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Médéric Hurier · Oct 7th, 2025
Inspired by the French show “C’est pas sorcier,” “It’s Not Artificial” uses Google’s Gemini multi-speaker text-to-speech to recreate its conversational learning style. The project automatically generates full audio episodes — complete with distinct voices, languages, and topics — from simple inputs. What began as a nostalgic experiment now hints at a future where AI-driven conversations make education and training more personal, engaging, and human-like.
# Artificial Intelligence
# Generative AI Tools
# Conversational AI
# Data Science
# Gemini


Craig Tavares & Demetrios Brinkmann · Oct 3rd, 2025
Craig Tavares, COO of Buzz High Performance Compute, shares lessons from building GPU cloud infrastructure worldwide. He stresses the role of sovereign mandates, renewable power, and modular cooling in scaling data centers, while highlighting NVIDIA partnerships and orchestration as key to sustaining AI workloads.
# GPU Cloud
# Data Centers
# Buzz HCP
# Prosus Group

Vishakha Gupta · Sep 30th, 2025
Graphs are everywhere, but often misunderstood. This blog busts common myths about knowledge graphs, explains why they’re faster and more flexible than you think, and shows how AI can help build them.
# Knowledge graph and graph databases
# Dataset Preparation and Management
# Multimodal/Generative AI

Médéric Hurier · Sep 23rd, 2025
Using NotebookLM’s Video Overview, I turned my MLOps Coding Course from text into a full video series in just two days. What once felt like a month-long grind became a fast and creative process — demonstrating how AI can amplify expertise instead of replacing it.
# Generative AI
# Machine Learning
# MLOps
# Artificial Intelligence
# Data Science


Russ d'Sa & Demetrios Brinkmann · Sep 22nd, 2025
Russ d'Sa shares how LiveKit went from a small open-source project during the pandemic to powering voice interfaces for giants like OpenAI. He talks about the turning point when LiveKit teamed up on ChatGPT’s voice features, the challenges of making AI sound human, and why voice could be the future of multimodal AI. It’s a story of chance, big shifts, and building the backbone of tomorrow’s AI.
# Product Market Fit
# Open Source Project
# LiveKit



+1
Adam Becker, Matt Squire, Rohan Prasad & 1 more speaker · Sep 17th, 2025
LLM performance isn’t just about the model—it’s about the scaffolding we build around it. “Context Engineering” reframes the conversation: prompt design is the toy problem, while the real frontier is systematically engineering the information environments that shape model behavior. Surveying 1,400+ papers, this work defines the field’s taxonomy—retrieval, generation, processing, management—and shows how it powers RAG, memory, tool use, and multi-agent systems. The survey also reveals a paradox: LLMs can absorb increasingly complex contexts but remain clumsy at producing equally complex outputs. This tension signals a coming split between research obsessed with cramming more into context windows and the harder question of whether models can ever match the sophistication of what they’re given.
# Context Engineering
# LLMs
# Prompt Engineering

Mats Eikeland Mollestad · Sep 16th, 2025
Machine learning pipelines are vulnerable to data and infrastructure errors that can disrupt production. By implementing smoke tests with both random and controlled synthetic data, teams can validate pipeline functionality and schema adherence before running full-scale jobs. This practice supports continuous integration and delivery, leading to fewer outages and more reliable deployments.
# ML Testing
# CI/CD
# Machine Learning


Hudson Buzby & Demetrios Brinkmann · Sep 12th, 2025
For better or for worse, machine learning has traditionally escaped the gaze of security and infrastructure teams, operating outside traditional DevOps practices and not always adhering to organizations' development or security standards. With the introduction of open source catalogs like HuggingFace and Ollama, a new standard has been established for locating, identifying, and deploying machine learning and AI models. But with this new standard comes a plethora of security, governance, and legal challenges that organizations need to address before they can comfortably allow developers to freely build and deploy ML/AI applications. In this conversation will discuss ways that enterprise scale organizations are addressing these challenges to safely and securely build these development environments.
# Generative AI
# Security and Governance
# JFrog

Elma O'Sullivan-Greene · Sep 11th, 2025
Building better agents fast: real stories, lean workflows, and practical tips for building trustworthy, human-friendly agents in accounting and beyond.
# AI Agents
# Biomedical Models
# MyOB



George Chouliaras, Antonio Castelli & Zeno Belligoli · Sep 9th, 2025
We share a pragmatic framework for evaluating LLM-powered applications in production. Anchored in high-quality human labels and a calibrated ‘LLM-as-judge’ approach, it turns subjective outputs into consistent, actionable metrics—enabling continuous monitoring, faster iteration, and safer launches at scale. We distill lessons from a year of building and operating this framework at Booking.com, with the aim to make evaluation a core practice in the GenAI development lifecycle.
# Gen AI
# Evaluation
# LLMs
# LLM Evaluation