mail-ecnu / Text-Gym-Agents

This project provides a set of translators to convert OpenAI Gym environments into text-based environments. It is designed to investigate the capabilities of large language models in decision-making tasks within these text-based environments.
https://huggingface.co/spaces/MAIL-CS-ECNU/Text-Gym-Agents
Apache License 2.0
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The context length exceeds the max token of api #16

Open Jarvis-K opened 8 months ago

Jarvis-K commented 8 months ago

solved by auto truncating

ewanlee commented 7 months ago

A Human-Inspired Reading Agent with Gist Memory of Very Long Contexts

https://papers.cool/arxiv/2402.09727

Authors: Kuang-Huei Lee ; Xinyun Chen ; Hiroki Furuta ; John Canny ; Ian Fischer

Summary: Current Large Language Models (LLMs) are not only limited to some maximum context length, but also are not able to robustly consume long inputs. To address these limitations, we propose ReadAgent, an LLM agent system that increases effective context length up to 20x in our experiments. Inspired by how humans interactively read long documents, we implement ReadAgent as a simple prompting system that uses the advanced language capabilities of LLMs to (1) decide what content to store together in a memory episode, (2) compress those memory episodes into short episodic memories called gist memories, and (3) take actions to look up passages in the original text if ReadAgent needs to remind itself of relevant details to complete a task. We evaluate ReadAgent against baselines using retrieval methods, using the original long contexts, and using the gist memories. These evaluations are performed on three long-document reading comprehension tasks: QuALITY, NarrativeQA, and QMSum. ReadAgent outperforms the baselines on all three tasks while extending the effective context window by 3-20x.