
AI Innovations for a Better Tomorrow
Zayed University Convention Center, Dubai, UAE


September 24th and 25th, 2025
Empowering AI Innovations for Tomorrow: Workshop on Edge Computing with TinyML
Participants will gain hands-on experience, learn from case studies, and discuss emerging trendsin TinyML. The workshop aligns with the theme “AI Innovations for a Better Tomorrow” by showcasing the transformative potential of TinyML in advancing pervasive and real-world AI applications.

Ramasamy Srinivasagan
Objectives
- Introduce participants to the fundamental concepts of TinyML and its role in edge computing.
- Provide practical experience with development kits and tools such as Edge Impulse for TinyML implementation.
- Demonstrate real-world applications and case studies showcasing TinyML’s impact across industries.
- Facilitate discussions on ethical, scalable, and sustainable innovations in TinyML.
- Foster collaboration and networking within the TinyML and edge AI community.
Motivation
With the rising demand for low-latency, energy-efficient AI applications in resource-constrained environments, TinyML offers an ideal solution to address these needs. From reducing carbon footprints to optimizing industrial processes, TinyML represents a sustainable and cost-effective technology that democratizes AI for widespread real-world adoption.
Intended Audience
- Undergraduate and graduate students in AI, computer science, and engineering.
- Researchers and professionals exploring IoT, edge computing, and machine learning.
- Developers and practitioners interested in deploying AI at the edge.
- Enthusiasts passionate about sustainable technology and innovative applications of AI.
Topics to be Covered
- Introduction to TinyML and Edge Computing
- Overview of TinyML concepts, challenges, and opportunities.
- Key features: low power consumption, cost efficiency, and real-time processing.
- Hands-On Experience with TinyML Development Kits
- Practical implementation using tools like Edge Impulse.
- Deploying AI models on microcontroller-based devices for real-world applications.
- Real-World Applications of TinyML
- Sustainable Environmental Control in Smart Poultry Farming.
- Carbon Footprint Estimation.
- Predictive Maintenance in Industry 4.0.
- Estimating Shelf Life of Date Palm Fruits.
- Real-Time Anomaly Detection in Oil & Gas Operations.
- Emerging Trends, Challenges, and Ethical Considerations in TinyML
- Scalability, sustainability, and privacy concerns.
- Advancements in hardware and software for TinyML.
Session Duration
Two sessions of 3 Hours: This duration will provide sufficient time for comprehensive coverage of topics, hands-on activities, and interactive discussions.
Relevance and Importance
The topics covered in this workshop address the urgent need for sustainable, efficient, and real-time AI solutions across industries, aligning perfectly with the conference theme. TinyML offers a transformative approach to making AI accessible and impactful in resource-constrained environments.
Content Outline
Welcome and Introduction to TinyML and Edge Computing
Hands-On Experience with TinyML Development Kits
Case Studies and Real-World Applications
Challenges, Trends, and Ethical Considerations
Q&A and Networking
Sponsors
Acknowledgements











