*Machine Learning Learning Checklist* 🤖📘  

✅ *Machine Learning Learning Checklist* 🤖📘

 

📚 *Fundamentals*

– [ ] Math Essentials (Linear Algebra, Calculus, Probability, Statistics)

– [ ] Python Programming

– [ ] Data Structures & Algorithms

– [ ] Jupyter / Google Colab for experiments

 

📊 *Data Preprocessing*

– [ ] NumPy & Pandas

– [ ] Handling Missing Data & Outliers

– [ ] Feature Engineering

– [ ] Feature Scaling & Encoding

– [ ] Train-Test Split & Cross-Validation

 

🧠 *Core ML Concepts*

– [ ] Supervised Learning

– [ ] Unsupervised Learning

– [ ] Overfitting vs Underfitting

– [ ] Bias-Variance Tradeoff

– [ ] Evaluation Metrics (Accuracy, Precision, Recall, F1)

 

📈 *Key ML Algorithms*

– [ ] Linear & Logistic Regression

– [ ] K-Nearest Neighbors (KNN)

– [ ] Decision Trees & Random Forest

– [ ] Support Vector Machines (SVM)

– [ ] Naive Bayes

– [ ] Clustering (K-Means, Hierarchical)

– [ ] Dimensionality Reduction (PCA, t-SNE)

 

🛠️ *Libraries & Tools*

– [ ] Scikit-learn

– [ ] XGBoost / LightGBM

– [ ] Statsmodels

– [ ] MLflow (Experiment Tracking)

– [ ] Git & GitHub

 

📂 *Projects to Build*

– [ ] House Price Prediction

– [ ] Spam Email Classifier

– [ ] Loan Approval Predictor

– [ ] Customer Segmentation

– [ ] Fraud Detection System

 

🚀 *Practice & Growth*

– [ ] Kaggle Competitions

– [ ] Study ML Case Studies

– [ ] Learn from Notebooks & Blogs

– [ ] Read Research Papers (optional)

– [ ] Document Projects in Portfolio

 

💬 *Tap ❤️ for more!*

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