Course Description
Introduction:
This training course explores how to effectively manage technical projects in the rapidly evolving landscape of artificial intelligence (AI). It equips participants with essential tools, strategies, and insights to plan, execute, and monitor AI-driven or AI-integrated projects. The course focuses on balancing technical and business demands while enhancing decision-making through data-driven approaches.
Target Audience:
- Technical project managers
- AI engineers and data analysts
- Executives and solution architects
- Developers and business analysts
- Team leaders working on AI initiatives
- Professionals seeking to upskill in managing modern technical projects
Course Objectives:
By the end of this course, participants will be able to:
- Understand the unique characteristics of AI-related technical projects.
- Apply effective methodologies for managing complex technology initiatives.
- Integrate AI tools and technologies into project planning and execution.
- Assess ethical and technical risks associated with AI-driven projects.
- Boost team efficiency through automation and advanced analytics.
- Measure project performance using data-driven indicators.
Course Content:
Unit 1: Introduction to Technical Projects and Artificial Intelligence
- Differences between traditional tech projects and AI-focused projects
- Role of AI in modern project management
- Key concepts in managing AI-driven initiatives
- Lifecycle of an AI project
- Case studies from real-world AI implementations
- Overview of data analytics tools in project contexts
Unit 2: Planning AI-Driven Technical Projects
- Defining project scope and SMART objectives
- Managing technical and knowledge-based requirements
- Budgeting and scheduling for AI initiatives
- Building the right team and identifying necessary skillsets
- Integrating AI tools during the planning phase
- Risk analysis: technical, operational, and ethical considerations
Unit 3: Execution and Monitoring of AI Projects
- Task automation and workflow management
- Real-time performance tracking using predictive analytics
- Collaborating with cross-functional and interdisciplinary teams
- Adapting to dynamic technical and business changes
- Utilizing smart project management tools
- Data-driven reporting and documentation
Unit 4: Governance and Ethics in AI Project Management
- Ethical considerations in AI use within projects
- Compliance and global standards in tech project delivery
- Cybersecurity and data privacy
- Transparency and explainability in AI models
- Data governance practices for project environments
- Ethical leadership in AI-integrated project teams
Unit 5: Continuous Improvement and Innovation in Technical Projects
- Measuring project success using KPIs and AI-generated insights
- Leveraging machine learning for performance evaluation and prediction
- Process improvement with RPA and data analytics
- Knowledge management and capturing lessons learned
- Fostering innovation in technical teams
- Future applications of AI in project management