This course includes
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20 hours of LIVE classes​
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2 articles to help you onboard
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​5 downloadable resources


Why Choose Our Program?
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Intensive, hands-on labs with real-world projects.
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Mentorship from seasoned AI practitioners Step-by-step guidance to build a standout.
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AI portfolio Networking with industry leaders and peers
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Mentorship from seasoned AI practitioners Step-by-step guidance to build a standout.
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AI portfolio Networking with industry leaders and peers
What you'll learn:
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Build generative AI systems with OpenAI, RAG, and LLM Agents
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Build artificial neural networks with Tensorflow and Keras
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Implement machine learning at massive scale with Apache Spark's MLLib
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Classify images, data, and sentiments using deep learning
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Make predictions using linear regression, polynomial regression, and multivariate regression
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Data Visualization with MatPlotLib and Seaborn
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Understand reinforcement learning - and how to build a Pac-Man bot
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​Clean your input data to remove outliers
Course Content:
Introduction to ML/AI for Data Engineers
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Overview of ML/AI Concepts
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Mapping Data Engineering to ML
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Course Roadmap & Expectations
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Weekly Mini Project
Fundamentals of ML, Linear Algebra and Statistics
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ML Basics & Common Algorithms
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Linear Algebra Essentials
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Statistics & Hypothesis Testing
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Integration and Wrap-up
EDA for ML
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Data Visualization Techniques
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Statistical Summaries & Descriptive Analytics
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Outlier Detection & Data Quality Assessment
Feature Engineering for ML
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Feature Extraction Techniques
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Automated Feature Engineering Tools
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Practical Feature Engineering Applications
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Weekly Mini Project
Data Pipelines for ML
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Designing ETL/ELT Processes for ML
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Advanced Data Cleaning & Transformation
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Integrating Real-Time Data Flows
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Weekly Mini Project
Model Selection & Algorithm overview
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Model Selection & Algorithm Overview
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Hands-On Model Training
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Best Practices in Training
Hyper-parameter Tuning and Model Evaluation
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Hyper-parameter Tuning Techniques
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Model Evaluation Metrics Part 1
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Practical Evaluation Exercise
ML Ops & Model Deployment
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Deployment Strategies & CI/CD for ML
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Monitoring & Maintenance
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Hands-On Deployment Exercise
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Weekly Mini Project
Model Explainability & Ethics
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Explainable AI (XAI) Techniques
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Fairness in Machine Learning
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Privacy and Data Governance in ML
Capstone Project
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Capstone Project Kickoff
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Project Work Time
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Final Presentations and
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Feedback
Industry Applications & Next Steps
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Industry Case Studies
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Career Pathways in ML
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Course Wrap-up and Reflection
Who Should Apply:
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Engineers seeking to pivot into ML/AI roles.
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Professionals aiming to deepen their AI expertise.
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Anyone passionate about leveraging AI in real-world scenarios