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The New Stack | DevOps, Open Source, and Cloud Native News

Agentic development hinges on verification. For cloud-native software, that is a runtime problem. AI agents need infrastructure: Why Europe’s regional cloud strategy matters Transform your AI coding agent into a deterministic Java Spring expert WeAreDevelopers is coming to the US to give unsung developers a bigger voice Cleaner AI training data, fewer bugs: Sonar’s SonarSweep explained Observability overload is drowning engineers Google’s DiffusionGemma is 4x faster than its other Gemma models Fable 5: Guardrails and burn rate are annoying users, who say it’s still better than Opus 4.8 The Anthropic leader who built Claude Code says he ditched prompting — now he just writes loops. AWS can now mathematically prove your VMs are isolated Microsoft pulled 73 GitHub repos after malware attack — but still won’t say who’s compromised Databricks wants to kill the “email me a file” problem for AI agent skills Ramp bets forward deployed engineers can do what off-the-shelf finance AI can’t Git real: AI agents aren’t just for solo developers anymore Anthropic launches Claude Mythos/Fable 5, but you better try it soon This AI agent startup ditched Anthropic for DeepSeek — and says it’s saving millions When your data model is the bottleneck: lessons from Medium’s feature store How long before we stop reading the code? The tokenmaxxing party is over, and Revenium is mopping up How AI is solving the memory crunch it created Microsoft’s pitch to enterprises: Ditch Azure Repos for GitHub, despite its rocky reliability record Claude Code’s biggest upgrade yet ran 5 agents at once — here’s what happened Why Anthropic just doubled Claude Cowork limits at no charge For years, Apache Cassandra handed this work to your team — 6.0 takes it back “A dangerous combination”: The 2 factors that can “corrupt” AI agent workflows With Foundry, Microsoft bets the enterprise AI battle is about reliability, not capability Microsoft unlocks Visual Studio for developers left behind by its own AI AI teams now deploy 1,000 times a month. Your pipeline wasn’t built for that. Microsoft just made the agent runtime free — and kept everything around it “Whoever builds the most joyous product wins”: The agent war begins Netlify CTO Dana Lawson: Writing code is no longer the job From Jupyter Notebook to production: How to ship AI systems that actually work OpenClaw used Gavriel Cohen’s code and exposed the AI Agent accountability problem Replit shows how vibe coding is getting its own financial stack — and a path to profit Cloudflare aqui-hires VoidZero: Did a piece of the open web just stabilize, or become more brittle? Cursor cuts prices and adds enterprise spend controls amid “tokenomics” reckoning Google Gemma 4 12B nearly matches 26B benchmarks — and runs on your laptop Snowflake thinks it knows what’s really slowing developers down Autonomous agents have met their biggest challenge yet: The database. Why agentic AI makes the ops platform the most important layer in the enterprise How to dramatically improve enterprise security alert tuning to battle cyberattacks Why the need for humans won’t disappear in the age of autonomous databases How to secure Kubernetes in the age of AI workloads Asana says its new AI “chief of staff” turns your Slack chaos into trackable work Nvidia’s best model is now live Mate Security’s Asaf Wiener made every backend engineer a model router. He’s right to. 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The governance infrastructure is still catching up. The agentic identity crisis: Why your security isn’t ready for the AI revolution Debugging the undebuggable: building observability into probabilistic AI systems Snowflake commits $6B to AWS as it pushes deeper into AI Why MotherDuck refuses to fork DuckDB Researcher “gave Claude Code ‘ADHD’… and it thinks 2x better now.” Outside experts want more proof. “There is no accountability”: AI coding agents are installing packages no one owns “Tokenmaxxing is real, expensive & it’s spreading”: AI budgets are exploding With Google’s debut, the most important AI agent feature is now the most boring one Why AI agents need a Context Lake Google ranks the best AI for building Android apps, and the winner isn’t Gemini Google pushes Pro, Ultra, and free users from open-source Gemini CLI to closed-source Antigravity CLI The reason enterprise outages almost never start where ops teams think Taming the agentic influx: a blueprint for AI business observability How the AC/DC framework helps teams govern AI coding agents GitLab 19.0 trades its string section for a full DevSecOps orchestra Who’s monitoring the agents? How Jaeger hit 8.6× compression on 10 million spans with ClickHouse What ClickHouse learned from a year of coding with AI agents OpenClaw passed 300,000 GitHub stars. Then Google launched Spark.
Your agent wants to search like a 2010 quant
Jon Bratseth · 2026-06-22 · via The New Stack | DevOps, Open Source, and Cloud Native News

