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Transform the modern data center: From today to the future
A seismic shift is underway in the evolution of the data center, driven by a variety of converging factors. These include the accelerating transition to cloud platforms, the growth of hybrid and remote work models, and the rapid adoption of artificial intelligence (AI) and machine learning (ML) technologies across every industry.
As IT leaders, understanding the path forward is crucial. How can you ensure that modernization efforts lead to increased agility, adaptability, and a competitive edge while also prioritizing sustainability?
Simplify operational complexity
The proliferation of disparate systems across both public and private clouds has ushered in a new era of complexity, often resulting in operational challenges for organizations. Simplifying operations necessitates a paradigm shift toward embracing agility, elasticity, and cognitive capabilities. This entails rethinking architectures, particularly network architectures, to enable seamless scale-out while unlocking deeper correlations and insights into system performance and behavior.
From a visibility and observability point of view, transitioning from traditional reactive—and even proactive—approaches to a more predictive operational model is key. Observability mechanisms with minimal human intervention play a pivotal role in this transition, enabling organizations to anticipate and respond to potential issues with greater agility and foresight.
EMA Research underscores the significant impact of manual errors, such as misconfigurations, which account for 27% of network problems. To address this challenge, the integration of AI/ML-augmented automation emerges as a transformative solution, offering not only error reduction but also heightened operational efficiency and cost savings.
A key enabler in this journey toward operational excellence is the availability of low-code and no-code workflow orchestration capabilities. These tools represent a significant paradigm shift, empowering organizations to streamline and automate workflows with unprecedented ease and speed. Whether integrating cutting-edge AI capabilities trained on proprietary data or leveraging pre-built functionalities, the ability to optimize and automate workflows becomes effortless with a platform-centric approach.
Prepare for AI/ML workloads
The arrival of AI/ML workloads necessitates scalable infrastructure capable of handling massive data processing. According to the Cisco AI Readiness Index, 95% of businesses are aware of the increased workload demands, yet only 17% have networks fully prepared to handle this complexity. Scaling network and compute infrastructure is essential, alongside high-speed, low-latency connections.
Gaining insights into AI fabrics results in understanding network infrastructure health and the ability to take necessary actions. Being proactive and mitigating congestion helps prevent expensive downtime and running lossless networks. Modular design principles facilitate scalability without the need for extensive reconfigurations, contributing to sustainability efforts by minimizing e-waste.
Prioritize sustainability
In the realm of data centers, sustainability has emerged as a paramount concern, particularly in the context of the AI/ML era where energy consumption becomes an even more pressing issue. This necessitates embedding environmentally conscious practices into design decisions, encompassing the selection of energy-efficient management solutions and the integration of cutting-edge component designs aimed at minimizing energy usage.
Sustainability initiatives can be bolstered by real-time monitoring of power consumption within IT infrastructure. By gaining insights into energy usage patterns, organizations can enhance their understanding and make more informed decisions, leading to optimized planning and configuration of device and component utilization, and ultimately contributing to greater energy efficiency. Furthermore, embracing a modular approach to equipment design holds promise in advancing sustainability efforts. Modular designs extend the lifecycle of hardware and reduce waste, and they facilitate the integration of commonly used components.
Your partner in data center evolution
Looking to get started on building the data center of tomorrow? As a trusted partner, Cisco will work with you to understand your unique requirements and help implement a data center strategy to meet your business and sustainability goals faster.
Learn more about high-performance and sustainable data center solutions from Cisco.