renderTargets = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """A list of :class:`D3D12View` describing the bound render targets.""" stencilReadOnly = property(lambda self: object(), lambda self, v: None, lambda self: None) # default """``True`` if stenncil access to the depth-stencil target is read-only.""" this = property(lambda self: object(), lambda self, v: None, lambda self: None) # default thisown = property(lambda self: object(), lambda self, v: None, lambda self: None) # default __dict__ = None # (!) real value is ''
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import numpy as np import matplotlib.pyplot as plt import seaborn as sns import itertools fonts = {"family": "serif", "weight": "normal", "size": "12"} plt.rc('font', **fonts) plt.rc('text', usetex=True) ftc_noiseless = np.loadtxt('ftc_noiseless_case3.csv') ftc_noise = np.loadtxt('ftc_noise_case3.csv') no_ftc_noiseless = np.loadtxt('no_ftc_noiseless_case3.csv') x = np.linspace(0, ftc_noiseless.shape[0], ftc_noiseless.shape[0] - 50) with sns.cubehelix_palette(8, start=.5, rot=-.75, reverse=True): ax = plt.subplot(111) ax.plot(x, no_ftc_noiseless[50:, 0], label=r'$X_D$ No FTC (Noiseless)', linestyle='-.') ax.plot(x, ftc_noise[50:, 0], label=r'$X_D$ FTC', linestyle='--') ax.plot(x, ftc_noiseless[50:, 0], label=r'$X_D$ FTC (Noiseless)') ax.plot(x, no_ftc_noiseless[50:, 1], linestyle='-.', label=r'$X_B$ No FTC (Noiseless)') ax.plot(x, ftc_noise[50:, 1], linestyle='--', label=r'$X_B$ FTC') ax.plot(x, ftc_noiseless[50:, 1], label=r'$X_B$ FTC (Noiseless)') plt.xlabel(r'Time, \textit{t} (min)') plt.ylabel(r'\%MeOH, $\textit{X}_D$ (wt. \%)') handles, labels = ax.get_legend_handles_labels() plt.legend(flip(handles, 2), flip(labels, 2), loc=6, ncol=2, prop={'size': 12}, frameon=False) plt.savefig('Case3_Plot.eps', format='eps', dpi=1000) plt.show()
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2.054688
640
import cv2 import numpy as np if __name__ == '__main__': main()
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2.428571
28
''' Encapsulates all tasks that can be run against the 'notes' endpoint '''
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3.5
22
# Generated by Django 2.2.2 on 2019-07-03 11:05 from django.db import migrations, models
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2.84375
32
''' Program to convert any Image to Pattern Input your Image URL or just press enter to see the default image. Created by Sayok Dey Majumder. Github User handle : NeilSayok Link to profile: https://github.com/NeilSayok ''' import cv2 import imutils import urllib.request import numpy as np url = input("Enter Url to your Image or Press Enter if you want to use default image\n") if(url == ""): url = 'https://avatars.githubusercontent.com/u/21328143?v=4' req = urllib.request.urlopen(url) arr = np.asarray(bytearray(req.read()), dtype=np.uint8) img = cv2.imdecode(arr, -1) # 'Load it as it is' img = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) img = imutils.resize(img, width=300,height=300) thresh = 127 im_bw = 255 - cv2.threshold(img, thresh, 255, cv2.THRESH_BINARY)[1] print(im_bw.shape) with open("Out.txt", "w") as fh: for a in im_bw: for b in a: if(b == 255): fh.write("*") else: fh.write(" ") fh.write("\n")
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2.239468
451
# # Copyright (c) 2017, Intel Corporation. # # This program is free software; you can redistribute it and/or modify it # under the terms and conditions of the GNU General Public License, # version 2, as published by the Free Software Foundation. # # This program is distributed in the hope it will be useful, but WITHOUT # ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or # FITNESS FOR A PARTICULAR PURPOSE. See the GNU General Public License for # more details. # """Functionality for analyzing buildstats""" import json import logging import os import re from collections import namedtuple,OrderedDict from statistics import mean log = logging.getLogger() taskdiff_fields = ('pkg', 'pkg_op', 'task', 'task_op', 'value1', 'value2', 'absdiff', 'reldiff') TaskDiff = namedtuple('TaskDiff', ' '.join(taskdiff_fields)) class BSError(Exception): """Error handling of buildstats""" pass class BSTaskAggregate(object): """Class representing multiple runs of the same task""" properties = ('cputime', 'walltime', 'read_bytes', 'write_bytes', 'read_ops', 'write_ops') def append(self, task): """Append new task""" # Reset pre-calculated properties assert isinstance(task, BSTask), "Type is '{}' instead of 'BSTask'".format(type(task)) self._properties = {} self._tasks.append(task) class BSRecipe(object): """Class representing buildstats of one recipe""" def aggregate(self, bsrecipe): """Aggregate data of another recipe buildstats""" if self.nevr != bsrecipe.nevr: raise ValueError("Refusing to aggregate buildstats, recipe version " "differs: {} vs. {}".format(self.nevr, bsrecipe.nevr)) if set(self.tasks.keys()) != set(bsrecipe.tasks.keys()): raise ValueError("Refusing to aggregate buildstats, set of tasks " "in {} differ".format(self.name)) for taskname, taskdata in bsrecipe.tasks.items(): if not isinstance(self.tasks[taskname], BSTaskAggregate): self.tasks[taskname] = BSTaskAggregate([self.tasks[taskname]]) self.tasks[taskname].append(taskdata) @property class BuildStats(dict): """Class representing buildstats of one build""" @property def num_tasks(self): """Get number of tasks""" num = 0 for recipe in self.values(): num += len(recipe.tasks) return num @classmethod def from_json(cls, bs_json): """Create new BuildStats object from JSON object""" buildstats = cls() for recipe in bs_json: if recipe['name'] in buildstats: raise BSError("Cannot handle multiple versions of the same " "package ({})".format(recipe['name'])) bsrecipe = BSRecipe(recipe['name'], recipe['epoch'], recipe['version'], recipe['revision']) for task, data in recipe['tasks'].items(): bsrecipe.tasks[task] = BSTask(data) buildstats[recipe['name']] = bsrecipe return buildstats @staticmethod def from_file_json(path): """Load buildstats from a JSON file""" with open(path) as fobj: bs_json = json.load(fobj) return BuildStats.from_json(bs_json) @staticmethod def split_nevr(nevr): """Split name and version information from recipe "nevr" string""" n_e_v, revision = nevr.rsplit('-', 1) match = re.match(r'^(?P<name>\S+)-((?P<epoch>[0-9]{1,5})_)?(?P<version>[0-9]\S*)$', n_e_v) if not match: # If we're not able to parse a version starting with a number, just # take the part after last dash match = re.match(r'^(?P<name>\S+)-((?P<epoch>[0-9]{1,5})_)?