InfluxDB
InfluxDB 3 OSS provides high-performance time series workloads with new support for vector data, making it suitable for AI/ML and vector search applications. Relevant as a vector-capable database.
About this tool
InfluxDB 3 OSS
InfluxDB 3 OSS is an open-source time series database with support for vector data, designed for high-performance workloads and modern AI/ML applications.
Features
- Time Series Database: Optimized for high-performance ingestion, storage, and querying of time series data.
- Vector Data Support: Native support for vector data, enabling applications in AI/ML and vector search.
- Open Source: Freely available under an open-source license.
- Integration Ecosystem: Works with a variety of client libraries and integrations.
- Use Cases: Suitable for network and infrastructure monitoring, IoT analytics and predictive maintenance, machine learning & AI workloads, and as a modern data historian.
- Industry Applications: Used in manufacturing & IIoT, aerospace, energy & utilities, financial services, consumer IoT, telecommunications, gaming, and healthcare & life sciences.
Pricing
- InfluxDB 3 OSS is open source and available for free download and use.
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