
Brian Cruz
Head of AI Engineering, Advocate
Go beyond single chatbots to engineer sophisticated, coordinated teams of AI agents. This Nanodegree guides you from advanced prompting techniques like Chain-of-Thought and ReAct to designing agentic workflows with patterns like Routing and Parallelization. You'll master building and orchestrating agents in Python that can reason, plan, and use tools to interact with databases and external APIs. Build a powerful portfolio by tackling hands-on projects, including a multi-agent travel planner, an AI-powered project manager, and a fully automated sales system, to solve real-world problems.

Subscription · Monthly
55 skills
5 prerequisites
Prior to enrolling, you should have the following knowledge:
You will also need to be able to communicate fluently and professionally in written and spoken English.
According to the US Bureau of Labor Statistics, careers in artificial intelligence are projected to grow 21% from 2021 to 2031.*
AI Engineer
Salary info from Talent.comLow
$134,180Average
$163,152High
$208,8005 instructors
Unlike typical professors, our instructors come from Fortune 500 and Global 2000 companies and have demonstrated leadership and expertise in their professions:

Brian Cruz
Head of AI Engineering, Advocate

Peter Kowalchuk
Engagement Director at C3.ai

Henrique Santana
Principal Machine Learning Engineer at Dell Technologies

Joshua Bernhard
Staff Data Scientist at Marketplace

Christopher Agostino
Founder and Research Scientist at NPC Worldwide
Glad to good Opportunity Very Useful Information about AI and Easy to understand
Feb 3, 2026
excellent learning
Feb 2, 2026
excellent learning
Feb 2, 2026
this course given fundamental to advance level understanding of Agentic framework and how this going to work.
Feb 1, 2026
This course provided a strong and practical introduction to building agent-based AI systems using real-world constraints. What I appreciated most was that the project was not purely theoretical — it required designing, implementing, and evaluating a working multi-agent system with clear business goals. The hands-on project helped me understand how to decompose a complex business workflow into specialized agents, such as orchestration, inventory management, quoting, and transaction handling. Instead of focusing only on model prompts, the course emphasized system design, tool integration, and explainable outputs, which closely resemble real production scenarios. Another key strength of the course was the use of databases and historical data. Working with inventory tables, transaction logs, and quote history made the project feel realistic and highlighted the importance of data consistency and decision transparency in AI-driven systems. The debugging process was also a valuable learning experience. Handling asynchronous agent execution, managing text-based agent communication, and ensuring robust behavior across ambiguous or unfulfillable requests significantly deepened my understanding of agent orchestration frameworks. Overall, this course strengthened both my technical and architectural thinking around agentic AI. I would highly recommend it to learners who want practical experience building AI systems that go beyond single-model interactions and move toward real-world
Feb 1, 2026
Build Advanced AI-Powered Agents. Learn to design, deploy, and coordinate AI agents that interact with APIs, handle tasks, and solve complex problems using cutting-edge prompt engineering.

Subscription · Monthly