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Personal collection of machine learning methods and utilities built for fast, reusable implementation. It covers core steps like preprocessing, modeling, tuning, and evaluation — with compact code and embedded explanations to streamline real-world ML workflows.

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ashrithssreddy/ml-toolkit

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Machine Learning Toolkit

A curated, hands-on collection of Machine Learning methods with clear explanations, minimal code wrappers, and dual-level insights:

  • 🔬 For technical users: see internal mechanics, diagnostics, and decision logic
  • 📊 For business users: skim final insights, performance highlights, and takeaway summaries

🧩 What's Inside

Topic Notebooks
Preprocessing Categorical Features, Outliers, Missing Values, Scaling, Class Imbalance
Supervised Learning Classification, Prediction, Time Series
Unsupervised Learning Clustering, Dimensionality Reduction, Association Rule Learning
NLP Text_Cleaning, Vectorization, Topic Modeling, Embeddings
ML Ops Basics, Model Packaging, Pipeline Automation, Deployment, Monitoring & CI

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Personal collection of machine learning methods and utilities built for fast, reusable implementation. It covers core steps like preprocessing, modeling, tuning, and evaluation — with compact code and embedded explanations to streamline real-world ML workflows.

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