Bespoke Applied Artificial Intelligence and LLM Engineering with Python Training Course
Course Overview
This practical training is tailored for professionals with a data engineering background who aim to develop tangible skills in artificial intelligence, Python, and large language models (LLMs). The curriculum emphasizes real-world applications, addressing model utilization, prompt engineering, and the creation of AI-driven solutions. Participants will engage in progressive exercises that advance from foundational concepts to the construction of deployable AI workflows.
Training Format
• Classroom-based in-person training
• Instructor-led sessions featuring guided practice
• Interactive discussions and analysis of real-world case studies
• Daily hands-on exercises
Course Objectives
• Grasp core AI and machine learning concepts pertinent to contemporary applications
• Enhance Python capabilities for AI development and data workflows
• Comprehend the mechanics of large language models and utilize them effectively
• Design and refine prompts to ensure reliable outputs
• Develop end-to-end AI solutions leveraging APIs and frameworks
• Integrate AI functionalities into data engineering pipelines
This course is available as onsite live training in Italy or online live training.
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
• Working with data using pandas and NumPy
• Introduction to APIs and JSON data handling
• Mini exercise on loading and transforming datasets
Day 2 - Machine Learning Foundations for Practitioners
• Concepts of supervised and unsupervised learning
• Feature engineering and data preparation techniques
• Model training basics using scikit-learn
• Model evaluation and performance metrics
• Introduction to model deployment concepts
• Hands-on building a simple predictive model
Day 3 - Introduction to LLMs and Prompt Engineering
• Understanding large language models and their underlying mechanisms
• Tokenization, context windows, and limitations
• Prompt design principles and techniques
• Zero-shot and few-shot prompting
• Prompt evaluation and iteration strategies
• Hands-on prompt engineering exercises
Day 4- Building AI Applications with LLMs
• Using LLM APIs in Python
• Structured outputs and function calling concepts
• Building chat-based and task-based applications
• Introduction to retrieval augmented generation
• Connecting LLMs with external data sources
• Mini project building a simple AI assistant
Day 5 - Productionizing AI Solutions
• Designing scalable AI workflows
• Integrating AI into data pipelines
• Monitoring and improving model performance
• Cost optimization and API usage strategies
• Security and responsible AI considerations
• Final project building an end-to-end AI solution
Open Training Courses require 5+ participants.
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Testimonials (2)
Examples/exercices perfectly adapted to our domain
Luc - CS Group
Course - Scaling Data Analysis with Python and Dask
The trainer was very available to answer all te kind of question I did
Caterina - Stamtech
Course - Developing APIs with Python and FastAPI
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