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Koboldcpp rocm reddit

Koboldcpp rocm reddit. Q6_K, trying to find the number of layers I can offload to my RX 6600 on Windows was interesting. This takes care of the backend. Here's a quick rundown: When creating a thread, just specify one of many built-in formats, such as Alpaca, ChatML, Llama3, etc - or define your own. I know the best way would be installing Linux where most AMD GPU's are supported as far as I've understood. Specs of your system,, model your trying to load, and your current settings would be most helpful. cpp run on system memory. Is it maybe something with context shift that is causing it? because if i switch chats and reply there and go back, then it becomes normal. Wait until you see a browser pop up. For cooperative training it makes me lean more towards no. If you want more - you can try Linux with rocm, easiest one would probably be fedora as afaik it has rocm in official repos, with that you can use oobabooga and also stable diffusion for waifus. But on the other hand I've found some other sources like the KoboldCPP where it points out that CLBlast should support most GPU's. Many Git commands accept both tag and branch names, so creating this branch may cause unexpected behavior. Often (but not always) a verbal or visual pun, if it elicited a snort or face palm then our community is ready to groan along with you. Actual news PyTorch coming out of nightly which happened with 5. You’ll just have to play around with Another way would be llama. Locked post. Thus when using these cards you have to install a specific linux kernel and specific older ROCm version for them to even work at all. 5 tk/s, with a prompt of 3. exe (using the YellowRoseCx version), and got a model which I put into the same folder as the . Downloaded the . bat to include the same line at the start. The upcoming kernel 6. Do not use main KoboldAi, it's too much of a hassle to use with Radeon. /koboldcpp. This seems to be getting better though over time but even in this case Huggingface is using the new Instinct GPUs which are inaccessible to most people here. cpp supports AMD GPUs well, but maybe only on Linux (not sure; I'm Linux-only here). With the KoboldCPP ROCM it only takes 20 seconds. bat in your KAI folder. A: 5. hopefully this has been helpful and I've got a 6700XT hosting koboldcpp for me. I was bummed the last one didn't support it. cpp + AMD doesn't work well under Windows, you're probably better off just biting the bullet and buying NVIDIA. Reply reply Best Sillytavern settings for LLM - KoboldCPP. A place to discuss the SillyTavern fork of TavernAI. (koboldcpp rocm) I tried to generate a reply but the character writes gibberish or just yappin. For those that have not heard of KoboldCpp, it's a lightweight, single-executable standalone tool with no installation required and no dependencies, for running text-generation and image-generation models locally with low-end hardware (based on llama. 1. For PC questions/assistance. Yes Nvidia is a lot easier to get started, but you can use AMD for AI on Windows. exe --usecublas --gpulayers 10. You should be getting over 5 t/s with mixtral Q4K_M I get 7. I know it's likely because the hardware being used is taking too long to run through the context 5700XT support. KoboldCPP/llama. 5. Explore the GitHub Discussions forum for YellowRoseCx koboldcpp-rocm. I'm trying out Jan right now, but my main setup is KoboldCpp's backend combined with SillyTavern on the frontend. gguf - this wasn't so bad and I can maintain converstations no problem. If you have 12GB of VRAM, you can load all layers of a 13B Q5_K_M GGML model. If anyone has, feel free to post your experience in the comments. GoldenNocturne asked on Feb 18 in Q&A · Unanswered. They went from $14000 new to like $150-200 open-box and $70 used in a span of 5 years because AMD dropped ROCm support for them. However, It's possible exllama could still run it as dependencies are different. I'm using mixtral-8x7b. Try setting the environment variable HIP_VISIBLE_DEVICES. So I recently