Model Card for Indus (nasa-smd-ibm-v0.1)
Indus (previously known as nasa-smd-ibm-v0.1) is a RoBERTa-based, Encoder-only transformer model, domain-adapted for NASA Science Mission Directorate (SMD) applications. It's fine-tuned on scientific journals and articles relevant to NASA SMD, aiming to enhance natural language technologies like information retrieval and intelligent search.
Model Details
- Base Model: RoBERTa
- Tokenizer: Custom
- Parameters: 125M
- Pretraining Strategy: Masked Language Modeling (MLM)
- Distilled Version: You can download a distilled version of the model (30 Million Parameters) here: https://huggingface.co/nasa-impact/nasa-smd-ibm-distil-v0.1
Training Data
- Wikipedia English (Feb 1, 2020)
- AGU Publications
- AMS Publications
- Scientific papers from Astrophysics Data Systems (ADS)
- PubMed abstracts
- PubMedCentral (PMC) (commercial license subset)
Training Procedure
- Framework: fairseq 0.12.1 with PyTorch 1.9.1
- transformers Version: 4.2.0
- Strategy: Masked Language Modeling (MLM)
Evaluation
BLURB benchmark
(Standard deviation across 10 random seeds in parenthesis. Macro avg. reported across datasets and micro avg. computed by averaging scores on each task then averaging across task averages.)
Climate Change NER, and NASA-QA benchmark
(Climate Change NER and NASA-QA benchmark results. Standard Deviation over multiple runs given in parantheses)
Please refer to the following dataset cards for further benchmarks and evaluation
- NASA-IR Benchmark - https://huggingface.co/datasets/nasa-impact/nasa-smd-IR-benchmark
- NASA-QA Benchmark - https://huggingface.co/datasets/nasa-impact/nasa-smd-qa-benchmark
- Climate Change NER Benchmark - https://huggingface.co/datasets/ibm/Climate-Change-NER
Uses
- Named Entity Recognition (NER)
- Information Retrieval
- Sentence Transformers
- Extractive QA
For NASA SMD related, scientific usecases.
Note
Accompanying preprint paper can be found here: https://arxiv.org/abs/2405.10725.
Citation
If you find this work useful, please cite using the following bibtex citation:
@misc {nasa-impact_2023,
author = {Masayasu Maraoka and Bishwaranjan Bhattacharjee and Muthukumaran Ramasubramanian and Ikhsa Gurung and Rahul Ramachandran and Manil Maskey and Kaylin Bugbee and Rong Zhang and Yousef El Kurdi and Bharath Dandala and Mike Little and Elizabeth Fancher and Lauren Sanders and Sylvain Costes and Sergi Blanco-Cuaresma and Kelly Lockhart and Thomas Allen and Felix Grazes and Megan Ansdell and Alberto Accomazzi and Sanaz Vahidinia and Ryan McGranaghan and Armin Mehrabian and Tsendgar Lee},
title = { nasa-smd-ibm-v0.1 (Revision f01d42f) },
year = 2023,
url = { https://huggingface.co/nasa-impact/nasa-smd-ibm-v0.1 },
doi = { 10.57967/hf/1429 },
publisher = { Hugging Face }
}
Attribution
IBM Research
- Masayasu Muraoka
- Bishwaranjan Bhattacharjee
- Rong Zhang
- Yousef El Kurdi
- Bharath Dandala
NASA SMD
- Muthukumaran Ramasubramanian
- Iksha Gurung
- Rahul Ramachandran
- Manil Maskey
- Kaylin Bugbee
- Mike Little
- Elizabeth Fancher
- Lauren Sanders
- Sylvain Costes
- Sergi Blanco-Cuaresma
- Kelly Lockhart
- Thomas Allen
- Felix Grazes
- Megan Ansdell
- Alberto Accomazzi
- Sanaz Vahidinia
- Ryan McGranaghan
- Armin Mehrabian
- Tsendgar Lee
Disclaimer
This Encoder-only model is currently in an experimental phase. We are working to improve the model's capabilities and performance, and as we progress, we invite the community to engage with this model, provide feedback, and contribute to its evolution.
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