Roadmap / Project status / Manifesto / ggml
Inference of Meta's LLaMA model (and others) in pure C/C++
Important
[2024 Jun 12] Binaries have been renamed w/ a llama-
prefix. main
is now llama-cli
, server
is llama-server
, etc (ggerganov#7809)
- [2024 Jun 26] The source code and CMake build scripts have been restructured ggerganov#8006
- [2024 Apr 21]
llama_token_to_piece
can now optionally render special tokens ggerganov#6807 - [2024 Apr 4] State and session file functions reorganized under
llama_state_*
ggerganov#6341 - [2024 Mar 26] Logits and embeddings API updated for compactness ggerganov#6122
- [2024 Mar 13] Add
llama_synchronize()
+llama_context_params.n_ubatch
ggerganov#6017 - [2024 Mar 8]
llama_kv_cache_seq_rm()
returns abool
instead ofvoid
, and newllama_n_seq_max()
returns the upper limit of acceptableseq_id
in batches (relevant when dealing with multiple sequences) ggerganov#5328 - [2024 Mar 4] Embeddings API updated ggerganov#5796
- [2024 Mar 3]
struct llama_context_params
ggerganov#5849
convert.py
has been deprecated and moved toexamples/convert_legacy_llama.py
, please useconvert_hf_to_gguf.py
ggerganov#7430- Initial Flash-Attention support: ggerganov#5021
- BPE pre-tokenization support has been added: ggerganov#6920
- MoE memory layout has been updated - reconvert models for
mmap
support and regenerateimatrix
ggerganov#6387 - Model sharding instructions using
gguf-split
ggerganov#6404 - Fix major bug in Metal batched inference ggerganov#6225
- Multi-GPU pipeline parallelism support ggerganov#6017
- Looking for contributions to add Deepseek support: ggerganov#5981
- Quantization blind testing: ggerganov#5962
- Initial Mamba support has been added: ggerganov#5328
The main goal of llama.cpp
is to enable LLM inference with minimal setup and state-of-the-art performance on a wide
variety of hardware - locally and in the cloud.
- Plain C/C++ implementation without any dependencies
- Apple silicon is a first-class citizen - optimized via ARM NEON, Accelerate and Metal frameworks
- AVX, AVX2 and AVX512 support for x86 architectures
- 1.5-bit, 2-bit, 3-bit, 4-bit, 5-bit, 6-bit, and 8-bit integer quantization for faster inference and reduced memory use
- Custom CUDA kernels for running LLMs on NVIDIA GPUs (support for AMD GPUs via HIP)
- Vulkan, SYCL, and (partial) OpenCL backend support
- CPU+GPU hybrid inference to partially accelerate models larger than the total VRAM capacity
Since its inception, the project has improved significantly thanks to many contributions. It is the main playground for developing new features for the ggml library.
Supported models:
Typically finetunes of the base models below are supported as well.