decided to hop on the home-grown local LLM setup, and managed to get ST and koboldcpp running a few days back. I just tried on koboldcpp with 0 layers offloaded to gpu, so full cpu/ram, and with Mixtral 8x7b q5_0 I get around 3. py --gpulayers 138 --noblas 4- loaded up goliath120b Q8 and did a simple prompt -- "write a story about a dog" and received random letters, numbers and code. It just works, it's pretty neat. A tag already exists with the provided branch name. I've tried both koboldcpp (CLBlast) and koboldcpp_rocm (hipBLAS (ROCm)). The only mentioned RDNA3 GPUs are the Radeon RX 7900 XTX and the Radeon PRO W7900. Needless to say, everything other than OpenBLAS uses GPU, so it essentially works as GPU acceleration of prompt ingestion process. Get app Get the Reddit app Log In Log in to Reddit. If you're using Windows, and llama. For example, if my prompt says "Give me a paragraph on the main character Joe to moving to Las Vegas and meeting interesting people there," it will start off its hipcc in rocm is a perl script that passes necessary arguments and points things to clang and clang++. If you don't do this, it won't work: apt-get update. yr0-ROCm, the programme can still be launched except the problem of reply with garbage characters in certain condition. 9x of the max context budget. It looks like this problem can possibly be caused by this library guessing the GPU ID (s) wrong. Getting gibberish response. apt-get upgrade. For starters, everything is installed and functional, and I'm completely new to Ubuntu, only using it to utilize ROCm with Koboldcpp (Because I'm not paying for tokens or waiting for Poe to ruin everything again). Now, enable ROCM for rx6700XT. There are two options: KoboldAI Client: This is the "flagship" client for Kobold AI. Most importantly, though, I'd use --unbantokens to make koboldcpp respect the EOS token. It's a layer of abstraction over llama-cpp-python, which aims to make everything as easy as possible for both developers and end-users. Ngl it’s mostly for nsfw and other chatbot things, I have a 3060 with 12gb of vram, 32gb of ram, and a Ryzen 7 5800X, I’m hoping for speeds of around 10-15sec with using tavern and koboldcpp. 7900 XTX is 250W and 300W respectively. An upper bound is (23 / 60 ) * 48 = 18 layers out of 48. 4/15. 3 - Install the necessary dependencies by copying and pasting the following commands. 60B is fairly slow at around 1t/s and probably similar in linux, havent tried it much there. The speed is on par with whatever you'd get from full GPU, at least from what I remember a few months ago when I tried oobabooba on google colab. exe (put the path till you hit the bin folder in rocm) set CXX=clang++. I have been running a Contabo ubuntu VPS server for many years. If it doesn't pop or accidentally closed, see the cmd for the IP and port. cpp also works well on CPU, but it's a lot slower than GPU acceleration. In 4_K_M quant it runs pretty fast, something like 4-5 token/second, I am pretty amazed as it is about as fast as 13b model and about as fast as I can read. 7 by using the gfx1030 codepath. [EDIT] - thanks for all the awesome additions and feedback everyone! Guide has been updated to include textgen-webui, koboldcpp, ollama-webui. So this here will run a new kobold web service on port 5001: Layers refer to the layers of the model you are using, and vary in size depending on the model, number of parameters, and the quantization you have chosen. having a 1070 8gb with 32 gb of ram is not helping things either. I am a hobbyist with very little coding skills. KCPP image generation not initialized! When I try to use the API, when trying to make an image in A1111 I get this error, but in chatting with the bot the images are created! I am using koboldcpp rocm. Q5_K_M. Good news would be having it on windows at this point. KoboldCpp and Oobabooga are also worth a look. I know a lot of people here use paid services but I wanted to make a post for people to share settings for self hosted LLMs, particularly using KoboldCPP. exe followed by the launch flags. \koboldcpp. Almost done, this