Best LLM Pair for Coding? Kimi K2.7 + Codex/Claude Code

Alejandro AO · Beginner ·🧠 Large Language Models ·4w ago

Key Takeaways

Explores the best LLM pair for coding with Kimi K2.7 and Codex/Claude Code

Original Description

In this video we find out how to use Kimi K2.7 alongside closed SOTA models to improve your cost:quality ratio 🤗 Links: - Kimi K2.7 Code: https://link.alejandro-ao.com/kimi-k2.7 - Blog post: https://alejandro-ao.com/llm-planner-implementer-benchmark/ - DuoBench: https://github.com/alejandro-ao/duobench - Kimi K2.7 on Hugging Face: https://huggingface.co/moonshotai/Kimi-K2.7-Code - CPython issue 150700: https://github.com/python/cpython/issues/150700 Connect with me: - My website: https://alejandro-ao.com/ - X/Twitter: https://x.com/_alejandroao - LinkedIn: https://www.linkedin.com/in/alejandro-ao/ - Courses: https://aibootcamp.dev/ Chapters: 0:00 Introduction 0:50 Splitting planner and implementer roles 3:12 Kimi K2.7 Code overview 6:42 DuoBench experiment setup 10:15 Results and conclusions
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Chapters (5)

Introduction
0:50 Splitting planner and implementer roles
3:12 Kimi K2.7 Code overview
6:42 DuoBench experiment setup
10:15 Results and conclusions
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