merve's picture
merve HF staff
Update app.py
bb8750e
raw
history blame
No virus
1.18 kB
import sklearn
import gradio as gr
import joblib
import pandas as pd
import datasets
pipe = joblib.load("./model.pkl")
title = "Supersoaker Defective Product Prediction"
description = "This model predicts Supersoaker production line failures. Drag and drop any slice from dataset or edit values as you wish in below dataframe component."
with open("./config.json") as f:
config_dict = eval(f.read())
headers = config_dict["sklearn"]["columns"]
df = datasets.load_dataset("merve/supersoaker-failures")
df = df["train"].to_pandas()
df.dropna(axis=0, inplace=True)
inputs = [gr.Dataframe(headers = headers.keys(), row_count = (2, "dynamic"), col_count=(24,"dynamic"), label="Input Data", interactive=1)]
outputs = [gr.Dataframe(row_count = (2, "dynamic"), col_count=(1, "fixed"), label="Predictions", headers=["Failures"])]
def infer(inputs):
data = pd.DataFrame(inputs, columns=[headers])
predictions = pipe.predict(inputs)
return pd.DataFrame(predictions, columns=["results"])
gr.Interface(infer, inputs = inputs, outputs = outputs, title = title,
description = description, examples=df.head(3), cache_examples=False).launch(debug=True)