• Home
  • Categories
  • Tags
  • Pricing
  • Submit
  1. Home
  2. Vector Database Engines
  3. KDB.AI

KDB.AI

KDB.AI is a proprietary vector database and search engine designed for real-time AI applications. It offers advanced vector search, integrates with popular ML tools, and supports temporal and semantic context for embeddings. KDB.AI Server is a high-performance vector database and search engine from KX, designed for real-time analytics and AI applications requiring rapid similarity search.

🌐Visit Website

About this tool

KDB.AI

Category: Vector Database Engines
Website: https://kdb.ai/

KDB.AI is a proprietary vector database and search engine designed for real-time AI applications, offering advanced vector search capabilities and integrations with popular machine learning tools. It supports temporal and semantic context for embeddings and is optimized for rapid similarity search and analytics.

Features

  • Real-Time Vector Search: Sub-100ms latency for fast similarity search in AI applications.
  • Hybrid Search: Combines semantic (dense) and keyword (sparse) vector searches in a single query for increased relevance.
  • Metadata Filtering: Refine search accuracy by filtering vectors based on unlimited metadata and structured data.
  • Temporal Similarity Search: Perform searches and anomaly detection over time series and temporal data.
  • Multimodal RAG: Handles unstructured data such as text, video, audio, and images for generative AI applications.
  • Multi-Index Search: Unifies multiple indexes for multi-layered embeddings and faster, flexible searches.
  • On-Disk Indexing: Uses purpose-built qHNSW and qFlat indexing to reduce costs and memory requirements.
  • Zero Embedding Search: Enables fast search (17x faster, 12x less memory than HNSW) for rapidly changing temporal data without needing embeddings.
  • Data Compression: Reduces memory and storage usage by up to 100x for slow-changing time-based datasets and accelerates search by 10x.
  • Dynamic Hybrid Search: Supports similarity, exact, and literal search in a single query, maintaining relevance as content changes.
  • Integration with AI Tools: Integrates with LangChain, LlamaIndex, Vector-io, OpenAI, Azure AI, HuggingFace, and Unstructured.io.
  • Support for Retrieval Augmented Generation: Build internal knowledge bases to enhance LLMs.
  • Chunking Strategies: Chunk documents for better data injection into LLMs and reduce hallucinations.

Pricing

  • Free Tier: Sign up and build production-grade AI apps for free with 99.99% uptime. (No detailed pricing plans provided in available content.)

Tags

proprietary, real-time, ai, vector-search


For more details, visit the official website.

Surveys

Loading more......

Information

Websitekdb.ai
PublishedMay 13, 2025

Categories

1 Item
Vector Database Engines

Tags

4 Items
#proprietary
#real-time
#AI
#vector search

Similar Products

6 result(s)
LanceDB

LanceDB is a columnar vector database optimized for real-time AI use cases and analytics workloads, providing efficient vector storage and fast similarity search.

ClickHouse

ClickHouse is an open-source column-oriented database that supports vectorized computation and now offers vector search features. Its architecture enables efficient real-time analytics and vector operations, making it a relevant choice for vector database use cases.

Infinity

Infinity is an AI-native database built for LLM applications, offering fast hybrid search of dense vectors, sparse vectors, tensors, and full-text data.

NucliaDB

NucliaDB is a commercial vector database that enables semantic and vector search across unstructured data, supporting advanced AI and ML-powered applications.

AstraDB

AstraDB (also known as Astra DB by DataStax) is a cloud-native vector database built on Apache Cassandra, supporting real-time AI applications with scalable vector search. It is designed for large-scale deployments and features a user-friendly Data API, robust vector capabilities, and automation for AI-powered applications.

Deep Lake

Deep Lake is a vector database designed as a data lake for AI, capable of storing and managing vector embeddings, text, images, and videos. It utilizes a tensor format for efficient querying and integration with AI algorithms, making it suitable for similarity search and machine learning workflows. It is open-source and tailored for handling unstructured and multimodal data, with seamless integration with frameworks like PyTorch and TensorFlow.

Built with
Ever Works
Ever Works

Connect with us

Stay Updated

Get the latest updates and exclusive content delivered to your inbox.

Product

  • Categories
  • Tags
  • Pricing
  • Help

Clients

  • Sign In
  • Register
  • Forgot password?

Company

  • About Us
  • Admin
  • Sitemap

Resources

  • Blog
  • Submit
  • API Documentation
All product names, logos, and brands are the property of their respective owners. All company, product, and service names used in this repository, related repositories, and associated websites are for identification purposes only. The use of these names, logos, and brands does not imply endorsement, affiliation, or sponsorship. This directory may include content generated by artificial intelligence.
Copyright © 2025 Acme. All rights reserved.·Terms of Service·Privacy Policy·Cookies