Analyst Report Gartner Magic Quadrant for Workload Automation

Gartner, Inc. Analyst Report. First Published February 2012

gartner_magic_quadrant_wla

Free Analyst Report Download

The workload automation market has rapidly evolved from the job-scheduling arena. Self-service capabilities, policy-driven workload management, predictive functionality, business impact analysis, and support for mobile devices and automation platforms are some areas of vendor differentiation. Stonebranch was named the only Visionary in Gartner Magic Quadrant for Workload Automation report. Vendors in the Visionary quadrant are innovators that excel with highly differentiated solutions, introducing a radical new approach to the market.

This Gartner report will provide you with:

  • The overall market rating, evaluation, and vendor analysis of Workload Automation vendors.
  • How to short list vendors based on your organization's requirements
  • A better understanding of what Workload Automation is all about

Further Reading

Stonebranch Online 2021 - Week 3 Highlights

Stonebranch Online 2021: Week 3 Highlights

Week three of Stonebranch Online 2021. A recap of Stonebranch Online, including customer success stories from BP and Makedonski Telecom.

Header card EMA Analyst Report for Workload Automation Q4-2021

EMA Radar™ for Workload Automation (WLA) Q4:2021. Report Summary and Profile

EMA Workload Automation (WLA) Radar Report Q4:2021 - Focusing on digital transformation, DevOps, and the latest trends in the WLA and Job Scheduling space

Stonebranch Online 2021 - Week 2 Highlights

Stonebranch Online 2021: Week 2 Highlights

Week two of Stonebranch Online 2021 offered two webinars: one on orchestrating data pipelines and the other on multi-cloud environments. Both sessions featured…

Using DataOps Methodologies to Orchestrate Your Data Pipelines Header purple

Eckerson Group: Using DataOps Methodologies to Orchestrate Your Data Pipelines

Learn about emerging DataOps methodologies to develop and deploy end-to-end data flows that orchestrate your big data pipelines.