Made a model to analyse traffic pattern and predict congestion.#143
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gitishman wants to merge 1 commit into
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Made a model to analyse traffic pattern and predict congestion.#143gitishman wants to merge 1 commit into
gitishman wants to merge 1 commit into
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👋 @gitishman 👋 We're delighted to have your pull request! Please take a moment to check our contributing guidelines and ensure you've filled out the PR template for a smooth process. We will review it soon. |
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Please check this out @king04aman |
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Summary
Add: Real-Time Traffic Update using GPS & Machine Learning
A Python program that predicts traffic congestion in real time using a Random Forest classifier trained on GPS and speed data.
What it does:
Generates historical GPS traffic data with realistic rush-hour patterns
Trains a Random Forest model to classify congestion as LOW / MODERATE / HIGH
Runs a live terminal feed — simulates GPS readings every 2 seconds and predicts congestion on the fly