- LLaMA 🦙
- LLaMA 2 🦙🦙
- LLaMA 3 🦙🦙🦙
- Mistral 7B
- Mixtral MoE
- DBRX
- Falcon
- Chinese LLaMA / Alpaca and Chinese LLaMA-2 / Alpaca-2
- Vigogne (French)
- BERT
- Koala
- Baichuan 1 & 2 + derivations
- Aquila 1 & 2
- Starcoder models
- Refact
- MPT
- Bloom
- Yi models
- StableLM models
- Deepseek models
- Qwen models
- PLaMo-13B
- Phi models
- GPT-2
- Orion 14B
- InternLM2
- CodeShell
- Gemma
- Mamba
- Grok-1
- Xverse
- Command-R models
- SEA-LION
- GritLM-7B + GritLM-8x7B
- OLMo
- GPT-NeoX + Pythia
- ChatGLM3-6b + ChatGLM4-9b
(instructions for supporting more models: HOWTO-add-model.md)
Multimodal models:
- LLaVA 1.5 models, LLaVA 1.6 models
- BakLLaVA
- Obsidian
- ShareGPT4V
- MobileVLM 1.7B/3B models
- Yi-VL
- Mini CPM
- Moondream
- Bunny
Bindings:
- Python: abetlen/llama-cpp-python
- Go: go-skynet/go-llama.cpp
- Node.js: withcatai/node-llama-cpp
- JS/TS (llama.cpp server client): lgrammel/modelfusion
- JavaScript/Wasm (works in browser): tangledgroup/llama-cpp-wasm
- Typescript/Wasm (nicer API, available on npm): ngxson/wllama
- Ruby: yoshoku/llama_cpp.rb
- Rust (more features): edgenai/llama_cpp-rs
- Rust (nicer API): mdrokz/rust-llama.cpp
- Rust (more direct bindings): utilityai/llama-cpp-rs
- C#/.NET: SciSharp/LLamaSharp
- Scala 3: donderom/llm4s
- Clojure: phronmophobic/llama.clj
- React Native: mybigday/llama.rn
- Java: kherud/java-llama.cpp
- Zig: deins/llama.cpp.zig
- Flutter/Dart: netdur/llama_cpp_dart
- PHP (API bindings and features built on top of llama.cpp): distantmagic/resonance (more info)
- Guile Scheme: guile_llama_cpp
UI:
Unless otherwise noted these projects are open-source with permissive licensing:
- iohub/collama
- janhq/jan (AGPL)
- nat/openplayground
- Faraday (proprietary)
- LMStudio (proprietary)
- Layla (proprietary)
- LocalAI (MIT)
- LostRuins/koboldcpp (AGPL)
- Mozilla-Ocho/llamafile
- nomic-ai/gpt4all
- ollama/ollama
- oobabooga/text-generation-webui (AGPL)
- psugihara/FreeChat
- cztomsik/ava (MIT)
- ptsochantaris/emeltal
- pythops/tenere (AGPL)
- RAGNA Desktop (proprietary)
- RecurseChat (proprietary)
- semperai/amica
- withcatai/catai
- Mobile-Artificial-Intelligence/maid (MIT)
- Msty (proprietary)
- LLMFarm (MIT)
- KanTV(Apachev2.0 or later)
- Dot (GPL)
- MindMac (proprietary)
- KodiBot (GPL)
- eva (MIT)
- AI Sublime Text plugin (MIT)
- AIKit (MIT)
- LARS - The LLM & Advanced Referencing Solution (AGPL)
(to have a project listed here, it should clearly state that it depends on llama.cpp
)
Tools:
- akx/ggify – download PyTorch models from HuggingFace Hub and convert them to GGML
- crashr/gppm – launch llama.cpp instances utilizing NVIDIA Tesla P40 or P100 GPUs with reduced idle power consumption
Infrastructure:
- Paddler - Stateful load balancer custom-tailored for llama.cpp
Typical run using LLaMA v2 13B on M2 Ultra
$ make -j && ./llama-cli -m models/llama-13b-v2/ggml-model-q4_0.gguf -p "Building a website can be done in 10 simple steps:\nStep 1:" -n 400 -e
I llama.cpp build info:
I UNAME_S: Darwin
I UNAME_P: arm
I UNAME_M: arm64
I CFLAGS: -I. -O3 -std=c11 -fPIC -DNDEBUG -Wall -Wextra -Wpedantic -Wcast-qual -Wdouble-promotion -Wshadow -Wstrict-prototypes -Wpointer-arith -Wmissing-prototypes -pthread -DGGML_USE_K_QUANTS -DGGML_USE_ACCELERATE
I CXXFLAGS: -I. -I./common -O3 -std=c++11 -fPIC -DNDEBUG -Wall -Wextra -Wpedantic -Wcast-qual -Wno-unused-function -Wno-multichar -pthread -DGGML_USE_K_QUANTS
I LDFLAGS: -framework Accelerate
I CC: Apple clang version 14.0.3 (clang-1403.0.22.14.1)
I CXX: Apple clang version 14.0.3 (clang-1403.0.22.14.1)
make: Nothing to be done for `default'.
