
Jina AI
The search foundation for multimodal AI and RAG applications.

A monstrously fast and scalable NoSQL database designed for data-intensive applications requiring high throughput and predictable low latency.

ScyllaDB is a high-performance NoSQL database designed as a Cassandra-compatible alternative, re-architected from the ground up in C++ for exceptional speed and scalability. It features a close-to-the-metal architecture to maximize server efficiency, with each core acting independently. ScyllaDB employs a shard-per-core design, asynchronous communication, and a unified cache to deliver ultra-low latencies without external caching. Its IO scheduler prioritizes latency-sensitive tasks, autotuning to maximize concurrency. ScyllaDB Alternator offers a DynamoDB-compatible API, allowing migration without recoding or refactoring. It targets data-intensive applications requiring millions of operations per second with single-digit millisecond latencies. Key use cases include real-time analytics, IoT platforms, and high-volume transactional systems. Its features such as linear scalability, autotuning, and high availability, makes it an excellent alternative to traditional databases.
ScyllaDB is a high-performance NoSQL database designed as a Cassandra-compatible alternative, re-architected from the ground up in C++ for exceptional speed and scalability.
Explore all tools that specialize in perform real-time analytics. This domain focus ensures ScyllaDB delivers optimized results for this specific requirement.
Explore all tools that specialize in vector search. This domain focus ensures ScyllaDB delivers optimized results for this specific requirement.
DynamoDB-compatible API allowing seamless migration from DynamoDB to ScyllaDB without code changes.
Each CPU core operates independently, maximizing server efficiency and reducing lock contention.
Specialized cache providing fine-grained control over data locality and eviction policies.
Dynamic tuning capabilities ensure peak performance with minimal manual configuration.
Enables real-time data streaming and integration with other systems for event-driven architectures.
Deploy a ScyllaDB cluster using Docker or Kubernetes.
Configure the ScyllaDB Manager for cluster management and monitoring.
Choose a client driver (e.g., Python, Java, Go) and install necessary dependencies.
Define your data model and create tables using CQL (Cassandra Query Language).
Connect to the ScyllaDB cluster using the chosen driver and execute basic CRUD operations.
Implement data ingestion pipelines using tools like Apache Kafka or Apache Spark.
Monitor cluster performance using ScyllaDB Monitoring and Grafana.
All Set
Ready to go
Verified feedback from other users.
"ScyllaDB is praised for its exceptional performance, scalability, and cost-effectiveness, especially for demanding workloads."
Post questions, share tips, and help other users.

The search foundation for multimodal AI and RAG applications.

The streaming database for real-time analytics with incremental SQL updates.

Real-time analytics at scale powered by Apache Druid for sub-second, high-concurrency queries.