EFFICIENTLY INFERENCING DIGITAL VIDEOS UTILIZING MACHINE-LEARNING MODELS

This disclosure describes one or more implementations of a video inference system that utilizes machine-learning models to efficiently and flexibly process digital videos utilizing various improved video inference architectures. For example, the video inference system provides a framework for improv...

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Hauptverfasser: Miranda, Daniel, Xue, Xiaozhen, Thien, Nicolas Huynh, Garg, Kshitiz, Kumar, Akhilesh
Format: Patent
Sprache:eng
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Beschreibung
Zusammenfassung:This disclosure describes one or more implementations of a video inference system that utilizes machine-learning models to efficiently and flexibly process digital videos utilizing various improved video inference architectures. For example, the video inference system provides a framework for improving digital video processing by increasing the efficiency of both central processing units (CPUs) and graphics processing units (GPUs). In one example, the video inference system utilizes a first video inference architecture to reduce the number of computing resources needed to inference digital videos by analyzing multiple digital videos utilizing sets of CPU/GPU containers along with parallel pipeline processing. In a further example, the video inference system utilizes a second video inference architecture that facilitates multiple CPUs to preprocess multiple digital videos in parallel as well as a GPU to continuously, sequentially, and efficiently inference each of the digital videos.