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2023-06-09 01:47:36 +09:00
.github Merge branch 'master' into concedo_experimental 2023-06-06 23:12:01 +08:00
docs Merge branch 'master' into concedo_experimental 2023-06-06 23:12:01 +08:00
examples Merge branch 'master' into concedo_experimental 2023-06-07 15:23:29 +08:00
include upgraded clblast 2023-05-25 10:18:12 +08:00
lib upgraded clblast 2023-05-25 10:18:12 +08:00
media cleaning up some old junk 2023-06-04 11:05:46 +08:00
otherarch cleanup indentation, fixing cublas build 2023-06-08 22:40:53 +08:00
.editorconfig do not force the prompt file to end with a new line (#908) 2023-04-13 11:33:16 +02:00
.gitignore Metal inference enhancement - put hard-wired relative path of ggml-model.model file using a patch file due to lack of NSBundle environment 2023-06-09 01:47:36 +09:00
build-info.h fixed some build errors on linux, changed icon resolution, added more error printing 2023-05-22 12:18:42 +08:00
clblast.dll upgraded clblast 2023-05-25 10:18:12 +08:00
CMakeLists.txt cleanup indentation, fixing cublas build 2023-06-08 22:40:53 +08:00
convert-lora-to-ggml.py py : cast lora_alpha to int in convert-lora-to-ggml (#1170) 2023-04-25 23:33:08 +02:00
convert-pth-to-ggml.py Docker: change to calling convert.py (#1641) 2023-06-03 15:11:53 +03:00
convert.py convert.py: Support models which are stored in a single pytorch_model.bin (#1469) 2023-05-17 00:04:35 +02:00
export_state_dict_checkpoint.py added HF converter base 2023-03-31 19:10:21 +08:00
expose.cpp cleanup indentation, fixing cublas build 2023-06-08 22:40:53 +08:00
expose.h added top_a sampler 2023-05-27 17:32:37 +08:00
ggml-cuda.cu k-quants : allow to optionally disable at compile time (#1734) 2023-06-07 10:59:52 +03:00
ggml-cuda.h Multi GPU support, CUDA refactor, CUDA scratch buffer (#1703) 2023-06-06 21:33:23 +02:00
ggml-metal.h llama : Metal inference (#1642) 2023-06-04 23:34:30 +03:00
ggml-metal.m metal : add f16 support 2023-06-06 20:21:56 +03:00
ggml-metal.m.diff Metal inference enhancement - put hard-wired relative path of ggml-model.model file due to lack of NSBundle environment 2023-06-09 01:24:22 +09:00
ggml-metal.metal metal : add f16 support 2023-06-06 20:21:56 +03:00
ggml-opencl.cpp Merge branch 'master' into concedo_experimental 2023-06-07 15:23:29 +08:00
ggml-opencl.h Merge remote-tracking branch 'occam/opencl-dev' into concedo_experimental 2023-06-02 12:19:59 +08:00
ggml.c Merge branch 'master' into concedo_experimental 2023-06-07 17:06:56 +08:00
ggml.h Multi GPU support, CUDA refactor, CUDA scratch buffer (#1703) 2023-06-06 21:33:23 +02:00
gpttype_adapter.cpp cleanup indentation, fixing cublas build 2023-06-08 22:40:53 +08:00
k_quants.c k-quants : allow to optionally disable at compile time (#1734) 2023-06-07 10:59:52 +03:00
k_quants.h k-quants : allow to optionally disable at compile time (#1734) 2023-06-07 10:59:52 +03:00
klite.embd updated lite 2023-06-08 00:20:32 +08:00
koboldcpp.py cleanup indentation, fixing cublas build 2023-06-08 22:40:53 +08:00
libopenblas.dll integrated libopenblas for greatly accelerated prompt processing. Windows binaries are included - feel free to build your own or to build for other platforms, but that is beyond the scope of this repo. Will fall back to non-blas if libopenblas is removed. 2023-03-30 00:43:52 +08:00
LICENSE.md update license, added backwards compatibility with both ggml model formats, fixed context length issues. 2023-03-20 23:43:35 +08:00
llama-util.h Merge branch 'master' into concedo_experimental 2023-06-06 23:12:01 +08:00
llama.cpp Merge branch 'master' into concedo_experimental 2023-06-07 15:23:29 +08:00
llama.h Multi GPU support, CUDA refactor, CUDA scratch buffer (#1703) 2023-06-06 21:33:23 +02:00
make_old_pyinstaller.bat added a second pyinstaller for my own use that uses a different python version. don't use this. 2023-05-24 23:34:11 +08:00
make_pyinstaller.bat minor fixes to debug logging, fixed a typo, added a new failsafe mode 2023-05-23 21:31:42 +08:00
make_pyinstaller.sh minor fixes to debug logging, fixed a typo, added a new failsafe mode 2023-05-23 21:31:42 +08:00
Makefile Metal inference enhancement - put hard-wired relative path of ggml-model.model file using a patch file due to lack of NSBundle environment 2023-06-09 01:47:36 +09:00
MIT_LICENSE_GGML_LLAMACPP_ONLY rebrand to koboldcpp 2023-04-03 10:35:18 +08:00
model_adapter.cpp added MPT support 2023-06-03 16:14:08 +08:00
model_adapter.h added MPT support 2023-06-03 16:14:08 +08:00
niko.ico fixed some build errors on linux, changed icon resolution, added more error printing 2023-05-22 12:18:42 +08:00
Package.swift Add Accelerate/BLAS when using Swift (#765) 2023-04-05 06:44:24 -04:00
README.md readme : add June roadmap 2023-06-07 07:15:08 +03:00
requirements.txt py : bump sentencepiece to 0.1.98 to support Python 3.11 (#976) 2023-04-14 19:46:49 +00:00
rwkv_vocab.embd updated kobold lite, work on rwkv, added exe path to model load params, added launch parameter 2023-04-18 17:36:44 +08:00