main: build = 1041 (cf658ad)
main: seed = 1692823051
llama_model_loader: loaded meta data with 16 key-value pairs and 363 tensors from models/llama-13b-v2/ggml-model-q4_0.gguf (version GGUF V1 (latest))
llama_model_loader: - type f32: 81 tensors
llama_model_loader: - type q4_0: 281 tensors
llama_model_loader: - type q6_K: 1 tensors
llm_load_print_meta: format = GGUF V1 (latest)
llm_load_print_meta: arch = llama
llm_load_print_meta: vocab type = SPM
llm_load_print_meta: n_vocab = 32000
llm_load_print_meta: n_merges = 0
llm_load_print_meta: n_ctx_train = 4096
llm_load_print_meta: n_ctx = 512
llm_load_print_meta: n_embd = 5120
llm_load_print_meta: n_head = 40
llm_load_print_meta: n_head_kv = 40
llm_load_print_meta: n_layer = 40
llm_load_print_meta: n_rot = 128
llm_load_print_meta: n_gqa = 1
llm_load_print_meta: f_norm_eps = 1.0e-05
llm_load_print_meta: f_norm_rms_eps = 1.0e-05
llm_load_print_meta: n_ff = 13824
llm_load_print_meta: freq_base = 10000.0
llm_load_print_meta: freq_scale = 1
llm_load_print_meta: model type = 13B
llm_load_print_meta: model ftype = mostly Q4_0
llm_load_print_meta: model size = 13.02 B
llm_load_print_meta: general.name = LLaMA v2
llm_load_print_meta: BOS token = 1 '<s>'
llm_load_print_meta: EOS token = 2 '</s>'
llm_load_print_meta: UNK token = 0 '<unk>'
llm_load_print_meta: LF token = 13 '<0x0A>'
llm_load_tensors: ggml ctx size = 0.11 MB
llm_load_tensors: mem required = 7024.01 MB (+ 400.00 MB per state)
...................................................................................................
llama_new_context_with_model: kv self size = 400.00 MB
llama_new_context_with_model: compute buffer total size = 75.41 MB
system_info: n_threads = 16 / 24 | AVX = 0 | AVX2 = 0 | AVX512 = 0 | AVX512_VBMI = 0 | AVX512_VNNI = 0 | FMA = 0 | NEON = 1 | ARM_FMA = 1 | F16C = 0 | FP16_VA = 1 | WASM_SIMD = 0 | BLAS = 1 | SSE3 = 0 | VSX = 0 |
sampling: repeat_last_n = 64, repeat_penalty = 1.100000, presence_penalty = 0.000000, frequency_penalty = 0.000000, top_k = 40, tfs_z = 1.000000, top_p = 0.950000, typical_p = 1.000000, temp = 0.800000, mirostat = 0, mirostat_lr = 0.100000, mirostat_ent = 5.000000
generate: n_ctx = 512, n_batch = 512, n_predict = 400, n_keep = 0
Building a website can be done in 10 simple steps:
Step 1: Find the right website platform.
Step 2: Choose your domain name and hosting plan.
Step 3: Design your website layout.
Step 4: Write your website content and add images.
Step 5: Install security features to protect your site from hackers or spammers
Step 6: Test your website on multiple browsers, mobile devices, operating systems etc…
Step 7: Test it again with people who are not related to you personally – friends or family members will work just fine!
Step 8: Start marketing and promoting the website via social media channels or paid ads
Step 9: Analyze how many visitors have come to your site so far, what type of people visit more often than others (e.g., men vs women) etc…
Step 10: Continue to improve upon all aspects mentioned above by following trends in web design and staying up-to-date on new technologies that can enhance user experience even further!
How does a Website Work?
A website works by having pages, which are made of HTML code. This code tells your computer how to display the content on each page you visit – whether it’s an image or text file (like PDFs). In order for someone else’s browser not only be able but also want those same results when accessing any given URL; some additional steps need taken by way of programming scripts that will add functionality such as making links clickable!
