3-Day AI Engineering Bootcamp - Become an AI Engineer

Build and deploy real AI applications with LLMs, RAG systems, and autonomous agents.

3-Day AI Engineering Bootcamp - Become an AI Engineer - Codeintra

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“This course contains the use of artificial intelligence”

The demand for skilled AI Engineers is growing faster than ever as organizations race to integrate Artificial Intelligence, Large Language Models (LLMs), and AI-powered automation into their products and workflows. However, many professionals struggle to understand how modern AI systems are actually built and deployed in real-world applications. This intensive course, “Become an AI Engineer in Just 3 Days,” is designed to bridge that gap by teaching the practical skills required to design, build, and deploy modern AI applications.

In this hands-on program, you will learn the core foundations of AI Engineering, focusing on the technologies that power today’s most advanced systems. Instead of spending weeks studying theory, you will build real applications using Large Language Models (LLMs), Retrieval Augmented Generation (RAG), and AI agents. By the end of the course, you will understand how to architect intelligent systems that combine models, data, and tools into scalable applications.

The course begins with the fundamentals of LLM architecture, where you will learn how modern AI models work, how tokens and context windows influence model behavior, and how to design effective prompts that guide AI systems to produce reliable outputs. You will also learn how to interact with models using LLM APIs, allowing you to integrate AI capabilities directly into software applications.

Next, you will move into one of the most important techniques used in production AI systems: Retrieval Augmented Generation (RAG). You will learn how to build systems that connect language models with external knowledge sources using embeddings, vector databases, and document retrieval pipelines. Through practical exercises, you will create a document chat system capable of answering questions using information from custom datasets. This is the same architecture used in many enterprise AI applications.

The course then explores the rapidly growing field of AI agents. You will learn how to design systems that go beyond simple prompts and instead perform multi-step workflows, tool usage, and task planning. Using modern agent frameworks, you will build autonomous systems that can gather information, execute actions, and generate structured outputs. These capabilities represent the next evolution of intelligent applications.

Finally, the course focuses on AI deployment and production engineering. You will learn how to deploy AI systems using FastAPI backends, create API endpoints, and expose your AI application as a scalable service. You will also explore essential topics such as guardrails, logging, monitoring, and cost optimization, which are critical for operating AI systems in production environments.

Throughout the program, you will complete hands-on projects that reinforce each concept and help you build a portfolio-ready application. By the end of the three days, you will have built and deployed a production-ready AI application that combines LLMs, RAG pipelines, and AI agent workflows.

Whether you are a software engineer, data scientist, product builder, or technology leader, this course will equip you with the practical knowledge needed to start building real AI systems today. Instead of just learning about AI, you will gain the skills required to design, build, and deploy intelligent applications that can power the next generation of digital products.

Learning Objectives

🔹Understand the foundations of AI engineering, including how Large Language Models (LLMs) work and how they power modern AI applications.
🔹Build AI applications using LLM APIs, including creating prompts, managing context, and generating structured outputs.
🔹Design and implement Retrieval Augmented Generation (RAG) systems using embeddings, vector databases, and document retrieval pipelines.
🔹Develop AI agents capable of multi-step reasoning, tool usage, and workflow automation.
🔹Deploy AI applications using FastAPI backends and APIs, making them accessible as production-ready services.
🔹Apply production AI practices such as guardrails, logging, monitoring, and cost optimization to operate AI systems reliably.

Prerequisites

🔹Basic familiarity with Python programming is helpful but not strictly required.
🔹A computer with internet access capable of running development tools and installing Python packages.
🔹Willingness to learn how AI applications are built and deployed through hands-on exercises.
🔹No prior experience with AI, machine learning, or LLMs is required — the course covers the fundamentals from the ground up.
🔹A curiosity about building real AI systems and experimenting with modern AI tools and frameworks.

Who This Course Is For

🔹Software developers who want to learn how to build modern AI applications using LLMs, RAG systems, and AI agents.
🔹Data scientists and machine learning practitioners who want to expand into AI application development and deployment.
🔹Product managers and technical leaders who want to understand how AI-powered products are designed and built.
🔹Entrepreneurs and builders interested in creating AI-powered tools, startups, or automation systems.
🔹Students and professionals transitioning into AI engineering who want a practical, hands-on introduction to building real AI systems.
Course Details
Price FREE
Views 2
Lectures 67
Duration 6 hours
Last Update 08-May-2026
Release Date 06-May-2026
Category Development
This course includes:

📹 Video lectures

📄 Downloadable resources

📱 Mobile & desktop access

🎓 Certificate of completion

♾️ Lifetime access

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