is the easy part. bin pause Change the model to the name of the model you are using and i think the command for opencl is -useopencl Try running koboldCpp from a powershell or cmd window instead of launching it directly. Run PYTORCH_ROCM_ARCH=gfx1030 python3 setup. But at least KoboldCPP continues to improve its performance and compatibility. The RX 580 is just not quite potent enough (no CUDA cores, very limited Ellesmere compute and slow VRAM) to run even moderate sized models, especially since AMD stopped supporting it with ROCm (AMD's machine learning alternative, which would restrict use to Linux/WSL anyway (for now)). Expand user menu I'm running SillyTavern 1. 20GHz + DDR4 2400 Mhz. Replace '2,3' here with the ID to your GPU (s) that you want to use as reported by running rocm-smi or rocminfo Replace %command% with the command-line to koboldcpp. Doesn't start repeating non-stop, doesn't get confused as to the call koboldcpp. cpp, and adds a versatile Kobold API endpoint, additional format support, backward compatibility, as well as a fancy UI with persistent stories, editing tools, save formats, memory, world info, author's note, characters, scenarios and I agree with you on "It answers questions in a very different style than most other open models I've tried. Laptop specs: GPU : RTX 3060 6GB. 5T/s). Its just an absolute pain to setup. I'm sure I could put one program in one venev and another in another. With a 6900XT I typically get 50-60tk/s on 7-13B models. Alternatively, you can also create a desktop shortcut to the koboldcpp. 7+, so that doesn't work anymore. Why is this fork not yet merged upstream? edit: Tried compiling upstream koboldcpp with make LLAMA_HIPBLAS=1 and tried a random model nous-capybara-limarpv3-34b. Say I want to buy some ROCM instinct cards and run them alongside nvidia. 81 (windows) - 1 (cuda ) - (2048 * 7168 * 48 * 2) (input) ~ 17 GB left. If you want to run this on Windows, you can. koboldcpp-1. 4. exe --useclblast 0 0 --gpulayers 40 --stream --model WizardLM-13B-1. e. Or stick with Vulkan 7B for speed. kcpps To make things even smoother you can also put KoboldCPP. sh the web browser does not show up, do any of you guys know what could be the problem? Thank you for the help! Going to have to give us a bit more to go on, if you're wanting us to help troubleshoot. The current version of KoboldCPP now supports 8k context, but it isn't intuitive on how to set it up. 67 GB, R: 7. 61. Fortunately I've only started dabbling in KoboldAI two days ago. Time to move on to the frontend. KoboldAI i think uses openCL backend already (or so i think), so ROCm doesn't really affect that. This ensures there will always be room for a few lines of text, and prevents nonsensical responses that happened when the context had 0 length remaining after memory was added. If there're error, you'll see it in the console. Using the Image generation feature using standard KoboldCPP take a minute to generate an image using the built in Stable Diffusion. " Instead of always pushing you forward to a hasty conclusion, it basically organizes your answer around an overall theme. I have 2 different nvidia gpus installed, Koboldcpp recognizes them both and utilize vram on both cards but will only use the second weaker gpu The following is the command I run koboldcpp --threads 10 --usecublas 0 --gpulayers 10 --tensor_split 6 4 --contextsize 8192 BagelMIsteryTour-v2-8x7B. Right now I'm using clblast but I'll give this one a shot. dat and Kernels. cu of my Frankensteined KoboldCPP 1. So we should be able to undervolt once that's out. That includes pytorch/tensorflow. 