The EdgeAI has achieved significant achievements by finalising the deliverable D1.1 (Report on a conceptual framework for edge AI requirements and specification), which provides an overview of the edge AI development based on the emergence of multimodal edge AI implementations that yields real-time performance at the edge for various industrial sectors. These require the integration of edge AI hardware, software, AI stack building blocks and data in an Edge AI design framework for the whole system. In this context, deliverable D1.1 provides the conceptual framework used to determine the functional requirements (FRs) and the non-functional requirements (NFRs) described for each value chain (VC) and their demonstrators (VCDs) in the consecutive WP1 deliverables (D1.2 - D1.6) in the project. The FRs and NFRs, along with the KPIs and measures, are used to monitor the technology development and the evolution of the demonstrators during the project's lifetime. After the implementation by each industrial domain value chain demonstrator is concluded, the results are consolidated to highlight commonalities and differences for the industrial domains to create a roadmap for the project and open issues beyond the project's lifetime. The specifications for the several demonstrators within each VC are ready and provided in the deliverables D1.2 – D1.6 which form the basis for the cross-industrial road mapping, the edge AI architecture and system design in WP2, the circuits and modules design in WP3, and the edge AI framework development in WP4 based on edge AI technology blocks. Two PhD theses were successfully finished and defended (VC4-EDI). The expected impacts from the activities outlined in WP1, WP2, WP3, and WP4 for edge AI technologies span several key areas, focusing on hardware and software architecture, innovative approaches to dataset collection, AI explainability, optimisation techniques, and developing efficient AI-driven applications. Overall, the outcomes and achievements of WP1, WP2, WP3, and WP4 are set to significantly advance edge AI technology, focusing on efficiency, explainability, security, and optimisation. These efforts are expected to pave the way for more intelligent, efficient, and reliable edge AI applications, meeting the growing demands of various industrial use cases and demonstrators in the five value chains. Important achievements are the contributions to the book "Advancing Edge Artificial Intelligence - System Contexts", which provides valuable insight to researchers working with edge AI technologies, ML/DL engineers, IoT designers, and intelligent systems developers looking to deploy innovative solutions at the edge. Another significant achievement during this reporting period is the creation of the Edge AI pan-European technology cluster ecosystem involving the large-scale Chips JU EdgeAI project in cooperation with CLEVER, REBECCA, TRISTAN, NEUROKIT2E, LoLiPoP IoT projects, ECSEL JU ANDANTE, AI4CSM, AI4DI, TEMPO and INSECTT projects to provide a platform to exchange knowledge and ideas among experts and professionals interested in advances in edge AI circuits and device design, AI hardware architectures, industrial edge AI technologies, toolchains, and applications. This will significantly impact the European edge AI community by strengthening the ecosystem, creating an arena for cross-fertilisation and exchanging ideas, and generating new suggestions for identifying gaps and the latest technology trends.