(?P<version>[^-]+)$', n_e_v) name = match.group('name') version = match.group('version') epoch = match.group('epoch') return name, epoch, version, revision @classmethod def from_dir(cls, path): """Load buildstats from a buildstats directory""" if not os.path.isfile(os.path.join(path, 'build_stats')): raise BSError("{} does not look like a buildstats directory".format(path)) log.debug("Reading buildstats directory %s", path) buildstats = cls() subdirs = os.listdir(path) for dirname in subdirs: recipe_dir = os.path.join(path, dirname) if not os.path.isdir(recipe_dir): continue name, epoch, version, revision = cls.split_nevr(dirname) bsrecipe = BSRecipe(name, epoch, version, revision) for task in os.listdir(recipe_dir): bsrecipe.tasks[task] = BSTask.from_file( os.path.join(recipe_dir, task)) if name in buildstats: raise BSError("Cannot handle multiple versions of the same " "package ({})".format(name)) buildstats[name] = bsrecipe return buildstats def aggregate(self, buildstats): """Aggregate other buildstats into this""" if set(self.keys()) != set(buildstats.keys()): raise ValueError("Refusing to aggregate buildstats, set of " "recipes is different") for pkg, data in buildstats.items(): self[pkg].aggregate(data) def diff_buildstats(bs1, bs2, stat_attr, min_val=None, min_absdiff=None): """Compare the tasks of two buildstats""" tasks_diff = [] pkgs = set(bs1.keys()).union(set(bs2.keys())) for pkg in pkgs: tasks1 = bs1[pkg].tasks if pkg in bs1 else {} tasks2 = bs2[pkg].tasks if pkg in bs2 else {} if not tasks1: pkg_op = '+' elif not tasks2: pkg_op = '-' else: pkg_op = ' ' for task in set(tasks1.keys()).union(set(tasks2.keys())): task_op = ' ' if task in tasks1: val1 = getattr(bs1[pkg].tasks[task], stat_attr) else: task_op = '+' val1 = 0 if task in tasks2: val2 = getattr(bs2[pkg].tasks[task], stat_attr) else: val2 = 0 task_op = '-' if val1 == 0: reldiff = float('inf') else: reldiff = 100 * (val2 - val1) / val1 if min_val and max(val1, val2) < min_val: log.debug("Filtering out %s:%s (%s)", pkg, task, max(val1, val2)) continue if min_absdiff and abs(val2 - val1) < min_absdiff: log.debug("Filtering out %s:%s (difference of %s)", pkg, task, val2-val1) continue tasks_diff.append(TaskDiff(pkg, pkg_op, task, task_op, val1, val2, val2-val1, reldiff)) return tasks_diff class BSVerDiff(object): """Class representing recipe version differences between two buildstats"""
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import os import time import random import ast import json import argparse import numpy as np import tensorflow as tf from style_enc_model import Style_Enc_Model from data import CHN_Style_DataLoader from model_utils import save_model, reset_graph NPZ_DIR = "../WriteLikeYouData/npz_relative_dist/CASIA_rdp4.0" assert os.path.exists(NPZ_DIR) print("NPZ_DIR:", NPZ_DIR) def train(sess, model, valid_model, train_dataloader, valid_dataloader, log_root): """Train a model.""" # Setup summary writer. os.makedirs(log_root, exist_ok=True) train_summary_writer = tf.summary.FileWriter(log_root + "/train_log", sess.graph) valid_summary_writer = tf.summary.FileWriter(log_root + "/valid_log") saver = tf.train.Saver(tf.global_variables(), max_to_keep=5) t_vars = tf.trainable_variables() count_t_vars = 0 for var in t_vars: num_param = np.prod(var.get_shape().as_list()) count_t_vars += num_param print('%s %s %d' % (var.name, str(var.get_shape()), num_param)) print('Total trainable variables %d.' % count_t_vars) best_valid_loss = 999999.0 MIN_LR, DECAY = 0.0000001, 0.9999 for step in range(1000000): start = time.time() batch_zi_array, batch_len_array = train_dataloader.get_random_batch_data() curr_learning_rate = (model.init_lr - MIN_LR) * (DECAY ** step) + MIN_LR feed = { model.input_data: batch_zi_array, model.seq_lens: batch_len_array, model.lr: curr_learning_rate, } # training (_, loss, ac_loss, mhe_loss, summ_str) = sess.run([model.train_op, model.loss, model.ac_loss, model.mhe_loss, model.summ], feed) train_summary_writer.add_summary(summ_str, step) train_summary_writer.flush() # log if step % 50 == 0 and step > 0: print("Train step %d, lr:%.6f, loss: %.4f, ac_loss: %.4f, mhe_loss: %.4f; train time: %.2fs" % ( step, curr_learning_rate, loss, ac_loss, mhe_loss, time.time() - start)) # validation if step % 500 == 0 and step > 0: start = time.time() print("validating...", log_root) valid_loss, valid_ac_loss, valid_mhe_loss = evaluate_model(sess, valid_model, valid_dataloader) valid_loss_summ = tf.summary.Summary() valid_loss_summ.value.add(tag='valid_loss', simple_value=float(valid_loss)) valid_loss_summ.value.add(tag='valid_ac_loss', simple_value=float(valid_ac_loss)) valid_loss_summ.value.add(tag='valid_mhe_loss', simple_value=float(valid_mhe_loss)) print("Best valid loss: %.4f, loss: %.4f, ac_loss: %.4f, mhe_loss: %.4f; valid time: %.2fs" % ( best_valid_loss, valid_loss, valid_ac_loss, valid_mhe_loss, time.time() - start)) valid_summary_writer.add_summary(valid_loss_summ, step) valid_summary_writer.flush() if valid_loss < best_valid_loss: best_valid_loss = valid_loss print("Better model, best_valid_loss: %.4f" % best_valid_loss) save_model(sess, saver, log_root, step) if __name__ == '__main__': main()
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2.190021
1,463
km = float(input('digite km rodados: ')) dias = float(input('total de dias: ')) total_de_km = km * 0.15 total_de_dias = dias * 60 total_a_pagar = total_de_dias + total_de_km print(f'total a pagar e: {total_a_pagar} R$')
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2.25
100
# -------------------------------------------------------------------------- # Copyright (c) Microsoft Corporation. All rights reserved. # Licensed under the MIT License. See License.txt in the project root for # license information. # # Code generated by Microsoft (R) AutoRest Code Generator. # Changes may cause incorrect behavior and will be lost if the code is # regenerated. # -------------------------------------------------------------------------- # pylint: disable=too-many-lines
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2.5
266
from VarEvents import Property from VarEvents import Var from time import sleep from xml.dom import minidom class Climate(object): """ This class handles the ISY climate module. | parent: ISY class | xml: String of xml data containing the climate data :ivar Gust_Speed: Watched Variable representing the gust speed. :ivar Temperature: Watched Variable representing the temperature. :ivar Temperature_Rate: Watched Variable representing the temperature rate. :ivar Rain_Rate: Watched Variable representing the rain rate. :ivar Max_Rain_Rate: Watched Variable representing the rain rate. :ivar Temperature_High: Watched Variable representing the high temperature. :ivar Pressure_Rate: Watched variable representing the pressure rate. :ivar Wind_Speed: Watched Variable representing the wind speed. :ivar Elevation: Watched Variable representing the elevation. :ivar Dew_Point: Watched Variable representing the dew point. :ivar Wind_Average_Speed: Watched Variable representing the avg wind speed. :ivar Pressure: Watched Variable representing the pressure. :ivar Gust_Direction: Watched Variable representing the gust direction. :ivar