Nowadays you get TTS, STT, text & image generation and image editing should also be possible. Besides being able to run via rocm, vulkan or on CPU, GPU and NPU. Quite a lot of options. They have a quite good and pragmatic pace in development. Really recommend this for AMD hardware!
Edit: OpenAI and i think nowaday ollama compatible endpoints allow me to use it in VSCode Copilot as well as i.e. Open Web UI. More options are shown in their docs.
Feels like this is sitting somewhere between Ollama and something like LM Studio, but with a stronger focus on being a unified “runtime” rather than just model serving.
The interesting part to me isn’t just local inference, but how much orchestration it’s trying to handle (text, image, audio, etc). That’s usually where things get messy when running models locally.
Curious how much of this is actually abstraction vs just bundling multiple tools together. Also wondering if the AMD/NPU optimizations end up making it less portable compared to something like Ollama in practice.
Note that the NPU models/kernels this uses are proprietary and not available as open source. It would be nice to develop more open support for this hardware.
That won't give you NPU support, which relies on https://github.com/FastFlowLM/FastFlowLM . And that says "NPU-accelerated kernels are proprietary binaries", not open source.
I’ve read the website and the news announcement, and I still don’t understand what it is. An alternative to LM Studio? Does it support MLX or metal on Macs? I’m assuming it will optimize things for AMD, but are you at a disadvantage using other GPUs?
I think LM Studio itself uses other software to actually make use of LLMs. If that other software does not support your NPUs, then you are not going to get much performance out of those. This Lemonade thing I am guessing is one such other software, that LM Studio could be using.
Surprising that the Linux setup instructions for the server component don't include Docker/Podman as an option, its Snap/PPA for Ubuntu and RPM for Fedora.
Maybe the assumption is that container-oriented users can build their own if given native packages?
Lemonade is using llama.cpp for text and vision with a nightly ROCm build. It can also load and serve multiple LLMs at the same time. It can also create images, or use whisper.cpp, or use TTS models, or use NPU (e.g Strix Halo amdxdna2), and more!
Been running lemonade for some time on my Strix Halo box. It dispatches out to other backends that they include, like diffusion and llama. I actually don't like their combined server, and what I use instead is their llama CPP build for ROCm.
But I'm not doing anything with images or audio. I get about 50 tokens a second with GPT OSS 120B. As others have pointed out, the NPU is used for low-powered, small models that are "always on", so it's not a huge win for the standard chatbot use case.
Even small NPUs can offload some compute from prefill which can be quite expensive with longer contexts. It's less clear whether they can help directly during decode; that depends on whether they can access memory with good throughput and do dequant+compute internally, like GPUs can. Apple Neural Engine only does INT8 or FP16 MADD ops, so that mostly doesn't help.
I’m looking forward to trying this currently Strix halo’s npu isn’t accessible if you’re running Linux, and previously I don’t think lemonade was either. If this opens up the npu that would be great! Resolute raccoon is adding npu support as well.
Wow this is super interesting. This creates a local “Gemini” front end and all. This is more or less a generative AI aggregator where it installs multiple services for different gen modes. I’m excited to try this out on my strix halo. The biggest issue I had is image and audio gen so this seems like a great option.
Initial read suggests it is a mini-swiss army knife, because it seems to be able to do a lot ( based on website claims anyway ). The app integration seems to suggest they want to be more of a control dashboard.
Nowadays you get TTS, STT, text & image generation and image editing should also be possible. Besides being able to run via rocm, vulkan or on CPU, GPU and NPU. Quite a lot of options. They have a quite good and pragmatic pace in development. Really recommend this for AMD hardware!
Edit: OpenAI and i think nowaday ollama compatible endpoints allow me to use it in VSCode Copilot as well as i.e. Open Web UI. More options are shown in their docs.
The interesting part to me isn’t just local inference, but how much orchestration it’s trying to handle (text, image, audio, etc). That’s usually where things get messy when running models locally.
Curious how much of this is actually abstraction vs just bundling multiple tools together. Also wondering if the AMD/NPU optimizations end up making it less portable compared to something like Ollama in practice.
This is answered from their Project Roadmap over on Github[0]:
Recently Completed: macOS (beta)
Under Development: MLX support
[0] https://github.com/lemonade-sdk/lemonade?tab=readme-ov-file#...
Maybe the assumption is that container-oriented users can build their own if given native packages?
I suppose a Dockerfile could be included but that also seems unconventional.
https://github.com/lemonade-sdk/llamacpp-rocm
But I'm not doing anything with images or audio. I get about 50 tokens a second with GPT OSS 120B. As others have pointed out, the NPU is used for low-powered, small models that are "always on", so it's not a huge win for the standard chatbot use case.
[1]: https://github.com/lemonade-sdk/lemonade/releases/tag/v10.0....
"FastFlowLM (FLM) support in Lemonade is in Early Access. FLM is free for non-commercial use, however note that commercial licensing terms apply. "