
Level: Beginner, 12 Sessions (48 hours) – Tuition details will be shared during the free info session
- 100% coverage of the AWS AI Practitioner Exam Topics with hands-on experience
- In-class internship opportunity, with industry relevant capstone project
- Presentation skills (soft skills)
- Interview preparations and resume workshops
- Taught by former AWS Sr. Technical Account Manager & Cisco Academy Instructor
This course will enable you to demonstrate:
- Understanding of the fundamental concepts and services related to AI and ML, including their applications in real-world scenarios.
- Discovering the steps to build, train, and deploy machine learning models using AWS tools and services.
- Exploring Responsible AI practices for developing fair, transparent, and explainable AI solutions.
- Discussing the best practices for securing AI/ML workloads and ensuring compliance with AWS security standards.
Details of AWS Certified AI Practitioner Exam
- Career Advancement: This certification validates that you understand the basics of artificial intelligence. It also makes you a valuable asset in the AI-driven market of today. It leads to a number of positions, such as ML engineers, data scientists, and AI consultants.
- Increased Earning Potential: Possessing this certification place you in a better position to demand greater pay and benefits packages.
- Development of Skills: The AWS AI Practitioner (AIF-C01) covers a broad range of ML and AI concepts. Generative AI, computer vision, deep learning, machine learning algorithms, and natural language processing are part of the learnings
- Strategic Business Advantage: By comprehending AI principles, you can find opportunities and work with AI teams more successfully. Make well-informed decisions about AI adoption and implementation.
Become AI Skilled with hands-on Labs
- Fundamental concepts of AI, ML, and generative AI
- Use cases of AI, ML, and generative AI
- Design considerations for foundation models
- Model Training and fine-tuning
- Prompt engineering
- Foundation model evaluation criteria
- Responsible AI
- Security and compliance for AI systems
1: Fundamentals of AI and ML | 20% |
2: Fundamentals of Generative AI | 24% |
3: Applications of Foundation Models | 28% |
4: Guidelines for Responsible AI | 14% |
5: Security, Compliance, and Governance for AI Solutions | 14% |