3.8 Article

Alpaca: Intermittent Execution without Checkpoints

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3133920

Keywords

energy-harvesting; intermittent computing

Funding

  1. National Science Foundation [CNS-1526342]
  2. Google Faculty Research Award
  3. Korea Foundation for Advanced Studies

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The emergence of energy harvesting devices creates the potential for batteryless sensing and computing devices. Such devices operate only intermittently, as energy is available, presenting a number of challenges for software developers. Programmers face a complex design space requiring reasoning about energy, memory consistency, and forward progress. This paper introduces Alpaca, a low-overhead programming model for intermittent computing on energy-harvesting devices. Alpaca programs are composed of a sequence of user-defined tasks. The Alpaca runtime preserves execution progress at the granularity of a task. The key insight in Alpaca is the privatization of data shared between tasks. Shared values written in a task are detected using idempotence analysis and copied into a buffer private to the task. At the end of the task, modified values from the private buffer are atomically committed to main memory, ensuring that data remain consistent despite power failures. Alpaca provides a familiar programming interface, a highly efficient runtime model, and places few restrictions on a target device's hardware. We implemented a prototype of Alpaca as an extension to C with an LLVM compiler pass. We evaluated Alpaca, and directly compared to two systems from prior work. Alpaca eliminates checkpoints, which improves performance up to 15x, and Alpaca avoids static multi-versioning, which improves memory consumption by up to 5.5x.

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