2, Final Frontier scenario. You'll need perl in your environment variables and then compile llama. KoboldCPP. I should further add that the fundamental underpinnings of Koboldcpp, which is LLaMA. KoboldCpp - Combining all the various ggml. 2. Archlinux, ryzen 3950X, radeon 6900 XT, 64 gb ram 3200 MHz ram. pkg install clang wget git cmake. The ROCM fork of cpp works like a beauty and is amazing. I using mixtral on CPU (i5-12400f/128Gb DDR4). EDIT: To be clear, though, I think CLBlast only kicks in for prompt ingestion, and then Sorry to necro, but if I am using the ROCM version do I still use the useclblast argument or is there another one I am supposed to use? The model does not seem to be loading into my vram. We know it uses 7168 dimensions and 2048 context size. I have tried the regular KoboldCPP and The KoboldCPP ROCM fork. Chances are it will show successful load by itself. Every common prompt format is included. bin file it will do it with zero fuss. 0. . Neat, but IMHO one of the chief historical problems. GPU layers I've set as 14. I have three questions and wondering if I'm doing anything wrong. Using silicon-maid-7b. 5 image model at the same time, as a single instance, fully offloaded. I use the ROCm/HIP driver all the time. The KoboldCPP ROCM fork is much much faster and stable. I've followed the KoboldCpp instructions on its GitHub page. I was able to get it up and running and connect to silly tavern. When asking a question or stating a problem, please add as much detail as possible. Koboldcpp uses CLBlast which works just fine with AMD GPUs. Kobold only uses one device last I checked. exe --config <NAME_OF_THE_SETTINGS_FILE>. q5_0. exe file. KoboldCPP is a roleplaying program that allows you to use GGML AI models, which are largely dependent on your CPU+RAM. e. Currently, I have ROCm downloaded, and drivers too. 30B at around 2t/s on windows and and 2. If you run out of VRAM, select Compress Weights (quant) to quantize the image model to take less memory. 04) with an AMD RX580 8GB, using Toppy-m-7b. gguf --usecublas mmq --gpulayers 15 --contextsize 4096 and it seems to work with the same performance as the rocm fork. Fast gibberish, but gibberish. Koboldcpp would pick it up after that happens. 7%) As for textgen, koboldcpp rocm fork just dropped for windows a few days ago. A few days ago I started using koboldcpp_rocm (AMD)mistral-7b-instruct-v0. But when I run the Play-roc. now, Im looking at some recent Youtube vids, and started playing with Ollama - specially I just ran olama run llama2 as per the ' most popular There is ROCm support for Windows. EDIT - Nope, just gibberish for me, too. Author's note now automatically aligns with word boundaries I found out Vulkan runs 5x as fast as CLBlast for a 7B model on my machine (AMD GPU) I'm in shock. exe (same as above) cd your-llamacpp-folder. New Model. Click the AI and choose model to load. KoboldCpp now allows you to run in text-gen-only, image-gen-only or hybrid modes, simply KoboldCpp allow offloading layers of the model to GPU, either via the GUI launcher or the --gpulayers flags. Right now this is my KoboldCPP launch start "" koboldcpp. I know it's not going to be fast on that hardware, but with clblast it's still much much faster than rocm. I have 32GB RAM, Ryzen 5800x CPU, and 6700 XT GPU. I'm wondering if there is some way to make that work. The files added were missing. exe in the SillyTavern's folder and then edit their Start. cpp with sudo, this is because only users in the render group have access to ROCm functionality. With a 13b model fully loaded onto the GPU and context ingestion via HIPBLAS, I get typical output inference/generation speeds of around 25ms per token (hypothetical 40T/S). I could be running Vulkan 13B in about the time it takes to run CLBlast 7B. Heres the setup: 4gb GTX 1650m (GPU) Intel core i5 9300H (Intel UHD Graphics 630) 64GB DDR4 Dual Channel Memory (2700mhz) The model I am using is just under 8gb, I noticed that when its processing context (koboldcpp output states "Processing Prompt [BLAS] (512/ xxxx tokens)") my cpu is capped at 100% but the integrated GPU doesn't seem to be doing anything whatsoever. even with SillyTavern things got pretty hot. KoboldCpp is an easy-to-use AI text-generation software for GGML and GGUF models. After ROCm's HIP SDK became officially supported on Windows (except for gfx1032. Between 8 and 25 layers offloaded, it would consistently be able to process 7700 tokens for the first prompt (as SillyTavern sends that massive string for a resuming conversation), and then the