* ggml-et: Add performance logging * ggml-et: Quants helpers * ggml-et: Add MUL_MAT kernel * ggml-et: Add ROPE kernel * ggml-et: Add RMS_NORM kernel * ggml-et: Add GLU kernel * ggml-et: Add SOFT_MAX kernel * ggml-et: Add GET_ROWS kernel * ggml-et: Add CONT kernel * ggml-et: Add SET_ROWS kernel * ggml-et: Add MUL_MAT_ID kernel * ggml-et: Build et kernels as part of ggml * ggml-et: Embed kernels with fs fallback * ggml-et: Build fixes * ggml-et: Add MUL_MAT F32xF32 op * ggml_et: Add MUL_MAT_ID op * ggml-et: Disable offloading for debug * ggml-et: Refactor out block ops * ggml-et: ggml backend API changes * ggml-et: Add RESHAPE/TRANSPOSE to supported * ggml-et: Add CONT_F16 * ggml-et: Add supported ops doc * gglm-et: Initial doc * ggml-et: Remove runtime import hacks We can now import the runtime by a simple find_package(), so we can cleanup the CMakeLists.txt. * ggml-et: Fix GET_ROWS kernel Fix lost batch dimension. Also clean vibe-comments. * ggml-et: Fix SET_ROWS kernel Remove incorrect broadcasting guard. * ggml-et: Use custom instruction for fp32->fp16 * ggml-et: Vectorize set_rows fp32->fp16 * ggml-et: Fix ROPE kernel (yarn) ggml-et: fix et_logf WIP: Fix ramp WIP: fix ROPE! * ggml-et: Better sinf * ggml-et: Fix SOFT_MAX Add `max_bias` and `sink` support. * ggml-et: Fix CONT Reorder from contiguous write to read with atomic stores. * ggml-et: Fix elmap kernel Remainder handlin * ggml-et: Fix MUL_MAT MUL_MAT_ID remainders * ggml-et: Fix ET-SOC reference * ggml-et: Fix embed kernels scripts for old python This allows GGML-ET to build on pre-3.8 python. * Add sysemu support with compile time flag `-DGGML_ET_SYSEMU=ON` (#6) * Example using ET-Soc-1 emulator configuration Example usage: ```bash cmake -B build -DGGML_CUDA=OFF -DGGML_ET=ON -DLLAMA_CURL=OFF -DGGML_CCACHE=ON cmake --build build --config Release -j $(nproc) time ./build/bin/test-backend-ops ./build/bin/llama-server \ --model Qwen3-0.6B-Q8_0.gguf \ --alias Qwen3-0.6B-Q8_0 \ -fa 0 \ --ctx-size 1024 \ --no-warmup \ --host 127.0.0.1 \ --port 8080 ``` * build: proper dep tracking for kernels * support host using MOLD linker * initial multi core GET_ROW F32 implementation * vectorized q8 dequant * wip: cland warning clenaups and initial logging refactor * wip: message default message cleanup * chore: message cleanups * cmake cleanup * migrate to use platform provided functions * cmake back into subdir * support et_print() in kernels * fix: repair kernel building * perf: operations run async by default * debug: proper kernel dep tracking and error detection on kenrel launch * fix: kernel binary dep tracking and fixing get_rows_f32 erroring * perf: back to doing async kernel runs by default * perf: vectorize and parallel device memset * merge matmul work * misc: align allocation and enable all offload * misc: delete deadcode and respect memory limits * fix: repair tensor debug print * fix: loosen RMS_NORM op percision * feat: Q4_0 GET_ROWS * perf: FP32 MUL_MAT using TensorFMA * update limitations * perf: redue L1 load in compute_block_dot_product_q8_0 * feat: save kernel mapping (name to id) when profiling is enabled * chore: memops cleanup * perf: parallelize softmax by rows * perf: vectorize 2nd phase of softmax * perf: ban GET_ROWS from offloaded * perf: vectorize and non-atomic for eltwise ops and sub support * perf: vectorize normal rope * perf: glu runs in parallel * merge: manually merge saqib's