UnifiedCrawl: Aggregated Common Crawl for Affordable Adaptation of LLMs on Low-Resource Languages
Tessema, Bethel Melesse, Kedia, Akhil, Chung, Tae-Sun
–arXiv.org Artificial Intelligence
Large language models (LLMs) under-perform on low-resource languages due to limited training data. We present a method to efficiently collect text data for low-resource languages from the entire Common Crawl corpus. Our approach, UnifiedCrawl, filters and extracts common crawl using minimal compute resources, yielding mono-lingual datasets much larger than previously available sources. We demonstrate that leveraging this data to fine-tuning multilingual LLMs via efficient adapter methods (QLoRA) significantly boosts performance on the low-resource language, while minimizing VRAM usage. Our experiments show large improvements in language modeling perplexity and an increase in few-shot prompting scores. Our work and released source code provide an affordable approach to improve LLMs for low-resource languages using consumer hardware. Our source code is available here at https://github.com/bethelmelesse/unifiedcrawl.
arXiv.org Artificial Intelligence
Nov-21-2024
- Country:
- North America
- United States
- Minnesota > Hennepin County
- Minneapolis (0.14)
- Louisiana > Orleans Parish
- New Orleans (0.04)
- Hawaii > Honolulu County
- Honolulu (0.04)
- Minnesota > Hennepin County
- Canada > Ontario
- Toronto (0.04)
- United States
- Europe
- Italy (0.04)
- Austria (0.04)
- Netherlands > North Holland
- Amsterdam (0.04)
- Ireland > Leinster
- County Dublin > Dublin (0.04)
- France > Provence-Alpes-Côte d'Azur
- Bouches-du-Rhône > Marseille (0.04)
- Asia
- Pakistan (0.04)
- Indonesia > Bali (0.04)
- India (0.04)
- Afghanistan (0.04)
- South Korea
- Gyeonggi-do > Suwon (0.04)
- Seoul > Seoul (0.04)
- Middle East
- Jordan (0.04)
- Israel (0.04)
- UAE > Abu Dhabi Emirate
- Abu Dhabi (0.04)
- Africa
- North America
- Genre:
- Research Report > Promising Solution (0.46)
- Technology: