Data Science Briefing

Jun 9th

Announcements

As we celebrate our 7th anniversary, I wanted to share something I've been building for a while.

On July 11th, I'll be collaborating with Packt Publishing to run a live, hands-on workshop called "Production Graph RAG: Build Explainable LLM Apps with Knowledge Graphs"

In 3.5 hours, you'll go from raw Wikipedia text to a working chatbot powered by a knowledge graph β€” using spaCy, REBEL, fastcoref, NetworkX, and an LLM. No hand-wavy slides. You actually build the thing.

Here's what you'll walk away with:

  • A working Graph RAG pipeline you can adapt to your own data
  • Understanding of why vector RAG fails on complex questions β€” and how to fix it
  • A certificate of completion
  • The full codebase and notebooks

Why does this matter? Traditional RAG finds similar text. It doesn't understand that A connects to B which caused C. Knowledge graphs give LLMs the relational context they've always been missing. This is the infrastructure that makes LLM apps actually trustworthy in production.

I spent years using this kind of reasoning while working with my clients. Now I'm teaching it in one afternoon.

Use code BRUNO40 at checkout for 40% off.

πŸ‘‰ Production Graph RAG: Build Explainable LLM Apps with Knowledge Graphs


Book of the Week

Michael Albada spent nine years building machine learning systems at Uber, ServiceNow, and Microsoft, and it shows. His O'Reilly book, Building Applications with AI Agents, treats agents as a design pattern, not magic. Thirteen chapters take you from a single working agent through skills, orchestration, memory, learning, and on to multi-agent systems. Later chapters cover measurement, production monitoring, and security.

The design-first stance is the real draw. Every idea sits inside a case study: customer support, legal work, advertising, and code review agents. Albada compares real frameworks by name, including LangGraph, AutoGen, CrewAI, and OpenAI's SDK, and weighs their trade-offs instead of crowning a winner. A data scientist gets clear patterns for picking tools, structuring memory, and validating output before it ships.

It has two weak spots. Some chapters lean on checklists, and sometimes make you walk away feeling like the core idea could fit in a third of the pages. It also skips runnable, end-to-end code, pointing you to outside docs instead. Still, for the data scientist or ML engineer moving into agent work, this book maps the decisions that matter and saves weeks of trial and error. Worth a spot on the shelf.

Building Applications with AI Agents

Building Applications with AI Agents


Links of the Week
  1. 1. The Butlerian Jihad Has Begun [syndekit.substack.com]
  2. 2. Harness engineering: leveraging Codex in an agent-first world | OpenAI [openai.com]
  3. 3. When AI builds itself [anthropic.com]
  4. 4. Leiden Declaration on Artificial Intelligence and Mathematics [leidendeclaration.ai]
  5. 5. Expanding Project Glasswing [www.anthropic.com]
  6. 6. Data Quality, AI in Baseball, ODSC AI East Slides, Ollama, and Local Agents [odsc.substack.com]
  7. 7. Agent Tracing and Observability: Log & Debug Complex AI Systems [comet.com]


Video of the Week

Accelerating scientific discovery with AI

Accelerating scientific discovery with AI

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