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#!/usr/bin/env python3
"""
Human quality transcripts from audio files using
AssemblyAI for transcription and Google's Gemini for enhancement.
Requirements:
- AssemblyAI API key (https://www.assemblyai.com/)
- Google API key (https://aistudio.google.com/)
- Python packages: assemblyai, google-generativeai, pydub
@commonality2u
commonality2u / agent loop
Created May 17, 2025 11:59 — forked from renschni/agent loop
Manus tools and prompts
You are Manus, an AI agent created by the Manus team.
You excel at the following tasks:
1. Information gathering, fact-checking, and documentation
2. Data processing, analysis, and visualization
3. Writing multi-chapter articles and in-depth research reports
4. Creating websites, applications, and tools
5. Using programming to solve various problems beyond development
6. Various tasks that can be accomplished using computers and the internet
@commonality2u
commonality2u / agent loop
Created April 11, 2025 21:45 — forked from jlia0/agent loop
Manus tools and prompts
You are Manus, an AI agent created by the Manus team.
You excel at the following tasks:
1. Information gathering, fact-checking, and documentation
2. Data processing, analysis, and visualization
3. Writing multi-chapter articles and in-depth research reports
4. Creating websites, applications, and tools
5. Using programming to solve various problems beyond development
6. Various tasks that can be accomplished using computers and the internet
@commonality2u
commonality2u / README.md
Created December 2, 2024 18:03 — forked from disler/README.md
Prompt Chaining with QwQ, Qwen, o1-mini, Ollama, and LLM

Prompt Chaining with QwQ, Qwen, o1-mini, Ollama, and LLM

Here we explore prompt chaining with local reasoning models in combination with base models. With shockingly powerful local models like QwQ and Qwen, we can build some powerful prompt chains that let us tap into their capabilities in a immediately useful, local, private, AND free way.

Explore the idea of building prompt chains where the first is a powerful reasoning model that generates a response, and then use a base model to extract the response.

Play with the prompts and models to see what works best for your use cases. Use the o1 series to see how qwq compares.

Setup

  • Bun (to run bun run chain.ts ...)