Spaces:
Sleeping
Sleeping
| import streamlit as st | |
| import pandas as pd | |
| # Load Hackathon and Team Data from CSV | |
| hackathon_csv = "Hackathon_Dataset.csv" | |
| team_csv = "Team_Dataset.csv" | |
| df_hackathons = pd.read_csv(hackathon_csv) | |
| df_teams = pd.read_csv(team_csv) | |
| # Convert Event Date and Registration Deadline to datetime | |
| df_hackathons["Event Date"] = pd.to_datetime(df_hackathons["Event Date"], errors='coerce') | |
| df_hackathons["Registration Deadline"] = pd.to_datetime(df_hackathons["Registration Deadline"], errors='coerce') | |
| # Ensure numerical columns are correctly formatted | |
| df_hackathons["Prize Pool"] = pd.to_numeric(df_hackathons["Prize Pool"], errors='coerce') | |
| # Get unique team names | |
| team_list = df_teams["Team Name"].unique() | |
| # Streamlit UI Setup | |
| st.set_page_config(page_title="Hackathon Finder", layout="wide") | |
| # Sidebar - Filters | |
| st.sidebar.header("π Filter Hackathons") | |
| difficulty = st.sidebar.selectbox("Select Difficulty", ["All"] + df_hackathons["Difficulty Level"].dropna().unique().tolist()) | |
| mode = st.sidebar.selectbox("Select Mode", ["All", "Online", "Offline"]) | |
| date_range = st.sidebar.slider("Select Event Date Range", | |
| min_value=df_hackathons["Event Date"].min().date(), | |
| max_value=df_hackathons["Event Date"].max().date(), | |
| value=(df_hackathons["Event Date"].min().date(), df_hackathons["Event Date"].max().date())) | |
| # Sorting Option | |
| sort_option = st.sidebar.selectbox("Sort Hackathons By:", | |
| ["Prize Pool (High to Low)", "Registration Deadline (Soonest First)"]) | |
| # Team Selection | |
| st.title("π Hackathon Recommendation System") | |
| st.write("**Select your team to find the best hackathons for you!**") | |
| selected_team = st.selectbox("Select Team:", team_list) | |
| # Fetch Skills of Selected Team | |
| team_skills = df_teams[df_teams["Team Name"] == selected_team]["Skills"].tolist() | |
| unique_skills = list(set(skill.strip() for sublist in team_skills for skill in sublist.split(","))) | |
| # Function to Recommend Hackathons | |
| def recommend_hackathons(skills, hackathon_data, difficulty, mode, date_range, sort_option): | |
| recommendations = [] | |
| for _, row in hackathon_data.iterrows(): | |
| required_skills = row["Required Skills"].split(",") | |
| required_skills = [skill.strip().title() for skill in required_skills] | |
| matched_skills = [skill for skill in skills if skill in required_skills] | |
| if matched_skills: | |
| # Apply Filters | |
| if difficulty != "All" and row["Difficulty Level"] != difficulty: | |
| continue | |
| if mode != "All" and row["Mode"] != mode: | |
| continue | |
| if not (date_range[0] <= row["Event Date"].date() <= date_range[1]): | |
| continue | |
| recommendations.append({ | |
| "Hackathon Name": row["Hackathon Name"], | |
| "Organizer": row["Organizer"], | |
| "Prize Pool ($)": f"${row['Prize Pool']:,.0f}", | |
| "Registration Deadline": row["Registration Deadline"].strftime('%Y-%m-%d'), | |
| "Matched Skills": len(matched_skills) # Used for sorting but not displayed | |
| }) | |
| # Sorting by Matched Skills (Highest First) | |
| recommendations.sort(key=lambda x: x["Matched Skills"], reverse=True) | |
| # Apply additional sorting if needed | |
| if sort_option == "Prize Pool (High to Low)": | |
| recommendations.sort(key=lambda x: float(x["Prize Pool ($)"].replace("$", "").replace(",", "")), reverse=True) | |
| elif sort_option == "Registration Deadline (Soonest First)": | |
| recommendations.sort(key=lambda x: x["Registration Deadline"]) | |
| # Convert to DataFrame and Remove Matched Skills Column | |
| df_recommendations = pd.DataFrame(recommendations).drop(columns=["Matched Skills"]) | |
| # Show only the top 10 hackathons | |
| return df_recommendations.head(10) | |
| # Display Recommendations as Table | |
| if unique_skills: | |
| recommendations_df = recommend_hackathons(unique_skills, df_hackathons, difficulty, mode, date_range, sort_option) | |
| if not recommendations_df.empty: | |
| st.success(f"### β Recommended Hackathons for **{selected_team}**") | |
| st.dataframe(recommendations_df) | |
| else: | |
| st.warning("β οΈ No matching hackathons found. Try different filters.") | |
| else: | |
| st.warning("β οΈ No skills found for this team.") | |
| # Footer | |
| st.markdown("---") | |
| st.write("π― **Built with Streamlit | AI-Powered Hackathon Finder**") | |