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AI in Platform Engineering

  • Integrate AI into platform engineering to automate, optimize, and scale modern development workflows.
Why become a Platform Engineering Certified Professional?

Platform engineering is the key to unlocking AI at enterprise scale. This course teaches you to supercharge your entire SDLC with AI-native capabilities, like automating and streamlining everything from initial builds to complex ops and compliance. Finally, you’ll learn to architect "platforms for AI," future-proofing your skill set for the next era of platform engineering.

What's included in this course?
  • Instruction from leading industry experts
  • Practical skills through exercises and real-world examples
  • Community to connect with other platform engineers and share experiences
  • Certification to validate your knowledge
  • Career advancement to open doors to new job opportunities and higher salaries

60% report salary growth or promotion within 6 months after getting certified

Course Structure

Platform engineering now enables enterprise AI. This course teaches you to apply AI-native capabilities to supercharge the SDLC, streamlining everything from builds to complex operations and compliance. You will also learn to design “platforms for AI” infrastructure, preparing you for the next evolution of the platform engineering role. The course is delivered instructor-led, live, and on-demand, offering flexibility while maintaining deep, interactive learning.

Module 1: Iteratively Delivering Platform Value with MVPs

  • The Minimum Viable Platform (MVP) framework
  • Know your stakeholders
  • How to define your outcomes

Key Takeaways: Learn how to define and deliver an MVP tailored to your organization’s needs, prioritize features, and align outcomes with stakeholders.

Module 1: The Dawn of AI-Native Platform Engineering

  • Navigate the trust paradox to align AI adoption with user trust
  • Differentiate between AI-enhanced platforms and platforms built for AI workloads
  • Shift from manual configuration to AI orchestration and governance

Key Takeaways: Understand how platform engineering is evolving into AI-native systems that balance automation, governance, and trust.

Module 2: Platforming Fundamentals and AI as an Accelerator

  • AI principles in platform engineering and self-service adoption
  • AI as an interface vs capability across Internal Developer Platform layers
  • Evolution of DevOps into autonomous, AI-native environments

Key Takeaways: Learn how AI acts as both an interface and an embedded capability to transform internal developer platforms.

Module 3: Transforming Planning and Code Authoring

  • AI as the primary interface for intent-to-action workflows
  • Use AI agents to convert requirements into technical specifications
  • Transition from coding assistants to agentic coding
  • Orchestrate multi-agent workflows for autonomous software reviews

Key Takeaways: Move beyond AI-assisted coding into orchestrated, agent-driven development workflows.

Module 4: Building Intelligent and Adaptive Delivery Flows

  • Enable advanced AI delivery using graph-based backends
  • Shift from pass/fail testing to predict and heal systems
  • Enable intent-based releases using natural language and failure prediction

Key Takeaways: Design delivery systems that are predictive, adaptive, and capable of self-healing.

Module 5: Resilience and Control – Managing Day 2 Operations

  • Enable conversational observability for wider access
  • Shift from dashboard monitoring to AI-driven insights
  • Implement continuous, automated security and compliance

Key Takeaways: Transition operations from reactive monitoring to AI-driven, continuously governed systems.

Module 6: Platforms for AI and ML Workloads

  • Understand requirements of data and ML engineers as platform users
  • Balance compute needs for training vs inference
  • Manage GPU and TPU resources within container orchestration

Key Takeaways: Design infrastructure that meets the performance, scalability, and cost demands of AI workloads.

Module 7: Reference Architectures for AI and Data with Compliance Focus

  • Define blueprints for modern AI and data platforms
  • Secure AI supply chains with model provenance and data privacy
  • Monitor model drift and manage compute and token costs

Key Takeaways: Build compliant, cost-aware AI platforms with strong governance and operational visibility.

Module 8: The Future of Platform Engineering Roles

  • Transition from infrastructure operator to digital workforce architect
  • Measure AI impact using velocity and DORA metrics
  • Ensure ethical AI through human-in-the-loop design

Key Takeaways: Redefine the platform engineering role for an AI-native future focused on orchestration, measurement, and ethical oversight.

Training Details

Course duration

16 Hours (across 8 weeks)

Certifing Body

Platform Engineering

Training Options

Online instructor led

On demand

Self paced

Meet your Instructor : Mallory Haigh

  • Course instructor and Platform Engineering SME
  • Full-stack engineer by background (LAMP stack veteran + PHP lifer)
  • Also experienced in: Engineering management, customer success, product development
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