Hybrid AI Deployment: Docker, Cloud, and Edge Integration Training Course
Hybrid AI deployment involves executing AI inference across cloud, on-premises, and edge environments using unified, container-based workflows.
This instructor-led, live training session (available online or onsite) is designed for advanced professionals aiming to design and deploy distributed AI inference systems across heterogeneous environments.
Upon completing this training, participants will be able to:
- Construct secure and scalable containerised AI services for multi-site environments.
- Deploy AI inference workloads to cloud platforms, local servers, and edge devices using Docker.
- Integrate orchestration tools to automate distributed AI operations.
- Optimise inference latency, reliability, and resilience across diverse infrastructure.
Course Format
- Guided presentations and expert-led discussions.
- Extensive hands-on practice and applied exercises.
- Real-world experimentation within a controlled live-lab environment.
Course Customisation Options
- For tailored adjustments to align this course with your organisation’s infrastructure or specific use cases, please contact us to customise the training.
Course Outline
Foundations of Hybrid AI Deployment
- Understanding hybrid, cloud, and edge deployment models
- AI workload characteristics and infrastructure constraints
- Choosing the right deployment topology
Containerising AI Workloads with Docker
- Building GPU and CPU inference containers
- Managing secure images and registries
- Implementing reproducible environments for AI
Deploying AI Services to Cloud Environments
- Running inference on AWS, Azure, and GCP via Docker
- Provisioning cloud compute for model serving
- Securing cloud-based AI endpoints
Edge and On-Prem Deployment Techniques
- Running AI on IoT devices, gateways, and microservers
- Lightweight runtimes for edge environments
- Managing intermittent connectivity and local persistence
Hybrid Networking and Secure Connectivity
- Secure tunneling between edge and cloud
- Certificates, secrets, and token-based access
- Performance tuning for low-latency inference
Orchestrating Distributed AI Deployments
- Using K3s, K8s, or lightweight orchestration for hybrid setups
- Service discovery and workload scheduling
- Automating multi-location rollout strategies
Monitoring and Observability Across Environments
- Tracking inference performance across locations
- Centralised logging for hybrid AI systems
- Failure detection and automated recovery
Scaling and Optimising Hybrid AI Systems
- Scaling edge clusters and cloud nodes
- Optimising bandwidth usage and caching
- Balancing compute loads between cloud and edge
Summary and Next Steps
Requirements
- An understanding of containerisation concepts
- Experience with Linux command-line operations
- Familiarity with AI model deployment workflows
Audience
- Infrastructure architects
- Site Reliability Engineers (SREs)
- Edge and IoT developers
Need help picking the right course?
southafrica@nobleprog.co.za or +27 (0)10 005 5793
Hybrid AI Deployment: Docker, Cloud, and Edge Integration Training Course - Enquiry
Testimonials (1)
The training met expectations with its clear explanations, real-world examples, and hands-on labs that made complex topics easy to understand. It provided valuable insights into container orchestration, security, scaling and many other advanced topics.
Anna Wyszomirska-Szmyd - Akamai
Course - Docker and Kubernetes advanced
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