Projeto Portugal 2030
Integrando a análise de espaço de instância com o aprendizado de reforço automático para seleção e configuração de algoritmos adaptativos
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Ficha de projeto
Nome do projeto
Integrando a análise de espaço de instância com o aprendizado de reforço automático para seleção e configuração de algoritmos adaptativosValor de financiamento
212,5 mil €Valor executado
0 €Objetivo estratégico
+ InteligenteData de início prevista
01.09.2025Data de conclusão prevista
30.08.2028Objetivo específico
Reforçar a investigação, inovação e adoção de tecnologias avançadas.Modalidade
SubvençãoCódigo de operação
COMPETE2030-FEDER-00913800Sumário
ISA4RL intends to tackle the complexities and variabilities inherent to RL deployment, promising substantial advancements in the scalability, efficiency, effectiveness, and accessibility of RL applications. ISA4RL aims to design and validate a framework that: - Utilizes ISA to categorize RL problem instances based on their meta-features. - Applies Auto-RL techniques to automatically select and tune RL algorithms for specific instances identified through ISA. - Evaluates the effectiveness of the framework across diverse environments, focusing on performance improvements, generalization capabilities, and computational efficiency. The objectives of the project align with these key challenges: - By leveraging ISA and Auto-RL, ISA4RL aims to stress-test and customize the selection of RL algorithms based on the specific characteristics of each problem instance. - ISA4RL introduces an automated framework that significantly reduces the time and expertise required for algorithm selection and configuration. This automation is critical for scaling RL solutions across various industries and tasks, addressing the urgent need for rapid deployment of optimally configured algorithms. - The integration of ISA with Auto-RL not only promises enhanced performance through tailored algorithm selection and configuration but also aims to improve the generalization capabilities of RL solutions. By systematically categorizing problem environments and identifying the most effective algorithms for each category, ISA4RL ensures that RL applications are more robust and adaptable to different scenarios. - Explainability in AI often focuses on making the decision-making process of AI systems understandable to humans. ISA4RL addresses this by linking the characteristics of problem instances directly to algorithm performance, providing a clear narrative that explains how the structure and nature of a problem influence which algorithm performs best. This not only aids in algorithm selection but also in tuning the algorithm configurations to suit particular problem nuances, making the whole process more transparent and understandable. - ISA4RL aims to lower the barrier to entry for utilizing advanced RL techniques, making it more accessible to a broader range of stakeholders. By highlighting new research directions and unexplored challenges, the project fosters innovation and accelerates the adoption of RL solutions in various industries ISA4RL initiative is ambitious and extends significantly beyond the current state of the art in several respects: It introduces a novel integration of ISA with Auto-RL, a synergy not extensively explored in current research. - By applying ISA to RL, the project introduces a novel approach to understanding and categorizing RL environments. This methodological innovation allows for the identification of nuanced relationships between the structural features of test instances and algorithm performance - Enhancing RL Scalability and Efficiency: The project's goals to dramatically improve the scalability, efficiency, and effectiveness of RL applications are highly ambitious. - Bridging AI Methodologies: The project inherently fosters interdisciplinary development by bridging methodologies from machine learning, artificial intelligence, optimization, and possibly other domains. This cross-pollination is designed to spur innovation and develop robust solutions that are applicable across various fields.
Beneficiários
Beneficiários Principais
Candidaturas
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Nota final da candidatura
Nãoseaplica
Código do aviso
MPr-2023-12
Designação do aviso
SACCCT – Projetos de Investigação Científica e Desenvolvimento Tecnológico (IC&DT) - Operações Individuais e em Copromoção
Distribuição geográfica
Financiamento total do projeto
212,5 mil €
Percentagem de valor já executado para a realização de projetos
0 %,Por concelho
1 concelho financiado .
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Porto 212,46 mil € ,