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everlier

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投稿

Local Inference

av.codes
5 ポイント·投稿者 everlier·20 日前·0 コメント

[untitled]

1 ポイント·投稿者 everlier·27 日前·0 コメント

Show HN: Harbor v0.4.19 – harbor launch –back end vLLM –web codex

github.com
4 ポイント·投稿者 everlier·2 か月前·0 コメント

Show HN: Naiou – an agent that can only answer yes or no to your query

github.com
1 ポイント·投稿者 everlier·2 か月前·0 コメント

Skilled – a CLI and TUI to inspect skill usage by your coding agents

github.com
1 ポイント·投稿者 everlier·2 か月前·1 コメント

Show HN: Tiny agentic loop with Docker sandbox

github.com
1 ポイント·投稿者 everlier·2 か月前·0 コメント

Show HN: [Video] Tribute to LLM releases in April 2026

youtube.com
2 ポイント·投稿者 everlier·2 か月前·0 コメント

Show HN: Replacing spec-driven development with just facts

github.com
7 ポイント·投稿者 everlier·2 か月前·4 コメント

Hyperscalers are 4500 years old

av.codes
2 ポイント·投稿者 everlier·2 か月前·0 コメント

The Gate Test: Why Human-in-the-Loop Fails and How to Fix It

jitera.com
6 ポイント·投稿者 everlier·2 か月前·0 コメント

[untitled]

1 ポイント·投稿者 everlier·3 か月前·0 コメント

Mi – agentic harness in 30 lines of JavaScript

github.com
3 ポイント·投稿者 everlier·3 か月前·1 コメント

The Quality Wall of AI Adoption

jitera.com
1 ポイント·投稿者 everlier·3 か月前·2 コメント

Show HN: AI for Your Team

jitera.com
1 ポイント·投稿者 everlier·3 か月前·0 コメント

Interface Hall of Shame (1999)

hallofshame.gp.co.at
4 ポイント·投稿者 everlier·4 か月前·0 コメント

A History of Local LLMs

av.codes
4 ポイント·投稿者 everlier·4 か月前·0 コメント

40 Months of Prompt Injection

openguard.sh
4 ポイント·投稿者 everlier·4 か月前·1 コメント

There Is No Firewall for English

openguard.sh
7 ポイント·投稿者 everlier·4 か月前·0 コメント

The Webpage Has Instructions. The Agent Has Your Credentials

openguard.sh
37 ポイント·投稿者 everlier·4 か月前·25 コメント

Show HN: A single CLI to manage llama.cpp/vLLM/Ollama models

github.com
2 ポイント·投稿者 everlier·4 か月前·1 コメント

コメント

everlier
·28 日前·議論
You can also install Harbor and then it's:

harbor up omlx opencode
everlier
·先月·議論
The company I work at tries to solve it right now, not promoting, just want to share.

Slop is no fun to deal with, so we have a thesis that slop should be left for agents to read and human-to-human communication should happen outside of passing empty fluffy docs to one another. To realise that, we have a workspace with group chats where multiple agents and humans can work together and agents can engage with humans for additional information when needed. The challenge is, of course, to find the right level of autonomy for the agents and let the agent learn and follow user's workflows well enough to be useful.
everlier
·2 か月前·議論
I wanted to have a nice way to see which skills in my agentic setups are not useful anymore, so I built this tool to aid in that.