The most common type is called static HTML pages because they remain unchanged over time unless modified manually (either through editing files directly or using an interface such as WordPress). They are usually served up via HTTP protocols – this means anyone can access them without having any special privileges like being part of a group who is allowed into restricted areas online; however, there may still exist some limitations depending upon where one lives geographically speaking.
How to
llama_print_timings: load time = 576.45 ms
llama_print_timings: sample time = 283.10 ms / 400 runs ( 0.71 ms per token, 1412.91 tokens per second)
llama_print_timings: prompt eval time = 599.83 ms / 19 tokens ( 31.57 ms per token, 31.68 tokens per second)
llama_print_timings: eval time = 24513.59 ms / 399 runs ( 61.44 ms per token, 16.28 tokens per second)
llama_print_timings: total time = 25431.49 ms
Demo of running both LLaMA-7B and whisper.cpp on a single M1 Pro MacBook
And here is another demo of running both LLaMA-7B and whisper.cpp on a single M1 Pro MacBook:
whisper-llama-lq.mp4
Here are the end-to-end binary build and model conversion steps for most supported models.
Firstly, you need to get the binary. There are different methods that you can follow:
- Method 1: Clone this repository and build locally, see how to build
- Method 2: If you are using MacOS or Linux, you can install llama.cpp via brew, flox or nix
- Method 3: Use a Docker image, see documentation for Docker
- Method 4: Download pre-built binary from releases
You can run a basic completion using this command:
llama-cli -m your_model.gguf -p "I believe the meaning of life is" -n 128
# Output:
# I believe the meaning of life is to find your own truth and to live in accordance with it. For me, this means being true to myself and following my passions, even if they don't align with societal expectations. I think that's what I love about yoga – it's not just a physical practice, but a spiritual one too. It's about connecting with yourself, listening to your inner voice, and honoring your own unique journey.
See this page for a full list of parameters.
-
OpenCL acceleration is provided by the matrix multiplication kernels from the CLBlast project and custom kernels for ggml that can generate tokens on the GPU.
You will need the OpenCL SDK.
-
For Ubuntu, Debian, and Fedora the packages
opencl-headers
,ocl-icd
may be needed. -
For Windows, a pre-built SDK is available on the OpenCL Releases page.
-
Installing the OpenCL SDK from source
git clone --recurse-submodules https://github.com/KhronosGroup/OpenCL-SDK.git cd OpenCL-SDK cmake -B build -DBUILD_DOCS=OFF \ -DBUILD_EXAMPLES=OFF \ -DBUILD_TESTING=OFF \ -DOPENCL_SDK_BUILD_SAMPLES=OFF \ -DOPENCL_SDK_TEST_SAMPLES=OFF cmake --build build cmake --install build --prefix /some/path
Pre-built CLBlast binaries may be found on the CLBlast Releases page. For Unix variants, it may also be found in your operating system's packages.
Linux packaging: Fedora Linux:
sudo dnf install clblast
Alternatively, they may be built from source.
-
Windows:
set OPENCL_SDK_ROOT="C:/OpenCL-SDK-v2023.04.17-Win-x64" git clone https://github.com/CNugteren/CLBlast.git cd CLBlast cmake -B build -DBUILD_SHARED_LIBS=OFF -DOVERRIDE_MSVC_FLAGS_TO_MT=OFF -DTUNERS=OFF -DOPENCL_ROOT=%OPENCL_SDK_ROOT% -G "Visual Studio 17 2022" -A x64 cmake --build build --config Release cmake --install build --prefix C:/CLBlast
(note:
--config Release
at build time is the default and only relevant for Visual Studio builds - or multi-config Ninja builds) -
Unix:
git clone https://github.com/CNugteren/CLBlast.git cd CLBlast cmake -B build -DBUILD_SHARED_LIBS=OFF -DTUNERS=OFF cmake --build build --config Release cmake --install build --prefix /some/path
Where
/some/path
is where the built library will be installed (default is/usr/local
).
