mierdabird

joined 2 years ago
[–] mierdabird 3 points 17 hours ago

I initially installed Ollama/OpenWebUI in my HP G4 Mini but it's got no GPU obviously so with 16GB ram I could run 7b models but only 2 or 3 tokens/sec.
It definitely made me regret not buying a bigger case that could accomodate a GPU, but I ended up installing the same Ollama/OpenWebui pair on my windows desktop with a 3060 12gb and it runs great - 14b models at 15+ tokens/sec.
Even better, I figured out that my reverse proxy on the server is capable of redirecting to other addresses in my network so now I just have a dedicated subdomain URL for my desktop instance. It's OpenWebUI is now just as accessible remotely as my server's.

[–] mierdabird 1 points 3 days ago

When on your wifi, try navigating in your browser to your windows computer's address with a colon and the port 11434 at the end. Would look something like this:

http://192.168.xx.xx:11434/

If it works your browser will just load the text: Ollama is running

From there you just need to figure out how you want to interact with it. I personally pair it with OpenWebUI for the web interface

[–] mierdabird 2 points 3 days ago (2 children)

Tesla was the first to make it popular in modern vehicles iirc

[–] mierdabird 34 points 3 days ago (1 children)
[–] mierdabird 2 points 6 days ago (1 children)

Not really sure I understand how these work, do you just feed it a large textual document like a transcript or something, and it turns it into a more machine readable vector format or something?

Or is it just a much smaller LLM that's more optimized for reading than generating?

[–] mierdabird 4 points 1 week ago

The update is giving me a performance uplift on my 3060 that's WAY more than 7%, using qwen2.5-coder:14b-instruct-q5_K_M here's rerunning the exact same prompt before and after:

[–] mierdabird 11 points 1 week ago (1 children)

The problem is big businesses like Temu can bulk ship and still only pay a certain %.

But it will ruin small businesses who do only small shipments and will now see a flat fee that may be half or more the value of the good.

[–] mierdabird 1 points 1 week ago

So I googled it and if you have a Pi 5 with 8gb or 16gb of ram it is technically possible to run Ollama, but the speeds will be excruciatingly slow. My Nvidia 3060 12gb will run 14b (billion parameter) models typically around 11 tokens per second, this website shows a Pi 5 only runs an 8b model at 2 tokens per second - each query will literally take 5-10 minutes at that rate:
Pi 5 Deepseek
It also shows you can get a reasonable pace out of the 1.5b model but those are whittled down so much I don't believe they're really useful.

There are lots of lighter weight services you can host on a Pi though, I highly recommend an app called Cosmos Cloud, it's really an all-in-one solution to building your own self-hosted services - it has its own reverse proxy like Nginx or Traefik including Let's Encrypt security certificates, URL management, and incoming traffic security features; it has an excellent UI for managing docker containers and a large catalog of prepared docker compose files to spin up services with the click of a button; it has more advanced features you can grow into using like OpenID SSO manager, your own VPN, and disk management/backups.
It's still very important to read the documentation thoroughly and expect occasional troubleshooting will be necessary, but I found it far, far easier to get working than a previous Nginx/Docker/Portainer setup I used.

[–] mierdabird 4 points 2 weeks ago (5 children)

Using Ollama depends a lot on the equipment you run - you should aim to have at least 12gb of VRAM/unified memory to run models. I have one copy running in a docker container using CPU on Linux and another running on the GPU of my windows desktop so I can give install advice for either OS if you'd like

[–] mierdabird 3 points 2 weeks ago* (last edited 2 weeks ago) (1 children)

I'm actually right there with you, I have a 3060 12gb and tbh I think it's the absolute most cost effective GPU option for home use right now. You can run 14B models at a very reasonable pace.
Doubling or tripling the cost and power draw just to get 16-24gb doesn't seem worth it to me. If you really want an AI-optimized box I think something with the new Ryzen Max chips would be the way to go - like an ASUS ROG Z-Flow, Framework Desktop or the GMKtek option whatever it's called. Apple's new Mac Minis are also great options. Both Ryzen Max and Apple make use of shared CPU/GPU memory so you can go up 96GB+ at much much lower power draws.

[–] mierdabird 1 points 3 weeks ago

Qwen 3 coder is the current top dog for coding afaik, there's a 30b size and something bigger but I can't remember what because I have no hope of running it lol. But I think the larger models have up to a million token context window.

[–] mierdabird 1 points 3 weeks ago

Unreal that we're paying for this shit

view more: next ›