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import os
from datetime import datetime, timedelta
from functools import lru_cache
from typing import Any, List
import gradio as gr
import httpx
import pandas as pd
import plotly.express as px
import polars as pl
from cachetools import TTLCache, cached
from datasets import Dataset, load_dataset
from dotenv import load_dotenv
from httpx import Client
from toolz import concat, frequencies
from tqdm.auto import tqdm
load_dotenv()
token = os.environ["HUGGINGFACE_TOKEN"]
user_agent = os.environ["USER_AGENT"]
user = os.environ["USER_TO_TRACK"]
os.environ["HF_HUB_ENABLE_HF_TRANSFER"] = "1"
assert token
assert user_agent
assert user
headers = {"user-agent": user_agent, "authorization": f"Bearer {token}"}
limits = httpx.Limits(max_keepalive_connections=10, max_connections=20)
client = Client(headers=headers, limits=limits, timeout=120.0)
@lru_cache(maxsize=None)
def get_hub_community_activity(user: str) -> List[Any]:
with tqdm() as pbar:
all_data = []
i = 1
while True:
r = httpx.get(
f"https://huggingface.co/api/recent-activity?limit=100&activityType=discussion&skip={i}&entity={user}&feedType=user",
headers=headers,
)
activity = r.json()["recentActivity"]
if not activity:
break
all_data.append(activity)
if len(all_data) % 1000 == 0:
# print(f"Length of all_data: {len(all_data)}")
pbar.write(f"Length of all_data: {len(all_data)}")
i += 100
pbar.update(100)
return list(concat(all_data))
# def get_hub_community_activity(user: str) -> List[Any]:
# all_data = []
# for i in range(1, 2000, 100):
# r = httpx.get(
# f"https://huggingface.co/api/recent-activity?limit=100&type=discussion&skip={i}&user={user}"
# )
# activity = r.json()["recentActivity"]
# all_data.append(activity)
# return list(concat(all_data))
def parse_date_time(date_time: str) -> datetime:
return datetime.strptime(date_time, "%Y-%m-%dT%H:%M:%S.%fZ")
def parse_pr_data(data):
data = data["discussionData"]
createdAt = parse_date_time(data["createdAt"])
pr_number = data["num"]
status = data["status"]
repo_id = data["repo"]["name"]
repo_type = data["repo"]["type"]
isPullRequest = data["isPullRequest"]
return {
"createdAt": createdAt,
"pr_number": pr_number,
"status": status,
"repo_id": repo_id,
"type": repo_type,
"isPullRequest": isPullRequest,
}
@cached(cache=TTLCache(maxsize=1000, ttl=timedelta(minutes=30), timer=datetime.now))
def update_data():
try:
previous_df = pl.DataFrame(
load_dataset(f"librarian-bot/{user}-stats", split="train").data.table
)
except FileNotFoundError:
previous_df = pl.DataFrame()
data = get_hub_community_activity(user)
data = [d for d in data if d.get("discussionData", None) is not None]
data = [parse_pr_data(d) for d in data]
update_df = pl.DataFrame(data)
df = pl.concat([previous_df, update_df]).unique()
if len(df) != len(previous_df):
Dataset(df.to_arrow()).push_to_hub(f"{user}-stats", token=token)
return df
# def get_pr_status():
# df = update_data()
# df = df.filter(pl.col("isPullRequest") is True)
# return df.select(pl.col("status").value_counts())
# # return frequencies(x["status"] for x in pr_data)
@lru_cache(maxsize=512)
def get_pr_status(user: str):
all_data = get_hub_community_activity(user)
print(all_data)
# pr_data = (
# x["discussionData"] for x in all_data if x["discussionData"]["isPullRequest"]
# )
all_data = [
pr_data
for pr_data in all_data
if pr_data.get("discussionData", None) is not None
]
pr_data = (
x.get("discussionData", {})
for x in all_data
if x.get("discussionData", {}).get("isPullRequest", False)
)
return frequencies(x["status"] for x in pr_data)
def create_pie():
frequencies = get_pr_status(user)
df = pd.DataFrame({"status": frequencies.keys(), "number": frequencies.values()})
return px.pie(df, values="number", names="status", template="seaborn")
def group_status_by_pr_number():
all_data = get_hub_community_activity(user)
all_data = [d for d in all_data if d.get("discussionData", None) is not None]
all_data = [parse_pr_data(d) for d in all_data]
return (
pl.DataFrame(all_data).groupby("status").agg(pl.mean("pr_number")).to_pandas()
)
def plot_over_time():
all_data = get_hub_community_activity(user)
all_data = [d for d in all_data if d.get("discussionData", None) is not None]
all_data = [parse_pr_data(d) for d in all_data]
df = pl.DataFrame(all_data).with_columns(pl.col("createdAt").cast(pl.Date))
df = df.pivot(
values=["status"],
index=["createdAt"],
columns=["status"],
aggregate_function="count",
)
df = df.fill_null(0)
df = df.with_columns(pl.sum(["open", "closed", "merged"])).sort("createdAt")
df = df.to_pandas().set_index("createdAt").cumsum()
return px.line(df, x=df.index, y=[c for c in df.columns if c != "sum"])
create_pie()
with gr.Blocks() as demo:
# frequencies = get_pr_status("librarian-bot")
gr.Markdown(f"# {user} PR Stats")
gr.Markdown(f"Total prs and issues opened by {user}: {len(update_data()):,}")
# gr.Markdown(f"Total PRs opened: {sum(frequencies.values())}")
with gr.Column():
gr.Markdown("## Pull requests status")
gr.Markdown(
"The below pie chart shows the percentage of pull requests made by"
" librarian bot that are open, closed or merged"
)
gr.Plot(create_pie())
with gr.Column():
gr.Markdown("Pull requests opened, closed and merged over time (cumulative)")
gr.Plot(plot_over_time())
with gr.Column():
gr.Markdown("## Pull requests status by PR number")
gr.DataFrame(group_status_by_pr_number())
demo.launch(debug=True)