Esper-70B-GGUF / README.md
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metadata
base_model: ValiantLabs/Esper-70b
license: apache-2.0
language:
  - en
library_name: transformers
pipeline_tag: text-generation
quantized_by: brooketh
tags:
  - esper
  - dev-ops
  - developer
  - code
  - code-instruct
  - valiant
  - valiant-labs
  - code-llama
  - llama
  - llama-2
  - llama-2-chat
  - 70b
Backyard.ai

The official library of GGUF format models for use in the local AI chat app, Backyard AI.

Download Backyard AI here to get started.

Request Additional models at r/LLM_Quants.


Esper 70b

  • Creator: ValiantLabs
  • Original: Esper 70b
  • Date Created: 2024-03-12
  • Trained Context: 4096 tokens
  • Description: Esper 70b is a CodeLlama-based assistant with a DevOps focus, specializing in scripted language code, Terraform files, Dockerfiles, YAML, and more. Not recommended for roleplay.

What is a GGUF?

GGUF is a large language model (LLM) format that can be split between CPU and GPU. GGUFs are compatible with applications based on llama.cpp, such as Backyard AI. Where other model formats require higher end GPUs with ample VRAM, GGUFs can be efficiently run on a wider variety of hardware. GGUF models are quantized to reduce resource usage, with a tradeoff of reduced coherence at lower quantizations. Quantization reduces the precision of the model weights by changing the number of bits used for each weight.


Backyard.ai

Backyard AI

  • Free, local AI chat application.
  • One-click installation on Mac and PC.
  • Automatically use GPU for maximum speed.
  • Built-in model manager.
  • High-quality character hub.
  • Zero-config desktop-to-mobile tethering. Backyard AI makes it easy to start chatting with AI using your own characters or one of the many found in the built-in character hub. The model manager helps you find the latest and greatest models without worrying about whether it's the correct format. Backyard AI supports advanced features such as lorebooks, author's note, text formatting, custom context size, sampler settings, grammars, local TTS, cloud inference, and tethering, all implemented in a way that is straightforward and reliable. Join us on Discord