ObjectBox
A high-performance embedded database for edge devices and mobile, offering vector search capabilities for AI applications.
About this tool
ObjectBox: High-Performance Embedded Database
ObjectBox is a high-performance embedded database designed for edge devices and mobile applications, offering vector search capabilities for AI applications. It enables applications to own their data and AI, providing offline-first capabilities for data access with or without internet connectivity. ObjectBox securely stores data privately on-device and supports seamless synchronization with millions of devices on-premise, with optional cloud integration.
Features
- High Performance & Resource Efficiency: Designed for high speed, low battery, CPU, memory, and bandwidth consumption, suitable for resource-constrained environments like edge devices, mobile, and ECUs.
- Offline-First & Cloud-Optional: Ensures data persistence and application functionality even without internet connectivity, with the option to sync data to the cloud.
- On-Device Data Persistence & AI: Supports direct data storage and AI processing on the device.
- Scalability: Grows effortlessly with application needs.
- Data Privacy: Allows users to own their data and AI, ensuring privacy.
- Transactional Safety: Guarantees 100% transactional safety for data operations.
- Broad Language & Platform Support: Compatible with all major programming languages and platforms.
- Agile APIs: Provides APIs for swift feature addition.
- VSS-support: Specific support for automotive applications (Vehicle Signal Specification).
Pricing
No pricing information is available in the provided content.
Loading more......
Information
Categories
Similar Products
6 result(s)Qdrant Edge is a private beta offering of Qdrant optimized for edge and on-device deployments, enabling low-latency vector search and AI capabilities closer to where data is generated.
Qdrant is an open‑source vector database designed for high‑performance similarity search and AI applications such as RAG, recommendation systems, advanced semantic search, anomaly detection, and AI agents. It provides scalable storage and retrieval of vector embeddings with features like filtering, hybrid search, and production‑grade APIs for integrating with machine learning workloads.
Built into the Salesforce platform, Data Cloud Vector Database ingests various large datasets from customer interactions, classifies and organizes unstructured data, and merges it with structured data to enrich customer profiles and store as metadata in Data Cloud. It enhances generative AI by providing more relevant, accurate, and up-to-date responses through improved data retrieval and semantic search capabilities.
Instaclustr offers comprehensive managed services for vector databases, handling deployment, configuration, ongoing maintenance, tuning, optimization, scalability, security, and data protection. This allows organizations to offload the complexities of managing their vector database infrastructure and focus on their core business objectives.
A platform designed to simplify the building, management, and deployment of Large Language Model (LLM) applications, enabling rapid operationalization of context-aware LLMs and offering integration with its Vector Store.
An on-demand serverless configuration for OpenSearch Service that simplifies the operational complexities of managing OpenSearch domains, integrated with Knowledge Bases for Amazon Bedrock to support generative AI applications.