Sign up to get access to the article
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
PR

PurpleCube AI to Replace All Legacy Data Integration

Published:
October 27, 2024
Written by:
PurpleCube AI
2 minute read

Single Platform for All Data Equals Faster Time to Value, Elevated Insight, and Accelerated Innovation

July 19, 2023 05:58 AM Eastern Daylight Time

SAN FRANCISCO--(BUSINESS WIRE)--PurpleCube AI, a modern data orchestration company, today announced the industry’s first cloud-native, unified data orchestration platform designed to replace all generations of legacy data integration, preparation, replication, engineering, messaging, and API integration platforms. Until this time, most organizations have purchased multiple purpose-built data management tools to accomplish different data tasks. Businesses can expect to orchestrate all their data processing on a single platform, gaining agility and saving time, money, and reduplication of effort.

“Our customers are tired of managing multiple platforms and moving data between tools to analyze data,” said Bharat Phadke, CEO of PurpleCube AI. “We have developed a single platform that orchestrates the entire spectrum of data engineering. Our customers are already doing more with fewer resources and innovating at a faster pace, all at an affordable price.”

Contrasting three decades of point solutions, the PurpleCube AI Cloud will include complete capabilities for data migration, data integration, data quality, data preparation, data pipelines, data warehouse automation, data lake automation, and data cataloging. Unlike tools built only for data lakes or streaming data, data engineers will be able to easily combine structured data, semi-structured data, and streaming data. Because the platform was built by engineers for engineers, it comes enterprise-ready with security, privacy, access control, multi-tenancy, and data governance. With a rich set of active metadata, the platform is ready for cost, time, and resource optimization across the entire data engineering department.

“The data engineering market is saturated with specialized, high-cost data management tools that, while powerful, tend to be underutilized due to their overwhelming capabilities causing lower adoption and diminished ROI,” said Shawn Rogers, CEO of BARC Research US. “PurpleCube AI’s comprehensive set of capabilities, combined with its affordable pricing and cloud accessibility positions them competitively in the space. Many enterprise organizations are moving toward a consolidation strategy to build more agile data management foundations.”

PurpleCube AI Cloud enables data engineers to build end-to-end data pipelines in a drag-and-drop interface, automatically generating metadata. Because the entire pipeline is in a single platform, governance and security are built in, cataloging is automatic, and workloads can be directed to the optimal platform. Ultimately, the unified data orchestration platform becomes the system of record for all data engineering and DataOps. Learn More

Check out related articles
Blogs

3 Failures of the Modern Data Science Platforms

Unified Data Orchestration gives data scientists a consistent means of data preparation, model development, and insight operationalization. With end-to-end data pipelines in a single platform, data scientists can focus more time and effort on developing, testing, and deploying models. This gives their organization a competitive advantage by speeding innovation cycles and enabling new business models at rates faster than their competitors. Check out how PurpleCube AI’s Unified Data Orchestration Platform empowers data scientists to operationalize data science insight single-handedly

October 27, 2024
5 min
Blogs

Machine Learning in ETL Pipelines

In today's data-driven world, organizations are constantly collecting and processing vast amounts of data from various sources. Extract, transform, and load (ETL) pipelines are a crucial component of this process, as they allow organizations to extract data from diverse sources, clean and transform data, and then load it into a data warehouse for analysis and reporting.

October 31, 2024
5 min

Are You Ready to Revolutionize Your Data Engineering with the Power of Gen AI?