Issue #317
May 6, 2026
Announcements
Ever wonder how we can turn thousands of unstructured news articles into structured, actionable insights?
In the latest post from Data4Sci, we dive into the fascinating process of transforming raw text from news articles into interconnected networks of information. If you're interested in Natural Language Processing (NLP), entity extraction, and how to connect the dots hidden across massive amounts of unstructured data, this is a must-read!
👉 From News Articles to Knowledge Graphs with spaCy and NetworkX
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"LLMs in Production: From Language Models to Successful Products" by C. Brousseau and M. Sharp is for data scientists and machine learning engineers who have moved past the “cool demo” phase and now need to ship something people can use. The book focuses on the real work behind LLM products: choosing models, preparing data, building RAG systems, evaluating outputs, controlling cost, managing latency, and deploying reliably.
Its biggest strength is that it treats LLMs as production software, not magic. The authors connect familiar ML concerns—measurement, data quality, feedback loops, monitoring, and trade-offs—to newer LLM-specific patterns such as prompt design, fine-tuning, LoRA, RLHF, hosted APIs, Kubernetes deployment, and edge inference. The hands-on projects help ground the material, especially for readers who want more than another conceptual overview.
The book is not perfect. Some sections move quickly, and experienced MLOps engineers may wish for more depth on architecture, observability, or failure analysis. Its tooling choices may also date quickly, as LLM infrastructure continues to shift. Still, the core value holds: this is a practical guide to thinking like an engineer when working with language models. For anyone trying to turn LLM experiments into durable products, it is an easy book to justify buying.
- 1. 10 Lessons for Agentic Coding [dbreunig.com]
- 2. Let’s talk about LLMs [b-list.org]
- 3. Maybe AI Isn't a Bubble After All [theatlantic.com]
- 4. The Agent Harness Belongs Outside the Sandbox [mendral.com]
- 5. A.I. Bots Told Scientists How to Make Biological Weapons [nytimes.com]
- 6. Web Search for Agents in 2026 [michaellivs.com]
- 7. How ChatGPT serves ads. Here's the full attribution loop. [buchodi.com]
- • Incompressible Knowledge Probes: Estimating Black-Box LLM Parameter Counts via Factual Capacity (B. Li)
- • Learning to Orchestrate Agents in Natural Language with the Conductor (S. Nielsen, E. Cetin, P. Schwendeman, Q. Sun, J. Xu, Y. Tang)
- • How to conduct behavioural experiments online (M. Warburton, J. S. Tsay)
- • A Model of the Language Process (B. Duderstadt, H. Helm)
- • The Platonic Representation Hypothesis (M. Huh, B. Cheung, T. Wang, P. Isola)
- • Image Generators are Generalist Vision Learners (V. Gabeur, S. Long, S. Peng, P. Voigtlaender, S. Sun, Y. Bao, K. Truong, Z. Wang, W. Zhou, J. T. Barron, K. Genova, N. Kannen, S. Ben, Y. Li, M. Guo, S. Yogin, Y. Gu, H. Chen, O. Wang, S. Xie, H. Zhou, K. He, T. Funkhouser, J.-B. Alayrac, R. Soricut)
- • Statistical structure and the evolution of languages (X. Guo, S. Verstyuk, H. Chen, B. Zhou, S. Skiena)
- • LLMs Corrupt Your Documents When You Delegate (P. Laban, T. Schnabel, J. Neville)
- • Car Dependency in Urban Accessibility (B. Campanelli, F. Marzolla, M. Bruno, H. P. M. Melo, V. Loreto)
- • Evolution Strategies at the Hyperscale (B. Sarkar, M. Fellows, J. A. Duque, A. Letcher, . L. Villares, A. Sims, C. Wibault, D. Samsonov, D. Cope, J. Liesen, K. Li, L. Seier, T. Wolf, U. Berdica, V. Mohl, A. D. Goldie, A. Courville, K. Sevegnani, S. Whiteson, J. N. Foerster)
From Vibe Coding to Agentic Engineering
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