Machine Learning

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Course Content

Session -1
Real-World Applications of Machine Learning
How Netflix Uses ML for Recommendations
How ML Helps in Spam Filtering
How ML Is Used in Self-Driving Cars and Medical Diagnosis
Types of Machine Learning
Main Steps in the ML Workflow
What Is Hugging Face Model Hub?
How Does Machine Learning Improve Over Time?
Session -2
1. What are the different types of data used in Machine Learning?
2. What are some common data preprocessing techniques?
3. How do you handle missing values?
4. How do you remove duplicates and outliers?
5. What is Feature Engineering?
6. What are encoding techniques for categorical variables?
What is feature scaling, and why is it necessary?
8. How do you select important features?
9. How does Hugging Face Datasets Library help in Machine Learning?
Session-3
2. What is overfitting and underfitting in ML?
3. How does hyperparameter tuning improve ML models?
5. How can I avoid common mistakes when splitting my dataset?
Session 4: Supervised Learning – Regression & Classification
1. What is Supervised Learning, and how does it work?
2. What is the difference between Regression and Classification?
3. How does Linear Regression work?
4. What are some real-world applications of Linear Regression?
5. What is Logistic Regression, and how is it used in spam detection?
7. How does Hugging Face perform Sentiment Analysis?
Session 5: Unsupervised Learning – Clustering & Pattern Recognition
2. What is Clustering in ML? Provide an example.
3. How does K-Means Clustering work?
4. What are some real-life applications of K-Means Clustering?
5. How does Hugging Face’s Named Entity Recognition (NER) Work?
Session 6: How to Evaluate ML Models?
1. What is Model Evaluation, and why is it important?
2. What is the difference between Overfitting and Underfitting?
3. What is train-test split, and how does cross-validation help?
4. What are the key evaluation metrics used in ML?
5. How can you evaluate a trained model’s accuracy?
Session 7: Model Improvement & Advanced ML Techniques
1. What are some techniques to improve model performance?
3. What is the difference between Bagging and Boosting?
4. How does Random Forest work?
5. What is XGBoost, and why is it popular?
6. How does Hugging Face’s Question-Answering Model work?
Session 8: Deploying Machine Learning Models
1. What is Model Deployment, and why is it necessary?
2. What are different ML deployment methods?
3. How can you deploy an ML model using Streamlit?
Advanced Techniques for Hyperparameter Tuning
About
1. Bayesian Optimization
2. Tree-structured Parzen Estimators (TPE)
3. Hyperband
4. Population-Based Training (PBT)
5. BOHB (Bayesian Optimization and Hyperband)
6. Optuna
Ray Tune
8. Keras Tuner
9. SageMaker Automatic Model Tuning
Summary of Advanced Techniques
Important References
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