second prompt of less than 100 tokens would cause it to crash and stop generating. CPU: i7-11800H. 75 GB, Sys: 8. KoboldCPP ROCM is your friend here. Of course llama. However, that gets throttled by the prompt/context ingestion. Running SillyTavern. In short, install clblast with conda. cuda is the way to go, the latest nv gameready driver 532. Depends heavily on the card you have, 5000 series I know is a lost cause. now, Im looking at some recent Youtube vids, and started playing with Ollama - specially I just ran olama run llama2 as per the ' most popular Thank god for reddit. cpp/koboldcpp with CLBlast (OpenCL), but the prompt evaluation times are much slower compared to ROCm. C:\mystuff\koboldcpp. cpp). 0. cpp, and adds a versatile Kobold API endpoint, additional format support, Stable Diffusion image generation, backward compatibility, as well as a fancy UI with persistent stories 3- went back to the koboldcpp folder opened a terminal at folder again-- . 46. so-000-gfx1031. pkg upgrade. I am also eagerly awaiting vulkan, if we ever get to the point Koboldcpp works as fast as its current CUDA version it would simplify things a lot. Once the model is loaded, go check the Silly Tavern again. llama. It crashes on first generation. 43, with the MMQ fix, used with success instead of the one included with LlamaCPP b1209, this in order to reach much higher contexts without OOM, including on perplexity tests! CUDA compilation enabled in the CMakeList. dbl click play. So whatever koboldcpp-rocm does, unless it packages the compiled ROCm-tensil-gfx1010 lib, it won't work yet on rocBLAS uses ROCM. I'm a newbie when it comes to AI generation but I wanted to dip my toes into it with KoboldCpp. Take the following steps for basic 8k context usuage. Enough for 13 layers. hsaco into rocblas\library (files from the original post) python . py; I didn't have to replace any files in the rocblas\library folder. If each layer output has to be cached in memory as well; More conservatively is: 24 * 0. Make sure you have the LLaMa repository cloned locally and build it with the following command. Note that at this point you will need to run llama. It's just that if possibel I would like to avoid a VM or double boot situation. The koboldcpp rocm released a precompiled exe that seems to have rocm support, I'm not 100% sure if it does as I can't test it myself but it seems promising permalink embed Thank you for the help. g. They all have their pros and cons of course, but one thing they have in common is that they all do an excellent job of staying on the cutting edge of the local LLM scene (unlike LM Studio). RAM: 32 GB. But if you do, there are options: CLBlast for any GPU. cpp and stable-diffusion. 7 should have some additional power controls for RDNA3 GPUs. Press configure and then generate. It's significantly faster. ROCm 5. Maybe wait a few month to get proper Windows support via Vulkan or ROCm or try the CLBlast version first. ggmlv3. exe file, and set the desired values in the Properties > Target box. The link I posted references a ROCm commit that may enable proper gfx1010 support. txt, like on KoboldCPP. I have a 6900 XT and 5900X cpu. Example: Maya: Can you explain Quantum Theory in brief?\Wisdom: Certainly, Maya. 2x Nvidia P40 + 2x Intel (R) Xeon (R) CPU E5-2650 v4 @ 2. Haven't used myself, but here is a thread that describes it. Cons: If you prefer the text-generation-webui environment like me then this won't do it. Also, ROCm doesn't officially support your gpu, but it should work with HSA_OVERRIDE_GFX_VERSION=10. On Windows, a few months ago I was able to use the ROCm branch, but it was really slow (I'm quite sure my settings were horrible, but I was getting less than 0. cpp (a lightweight and fast solution to running 4bit A few days ago I started using koboldcpp_rocm (AMD)mistral-7b-instruct-v0. I just upgraded one of my PCs to a Ryzen 7 5700X with a 12GB RX6700. exe [path to model] [port] Note: if the path to the model contains spaces, escape it (surround in double quotes). 