Wind_Average_Direction: Watched Variable representing the average wind direction. :ivar Light: Watched Variable representing the amount of light. :ivar Wind_Direction: Watched Variable representing the wind direction. :ivar Humidity: Watched Variable representing the humidity. :ivar Humidity_Rate: Watched Variable representing the humidity rate. :ivar Rain_Today: Watched Variable representing the forcast rain today. :ivar Light_Rate: Watched Variable representing the light rate. :ivar Water_Deficit_Yesterday: Watched Variable representing the water deficit yesterday. :ivar Irrigation_Requirement: Watched Variable representing the irrigation requirement. :ivar Feels_Like: Watched Variable representing the feels like temperature. :ivar Temperature_Low: Watched Variable representing the low temperature. :ivar Evapotranspiration: Watched Variable representing the evapotranspiration amount. :ivar Gust_Speed_units: Gust speed units. :ivar Temperature_units: Temperature units. :ivar Temperature_Rate_units: Temperature rate units. :ivar Rain_Rate_units: Rain rate units. :ivar Max_Rain_Rate_units: Max rain rate units. :ivar Temperature_High_units: High temperature units. :ivar Pressure_Rate_units: Pressure rate units. :ivar Wind_Speed_units: Wind speed units. :ivar Elevation_units: Elevation units. :ivar Dew_Point_units: Dew point units. :ivar Wind_Average_Speed_units: Average wind speed units. :ivar Pressure_units: Pressure units. :ivar Gust_Direction_units: Gust direction units. :ivar Wind_Average_Direction_units: Average wind direction units. :ivar Light_units: Light amount units. :ivar Wind_Direction_units: Wind direction units. :ivar Humidity_units: Humidity units. :ivar Humidity_Rate_units: Humidity rate units. :ivar Rain_Today_units: Rain forecast units. :ivar Light_Rate_units: Light rate units. :ivar Water_Deficit_Yesterday_units: Water deficit units. :ivar Irrigation_Requirement_units: Irrigation requirement units. :ivar Feels_Like_units: Feels like temperature units. :ivar Temperature_Low_units: Low temperature units. :ivar Evapotranspiration_units: Evapotranspiration units. """ # Values _id2name = ['Temperature', 'Temperature_High', 'Temperature_Low', 'Feels_Like', 'Temperature_Average', 'Humidity', None, 'Pressure', None, 'Dew_Point', 'Wind_Speed', None, 'Wind_Direction', None, 'Gust_Speed', None, 'Total_Rain_Today', 'Light', None, None, None, 'Evapotranspiration', 'Irrigation_Requirement', 'Water_Deficit_Yesterday', 'Elevation', None, None, None, None, 'Average_Temperature_Tomorrow', 'High_Temperature_Tomorrow', 'Low_Temperature_Tomorrow', 'Humidity_Tomorrow', 'Wind_Speed_Tomorrow', 'Gust_Speed_Tomorrow', 'Rain_Tomorrow', 'Snow_Tomorrow', None, None, None, None, 'Forecast_Average_Temperature', 'Forecast_High_Temperature', 'Forecast_Low_Temperature', 'Forecast_Humidity', 'Forecast_Rain', 'Forecast_Snow', None, None, None, None] # value properties Temperature = Property(0, readonly=True) Temperature_High = Property(0, readonly=True) Temperature_Low = Property(0, readonly=True) Feels_Like = Property(0, readonly=True) Temperature_Average = Property(0, readonly=True) Humidity = Property(0, readonly=True) Pressure = Property(0, readonly=True) Dew_Point = Property(0, readonly=True) Wind_Speed = Property(0, readonly=True) Wind_Direction = Property(0, readonly=True) Gust_Speed = Property(0, readonly=True) Total_Rain_Today = Property(0, readonly=True) Light = Property(0, readonly=True) Evapotranspiration = Property(0, readonly=True) Irrigation_Requirement = Property(0, readonly=True) Water_Deficit_Yesterday = Property(0, readonly=True) Elevation = Property(0, readonly=True) # Coverage = Property(0, readonly=True) # Intensity = Property(0, readonly=True) # Weather_Condition = Property(0, readonly=True) # Cloud_Condition = Property(0, readonly=True) Average_Temperature_Tomorrow = Property(0, readonly=True) High_Temperature_Tomorrow = Property(0, readonly=True) Low_Temperature_Tomorrow = Property(0, readonly=True) Humidity_Tomorrow = Property(0, readonly=True) Wind_Speed_Tomorrow = Property(0, readonly=True) Gust_Speed_Tomorrow = Property(0, readonly=True) Rain_Tomorrow = Property(0, readonly=True) Snow_Tomorrow = Property(0, readonly=True) # Coverage_Tomorrow = Property(0, readonly=True) # Intensity_Tomorrow = Property(0, readonly=True) # Weather_Condition_Tomorrow = Property(0, readonly=True) # Cloud_Condition_Tomorrow = Property(0, readonly=True) Forecast_Average_Temperature = Property(0, readonly=True) Forecast_High_Temperature = Property(0, readonly=True) Forecast_Low_Temperature = Property(0, readonly=True) Forecast_Humidity = Property(0, readonly=True) Forecast_Rain = Property(0, readonly=True) Forecast_Snow = Property(0, readonly=True) # Forecast_Coverage = Property(0, readonly=True) # Forecast_Intensity = Property(0, readonly=True) # Forecast_Weather_Condition = Property(0, readonly=True) # Forecast_Cloud_Condition = Property(0, readonly=True) # unit properties Temperature_units = '' Temperature_High_units = '' Temperature_Low_units = '' Feels_Like_units = '' Temperature_Average_units = '' Humidity_units = '' Pressure_units = '' Dew_Point_units = '' Wind_Speed_units = '' Wind_Direction_units = '' Gust_Speed_units = '' Total_Rain_Today_units = '' Light_units = '' Evapotranspiration_units = '' Irrigation_Requirement_units = '' Water_Deficit_Yesterday_units = '' Elevation_units = '' # Coverage_units = '' # Intensity_units = '' # Weather_Condition_units = '' # Cloud_Condition_units = '' Average_Temperature_Tomorrow_units = '' High_Temperature_Tomorrow_units = '' Low_Temperature_Tomorrow_units = '' Humidity_Tomorrow_units = '' Wind_Speed_Tomorrow_units = '' Gust_Speed_Tomorrow_units = '' Rain_Tomorrow_units = '' Snow_Tomorrow_units = '' # Coverage_Tomorrow_units = '' # Intensity_Tomorrow_units = '' # Weather_Condition_Tomorrow_units = '' # Cloud_Condition_Tomorrow_units = '' Forecast_Average_Temperature_units = '' Forecast_High_Temperature_units = '' Forecast_Low_Temperature_units = '' Forecast_Humidity_units = '' Forecast_Rain_units = '' Forecast_Snow_units = '' # Forecast_Coverage_units = '' # Forecast_Intensity_units = '' # Forecast_Weather_Condition_units = '' # Forecast_Cloud_Condition_units = '' def __str__(self): """ Returns a string representing the climate manager. """ return 'Climate Module' def __repr__(self): """ Returns a long string showing all the climate values. """ out = 'Climate Module\n' for attr_name in dir(self): attr = getattr(self, attr_name) if isinstance(attr, Var): units = getattr(self, attr_name + '_units') out += ' ' + attr_name + ' = ' + str(attr) \ + ' ' + units + '\n' return out def parse(self, xml): """ Parses the xml data. xml: String of the xml data """ try: xmldoc = minidom.parseString(xml) except: self.parent.log.error('ISY Could not parse climate, poorly ' + 'formatted XML.') else: # parse definitions feature = xmldoc.getElementsByTagName('climate')[0] for node in feature.childNodes: (val, unit) = self._parse_val(node.firstChild.toxml()) name = node.nodeName try: prop = getattr(self, name) prop.update(val, force=True, silent=True) setattr(self, name + '_units', unit) except: pass self.parent.log.info('ISY Loaded Environment Data') def update(self, waitTime=0): """ Updates the contents of the climate class waitTime: [optional] Amount of seconds to wait before updating """ sleep(waitTime) xml = self.parent.conn.getClimate() self.parse(xml)
