AWS certification track
Build strong AI foundations. Understand Generative AI. Speak cloud-native AI with confidence across the AWS ecosystem.
This training is ideal for cloud engineers, architects, consultants, software engineers working with AI teams, product managers, technical trainers and professionals transitioning into AI-focused roles. No heavy math or unnecessary theory—just clear AI fundamentals explained for technical minds.
What AI means in production environments, supervised vs unsupervised learning, strengths, limitations and risks of AI systems.
ML lifecycle: data → training → inference, core concepts behind Amazon SageMaker, evaluation, performance and cost considerations.
How Generative AI and foundation models work, Amazon Bedrock and managed models, real use cases (text generation, summarisation, assistants).
Computer vision with Amazon Rekognition, NLP with Comprehend, Transcribe and Translate, choosing the right service for the right problem.
Security, compliance, data protection, bias, fairness, transparency and AWS best practices for responsible AI.
Exam structure and question patterns, typical scenarios and traps, strategies to pass the AWS Certified AI Practitioner exam with confidence.
After this certification, learners typically progress to the AWS Certified Machine Learning – Specialty, advanced AI architecture and MLOps paths, or specialised Generative AI solution design on AWS.