SCALABLE, MULTI-MODEL NOSQL DATABASES

Multi-model databases aim to reduce the overhead associated with provisioning and maintaining a different database for each data model. The traditional approach to multi-model databases fails to deliver true interaction between the different models: Once a data model is selected it is very hard to access a different model on the same database. To solve this problem, users usually develop a separate logic running outside the database, either at the application tier or over a serverless infrastructure, acting as a glue between the different data models. Such logic, external to the database, creates significant execution overhead and cannot meet today’s requirements for instant experience.

Powering the Redis modules architecture, Redis Enterprise solves this complex problem by allowing multi-model operations across and between modules and the core Redis data structures to be executed in a fully programmable and distributed manner, while maintaining instant, sub-millisecond latency.

Benefits

Simplify multi-model operations

Enable inter-module and module-core data structure operations in an efficient way, at sub-millisecond latency.

Endless programmability

Program any database logic that combines Redis modules and core operations in Redis using RedisGears.

Convert your Redis to a multi-model database

Easily migrate an existing dataset to a pure multi-model database in Redis by implementing a few simple principles—without changing your database architecture.

Use cases

Data ingest

Ingest and process millions of time-stamped data points per second with minimal latency using minimum resources.

Telemetry

Collect telemetry data from multiple remote IoT devices, on-premises, in any cloud, or on the edge for data-driven insights.

Monitoring

Gain deep insights into infrastructure and app health with integrations into Prometheus, Grafana, and Telegraf.

Transaction scoring

Apply machine-learning models in real-time to any data in Redis to score transactions, classify data, and detect needle-in-the-haystack anomalous activity.

Fraud mitigation

Enable automated discovery of patterns across large volumes of streaming transactions to weed out false positives and identify real fraudulent activity.

Personalization

Customize experiences by providing relevant content instantly, based on user preferences, trends, and interactions.


Main capabilities

Direct inter-module communication

Enrich functionality by allowing modules to automatically discover and interact with other modules, such as RediSearch with JSON for indexing and querying documents.

A single dataset copy

Eliminate the overhead associated with storing multiple copies of a dataset and avoid memory-copy operations.