work on kernel fixes * perf: more vectorized RoPE * perf: parallelize mul_mat_id * perf: parallelize set_rows_f32 * perf: vectorize softmax * feat: support kernel fusion and fuse RMS_NORM + MUL * fix: mostly resolve test-backend-ops failure in SOFT_MAX and ROPE * fix: bump max rope dims for gemma * feat: GeGLU and SCALE support to fully offload Gemma * perf: faster device memset * feat: get_rows supporting Q4_K and avoid cont cache coherent issues * better F32 MM * feat: NORM for ET backend * feat: SQR for ET backend * feat: UNARY on ET * feat: el_map support broadcasting for ET * feat: SUM_ROWS in ET backend * feat: more ops in ET backend * feat: WKV* operators in ET backend * perf: parallelize operators across cacheline instead of row * perf: parallelize get_rows on cacheline * wip: baseline FlashAttention for ET backend * wip: enough FA and CPY f32->f16 to run llama 3.1 fully offloaded with FA on * feat: f16 x f16 -> f32 MM using matrix engine * wip: f16 FlashAttention using matrix engine * wip: clean up * feat: barriers * perf: optimize FA_F16 in ET * perf: vectorize pack_k_for_transpose16 * perf: prefetch next loop matrix tile * perf: FlashAttention 2nd MM uses TensorFMA and optimizations * cleanup: flashattention reorg * perf: optimizations and fixes * feat: L2SCP API and make FlashAttention support DV = 256 for gemma * perf: parallelize norms beyond single row * feat: GATED_DELTA_NET support and relaxed L2_NORM requirment * feat: loosen RMS_NORM, NORM, ROPE contingous req too * feat: repeat supports brocasting on dim 0 and loosen cont check * feat: FILL and DIAG operator * feat: loosen UNARY support chcek * feat: TRI support * feat: SOLVE_TRI support * feat: basic SET support * feat: loosen CONT req * perf: fp16_to_fp32 use ASM * feat: IMROPE support * feat: PAD support * feat: global barrier * fix: view must live on the same backend as backing tensor * feat: relax CONCAT in ET backend * feat: dead simple CUMSUM implementation * feat: basic SSM_CONV support * feat: loosen CONCAT req * feat: relax GATED_DELTA_NET and add SET support proper * cleanup: cleanup LCM math * feat: SWIGLU single input * feat: SSM_SCAN support * feat: el_map supports non aligned tensors in best effort * feat: basic GROUP_NORM support * feat: loosen MUL_MAT capablities slightly * feat: loosen MUL_MAT and GET_ROWS and add IM2COL * feat: special case for softmax 1x1x1x1 * feat: loosen SOFT_MAX req in ET backend * fix: el_map unaligned acse fixes * perf: optimize zero_acc_vec in flash_attn_ext_f16_me * perf: use hart 1 for packing in MM and FA for FP16 * feat: kernel semaphore * perf: better instruction sequence in FlashAttention * fix: gated_delta_net with proper masking * perf: better parallelization for GATED_DELTA_NET * perf: parallelize SSM_CONV over nr * perf: vectorize SSM_CONV * perf: optimize MUL_MAT for q8 * feat: support Gemma 4 * fix: support multi-device * feat: broader GLU support * feat: unary ops supports view * fix: repair fp16 MM using matrix engine * perf: handle large N GEMV better * perf: better q8_0 MM * perf: better set_rows * add back deleted files * fix: repair after merge * feat: POC version of uberkernel * feat: RMS_NORM in uberkernel * feat: add more kernels into usage * chore: clean up uberkernel compilation * perf: faster flash attention * perf: opt flash attention for large seq length * feat: loosen op bounds. clamp and mean support * perf: