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Go Bruins - A Fine-tuned Language Model

Updates

December 9, 2023: Go-Bruins has placed #6 overall and #1 for 7 billion parameter models on the Hugging Face Leaderboard!

Overview

Go Bruins is a state-of-the-art language model fine-tuned on the Q-bert/MetaMath-Cybertron-Starling architecture. It's designed to push the boundaries of NLP applications, offering unparalleled performance in generating human-like text.

Model Details

  • Developer: Ryan Witzman
  • Base Model: Q-bert/MetaMath-Cybertron-Starling
  • Fine-tuning Method: Direct Preference Optimization (DPO)
  • Training Steps: 200
  • Language: English
  • License: MIT

Capabilities

Go Bruins excels in a variety of NLP tasks, including but not limited to:

  • Text generation
  • Language understanding
  • Sentiment analysis

Usage

Warning: This model may output NSFW or illegal content. Use with caution and at your own risk.

For Direct Use:

from transformers import pipeline

model_name = "rwitz/go-bruins"
inference_pipeline = pipeline('text-generation', model=model_name)

input_text = "Your input text goes here"
output = inference_pipeline(input_text)

print(output)

GGUF Quantized Files are Located at NyxKrage/go-bruins-GGUF

Not Recommended For:

  • Illegal activities
  • Harassment
  • Professional advice or crisis situations

Training and Evaluation

Trained on a dataset from Intel/orca_dpo_pairs, Go Bruins has shown promising improvements over its predecessor, Q-Bert.

Evaluations

Go-Bruins is the SOTA 7B model.

Metric Average Arc Challenge Hella Swag MMLU Truthful Q&A Winogrande GSM8k
Score 71.86 69.11 86.53 65.02 59.24 81.37 69.90

Note: The original MMLU evaluation has been corrected to include 5-shot data rather than 1-shot data.

Contact

For any inquiries or feedback, reach out to Ryan Witzman on Discord: rwitz_.


This model card was created with care by Ryan Witzman.

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Dataset used to train LoneStriker/go-bruins-3.0bpw-h6-exl2-2