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Artificial Intelligence
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End-to-End AI Engineering

  • Advanced

The End-to-End AI Engineering Bootcamp is an 8-week, cohort-based experience designed to transform technical professionals into full-stack AI engineers. Gain hands-on experience with RAG, agentic systems, and scalable deployments, and leave with a working AI product to showcase.

  • AI product development
  • RAG systems
  • Agentic systems
  • Cloud deployment
  • LLMOps processes

Overview

This bootcamp offers a comprehensive journey into AI engineering, focusing on building production-grade AI systems. Participants will learn to design, build, and deploy AI solutions using cutting-edge technologies like LLM APIs, vector databases, and AI agent libraries. The course emphasizes practical application, with each concept directly applied to a capstone project, ensuring learners gain real-world engineering skills.

  • Layers 1 Streamline Icon: https://streamlinehq.com
    English
    course language
  • Professional Certification
    upon course completion

Who is this course for?

Data Professionals

Analysts and scientists looking to move beyond analysis and modeling to build and deploy real-world AI systems.

ML Engineers

Engineers who want to deepen GenAI skills and master scalable, production-ready AI engineering from end to end.

Data Engineers

Engineers ready to expand into AI by learning how to integrate data pipelines with LLMs, RAG, and agent-based systems.

This bootcamp equips learners with the skills to build and deploy production-grade AI systems, covering key topics like RAG, agentic systems, and cloud deployment. Ideal for data professionals and engineers, it prepares participants to lead AI projects and advance their careers.

Pre-Requisites

1 / 3

  • Foundational Python knowledge

  • Basic understanding of machine learning

  • Experience with data analysis

What will you learn?

Week 1: Prep Sprint 0 – Problem Framing & Infrastructure Setup
Project framing, tooling overview, and repo setup. Set up development environment and scaffold project repo.
Week 2: Sprint 1 – Build the First Working RAG Prototype
Walkthrough of RAG structure and MVP objectives. Implement and evaluate your first end-to-end RAG pipeline.
Week 3: Sprint 2 – Retrieval Quality & Prompt Engineering
Evaluation methods and automated prompt tuning. Improve context retrieval, prompts, and system robustness.
Week 4: Sprint 3 – Moving From Basic To Agentic RAG
Moving from basic to agentic RAG. Build a tool-using agent integrated with your RAG backend.
Week 5: Sprint 4 – Agents & Agentic Systems
Autonomous agents. Build agentic systems.
Week 6: Sprint 5 – Multi-Agent Systems
Designing and orchestrating multi-agent workflows. Implement a multi-agent task flow and run coordination scenarios.
Week 7: Sprint 6 – Deployment, Optimization and Reliability
Best practices for cloud deployment, monitoring, and performance tuning. Containerize your capstone and implement CI/CD.
Week 8: Sprint 7 – Final Demo & Capstone Delivery
Present your working AI product to cohort. Closing celebration and feedback.

Meet your instructor

  • Aurimas Griciūnas

    Instructor, SwirlAI

    Aurimas Griciūnas is a recognized AI expert, LinkedIn Top Voice in AI, and the founder of SwirlAI. He previously served as Chief Product Officer at Neptune.ai where he worked closely with top ML teams to scale infrastructure, evaluation, and LLMOps practices across industries.

New cohorts coming soon