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Course Outline
Introduction to Neural Networks
Introduction to Applied Machine Learning
- Distinguishing Statistical learning from Machine learning
- Iteration and evaluation processes
- Understanding the Bias-Variance trade-off
Machine Learning with Python
- Selecting appropriate libraries
- Utilizing add-on tools
Machine Learning Concepts and Applications
Regression
- Linear regression
- Generalizations and Nonlinearity
- Practical use cases
Classification
- Bayesian refresher
- Naive Bayes
- Logistic regression
- K-Nearest neighbors
- Use Cases
Cross-validation and Resampling
- Cross-validation approaches
- Bootstrap methods
- Use Cases
Unsupervised Learning
- K-means clustering
- Examples
- Challenges of unsupervised learning and beyond K-means
Short Introduction to NLP methods
- Word and sentence tokenization
- Text classification
- Sentiment analysis
- Spelling correction
- Information extraction
- Parsing
- Meaning extraction
- Question answering
Artificial Intelligence & Deep Learning
Technical Overview
- R v/s Python
- Caffe v/s TensorFlow
- Various Machine Learning Libraries
Industry Case Studies
Requirements
- Foundational knowledge of business operations and technical concepts
- Basic understanding of software and systems
- Familiarity with Statistics at an Excel proficiency level
21 Hours
Testimonials (1)
The enthusiasm to the topic. The examples he made an he explained it very well. Sympatic. A little to detailed for beginners. For managers, it could be more abstract in fewer days. But it was designed to fit and we had a good alignment in advance.