Operations | Monitoring | ITSM | DevOps | Cloud

The latest News and Information on Containers, Kubernetes, Docker and related technologies.

Key ECS metrics to monitor

Amazon Elastic Container Service (ECS) is an orchestration service for Docker containers running within the Amazon Web Services (AWS) cloud. You can declare the components of a container-based infrastructure, and ECS will deploy, maintain, and remove those components automatically. The resulting ECS cluster lends itself to a microservice architecture where containers are scaled and scheduled based on need.

Tools for ECS monitoring

In Part 1, we introduced a number of key metrics that you can use for ECS monitoring. Monitoring ECS involves paying attention to two levels of abstraction: the status of your services, tasks, and containers, as well as the resource use from the underlying compute and storage infrastructure, monitored per EC2 host or Docker container. In this post, we’ll survey some techniques you can use to monitor both levels of your ECS deployment.

Monitoring ECS with Datadog

As we explained in Part 1, it’s important to monitor task status and resource use at the level of ECS constructs like clusters and services, while also paying attention to what’s taking place within each host or container. In this post, we’ll show you how Datadog can help you: Automatically collect metrics from every layer of your ECS deployment, Track data from your ECS cluster, plus its hosts and running services in dashboards, and more.

How to Monitor GKE with LogicMonitor

Google Kubernetes Engine (GKE) is a managed Kubernetes service that makes it possible to run Kubernetes clusters without managing the underlying infrastructure. With GKE, DevOps teams can scale and deploy applications faster with Kubernetes, while spending less time on cluster maintenance and configuration. Obtaining enough insight into GKE is key to proactively preventing downtime and maximizing application performance.

Deploying a Kubernetes Cluster with Amazon EKS

There’s no denying it — Kubernetes has become the de-facto industry standard for container orchestration. In 2018, AWS, Oracle, Microsoft, VMware and Pivotal all joined the CNCF as part of jumping on the Kubernetes bandwagon. This adoption by enterprise giants is coupled by a meteoric rise in usage and popularity. Yet despite all of this, the simple truth is that Kubernetes is hard.

How Enterprise Kubernetes Benefits from Multi-Cluster Apps

There is a lot to love about Kubernetes. It offers one of the best ways to deploy and run applications on a large pool of resources. With its easy-to-use UI and out-of-the-box capabilities like RBAC, monitoring, auditing, logging, and more, Rancher makes it easy to stand up and manage enterprise grade Kubernetes. Using Rancher, IT Operators can point to their cloud provider (AWS, GCP, Azure, etc.) or datacenter and create a cluster with just a few clicks.

February 2019 Online Meetup: Multi Cluster Applications, Global DNS, and Multi Tenant Catalogs

Rancher 2.2 focuses on day two operations for Kubernetes, the ongoing management tasks that secure clusters, reduce downtime, and keep applications secure. For edge deployments and businesses that run multi-tenant clusters or multiple installations of the same application, Rancher 2.2 Preview 2 introduces features that lighten the workload of operations team, helping to eliminate redundant work and human error. It includes tools for increasing the availability of multi-cluster applications and new options for configuring application catalogs at the cluster and project levels.

New Tigera Secure Enterprise 2.3 Anomaly Detection Deepens Visibility into Suspicious Kubernetes Activities

Tigera is excited to announce several new capabilities with Tigera Secure Enterprise Edition 2.3, extending the ability to uncover sophisticated Kubernetes attacks. Tigera Anomaly Detection capabilities provide insight into unusual behaviors that compromise the security and performance of Kubernetes environments.