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Kakkar, Gaurav Tarlok; Cao, Jiashen; Chunduri, Pramod; Xu, Zhuangdi; Vyalla, Suryatej Reddy; Dintyala, Prashanth; Prabakaran, Anirudh; Bang, Jaeho; Sengupta, Aubhro; Ravichandran, Kaushik; et al (, ACM)In recent years, deep learning models have revolutionized computer vision, enabling diverse applications. However, these models are computationally expensive, and leveraging them for video analyt- ics involves low-level imperative programming. To address these efficiency and usability challenges, the database community has de- veloped video database management systems (VDBMSs). However, existing VDBMSs lack extensibility and composability and do not support holistic system optimizations, limiting their practical appli- cation. In response to these issues, we present our vision for EVA, a VDBMS that allows for extensible support of user-defined functions and employs a Cascades-style query optimizer. Additionally, we leverage RAY’s distributed execution to enhance scalability and performance and explore hardware-specific optimizations to facilitate runtime optimizations. We discuss the architecture and design of EVA, our achievements thus far, and our research roadmap.more » « less
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