The Implementing Cisco Data Center AI Infrastructure (DCAI) course is designed to equip professionals with the skills to support, secure, and optimize AI workloads within modern data center environments.
This comprehensive program delves into the unique characteristics of AI/ML applications, their influence on infrastructure design, and best practices for automated provisioning. Participants will gain in-depth knowledge of security considerations for AI deployments and master day-2 operations, including monitoring and advanced troubleshooting techniques such as log correlation and telemetry analysis. Through hands-on experience, including practical application with tools like Splunk, learners will be prepared to efficiently monitor, diagnose, and resolve issues in AI/ML-enabled data centers, ensuring optimal uptime and performance for critical organizational workloads.
This training prepares you for the 300-640 DCAI v1.0 exam. If passed, you earn the Cisco Certified Specialist - Data Center AI Infrastructure certification and satisfy the concentration exam requirement for the Cisco Certified Network Professional (CCNP) Data Center certification.
This training is worth 38 Continuing Education (CE) Credits.
Fundamentals of Al
Generative Al
Al Use Cases
Al-ML Clusters and Models
Al Toolset-Jupyter Notebook
Al Infrastructure
Al Workloads Placement and Interoperability
Al Policies
Al Sustainability
Al Infrastructure Design
Key Network Challenges and Requirements for Al Workloads
Al Transport
Connectivity Models
Al Network
Architecture Migration to AI/ML Network
Application-Level Protocols
High-Throughput Converged Fabrics
Building Lossless Fabrics
Congestion Visibility
Data Preparation for Al
AI/ML Workload Data Performance
Al-Enabling Hardware
Compute Resources
Compute Resource Solutions
Virtual Resources
Storage Resources
Setting Up Al Cluster
Deploy and Use Open Source GPT Models for RAG
Al Infrastructure Operations and Monitoring
Troubleshooting Al Infrastructure
Troubleshoot Common Issues in AI/ML Fabric
After completing this course you should be able to:
Attendees should have the following skills and knowledge:
Anyone looking to:
Acquire comprehensive skills to support, secure, and optimize AI workloads within modern data center environments
Understand the design, implementation, and advanced troubleshooting of AI infrastructure, including network challenges and specialized hardware
Gain in-depth knowledge of AI/ML concepts, generative AI, and their practical application in network management and automation
Apply hands-on techniques for monitoring, diagnosing, and resolving issues,leveragingtools like Splunk and utilizing AI for enhanced productivity in network operations
Prepare for the 300-640 DCAI v1.0 exam
COURSE CONTENT: • Overview and Master Data • Explain the Procure to Pay solution capabilities • Describe the Business Partner approach • List changes for the Material Master •…
COURSE CONTENT: 1. The principles of Cloud computing • The concept of Cloud computing • The development of Cloud computing • Cloud computing architecture • Advantages and disadvantages of…
COURSE CONTENT: Describing the Data Center Network Architectures • Cisco Data Center Architecture Overview • Three-Tier Network: Core, Aggregation, and Access • Spine-and-Leaf Network • Storage Area Networks •…
We use cookies to improve your experience, including essential cookies required for the website to function. By continuing, you agree to our use of cookies. Learn more.