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This Repository contains code used in the 1st Lecture Series for ML Hackathon on Kaggle: Help Autonomous Cars Recognize Street Signs

Here are some Useful Resources

Introduction to Machine Learning

Classification:

Neural networks:

General:

Good Visualizations:

Some useful documentation:

There are various helpful articles provided by Kaggle also. You can check them out too. Plotting the error as you learn is a great way of visualising whether your model is working correctly. Matplotlib.pyplot is very useful for this.

For Fun: Try playing with Orange3 Data Mining Toolkit


Advanced section:

Ensembles :

Hierarchical clustering: https://www.youtube.com/watch?v=GVz6Y8r5AkY&list=PLBv09BD7ez_7qIbBhyQDr-LAKWUeycZtx