March 13, 2024, 5:47 p.m. | /u/MetaGPT

machinelearningnews www.reddit.com

Abstract:

>Large Language Model (LLM)-based agents have demonstrated remarkable effectiveness. However, their performance can be compromised in data science scenarios that require real-time data adjustment, expertise in optimization due to complex dependencies among various tasks, and the ability to identify logical errors for precise reasoning. In this study, we introduce the Data Interpreter, a solution designed to solve with code that emphasizes three pivotal techniques to augment problem-solving in data science: 1) dynamic planning with hierarchical graph structures for real-time …

abstract agent data data science interpreter llm machinelearningnews science

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