+
+

Related Products

  • PDFCreator
    494 Ratings
    Visit Website
  • Web APIs by Melissa
    74 Ratings
    Visit Website
  • Imorgon
    1 Rating
    Visit Website
  • D&B Connect
    169 Ratings
    Visit Website
  • CLEAR
    1 Rating
    Visit Website
  • DocuGenerate
    52 Ratings
    Visit Website
  • NINJIO
    390 Ratings
    Visit Website
  • Comet Backup
    224 Ratings
    Visit Website
  • EBizCharge
    179 Ratings
    Visit Website
  • Riddle Quiz Maker
    96 Ratings
    Visit Website

About

Improve your embedding metadata and embedding tokens with a user-friendly UI. Seamlessly apply advanced NLP cleansing techniques like TF-IDF, normalize, and enrich your embedding tokens, improving efficiency and accuracy in your LLM-related applications. Optimize the relevance of the content you get back from a vector database, intelligently splitting or merging the content based on its structure and adding void or hidden tokens, making chunks even more semantically coherent. Get full control over your data, effortlessly deploying Embedditor locally on your PC or in your dedicated enterprise cloud or on-premises environment. Applying Embedditor advanced cleansing techniques to filter out embedding irrelevant tokens like stop-words, punctuations, and low-relevant frequent words, you can save up to 40% on the cost of embedding and vector storage while getting better search results.

About

VectorDB is a lightweight Python package for storing and retrieving text using chunking, embedding, and vector search techniques. It provides an easy-to-use interface for saving, searching, and managing textual data with associated metadata and is designed for use cases where low latency is essential. Vector search and embeddings are essential when working with large language models because they enable efficient and accurate retrieval of relevant information from massive datasets. By converting text into high-dimensional vectors, these techniques allow for quick comparisons and searches, even when dealing with millions of documents. This makes it possible to find the most relevant results in a fraction of the time it would take using traditional text-based search methods. Additionally, embeddings capture the semantic meaning of the text, which helps improve the quality of the search results and enables more advanced natural language processing tasks.

Platforms Supported

Windows
Mac
Linux
Cloud
On-Premises
iPhone
iPad
Android
Chromebook

Platforms Supported

Windows
Mac
Linux
Cloud
On-Premises
iPhone
iPad
Android
Chromebook

Audience

Anyone searching for an open-source platform that helps them get the most out of your vector search

Audience

Anyone in need of a tool to save, search, store, manage, and retrieve text

Support

Phone Support
24/7 Live Support
Online

Support

Phone Support
24/7 Live Support
Online

API

Offers API

API

Offers API

Screenshots and Videos

Screenshots and Videos

Pricing

No information available.
Free Version
Free Trial

Pricing

Free
Free Version
Free Trial

Reviews/Ratings

Overall 0.0 / 5
ease 0.0 / 5
features 0.0 / 5
design 0.0 / 5
support 0.0 / 5

This software hasn't been reviewed yet. Be the first to provide a review:

Review this Software

Reviews/Ratings

Overall 0.0 / 5
ease 0.0 / 5
features 0.0 / 5
design 0.0 / 5
support 0.0 / 5

This software hasn't been reviewed yet. Be the first to provide a review:

Review this Software

Training

Documentation
Webinars
Live Online
In Person

Training

Documentation
Webinars
Live Online
In Person

Company Information

Embedditor
embedditor.ai/

Company Information

VectorDB
United States
vectordb.com

Alternatives

Cohere

Cohere

Cohere AI

Alternatives

Categories

Categories

Integrations

Docker
GitHub
IngestAI
Lamatic.ai
Python

Integrations

Docker
GitHub
IngestAI
Lamatic.ai
Python
Claim Embedditor and update features and information
Claim Embedditor and update features and information
Claim VectorDB and update features and information
Claim VectorDB and update features and information