Issue #325
July 1, 2026
Announcements
Graph RAG combines the best of both: you still use retrieval, but instead of retrieving raw chunks, you retrieve structured paths through a graph. The LLM gets grounded, traceable context. Not just "here are some relevant paragraphs."
The result: answers that are explainable, multi-hop aware, and far more reliable on complex queries.
This is what I'm teaching on July 11.
You'll build the full pipeline — from raw text through entity extraction, coreference resolution, relation extraction, graph construction, and finally a grounded chatbot. Live. With code you keep.
If you're working in finance, healthcare, enterprise AI, or any domain where hallucinations are a real cost, this is worth cutting into your Saturday.>
Use code BRUNO40 at checkout for 40% off.
👉 Production Graph RAG: Build Explainable LLM Apps with Knowledge Graphs
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.
- 1. AI in Mathematics Is Forcing Big Questions [spectrum.ieee.org]
- 2. How to Build AI Agents for Free Using Open Source [opendatascience.com]
- 3. The Unbearable Cheapness of Open Weight Models [jamesoclaire.com]
- 4. Why big AI labs are hiring so many philosophers [economist.com]
- 5. AI's Brokenomics [wheresyoured.at]
- 6. Inference cost at scale with napkin math [injuly.in]
- 7. DuckDB Internals: Why is DuckDB Fast? [greybeam.ai]
- • Cognitive Networks for Knowledge Modeling: A Gentle Introduction for Data‐ and Cognitive Scientists - Haim - 2026 - WIREs Cognitive Science (E. Haim, M. Stella)
- • A canary in the mind: A single baseline brain scan predicts adolescent depression and anxiety one year later (G. Deco, Y. S. Perl, J. Vohryzek, E. Garcia-Guzman, D. A. Pizzagalli, R. Laukkonen, S. Chandaria, M. L. Kringelbach)
- • Towards Automating Scientific Review with Google's Paper Assistant Tool (R. Jayaram, D. Tyler, D. Woodruff, C. Cortes, Y. Matias, V. Mirrokni, V. Cohen-Addad)
- • Collective cooperation without individual fidelity in LLM agents (H. F. de Arruda, C. G. Lázaro, A. Aleta, Y. Moreno)
- • On the Scaling of PEFT: Towards Million Personal Models of Trillion Parameters (Mind Lab)
- • Generative artificial intelligence creates delicious, sustainable, and nutritious burgers (V. Tac, C. D. Gardner, E. Kuhl)
- • Shared spatial and temporal principles govern connectome dynamics across timescales (T. H. Alderson, S. Jun, J. Wirsich, M. K. Egan, S. W. ElSayed, S. A. Giakas, P. Mostame, J. Harper, A.-L. Giraud, S. M. Malone, W. G. Iacono, S. Koyejo, S. Sadaghiani)
- • Emerging frontiers in infectious disease modelling: reassessing the data-driven feedback loop between human behaviour and disease dynamics (M. J. Harris, A. H. Sinclair, G. Pullano, S. J. Beckett, L. LeJeune, F. B. Agusto, C. T. Bauch, C. Baur, H. Berestycki, J. Dushoff, Q. Griette, S. A. Levin, J. X. Velasco-Hernández, J. Wu, J. S. Weitz)
What is OpenClaw? Inside AI Agents, LLMs and the Agentic Loop
All our videos are also available in our YouTube playlist.
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