Densify brings Machine Learning to automated optimisation of containers

Densify is launching machine learning capabilities that will automatically optimise use of containers. This technology will enable companies to be more efficient, limit wasted cloud spend, improve application uptime and scalability, and reduce performance risk. With Densify, organisations can ensure their containers are being deployed to their full potential.

  • 5 years ago Posted in

Using machine learning, Densify can predict the utilisation pattern of containerised applications and provide recommendations for the optimal resource requests and limits. This allows cloud operations teams to understand if their containerised applications are running in an optimal manner: If they are starved for resources, are they subject to performance risks? If they have over-allocated resources, could they be made more efficient?

Densify’s machine learning capabilities will provide visibility into what’s running, what resources are being allocated, and the true utilisation of an organisation’s Kubernetes environment at a cluster, namespace, and container level. The product will also provide individual container details, including historical utilisation patterns. This ensures the cloud operations team has a grip on their environment and can communicate what’s going on to their business partners and executive team.

“Use of containers is growing rapidly, with 80% of organisations actively deploying containers or planning to in the near future,” said Gerry Smith, CEO, Densify. “And yet, far too many companies are blindly tackling containers without fully understanding the impact on application health. With our new advanced machine learning capabilities, Densify customers can optimise their containers to maintain application performance, reduce risk, with the lowest possible spend.”

Densify’s fully automatable recommendations will be accessible via API and have available integrations with infrastructure as code frameworks, such as Terraform, CloudFormations, and Ansible. Automation Engineers can easily deliver optimally sized containerised applications for their business, avoiding application performance risks by proactively ensuring that resources are being appropriately allocated. In addition, Densify helps optimise cluster resources by ensuring that containers are not causing waste due to over-allocation of unnecessary resources. This allows companies to do more with their currently purchased infrastructure or reduce costs by reducing their cloud infrastructure footprint.

Finally, customers can easily integrate with existing DevOps processes by using Densify’s Optimisation as Code framework to deliver Continuous Integration, Continuous Delivery, and Continuous Optimisation (CI/CD/CO) to the DevOps toolchain.

Beacon, NY, Dec 20, 2024– DocuWare unveils its AI-powered Intelligent Document Processing...
85% of IT decision makers surveyed reported progress in their companies’ 2024 AI strategy, with...
Lopitaux joins as global companies embrace GenAI solutions at scale and look to build their own...
Predictive maintenance and forecasting for security and failures will be a growing area for MSPs...
NVIDIA continues to dominate the AI hardware market: powering over 2x the enterprise AI deployments...
Hitachi Vantara survey finds data demands to triple by 2026, highlighting critical role of data...
81% of enterprises plan to increase investments in AI-powered IT operations to accelerate...
Hitachi Vantara survey finds data demands to triple by 2026, highlighting critical role of data...