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import streamlit as st
import os
import pathlib
import pandas as pd
from collections import defaultdict
import json
import copy
import plotly.express as px
from dataset_loading import load_local_qrels, load_local_corpus, load_local_queries
os.environ["PROTOCOL_BUFFERS_PYTHON_IMPLEMENTATION"] = "python"
st.set_page_config(layout="wide")
current_checkboxes = []
query_input = None
@st.cache_data
def convert_df(df):
# IMPORTANT: Cache the conversion to prevent computation on every rerun
return df.to_csv(path_or_buf=None, index=False, quotechar='"').encode('utf-8')
def create_histogram_relevant_docs(relevant_df):
# turn results into a dataframe and then plot
fig = px.histogram(relevant_df, x="relevant_docs")
# make it fit in one column
fig.update_layout(
height=400,
width=250
)
return fig
def get_current_data():
cur_query_data = []
cur_query = query_input.replace("\n", "\\n")
for doc_id, checkbox in current_checkboxes:
if checkbox:
cur_query_data.append({
"new_narrative": cur_query,
"qid": st.session_state.selectbox_instance,
"doc_id": doc_id,
"is_relevant": 0
})
# return the data as a CSV pandas
return convert_df(pd.DataFrame(cur_query_data))
if 'cur_instance_num' not in st.session_state:
st.session_state.cur_instance_num = -1
def validate(config_option, file_loaded):
if config_option != "None" and file_loaded is None:
st.error("Please upload a file for " + config_option)
st.stop()
with st.sidebar:
st.title("Options")
st.header("Upload corpus")
corpus_file = st.file_uploader("Choose a file", key="corpus")
corpus = load_local_corpus(corpus_file)
st.header("Upload queries")
queries_file = st.file_uploader("Choose a file", key="queries")
queries = load_local_queries(queries_file)
st.header("Upload qrels")
qrels_file = st.file_uploader("Choose a file", key="qrels")
qrels = load_local_qrels(qrels_file)
## make sure all qids in qrels are in queries and write out a warning if not
if queries is not None and qrels is not None:
missing_qids = set(qrels.keys()) - set(queries.keys()) | set(queries.keys()) - set(qrels.keys())
if len(missing_qids) > 0:
st.warning(f"The following qids in qrels are not in queries and will be deleted: {missing_qids}")
# remove them from qrels and queries
for qid in missing_qids:
if qid in qrels:
del qrels[qid]
if qid in queries:
del queries[qid]
data = []
for key, value in qrels.items():
data.append({"relevant_docs": len(value)})
relevant_df = pd.DataFrame(data)
z = st.header("Analysis Options")
# sliderbar of how many Top N to choose
n_relevant_docs = st.slider("Number of relevant docs", 1, 999, 20)
col1, col2 = st.columns([1, 3], gap="large")
if corpus is not None and queries is not None and qrels is not None:
with st.sidebar:
st.success("All files uploaded")
with col1:
# breakpoint()
set_of_cols = set(qrels.keys())
container_for_nav = st.container()
name_of_columns = sorted([item for item in set_of_cols])
instances_to_use = name_of_columns
st.title("Instances")
def sync_from_drop():
if st.session_state.selectbox_instance == "Overview":
st.session_state.number_of_col = -1
st.session_state.cur_instance_num = -1
else:
index_of_obj = name_of_columns.index(st.session_state.selectbox_instance)
# print("Index of obj: ", index_of_obj, type(index_of_obj))
st.session_state.number_of_col = index_of_obj
st.session_state.cur_instance_num = index_of_obj
def sync_from_number():
st.session_state.cur_instance_num = st.session_state.number_of_col
# print("Session state number of col: ", st.session_state.number_of_col, type(st.session_state.number_of_col))
if st.session_state.number_of_col == -1:
st.session_state.selectbox_instance = "Overview"
else:
st.session_state.selectbox_instance = name_of_columns[st.session_state.number_of_col]
number_of_col = container_for_nav.number_input(min_value=-1, step=1, max_value=len(instances_to_use) - 1, on_change=sync_from_number, label=f"Select instance by index (up to **{len(instances_to_use) - 1}**)", key="number_of_col")
selectbox_instance = container_for_nav.selectbox("Select instance by ID", ["Overview"] + name_of_columns, on_change=sync_from_drop, key="selectbox_instance")
st.divider()
# make pie plot showing how many relevant docs there are per query histogram
st.header("Relevant Docs Per Query")
plotly_chart = create_histogram_relevant_docs(relevant_df)
st.plotly_chart(plotly_chart)
st.divider()
# now show the number with relevant docs less than `n_relevant_docs`
st.header("Relevant Docs Less Than {}:".format(n_relevant_docs))
st.subheader(f'{relevant_df[relevant_df["relevant_docs"] < n_relevant_docs].shape[0]} Queries')
with col2:
# get instance number
inst_index = number_of_col
if inst_index >= 0:
inst_num = instances_to_use[inst_index]
st.markdown("<h1 style='text-align: center; color: black;text-decoration: underline;'>Editor</h1>", unsafe_allow_html=True)
container = st.container()
container.divider()
container.subheader(f"Query")
query_text = queries[str(inst_num)].strip()
query_input = container.text_area(f"QID: {inst_num}", query_text)
container.divider()
## Documents
# relevant
relevant_docs = list(qrels[str(inst_num)].keys())[:n_relevant_docs]
doc_texts = [(doc_id, corpus[doc_id]["title"] if "title" in corpus[doc_id] else "", corpus[doc_id]["text"]) for doc_id in relevant_docs]
container.subheader(f"Relevant Documents ({len(list(qrels[str(inst_num)].keys()))})")
current_checkboxes = []
for (docid, title, text) in doc_texts:
current_checkboxes.append((docid, container.checkbox(f'{docid} is Non-Relevant', key=docid)))
container.text_area(f"{docid}:", text)
container.divider()
if st.checkbox("Download data as CSV"):
st.download_button(
label="Download data as CSV",
data=get_current_data(),
file_name=f'annotation_query_{inst_num}.csv',
mime='text/csv',
)
# none checked
elif inst_index < 0:
st.title("Overview")
else:
st.warning("Please choose a dataset and upload a run file. If you chose \"custom\" be sure that you uploaded all files (queries, corpus, qrels)") |