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2.53173
4,034
from PySide2.QtCore import Qt, Slot, QDir, QSettings from PySide2.QtWidgets import QApplication, QMainWindow, QWidget, QAction, QPushButton, QFileDialog, QInputDialog, \ QLineEdit, QHBoxLayout, QVBoxLayout, QLabel import sys if __name__ == "__main__": app = QApplication(sys.argv) widget = Application() window = MainWindow(widget) window.resize(800, 600) window.show() sys.exit(app.exec_())
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2.639752
161
from __future__ import division from __future__ import absolute_import # PopulationSim # See full license in LICENSE.txt. import logging import pandas as pd import numpy as np from activitysim.core import pipeline from activitysim.core import inject from activitysim.core.config import setting from .helper import get_control_table from .helper import get_weight_table from .helper import weight_table_name logger = logging.getLogger(__name__) @inject.step() def expand_households(): """ Create a complete expanded synthetic household list with their assigned geographic zone ids. This is the skeleton synthetic household id list with no household or person attributes, one row per household, with geography columns and seed household table household_id. Creates pipeline table expanded_household_ids """ if setting('NO_INTEGERIZATION_EVER', False): logger.warning("skipping expand_households: NO_INTEGERIZATION_EVER") inject.add_table('expanded_household_ids', pd.DataFrame()) return geographies = setting('geographies') household_id_col = setting('household_id_col') low_geography = geographies[-1] # only one we really need is low_geography seed_geography = setting('seed_geography') geography_cols = geographies[geographies.index(seed_geography):] weights = get_weight_table(low_geography, sparse=True) weights = weights[geography_cols + [household_id_col, 'integer_weight']] # - expand weights table by integer_weight, so there is one row per desired hh weight_cols = weights.columns.values weights_np = np.repeat(weights.values, weights.integer_weight.values, axis=0) expanded_weights = pd.DataFrame(data=weights_np, columns=weight_cols) if setting('GROUP_BY_INCIDENCE_SIGNATURE'): # the household_id_col is really the group_id expanded_weights.rename(columns={household_id_col: 'group_id'}, inplace=True) # the original incidence table with one row per hh, with index hh_id household_groups = pipeline.get_table('household_groups') household_groups = household_groups[[household_id_col, 'group_id', 'sample_weight']] # for each group, lists of hh_ids and their sample_weights (as relative probabiliities) # [ [ [<group_0_hh_id_list>], [<group_0_hh_prob_list>] ], # [ [<group_1_hh_id_list>], [<group_1_hh_prob_list>] ], ... ] HH_IDS = 0 HH_PROBS = 1 grouper = household_groups.groupby('group_id') group_hh_probs = [0] * len(grouper) for group_id, df in grouper: hh_ids = list(df[household_id_col]) probs = list(df.sample_weight / df.sample_weight.sum()) group_hh_probs[group_id] = [hh_ids, probs] # FIXME - should sample without replacement? # now make a hh_id choice for each group_id in expanded_weights expanded_weights[household_id_col] = \ expanded_weights.group_id.apply(chooser, convert_dtype=True,) # FIXME - omit in production? del expanded_weights['group_id'] del expanded_weights['integer_weight'] append = inject.get_step_arg('append', False) replace = inject.get_step_arg('replace', False) assert not (append and replace), "can't specify both append and replace for expand_households" if append or replace: t = inject.get_table('expanded_household_ids').to_frame() prev_hhs = len(t.index) added_hhs = len(expanded_weights.index) if replace: # FIXME - should really get from crosswalk table? low_ids_to_replace = expanded_weights[low_geography].unique() t = t[~t[low_geography].isin(low_ids_to_replace)] expanded_weights = pd.concat([t, expanded_weights], ignore_index=True) dropped_hhs = prev_hhs - len(t.index) final_hhs = len(expanded_weights.index) op = 'append' if append else 'replace' logger.info("expand_households op: %s prev hh count %s dropped %s added %s final %s" % (op, prev_hhs, dropped_hhs, added_hhs, final_hhs)) repop = inject.get_step_arg('repop', default=False) inject.add_table('expanded_household_ids', expanded_weights, replace=repop)
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import os import pickle import os.path import sys import torch import torch.utils.data as data import torchvision.transforms as transforms from PIL import Image, ImageDraw, ImageFont import cv2 import numpy as np from operator import itemgetter from skimage.draw import polygon if sys.version_info[0] == 2: import xml.etree.cElementTree as ET else: import xml.etree.ElementTree as ET VOC_CLASSES = ( '__background__', # always index 0 'aeroplane', 'bicycle', 'bird', 'boat', 'bottle', 'bus', 'car', 'cat', 'chair', 'cow', 'diningtable', 'dog', 'horse', 'motorbike', 'person', 'pottedplant', 'sheep', 'sofa', 'train', 'tvmonitor') VOC_CLASSES = ( '__background__', '1', '2', '3', '4', '5', '6', '7', '8', '9', '10', '11', '12', '13', '14', '15', '16', '17', '18', '19', '20') # for making bounding boxes pretty COLORS = ((255, 0, 0, 128), (0, 255, 0, 128), (0, 0, 255, 128), (0, 255, 255, 128), (255, 0, 255, 128), (255, 255, 0, 128)) class AnnotationTransform(object): """Transforms a VOC annotation into a Tensor of bbox coords and label index Initilized with a dictionary lookup of classnames to indexes Arguments: class_to_ind (dict, optional): dictionary lookup of classnames -> indexes (default: alphabetic indexing of VOC's 20 classes) keep_difficult (bool, optional): keep difficult instances or not (default: False) height (int): height width (int): width """ def __call__(self, target): """ Arguments: target (annotation) : the target annotation to be made usable will be an ET.Element Returns: a list containing lists of bounding boxes [bbox coords, class name] """ res = np.empty((0,5)) for obj in target.iter('object'): difficult = int(obj.find('difficult').text) == 1 if not self.keep_difficult and difficult: continue name = obj.find('name').text.lower().strip() bbox = obj.find('bndbox') pts = ['xmin', 'ymin', 'xmax', 'ymax'] bndbox = [] for i, pt in enumerate(pts): cur_pt = int(bbox.find(pt).text) - 1 # scale height or width #cur_pt = cur_pt / width if i % 2 == 0 else cur_pt / height bndbox.append(cur_pt) label_idx = self.class_to_ind[name] bndbox.append(label_idx) res = np.vstack((res,bndbox)) # [xmin, ymin, xmax, ymax, label_ind] # img_id = target.find('filename').text[:-4] return res # [[xmin, ymin, xmax, ymax, label_ind], ... ] class JACQUARDDetection(data.Dataset): """VOC Detection Dataset Object input is image, target is annotation Arguments: root (string): filepath to VOCdevkit folder. image_set (string): imageset to use (eg. 