What You Need to Know Before
You Start
Starts 10 June 2025 03:13
Ends 10 June 2025
00
days
00
hours
00
minutes
00
seconds
Navigating the AI Project Lifecycle - From Problem Definition to Operational Solutions
Discover a structured approach to managing AI projects, from initial problem definition through deployment, with practical insights for transforming innovative ideas into successful operational solutions.
Data Science Conference
via YouTube
Data Science Conference
2565 Courses
27 minutes
Optional upgrade avallable
Not Specified
Progress at your own speed
Free Video
Optional upgrade avallable
Overview
Discover a structured approach to managing AI projects, from initial problem definition through deployment, with practical insights for transforming innovative ideas into successful operational solutions.
Syllabus
- Introduction to AI Project Management
- Problem Definition in AI
- Feasibility Analysis
- AI Project Planning
- Designing AI Solutions
- Data Management for AI
- Model Development and Evaluation
- Deployment of AI Solutions
- Operationalizing AI Solutions
- Managing AI Project Risks
- Case Studies and Best Practices
- Conclusion and Future Trends in AI Project Management
- Capstone Project
Overview of AI project lifecycle
Key stakeholders in AI projects
Identifying and articulating AI opportunities
Translating business needs into AI problem statements
Assessing data availability and quality
Evaluating technical constraints and ethical considerations
Defining project scope and objectives
Resource allocation and timeline management
Selecting appropriate AI methods and models
Prototyping and proof-of-concept development
Data preprocessing and feature engineering
Data governance and legal considerations
Training machine learning models
Performance metrics and validation techniques
Tools and platforms for AI deployment
Continuous integration and delivery for AI
Monitoring and maintenance of AI systems
Addressing model drift and retraining needs
Risk identification and mitigation strategies
Ethical and compliance issues
Real-world examples of AI project successes and failures
Lessons learned from AI project implementations
Emerging technologies and their impact on AI projects
Preparing for the future of AI in business
Comprehensive project to apply learned concepts
Peer review and feedback session
Subjects
Business