koboldcpp

A self contained distributable from Concedo that exposes llama.cpp function bindings, allowing it to be used via a simulated Kobold API endpoint.

What does it mean? You get llama.cpp with a fancy UI, persistent stories, editing tools, save formats, memory, world info, author's note, characters, scenarios and everything Kobold and Kobold Lite have to offer. In a tiny package around 20 MB in size, excluding model weights.

Preview

Usage

  • Download the latest release here or clone the repo.
  • Windows binaries are provided in the form of koboldcpp.exe, which is a pyinstaller wrapper for a few .dll files and koboldcpp.py. If you feel concerned, you may prefer to rebuild it yourself with the provided makefiles and scripts.
  • Weights are not included, you can use the official llama.cpp quantize.exe to generate them from your official weight files (or download them from other places).
  • To run, execute koboldcpp.exe or drag and drop your quantized ggml_model.bin file onto the .exe, and then connect with Kobold or Kobold Lite. If you're not on windows, then run the script KoboldCpp.py after compiling the libraries.
  • By default, you can connect to http://localhost:5001
  • You can also run it using the command line koboldcpp.exe [ggml_model.bin] [port]. For info, please check koboldcpp.exe --help
  • If you are having crashes or issues, you can try turning off BLAS with the --noblas flag. You can also try running in a non-avx2 compatibility mode with --noavx2. Lastly, you can try turning off mmap with --nommap.
  • Big context still too slow? Try the --smartcontext flag to reduce prompt processing frequency. Also, you can try to run with your GPU using CLBlast, with --useclblast flag for a speedup
  • Want even more speedup? Combine --useclblast with --gpulayers to offload entire layers to the GPU! Much faster, but uses more VRAM. Experiment to determine number of layers to offload.

For more information, be sure to run the program with the --help flag.