'train', 'val', 'test') transform (callable, optional): transformation to perform on the input image target_transform (callable, optional): transformation to perform on the target `annotation` (eg: take in caption string, return tensor of word indices) dataset_name (string, optional): which dataset to load (default: 'VOC2007') """ def pull_image(self, index): '''Returns the original image object at index in PIL form Note: not using self.__getitem__(), as any transformations passed in could mess up this functionality. Argument: index (int): index of img to show Return: PIL img ''' img_id = self.ids[index] return cv2.imread(self._imgpath % img_id, cv2.IMREAD_COLOR) def pull_anno(self, index): '''Returns the original annotation of image at index Note: not using self.__getitem__(), as any transformations passed in could mess up this functionality. Argument: index (int): index of img to get annotation of Return: list: [img_id, [(label, bbox coords),...]] eg: ('001718', [('dog', (96, 13, 438, 332))]) ''' img_id = self.ids[index] anno = ET.parse(self._annopath % img_id).getroot() # gt = self.target_transform(anno, 1, 1) # gt = self.target_transform(anno) # return img_id[1], gt if self.target_transform is not None: anno = self.target_transform(anno) return anno def pull_img_anno(self, index): '''Returns the original annotation of image at index Note: not using self.__getitem__(), as any transformations passed in could mess up this functionality. Argument: index (int): index of img to get annotation of Return: list: [img_id, [(label, bbox coords),...]] eg: ('001718', [('dog', (96, 13, 438, 332))]) ''' img_id = self.ids[index] img = cv2.imread(self._imgpath % img_id, cv2.IMREAD_COLOR) anno = ET.parse(self._annopath % img_id).getroot() gt = self.target_transform(anno) height, width, _ = img.shape boxes = gt[:,:-1] labels = gt[:,-1] boxes[:, 0::2] /= width boxes[:, 1::2] /= height labels = np.expand_dims(labels,1) targets = np.hstack((boxes,labels)) return img, targets def pull_tensor(self, index): '''Returns the original image at an index in tensor form Note: not using self.__getitem__(), as any transformations passed in could mess up this functionality. Argument: index (int): index of img to show Return: tensorized version of img, squeezed ''' to_tensor = transforms.ToTensor() return torch.Tensor(self.pull_image(index)).unsqueeze_(0) def evaluate_detections(self, all_boxes, output_dir=None): """ all_boxes is a list of length number-of-classes. Each list element is a list of length number-of-images. Each of those list elements is either an empty list [] or a numpy array of detection. all_boxes[class][image] = [] or np.array of shape #dets x 5 """ self._write_voc_results_file(all_boxes) aps,map = self._do_python_eval(output_dir) return aps,map def parse_rec(self, filename): """ Parse a PASCAL VOC xml file """ tree = ET.parse(filename) objects = [] for obj in tree.findall('object'): obj_struct = {} obj_struct['name'] = obj.find('name').text # obj_struct['pose'] = obj.find('pose').text obj_struct['truncated'] = int(obj.find('truncated').text) obj_struct['difficult'] = int(obj.find('difficult').text) bbox = obj.find('bndbox') obj_struct['bbox'] = [int(bbox.find('xmin').text), int(bbox.find('ymin').text), int(bbox.find('xmax').text), int(bbox.find('ymax').text)] objects.append(obj_struct) return objects ## test # if __name__ == '__main__': # ds = VOCDetection('../../../../../dataset/VOCdevkit/', [('2012', 'train')], # None, AnnotationTransform()) # print(len(ds)) # img, target = ds[0] # print(target) # ds.show(1)
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2.218214
3,382
import cv2 import numpy as np import imutils import easyocr from matplotlib import pyplot as plt image = cv2.imread('images/license.jpg') gray = cv2.cvtColor(image, cv2.COLOR_BGR2GRAY) image_filter = cv2.bilateralFilter(gray, 11, 15, 15) edges = cv2.Canny(image_filter, 30, 200) contours = cv2.findContours(edges.copy(), cv2.RETR_TREE, cv2.CHAIN_APPROX_SIMPLE) contours = imutils.grab_contours(contours) contours = sorted(contours, key=cv2.contourArea, reverse=True) position = None for contour in contours: approx = cv2.approxPolyDP(contour, 10, True) number_of_edges = 4 if len(approx) == number_of_edges: position = approx break mask = np.zeros(gray.shape, np.uint8) new_image = cv2.drawContours(mask, [position], 0, 255, -1) bitwise_image = cv2.bitwise_and(image, image, mask=mask) x, y = np.where(mask == 255) x1, y1 = np.min(x), np.min(y) x2, y2 = np.max(x), np.max(y) crop = gray[x1:x2, y1:y2] text = easyocr.Reader(['en']) text = text.readtext(crop) result = text[0][-2] final_image = cv2.putText(image, result, (x1, y2 + 60), cv2.FONT_HERSHEY_PLAIN, 3, (0, 0, 255), 1) final_image = cv2.rectangle(image, (x1, x2), (y1, y2), (0, 255, 0), 1) plt.imshow(cv2.cvtColor(final_image, cv2.COLOR_BGR2RGB)) plt.show()
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2.2
570
# Carlos Montes Parra # A program that displays a number from the Fibonacci sequence. The position # in the sequence is linked to the first and last letter of the user's name # and the addition of their Unicode values. # Adapted from one of Ian McLoughlin's lectures https://github.com/ianmcloughlin/python-fib/blob/master/fibname.py name = "Montes" first = name[0] last = name[-1] firstN = ord(first) lastN = ord(last) x = firstN + lastN ans = fib(x) print("My surname is", name) print("The first letter", first, "is number", firstN) print("The last letter", last, "is number", lastN) print("Fibonacci number", x, "is", ans) # SOLUTION # My surname is Montes # The first letter M is number 77 # The last letter s is number 115 # Fibonacci number 192 is 5972304273877744135569338397692020533504 # ord () is a python built-in function which returns the Unicode value linked to a one-character string. It's the opposite of chr() or unichr()
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3.118033
305
