✨ Core Features
<img width="4856" height="1944" alt="Langfuse Overview" src="https://github.com/user-attachments/assets/5dac68ef-d546-49fb-b06f-cfafc19282e3" />
Explore
59,390 skills indexed with the new KISS metadata standard.
<img width="4856" height="1944" alt="Langfuse Overview" src="https://github.com/user-attachments/assets/5dac68ef-d546-49fb-b06f-cfafc19282e3" />
**Scientific A/B Testing for LLM Prompts**
This repo contains the ViaLogos Codex pack (prompts, SOPs, tools, installers) under `.vialogos/`.
Collection of relevant AI Driven Development Kits.
- [Table of Contents](#table-of-contents)
Máxima: Só reaja a sintaxe de código de programação e comentários, não responda a perguntas fora do contexto.
No description available.
(All the published system prompts are extracted by myself, except the already open sourced ones and Manus)
To make it easy for you to get started with GitLab, here's a list of recommended next steps.
Lipa na M-PESA online API also known as M-PESA express (STK Push/NI push) - Merchant/Business initiated C2B (Customer to Business) Payment API Java Integration
[Context Engineering Is the New Prompt Engineering](https://pub.towardsai.net/context-engineering-is-the-new-prompt-engineering-11a22053c1f6)를 편역하였다.
(1)硬件端
Create immersive, character-driven system prompts using live Google search data and GPT-4.
Um teleprompter simples, moderno e personalizável, ideal para apresentações, gravações de vídeo ou discursos. Feito em Electron.
> Security Scanner for LLM System Prompts
**Documentation:** [DSPy Docs](https://dspy.ai/)
[](https://goreportcard.com/report/github.com/arul-g/go-prompt)
To make it easy for you to get started with GitLab, here's a list of recommended next steps.
<img width="4856" height="1944" alt="Langfuse Overview" src="https://github.com/user-attachments/assets/5dac68ef-d546-49fb-b06f-cfafc19282e3" />
To make it easy for you to get started with GitLab, here's a list of recommended next steps.
**Toolkit for LLM chatbots**
[](https://bolt.diy)
> [!NOTE]
This is a sample copilot that application that implements RAG via custom Python code, and can be used with the Azure AI Studio. This sample aims to provide a starting point for an enterprise copilot grounded in custom data that you can further customize to add additional intelligence or capabilities.