vectorize ssm_scan * perf: slightly faster FA * perf: FlashAttention parallel MM and load * perf: fuse Q8 MM and ADD * feat: basic conv kernel for ET * softMAx_test * set_rows_f32 * get_rows and cont * testing * set_rows_exp * Junk addition * Narrowing the issue * Update flash_attn_ext_f16_me.c Focusing FA_ext_f16_me * test * Eviction updated * Detailed cache eviction debug * mulmat * removeal of `BUILD_FOR_UBERKERNEL` flag * cleaning... * fix: balance FCC0 count * feat: implement mul_mat and mul_mat_id for Q4_0 type * optimize uberkernel plan upload * add mul_mat q4 into uberkernel * enable gating flush to just uberkernel * update docs for ET * update op support for ET * et-backend: optimize Q4_0 and Q8_0 mul_mat_id row accumulations * et-backend: specialize mul_mat_id kernels for Q4_0 and Q8_0 * et-backend: fix RoPE YaRN corr_dim formula and handle degenerate inputs * test-backend-ops: add DeepSeek-V2-Lite RoPE test coverage * et-backend: add Q4_0 mul_mat matrix-engine kernel using TensorFMA32 * et-backend: vectorize Q4_0 matrix-engine dequantization * et-backend: support hybrid matrix/vector engine execution for Q4_0 mul_mat tail * et-backend: run partial-N tiles on matrix engine for Q4_0 mul_mat * et-backend: route Q4_0 mul_mat N < 53 to vecdot for better prefill latency * Update uberkernel.c * Update unary_f32.c * gemma 4 * bisect gemma4: enable scale_f32 only * bisect gemma4: +rms_norm_f32 * bisect gemma4: +rms_norm_mul_f32 * bisect gemma4: disable rms_norm_mul_f32 -- BREAKS OUTPUT * bisect gemma4: +rope_f32 (skip rms_norm_mul) * bisect gemma4: +el_map_f32 * bisect gemma4: +softmax_f32 * bisect gemma4: +get_rows_f32 * bisect gemma4: +glu_f32 * bisect gemma4: +mul_mat_f32 +mul_mat_f32_matrix_engine * bisect gemma4: +mul_mat_f16 +mul_mat_f16_matrix_engine * bisect gemma4: +mul_mat_Q8_0 +mul_mat_Q4_0 * bisect gemma4: +flash_attn_ext_f32 +flash_attn_ext_f16_me * bisect gemma4: +mul_mat_id_f32 * bisect gemma4: +sum_rows_f32 * bisect gemma4: +cont_f16 * bisect gemma4: +fill_f32 * bisect gemma4: +unary_f32 (all ops re-enabled except rms_norm_mul) * Update rms_norm_mul_f32.c * bisect2 gemma4 n64: +scale_f32 only * bisect2 gemma4 n64: +rms_norm_f32 +rope_f32 * bisect2 gemma4 n64: +rms_norm_mul_f32 (with ET_UBERKERNEL eviction fix) * bisect2 gemma4 n64: +el_map +get_rows +glu +softmax (skip rms_norm_mul) * bisect2 gemma4 n64: all ops enabled except rms_norm_mul * bisect2 n64: test unary+cont+fill+sum_rows (no mul_mat/flash_attn) * bisect2 n64: +mul_mat_f32 +mul_mat_f32_matrix_engine * bisect2 n64: +mul_mat_f16 +mul_mat_f16_matrix_engine * bisect2 n64: +mul_mat_Q8_0 +mul_mat_Q4_0 * bisect2 n64: +mul_mat_Q8_0 only (disable Q4_0) * bisect2 n64: +mul_mat_Q4_0 only (Q8_0 breaks) * bisect2 n64: +mul_mat_id +flash_attn_ext (skip Q8_0) * run-3: matmul + rms_norm_mul * run-4 * Revert "run-4" * run5 * changes after cleanup * cleanup before upstream * restrict changes into ET backend * move kernel embedding from Python to CMake * move uberkernel gen into CMake * apply clang format * update CMake style * update to match C and C++ style * use source ggml and quant headers instead of ET's * MROPE support * absorb view ops into same branch as none * fix bad rebase * add marty1885 to codeowners * oops * remove redundant newline * fix CI editor warnings --------- Co-authored-by: Vidas <vidas@nuolat.lt> Co-authored-by: Gianluca Guida <glguida@tlbflush.org> Co-authored-by: Gianluca Guida <gianluca@nekko.ai> Co-authored-by: ubergarm <leimgrub@gmail.com> Co-authored-by: SaqibAkram-10xE <saqib.akram@10xengineers.ai> Co-authored-by: Rehan Qasim <rehan.qasim@10xengineers.ai>
