import streamlit as st import hopsworks import joblib import pandas as pd import numpy as np import folium from streamlit_folium import st_folium, folium_static import json import time from datetime import timedelta, datetime from branca.element import Figure from functions import decode_features, get_model def fancy_header(text, font_size=24): res = f'{text}' st.markdown(res, unsafe_allow_html=True ) st.title('⛅️Air Quality Prediction Project🌩') progress_bar = st.sidebar.header('⚙️ Working Progress') progress_bar = st.sidebar.progress(0) st.write(36 * "-") fancy_header('\n📡 Connecting to Hopsworks Feature Store...') project = hopsworks.login(api_key_value="0rdWXlLgEd3mkGOg.iRZ7TtAkWGPlJHNQcAEph6Qbokoaq7QTBRI9ckwWUki8tIYGyBvrKhJvtLoUOGQ4") fs = project.get_feature_store() feature_view = fs.get_feature_view( name = 'air_quality_fv', version = 1 ) st.write("Successfully connected!✔️") progress_bar.progress(20) st.write(36 * "-") fancy_header('\n☁️ Getting batch data from Feature Store...') start_date = datetime.now() - timedelta(days=1) start_time = int(start_date.timestamp()) * 1000 X = feature_view.get_batch_data(start_time=start_time) progress_bar.progress(50) latest_date_unix = str(X.date.values[0])[:10] latest_date = time.ctime(int(latest_date_unix)) st.write(f"⏱ Data for {latest_date}") X = X.drop(columns=["date"]).fillna(0) data_to_display = decode_features(X, feature_view=feature_view) progress_bar.progress(60) st.write(36 * "-") fancy_header(f"🗺 Processing the map...") fig = Figure(width=550,height=350) my_map = folium.Map(location=[58, 20], zoom_start=3.71) fig.add_child(my_map) folium.TileLayer('Stamen Terrain').add_to(my_map) folium.TileLayer('Stamen Toner').add_to(my_map) folium.TileLayer('Stamen Water Color').add_to(my_map) folium.TileLayer('cartodbpositron').add_to(my_map) folium.TileLayer('cartodbdark_matter').add_to(my_map) folium.LayerControl().add_to(my_map) data_to_display = data_to_display[["city", "temp", "humidity", "conditions", "aqi"]] cities_coords = {("Sundsvall", "Sweden"): [62.390811, 17.306927], ("Stockholm", "Sweden"): [59.334591, 18.063240], ("Malmo", "Sweden"): [55.604981, 13.003822]} if "Kyiv" in data_to_display["city"]: cities_coords[("Kyiv", "Ukraine")]: [50.450001, 30.523333] data_to_display = data_to_display.set_index("city") cols_names_dict = {"temp": "Temperature", "humidity": "Humidity", "conditions": "Conditions", "aqi": "AQI"} data_to_display = data_to_display.rename(columns=cols_names_dict) cols_ = ["Temperature", "Humidity", "AQI"] data_to_display[cols_] = data_to_display[cols_].apply(lambda x: round(x, 1)) for city, country in cities_coords: text = f"""

{city}

""" for column in data_to_display.columns: text += f""" """ text += """
Country: {country}
{column}: {data_to_display.loc[city][column]}
""" folium.Marker( cities_coords[(city, country)], popup=text, tooltip=f"{city}" ).add_to(my_map) # call to render Folium map in Streamlit folium_static(my_map) progress_bar.progress(80) st.sidebar.write("-" * 36) model = get_model(project=project, model_name="gradient_boost_model", evaluation_metric="f1_score", sort_metrics_by="max") preds = model.predict(X) cities = [city_tuple[0] for city_tuple in cities_coords.keys()] next_day_date = datetime.today() + timedelta(days=1) next_day = next_day_date.strftime ('%d/%m/%Y') df = pd.DataFrame(data=preds, index=cities, columns=[f"AQI Predictions for {next_day}"], dtype=int) st.sidebar.write(df) progress_bar.progress(100) st.button("Re-run")