On-premise DCIM tools can proactively identify potential physical infrastructure problems and predict how they might impact specific IT loads by correlating power, cooling and space resources to individual servers. Through model-based simulation, these tools simplify complex issues such as capacity planning and server placement. Simulation programs factor in variables such as power utilization, heat dispersion, and network access. Questions such as, “What would be the impact if I move that server?” or “What would happen if this component were to fail?” are answered. In the case of a loss of cooling capacity, for example, simulations can answer the question of what happens if the data center temperature rises past a given threshold.
These modern DCIM tools help to achieve three key benefits:
- Improved system uptime
- Lower energy consumption
- The agility needed to manage constant capacity changes and dynamic loads
In addition to on-premise tools, a new class of “cloud-based DCIM” or “Infrastructure Management as a Service” (IMaaS) tools are gaining prominence. These new tools monitor, gather data and perform analysis so that data center administrators can understand, at a component level, how their data center is operating. One example of these tools is an offering from Schneider Electric called StruxureOn. The tool collects physical infrastructure raw machine data on a continuous basis. As a cloud-based data center monitoring solution, it looks for patterns and detects anomalies and can draw conclusions regarding future equipment behavior.
Access to more (lots more) performance data is the new critical success factor
It is now possible for any data center, whether colo, on-premise, or cloud, to capture performance data on a daily basis. The potential also exists to benchmark that data against similar outside data centers.
Past efforts at tracking this data, and benchmarking it have been both limited and cost prohibitive. However, IMaaS tools can provide much larger scale data collection. By leveraging performance data from a larger quantity of data centers, owners and operators will be able to make more informed decisions regarding which parts of their data center need improvement.
How might such a benchmarking system be deployed? A third party could gather the data from multiple data centers and then utilize that data to provide anonymous benchmarking information. That information would then help participating data center owners to gain access to more precise, field tested physical infrastructure performance data.
The current and future benefit of big data and predictive simulation
Both on-premise DCIM simulation tools and IMaaS tools improve IT room allocation of power and cooling, provide predictive impact analysis of various IT room components, and leverage historical data to improve future IT room performance.
One benefit of incorporating both on-premise DCIM and IMaaS is the possibility of performing predictive maintenance. The ability to say “all the signs tell us that this UPS will fail within the next 3 months so I’m going to do something about it now” saves money through reduced downtime.
To learn more about the benefits of both on-premise and cloud-based data center monitoring tools, download APC by Schneider Electric White Paper 107, “How Data Center Physical Infrastructure Management Software Improves Planning and Cuts Operational Costs” or visit the StruxureOn web page.
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