Get in Touch

Course Outline

Course Outline Training Proposal

Day 1 - Introduction to AI and Python for Data Workflows

• Overview of the artificial intelligence and machine learning landscape

• The role of AI in modern data engineering

• Python fundamentals refresher for AI applications

• Data manipulation using pandas and NumPy

• Introduction to APIs and JSON data handling

• Mini exercise focused on loading and transforming datasets

Day 2 - Machine Learning Foundations for Practitioners

• Concepts of supervised and unsupervised learning

• Feature engineering and data preparation techniques

• Basics of model training using scikit-learn

• Model evaluation and performance metrics

• Introduction to model deployment concepts

• Hands-on creation of a simple predictive model

Day 3 - Introduction to LLMs and Prompt Engineering

• Understanding large language models and their operation

• Tokenization, context windows, and inherent limitations

• Principles and techniques for prompt design

• Zero-shot and few-shot prompting methods

• Strategies for evaluating and iterating on prompts

• Practical prompt engineering exercises

Day 4 - Building AI Applications with LLMs

• Implementing LLM APIs in Python

• Concepts of structured outputs and function calling

• Developing chat-based and task-oriented applications

• Introduction to retrieval augmented generation (RAG)

• Connecting LLMs with external data sources

• Mini-project: Construction of a basic AI assistant

Day 5 - Productionizing AI Solutions

• Designing scalable AI workflows

• Integrating AI into data pipelines

• Monitoring and enhancing model performance

• Cost optimization and API usage strategies

• Security and responsible AI considerations

• Final project: Building an end-to-end AI solution

 35 Hours

Number of participants


Price per participant

Testimonials (2)

Upcoming Courses

Related Categories