Synthetic Data

Designed to address the growing concerns around data privacy, security, and availability in urban environments, this solution involves the generation of artificial data that closely mimic the statistical properties of real-world data without revealing sensitive or personal information. This technology is crucial for enabling advanced data-driven applications in cities, such as disaster preparedness, urban planning, and public health management, without compromising individual privacy.
Synthetic Data

As cities become increasingly digitised, the demand for vast amounts of data to drive innovation, improve public services, and enhance urban planning has never been greater. However, the collection and use of real-world data raise significant privacy concerns, as well as ethical and logistical challenges. This is where synthetic data emerges as a critical solution. Synthetic data refers to artificially generated data that mimics the characteristics of real data without compromising personal privacy or sensitive information. It provides a pathway to maintaining data utility while sidestepping the risks associated with handling real-world datasets.

Synthetic data is generated using advanced machine learning models that analyse patterns, structures, and relationships within existing datasets. These models then produce new data points that statistically resemble the original data but do not correspond to real individuals or events. The technology ensures that the synthetic data retains the essential qualities needed for analysis and decision-making, while simultaneously eliminating the potential for privacy breaches. This is particularly valuable in urban contexts, where data derived from sensors, cameras, and other sources can be rich in detail and highly sensitive.

As urban areas continue to evolve into smart cities, relying on extensive data for functions ranging from traffic management to public safety, synthetic data offers a secure and scalable way to train AI systems, simulate urban scenarios, and conduct research without exposing real individuals to privacy risks. Furthermore, synthetic data allows for the testing of new technologies and policies in a risk-free environment, fostering innovation without unintended consequences.

In essence, synthetic data not only solves the pressing issue of data privacy but also propels the development of urban technologies forward. By enabling safer, more ethical data practices, synthetic data supports the creation of smarter, more resilient cities that can adapt to the needs of their inhabitants while safeguarding their privacy.

TRL
8/9Deployed
Category
Urban Policies for Sustainability
By 2030, substantially increase the number of cities and human settlements adopting and implementing integrated policies and plans towards inclusion, resource efficiency, mitigation and adaptation to climate change, resilience to disasters, and develop and implement, in line with the Sendai Framework for Disaster Risk Reduction 2015-2030, holistic disaster risk management at all levels.

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