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frontsideair

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My Most Popular Application

blog.6nok.org
3 points·by frontsideair·9 bulan yang lalu·4 comments

Experimenting with Local LLMs on macOS

blog.6nok.org
388 points·by frontsideair·10 bulan yang lalu·262 comments

Tailscale Is Pretty Useful

blog.6nok.org
9 points·by frontsideair·tahun lalu·1 comments

Building a semantic movie search demo with pgvector and Next.js

blog.6nok.org
2 points·by frontsideair·tahun lalu·0 comments

comments

frontsideair
·3 bulan yang lalu·discuss
I was able to confirm that it actually runs on ANE, I'm impressed.
frontsideair
·3 bulan yang lalu·discuss
> Apple locked it behind Siri. apfel sets it free

This doesn't feel truthful, it sounds like this tool is a hack that unlocks something. If I understand it correctly, it's using the same FoundationModels framework that powers Apple Intelligence, but for CLI and OpenAI compatible REST endpoint. Which is fine, just the marketing goes hard a bit.

> Runs on Neural Engine

Also unsure if this runs on ANE, when I tried Apple Intelligence I saw that it ran on the GPU (Metal).
frontsideair
·9 bulan yang lalu·discuss
Yeah, the initial experience with no colors doesn’t look great. I can implement this when I have some free time, if you feel like doing it please feel free to open a PR. Thanks!
frontsideair
·10 bulan yang lalu·discuss
14B Qwen was a good choice, but it became outdated a bit and seems like the new version of 4B surpassed it in benchmarks somehow.

It's a balancing game, how slow a token generation speed can you tolerate? Would you rather get an answer quick, or wait for a few seconds (or sometimes minutes) for reasoning?

For quick answers, Gemma 3 12B is still good. GPT-OSS 20B is pretty quick when reasoning is set to low, which usually doesn't think longer than one sentence. I haven't gotten much use out of Qwen3 4B Thinking (2507) but at least it's fast while reasoning.
frontsideair
·10 bulan yang lalu·discuss
Ollama adding a paid cloud version made me postpone this post for a few weeks at least. I don't object them to make money, but it was hard to recommend a tool for local usage and make the first instruction to go to settings and enable airplane mode.

Luckily llama.cpp has come a long way and was at a point that I could easily recommend as the open source option instead.
frontsideair
·10 bulan yang lalu·discuss
This is the command probably:

  sudo sysctl iogpu.wired_limit_mb=184320
Source: https://github.com/ggml-org/llama.cpp/discussions/15396
frontsideair
·10 bulan yang lalu·discuss
I'm interested in this, my impression was that the newer chips have unified memory and high memory bandwidth. Do you do inference on the CPU or the external GPU?
frontsideair
·10 bulan yang lalu·discuss
Good point, let me add a quick note.
frontsideair
·10 bulan yang lalu·discuss
Thank you, it was the integral part of the whole post!
frontsideair
·11 bulan yang lalu·discuss
According to the benchmarks, this one is improved in every one of them compared to the previous version, some better than 30B-A3B. Definitely worth a try, it’ll easily fit into memory and token generation speed will be pleasantly fast.
frontsideair
·tahun lalu·discuss
This is the first time I’m hearing about Nebula. How does it compare to Tailscale?
frontsideair
·tahun lalu·discuss
I saw from the comments that they provide smaller binaries, which may have worked on my Raspberry Pi. Maybe I’ll give it a try one day.

https://tailscale.com/kb/1207/small-tailscale
frontsideair
·tahun lalu·discuss
Thanks, this could’ve worked for my Raspberry Pi! I would’ve tried it if it was still in commission. Next time?
frontsideair
·tahun lalu·discuss
That’s exactly why I put the spend limit, and this was the first time to confirm that it actually works.
frontsideair
·tahun lalu·discuss
Exactly, I had a spend limit since I didn’t want to break the bank. It’s back up now.