- Build with make:
make LLAMA_CLBLAST=1
- CMake (Unix):
cmake -B build -DLLAMA_CLBLAST=ON -DCLBlast_DIR=/some/path cmake --build build --config Release
- CMake (Windows):
set CL_BLAST_CMAKE_PKG="C:/CLBlast/lib/cmake/CLBlast" git clone https://github.com/ggerganov/llama.cpp cd llama.cpp cmake -B build -DBUILD_SHARED_LIBS=OFF -DLLAMA_CLBLAST=ON -DCMAKE_PREFIX_PATH=%CL_BLAST_CMAKE_PKG% -G "Visual Studio 17 2022" -A x64 cmake --build build --config Release cmake --install build --prefix C:/LlamaCPP
The CLBlast build supports
--gpu-layers|-ngl
like the CUDA version does.To select the correct platform (driver) and device (GPU), you can use the environment variables
GGML_OPENCL_PLATFORM
andGGML_OPENCL_DEVICE
. The selection can be a number (starting from 0) or a text string to search:GGML_OPENCL_PLATFORM=1 ./main ... GGML_OPENCL_DEVICE=2 ./main ... GGML_OPENCL_PLATFORM=Intel ./main ... GGML_OPENCL_PLATFORM=AMD GGML_OPENCL_DEVICE=1 ./main ...
The default behavior is to find the first GPU device, but when it is an integrated GPU on a laptop, for instance, the selectors are useful. Using the variables it is possible to select a CPU-based driver as well, if so desired.
You can get a list of platforms and devices from the
clinfo -l
command, etc. -
If you want a more ChatGPT-like experience, you can run in conversation mode by passing -cnv
as a parameter:
llama-cli -m your_model.gguf -p "You are a helpful assistant" -cnv
# Output:
# > hi, who are you?
# Hi there! I'm your helpful assistant! I'm an AI-powered chatbot designed to assist and provide information to users like you. I'm here to help answer your questions, provide guidance, and offer support on a wide range of topics. I'm a friendly and knowledgeable AI, and I'm always happy to help with anything you need. What's on your mind, and how can I assist you today?
#
# > what is 1+1?
# Easy peasy! The answer to 1+1 is... 2!
By default, the chat template will be taken from the input model. If you want to use another chat template, pass --chat-template NAME
as a parameter. See the list of supported templates
./llama-cli -m your_model.gguf -p "You are a helpful assistant" -cnv --chat-template chatml
You can also use your own template via in-prefix, in-suffix and reverse-prompt parameters:
./llama-cli -m your_model.gguf -p "You are a helpful assistant" -cnv --in-prefix 'User: ' --reverse-prompt 'User:'
llama.cpp web server is a lightweight OpenAI API compatible HTTP server that can be used to serve local models and easily connect them to existing clients.
Example usage:
./llama-server -m your_model.gguf --port 8080
# Basic web UI can be accessed via browser: http://localhost:8080
# Chat completion endpoint: http://localhost:8080/v1/chat/completions
Note
If you prefer basic usage, please consider using conversation mode instead of interactive mode
In this mode, you can always interrupt generation by pressing Ctrl+C and entering one or more lines of text, which will be converted into tokens and appended to the current context. You can also specify a reverse prompt with the parameter -r "reverse prompt string"
. This will result in user input being prompted whenever the exact tokens of the reverse prompt string are encountered in the generation. A typical use is to use a prompt that makes LLaMA emulate a chat between multiple users, say Alice and Bob, and pass -r "Alice:"
.
Here is an example of a few-shot interaction, invoked with the command
# default arguments using a 7B model
./examples/chat.sh
# advanced chat with a 13B model
./examples/chat-13B.sh
# custom arguments using a 13B model
./llama-cli -m ./models/13B/ggml-model-q4_0.gguf -n 256 --repeat_penalty 1.0 --color -i -r "User:" -f prompts/chat-with-bob.txt
Note the use of --color
to distinguish between user input and generated text. Other parameters are explained in more detail in the README for the llama-cli
example program.
