Chapter 1: Introduction to Spark No of pages -15 Sub -Topics 1. Spark Evolution 2. Spark Fundamentals 3. Setting up Spark 4. Spark Components
Chapter 2: Introduction to Machine Learning
No of pages : 10 Sub - Topics: 1. Supervised Machine Learning 2. Unsupervised Machine Learning 3. Semi...
prečítať celé
Chapter 1: Introduction to Spark No of pages -15 Sub -Topics 1. Spark Evolution 2. Spark Fundamentals 3. Setting up Spark 4. Spark Components
Chapter 2: Introduction to Machine Learning
No of pages : 10 Sub - Topics: 1. Supervised Machine Learning 2. Unsupervised Machine Learning 3. Semi supervised Machine Learning 4. Reinforcement Learning
Chapter 3: Data Processing with PySpark No of pages: 15 Sub - Topics 1. Data Ingestion 2. Data Cleaning 3. Data Transformation
Chapter 4: Linear Regression with PySpark No of pages:15 Sub - Topics: 1. Feature Engineering 2. Model Training 3. Model Tuning
Chapter 5: Logistic Regression with PySpark No of pages:15 1. Feature Engineering 2. Model Training 3. Model Tuning
Chapter 6: Random Forests with PySpark No of pages:15 1. Feature Engineering 2. Model Training 3. Model Tuning
Chapter 7: Clustering with PySpark No of pages:15 1. Hierarchical Clustering 2. K Means 3. Gaussian Mixture
Chapter 8: Recommendation Engine with PySpark No of pages:15
1. Collaborative Filtering 2. Introduction to hybrid recommendation
Chapter 9: NLP with PySpark No of pages:15 1. Sequence Embeddings for Prediction 2. Dimensionality Reduction
Chapter 10: Use Case: End to End lifecycle of Machine Learning model with PySpark
No of pages:10 1. Business Challenge 2. Machine Learning solution using PySpark
Skryť popis
Recenzie