Sorry on the delay - so it installs https://github.com/Blaizzy/mlx-vlm and other components and sets up the commands - you don't need to use it but we thought it might be easier for folks
Hey sorry on the delay - we just added API support, so you can access a remote server - it includes optional python, tool call, bash and web search support if you enable them.
For SSH - we haven't yet done that - for now we have a SHA256 encryption approach, but it's not SSH yet. HTTPS will also sadly have to be the end user's setup process as well - we plan to make it better soon!
Hey! Sorry for not replying sooner - yes we'll keep publishing more KLD - sadly some are saying we are "optimizing" for KLD now since we posted so many haha - but the whole purpose of quantization is to match the BF16 logits as much as possible whilst reducing disk space (ie reduce KLD).
In general so this is funny and a quirk of quantization - sometimes 8bit, 4bit models do BETTER on downstream benchmarks (SWE Bench for eg), since sometimes rounding can actually somehow act as a "regularization" method (this is just my hunch).
So KLD isn't that expensive, since we leverage the trick of causal attention - since causal attention is lower triangular, we can do 1 forward pass on the enter text (say 2048 tokens), and you attain logits for the prediction for every token's position - so this is O(N^2).
However coding benchmarking require actual inference, and cannot use the causal attention trick, and it's best to run them 10 times since temperature = 1.0 is not deterministic - and take an average. We plan to maybe do something like https://marginlab.ai/trackers/claude-code/, which takes a random sample and does it over time.
Hey so sorry didn't reply sooner - yes the docker used to be I think 4-8GB ish since CUDA sadly itself is 4GB I think, and PyTorch takes the rest. So unfortunately the Unsloth Docker image has ballooned due to this. We tried reducing it as much as possible, but it's hard :( https://hub.docker.com/r/vllm/vllm-openai/tags for eg is around 11GB ish, ad we're 13.6GB ish.
We'll try our best to compress it more, but it's tough
Apologies as well didn't reply sooner - Studio supports AMD out of the box now! We worked with AMD to make it work! One thing that is still missing is pre-compiled AMD ROCM binaries, which we're trying to see if we can integrate that.
Interesting on diskpart - let me check and get back to you [EDIT] - visual studio build tools, python 3.13, git, cmake, node.js are all msi-based installers - so these are likely the culprits on using diskpart - essentially MSI installers check if there's enough disk space before installing items
Oh my apologies I didn't respond - if only HN had a notifier haha
Oh yes we added a custom folder button which can pull .gguf files for now from any folder - it supports LM Studio and Ollama ones - but afreed it's still a mess.
One of the goals is to somehow quick search for .gguf folders, and add recommended folders - we currently have folders for Ollama and LM Studio for eg