import streamlit as st import pandas as pd import joblib import pickle import numpy as np # Load model and preprocessing artifacts model = joblib.load("ensemble_voting_model.pkl") with open("features_to_drop.pkl", "rb") as f: features_to_drop = pickle.load(f) # Column names from the raw 49-column dataset (before feature engineering) raw_columns = [ 'srcip', 'sport', 'dstip', 'dsport', 'proto', 'state', 'dur', 'sbytes', 'dbytes', 'sttl', 'dttl', 'sloss', 'dloss', 'service', 'Sload', 'Dload', 'Spkts', 'Dpkts', 'swin', 'dwin', 'stcpb', 'dtcpb', 'smeansz', 'dmeansz', 'trans_depth', 'res_bdy_len', 'Sjit', 'Djit', 'Stime', 'Ltime', 'Sintpkt', 'Dintpkt', 'tcprtt', 'synack', 'ackdat', 'is_sm_ips_ports', 'ct_state_ttl', 'ct_flw_http_mthd', 'is_ftp_login', 'ct_ftp_cmd', 'ct_srv_src', 'ct_srv_dst', 'ct_dst_ltm', 'ct_src_ ltm', 'ct_src_dport_ltm', 'ct_dst_sport_ltm', 'ct_dst_src_ltm', 'attack_cat', 'Label' ] # Function to preprocess a single input row def preprocess_input(row_values): if len(row_values) != 49: raise ValueError(f"❌ Expected 49 values, but got {len(row_values)}.") # Create DataFrame from input input_df = pd.DataFrame([row_values], columns=raw_columns) # Convert all columns to numeric input_df = input_df.apply(pd.to_numeric, errors='coerce') # Feature engineering input_df['duration'] = input_df['Ltime'] - input_df['Stime'] input_df['byte_ratio'] = input_df['sbytes'] / (input_df['dbytes'] + 1) input_df['pkt_ratio'] = input_df['Spkts'] / (input_df['Dpkts'] + 1) # ✅ Fix: convert features_to_drop to list before adding with another list input_df = input_df.drop(columns=list(features_to_drop) + ['attack_cat', 'Label'], errors='ignore') return input_df # Streamlit UI st.title("🔐 Intrusion Detection In Networks") st.markdown("Paste a **single row** of raw features from the dataset (49 values, tab-separated):") user_input = st.text_area("Input Row", height=150) if st.button("Predict"): try: # Parse the input values = user_input.strip().split("\t") # Preprocess the input row processed_df = preprocess_input(values) # Predict using the preprocessed data prediction = model.predict(processed_df)[0] st.success(f"✅ Predicted Attack Category: **{prediction}**") except Exception as e: st.error(f"❌ Error processing input: {e}")