Thursday, April 3, 2025

Hazelcast Adds Vector Search, Unveils Core Architecture for AI Integration

Related stories

Amazon simplifies access to Amazon Nova Gen AI models

Work with our foundation models on nova.amazon.com and access...

GE HealthCare & FPT Expand AI Healthcare Partnership

Global IT firm FPT and GE HealthCare announced a...

121G Launches HealthCoach, an AI Chronic Care Platform

121G Consulting proudly announces the release of its AI-based...

Covera Health Unveils ‘Protect Her™’ for Early Detection

New AI-powered platform leverages routine imaging to identify hidden...

Gayle deDie Named Cavallo’s SVP of Marketing

Cavallo, the leader in AI-powered Profit Maximization, announced Gayle...
spot_imgspot_img

Hazelcast Platform 5.5 delivers advanced query, compute capabilities to power AI and mission-critical applications

Hazelcast, Inc. is announcing the introduction of vector search in the latest release of its flagship product, Hazelcast Platform. The platform delivers a core architecture that combines distributed compute, in-memory data storage, intelligent integration and vector search, all of which are key requirements for enterprise AI and critical applications.

The introduction of vector search in Hazelcast Platform enables enterprises to deploy a high-performance pipeline to query structured and unstructured data. It offers the flexibility to generate vector data structures and embeddings from text plot summaries, delivering new efficiencies for data scientists to provide data insights.

“The integration of vector search in Hazelcast Platform provides the core functionality and foundation upon which developers can modernize business-critical applications and innovate for the AI era,” said Adrian Soars, CTO of Hazelcast. “This latest release furthers Hazelcast’s mission to simplify technology stacks and reduce total cost of ownership, enabling technology leaders to shift budget to AI initiatives and innovation.”

In addition to unifying multiple components in a single solution, Hazelcast Platform provides significant performance gains over most competitors, especially when factoring in vector embeddings and retrievals. In internal benchmark tests of 1 million OpenAI angular vectors, Hazelcast Platform outperforms competitors, consistently delivering single-digit millisecond latency when uploading, indexing and searching vectors with 98% precision.

Also Read: Shaped.ai Raises Series A, Launches Self-Serve Platform to Power the Future of AI-Driven Recommendations & Search

While applicable to all industries, vector search can immediately benefit transaction authorization applications. For example, in financial use cases such as know-your-customer (KYC) and anti-money laundering (AML), vector search can augment and expedite the verification process with semantic search across text, imagery and other sources to improve the accuracy and speed of determining whether a transaction is legitimate or fraudulent.

Advancements in compute, resilience and continuity

In addition to vector search, Hazelcast Platform continues to advance its capabilities, which provide greater flexibility, resilience and performance for enterprise applications.

  • Jet Job Placement Control enables customers to separate the compute functionality of Hazelcast Platform nodes from the data store component to provide further flexibility and resilience for compute-intensive workloads.
  • Client Multi-Member Routing improves resilience, performance and control for applications connecting to geographically dispersed clusters.

Source: PRNewswire

Subscribe

- Never miss a story with notifications


    Latest stories

    spot_img