tool-call: fix Qwen 2.5 Coder support, add micro benchmarks, support trigger patterns for lazy grammars (#12034)
llama.cpp
LLM inference in C/C++
Recent API changes
Hot topics
- Hugging Face cache migration: models downloaded with
-hfare now stored in the standard Hugging Face cache directory, enabling sharing with other HF tools. - guide : using the new WebUI of llama.cpp
- guide : running gpt-oss with llama.cpp
- [FEEDBACK] Better packaging for llama.cpp to support downstream consumers 🤗
- Support for the
gpt-ossmodel with native MXFP4 format has been added | PR | Collaboration with NVIDIA | Comment - Multimodal support arrived in
llama-server: #12898 | documentation - VS Code extension for FIM completions: https://github.com/ggml-org/llama.vscode
- Vim/Neovim plugin for FIM completions: https://github.com/ggml-org/llama.vim
- Hugging Face Inference Endpoints now support GGUF out of the box! https://github.com/ggml-org/llama.cpp/discussions/9669
- Hugging Face GGUF editor: discussion | tool
- WebGPU support is now available in the browser, see a blog/demo introducing it here.
Quick start
Getting started with llama.cpp is straightforward. Here are several ways to install it on your machine:
- Install
llama.cppusing brew, nix, winget, or conda-forge - Run with Docker - see our Docker documentation
- Download pre-built binaries from the releases page
- Build from source by cloning this repository - check out our build guide
Once installed, you'll need a model to work with. Head to the Obtaining and quantizing models section to learn more.
Example command:
# Use a local model file
llama-cli -m my_model.gguf
# Or download and run a model directly from Hugging Face
llama-cli -hf ggml-org/gemma-3-1b-it-GGUF
# Launch OpenAI-compatible API server
llama-server -hf ggml-org/gemma-3-1b-it-GGUF
Description
The main goal of llama.cpp is to enable LLM inference with minimal setup and state-of-the-art performance on a wide
range 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, AVX512 and AMX support for x86 architectures
- RVV, ZVFH, ZFH, ZICBOP and ZIHINTPAUSE support for RISC-V 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 and Moore Threads GPUs via MUSA)
- Vulkan and SYCL backend support
- CPU+GPU hybrid inference to partially accelerate models larger than the total VRAM capacity
The llama.cpp project is the main playground for developing new features for the ggml library.
Models
Typically finetunes of the base models below are supported as well.
Instructions for adding support for new models: HOWTO-add-model.md
Text-only
- LLaMA 🦙
- LLaMA 2 🦙🦙
- LLaMA 3 🦙🦙🦙
- Mistral 7B
- Mixtral MoE
- DBRX
- Jamba
- 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
- PhiMoE
- GPT-2
- Orion 14B
- InternLM2
- CodeShell
- Gemma
- Mamba
- Grok-1
- Xverse
- Command-R models
- SEA-LION
- GritLM-7B + GritLM-8x7B
- OLMo
- OLMo 2
- OLMoE
- Granite models
- GPT-NeoX + Pythia
- Snowflake-Arctic MoE
- Smaug
- Poro 34B
- Bitnet b1.58 models
- Flan T5
- Open Elm models
- ChatGLM3-6b + ChatGLM4-9b + GLMEdge-1.5b + GLMEdge-4b
- GLM-4-0414
- SmolLM
- EXAONE-3.0-7.8B-Instruct
- FalconMamba Models
- Jais
- Bielik-11B-v2.3
- RWKV-7
- RWKV-6
- QRWKV-6
- GigaChat-20B-A3B
