
PagerDuty announced the newest PagerDuty Process Automation release within its essential infrastructure for critical work, the PagerDuty Operations Cloud solution.
These updates enable organizations to orchestrate automation across secure cloud and data center environments.
Additionally, this PagerDuty Process Automation release addresses the sprawl of IT environments in data centers and with public cloud providers that serve different applications, regions, and customers.
“Most organizations have automation operating across cloud, non-cloud, and distributed infrastructures which have some of the highest security and compliance requirements,” said Sean Scott, Chief Product Development Officer at PagerDuty. “Engineers can now rely on the PagerDuty Process Automation solution to meet these requirements while speeding up their ability to deploy changes and innovation. Users can deploy just the PagerDuty Runner in private networks, which can then interface with plugins like Docker, Kubernetes, and Ansible, to reduce IT support costs and simplify security.”
Next-generation connectivity to the PagerDuty Operations Cloud enables engineers to:
- Operate faster by enabling automated operations across cloud and data center environments
- Simplify security when operating in high-compliance and zero trust architectures
- Eliminate toil by speeding up task resolution & reducing personnel time sapped by manual work
With these updates, engineers are able to manage automation and delegate execution within hybrid environments without relying on SSH firewall rules or VPNs/jump-hosts. RunbookⓇ Automation is now able to invoke common IT infrastructure automation including Ansible, Docker, and Kubernetes in remote environments, and provide the same breadth of automation workflows available via PagerDuty Process Automation. These enhancements allow IT engineers to automate infrastructure and workflows to more quickly resolve unplanned, unstructured, time-sensitive, and high-impact issues.
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