Credit: simonbradfield In this final segment of our ongoing series about right-sizing public cloud instances for optimal performance and cost efficiency, we are focusing on a common source of cloud overspending: deadwood. Idle or “zombie” instances plague many public cloud environments, insidiously wasting your opex budget dollars. This deadwood can occur without you even realizing it, and is often the result of hasty deployments or a lack of accountability in the cloud world. Someone in the organization lights up an instance for a short-term use and then forgets to shut it down. Workloads change over time and no one goes back to eliminate the now idle instances. The fact is, most organizations don’t have an effective process for managing cloud instances and identifying idle instances. Given the complexity of invoicing from these providers and the lack of visibility into workload patterns, it is often hard to really know what is truly idle. Over time, the deadwood piles up. Eliminating idle instances may seem like a no-brainer, but there is a potential risk. What if the instance is idle 90% of the time but then lights up for a short amount of time to handle a weekly, monthly, or quarterly workload, such as batch processing? Eliminating that instance could spell disaster — especially if it’s part of a mission-critical application. SUBSCRIBE TO OUR NEWSLETTER From our editors straight to your inbox Get started by entering your email address below. Please enter a valid email address Subscribe To avoid that risk, you need to look at the workload pattern across a full business cycle, using sufficient history to erase any doubt. Consider the example below. Looking at a 24-hour period, you could conclude that you’ve identified a deadwood instance. Pull the plug, right? Densify Not so fast. Analyzing several weeks of workload activity paints a very different picture (see figure below). This workload is idle most of the time, but its activity peaks once a week, and this could be an important business process. So you may want to do some right-sizing, or consider scheduling the instance on and off, but it is clearly not deadwood. Densify Identifying the true deadwood requires sophisticated analytics that examine workload patterns across a full business cycle—and look at all utilization factors, including CPU, I/O and memory. With this insight, you can make confident decisions about what instances can be terminated safely to save money, and which ones are better candidates for downsizing and/or modernizing for optimal efficiency. In the example below, we’ve identified five instances of deadwood that can be terminated, saving more than $850 a month, or more than $10,000 a year. Densify With the right analytics and true visibility of workload patterns, you can finally make confident decisions about what workloads should stay and which should go. This insight helps you establish a process for regularly reviewing your cloud instances to ensure you are making the best use of every opex dollar. Densify is a predictive analytics service used by leading organizations and service providers to reduce cost and performance risk for public cloud and on-premise, virtual infrastructure in real time. To learn more visit, www.densify.com. Related content brandpost Relational Database Services – Not Quite as Simple as They Seem Moving database operations to the cloud can deliver many benefits, but database services may be opaque, and can vary in size and type by region. By Dwight Davis Jan 31, 2018 3 mins Cloud Computing brandpost Standard or Custom Cloud Instances? How to Decide? Building customized cloud environments for your applications may make sense -- but only if you can easily weigh the benefits versus the costs. By Dwight Davis Jan 29, 2018 3 mins Cloud Computing brandpost Why Saving 30% on Your Cloud Deployments May Be a Bad Deal Attempting to cut cloud costs only by analyzing services bills can leave significant savings on the table. By Dwight Davis Jan 24, 2018 3 mins Cloud Computing brandpost Don’t Have Reservations About Your Reserved Instances Although reserving capacity intelligently can dramatically cut costs, locking in the wrong type or number of cloud instances can prove to be a confining money pit.rn By Dwight Davis Jan 23, 2018 2 mins Cloud Computing Podcasts Videos Resources Events SUBSCRIBE TO OUR NEWSLETTER From our editors straight to your inbox Get started by entering your email address below. Please enter a valid email address Subscribe