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Nishikant Dhanuka & Demetrios Brinkmann · Sep 5th, 2025
Nishikant Dhanuka talks about what it really takes to make AI agents useful—especially in e-commerce and productivity. From making them smarter with context (like user history and real-time data) to mixing chat and UI for smoother interactions, he breaks down what’s working and what’s not. He also shares why evals matter, how to test with real users, and why AI only succeeds when it actually makes life easier, not more complicated.
# Context Engineering
# AI Engineering
# Prosus Group

Subham Kundu · Sep 2nd, 2025
As AI agents like Claude and Cursor integrate into enterprise workflows, organizations face critical security challenges around safe resource access. The Model Context Protocol (MCP) is establishing communication standards, while OAuth 2.1 and token exchange mechanisms provide authentication frameworks to balance AI capabilities with enterprise security requirements for sensitive corporate data.
# AI Agents
# MCP
# AI Security
# Machine Learning


Joel Horwitz & Demetrios Brinkmann · Sep 1st, 2025
We’re entering a new era in marketing—one powered by AI agents, not just analysts. The rise of tools like Clay, Karrot.ai, 6sense, and Mutiny is reshaping how go-to-market (GTM) teams operate, making room for a new kind of operator: the GTM engineer. This hybrid role blends technical fluency with growth strategy, leveraging APIs, automation, and AI to orchestrate hyper-personalized, scalable campaigns. No longer just marketers, today’s GTM teams are builders—connecting data, deploying agents, and fine-tuning workflows in real time to meet buyers where they are. This shift isn’t just evolution—it’s a replatforming of the entire GTM function.
# Agentic AI
# AI Agents
# Neoteric3D



+2
Kelly Hong, Adam Becker, Matt Squire & 2 more speakers · Sep 1st, 2025
When Bigger Isn’t Always Better: How Context Length Can Break Your LLM
Longer context windows are the new bragging rights in LLMs — now stretching into the millions of tokens. But can models really handle the first and the 10,000th token equally well?
# Context Windows
# LLMs
# Prompt Engineering



+1
Sonam Gupta, Adam Becker, Nehil Jain & 1 more speaker · Sep 1st, 2025
This paper challenges the LLM-dominant narrative and makes the case that small language models (SLMs) are not only sufficient for many agentic AI tasks—they’re often better.
🧠 As agentic AI systems become more common—handling repetitive, task-specific operations—giant models may be overkill. The authors argue that:
SLMs are faster, cheaper, and easier to deploy
Most agentic tasks don't require broad general intelligence
SLMs can be specialized and scaled with greater control
Heterogeneous agents (using both LLMs and SLMs) offer the best of both worlds
They even propose an LLM-to-SLM conversion framework, paving the way for more efficient agent design.
# Small Language Models
# Agentic AI
# LLMs


Nikolaos Vasiloglou & Demetrios Brinkmann · Aug 27th, 2025
Nikolaos widely shared analysis on LinkedIn highlighted key insights across agentic AI, scaling laws, LLM development, and more. Now, he’s exploring how AI itself might be trained to automate this process in the future - offering a glimpse into how researchers could harness LLMs to synthesize conferences like NeurIPS in real time.
# NeurIPS
# Deep Learning
# RelationalAI

Médéric Hurier · Aug 26th, 2025
In this article, Médéric Hurier tests three versions of Google's Gemini 2.5 models—Flash, Pro, and Deep Think—by challenging them to create a complex, multi-scene interactive birthday experience for his daughter. The experiment revealed an exponential gap in capability, with the advanced Gemini Deep Think model delivering a delightful, polished, and fully functional result that surpassed the other models and captivated his daughter.
# Machine Learning
# MLOps
# AI
# Gemini Deep Think


Beyang Liu & Demetrios Brinkmann · Aug 22nd, 2025
Demetrios chats with Beyang Liu about Sourcegraph’s AMP, exploring how AI coding agents are reshaping development—from IDEs to natural language commands—boosting productivity, cutting costs, and redefining how developers work with code.
# Coding Agent
# LLMs
# Sourcegraph
# Prosus Group


Prashanth Chandrashekar & Demetrios Brinkmann · Aug 19th, 2025
Stack Overflow is adapting to the AI era by licensing its trusted Q&A corpus, expanding into discussions and enterprise tools, and reinforcing its role as a reliable source as developer trust in AI output declines.
# Latent Space
# AI Engineer
# Stack Overflow

Vishakha Gupta · Aug 19th, 2025
From enterprise search to agentic workflows, the ability to reason across text, images, video, audio, and structured data is no longer a futuristic ideal: It’s the new baseline. AI solutions have come a long way in that journey, but until we embrace the need for rethinking how we deal with data, let go of patchwork solutions, and give it a holistic approach, we will keep slowing down our own progress.
# AI Agents
# Multimodal/Generative AI
# Knowledge graph and graph databases
# RAG
# Vector / Similarity / Semantic Search