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How your generosity made Weblate better for everyone

https://antennapod.org/de/blog/2026/06/weblate
1•ericdanielski•2m ago•0 comments

I built a fleet-scale inference control plane using Crossplane

https://blog.crossplane.io/building-modelplane/
1•negz•3m ago•1 comments

Elastic Layoffs?

2•nunocoracao•3m ago•0 comments

Google – Alphabet's Sour Soup

1•IAMAGINIT•5m ago•0 comments

Dev shops sell you seniors, then staff the work with juniors

https://twoheads.net/dev-shops-sell-you-seniors/
2•hey-fk•6m ago•0 comments

Robusta's Reckoning: Vietnam's Coffee Boom Running Out of Forest, Water and Time

https://coffeewatch.org/vietnams-robustas-reckoning/
1•littlexsparkee•12m ago•0 comments

Pillars of an Autonomous Agentic System

https://sohit.substack.com/p/pillars-of-an-autonomous-agentic
1•sohitkeshri•12m ago•0 comments

Using the Gini Coefficient to Plan Edge Capacity

https://www.fastly.com/blog/using-gini-coefficient-plan-edge-capacity
2•bshanks•12m ago•0 comments

How Physicists Track and Trap the Elusive Neutrino

https://www.quantamagazine.org/how-physicists-track-and-trap-the-elusive-neutrino-20260624/
1•wasting_time•15m ago•0 comments

Code review powered by an LLM council

https://dromeas.ai/blog/code-review-evolved
1•manos-saratsis•16m ago•1 comments

Incoming: Vanguard On-Demand

https://www.riotgames.com/en/news/vanguard-on-demand
1•Nuthen•17m ago•1 comments

Submodular Context Selection as a Pluggable Engine for LLM Agents

https://arxiv.org/abs/2606.20047
1•Elof•18m ago•0 comments

A knowledge graph blog that turns an Obsidian vault of Markdown notes

https://github.com/halit/hblog-ng
1•nofool•19m ago•0 comments

Record Type Inference for Dummies

https://haskellforall.com/2026/06/record-type-inference-for-dummies
2•birdculture•22m ago•0 comments

Austin Carter, 30, was disarmed by a drone, a possible first in law enforcement

https://www.foxnews.com/us/california-sheriffs-use-magent-equipped-drone-disarm-knife-wielding-se...
3•Tomte•23m ago•0 comments

Show HN: An AI that roasts your spending out loud (no signup)

https://malimoney.com/roast
1•elliptic1•30m ago•0 comments

Terk Box: Fan made 3D printed Steam Machine

https://www.printables.com/model/1493449-sff-mini-itx-steam-machine-case
1•sourcecodeplz•31m ago•0 comments

Are AI chatbots like ChatGPT politically biased? We tested them

https://www.washingtonpost.com/technology/interactive/2026/06/24/are-ai-chatbots-like-chatgpt-pol...
1•reaperducer•31m ago•0 comments

Svartnod – prove a file existed, verified against my own Bitcoin node

https://svartnod.com
1•swedoc•32m ago•0 comments

Zero-Downtime Deployments with Docker Compose – No Kubernetes Required

https://statusdude.com/blog/zero-downtime-docker-compose
13•canto•34m ago•14 comments

Sword swallowing and its side effects (2006)

https://pmc.ncbi.nlm.nih.gov/articles/PMC1761150/
2•bookofjoe•34m ago•0 comments

How H-E-B Became Texas' Most Beloved Brand (2024)

https://texashighways.com/culture/how-heb-became-texas-most-beloved-brand/
2•NaOH•35m ago•1 comments

Life Sprites: more fun and useful than ChatGPT

https://lifesprites.com
1•jmtrevarton•35m ago•1 comments

Show HN: Beat the scalpers. Get your cards at MSRP

https://dropsync.chasedex.com/
1•Charmizard•36m ago•0 comments

Show HN: Apposters – Generate a project website directly from a GitHub link

https://apposters.com/
1•loeona•37m ago•0 comments

52-hertz whale

https://en.wikipedia.org/wiki/52-hertz_whale
5•brightbeige•37m ago•0 comments

NASA's Webb Pinpoints Millions of Stars Within Cigar Galaxy

https://science.nasa.gov/missions/webb/nasas-webb-pinpoints-millions-of-stars-within-cigar-galaxy/
2•Jimmc414•38m ago•0 comments