Bun+OpenTUI for CLI, separate Rust binary for indexing the sessions of your coding agents. Release video made with Hyperframes.
everlier
·2 か月前·議論
There was never a better time to run LLMs locally. It's just a few commands from zero till a fully working LLM homelab.

``` harbor pull unsloth/Qwen3.6-35B-A3B-GGUF:UD-Q4_K_XL

# Open WebUI -> llama.cpp + SearXNG for Web RAG + OpenTerminal as sandbox harbor up searxng webui llamacpp openterminal ```

That's it, it's already better than Claude's or ChatGPT's app.
everlier
·2 か月前·議論
Thanks for the interest!

Spec is essentially a set of facts + fluff. List of facts is essentially the spec minus the fluff. This was my main idea when trying this approach out. It worked quite well, so I went on building the CLI and a set of skills to better guide the agent about this specific workflow.
everlier
·2 か月前·議論
Thanks! The project is dogfooded, so the most direct example is the project itself.

Outside of that, I found a few things particularly useful so far: - I can seed a relatively complex project with just a few core assumptions about behaviors I have, agent will firgure out all the gaps in a formalised way - I can easily diff/compare the fact sheets against one another. One example: I built a fact sheet for a fairly hairy Python CLI, then asked the agent to update all Python-related entries to their Rust equivalents, then rebuilt this CLI in Rust in the scope of another project - It's much quicker than working with large spec formats, agent uses less tool calls to capture the context it needs to work on something - After doing large refactoring, agent doing a "fact check" is essentially a full on e2e test run

Two biggest gains for agentic use are because fact sheets are more compact and that they are all assertions about the desired state, it's much easier to reason about things that should and shouldn't be there
everlier
·2 か月前·議論
[dead]
everlier
·3 か月前·議論
owning GGUF conversion step is good in sone circumstances, but running in fp16 is below optimal for this hardware due to low-ish bandwidth.

It looks like context is set to 32k which is the bare minimum needed for OpenCode with its ~10k initial system prompt. So overall, something like Unsloth's UD q8 XL or q6 XL quants free up a lot of memory and bandwidth moving into the next tier of usefulness.
everlier
·3 か月前·議論
I tried, really really hard but then I realised that I essence it's a poorly written agentic coding assistant that wastes a lot of tokens antropomorphising itself while forcing me to debug via WhatsApp instead of normal tools. So I leaned into that and made OpenCode my general assistant, it worked much better in this aspect.
everlier
·3 か月前·議論
Changes as we speak, z.ai is the first one to show differential pricing
everlier
·3 か月前·議論
After seeing a recent video from Theo, I wanted to see how far I can take a harness contained in just 30 lines of JavaScript. Turns out - far enough to be useful, it handles simple tasks just fine, works with both cloud and local models, uses just three tools (but can do with a single one, frankly speaking), cleanly handles detached commands or cancellation mid-run, has non-interactive mode and can be run with NPX.
everlier
·3 か月前·議論
Thanks! Caustics shader is one of the treasures in our current landing :-)
everlier
·3 か月前·議論
Pi is a great set of libraries, I would tend to say its underappreciated previously, but now it's fairly mainstream
everlier
·4 か月前·議論
They are playing catch up with Anthropic's in this functionality. Claude's app was unified and extended with new use-cases since pretty much the very beginning and OpenAIs approach is just a reflection of their attempt too shoot for all targets once (with independent teams, of course).
everlier
·4 か月前·議論
OpenCode is an awesome tool.

Many folks from other tools are only getting exposed to the same functionality they got used to, but it offers much more than other harnesses, especially for remote coding.

You can start a service via `opencode serve`, it can be accessed from anywhere and has great experience on mobile except a few bugs. It's a really good way to work with your agents remotely, goes really well with TailScale.

The WebUI that they have can connect to multiple OpenCode backends at once, so you may use multiple VPS-es for various projects you have and control all of them from a single place.

Lastly, there's a desktop app, but TBH I find it redundant when WebUI has everything needed.

Make no mistakes though, it's not a perfect tool, my gripes with it:

- There are random bugs with loading/restoring state of the session

- Model/Provider selection switch across sessions/projects is often annoying

- I had a bug making Sonnet/Opus unusable from mobile phone because phone's clock was 150ms ahead of laptop's (ID generation)

- Sometimes agent get randomly stuck. It especially sucks for long/nested sessions

- WebUI on laptop just completely forgot all the projects at one day

- `opencode serve` doesn't pick up new skills automatically, it needs to be restarted
everlier
·4 か月前·議論
[flagged]
everlier
·4 か月前·議論
What I feel is more like "too much of a good thing", and too many people that want quick riches concentrating on this field after the web3 fiasco. Both of these seems more like a systematic societal issues rather than the problem with technology itself.
everlier
·4 か月前·議論
A dossier on major events in agentic security since the first release of ChatGPT on November 17th, 2022. Fun fact, first prompt injection was documented three days before that date.
everlier
·4 か月前·議論
We call it a slip slop at work, it's ok to slip some slop if it's "our" slop :-)
everlier
·4 か月前·議論
Never thought about this, but it makes sense they don't want a better local search, just for users to rely more on their product. It's messed up - so much time and human potential wasted on poor search and ads.