The prompt, user inputs, and model generations can be saved and resumed across calls to ./llama-cli
by leveraging --prompt-cache
and --prompt-cache-all
. The ./examples/chat-persistent.sh
script demonstrates this with support for long-running, resumable chat sessions. To use this example, you must provide a file to cache the initial chat prompt and a directory to save the chat session, and may optionally provide the same variables as chat-13B.sh
. The same prompt cache can be reused for new chat sessions. Note that both prompt cache and chat directory are tied to the initial prompt (PROMPT_TEMPLATE
) and the model file.
# Start a new chat
PROMPT_CACHE_FILE=chat.prompt.bin CHAT_SAVE_DIR=./chat/default ./examples/chat-persistent.sh
# Resume that chat
PROMPT_CACHE_FILE=chat.prompt.bin CHAT_SAVE_DIR=./chat/default ./examples/chat-persistent.sh
# Start a different chat with the same prompt/model
PROMPT_CACHE_FILE=chat.prompt.bin CHAT_SAVE_DIR=./chat/another ./examples/chat-persistent.sh
# Different prompt cache for different prompt/model
PROMPT_TEMPLATE=./prompts/chat-with-bob.txt PROMPT_CACHE_FILE=bob.prompt.bin \
CHAT_SAVE_DIR=./chat/bob ./examples/chat-persistent.sh
llama.cpp
supports grammars to constrain model output. For example, you can force the model to output JSON only:
./llama-cli -m ./models/13B/ggml-model-q4_0.gguf -n 256 --grammar-file grammars/json.gbnf -p 'Request: schedule a call at 8pm; Command:'
The grammars/
folder contains a handful of sample grammars. To write your own, check out the GBNF Guide.
For authoring more complex JSON grammars, you can also check out https://grammar.intrinsiclabs.ai/, a browser app that lets you write TypeScript interfaces which it compiles to GBNF grammars that you can save for local use. Note that the app is built and maintained by members of the community, please file any issues or FRs on its repo and not this one.
Please refer to Build llama.cpp locally
Backend | Target devices |
---|---|
Metal | Apple Silicon |
BLAS | All |
BLIS | All |
SYCL | Intel and Nvidia GPU |
CUDA | Nvidia GPU |
hipBLAS | AMD GPU |
Vulkan | GPU |
Note
You can use the GGUF-my-repo space on Hugging Face to quantise your model weights without any setup too. It is synced from llama.cpp
main every 6 hours.
To obtain the official LLaMA 2 weights please see the Obtaining and using the Facebook LLaMA 2 model section. There is also a large selection of pre-quantized gguf
models available on Hugging Face.
Note: convert.py
has been moved to examples/convert_legacy_llama.py
and shouldn't be used for anything other than Llama/Llama2/Mistral
models and their derivatives.
It does not support LLaMA 3, you can use convert_hf_to_gguf.py
with LLaMA 3 downloaded from Hugging Face.
To learn more about quantizing model, read this documentation
You can use the perplexity
example to measure perplexity over a given prompt (lower perplexity is better).
For more information, see https://huggingface.co/docs/transformers/perplexity.
To learn more how to measure perplexity using llama.cpp, read this documentation
- Contributors can open PRs
- Collaborators can push to branches in the
llama.cpp
repo and merge PRs into themaster
branch - Collaborators will be invited based on contributions
- Any help with managing issues and PRs is very appreciated!
- See good first issues for tasks suitable for first contributions
- Read the CONTRIBUTING.md for more information
- Make sure to read this: Inference at the edge
- A bit of backstory for those who are interested: Changelog podcast
Development documentations
Seminal papers and background on the models
If your issue is with model generation quality, then please at least scan the following links and papers to understand the limitations of LLaMA models. This is especially important when choosing an appropriate model size and appreciating both the significant and subtle differences between LLaMA models and ChatGPT:
- LLaMA:
- GPT-3
- GPT-3.5 / InstructGPT / ChatGPT: