Harness Extends Continuous Delivery to AIOps, Giving Developers Total Operational Control of Production Apps

New 24×7 Service Guard Capability Uses Machine Learning to Continuously Verify & Rollback Application Code Changes

SAN FRANCISCO, Dec. 13, 2018 /PRNewswire/ — Harness, the industry’s first Continuous Delivery-as-a-Service platform, today announced the release of 24×7 Service Guard, a new machine learning-based capability that empowers and protects developers who practice Continuous Delivery.

With 24×7 Service Guard, engineering teams now have the equivalent of a dedicated bodyguard to watch all production services and observe the end user experience across all APM, monitoring, and log tools. When a service is impacted, 24×7 Service Guard can proactively roll back code changes automatically — the equivalent of a “safety net” for production applications. Developers now gain total operational visibility into how their services run in production indefinitely, not just an hour or two after its production release; it also equips developers with the ability to automate application health checks and rollback.

Customers like Build.com, a leading eCommerce site have already seen dramatic results using Harness 24×7 Service Guard.

“In our first month, Harness automatically rolled back our production application in 32 seconds when it discovered null pointers were being thrown by one of our critical production services,” said Ed Rose, Sr. Director Engineering at Build.com. “A typical rollback in the past could easily have taken our team 30 minutes, but with Harness our engineering teams now have a safety net in seconds.”

24/7 Service Guard currently supports:

  • Traditional and cloud-native apps including Docker, Kubernetes, Helm and Lambda
  • AppDynamics, New Relic, Dynatrace, Datadog and Prometheus for APM
  • Splunk, Elastic and Sumo Logic for logs

Harness initially released its Continuous Verification in late 2017, which gave developers and DevOps teams the ability to auto-verify production deployments using AI and unsupervised machine learning. Instead of many engineers spending hours to manually verify deployments, it now takes a single engineer minutes.

“The release of 24×7 Service Guard is about responding to what customers told us about their own engineering strategy. They loved our Continuous Verification, and the ability to instantly understand the quality of an artifact released into production, but they wanted us to push our machine learning farther than that,” said Jyoti Bansal, Harness’ co-founder & CEO. “They wanted to give their developers complete power over production applications, including the ability to operationalize those applications and automate rollbacks if needed. With 24×7 Service Guard, we’ve combined Continuous Delivery and AIOps into a single, easy-to-use platform that democratizes the power of deployments for the entire engineering team.”

For example, if a microservice is deployed at 9 p.m. but doesn’t indicate a performance problem until 9 a.m. the next day, the Harness Service Guard protects the microservice —  and the developer who created it —  by automatically restoring the service back to its previous working version. In doing so, developers, gain the power of not only deploying their own code into production but also verifying health checks and automating rollbacks on a 24×7 basis.

Harness Continuous Verification is based on several unsupervised machine learning algorithms that have been tweaked to process modern operational data from today’s APM and Log Analytics tools such as AppDynamics, New Relic, Splunk and Elastic. These algorithms include KMeans clustering, entropy, Symbolic Aggregate Representation (SAX), and Hidden Markov Models, as well as applying several neural nets to reduce false positives.

Harness’ mission is to make the practice of continuous delivery accessible to every business, empowering engineering teams to move fast and ship code without the fear of failed deployments. With its Smart Automation technology, Harness provides the first-ever solution to automate the entire continuous delivery process. By applying unsupervised machine learning to the process — a new technology called Continuous Verification — the platform understands a microservices baseline and can initiate automatic rollbacks when irregular activity is detected, avoiding business downtime or widespread failures. To date, Harness has reduced deployment time from many weeks to a few hours, and has reduced errors by nearly 99 percent.

About Harness

Based in San Francisco, Harness is the industry’s first Continuous Delivery-as-a-Service platform designed to provide a simple, safe and secure way for engineering and DevOps teams to release applications into production. Harness uses machine learning to detect the quality of deployments and automatically roll back failed ones, saving time and reducing the need for custom scripting and manual oversight. Harness was started and launched by Jyoti Bansal’s BIG Labs, and is backed by top-tier venture capital firm Menlo Ventures; customers include NCR, Soulcycle, Jobvite, OpenBank (part of Santander), Build.com, McAfee, and New York Life. Follow us on Twitter and try for free at harness.io.