Edit model card

Opera Bullet Interpreter

DISCLAIMER: Use of the model using Hugging Face's Inference API widget will produce cut-off results. Please see "How to Get Started with the Model" for more details on how to use this model properly.

Table of Contents

Model Details

Model Description

An unofficial United States Air Force and Space Force performance statement "translation" model. Takes a properly formatted performance statement, also known as a "bullet," as an input and outputs a long-form sentence, using plain english, describing the accomplishments captured within the bullet.

This is a fine-tuned version of the LaMini-Flan-T5-783M, using the justinthelaw/opera-bullet-completions (private) dataset.

  • Developed by: Justin Law, Alden Davidson, Christopher Kodama, My Tran
  • Model type: Language Model
  • Language(s) (NLP): en
  • License: apache-2.0
  • Parent Model: LaMini-Flan-T5-783M
  • Resources for more information: More information needed

Uses

Direct Use

Used to programmatically produce training data for Opera's Bullet Forge (see GitHub repository for details).

The exact prompt to achieve the desired result is: "Using full sentences, expand upon the following Air and Space Force bullet statement by spelling-out acronyms and adding additional context: [INSERT BULLET HERE]"

Below are some examples of the v0.1.0 iteration of this model generating acceptable translations of bullets that it was not previously exposed to during training:

Bullet Translation to Sentence
- Maintained 112 acft G-files; conducted 100% insp of T.Os job guides--efforts key to flt's 96% LSEP pass rate I maintained 112 aircraft G-files and conducted 100% inspection of T.O job guides, contributing to the flight's 96% LSEP pass rate.
- Spearheaded mx for 43 nuke-cert vehs$5.2M; achieved peak 99% MC rt--vital to SECAF #1 priorit ynuc deterrence I spearheaded the maintenance for 43 nuclear-certified vehicles worth $5.2 million, achieving a peak 99% mission capability rating. This mission was vital to the SECAF's #1 priority of nuclear deterrence.
- Superb NCO; mng'd mobility ofc during LibyanISAF ops; continuously outshines peers--promote to MSgt now I am a superb Non-Commissioned Officer (NCO) who managed the mobility operation during Libyan ISAF operations. I continuously outshines my peers and deserve a promotion to MSgt now.
- Managed PMEL prgrm; maintained 300+ essential equipment calibration items--reaped 100% TMDE pass rt I managed the PMEL program and maintained over 300+ essential equipment calibration items, resulting in a 100% Test, Measurement, and Diagnostic Equipment (TMDE) pass rate.

Downstream Use

Used to quickly interpret bullets written by Airman (Air Force) or Guardians (Space Force), into long-form, plain English sentences.

Out-of-Scope Use

Use of the model using Hugging Face's Inference API widget will produce cut-off results. Please see "How to Get Started with the Model" for more details on how to use this model properly. This Hugging Face inference pipeline behavior may be refactored in the future.

Generating bullets from long-form, plain English sentences. General NLP functionality.

Bias, Risks, and Limitations

Specialized acronyms or abbreviations specific to small units may not be transformed properly. Bullets in highly non-standard formats may result in lower quality results.

Recommendations

Look-up acronyms to ensure the correct narrative is being formed. Double-check (spot check) bullets with slightly more complex acronyms and abbreviations for narrative precision.

Training Details

Training Data

The model was fine-tuned on the justinthelaw/opera-bullet-completions dataset, which can be partially found at the GitHub repository.

Training Procedure

Preprocessing

The justinthelaw/opera-bullet-completions dataset was created using a custom Python web-scraper, along with some custom cleaning functions, all of which can be found at the GitHub repository.

Speeds, Sizes, Times

It takes approximately 3-5 seconds per inference when using any standard-sized Air and Space Force bullet statement.

Evaluation

Testing Data, Factors & Metrics

Testing Data

20% of the justinthelaw/opera-bullet-completions dataset was used to validate the model's performance.

Factors

Repitition, contextual loss, and bullet format are all loss factors tied into the backward propogation calculations and validation steps.

