Meeting Job-Level Dependencies by Task Merging

2024 29th Asia and South Pacific Design Automation Conference (ASP-DAC)(2024)

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摘要
Industrial applications are often time critical and subject to end-to-end latency constraints. Job-level dependencies can be leveraged to specify a partial ordering on tasks’ jobs already at early design phases, agnostic of the hardware platform or scheduling algorithm, and guarantee that end-to-end latency constraints of task chains are met as long as the job-level dependencies are respected. However, their realization at runtime can introduce overheads and complicates the scheduling and timing analysis. This work presents an approach that merges multi-periodic tasks that are connected by job-level dependencies to a single task. A Constraint Programming formulation is presented that optimally merges such task clusters while all job-level dependencies are respected. Such an approach removes the need to consider job-level dependencies at runtime without being bound to a specific scheduling algorithm. Evaluations highlight the applicability of the approach by system-level experiments and showcase the scalability of the approach using synthetic task clusters.
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关键词
Partial Order,Scheduling Algorithm,Latency Constraints,Constraint Programming,Dashed Line,Objective Function,Part Of Cluster,Mixed Integer Linear Programming,Integer Variables,Task Period,Delay Constraint,Dependent Set,Greatest Common Divisor,Merging Approach
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