RAIDO is a powerful framework solution designed to develop trustworthy and green artificial intelligence (AI). Trustworthy AI focuses
on ensuring the reliability, safety, and unbiased optimization and deployment of AI systems, particularly in critical applications such as
healthcare, farming, energy, and robotics. On the other hand, Green AI involves the development and deployment of energy-efficient and
environmentally sustainable AI technologies, leading to reduced environmental impact and improved resource management. RAIDO
provides an array of automated data curation and enrichment methods, including digital twins and diffusion models, to create high-quality,
representative, unbiased, and compliant training data. It also offers various data- and compute-efficient models and tools to create energyefficient Green AI, such as few- and zero-shot learning, dataset and model search, data and model distillation, and continual learning. To
ensure the transparency, explainability, and reliability of the optimized AI models and data handling processes, RAIDO uses various XAI
methods, decentralized blockchain, feedback-based reinforcement learning, novel KPIs, and visualization techniques. Additionally, the
innovative AI orchestrator optimizes related tasks and processes, reducing the overall energy consumption and environmental footprint
of the models during both development and deployment. RAIDO emphasizes the development of dynamic interfaces that support the
appropriate AI paradigms (central, distributed, dynamic, hybrid) and enable seamless adaptation to the needs of the use situation.
Furthermore, RAIDO will be evaluated through four real-life demonstrators in key application domains, such as smart grids, computer
vision-based smart farming, healthcare, and robotics, showcasing notable societal and market impact.