freddyaboulton's picture
Add files
ef48b80
raw
history blame contribute delete
No virus
1.5 kB
import gradio as gr
import pypistats
from datetime import date
from dateutil.relativedelta import relativedelta
import pandas as pd
from prophet import Prophet
pd.options.plotting.backend = "plotly"
def get_forecast(lib, time):
data = pypistats.overall(lib, total=True, format="pandas")
data = data.groupby("category").get_group("with_mirrors").sort_values("date")
start_date = date.today() - relativedelta(months=int(time.split(" ")[0]))
df = data[(data['date'] > str(start_date))]
df1 = df[['date','downloads']]
df1.columns = ['ds','y']
m = Prophet()
m.fit(df1)
future = m.make_future_dataframe(periods=90)
forecast = m.predict(future)
fig1 = m.plot(forecast)
return fig1
with gr.Blocks() as demo:
gr.Markdown(
"""
## Pypi Download Stats πŸ“ˆ with Prophet Forecasting
See live download stats for popular open-source libraries πŸ€— along with a 3 month forecast using Prophet
The source is [here](https://huggingface.co/gradio/timeseries-forecasting-with-prophet).
""")
with gr.Row():
lib = gr.Dropdown(["pandas", "scikit-learn", "torch", "prophet"], label="Library", value="pandas")
time = gr.Dropdown(["3 months", "6 months", "9 months", "12 months"], label="Downloads over the last...", value="12 months")
plt = gr.Plot()
lib.change(get_forecast, [lib, time], plt)
time.change(get_forecast, [lib, time], plt)
demo.load(get_forecast, [lib, time], plt)
demo.launch()