Training Data for Large Language Model
- URL: http://arxiv.org/abs/2411.07715v1
- Date: Tue, 12 Nov 2024 11:09:58 GMT
- Title: Training Data for Large Language Model
- Authors: Yiming Ju, Huanhuan Ma,
- Abstract summary: ChatGPT surpassed previous models in terms of parameters and the scale of its pretraining corpus.
ChatGPT achieved revolutionary performance improvements through fine-tuning on a vast amount of high-quality, human-annotated data.
This paper summarizes the current state of pretraining and fine-tuning data for training large-scale language models.
- Score: 2.1178416840822027
- License:
- Abstract: In 2022, with the release of ChatGPT, large-scale language models gained widespread attention. ChatGPT not only surpassed previous models in terms of parameters and the scale of its pretraining corpus but also achieved revolutionary performance improvements through fine-tuning on a vast amount of high-quality, human-annotated data. This progress has led enterprises and research institutions to recognize that building smarter and more powerful models relies on rich and high-quality datasets. Consequently, the construction and optimization of datasets have become a critical focus in the field of artificial intelligence. This paper summarizes the current state of pretraining and fine-tuning data for training large-scale language models, covering aspects such as data scale, collection methods, data types and characteristics, processing workflows, and provides an overview of available open-source datasets.
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