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Refactor datasets_server_valid_rows function to handle response from datasets server
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import logging
import os
import random
from datetime import timedelta
from statistics import mean
from typing import Annotated, Any, Iterator, Union
import fasttext
from cashews import cache
from dotenv import load_dotenv
from fastapi import FastAPI, Path, Query
from httpx import AsyncClient, Client, Timeout
from huggingface_hub import hf_hub_download
from iso639 import Lang
from starlette.responses import RedirectResponse
from toolz import concat, groupby, valmap
cache.setup("mem://")
logger = logging.getLogger(__name__)
app = FastAPI()
load_dotenv()
HF_TOKEN = os.getenv("HF_TOKEN")
os.environ["HF_HUB_ENABLE_HF_TRANSFER"] = "1"
FASTTEXT_PREFIX_LENGTH = 9 # fasttext labels are formatted like "__label__eng_Latn"
BASE_DATASETS_SERVER_URL = "https://datasets-server.huggingface.co"
DEFAULT_FAST_TEXT_MODEL = "facebook/fasttext-language-identification"
headers = {
"authorization": f"Bearer ${HF_TOKEN}",
}
timeout = Timeout(60, read=120)
client = Client(headers=headers, timeout=timeout)
async_client = AsyncClient(headers=headers, timeout=timeout)
TARGET_COLUMN_NAMES = {
"text",
"input",
"tokens",
"prompt",
"instruction",
"sentence_1",
"question",
"sentence2",
"answer",
"sentence",
"response",
"context",
"query",
"chosen",
"rejected",
}
def datasets_server_valid_rows(hub_id: str):
try:
resp = client.get(f"{BASE_DATASETS_SERVER_URL}/is-valid?dataset={hub_id}")
data = resp.json()
return True if data.get("viewer") else bool(data.get("preview"))
except Exception as e:
logger.error(f"Failed to get is-valid for {hub_id}: {e}")
return False
async def get_first_config_and_split_name(hub_id: str):
try:
resp = await async_client.get(
f"https://datasets-server.huggingface.co/splits?dataset={hub_id}"
)
data = resp.json()
return data["splits"][0]["config"], data["splits"][0]["split"]
except Exception as e:
logger.error(f"Failed to get splits for {hub_id}: {e}")
return None
async def get_dataset_info(hub_id: str, config: str | None = None):
if config is None:
config = get_first_config_and_split_name(hub_id)
if config is None:
return None
else:
config = config[0]
resp = await async_client.get(
f"{BASE_DATASETS_SERVER_URL}/info?dataset={hub_id}&config={config}"
)
resp.raise_for_status()
return resp.json()
@cache(ttl=timedelta(minutes=5))
async def fetch_rows(url: str) -> list[dict]:
response = await async_client.get(url)
if response.status_code == 200:
data = response.json()
return data.get("rows")
else:
print(f"Failed to fetch data: {response.status_code}")
print(url)
return []
# Function to get random rows from the dataset
async def get_random_rows(
hub_id: str,
total_length: int,
number_of_rows: int,
max_request_calls: int,
config="default",
split="train",
):
rows = []
rows_per_call = min(
number_of_rows // max_request_calls, total_length // max_request_calls
)
rows_per_call = min(rows_per_call, 100) # Ensure rows_per_call is not more than 100
for _ in range(min(max_request_calls, number_of_rows // rows_per_call)):
offset = random.randint(0, total_length - rows_per_call)
url = f"https://datasets-server.huggingface.co/rows?dataset={hub_id}&config={config}&split={split}&offset={offset}&length={rows_per_call}"
logger.info(f"Fetching {url}")
batch_rows = await fetch_rows(url)
rows.extend(batch_rows)
if len(rows) >= number_of_rows:
break
return [row.get("row") for row in rows]
def load_model(repo_id: str) -> fasttext.FastText._FastText:
from pathlib import Path
Path("code/models").mkdir(parents=True, exist_ok=True)
model_path = hf_hub_download(
repo_id,
"model.bin",
# cache_dir="code/models",
# local_dir="code/models",
# local_dir_use_symlinks=False,
)
return fasttext.load_model(model_path)
model = load_model(DEFAULT_FAST_TEXT_MODEL)
def yield_clean_rows(rows: Union[list[str], str], min_length: int = 3) -> Iterator[str]:
for row in rows:
if isinstance(row, str):
# split on lines and remove empty lines
line = row.split("\n")
for line in line:
if line:
yield line
elif isinstance(row, list):
try:
line = " ".join(row)
if len(line) < min_length:
continue
else:
yield line
except TypeError:
continue
def model_predict(inputs: str, k=1) -> list[dict[str, float]]:
predictions = model.predict(inputs, k=k)
return [
{"label": label[FASTTEXT_PREFIX_LENGTH:], "score": prob}
for label, prob in zip(predictions[0], predictions[1])
]
def get_label(x):
return x.get("label")
def get_mean_score(preds):
return mean([pred.get("score") for pred in preds])
def filter_by_frequency(counts_dict: dict, threshold_percent: float = 0.2):
"""Filter a dict to include items whose value is above `threshold_percent`"""
total = sum(counts_dict.values())
threshold = total * threshold_percent
return {k for k, v in counts_dict.items() if v >= threshold}
def try_parse_language(lang: str) -> str | None:
try:
split = lang.split("_")
lang = split[0]
lang = Lang(lang)
return lang.pt1
except Exception as e:
logger.error(f"Failed to parse language {lang}: {e}")
return None
def predict_rows(
rows, target_column, language_threshold_percent=0.2, return_raw_predictions=False
):
rows = (row.get(target_column) for row in rows)
rows = (row for row in rows if row is not None)
rows = list(yield_clean_rows(rows))
predictions = [model_predict(row) for row in rows]
predictions = [pred for pred in predictions if pred is not None]
predictions = list(concat(predictions))
predictions_by_lang = groupby(get_label, predictions)
langues_counts = valmap(len, predictions_by_lang)
keys_to_keep = filter_by_frequency(
langues_counts, threshold_percent=language_threshold_percent
)
filtered_dict = {k: v for k, v in predictions_by_lang.items() if k in keys_to_keep}
raw_model_prediction_summary = dict(valmap(get_mean_score, filtered_dict))
parsed_langs = {
try_parse_language(k): v for k, v in raw_model_prediction_summary.items()
}
default_data = {
"language_prediction_summary": parsed_langs,
"raw_model_prediction_summary": raw_model_prediction_summary,
"hub_id": "hub_id",
"config": "config",
}
if return_raw_predictions:
default_data["raw_predictions"] = predictions
return default_data
# @app.get("/", response_class=HTMLResponse)
# async def read_index():
# html_content = Path("index.html").read_text()
# return HTMLResponse(content=html_content)
@app.get("/", include_in_schema=False)
def root():
return RedirectResponse(url="/docs")
# item_id: Annotated[int, Path(title="The ID of the item to get", ge=1)], q: str
@app.get("/predict_dataset_language/{hub_id:path}")
@cache(ttl=timedelta(minutes=10))
async def predict_language(
hub_id: Annotated[str, Path(title="The hub id of the dataset to predict")],
config: str | None = None,
split: str | None = None,
max_request_calls: Annotated[
int, Query(title="Max number of requests to datasets server", gt=0, le=50)
] = 10,
number_of_rows: int = 1000,
language_threshold_percent: float = 0.2,
) -> dict[Any, Any] | None:
is_valid = datasets_server_valid_rows(hub_id)
if not is_valid:
logger.error(f"Dataset {hub_id} is not accessible via the datasets server.")
if not config and not split:
config, split = await get_first_config_and_split_name(hub_id)
if not config:
config, _ = await get_first_config_and_split_name(hub_id)
if not split:
_, split = await get_first_config_and_split_name(hub_id)
info = await get_dataset_info(hub_id, config)
if info is None:
logger.error(f"Dataset {hub_id} is not accessible via the datasets server.")
return None
if dataset_info := info.get("dataset_info"):
total_rows_for_split = dataset_info.get("splits").get(split).get("num_examples")
features = dataset_info.get("features")
column_names = set(features.keys())
logger.info(f"Column names: {column_names}")
if not set(column_names).intersection(TARGET_COLUMN_NAMES):
logger.error(
f"Dataset {hub_id} {column_names} is not in any of the target columns {TARGET_COLUMN_NAMES}"
)
return None
for column in TARGET_COLUMN_NAMES:
if column in column_names:
target_column = column
logger.info(f"Using column {target_column} for language detection")
break
random_rows = await get_random_rows(
hub_id,
total_rows_for_split,
number_of_rows,
max_request_calls,
config,
split,
)
logger.info(f"Predicting language for {len(random_rows)} rows")
predictions = predict_rows(
random_rows,
target_column,
language_threshold_percent=language_threshold_percent,
)
predictions["hub_id"] = hub_id
predictions["config"] = config
predictions["split"] = split
return predictions