RE-GAINS & EnChAnT: Intelligent Tool Manipulation Systems For Enhanced Query Responses
Sahil Girhepuje
Siva Sankar Sajeev
Purvam Jain
Arya Sikder
Adithya Rama Varma
Ryan George
Akshay Govind Srinivasan
Mahendra Kurup
Ashmit Sinha
Sudip Mondal

Abstract
Large Language Models (LLMs) currently struggle with tool invocation and chaining, as they often hallucinate or miss essential steps in a sequence. We propose RE-GAINS and EnChAnT, two novel frameworks that empower LLMs to tackle complex user queries by making API calls to external tools based on tool descriptions and argument lists. Tools are chained based on the expected output, without receiving the actual results from each individual call. EnChAnT, an open-source solution, leverages an LLM format enforcer, OpenChat 3.5 (an LLM), and ToolBench's API Retriever. RE-GAINS utilizes OpenAI models and embeddings with a specialized prompt based on the easoning vi lanning framework. Both frameworks are low cost (0.01\
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