Load data from REST API to Redshift in a few clicks
Focus on your business, not on getting your REST API data into Redshift. Build scalable, production-ready data pipelines and workflows in hours, not days.
REST API to Redshift Data Pipelines Made Easy
Your unified solution for building data pipelines and orchestrating workflows at scale.
REST API & 190+ Other Data Connectors, Fully Managed For You
Connect easily to REST API with 100% compatibility, regular API updates, and a wide range of other pre-built data connectors out of the box.
We've Got Your Back
Ask us anything. We have the best customer support in the industry, staffed with data experts who are ready to help solve your data challenges.
Start analyzing your REST API data in minutes with Rivery
About REST API
REST stands for Representational State Transfer. It relies on a stateless, client-server, cacheable communications protocol, and in virtually all cases, the HTTP protocol is used. REST is an architecture style for designing networked applications.
Amazon Redshift is a fast, fully managed data warehouse to analyze data using standard SQL and Business Intelligence (BI) tools. It enables companies to run complex analytic queries against petabytes of structured data (ETL to Redshift or ETL from Redshift), using sophisticated query optimization, columnar storage on high-performance local disks, and massively parallel query execution.
Rivery's SaaS platform provides a unified solution for ingestion, transformation, orchestration, and data operations.
“We saved several $100K we could have spent on development and maintenance. Within a few hours, you can build a production-ready, scalable ETL system.”
Gal Bar, Founder and CEO
“We solved some of our most complex data challenges with Rivery. The ability to create a unified data pipeline that is always up-to-date has been a game changer.”
Tali Stern, Director of Business Intelligence
“Rivery has more than delivered on the value proposition I sold my leadership on. Rather than hiring two more developers, I’ve been able to build all these pipelines on my own.”
Sean Lucas, Head of Data Engineering
"A reporting process that once required back-and-forth between different teams is now executed ad-hoc by team leads in minutes, cutting time to execution in half."
Jean Huang, Analytics Manager