Former PM admits Israel smuggled Starlinks to Iran during January riots

https://www.presstv.ir/Detail/2026/06/23/770976/Former-Israeli-PM-admits-Tel-Aviv-smuggled-Starli...
3•thisislife2•39m ago•1 comments

Advocacy Groups Express Mixed Views on Embryo Editing

https://undark.org/2026/06/24/embryo-editing-disease-advocacy/
1•EA-3167•40m ago•0 comments

As I am suing the FBI, there may be interruptions to VitaSet LLC's operation

2•VitaSetLLC•41m ago•0 comments
Open in hackernews

LLMs Are Great, but They're Not Everything

4•procha•1y ago
Three years after ChatGPT’s release, LLMs are in everything—demos, strategies, and visions of AGI. But from my observer’s perspective, the assumptions we’re making about what LLMs can do seem to be drifting from architectural reality.

LLMs are amazing at unstructured information—synthesizing, summarizing, reasoning loosely across large corpora. But they are not built for deterministic workflows or structured multi-step logic. And many of today’s most hyped AI use cases are sold exactly like that.

Architecture Matters

We often conflate different AI paradigms:

    LLMs (Transformers): Predict token sequences based on context. Great with language, poor with state, goal-tracking, or structured tool execution.

    Symbolic AI / State Machines: Rigid logic, excellent for workflows—bad at fuzziness or ambiguity.

    Reinforcement Learning (RL): Optimizes behavior over time via feedback, good for planning and adaptation, harder to scale and train.
Each of these has a domain. The confusion arises when we treat one as universally applicable. Right now, we’re pushing LLMs into business-critical automation roles where deterministic control matters—and they often struggle.

Agentic Frameworks: A Workaround, Not a Solution

Agentic frameworks have become popular: LLMs coordinating with other LLMs in roles like planner, executor, supervisor. But in many cases, this is just masking a core limitation: tool calling and orchestration are brittle. When a single agent struggles to choose correctly from 5 tools, giving 10 tools to 2 agents doesn’t solve the problem it just moves the bottleneck.

Supervising a growing number of agents becomes exponentially harder, especially without persistent memory or shared state. At some point, these setups feel less like robust systems and more like committee members hallucinating their way through vague job descriptions.

The Demo Trap

A lot of what gets shown in product demos—“AI agents booking travel, updating CRMs, diagnosing errors”—doesn’t hold up in production. Tools get misused, calls fail, edge cases break flows. The issue isn’t that LLMs are bad it’s that language prediction is not a process engine.

If even humans struggle to execute complex logic reliably, expecting LLMs to replace structured automation is not vision it’s optimism bias.

On the Silence of Those Who Know Better

What’s most puzzling is the silence of those who could say this clearly: the lab founders, the highly respected researchers, the already-rich executives. These are people who know that LLMs aren’t general agents. They have nothing to lose by telling the truth and everything to gain by being remembered as honest stewards.

Instead, they mostly play along. The AGI narrative rolls forward. Caution is reframed as doubt. Realistic planning becomes an obstacle to growth.

I get it, markets, momentum, investor expectations. But still: it’s hard not to feel that something more ethical and lasting is being passed over in favor of short-term shine.

A Final Thought

I might be wrong—but it’s hard to ignore the widening gap between what LLMs are and what C-level execs and investors want them to be. Engineering teams are under pressure to deliver the Hollywood dream, but that dream often doesn’t materialize. Meanwhile, sunk costs pile up, and the clock keeps ticking. This isn’t pessimism it’s recognizing that hype has gravity, and reality has limits. I’d love to be proven wrong and happily jump on the beautiful AI hype train if it ever truly arrives.

Comments

designorbit•1y ago
Love this perspective. You nailed the core issue: LLMs ≠ process engines. And agentic frameworks stacking roles often end up masking fragility instead of fixing it.

One thing I’ve been exploring is this middle ground—what if we stop treating LLMs as process executors, and instead make them contextual participants powered by structured, external memory + state layers?

I’m building Recallio as a plug-and-play memory API exactly for this gap: letting agents/apps access persistent, scoped memory without duct-taping vector DBs and custom orchestration every time.

Totally agree the dream won’t materialize through token prediction alone—but maybe it does if we reconnect LLMs with better state + memory infra.

Have you seen teams blending external memory/state successfully in production? Or are most still trapped inside the prompt+vector loop?

dpao001•1y ago
What is your opinion on Manus. Is it closing in on AGI or is it as you suggest a sticking plaster waiting to break?