Tensor library for machine learning
Note that this project is under active development.
Some of the development is currently happening in the llama.cpp and whisper.cpp repos
- Written in C
- 16-bit float support
- Integer quantization support (4-bit, 5-bit, 8-bit, etc.)
- Automatic differentiation
- ADAM and L-BFGS optimizers
- Optimized for Apple Silicon
- On x86 architectures utilizes AVX / AVX2 intrinsics
- On ppc64 architectures utilizes VSX intrinsics
- No third-party dependencies
- Zero memory allocations during runtime
- Example of GPT-2 inference examples/gpt-2
- Example of GPT-J inference examples/gpt-j
- Example of Whisper inference examples/whisper
- Example of LLaMA inference ggerganov/llama.cpp
- Example of LLaMA training ggerganov/llama.cpp/examples/baby-llama
- Example of Falcon inference cmp-nct/ggllm.cpp
- Example of BLOOM inference NouamaneTazi/bloomz.cpp
- Example of RWKV inference saharNooby/rwkv.cpp
- Example of SAM inference examples/sam
- Example of BERT inference skeskinen/bert.cpp
- Example of BioGPT inference PABannier/biogpt.cpp
- Example of Encodec inference PABannier/encodec.cpp
- Example of CLIP inference monatis/clip.cpp
- Example of MiniGPT4 inference Maknee/minigpt4.cpp
- Example of ChatGLM inference li-plus/chatglm.cpp
- Example of Stable Diffusion inference leejet/stable-diffusion.cpp
- Example of Qwen inference QwenLM/qwen.cpp
- Example of YOLO inference examples/yolo
- Example of ViT inference staghado/vit.cpp
- Example of multiple LLMs inference foldl/chatllm.cpp
- SeamlessM4T inference (in development) https://github.com/facebookresearch/seamless_communication/tree/main/ggml
With ggml you can efficiently run Whisper inference on the CPU.
Memory requirements:
Model | Disk | Mem |
---|---|---|
tiny | 75 MB | ~280 MB |
base | 142 MB | ~430 MB |
small | 466 MB | ~1.0 GB |
medium | 1.5 GB | ~2.6 GB |
large | 2.9 GB | ~4.7 GB |
With ggml you can efficiently run GPT-2 and GPT-J inference on the CPU.
Here is how to run the example programs:
# Build ggml + examples
git clone https://github.com/ggerganov/ggml
cd ggml
mkdir build && cd build
cmake ..
make -j4 gpt-2-backend gpt-j
# Run the GPT-2 small 117M model
../examples/gpt-2/download-ggml-model.sh 117M
./bin/gpt-2-backend -m models/gpt-2-117M/ggml-model.bin -p "This is an example"
# Run the GPT-J 6B model (requires 12GB disk space and 16GB CPU RAM)
../examples/gpt-j/download-ggml-model.sh 6B
./bin/gpt-j -m models/gpt-j-6B/ggml-model.bin -p "This is an example"
# Install Python dependencies
python3 -m pip install -r ../requirements.txt
# Run the Cerebras-GPT 111M model
# Download from: https://huggingface.co/cerebras
python3 ../examples/gpt-2/convert-cerebras-to-ggml.py /path/to/Cerebras-GPT-111M/
./bin/gpt-2 -m /path/to/Cerebras-GPT-111M/ggml-model-f16.bin -p "This is an example"
The inference speeds that I get for the different models on my 32GB MacBook M1 Pro are as follows:
Model | Size | Time / Token |
---|---|---|
GPT-2 | 117M | 5 ms |
GPT-2 | 345M | 12 ms |
GPT-2 | 774M | 23 ms |
GPT-2 | 1558M | 42 ms |
--- | --- | --- |
GPT-J | 6B | 125 ms |
For more information, checkout the corresponding programs in the examples folder.
For GPT-2 models, offloading to GPU is possible. Note that it will not improve inference performances but will reduce power consumption and free up the CPU for other tasks.
To enable GPU offloading on MacOS:
cmake -DGGML_METAL=ON -DBUILD_SHARED_LIBS=Off ..
