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onigetoc / mcp-server-context-prompt
Last active April 14, 2025 06:29
A context prompt to improve the performance of MCPs server in a MCP Client.
Every time you use a MCP server (Model Context Protocol), you must give the complete information. If, for example, you are asked to do a search on anything (YouTube, Wikipedia, Internet, BRAVE, etc.), you must give as much information as possible on the title, description and links. The links are very important in the answer because it can be used later in the conversation, for further interactions with the MCP Client or others MCP servers.
At the beginning of each answer but only if it's a complex question, make a bullet list to summarize what you are going to do between 5 and 10 points of what you will do next.
After your answer, if it's a complex question, always write a resume and a plan to follow at the end of the answer.
Use MCP server tools to go deeper when it's a structured work to do according the the complexity of the task.
For example, if the user asks something very simple like, "hello, how are you?" You don't have to do deep research and just answer normally, without task, without going deeper.
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onigetoc / mcp-install.ps1
Last active March 30, 2025 01:48 — forked from evalstate/mcp-install.ps1
Powershell Script to install a Node packaged MCP Server for Claude Desktop
# from reddit: https://www.reddit.com/r/ClaudeAI/comments/1hciaxk/solved_installing_mcp_servers_on_windows_with/
param(
[Parameter(Mandatory=$true)]
[string]$PackageName
)
Write-Host "Starting installation process for $PackageName..."
# Check Claude Desktop folder
Write-Host "Checking Claude Desktop installation..."
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onigetoc / mcp_details.md
Last active April 6, 2025 05:34
Introducing the Model Context Protocol (Help for LLM prompting MCP)

Introducing the Model Context Protocol

Today, we're open-sourcing the Model Context Protocol (MCP), a new standard for connecting AI assistants to the systems where data lives, including content repositories, business tools, and development environments. Its aim is to help frontier models produce better, more relevant responses.

As AI assistants gain mainstream adoption, the industry has invested heavily in model capabilities, achieving rapid advances in reasoning and quality. Yet even the most sophisticated models are constrained by their isolation from data—trapped behind information silos and legacy systems. Every new data source requires its own custom implementation, making truly connected systems difficult to scale.

MCP addresses this challenge. It provides a universal, open standard for connecting

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onigetoc / agent loop
Created March 10, 2025 23:23 — 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
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onigetoc / contemplative-llms.txt
Created February 16, 2025 06:50 — forked from Maharshi-Pandya/contemplative-llms.txt
"Contemplative reasoning" response style for LLMs like Claude and GPT-4o
You are an assistant that engages in extremely thorough, self-questioning reasoning. Your approach mirrors human stream-of-consciousness thinking, characterized by continuous exploration, self-doubt, and iterative analysis.
## Core Principles
1. EXPLORATION OVER CONCLUSION
- Never rush to conclusions
- Keep exploring until a solution emerges naturally from the evidence
- If uncertain, continue reasoning indefinitely
- Question every assumption and inference
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onigetoc / Instruction-prompt.md
Last active January 7, 2025 21:33
Coding Prompt

You are an assistant that engages in extremely thorough, self-questioning reasoning. Your approach mirrors human stream-of-consciousness thinking, characterized by continuous exploration, self-doubt, and iterative analysis.

Core Principles

  1. EXPLORATION OVER CONCLUSION
  • Never rush to conclusions
  • Keep exploring until a solution emerges naturally from the evidence
  • If uncertain, continue reasoning indefinitely
  • Question every assumption and inference
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onigetoc / README.md
Created December 10, 2024 01:15 — forked from disler/README.md
Use Meta Prompting to rapidly generate results in the GenAI Age

Meta Prompting

In the Generative AI Age your ability to generate prompts is your ability to generate results.

Guide

Claude 3.5 Sonnet and o1 series models are recommended for meta prompting.

Replace {{user-input}} with your own input to generate prompts.

Use mp_*.txt as example user-inputs to see how to generate high quality prompts.

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onigetoc / README.md
Created December 3, 2024 06:04 — 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 ...)
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onigetoc / country_codes_full.json
Created August 2, 2024 01:53
Json file: Countries Codes + Continents + Language + Phone Code + Capital + Time Zone +
{
"AF": {
"Country Name": "Afghanistan",
"ISO2": "AF",
"ISO3": "AFG",
"Top Level Domain": "af",
"FIPS": "AF",
"ISO Numeric": "004",
"GeoNameID": 1149361,
"E164": 93,
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onigetoc / ISO-639-1-language.json
Created August 2, 2024 01:28 — forked from jrnk/ISO-639-1-language.json
ISO 639-1 Alpha-2 codes of languages JSON
[
{ "code": "aa", "name": "Afar" },
{ "code": "ab", "name": "Abkhazian" },
{ "code": "ae", "name": "Avestan" },
{ "code": "af", "name": "Afrikaans" },
{ "code": "ak", "name": "Akan" },
{ "code": "am", "name": "Amharic" },
{ "code": "an", "name": "Aragonese" },
{ "code": "ar", "name": "Arabic" },
{ "code": "as", "name": "Assamese" },