import os import argparse import numpy as np import pandas as pd TASK = "xflickrco" LANGS = ['de', 'ja'] SHOTS = [200, 500, 1000, 1500, '100x5', '200x5'] if __name__ == '__main__': parser = argparse.ArgumentParser() parser.add_argument('--models', type=str) parser.add_argument('--exp_dir', type=str) parser.add_argument('--version', type=str, default=None) args = parser.parse_args() version = f".{args.version}" if args.version is not None else "" exp_dir = args.exp_dir + version models = args.models.split(",") for shot in SHOTS: res_ir_df = pd.DataFrame(columns=['model']+LANGS) res_tr_df = pd.DataFrame(columns=['model']+LANGS) for model in models: res_ir = dict() res_tr = dict() res_ir['model'] = model res_tr['model'] = model for lang in LANGS: fn = os.path.join(exp_dir, model, TASK, lang, str(shot), f"test.out") try: lines = [l.strip() for l in open(fn).readlines() if l.startswith("Final")] #[-1] ir1 = float(lines[-2].split()[1].split(",")[0].split(':')[1]) tr1 = float(lines[-1].split()[1].split(",")[0].split(':')[1]) res_ir[lang] = ir1 res_tr[lang] = tr1 except: print(fn) res_ir[lang] = -1.0 res_tr[lang] = -1.0 # avg_ir = np.mean([res_ir[lang] for lang in LANGS]) # avg_tr = np.mean([res_tr[lang] for lang in LANGS]) # res_ir['avg'] = avg_ir # res_tr['avg'] = avg_tr res_ir_df = res_ir_df.append(res_ir, ignore_index=True) res_tr_df = res_tr_df.append(res_tr, ignore_index=True) res_ir_df.to_csv(f"{TASK}/xFlickrCO-many_ir_{shot}{version}.csv", index=False) res_tr_df.to_csv(f"{TASK}/xFlickrCO-many_tr_{shot}{version}.csv", index=False)
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1.899809
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import matplotlib.pyplot as plt import numpy as np plt.plot(list(index for index, y in enumerate(get_coords())), list(y for y in get_coords()), "y-.s") plt.show()
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from torchtext.data import Field from quati import constants from quati.dataset.vocabulary import Vocabulary class AffixesField(Field): """ Defines a field for affixes (prefixes and suffixes) by setting only unk_token and pad_token to their default constant value. """
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"""Interface to the game""" import anre import time import enum import logging import pkg_resources logging.basicConfig(level=logging.INFO) LOG = logging.getLogger(__name__) AVOID_DOUBLE_TAB_DELAY = 0.1
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# Copyright 2016 Google Inc. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. """Tests for glazier.lib.file_util.""" from pyfakefs import fake_filesystem from glazier.lib import file_util from absl.testing import absltest if __name__ == '__main__': absltest.main()
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import py pydir = py.path.local(py.__file__).dirpath() pytestpath = pydir.join("bin", "py.test") EXPECTTIMEOUT=10.0
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from utils import ListNode
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# -*- coding: utf-8 -*- # Generated by Django 1.11.5 on 2017-11-24 18:27 from __future__ import unicode_literals from django.db import migrations
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2.690909
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# This is a sample Python script. # Press Shift+F10 to execute it or replace it with your code. # Press Double Shift to search everywhere for classes, files, tool windows, actions, and settings. from graphviz import Digraph # Press the green button in the gutter to run the script. if __name__ == '__main__': main() # See PyCharm help at https://www.jetbrains.com/help/pycharm/
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3.385965
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import json import socketserver import threading import time from http.server import BaseHTTPRequestHandler, HTTPServer from io import BytesIO from pathlib import Path import sys from socketserver import ThreadingMixIn from time import sleep import depthai as dai import numpy as np import cv2 from PIL import Image import blobconverter HTTP_SERVER_PORT = 8090 # HTTPServer MJPEG class ThreadedHTTPServer(ThreadingMixIn, HTTPServer): """Handle requests in a separate thread.""" pass # start TCP data server server_TCP = socketserver.TCPServer(('localhost', 8070), TCPServerRequest) th = threading.Thread(target=server_TCP.serve_forever) th.daemon = True th.start() # start MJPEG HTTP Server server_HTTP = ThreadedHTTPServer(('localhost', HTTP_SERVER_PORT), VideoStreamHandler) th2 = threading.Thread(target=server_HTTP.serve_forever) th2.daemon = True th2.start() # MobilenetSSD label texts labelMap = ["background", "aeroplane", "bicycle", "bird", "boat", "bottle", "bus", "car", "cat", "chair", "cow", "diningtable", "dog", "horse", "motorbike", "person", "pottedplant", "sheep", "sofa", "train", "tvmonitor"] syncNN = True # Pipeline is defined, now we can connect to the device with dai.Device(dai.OpenVINO.Version.VERSION_2021_2) as device: cams = device.getConnectedCameras() depth_enabled = dai.CameraBoardSocket.LEFT in cams and dai.CameraBoardSocket.RIGHT in cams # Start pipeline device.startPipeline(create_pipeline(depth_enabled)) print(f"DepthAI is up & running. Navigate to 'localhost:{str(HTTP_SERVER_PORT)}' with Chrome to see the mjpeg stream") # Output queues will be used to get the rgb frames and nn data from the outputs defined above previewQueue = device.getOutputQueue(name="rgb", maxSize=4, blocking=False) detectionNNQueue = device.getOutputQueue(name="detections", maxSize=4, blocking=False) if depth_enabled: xoutBoundingBoxDepthMapping = device.getOutputQueue(name="boundingBoxDepthMapping", maxSize=4, blocking=False) depthQueue = device.getOutputQueue(name="depth", maxSize=4, blocking=False) frame = None detections = [] startTime = time.monotonic() counter = 0 fps = 0 color = (255, 255, 255) while True: inPreview = previewQueue.get() frame = inPreview.getCvFrame() inNN = detectionNNQueue.get() detections = inNN.detections counter+=1 current_time = time.monotonic() if (current_time - startTime) > 1 : fps = counter / (current_time - startTime) counter = 0 startTime = current_time if depth_enabled: depth = depthQueue.get() depthFrame = depth.getFrame() depthFrameColor = cv2.normalize(depthFrame, None, 255, 0, cv2.NORM_INF, cv2.CV_8UC1) depthFrameColor = cv2.equalizeHist(depthFrameColor) depthFrameColor = cv2.applyColorMap(depthFrameColor, cv2.COLORMAP_HOT) if len(detections) != 0: boundingBoxMapping = xoutBoundingBoxDepthMapping.get() roiDatas = boundingBoxMapping.getConfigData() for roiData in roiDatas: roi = roiData.roi roi = roi.denormalize(depthFrameColor.shape[1], depthFrameColor.shape[0]) topLeft = roi.topLeft() bottomRight = roi.bottomRight() xmin = int(topLeft.x) ymin = int(topLeft.y) xmax = int(bottomRight.x) ymax = int(bottomRight.y) cv2.rectangle(depthFrameColor, (xmin, ymin), (xmax, ymax), color, cv2.FONT_HERSHEY_SCRIPT_SIMPLEX) # If the frame is available, draw bounding boxes on it and show the frame height = frame.shape[0] width = frame.shape[1] for detection in detections: # Denormalize bounding box x1 = int(detection.xmin * width) x2 = int(detection.xmax * width) y1 = int(detection.ymin * height) y2 = int(detection.ymax * height) try: label = labelMap[detection.label] except: label = detection.label cv2.putText(frame, str(label), (x1 + 10, y1 + 20), cv2.FONT_HERSHEY_TRIPLEX, 