
WHAT YOU WILL LEARN
Build ML models with NumPy & scikit-learn, build & train supervised models for prediction & binary classification tasks (linear, logistic regression)
Build & train a neural network with TensorFlow to perform multi-class classification, & build & use decision trees & tree ensemble methods
Apply best practices for ML development & use unsupervised learning techniques for unsupervised learning including clustering & anomaly detection
Build recommender systems with a collaborative filtering approach & a content-based deep learning method & build a deep reinforcement learning model
SKILLS YOU WILL GAIN
Decision Trees
Artificial Neural Network
Logistic Regression
Recommender Systems
Linear Regression
Regularization to Avoid Overfitting
Gradient Descent
Supervised Learning
Logistic Regression for Classification
Xgboost
Tensorflow
Tree Ensembles
Top Rated News
- MRMockup - Mockup Bundle
- Finding North Photography
- Sean Archer
- John Gress Photography
- Motion Science
- AwTeaches
- Learn Squared
- PhotoWhoa
- Houdini-Course
- Photigy
- August Dering Photography
- StudioGuti
- Creatoom
- Creature Art Teacher
- Creator Foundry
- Patreon Collections
- Udemy - Turkce
- BigFilms
- Jerry Ghionis
- ACIDBITE
- BigMediumSmall
- Boom Library
- Globe Plants
- Unleashed Education
- The School of Photography
- Visual Education
- LeartesStudios - Cosmos
- Fxphd
- All Veer Fancy Collection!
- All OJO Images
- All ZZVe Vectors