13b llama2 isnt very good, 20b is a lil better Sep 16, 2023 · Get koboldcpp_rocm_files. Thanks in advance. Using CLBlast installed through conda. 6 - 8k context for GGML models. I am currently using Mistral 7B Q5_K_M, and it is working good for both short NSFW and RPG plays. So if you don't have a GPU, you use OpenBLAS which is the default option for KoboldCPP. cpp like so: set CC=clang. py install. Takes a LONG time even on a 5900X. CUBlas (nvidia) > ROCM (AMD) > CLBlast (any GPU) > OpenBLAS (CPU only) If you don't have a GPU, your prompt processing is always going to be slow. 6. Reply. A good example is KoboldCPP. KoboldCPP v1. 4t/s on linux. 03 even increased the performance by x2: " this Game Ready Driver introduces significant performance optimizations to deliver up to 2x inference performance on popular AI models and applications such as The Real Housewives of Atlanta; The Bachelor; Sister Wives; 90 Day Fiance; Wife Swap; The Amazing Race Australia; Married at First Sight; The Real Housewives of Dallas Tried to make it work a while ago. 6 t/s if I offload around 14gb of layers on to vram using koboldcpp-rocm. Discuss code, ask questions & collaborate with the developer community. Hardware support ADHD. I use this server to run my automations using Node RED (easy for me because it is visual programming), run a Gotify server, a PLEX media server and an InfluxDB server. cpp CPU LLM inference projects with a WebUI and API (formerly llamacpp-for-kobold) Some time back I created llamacpp-for-kobold , a lightweight program that combines KoboldAI (a full featured text writing client for autoregressive LLMs) with llama. Immutable fedora won't work, amdgpu-install need /opt access If not using fedora find your distribution's rocm/hip packages and ninja-build for gptq. In the TUI for ccmake build, change AMDGPU_TARGETS and GPU_TARGETS to gfx1030. 4k tokens (Don't look at prompt processing speed, I used rocm so that part is still heavily influenced by the GPU, but the inference itself shouldn't be influeced by it AFAIK) u/the-bloke on reddit or TheBloke on huggingface (same person) is an excellent source of model files. 1 - Install Termux (Download it from F-Droid, the PlayStore version is outdated). 2. Clblast had you select the device, after all. Obviously i followed that instruction with the parameter gfx1031, also tried to recompile all rocm packages in rocm-arch/rocm-arch repository Troubles Getting KoboldCpp Working. KoboldCpp Special Edition with GPU acceleration released! There's a new, special version of koboldcpp that supports GPU acceleration on NVIDIA GPUs. (GPU: rx 7800 xt. On windows you can try koboldcpp-rocm, i've tried it and it worked ootb, no hip or pro driver installed (with rx7600). cpp can run either these days, including splitting layers over multiple CPUs+GPUs - which is what you normally do if you don't have a 24GB card to fit a large model. I'm running into scenarios where SillyTavern will abort the text generation while KoboldCPP is still processing. Koboldcpp is not using the graphics card on GGML models! Hello, I recently bought an RX 580 with 8 GB of VRAM for my computer, I use Arch Linux on it and I wanted to test the Koboldcpp to see how the results looks like, the problem isthe koboldcpp is not using the ClBlast and the only options that I have available are only Non-BLAS which is Changelog of KoboldAI Lite 14 Apr 2023: Now clamps maximum memory budget to 0. CPU: Ryzen 5 7600 6 core) Needs more info like the model you are Welcome! This is a friendly place for those cringe-worthy and (maybe) funny attempts at humour that we call dad jokes. If you’re running a 33B model you can load about 50-60% of the layers. Many of the tools had been Nov 15, 2023 · The rocm fork has no issue tracker, so I'll post here. I still want to try out some other cool ones that use a Nvidia GPU, getting that set up. gguf if I specify -usecublas 0 1. With some smaller models the rocm fork has worked fine, but running goliath q3_k_s for example is very very slow. mkdir build. 