Geospatial Intelligence and its Future for Disaster Risk Reduction and Environmental Resilience: Enhancing Leadership
Dates: December 15-17, 2025 (3 days) Format: 8 hours/day (4 hours AM + 4 hours PM) Mode: In-person/Hybrid | Hands-on: 75%
In-Person Registration fee: RMB3,559.99 ~ USD 499.99| Covers local transportation, workshop package, tuition, certificate, refreshment, lunch, open data, Networking opportunities, Discounts or priority access, Tour visit to Shaoxing University & Technology Park
Hybrid Registration fee: RMB1,599.99 ~ USD 224.99| Covers Access to all workshop sessions, workshop materials, tuition, certificate, Networking opportunities, Administrative and technical support, Discounts or priority access, open data
Accommodation: Not cover
Travel expenses: Not cover
Request for partial funding: limited support is available (2–3 successful applicants).
Venue: Institute of Artificial Intelligence, Shaoxing University (2 days) & Keqiao International Park (1 day)
Registration and Inquiry:
Please contact Prof. Saied Pirasteh at sapirasteh1@usx.edu.cn; spirasteh71@gmail.com
Further Inquiry:
Please contact Dr. Azim Uddin at auddin@jarpartner.com
Opportunities from the Workshop: Joint Postdoctoral Positions, Joint Research Laboratory Funding, Research Start-up Support, Talent Applications, Joint Patent Support, Academic and Industrial Visits and Collaborations
Objective:
This workshop aims to equip participants with advanced knowledge and practical skills in applying geospatial intelligence and GeoAI for disaster risk reduction and environmental resilience. Through hands-on training with platforms such as GeoIME, Google Earth Engine, and deep learning models, participants will learn to generate earthquake vulnerability maps, flood forecasts, susceptibility maps, and social vulnerability indices, and forecast social vulnerability mapping. The workshop emphasizes both technical capacity building and leadership development, enabling participants to integrate cutting-edge geospatial technologies into decision-making processes for sustainable and resilient communities.
Conference Site
The Keqiao International Park in Shaoxing, China, stands as a hub for innovation and collaboration, offering state-of-the-art facilities for international conferences, workshops, seminars and exhibitions. Together with the Shaoxing University and JAR Partner, this venue represents a global network of excellence, fostering innovation and collaboration across continents. Through the academic and industrial partnerships, Keqiao International Park provides unparalleled opportunities for knowledge exchange, networking, and groundbreaking advancements in science and technology.
Address: 199 Chuangyi Road, Keqiao international park, Zhejiang, China
Suggested Hotels
1. www.agoda.com / https://beyond.3dnest.cn
With over 4.5 million vacation rental properties around the world, Citadines offers flights, activities, and more, so you can see the bigger world for less. Agoda.com and the Agoda app are available in 39 languages and offer 24-hour customer service. Headquartered in Singapore, Citadines is part of the Booking Holdings Group (Nasdaq: BKNG) and employs more than 7,000 people in 27 countries around the world. At Citadines, we’re committed to making travel easier through cutting-edge technology.
Located in Keqiao business center, near Keyan Scenic Spot, the Tianma Grand Hotel is 30-minute drive from downtown and Shaoxing Railway Station.Rooms are all equipped with modern amenities as well as mini bars, mini refrigerators and safes. Wi-Fi is offered in public area. The on-site restaurant serves Chinese, Western and Japanese cuisines. Tianma Tianma Grand Hotel property provides a meeting center and banquet hall for social and business activities. To unwind, guests can enjoy foot massage at the spa or work out at the fitness center.
For more details:
visit this link: https://sxai.usx.edu.cn/
CO-Organizers and Knowledge Partners
Institute of Artificial Intelligence, Shaoxing University
Saudi Arabia
Keqiao international Park, China
International Society for photogrammetry and Remote Sensing