- Trillion-7B-preview
- Ling models
- Liquid LFM2 models
- Liquid LFM2.5 models
- Liquid Nanos
- Hunyuan models
- BailingMoeV2 (Ring/Ling 2.0) models
- Mellum models
Multimodal
Bindings
- Python: ddh0/easy-llama
- 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
- JS/TS (Programmable Prompt Engine CLI): offline-ai/cli
- JavaScript/Wasm (works in browser): tangledgroup/llama-cpp-wasm
- Typescript/Wasm (nicer API, available on npm): ngxson/wllama
- Ruby: yoshoku/llama_cpp.rb
- Ruby: docusealco/rllama
- Rust (more features): edgenai/llama_cpp-rs
- Rust (nicer API): mdrokz/rust-llama.cpp
- Rust (more direct bindings): utilityai/llama-cpp-rs
- Rust (automated build from crates.io): ShelbyJenkins/llm_client
- C#/.NET: SciSharp/LLamaSharp
- C#/VB.NET (more features - community license): LM-Kit.NET
- Scala 3: donderom/llm4s
- Clojure: phronmophobic/llama.clj
- React Native: mybigday/llama.rn
- Java: kherud/java-llama.cpp
- Java: QuasarByte/llama-cpp-jna
- Zig: deins/llama.cpp.zig
- Flutter/Dart: netdur/llama_cpp_dart
- Flutter: xuegao-tzx/Fllama
- PHP (API bindings and features built on top of llama.cpp): distantmagic/resonance (more info)
- Guile Scheme: guile_llama_cpp
- Swift srgtuszy/llama-cpp-swift
- Swift ShenghaiWang/SwiftLlama
- Delphi Embarcadero/llama-cpp-delphi
- Go (no CGo needed): hybridgroup/yzma
- Android: llama.android
UIs
(to have a project listed here, it should clearly state that it depends on llama.cpp)
- AI Sublime Text plugin (MIT)
- BonzAI App (proprietary)
- cztomsik/ava (MIT)
- Dot (GPL)
- eva (MIT)
- iohub/collama (Apache-2.0)
- janhq/jan (AGPL)
- johnbean393/Sidekick (MIT)
- KanTV (Apache-2.0)
- KodiBot (GPL)
- llama.vim (MIT)
- LARS (AGPL)
- Llama Assistant (GPL)
- LlamaLib (Apache-2.0)
- LLMFarm (MIT)
- LLMUnity (MIT)
- LMStudio (proprietary)
- LocalAI (MIT)
- LostRuins/koboldcpp (AGPL)
- MindMac (proprietary)
- MindWorkAI/AI-Studio (FSL-1.1-MIT)
- Mobile-Artificial-Intelligence/maid (MIT)
- Mozilla-Ocho/llamafile (Apache-2.0)
- nat/openplayground (MIT)
- nomic-ai/gpt4all (MIT)
- ollama/ollama (MIT)
- oobabooga/text-generation-webui (AGPL)
- PocketPal AI (MIT)
- psugihara/FreeChat (MIT)
- ptsochantaris/emeltal (MIT)
- pythops/tenere (AGPL)
- ramalama (MIT)
- semperai/amica (MIT)
- withcatai/catai (MIT)
- Autopen (GPL)
Tools
- akx/ggify – download PyTorch models from Hugging Face Hub and convert them to GGML
- akx/ollama-dl – download models from the Ollama library to be used directly with llama.cpp
- crashr/gppm – launch llama.cpp instances utilizing NVIDIA Tesla P40 or P100 GPUs with reduced idle power consumption
- gpustack/gguf-parser - review/check the GGUF file and estimate the memory usage
- Styled Lines (proprietary licensed, async wrapper of inference part for game development in Unity3d with pre-built Mobile and Web platform wrappers and a model example)
- unslothai/unsloth – 🦥 exports/saves fine-tuned and trained models to GGUF (Apache-2.0)
Infrastructure
- Paddler - Open-source LLMOps platform for hosting and scaling AI in your own infrastructure
- GPUStack - Manage GPU clusters for running LLMs
- llama_cpp_canister - llama.cpp as a smart contract on the Internet Computer, using WebAssembly
- llama-swap - transparent proxy that adds automatic model switching with llama-server
- Kalavai - Crowdsource end to end LLM deployment at any scale
- llmaz - ☸️ Easy, advanced inference platform for large language models on Kubernetes.