Compiling on Windows

  • If you want to compile your binaries from source at Windows, the easiest way is:
    • Use the latest release of w64devkit (https://github.com/skeeto/w64devkit). Be sure to use the "vanilla one", not i686 or other different stuff. If you try they will conflit with the precompiled libs!
    • Make sure you are using the w64devkit integrated terminal, then run 'make' at the KoboldCpp source folder. This will create the .dll files.
    • If you want to generate the .exe file, make sure you have the python module PyInstaller installed with pip ('pip install PyInstaller').
    • Run the script make_pyinstaller.bat at a regular terminal (or Windows Explorer).
    • The koboldcpp.exe file will be at your dist folder.
  • If you wish to use your own version of the additional Windows libraries (OpenCL, CLBlast and OpenBLAS), you can do it with:
    • OpenCL - tested with https://github.com/KhronosGroup/OpenCL-SDK . If you wish to compile it, follow the repository instructions. You will need vcpkg.
    • CLBlast - tested with https://github.com/CNugteren/CLBlast . If you wish to compile it you will need to reference the OpenCL files. It will only generate the ".lib" file if you compile using MSVC.
    • OpenBLAS - tested with https://github.com/xianyi/OpenBLAS .
    • Move the respectives .lib files to the /lib folder of your project, overwriting the older files.
    • Also, replace the existing versions of the corresponding .dll files located in the project directory root (e.g. libopenblas.dll).
    • Make the KoboldCPP project using the instructions above.

OSX and Linux

  • You will have to compile your binaries from source. A makefile is provided, simply run make
  • If you want you can also link your own install of OpenBLAS manually with make LLAMA_OPENBLAS=1
  • Alternatively, if you want you can also link your own install of CLBlast manually with make LLAMA_CLBLAST=1, for this you will need to obtain and link OpenCL and CLBlast libraries.
  • For a full featured build, do make LLAMA_OPENBLAS=1 LLAMA_CLBLAST=1
    • For Arch Linux: Install cblas openblas and clblast.
    • For Debian: Install libclblast-dev and libopenblas-dev.
  • After all binaries are built, you can run the python script with the command koboldcpp.py [ggml_model.bin] [port]
  • Note: Many OSX users have found that the using Accelerate is actually faster than OpenBLAS. To try, you may wish to run with --noblas and compare speeds.

Considerations

  • ZERO or MINIMAL changes as possible to parent repo files - do not move their function declarations elsewhere! We want to be able to update the repo and pull any changes automatically.
  • No dynamic memory allocation! Setup structs with FIXED (known) shapes and sizes for ALL output fields. Python will ALWAYS provide the memory, we just write to it.
  • For Windows: No installation, single file executable, (It Just Works)
  • Since v1.0.6, requires libopenblas, the prebuilt windows binaries are included in this repo. If not found, it will fall back to a mode without BLAS.
  • Since v1.15, requires CLBlast if enabled, the prebuilt windows binaries are included in this repo. If not found, it will fall back to a mode without CLBlast.
  • I plan to keep backwards compatibility with ALL past llama.cpp AND alpaca.cpp models. But you are also encouraged to reconvert/update your models if possible for best results.

License

  • The original GGML library and llama.cpp by ggerganov are licensed under the MIT License
  • However, Kobold Lite is licensed under the AGPL v3.0 License
  • The other files are also under the AGPL v3.0 License unless otherwise stated

Notes

  • Generation delay scales linearly with original prompt length. If OpenBLAS is enabled then prompt ingestion becomes about 2-3x faster. This is automatic on windows, but will require linking on OSX and Linux. CLBlast speeds this up even further, and --gpulayers + --useclblast more so.
  • I have heard of someone claiming a false AV positive report. The exe is a simple pyinstaller bundle that includes the necessary python scripts and dlls to run. If this still concerns you, you might wish to rebuild everything from source code using the makefile, and you can rebuild the exe yourself with pyinstaller by using make_pyinstaller.bat
  • Supported GGML models:
    • LLAMA (All versions including ggml, ggmf, ggjt v1,v2,v3, openllama, gpt4all). Supports CLBlast and OpenBLAS acceleration for all versions.
    • GPT-2 (All versions, including legacy f16, newer format + quanitzed, cerebras, starcoder) Supports CLBlast and OpenBLAS acceleration for newer formats, no GPU layer offload.
    • GPT-J (All versions including legacy f16, newer format + quantized, pyg.cpp, new pygmalion, janeway etc.) Supports CLBlast and OpenBLAS acceleration for newer formats, no GPU layer offload.
    • RWKV (all formats except Q4_1_O).
    • GPT-NeoX / Pythia / StableLM / Dolly / RedPajama
    • MPT models (ggjt v3)
    • Basically every single current and historical GGML format that has ever existed should be supported, except for bloomz.cpp due to lack of demand.