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Certified Human-Centered AI Manager (CHAIM) Certification Course by Tonex

Software Change, Configurations & Release Training by Tonex

This program is ideal for managers seeking to integrate AI in ways that enhance human roles rather than replace them, focusing on collaborative AI and fostering a balanced human-AI relationship. CHAIM is designed for forward-thinking managers who aim to harness AI in ways that enhance and support human roles.

This certification program provides a comprehensive understanding of collaborative AI principles, ethical considerations, and effective implementation strategies. Managers will learn to create a human-centered AI ecosystem that aligns with organizational goals, improves team efficiency, and respects human agency.

Learning Objectives

  • Understand the principles of human-centered AI and ethical AI practices.
  • Design AI systems that complement and support human efforts.
  • Learn strategies for balancing AI automation with human engagement.
  • Gain insights into implementing AI that respects user privacy and data security.
  • Develop skills to identify and mitigate bias within AI systems.
  • Foster a collaborative environment where AI enhances team performance.

Audience

This course is intended for:

  • Managers integrating AI into their teams and projects.
  • Professionals looking to foster human-AI collaboration.
  • Leaders focused on ethical AI adoption within their organizations.
  • HR and operations managers responsible for tech and AI-driven roles.
  • Business strategists aiming to maximize human-centric AI benefits.
  • Policy and compliance officers overseeing AI ethics and compliance.

Core Topics:

  • Human-AI Collaboration Strategies: Practical frameworks for designing workflows where AI assists humans rather than replaces them.
  • Risks of Automation Bias: Understanding automation bias (over-relying on AI), how it can lead to errors, and ways to mitigate it through training and process design.
  • Human Oversight in High-Stakes Decisions: Identifying areas where human intervention is essential and creating workflows to ensure human review.
  • Case Studies on AI-Human Synergy: Real-world examples where AI and human skills complement each other, such as in healthcare diagnostics or financial analysis.

Program Modules

Module 1: Introduction to Human-Centered AI

  • Basics of human-centered AI and its value.
  • Historical context and evolution of AI in business.
  • Key AI terms and concepts for managers.
  • Human roles in AI-enhanced environments.
  • Ethical considerations and challenges in AI.
  • Overview of current AI laws and regulations.

Module 2: Designing Collaborative AI Systems

  • Approaches to integrate AI with human tasks.
  • Identifying areas for collaborative AI applications.
  • Human-AI interaction design principles.
  • Tools for building user-centered AI experiences.
  • Prototyping collaborative AI solutions.
  • Case studies on successful human-AI systems.

Module 3: Balancing Automation with Human Input

  • Identifying tasks best suited for automation.
  • Setting boundaries for AI decision-making.
  • Balancing efficiency with human oversight.
  • Monitoring AI outputs for human relevance.
  • Evaluating human-AI performance outcomes.
  • Strategies for AI adoption without job displacement.

Module 4: Ensuring Ethical AI Practices

  • Principles of ethical AI design.
  • Identifying and managing AI bias.
  • Ensuring transparency and explainability.
  • Privacy considerations in AI applications.
  • Data handling and security protocols.
  • Legal compliance in AI-driven projects.

Module 5: Implementing and Managing AI in Teams

  • Onboarding teams for AI collaboration.
  • Developing AI literacy among employees.
  • Communication strategies for AI integration.
  • Managing resistance to AI adoption.
  • Assessing team performance with AI tools.
  • Enhancing teamwork through AI support.

Module 6: Evaluating and Improving Human-Centered AI

  • Frameworks for assessing AI effectiveness.
  • Gathering feedback from AI users.
  • Continuous improvement in AI applications.
  • Adjusting AI roles based on human needs.
  • Measuring organizational impact of AI.
  • Reporting on AI initiatives and outcomes.

Final Exam: Scenario analysis on designing human-centered AI processes and multiple-choice questions on collaborative strategies.

Outcome: Certified Human-Centered AI Manager, capable of implementing AI in a way that empowers human contributions and maintains essential human oversight.

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