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The C#/.NET binding of llama.cpp. It provides APIs to inference the LLaMa Models and deploy it on native environment or Web. It works on
both Windows and Linux and does NOT require compiling llama.cpp yourself. Its performance is close to llama.cpp.
Firstly, search LLamaSharp in nuget package manager and install it.
PM> Install-Package LLamaSharp
Then, search and install one of the following backends:
LLamaSharp.Backend.Cpu
LLamaSharp.Backend.Cuda11
LLamaSharp.Backend.Cuda12
Here's the mapping of them and corresponding model samples provided by LLamaSharp. If you're not sure which model is available for a version, please try our sample model.
| LLamaSharp.Backend | LLamaSharp | Verified Model Resources | llama.cpp commit id |
|---|---|---|---|
| - | v0.2.0 | This version is not recommended to use. | - |
| - | v0.2.1 | WizardLM, Vicuna (filenames with "old") | - |
| v0.2.2 | v0.2.2, v0.2.3 | WizardLM, Vicuna (filenames without "old") | 63d2046 |
| v0.3.0 | v0.3.0 | LLamaSharpSamples v0.3.0, WizardLM | 7e4ea5b |
We publish the backend with cpu, cuda11 and cuda12 because they are the most popular ones. If none of them matches, please compile the llama.cpp
from source and put the libllama under your project's output path. When building from source, please add -DBUILD_SHARED_LIBS=ON to enable the library generation.
n_gpu_layers to a smaller number.llama.cpp is under quick development and often has break changes. Please check the release date of the model and find a suitable version of LLamaSharp to install, or use the model we provide on huggingface.Currently it's only a simple benchmark to indicate that the performance of LLamaSharp is close to llama.cpp. Experiments run on a computer
with Intel i7-12700, 3060Ti with 7B model. Note that the benchmark uses LLamaModel instead of LLamaModelV1.
llama.cpp: 2.98 words / second
LLamaSharp: 2.94 words / second
Currently, LLamaSharp provides two kinds of model, LLamaModelV1 and LLamaModel. Both of them works but LLamaModel is more recommended
because it provides better alignment with the master branch of llama.cpp.
Besides, ChatSession makes it easier to wrap your own chat bot. The code below is a simple example. For all examples, please refer to
Examples.
var model = new LLamaModel(new LLamaParams(model: "<Your path>", n_ctx: 512, repeat_penalty: 1.0f));
var session = new ChatSession<LLamaModel>(model).WithPromptFile("<Your prompt file path>")
.WithAntiprompt(new string[] { "User:" });
Console.Write("\nUser:");
while (true)
{
Console.ForegroundColor = ConsoleColor.Green;
var question = Console.ReadLine();
Console.ForegroundColor = ConsoleColor.White;
var outputs = session.Chat(question); // It's simple to use the chat API.
foreach (var output in outputs)
{
Console.Write(output);
}
}
The following example shows how to quantize the model. With LLamaSharp you needn't to compile c++ project and run scripts to quantize the model, instead, just run it in C#.
string srcFilename = "<Your source path>";
string dstFilename = "<Your destination path>";
string ftype = "q4_0";
if(Quantizer.Quantize(srcFileName, dstFilename, ftype))
{
Console.WriteLine("Quantization succeed!");
}
else
{
Console.WriteLine("Quantization failed!");
}
For more usages, please refer to Examples.
We provide the integration of ASP.NET core here. Since currently the API is not stable, please clone the repo and use it. In the future we'll publish it on NuGet.
Since we are in short of hands, if you're familiar with ASP.NET core, we'll appreciate it if you would like to help upgrading the Web API integration.
✅ LLaMa model inference
✅ Embeddings generation, tokenization and detokenization
✅ Chat session
✅ Quantization
✅ State saving and loading
✅ ASP.NET core Integration
🔳 MAUI Integration
🔳 Follow up llama.cpp and improve performance
Some extra model resources could be found below:
The weights included in the magnet is exactly the weights from Facebook LLaMa.
The prompts could be found below:
Any contribution is welcomed! You can do one of the followings to help us make LLamaSharp better:
LLamaSharp to let others know it.Join our chat on Discord.
Join QQ group
This project is licensed under the terms of the MIT license.
C#/.NET上易用的LLM高性能推理框架,支持LLaMA和LLaVA系列模型。
C# Text Metal JavaScript HTML+Razor other