

Our team of experts is ready to assist you with your integration.
Mach5 Search, a cloud-native search and analytics platform, is now available on AWS Marketplace helping teams deploy scalable, cost-efficient search directly within their AWS environments. You can check the listing here.
With its AWS Marketplace listing, subscribing to Mach5 takes just a few clicks from the AWS console. This streamlines the procurement process and accelerates adoption for AWS native organizations.
To speed up implementation, pre-configured Terraform and Helm templates are included, automating infrastructure setup such as EKS clusters and VPC networking. Teams can go from subscribing to running a Mach5 Search instance in under half an hour.
Once deployed, teams and users can begin to use Mach5 Search as a foundation for running scalable and isolated workloads.
Run scalable, exactly-once append, upsert, and update workloads using ingest pipelines.
Create warehouses to run isolated query workloads against ingested data
Access dashboards, OpenSearch-compatible APIs, and a powerful pipe-based query language for exploring your data
eliminate the cost and overheard of storing data on running nodes by separating storage and compute
get consistent ingestion and query performance through workload isolation provided by warehouses and ingest pipelines
immutable storage layers and fault-tolerant components safeguard data against transient failures, misconfigurations, and security threats.
Whether the focus is observability, building a security data lake, or real-time analytics, teams can now achieve performance at scale without added operational complexity.
Go to Mach5 on AWS Marketplace and subscribe.
Deploy with the included scripts to launch your environment in 20–30 minutes.
Start ingesting and querying data using ingest pipelines and/or standard APIs
With Mach5 now on AWS Marketplace, organizations no longer have to choose between performance and cost. They can deploy a search platform built for the realities of modern data lakes directly inside their existing AWS environments.