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AI & ML Roadmap

🚀 AI & Machine Learning: The 6-Phase Roadmap

This section transforms you from a data observer into an AI Architect. Every technology here follows our rigid 6-phase implementation to ensure foundations come before optimization.


🏗️ The 6-Phase Roadmap

Phase 1: Foundations

  • Focus: Linear Regression, Logistic Regression, and the Scikit-Learn pipeline.
  • Goal: Get a “Hello World” model running with a deep understanding of Bias and Variance.

Phase 2: Supervised Logic

  • Focus: Decision Trees, Random Forests, XGBoost, and SVMs.
  • Goal: Master non-linear decision making and ensemble techniques.

Phase 3: Unsupervised & Features

  • Focus: K-Means Clustering, PCA (Dimensionality Reduction), and Feature Engineering.
  • Goal: Discover hidden structures and optimize the “Information Density” of your data.

Phase 4: Deep Learning Foundations

  • Focus: Multilayer Perceptrons (MLP), Backpropagation, and PyTorch/TensorFlow.
  • Goal: Understand the execution pipeline of artificial neural networks.

Phase 5: Generative AI & Modern NLP

Phase 6: Agents & Model Tuning


🛠️ Essential Toolbox

  • Libraries: scikit-learn, pytorch, xgboost, pandas.
  • Infrastructure: MLflow (Tracking), DVC (Data versioning).
  • Math: Linear Algebra (Vectors/Matrices), Calculus (Gradients).