AI agents need the right information to work well. Whether they manage to find it is the difference between success and failure in most real-world cases, and increasingly so as models get smarter.

The practitioners in the field of letting large language models find the information they need have passed through several stages of enlightenment. 

The first stage was the vector database period of ’24, when the belief was that all you needed to do was chop text into independent chunks, create an embedding vector for each, and retrieve them via a nearest-neighbor search. This was simple, but alas, it did not work well. Chunks had too little context, and scoring based solely on vector similarity failed to reliably surface useful information. 

Enter the second stage, where the learnings from human information retrieval over the last half century were combined with vector retrieval: Hybrid search, BM25, machine-learned ranking, and so on. This was a huge improvement which brought many use cases from demo stage to production quality.

But there is still vast room for improvement, and with Perplexity’s announcement of search as code, we might be officially entering the third stage. See, the search field has needed to deal with one big problem: Human users are lazy and clueless, at least when it comes to search. Given this, it turns out that the words typed into query boxes should be treated as vague indicators of what they might want, and providing any finer control is pointless, as nobody would be bothered to use it. You can see this most clearly in the evolution of Google search from letting you find web pages containing specific words to whatever it is now; thoroughly lamented but of course also deeply grounded in observation of real users.

“The search field has needed to deal with one big problem: Human users are lazy and clueless, at least when it comes to search.”

Agents, in contrast, are not so clueless. And they certainly aren’t lazy! There’s no reason to limit their options to those of a casual human user. They should be able to:

  • Search for the names of those involved near each other in text when researching a legal case
  • Do a pure semantic search prioritizing high-quality sources when seeking a broad overview of a topic
  • Select a year range and group by month when constructing a timeline of some events

The list goes on. Typically, an agent will string together many of these queries to reach its goal. First gaining an overview, then researching more specific topics, forming hypotheses, verifying important details in them, and so on. In short, search like an expert who knows what they are doing and really cares about the results— like a quant doing financial analysis.

It seems obvious that this will yield better results, and this is also what evaluations such as those published by Perplexity in its search as code blog post show (ignore the “code” aspect, as code execution is generally useful and where that code runs doesn’t impact quality).

Doing this in practice, with your own data, is actually quite easy. The models already know how to write complex queries in the languages of well-known AI search engines; they just need to be told

  • That they can
  • What fields are available and what they mean
  • What choices they have in ranking the results

How you tell them doesn’t actually matter that much; any simple textual description of what fields and ranking options are available will do. Models today are smart enough to use this effectively to connect their intents to practical detail queries. 

“It’s time to let your agents search like a 2010 quant.”

When creating search for humans, developers need to implement solutions that work well across a broad set of use cases, which involves making trade-offs where some types of queries cannot be improved because doing so would impact other types. When implementing for agents, the focus shifts to providing a wide toolbox for the agent to use to address their varied informational needs: broad and highly specific lexical recall, metadata attributes for filtering, grouping, and aggregation, as well as different ranking methods suited to different needs.

Accordingly, developers working on agentic search need to shift their focus from reusing techniques that have worked well for casual humans to the much richer capabilities traditionally provided by solutions for competent professionals. 

It’s time to let your agents search like a 2010 quant.

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