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AI inequality: from GPU-poor to token-poor

https://adlrocha.substack.com/p/adlrocha-ai-inequality-from-gpu-poor
1•adlrocha•1m ago•0 comments

Show HN: Memoriq – Open-source encrypted vault for saving and searching AI chats

https://github.com/memoriqme/memoriq
1•giekaton•2m ago•0 comments

RoleDecoder

https://roledecoder.com/
1•Mohammad_1ta•3m ago•0 comments

SemanticSourceCode – Local semantic code search with Ollama and SQLite

https://github.com/TheEifelYeti/SemanticSourceCode
1•EifelYeti•6m ago•0 comments

Shipping Outside the App Store

https://keylight.dev/blog/launch-mac-app-outside-app-store/
1•dmzxnico•9m ago•0 comments

Four LTS Java Versions Get End-of-Support in a Three-Year Window (2029-2032)

https://m.slashdot.org/story/455546
1•ilreb•10m ago•0 comments

Show HN: AppLaunch – Local Service App Builder

https://applaunch.teamzlab.com/
1•mdhemalakhand•11m ago•0 comments

UNK_DeadDrop Phishing Campaign Targets Developers to Steal Cryptocurrency

https://www.proofpoint.com/us/blog/threat-insight/dont-fear-repo-unkdeaddrop-phishing-campaign-ta...
2•denysvitali•13m ago•0 comments

Ask HN: What is your blog and why should I read it?

2•chistev•15m ago•1 comments

A policy enforcement layer for MCP tool execution using Rego

https://github.com/marvior/regentix
1•walmol•16m ago•0 comments

Show HN: Macaroni Messenger 1.03 – small documentation fixes

https://github.com/vanyapr/makaroshki/releases/tag/v1.03
2•snowflaxxx•23m ago•1 comments

Laser Phase Plate Cryo-Electron Microscopy

https://biohub.org/blog/laser-phase-plate-cryo-em-making-invisible-visible/
3•peteforde•27m ago•0 comments

AI Is Bringing Mashups Back

https://www.wolfe.id.au/2026/06/12/ai-is-bringing-mashups-back
2•markwolfe•31m ago•0 comments

N-Tier Services and Systems Complexity

https://yegge.ai/essays/services-and-complexity/
2•tosh•34m ago•0 comments

AI Memory Is Still Thinking Like Search

https://medium.com/@jeffreyflynt02/ai-memory-is-still-thinking-like-search-e07566311efe
4•jflynt76•35m ago•0 comments

Show HN: Have your agent consult other models

https://github.com/raine/consult-llm
2•rane•37m ago•0 comments

Final run for the current LHC accelerator (but more to come)

https://www.nikhef.nl/en/news/final-run-for-the-current-lhc-accelerator-but-more-to-come/
3•elashri•48m ago•2 comments

Have politics come for the National Academies of Science?

https://arstechnica.com/science/2026/06/have-politics-finally-come-for-the-national-academies-of-...
1•rbanffy•50m ago•0 comments

Hacking Salesforce Sites with an LLM Agent

https://www.reco.ai/blog/hacking-salesforce-sites-with-an-llm-agent
2•llmacpu•54m ago•0 comments

Why the US economy keeps defying the odds

https://www.bbc.com/news/articles/cwy031el03po
1•ilreb•57m ago•1 comments

Anthropic Is Taking AI Welfare Seriously. I'm Not Sure It Knows What It's Measu

https://www.lesswrong.com/posts/gNtHHCh363xSGJyz3/anthropic-is-taking-ai-welfare-seriously-i-m-no...
2•joozio•1h ago•0 comments

I accidentally hit SOTA on agentic memory by using AI companions

https://graph.coder.company/
2•vignesh_146•1h ago•3 comments

Local Models in Mid-2026

https://coles.codes/posts/local-models-mid-2026
1•colescodes•1h ago•0 comments

Google's Pinpoint is the free research tool you should know about

https://www.fastcompany.com/91558438/googles-pinpoint-is-the-free-research-tool-you-should-know-a...
2•OutOfHere•1h ago•1 comments