1 for windows , first ever release, is still not fully complete. i have a very similar rig (5700x, rx6800 non xt, 64GB at 3200Mhz) and i run 13B at around 8-9t/s on windows koboldcpp and 18t/s on linux with koboldcpp-rocm. 3. Arch: community/rocm-hip-sdk community/ninja KoboldCpp is an easy-to-use AI text-generation software for GGML and GGUF models. In KoboldCpp - Version 1. pkg install python. Q5_K_S. Properly trained models send that to signal the end of their response, but when it's ignored (which koboldcpp unfortunately does by default, probably for backwards-compatibility reasons), the model is forced to keep generating tokens and by going "out of With just 8GB VRAM GPU, you can run both a 7B q4 GGUF (lowvram) alongside any SD1. 6000 series if ROCm is working chances are the latest Koboldcpp also will work. amd doesn't care, the missing amd rocm support for consumer cards killed amd for me. I know gfx1100 is working (my 7900XTX runs great), but is there a way to know whether others (ie gfx1102, gfx1030) are currently supported on Windows? Subreddit to discuss about Llama, the large language model created by Meta AI. Running on Silly Tavern, I get 25. 11. If you have a specific Keyboard/Mouse/AnyPart that is doing something strange, include the model number i. sparsetral-16x7B is wonderful for rp/erp. I was about to go out and buy an RX6600 as a second GPU to run the rocm branch. It's a single self contained distributable from Concedo, that builds off llama. (run cmd, navigate to the directory, then run. Now that I've got everything installed, it's dawning on me how big of a pain everything is to launch. I reviewed 12 different ways to run LLMs locally, and compared the different tools. Full ROCm support is limited to professional grade AMD cards ($5k+). I use the YellowRose branch of koboldcpp that supports hipBLAS (ROCm) for Windows and choose 100 layers offload to GPU (for a 20b LLM). As for best option with 16gb vram I would probably say it's either mixtral or a yi model for short context or a mistral fine tune. 60 on my homelab server (Ubuntu 22. I have run into a problem running the AI. 5 + KoboldCPP 1. So with very small prompts or low active context I typically get 30-35 T/S round trip generation. 51 T/s. The text was updated successfully, but these errors were encountered: Baphilia. Context size 2048. Every week new settings are added to sillytavern and koboldcpp and it's too much too keep up with. 2 - Run Termux. Mhmmmmm, take your time. 9844 GB (52. Runs a little slower with 13B models than something like ooba+RocM, but makes 30B models practical to use at texting-like speeds. After trying a lot of larger models after getting my 3090 24GB, I just stumbled upon sparsetral, and it's easily my favorite. When I'm generating, my CPU usage is around 60% and my GPU is only like 5%. On my laptop with just 8 GB VRAM, I still got 40 % faster inference speeds by offloading some model layers on the GPU Radeon Instinct MI25s have 16gb and sell for $70-$100 each. Just about ready to delete all my other models until something better comes along. MOD. So 13-18 is my guess as to what you'll be able to fit. Q4_K_M. zip; pip install customtkinter; Copy TensileLibrary. But they now use gfx1030 exclusive features in 5. AFAIK it used to work with ROCm <5. If you want to run the full model with ROCM, you would need a different client and running on Linux, it seems. **So What is SillyTavern?** Tavern is a user interface you can install on your computer (and Android phones) that allows you to interact text generation AIs and chat/roleplay with characters you or the community create. make clean && LLAMA_HIPBLAS=1 make -j. . Hi there, first time user here. Those might be able to be changed via rocm-smi but I haven't poked around. Optionally specify ggml-cuda. I am thinking this stuff may be a beyond my capability right now or require quite a bit more reading. cpp is integrated into oobabooga webUI as well, and if you tell that to load a ggml. Windows: Go to Start > Run (or WinKey+R) and input the full path of your koboldcpp. This fully loads my RX 7900xtx. koboldCpp. Have you loaded up an image model? Fedora rocm/hip installation. ir zq xo gq wr zj vt py de sc