Metrics

ROGUE scores were computed and averaged. These may be provided in future iterations of this model's development.

Results

Model Examination

More information needed

Environmental Impact

  • Hardware Type: 2019 MacBook Pro, 16 inch
  • Hours used: 18
  • Cloud Provider: N/A
  • Compute Region: N/A
  • Carbon Emitted: N/A

Technical Specifications

Hardware

2.6 GHz 6-Core Intel Core i7, 16 GB 2667 MHz DDR4, AMD Radeon Pro 5300M 4 GB

Software

VSCode, Jupyter Notebook, Python3, PyTorch, Transformers, Pandas, Asyncio, Loguru, Rich

Citation

BibTeX:

@article{lamini-lm,
  author       = {Minghao Wu and
                  Abdul Waheed and
                  Chiyu Zhang and
                  Muhammad Abdul-Mageed and
                  Alham Fikri Aji
                  },
  title        = {LaMini-LM: A Diverse Herd of Distilled Models from Large-Scale Instructions},
  journal      = {CoRR},
  volume       = {abs/2304.14402},
  year         = {2023},
  url          = {https://arxiv.org/abs/2304.14402},
  eprinttype   = {arXiv},
  eprint       = {2304.14402}
}

Model Card Authors

Justin Law, Alden Davidson, Christopher Kodama, My Tran

Model Card Contact

Email: justinthelaw@gmail.com

How to Get Started with the Model

Use the code below to get started with the model.

Click to expand
import torch
from transformers import T5ForConditionalGeneration, T5Tokenizer

bullet_data_creation_prefix = "Using full sentences, expand upon the following Air and Space Force bullet statement by spelling-out acronyms and adding additional context: "

# Path of the pre-trained model that will be used
model_path = "justinthelaw/opera-bullet-interpreter"
# Path of the pre-trained model tokenizer that will be used
# Must match the model checkpoint's signature
tokenizer_path = "justinthelaw/opera-bullet-interpreter"
# Max length of tokens a user may enter for summarization
# Increasing this beyond 512 may increase compute time significantly
max_input_token_length = 512
# Max length of tokens the model should output for the summary
# Approximately the number of tokens it may take to generate a bullet
max_output_token_length = 512
# Beams to use for beam search algorithm
# Increased beams means increased quality, but increased compute time
number_of_beams = 6
# Scales logits before soft-max to control randomness
# Lower values (~0) make output more deterministic
temperature = 0.5
# Limits generated tokens to top K probabilities
# Reduces chances of rare word predictions
top_k = 50
# Applies nucleus sampling, limiting token selection to a cumulative probability
# Creates a balance between randomness and determinism
top_p = 0.90

try:
    tokenizer = T5Tokenizer.from_pretrained(
        f"{model_path}",
        model_max_length=max_input_token_length,
        add_special_tokens=False,
    )
    input_model = T5ForConditionalGeneration.from_pretrained(f"{model_path}")
    logger.info(f"Loading {model_path}...")
    # Set device to be used based on GPU availability
    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
    # Model is sent to device for use
    model = input_model.to(device)  # type: ignore

    input_text = bullet_data_creation_prefix + input("Input a US Air or Space Force bullet: ")

    encoded_input_text = tokenizer.encode_plus(
        input_text,
        return_tensors="pt",
        truncation=True,
        max_length=max_input_token_length,
    )

    # Generate summary
    summary_ids = model.generate(
        encoded_input_text["input_ids"],
        attention_mask=encoded_input_text["attention_mask"],
        max_length=max_output_token_length,
        num_beams=number_of_beams,
        temperature=temperature,
        top_k=top_k,
        top_p=top_p,
        early_stopping=True,
    )

    output_text = tokenizer.decode(summary_ids[0], skip_special_tokens=True)

    print(f"Your input: {input_line["output"]}")
    print(f"The model's output: {output_text}")

except KeyboardInterrupt:
    print("Received interrupt, stopping script...")
except Exception as e:
    print(f"An error occurred during generation: {e}")
Downloads last month
3
Safetensors
Model size
783M params
Tensor type
F32
·