Untrusted data in Linux – How Rust is going to save us

https://www.youtube.com/watch?v=Nzmj7K0FNRY
1•tux1968•1h ago•0 comments

One-click, production-like ATProto network for local development and E2E testing

https://github.com/eurosky-social/u-at-proto
1•doener•1h ago•0 comments

Levyer: The Platform. Designed for Freedom

https://levyer.com/
1•doener•1h ago•0 comments

HumanizeHub: A confidential marketplace for humanizing AI content

https://humanizehub.me
1•cocoglare•1h ago•0 comments

While Oracle Will Rake in Big Bucks on AI, Profits Are Hard to Predict

https://www.nextplatform.com/cloud/2026/06/12/while-oracle-will-rake-in-big-bucks-on-ai-profits-a...
1•rbanffy•1h ago•0 comments

Upscaling Space Quest 3 [video]

https://www.youtube.com/watch?v=Zozc1xGuO7Q
3•skibz•1h ago•0 comments
Open in hackernews

A simple heuristic for agents: human-led vs. human-in-the-loop vs. agent-led

1•fletchervmiles•1y ago
tl;dr - the more agency your agent has, the simpler your use case needs to be

Most if not all successful production use cases today are either human-led or human-in-the-loop. Agent-led is possible but requires simplistic use cases.

---

Human-led:

An obvious example is ChatGPT. One input, one output. The model might suggest a follow-up or use a tool but ultimately, you're the master in command.

---

Human-in-the-loop:

The best example of this is Cursor (and other coding tools). Coding tools can do 99% of the coding for you, use dozens of tools, and are incredibly capable. But ultimately the human still gives the requirements, hits "accept" or "reject' AND gives feedback on each interaction turn.

The last point is important as it's a live recalibration.

This can sometimes not be enough though. An example of this is the rollout of Sonnect 3.7 in Cursor. The feedback loop vs model agency mix was off. Too much agency, not sufficient recalibration from the human. So users switched!

---

Agent-led:

This is where the agent leads the task, end-to-end. The user is just a participant. This is difficult because there's less recalibration so your probability of something going wrong increases on each turn… It's cumulative.

P(all good) = pⁿ

p = agent works correctly n = number of turns / interactions

Ok… I'm going to use my product as an example, not to promote, I'm just very familiar with how it works.

It's a chat agent that runs short customer interviews. My customers can configure it based on what they want to learn (i.e. why a customer churned) and send it to their customers.

It's agent-led because

→ as soon as the respondent opens the link, they're guided from there → at each turn the agent (not the human) is deciding what to do next

That means deciding the right thing to do over 10 to 30 conversation turns (depending on config). I.e. correctly decide:

→ whether to expand the conversation vs dive deeper → reflect on current progress + context → traverse a bunch of objectives and ask questions that draw out insight (per current objective)

Let's apply the above formula. Example:

Let's say:

→ n = 20 (i.e. number of conversation turns) → p = .99 (i.e. how often the agent does the right thing - 99% of the time)

That equals P(all good) = 0.99²⁰ ≈ 0.82

So if I ran 100 such 20‑turn conversations, I'd expect roughly 82 to complete as per instructions and about 18 to stumble at least once.

Let's change p to 95%...

→ n = 20 → p = .95

P(all good) = 0.95²⁰ ≈ 0.358

I.e. if I ran 100 such 20‑turn conversations, I’d expect roughly 36 to finish without a hitch and about 64 to go off‑track at least once.

My p score is high. I had to strip out a bunch of tools and simplify but I got there. And for my use case, a failure is just a slightly irrelevant response so it's manageable.

---

Conclusion:

Getting an agent to do the correct thing 99% is not trivial.

You basically can't have a super complicated workflow. Yes, you can mitigate this by introducing other agents to check the work but this then introduces latency.

There's always a tradeoff!

Know which category you're building in and if you're going for agent-led, narrow your use-case as much as possible.