intro_to_agentic_ai_mcp_unsloth
Verified Safeby matthew-sayer
Overview
This project serves as an educational introduction to agentic AI concepts, demonstrating large language model fine-tuning using Unsloth and exploring a Multi-Candidate Platform (MCP) framework.
Installation
No command providedSecurity Notes
Limited security audit due to lack of access to file content. Assumes benign educational intent based on project naming. The project likely involves network interactions for downloading models/data and potentially API calls to external LLM services, which are typical for ML projects and should be reviewed in detail if specific content were available. No obvious 'eval' or obfuscation risks are inferable from file names alone.
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