Course Overview
About Course
The TW‑GenAI‑Python, AIML, NLP, CV, Agentic Framework is an intensive 40‑hour program designed for hands-on mastery of modern AI techniques in Python. It starts with generative AI essentials—prompt engineering, LLM interactions, and ecosystem tools—then builds foundational knowledge through AIML principles using libraries like scikit‑learn. The course dives deep into NLP (tokenization, embeddings, transformers) and CV (CNNs, image pipelines), emphasizing lab‑based learning.
The core focus is on agentic AI: participants learn how to architect intelligent agents using frameworks like LangChain and LangGraph, understanding the GAME (Goals, Actions, Memory, Environment) loop, multi‑agent coordination, tool integration, and safety measures Learners build from first principles—creating modular, maintainable, framework‑agnostic agents that interact with APIs, manage memory, and self‑prompt—all in pure Python
Training features include guided coding labs, iterative assignments, practical API/tool workflows, and ethical design. The capstone challenges learners to integrate modules—say, building a document/image analysis agent that reads content and automates decisions. Ideal for developers and data scientists, this program equips you with transferable skills to design, deploy, and maintain AI agents capable of real‑world automation and intelligence.
Course Syllabus
- TW‑GenAI‑Python (8 h)
- Overview: Python-centric generative AI techniques—prompt engineering, model APIs, ecosystem tools.
- Hands-on: Build basic content generators, fine-tune small LLMs, manage prompt‐based workflows.
- AIML Foundations (6 h)
- Theory: Essential AI/ML concepts—supervised/unsupervised learning, model evaluation, feature engineering.
- Workshop: Train and evaluate ML models using scikit‑learn
- NLP Techniques (8 h)
- Core Concepts: Tokenization, embeddings, sequence modeling, sentiment analysis, transformers.
- Lab Work: Use NLTK for text preprocessing ; build a sentiment classifier.
- Computer Vision (6 h)
- Fundamentals: Convolutional neural networks, image augmentation, object detection.
- Practical: Employ pretrained models for image classification; implement inference pipelines.
- Agentic AI Frameworks (12 h)
- Concepts: Agent architecture, memory, multi‐agent coordination, tool integration .
- Implementation: Build Python agents—
- Module: Agent Loop & G.A.M.E. fundamentals
- Tool & function‑calling integration,
- Multi-agent workflows (LangChain, LangGraph).
- Capstone Project (6 h)
- Real-world Agent: Combine modules—e.g., NLP + CV agent for document/image analysis and task automation.
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Key Features
Hands-on labs & assignments: Apply theory to real-world projects.
Guided tool integration: Work with OpenAI APIs, LangChain, HuggingFace.
Modular learning: Build transferable agent architectures from scratch.
AI ethics & safety: Design guardrails and bias checks.
Capstone showcase: Present integrated agent solution.