- LLMKube - Kubernetes operator for llama.cpp with multi-GPU and Apple Silicon Metal support"
Games
- Lucy's Labyrinth - A simple maze game where agents controlled by an AI model will try to trick you.
Supported backends
| Backend | Target devices |
|---|---|
| Metal | Apple Silicon |
| BLAS | All |
| BLIS | All |
| SYCL | Intel GPU |
| OpenVINO [In Progress] | Intel CPUs, GPUs, and NPUs |
| MUSA | Moore Threads GPU |
| CUDA | Nvidia GPU |
| HIP | AMD GPU |
| ZenDNN | AMD CPU |
| Vulkan | GPU |
| CANN | Ascend NPU |
| OpenCL | Adreno GPU |
| IBM zDNN | IBM Z & LinuxONE |
| WebGPU | All |
| RPC | All |
| Hexagon [In Progress] | Snapdragon |
| VirtGPU | VirtGPU APIR |
Obtaining and quantizing models
The Hugging Face platform hosts a number of LLMs compatible with llama.cpp:
You can either manually download the GGUF file or directly use any llama.cpp-compatible models from Hugging Face or other model hosting sites, by using this CLI argument: -hf <user>/<model>[:quant]. For example:
llama-cli -hf ggml-org/gemma-3-1b-it-GGUF
By default, the CLI would download from Hugging Face, you can switch to other options with the environment variable MODEL_ENDPOINT. The MODEL_ENDPOINT must point to a Hugging Face compatible API endpoint.
After downloading a model, use the CLI tools to run it locally - see below.
llama.cpp requires the model to be stored in the GGUF file format. Models in other data formats can be converted to GGUF using the convert_*.py Python scripts in this repo.
The Hugging Face platform provides a variety of online tools for converting, quantizing and hosting models with llama.cpp:
- Use the GGUF-my-repo space to convert to GGUF format and quantize model weights to smaller sizes
- Use the GGUF-my-LoRA space to convert LoRA adapters to GGUF format (more info: https://github.com/ggml-org/llama.cpp/discussions/10123)
- Use the GGUF-editor space to edit GGUF meta data in the browser (more info: https://github.com/ggml-org/llama.cpp/discussions/9268)
- Use the Inference Endpoints to directly host
llama.cppin the cloud (more info: https://github.com/ggml-org/llama.cpp/discussions/9669)
To learn more about model quantization, read this documentation
llama-cli
A CLI tool for accessing and experimenting with most of llama.cpp's functionality.
-
Run in conversation mode
Models with a built-in chat template will automatically activate conversation mode. If this doesn't occur, you can manually enable it by adding
-cnvand specifying a suitable chat template with--chat-template NAMEllama-cli -m model.gguf # > 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! -
Run in conversation mode with custom chat template
# use the "chatml" template (use -h to see the list of supported templates) llama-cli -m model.gguf -cnv --chat-template chatml # use a custom template llama-cli -m model.gguf -cnv --in-prefix 'User: ' --reverse-prompt 'User:' -
Constrain the output with a custom grammar
llama-cli -m model.gguf -n 256 --grammar-file grammars/json.gbnf -p 'Request: schedule a call at 8pm; Command:' # {"appointmentTime": "8pm", "appointmentDetails": "schedule a a call"}The grammars/ folder contains a handful of sample grammars. To write your own, check out the GBNF Guide.
For authoring more complex JSON grammars, check out https://grammar.intrinsiclabs.ai/
llama-server
A lightweight, OpenAI API compatible, HTTP server for serving LLMs.
