AI Is Reshaping the Data Science Job Market
Demand for applied AI skills is growing fast. Data scientists who can design and automate workflows are already seeing a clear advantage.
Professionals with AI expertise earn up to 25% more.
Stop feeling replaceable as AI reshapes data science. Develop the judgment, systems thinking, and applied AI skills that 10x your impact and set you apart in the market.





Hosted by Andres Vourakis
Senior Data Scientist • 8+ years experience


Demand for applied AI skills is growing fast. Data scientists who can design and automate workflows are already seeing a clear advantage.
Professionals with AI expertise earn up to 25% more.
Get ready to go beyond prompts and demos. You will design and ship AI-powered systems that automate and enhance real data science work, using a modern tech stack and production-ready patterns.
Design semantic layers so AI can reason correctly over real datasets (entities, joins, metrics)
Build MCP servers from scratch that connect AI agents to databases and tools in a standardized way
Automate data cleaning and exploratory data analysis with agentic workflows
Apply context engineering and prompt patterns to make AI systems reliable and repeatable
Build agentic workflows using LangGraph, a production-grade framework for stateful AI systems
Design and ship a Talk-to-Your-Data Slackbot that your stakeholders and peers can actually use
While we use concrete tools to make concepts tangible, everything is taught as tool-agnostic patterns that translate directly into your day-to-day work, regardless of your organization's tech stack. For more info, see the curriculum.

"Andres is a very clear and knowledgeable data scientist, making advanced topics easy to understand and apply. Mastering AI is essential for staying competitive in today's data science landscape. Super recommended!"
Pasquale Bruno
Data Scientist @ Google

"As a data scientist, staying current with the latest advancements is essential not only for maintaining a competitive edge but also for implementing new, innovative processes within your organization. Andres bootcamp provides the critical, hands-on GenAI skills you need to boost and propel your career forward."
Egor Howell
Machine Learning Engineer @ Deliveroo/DoorDash

"Andres's bootcamp is well structured, hands-on, and focused on solving problems that data people encounter on a daily basis. If you're looking to take your data workflow to the next level with Gen AI then don't miss this."
Mandy Liu
Lead Data Scientist (ex-Meta)

"As a data scientist, if you're serious about staying relevant in the AI-driven market, hands-on experience with agentic workflows is non-negotiable. The capstone project is the kind of concrete deliverable that separates you from people who just prompt ChatGPT and makes you impossible to ignore."
Penelope Lafeuille
Senior Data Scientist @ Medidata Solutions
Let's be honest, there are plenty of AI resources out there (too many even), but almost none teach you the AI tools and skills that are relevant to data scientists.
This bootcamp is different, it's built with you in mind, no matter what level of your data science career you are in:
Maybe you worry about staying relevant as AI reshapes the field, and want to learn the AI skills that make you promotable and future-proof your career.
Maybe you're feeling stagnant in your role, and want to break through the plateau by integrating AI workflows that position you as a strategic leader.
Note: Not suitable if you've already built advanced AI agents. This bootcamp is best suited for those who are still stuck using ChatGPT and similar AI tools or have only played around with LLMs.

Photo by ThisisEngineering
Everything you need to master AI workflows
Pre-recorded lectures plus live discussion sessions featuring industry guest speakers
Connect with peers and get help from instructor
Weekly projects that build real skills
Build your own talk-to-your-data Slackbot
Showcase your new AI workflow skills
Keep all materials forever
From fundamentals to deployment - build real AI workflows step by step
Pre-recorded lectures are released every Friday (week by week), followed by an optional AI Chat on Sundays. AI Chats cover topics beyond the lectures, including industry-leading guest speakers.
Lectures unlock week by week so you can progress with the cohort without feeling overwhelmed.
Learn from an experienced instructor, plus mentors and guest speakers who support you throughout the cohort
Senior Data Scientist @ Nextory | 8+ yrs in tech & applied AI/ML
I've been in your shoes as a data professional figuring out how to grow. After more than 7 years as a data scientist, the last year marked a clear shift: the market was changing fast, I felt some stagnation, and staying relevant became a real concern. Over the past year, I took that seriously and went deep into integrating AI into my day-to-day data science work. Building and applying these systems is what removed that uncertainty for me, and it's what I'll share in this bootcamp.
Rather than using AI as a separate tool, I integrated it into my data science workflows. I automated and structured key parts of my analysis process (data cleaning, EDA, repetitive tasks), then built a talk-to-your-data Slackbot that uses agentic patterns to help technical stakeholders explore data in natural language. I also built Applio, an LLM-powered system that analyzes resumes and job descriptions and produces structured, actionable feedback, applying the same principles around context design, reliability, and control.
More recently, I presented at DataFest on agentic analytics and data adoption, focusing on how data scientists move beyond demos into systems teams actually use.
Get hands-on support in Slack and during the cohort as you build and debug your projects.

Experienced in applied AI and ML systems, with a specific focus on OCR and Retrieval-Augmented Generation (RAG).