# add -ngl 1
./bin/gpt-2 -t 4 -ngl 100 -m models/gpt-2-117M/ggml-model.bin -p "This is an example"
# fix the path to point to your CUDA compiler
cmake -DGGML_CUBLAS=ON -DCMAKE_CUDA_COMPILER=/usr/local/cuda-12.1/bin/nvcc ..
cmake -DGGML_CLBLAST=ON ..
Download and unzip the NDK from this download page. Set the NDK_ROOT_PATH environment variable or provide the absolute path to the CMAKE_ANDROID_NDK in the command below.
cmake .. \
-DCMAKE_SYSTEM_NAME=Android \
-DCMAKE_SYSTEM_VERSION=33 \
-DCMAKE_ANDROID_ARCH_ABI=arm64-v8a \
-DCMAKE_ANDROID_NDK=$NDK_ROOT_PATH
-DCMAKE_ANDROID_STL_TYPE=c++_shared
# Create directories
adb shell 'mkdir /data/local/tmp/bin'
adb shell 'mkdir /data/local/tmp/models'
# Push the compiled binaries to the folder
adb push bin/* /data/local/tmp/bin/
# Push the ggml library
adb push src/libggml.so /data/local/tmp/
# Push model files
adb push models/gpt-2-117M/ggml-model.bin /data/local/tmp/models/
# Now lets do some inference ...
adb shell
# Now we are in shell
cd /data/local/tmp
export LD_LIBRARY_PATH=/data/local/tmp
./bin/gpt-2-backend -m models/ggml-model.bin -p "this is an example"
Build CLBlast.
# In CLBlast/build
$ANDROID_SDK_PATH/cmake/3.22.1/bin/cmake .. \
-DCMAKE_SYSTEM_NAME=Android \
-DCMAKE_SYSTEM_VERSION=33 \
-DCMAKE_ANDROID_ARCH_ABI=arm64-v8a \
-DCMAKE_ANDROID_NDK=$ANDROID_NDK_PATH \
-DCMAKE_ANDROID_STL_TYPE=c++_static \
-DOPENCL_ROOT=$(readlink -f ../../OpenCL-Headers) \
-DCMAKE_FIND_ROOT_PATH_MODE_LIBRARY=BOTH \
-DCMAKE_FIND_ROOT_PATH_MODE_INCLUDE=BOTH
# Build libclblast.so
make -j4
Pull libGLES_mali.so
to libOpenCL.so
.
# In ggml project root.
mkdir arm64-v8a
adb pull /system/vendor/lib64/egl/libGLES_mali.so arm64-v8a/libOpenCL.so
Build ggml with CLBlast.
# In ggml/build
cd build
$ANDROID_SDK_PATH/cmake/3.22.1/bin/cmake .. \
-DGGML_CLBLAST=ON \
-DCMAKE_SYSTEM_NAME=Android \
-DCMAKE_SYSTEM_VERSION=33 \
-DCMAKE_ANDROID_ARCH_ABI=arm64-v8a \
-DCMAKE_ANDROID_NDK=$ANDROID_NDK_PATH \
-DCMAKE_ANDROID_STL_TYPE=c++_shared \
-DCMAKE_FIND_ROOT_PATH_MODE_INCLUDE=BOTH \
-DCMAKE_FIND_ROOT_PATH_MODE_LIBRARY=BOTH \
-DCLBLAST_HOME=$(readlink -f ../../CLBlast) \
-DOPENCL_LIB=$(readlink -f ../arm64-v8a/libOpenCL.so)
# Run make, adb push, etc.
Then in adb shell
...
cd /data/local/tmp
export LD_LIBRARY_PATH=/system/vendor/lib64/egl:/data/local/tmp
./bin/gpt-2-backend -m models/ggml-model.bin -n 64 -p "Pepperoni pizza"
OpenCL does not have the same level of support in ggml-backend
as CUDA or Metal. In the gpt-2-backend
example, OpenCL will only be used for the matrix multiplications when evaluating large prompts.
- GGML - Large Language Models for Everyone: a description of the GGML format provided by the maintainers of the
llm
Rust crate, which provides Rust bindings for GGML - marella/ctransformers: Python bindings for GGML models.
- go-skynet/go-ggml-transformers.cpp: Golang bindings for GGML models
- smspillaz/ggml-gobject: GObject-introspectable wrapper for use of GGML on the GNOME platform.