1 hour agoDevelopmentLearn AI by building projects with Python, LLMs, Streamlit, prompt engineering, RAG, AI Agents, Multi-Agent Workflows
Course Description
Artificial Intelligence is changing how software, business, research, education, and productivity tools are built. But many AI courses spend too much time on theory and not enough time building practical applications.
This course is different.
In this hands-on 7-day AI bootcamp, you will learn modern AI by building real projects from scratch. You will start with a simple AI assistant, then move into prompt engineering, AI-powered applications, PDF chat using RAG, autonomous agents, multi-agent workflows, and a final deployable AI knowledge base assistant.
This course is designed for beginners to intermediate learners who want practical AI skills without getting lost in heavy machine learning theory. You do not need a deep math or data science background. The focus is on building working AI applications using tools that developers, students, analysts, managers, and entrepreneurs can use immediately.
Throughout the bootcamp, you will build seven practical projects:
AI Assistant
Prompt Engineering Playground
AI Resume Analyzer
PDF Chat Assistant with RAG
Autonomous Research Agent
Multi-Agent Content Team
AI Knowledge Base Assistant with Docker
By the end of this course, you will understand how modern AI applications are structured, how to work with LLMs, how to write better prompts, how to build RAG pipelines, how AI agents work, and how to package an AI app for deployment.
This is not just a theory course. Every day includes a hands-on lab and a portfolio-ready deliverable.
What You Will Learn
Understand modern AI, Generative AI, and Large Language Models
Build your first AI assistant using Python and Streamlit
Write stronger prompts using roles, rules, context, and output formats
Build a prompt engineering playground
Create an AI Resume Analyzer
Extract text from PDF, TXT, and DOCX files
Build a PDF Chat Assistant using RAG
Use ChromaDB as a local vector database
Understand embeddings and semantic search
Build an autonomous research agent
Create a multi-agent content workflow
Package an AI application with Docker
Prepare a portfolio-ready GitHub project
Understand responsible AI basics and safety guardrails
Who This Course Is For
This course is for:
Beginners who want to learn practical AI
Developers who want to build AI applications
Students building portfolio projects
Analysts and managers who want hands-on AI skills
Entrepreneurs exploring AI product ideas
Professionals transitioning into AI
Instructors who want a practical AI project roadmap
Requirements
Basic Python knowledge is helpful
Basic command line knowledge is helpful
No machine learning background required
No advanced math required
A computer with Python installed
Optional: OpenAI API key
Optional: Ollama for local LLM usage
Course Outcome
By the end of this course, you will not just understand AI concepts — you will have built real AI applications that you can show in your portfolio, resume, interviews, GitHub, or business demos.
Final Course Promise
In one week, you will go from basic AI concepts to building and packaging practical AI applications using LLMs, prompt engineering, RAG, agents, multi-agent systems, and Docker.
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