import gradio as gr import numpy as np import pandas as pd import matplotlib.pyplot as plt def sales_projections(employee_data): sales_data = employee_data.iloc[:, 1:4].astype("int").to_numpy() regression_values = np.apply_along_axis(lambda row: np.array(np.poly1d(np.polyfit([0,1,2], row, 2))), 0, sales_data) projected_months = np.repeat(np.expand_dims( np.arange(3,12), 0), len(sales_data), axis=0) projected_values = np.array([ month * month * regression[0] + month * regression[1] + regression[2] for month, regression in zip(projected_months, regression_values)]) plt.plot(projected_values.T) plt.legend(employee_data["Name"]) return employee_data, plt.gcf(), regression_values iface = gr.Interface(sales_projections, gr.inputs.Dataframe( headers=["Name", "Jan Sales", "Feb Sales", "Mar Sales"], default=[["Jon", 12, 14, 18], ["Alice", 14, 17, 2], ["Sana", 8, 9.5, 12]] ), [ "dataframe", "plot", "numpy" ], description="Enter sales figures for employees to predict sales trajectory over year." ) if __name__ == "__main__": iface.launch()