0.5, color) cv2.putText(frame, "{:.2f}".format(detection.confidence*100), (x1 + 10, y1 + 35), cv2.FONT_HERSHEY_TRIPLEX, 0.5, color) if depth_enabled: cv2.putText(frame, f"X: {int(detection.spatialCoordinates.x)} mm", (x1 + 10, y1 + 50), cv2.FONT_HERSHEY_TRIPLEX, 0.5, color) cv2.putText(frame, f"Y: {int(detection.spatialCoordinates.y)} mm", (x1 + 10, y1 + 65), cv2.FONT_HERSHEY_TRIPLEX, 0.5, color) cv2.putText(frame, f"Z: {int(detection.spatialCoordinates.z)} mm", (x1 + 10, y1 + 80), cv2.FONT_HERSHEY_TRIPLEX, 0.5, color) cv2.rectangle(frame, (x1, y1), (x2, y2), color, cv2.FONT_HERSHEY_SIMPLEX) server_TCP.datatosend = str(label) + "," + f"{int(detection.confidence * 100)}%" cv2.putText(frame, "NN fps: {:.2f}".format(fps), (2, frame.shape[0] - 4), cv2.FONT_HERSHEY_TRIPLEX, 0.4, color) if depth_enabled: new_width = int(depthFrameColor.shape[1] * (frame.shape[0] / depthFrameColor.shape[0])) stacked = np.hstack([frame, cv2.resize(depthFrameColor, (new_width, frame.shape[0]))]) cv2.imshow("stacked", stacked) server_HTTP.frametosend = stacked else: cv2.imshow("frame", frame) server_HTTP.frametosend = frame if cv2.waitKey(1) == ord('q'): break
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import string import pdb from collections import namedtuple import math ADD, SUB, MUL, DIV, CHAR = 'ADD','SUB','MUL','DIV','CHAR' NUM, EOF, OPAR, CPAR, POW = 'NUM','EOF','OPAR','CPAR','POW' WHITESPACE = string.whitespace Token = namedtuple('Token',['token_type', 'token_value']) if __name__ == "__main__": main()
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# -*- coding: utf-8 -*- """ @author: Victor Kohler @since: date 17/12/2016 @version: 0.1 """ import httplib import helpers import cookies class Response(object): """Used to set and return data back to the server. The Response object can be instantiated in one of two ways: 1. It is created manually in the view function to add custom headers, cookies or response codes. 2. It gets created automatically once the view function returns some data. Create the response object from the view using app.make_response(data) """ def __init__(self, make_response=None, code=200, data=''): """For the view data we're currently supporting either a tuple with both the returned data and a dictionary of headers or just the returned data. """ if isinstance(data, tuple): self.data = data[0] headers = data[1] else: self.data = data headers = {} self.headers = headers self.code = code self.make_response = make_response def set_cookie(self, key, value='', path='/', expires=None, max_age=None, domain=None, secure=False, httponly=False): """Creates a cookie dictionary and adds it to the headers. This function is ment to be used in the view function: resp = make_response(data) resp.set_cookie('key', 'value') """ cookie = cookies.create_cookie(key, value, path, expires, max_age, domain, secure, httponly) #TODO: Handle multiple cookies self.headers.update(cookie) def render(self): """Renders the final response back to the server with status code, headers and data. It aslo transform headers and codes into a WSGI compatible format. If status code is 5xx or 4xx no view data is returned. """ # If the content type is not specified, we set # it to text/html as the default if 'content-type' not in map(lambda x:x.lower(), self.headers): self.headers['Content-Type'] = 'text/html' # Set headers as list of tuples self.headers = [(k, v) for k, v in self.headers.items()] # httplib.responses maps the HTTP 1.1 status codes to W3C names. # Output example: '200 OK' or '404 Not Found' resp_code = '{} {}'.format(self.code, httplib.responses[self.code]) if str(self.code)[0] in ['4', '5'] and not self.data: self.make_response(resp_code, self.headers) return resp_code.encode('utf-8') try: data = bytes(self.data).encode('utf-8') except UnicodeDecodeError: data = bytes(self.data) self.make_response(resp_code, self.headers) return data
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2.439863
1,164
# Copyright 2021 Sony Corporation. # Copyright 2021 Sony Group Corporation. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import numpy as np import pytest import nnabla as nn import nnabla_rl.algorithms as A import nnabla_rl.environments as E from nnabla_rl.replay_buffer import ReplayBuffer if __name__ == "__main__": from testing_utils import generate_dummy_experiences pytest.main() else: from ..testing_utils import generate_dummy_experiences
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3.455197
279
# Generated by Django 2.0.4 on 2018-04-25 14:50 from django.db import migrations, models import django.db.models.deletion
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2.818182
44
#!/usr/bin/env python # from .app_macros import * #relative import - did not work properly from app_macros import *
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3.05
40
"""Clean Code in Python - Chapter 3: General Traits of Good Code > Error Handling - Exceptions """ import logging import time from base import Connector, Event logger = logging.getLogger(__name__) def connect_with_retry( connector: Connector, retry_n_times: int, retry_backoff: int = 5 ): """Tries to establish the connection of <connector> retrying <retry_n_times>, and waiting <retry_backoff> seconds between attempts. If it can connect, returns the connection object. If it's not possible to connect after the retries have been exhausted, raises ``ConnectionError``. :param connector: An object with a ``.connect()`` method. :param retry_n_times int: The number of times to try to call ``connector.connect()``. :param retry_backoff int: The time lapse between retry calls. """ for _ in range(retry_n_times): try: return connector.connect() except ConnectionError as e: logger.info( "%s: attempting new connection in %is", e, retry_backoff ) time.sleep(retry_backoff) exc = ConnectionError(f"Couldn't connect after {retry_n_times} times") logger.exception(exc) raise exc class DataTransport: """An example of an object that separates the exception handling by abstraction levels. """ _RETRY_BACKOFF: int = 5 _RETRY_TIMES: int = 3
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2.657407
540
from flask import Blueprint, render_template, Response from application.helpers import requires_auth from core.tag.models import Tag tag_pages = Blueprint('tag', __name__ , template_folder='templates', static_folder='static') @tag_pages.route("/list") @requires_auth
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3.532468
77