Experienced in applied AI and ML systems with a focus on driving real business impact.
Join live sessions with AI leaders and practitioners who share real-world experience and lessons on key topics.

Drawing on her work at Walmart and previously as AI Tech Lead at Amazon, Irena will share practical lessons on AI leadership and what it takes to drive real adoption in teams.

Drawing from her extensive experience as an NLP Data Scientist and most recently as an AI Tech Lead, Lan will break down why shipping AI is hard, and what it really takes to make AI systems reliable in production.
An expert sharing lessons on building reliable AI systems at scale.
Since launching in October 2025, we've helped data professionals worldwide build production-ready AI skills. Here are their stories:
Before the program, I didn't have a clear framework for how to approach implementing AI systems. The bootcamp helped me understand how these systems should be structured and organized in real projects. I would recommend this bootcamp to anyone working in data who lacks a structured plan for implementing AI in their organization. Even if you only automate one or two processes, you gain the insight needed to grow into the role.

We're only starting to see how the data landscape is being reshaped, and the skills from this bootcamp will allow me to increase both the value and speed of my contributions. I would recommend this bootcamp to anyone in data science or analytics who feels stuck and doesn't know where to start with AI. If you want direction, want to stay ahead, and actually build tools that add real value to your workflows, this program delivers that.

The most valuable part of the program was the overall experience and guidance throughout the process. The way Andres structured the bootcamp, along with his consistent mentorship, helped me understand not just the concepts but how to actually apply them in real projects. During the program, I built several AI agents, including systems that coordinate multiple agents to work together.

A key realization was that building useful AI solutions is not just about prompting an LLM or calling an API. It's about designing the full system: how context is retrieved, how data is accessed, how reasoning is structured, and how reliable results are delivered to the user. Working on the architecture for a talk-to-your-data / agentic analytics system pushed me to think more seriously about how these components fit together in practice.

The most valuable thing I learned was building a data-cleaning agent and understanding how to design a semantic layer. That experience helped me see how AI workflows can be structured to work reliably with real data. It gave me a much clearer picture of how AI can actually be integrated into everyday data work.

The bootcamp gave me the knowledge to design AI workflows that can streamline and supercharge everyday work. I also feel much more confident navigating both current and emerging AI technologies to drive efficiency. One of the most valuable things I built during the program was a talk-to-your-data Slackbot.
I'd recommend this bootcamp to everyone who knows how to code. I can't imagine it not being useful for every worker. The way the course is structured with every project building on the one before it is helpful for implementing and reinforcing concepts.

I found a lot of value in this program. Defining an AI workflow from end to end, learning Cursor as a new IDE, understanding the value of the semantic layer, agentic systems, AGENTS.md standardization, PandasAI, and creating and debugging an end to end AI workflow solution were all extremely valuable. I would recommend this bootcamp to learn from a highly experienced professional like Andres and to obtain real work experience to improve my position as a Data Scientist.

I joined the bootcamp to get more exposure to industry-grade tools and strategies. I learned a lot including MCP integration, system design (specifically GenAI system design), semantic layers, and building the capstone Slackbot. If you want to learn new emerging tools that are widely used in the industry, this is a great course to learn from.
It is totally worth it if you want practical applications you can use in your day-to-day work, or if you want to future-proof your skills and career for the AI-driven era.
I was looking for practical ways to start using AI to automate and improve how I work, and to understand how easy or difficult it would be to add AI-driven techniques to my toolbox. I learned that the learning curve for building practical solutions and applying AI and LLMs to data tasks and data science workflows was not as steep as I expected.
I found value in all the builds, from creating a custom GPT to access a database to using LLMs for data cleaning workflows and agent-based data applications
I was intrigued by the content of the course. It promised not only data science with AI but future-proof concepts like agency and semantic modeling, and it delivered on all parts. I was pleasantly surprised by learning and seeing how colleagues progressed and had different views on the way we work with LLMs. The teacher has a good understanding and knowledge in this which he also shared.
Yes, you need to invest time, but you will learn a lot, especially if you have not done LLM-assisted coding with tools like Cursor, MCP, or AI agents. This is all touched and learned by examples, and for the non–data scientist you get semantic modeling (state-of-the-art DS) and the basics that a data scientist thinks about such as data quality, data filtering, and data cleansing.
Thanks to Andres, you are not abandoned nor left to your own devices. He is a great teacher: patient, informed, firm but open in communication, and an approachable expert in data science.
I wanted to learn how to deliver production-ready AI agents that could benefit the business by generating insights from structured and unstructured data. The most valuable part was learning and putting into practice the latest technologies and standards such as semantic layers, MCP servers, and AGENTS.md, along with development tools like Cursor AI, all through the capstone project. I'd say being hands-on with Python is a must, and being ready to learn and unlearn the way AI agents are being delivered. It's not easy, but if you use failure as a stepping stone and don't hesitate to work hard, it's the most enjoyable and doable course out there!
Join other ambitious data scientists in this live cohort.