-
Start a local HTTP server with default configuration on port 8080
llama-server -m model.gguf --port 8080 # Basic web UI can be accessed via browser: http://localhost:8080 # Chat completion endpoint: http://localhost:8080/v1/chat/completions -
Support multiple-users and parallel decoding
# up to 4 concurrent requests, each with 4096 max context llama-server -m model.gguf -c 16384 -np 4 -
Enable speculative decoding
# the draft.gguf model should be a small variant of the target model.gguf llama-server -m model.gguf -md draft.gguf -
Serve an embedding model
# use the /embedding endpoint llama-server -m model.gguf --embedding --pooling cls -ub 8192 -
Serve a reranking model
# use the /reranking endpoint llama-server -m model.gguf --reranking -
Constrain all outputs with a grammar
# custom grammar llama-server -m model.gguf --grammar-file grammar.gbnf # JSON llama-server -m model.gguf --grammar-file grammars/json.gbnf
llama-perplexity
A tool for measuring the perplexity 1 (and other quality metrics) of a model over a given text.
-
Measure the perplexity over a text file
llama-perplexity -m model.gguf -f file.txt # [1]15.2701,[2]5.4007,[3]5.3073,[4]6.2965,[5]5.8940,[6]5.6096,[7]5.7942,[8]4.9297, ... # Final estimate: PPL = 5.4007 +/- 0.67339 -
Measure KL divergence
# TODO
llama-bench
Benchmark the performance of the inference for various parameters.
-
Run default benchmark
llama-bench -m model.gguf # Output: # | model | size | params | backend | threads | test | t/s | # | ------------------- | ---------: | ---------: | ---------- | ------: | ------------: | -------------------: | # | qwen2 1.5B Q4_0 | 885.97 MiB | 1.54 B | Metal,BLAS | 16 | pp512 | 5765.41 ± 20.55 | # | qwen2 1.5B Q4_0 | 885.97 MiB | 1.54 B | Metal,BLAS | 16 | tg128 | 197.71 ± 0.81 | # # build: 3e0ba0e60 (4229)
llama-simple
A minimal example for implementing apps with llama.cpp. Useful for developers.
-
Basic text completion
llama-simple -m model.gguf # Hello my name is Kaitlyn and I am a 16 year old girl. I am a junior in high school and I am currently taking a class called "The Art of
Contributing
- Contributors can open PRs
- Collaborators will be invited based on contributions
- Maintainers can push to branches in the
llama.cpprepo and merge PRs into themasterbranch - Any help with managing issues, PRs and projects 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
Other documentation
Development documentation
- How to build
- Running on Docker
- Build on Android
- Multi-GPU usage
- Performance troubleshooting
- GGML tips & tricks
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:
XCFramework
The XCFramework is a precompiled version of the library for iOS, visionOS, tvOS, and macOS. It can be used in Swift projects without the need to compile the library from source. For example:
// swift-tools-version: 5.10
// The swift-tools-version declares the minimum version of Swift required to build this package.
import PackageDescription
let package = Package(
name: "MyLlamaPackage",
targets: [
.executableTarget(
name: "MyLlamaPackage",
dependencies: [
"LlamaFramework"
]),
.binaryTarget(
name: "LlamaFramework",
url: "https://github.com/ggml-org/llama.cpp/releases/download/b5046/llama-b5046-xcframework.zip",
checksum: "c19be78b5f00d8d29a25da41042cb7afa094cbf6280a225abe614b03b20029ab"
)
]
)
The above example is using an intermediate build b5046 of the library. This can be modified
to use a different version by changing the URL and checksum.
Completions
Command-line completion is available for some environments.
Bash Completion
$ build/bin/llama-cli --completion-bash > ~/.llama-completion.bash
$ source ~/.llama-completion.bash
Optionally this can be added to your .bashrc or .bash_profile to load it
automatically. For example:
$ echo "source ~/.llama-completion.bash" >> ~/.bashrc
Dependencies
- yhirose/cpp-httplib - Single-header HTTP server, used by
llama-server- MIT license - stb-image - Single-header image format decoder, used by multimodal subsystem - Public domain
- nlohmann/json - Single-header JSON library, used by various tools/examples - MIT License
- miniaudio.h - Single-header audio format decoder, used by multimodal subsystem - Public domain
- subprocess.h - Single-header process launching solution for C and C++ - Public domain