Hazelcast vs GridGain In-Memory Data Fabric

Compare features, pricing, and capabilities to find which solution is best for your needs.

Hazelcast icon

Hazelcast

Hazelcast is a leading open-source distributed in-memory data grid and stream processing platform designed for high-performance, low-latency applications. It provides incredibly fast data access and processing by keeping data in RAM across a cluster of machines, enabling real-time responsiveness. by Hazelcast, Inc.

Open Source
Platforms: Mac OS X Windows Linux
VS
GridGain In-Memory Data Fabric icon

GridGain In-Memory Data Fabric

GridGain In-Memory Data Fabric is a comprehensive in-memory computing platform designed for high-performance, low-latency applications. It acts as a data and compute layer between applications and traditional databases, accelerating access and processing of vast amounts of data for real-time analytics, transactional workloads, and streaming data. by GridGain Systems, Inc

Open Source
Platforms: Windows Linux
Screenshots:

Comparison Summary

Hazelcast and GridGain In-Memory Data Fabric are both powerful solutions in their space. Hazelcast offers hazelcast is a leading open-source distributed in-memory data grid and stream processing platform designed for high-performance, low-latency applications. it provides incredibly fast data access and processing by keeping data in ram across a cluster of machines, enabling real-time responsiveness., while GridGain In-Memory Data Fabric provides gridgain in-memory data fabric is a comprehensive in-memory computing platform designed for high-performance, low-latency applications. it acts as a data and compute layer between applications and traditional databases, accelerating access and processing of vast amounts of data for real-time analytics, transactional workloads, and streaming data.. Compare their features and pricing to find the best match for your needs.

Pros & Cons Comparison

Hazelcast

Hazelcast

Analysis & Comparison

Advantages

Extremely low latency due to in-memory data storage.
Highly scalable and fault-tolerant architecture automatically handles data distribution and replication.
Integrated stream processing engine for real-time analytics and event processing.
Offers familiar distributed data structures simplifying development.
Pure Java implementation integrates well with Java ecosystems.
Flexible deployment options including cloud and containers.

Limitations

In-memory nature means data size is limited by available RAM.
Requires operational knowledge to effectively manage and tune large clusters.
Steeper learning curve initially compared to simpler caching solutions.
Persistence requires additional configuration and can introduce complexity.
GridGain In-Memory Data Fabric

GridGain In-Memory Data Fabric

Analysis & Comparison

Advantages

Extremely low data access latency due to in-memory architecture.
High scalability and availability through distributed clustering.
Provides both SQL and key-value interfaces for data access.
Integrated distributed computing engine reduces data movement.
Supports ACID transactions for data consistency.
Good integration capabilities with external data sources.

Limitations

Requires significant RAM resources.
Operational complexity inherent in managing a distributed system.
Potential for data loss if not configured for persistence and system crashes occur.
Can have a steeper learning curve compared to traditional databases for some users.

Compare with Others

Explore more comparisons and alternatives

Compare features and reviews between these alternatives.

Compare

Compare features and reviews between these alternatives.

Compare

Compare features and reviews between these alternatives.

Compare

Compare features and reviews between these alternatives.

Compare
Advertisement

Compare features and reviews between these alternatives.

Compare

Compare features and reviews between these alternatives.

Compare

Compare features and reviews between these alternatives.

Compare