llama.go
supercharger
llama.go | supercharger | |
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12 | 13 | |
1,186 | 346 | |
- | - | |
8.2 | 6.6 | |
6 months ago | about 1 year ago | |
Go | Python | |
GNU General Public License v3.0 or later | MIT License |
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llama.go
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Understanding GPT Tokenizers
You might reuse simple LLaMA tokenizer right in your Go code, look there:
https://github.com/gotzmann/llama.go/blob/8cc54ca81e6bfbce25...
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April 2023
llama.go is like llama.cpp in pure Golang (https://github.com/gotzmann/llama.go)
- llama.go v1.4 - introduces Rest API for your GPT services
- [Golang] Llama.go - Meta's Llama GPT Inférence dans Pure Golang
- LLaMA.go v1.4: now with scalable REST API exposing local GPT model
- Local LLaMA REST API with llama.go v1.4
- LLaMA.go v1.4 - introducing REST API for building your own GPT services
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MiniGPT-4
I'm developing framework [1] in Golang with this goal in mind :) It successfully runs relatively big LLM right now, and diffusion models will be the next step
[1] https://github.com/gotzmann/llama.go/
- gotzmann/llama.go: llama.go is like llama.cpp in pure Golang!
- Show HN: Llama.go – port of llama.cpp to pure Go
supercharger
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Claude 2
Since I've been on a AI code-helper kick recently. According to the post, Claude 2 now 71.2%, a significant upgrade from 1.3 (56.0%). It isn't specified whether this is pass@1 or pass@10.
For comparison:
* GPT-4 claims 85.4 on HumanEval, in a recent paper https://arxiv.org/pdf/2303.11366.pdf GPT-4 was tested at 80.1 pass@1 and 91 pass@1 using their Reflexion technique. They also include MBPP and Leetcode Hard benchmark comparisons
* WizardCoder, a StarCoder fine-tune is one of the top open models, scoring a 57.3 pass@1, model card here: https://huggingface.co/WizardLM/WizardCoder-15B-V1.0
* The best open model I know of atm is replit-code-instruct-glaive, a replit-code-3b fine tune, which scores a 63.5% pass@1. An independent developer abacaj has reproduced that announcement as part of code-eval, a repo for getting human-eval results: https://github.com/abacaj/code-eval
Those interested in this area may also want to take a look at this repo https://github.com/my-other-github-account/llm-humaneval-ben... that also ranks with Eval+, the CanAiCode Leaderboard https://huggingface.co/spaces/mike-ravkine/can-ai-code-resul... and airate https://github.com/catid/supercharger/tree/main/airate
Also, as with all LLM evals, to be taken with a grain of salt...
Liu, Jiawei, Chunqiu Steven Xia, Yuyao Wang, and Lingming Zhang. “Is Your Code Generated by ChatGPT Really Correct? Rigorous Evaluation of Large Language Models for Code Generation.” arXiv, June 12, 2023. https://doi.org/10.48550/arXiv.2305.01210.
- Let's be honest: none of the models can code well
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April 2023
Leverage locally-hosted Large Language Models to write software + unit tests (https://github.com/catid/supercharger)
- What coding llm is the best?
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Is there such a thing as local Llamas integrated into VSCode?
supercharger Write Software + unit tests for you, based on Baize-30B 8bit, using model parallelism
- I have a project in my own programming language, abusing both lexical and syntactic macros. I want to do a refactoring tasks on it. I don't have a GPU, but 14-core CPU. Should I pay for cloud or there are local ways to do such task on my laptop? Which model is better for programming?
- What is the best open source model/program to help index and debug code?
- Leverage locally-hosted Large Language Models to write software and unit tests
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Can LLMs do static code analysis?
Added support for 65B LLaMa model to https://github.com/catid/supercharger tonight. It runs faster than Baize 30B (maybe due to lack of adapter) and only slightly slower than Galpaca 30B. Benchmarks here: https://docs.google.com/spreadsheets/d/1TYBNr_UPJ7wCzJThuk5ysje7K1x-_62JhBeXDbmrjA8/edit?usp=sharing
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Benchmarks for LLMs on Consumer Hardware
Here's the code that loads it: https://github.com/catid/supercharger/blob/main/server/model_koala.py
What are some alternatives?
Flowise - Drag & drop UI to build your customized LLM flow
developer - the first library to let you embed a developer agent in your own app!
gpt4all.unity - Bindings of gpt4all language models for Unity3d running on your local machine
gptest - GPTest VS Code Extension
nn-zero-to-hero - Neural Networks: Zero to Hero
walter - AI-powered software development assistant built right into GitHub so it can act as your junior developer.
tokenizer - Pure Go implementation of OpenAI's tiktoken tokenizer
llm-humaneval-benchmarks
LLamaStack - ASP.NET Core Web, WebApi & WPF implementations for LLama.cpp & LLamaSharp
evaporate - This repo contains data and code for the paper "Language Models Enable Simple Systems for Generating Structured Views of Heterogeneous Data Lakes"
langchain-alpaca - Run Alpaca LLM in LangChain
locai - Connect to Kobold API through VS Code