As artificial intelligence (AI) transitions from research labs to enterprise environments, it is imperative to recognize that the infrastructure required for AI and machine learning (ML) workloads diverges significantly from traditional applications. This unique infrastructure necessitates:
- Immense computational power: AI workloads rely heavily on specialized accelerators such as GPUs that enable parallel processing capabilities far exceeding standard CPUs.
- Ultra-fast, low-latency networking: Efficient networking is crucial for connecting large clusters of accelerators during distributed training, as any network bottleneck can jeopardize multi-million dollar AI projects.
- Sophisticated orchestration: Effective management and scheduling of complex tasks across a pool of specialized hardware are essential to maximize utilization and efficiency.
This shift has sparked an unprecedented demand for technical professionals skilled in designing, deploying, and managing these specialized data center environments. In response, Cisco has unveiled a new AI certification aimed at validating the essential skills required to thrive in this evolving landscape. The Implementing Cisco Data Center AI Infrastructure (DCAI) certification serves as a pathway for architects and engineers crucial to building the backbone of AI technologies.
Overview of the DCAI Certification
The DCAI certification is specifically tailored for the technical infrastructure community, including IT and network engineers, solutions architects, and technical leads who are at the forefront of the AI revolution. This certification emphasizes the critical skill sets necessary for constructing, deploying, and operating robust, scalable infrastructures that support AI solutions.
To prepare for the certification exam, candidates should complete two designated Learning Paths that provide structured knowledge and hands-on experience, essential for passing the DCAI certification exam.
See also
Google DeepMind Launches AI Research Lab in Singapore to Drive Regional InnovationCore Skills Acquired Through DCAI
Upon completing the Learning Paths associated with the DCAI certification, participants will gain practical expertise in several crucial areas related to AI infrastructure:
- Designing AI/ML compute clusters: Understanding the components and use cases of AI/ML compute clusters, along with developing and optimizing AI models for enhanced performance.
- Implementing high-performance networks: Recognizing the key characteristics of networks suitable for AI workloads, including bandwidth, latency, and resiliency, while maintaining visibility with advanced tools such as Cisco Nexus Dashboard Insights.
- Mastering AI hardware and compute resources: Familiarity with essential AI/ML hardware (CPUs, GPUs, DPUs, SmartNICs, and Cisco UCS), as well as GPU sharing technologies like MIG and vGPU.
- Developing multicloud and workload mobility strategies: Evaluating effective multicloud strategies for AI while minimizing the risks of vendor lock-in.
- Integrating Green AI and cost optimization: Applying principles of Green AI and optimizing costs throughout the AI lifecycle, leveraging AI accelerators alongside efficient power and cooling solutions.
- Applying AIOps principles: Utilizing advanced incident detection, predictive analytics, root-cause analysis, and automation to enhance operational excellence in AI environments.
Preparing for the Future of AI Infrastructure
The DCAI certification underscores Cisco‘s commitment to empowering the engineers and architects shaping an AI-driven future. This certification presents a prime opportunity for professionals to transition from theoretical knowledge to practical skills, enabling them to lead in this dynamic field.
Get ready for DCAI certification
Testing for the 300-640 DCAI certification exam begins February 9, 2026.
Download exam topics
Join the Cisco Learning Network today for free.
Learn with Cisco: Follow us on X | Threads | Facebook | LinkedIn | Instagram | YouTube
Use #CiscoU and #CiscoCert to join the conversation.


















