# -*- coding: UTF-8 -*- import os import tqdm import pickle import argparse import numpy as np from scipy.io import loadmat parser = argparse.ArgumentParser(description='widerface evaluate') parser.add_argument('-p', '--pred', default="./widerface_evaluate/widerface_txt/") parser.add_argument('-g', '--gt', default='./widerface_evaluate/ground_truth/') args = parser.parse_args() def bbox_overlaps(bboxes1, bboxes2, mode='iou'): """Calculate the ious between each bbox of bboxes1 and bboxes2. Args: bboxes1(ndarray): shape (n, 4) bboxes2(ndarray): shape (k, 4) mode(str): iou (intersection over union) or iof (intersection over foreground) Returns: ious(ndarray): shape (n, k) """ assert mode in ['iou', 'iof'] bboxes1 = bboxes1.astype(np.float32) bboxes2 = bboxes2.astype(np.float32) rows = bboxes1.shape[0] cols = bboxes2.shape[0] ious = np.zeros((rows, cols), dtype=np.float32) if rows * cols == 0: return ious exchange = False if bboxes1.shape[0] > bboxes2.shape[0]: bboxes1, bboxes2 = bboxes2, bboxes1 ious = np.zeros((cols, rows), dtype=np.float32) exchange = True area1 = (bboxes1[:, 2] - bboxes1[:, 0] + 1) * ( bboxes1[:, 3] - bboxes1[:, 1] + 1) area2 = (bboxes2[:, 2] - bboxes2[:, 0] + 1) * ( bboxes2[:, 3] - bboxes2[:, 1] + 1) for i in range(bboxes1.shape[0]): x_start = np.maximum(bboxes1[i, 0], bboxes2[:, 0]) y_start = np.maximum(bboxes1[i, 1], bboxes2[:, 1]) x_end = np.minimum(bboxes1[i, 2], bboxes2[:, 2]) y_end = np.minimum(bboxes1[i, 3], bboxes2[:, 3]) overlap = np.maximum(x_end - x_start + 1, 0) * np.maximum( y_end - y_start + 1, 0) if mode == 'iou': union = area1[i] + area2 - overlap else: union = area1[i] if not exchange else area2 ious[i, :] = overlap / union if exchange: ious = ious.T return ious def get_gt_boxes(gt_dir): """ gt dir: (wider_face_val.mat, wider_easy_val.mat, wider_medium_val.mat, wider_hard_val.mat)""" gt_mat = loadmat(os.path.join(gt_dir, 'wider_face_val.mat')) hard_mat = loadmat(os.path.join(gt_dir, 'wider_hard_val.mat')) medium_mat = loadmat(os.path.join(gt_dir, 'wider_medium_val.mat')) easy_mat = loadmat(os.path.join(gt_dir, 'wider_easy_val.mat')) facebox_list = gt_mat['face_bbx_list'] event_list = gt_mat['event_list'] file_list = gt_mat['file_list'] hard_gt_list = hard_mat['gt_list'] medium_gt_list = medium_mat['gt_list'] easy_gt_list = easy_mat['gt_list'] return facebox_list, event_list, file_list, hard_gt_list, medium_gt_list, easy_gt_list def norm_score(pred): """ norm score pred {key: [[x1,y1,x2,y2,s]]} """ max_score = 0 min_score = 1 for _, k in pred.items(): for _, v in k.items(): if len(v) == 0: continue _min = np.min(v[:, -1]) _max = np.max(v[:, -1]) max_score = max(_max, max_score) min_score = min(_min, min_score) diff = max_score - min_score for _, k in pred.items(): for _, v in k.items(): if len(v) == 0: continue v[:, -1] = (v[:, -1] - min_score)/diff def image_eval(pred, gt, ignore, iou_thresh): """ single image evaluation pred: Nx5 gt: Nx4 ignore: """ _pred = pred.copy() _gt = gt.copy() pred_recall = np.zeros(_pred.shape[0]) recall_list = np.zeros(_gt.shape[0]) proposal_list = np.ones(_pred.shape[0]) _pred[:, 2] = _pred[:, 2] + _pred[:, 0] _pred[:, 3] = _pred[:, 3] + _pred[:, 1] _gt[:, 2] = _gt[:, 2] + _gt[:, 0] _gt[:, 3] = _gt[:, 3] + _gt[:, 1] overlaps = bbox_overlaps(_pred[:, :4], _gt) for h in range(_pred.shape[0]): gt_overlap = overlaps[h] max_overlap, max_idx = gt_overlap.max(), gt_overlap.argmax() if max_overlap >= iou_thresh: if ignore[max_idx] == 0: recall_list[max_idx] = -1 proposal_list[h] = -1 elif recall_list[max_idx] == 0: recall_list[max_idx] = 1 r_keep_index = np.where(recall_list == 1)[0] pred_recall[h] = len(r_keep_index) return pred_recall, proposal_list if __name__ == '__main__': evaluation(args.pred, args.gt)
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import os import subprocess import shutil OBJDUMP = "objdump" DLL_NAME_PREFIX = 'DLL Name:' paths = filter(lambda line: not "windows" in line.lower(), os.environ['PATH'].split(os.pathsep)) searchfiles = [f for f in os.listdir('.') if is_interesting_local_file(f)] while len(searchfiles): localfile = searchfiles.pop(0) print "checking " + localfile for dep in get_dependencies(localfile): if not in_cwd(dep): fullpath = find_in_path(dep) if fullpath: print "copying from " + fullpath shutil.copy(fullpath, os.getcwd()) searchfiles.append(dep)
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253
import sys import typing def bvh(filepath: str = "", filter_glob: str = "*.bvh", target: typing.Union[str, int] = 'ARMATURE', global_scale: float = 1.0, frame_start: int = 1, use_fps_scale: bool = False, update_scene_fps: bool = False, update_scene_duration: bool = False, use_cyclic: bool = False, rotate_mode: typing.Union[str, int] = 'NATIVE', axis_forward: typing.Union[str, int] = '-Z', axis_up: typing.Union[str, int] = 'Y'): '''Load a BVH motion capture file :param filepath: File Path, Filepath used for importing the file :type filepath: str :param filter_glob: filter_glob :type filter_glob: str :param target: Target, Import target type :type target: typing.Union[str, int] :param global_scale: Scale, Scale the BVH by this value :type global_scale: float :param frame_start: Start Frame, Starting frame for the animation :type frame_start: int :param use_fps_scale: Scale FPS, Scale the framerate from the BVH to the current scenes, otherwise each BVH frame maps directly to a Blender frame :type use_fps_scale: bool :param update_scene_fps: Update Scene FPS, Set the scene framerate to that of the BVH file (note that this nullifies the ‘Scale FPS’ option, as the scale will be 1:1) :type update_scene_fps: bool :param update_scene_duration: Update Scene Duration, Extend the scene’s duration to the BVH duration (never shortens the scene) :type update_scene_duration: bool :param use_cyclic: Loop, Loop the animation playback :type use_cyclic: bool :param rotate_mode: Rotation, Rotation conversionQUATERNION Quaternion, Convert rotations to quaternions.NATIVE Euler (Native), Use the rotation order defined in the BVH file.XYZ Euler (XYZ), Convert rotations to euler XYZ.XZY Euler (XZY), Convert rotations to euler XZY.YXZ Euler (YXZ), Convert rotations to euler YXZ.YZX Euler (YZX), Convert rotations to euler YZX.ZXY Euler (ZXY), Convert rotations to euler ZXY.ZYX Euler (ZYX), Convert rotations to euler ZYX. :type rotate_mode: typing.Union[str, int] :param axis_forward: Forward :type axis_forward: typing.Union[str, int] :param axis_up: Up :type axis_up: typing.Union[str, int] ''' pass
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2.685185
864
left = 1 right = 22 p = Solution() print(p.selfDividingNumbers(left,right))
[ 9464, 796, 352, 198, 3506, 796, 2534, 198, 79, 796, 28186, 3419, 198, 4798, 7, 79, 13, 944, 35, 1699, 278, 49601, 7, 9464, 11, 3506, 4008 ]
2.777778
27
from rest_framework.views import APIView from rest_framework.response import Response from rest_framework import status from . import models from allauth.socialaccount.providers.facebook.views import FacebookOAuth2Adapter from rest_auth.registration.views import SocialLoginView
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4.227273
66
from django.test import TestCase from rdmsapp.models import Contact class ContactTests(TestCase): """Contact model tests."""
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3.275
40