AI Agents Architecture Python Course Syllabus
Full curriculum breakdown — modules, lessons, estimated time, and outcomes.
Overview: This course provides a comprehensive introduction to AI agent architecture using Python, designed for developers and tech enthusiasts looking to build intelligent systems. The curriculum spans approximately 15-18 hours across six modules, blending theoretical foundations with hands-on implementation. Learners will explore core AI concepts, neural networks, system design, natural language processing, computer vision, and deployment practices. Each module includes real-world case studies, practical exercises, and guided projects to reinforce learning. By the end, students complete a final project demonstrating proficiency in designing and deploying AI-powered applications.
Module 1: Foundations of Computing & Algorithms
Estimated time: 3 hours
- Review of tools and frameworks commonly used in AI development
- Introduction to computational thinking for problem solving
- Core programming concepts in Python for AI applications
- Case study analysis with real-world examples
Module 2: Neural Networks & Deep Learning
Estimated time: 4 hours
- Introduction to neural network architectures
- Deep learning fundamentals and model training
- Hands-on exercises applying neural networks and deep learning techniques
- Guided project work with instructor feedback
Module 3: AI System Design & Architecture
Estimated time: 2 hours
- Principles of AI agent architecture
- Best practices and industry standards in AI system design
- Interactive lab: Building practical AI solutions
- Case study analysis with real-world examples
Module 4: Natural Language Processing
Estimated time: 4 hours
- Introduction to key concepts in natural language processing
- Understanding transformer architectures and attention mechanisms
- Implementing prompt engineering techniques for large language models
- Review of NLP tools and frameworks
Module 5: Computer Vision & Pattern Recognition
Estimated time: 2 hours
- Introduction to computer vision fundamentals
- Pattern recognition techniques
- Hands-on exercises using computer vision libraries
- Case study analysis with real-world applications
Module 6: Deployment & Production Systems
Estimated time: 3 hours
- Introduction to deployment and production systems
- Review of tools and frameworks for deploying AI models
- Guided project work with instructor feedback
- Final project: Build and deploy an AI-powered application
Prerequisites
- Basic knowledge of Python programming
- Familiarity with fundamental programming concepts
- Interest in AI and intelligent systems development
What You'll Be Able to Do After
- Understand core AI concepts including neural networks and deep learning
- Implement prompt engineering techniques for large language models
- Build and deploy AI-powered applications for real-world use cases
- Apply computational thinking to solve complex engineering problems
- Design intelligent systems using modern AI frameworks and architectures