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Dynamic Schedule Management Framework For GPUs

Soft-Real-Time GP-GPU Scheduler

A schedule management framework for aperiodic soft-real-time jobs that may be used by a CPU - GPU system designer/integrator to select, configure and deploy a suitable architectural platform and to perform concurrent scheduling of these jobs

Soft-Real-Time GP-GPU Scheduler (SRTG-Scheduler) is a dynamic scheduler for aperiodic soft-real-time jobs on GPU based architectures, with a simple, easy-to-use command-line interface (CLI). The SRTG-Scheduler is provided under the MIT license. It is currently supported on Windows, Linux, and macOS platforms.

Latest SRTG-Scheduler

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Dynamic schedule management framework for soft-real-time jobs on GPU based architectures

GPUs execute at higher frequencies

  • Accelerates execution of jobs allocated to it
  • Improves System response time

The above image compares FLOPs per Cycle improvements over the years [1]

GPUs are energy efficient

  • Power needed for GPU to carry out an operation lesser than CPUs
  • Ideal for use in real time embedded system

  • Significant hardware and firmware challenges
  • Executions are non-preemptive
  • Low degree of controllability of cores

  • Policies for scheduling Real-Time jobs
  • Decoding the driver
  • Managing the GPU as a resource
  • Targeting a Multi-GPU model

This entire body of work assumes that only one kernel may execute on a GPU at a given time(partly due to lack of hardware support)

What's the problem?

Sending a single non-preemptive kernel on to a GPU, is under utilizing the GPU

Solution

Concurrent Kernels Execution on GPU [2]

  • Safe concurrent kernels
  • Performance boost
  • Execution units available

Aims to develop a dynamic schedule management framework for soft-real-time jobs on GPU based architectures.

We propose to exploit this basic idea to perform coarse grained scheduling of jobs on GCUs.

Our work lays emphasis on minimal programmer involvement.

A dynamic schedule management framework that is responsible for

  • Keeping track of current and expected GUC availability
  • Determining which kernel(s) to dispatch to the GPU at a given time
  • Determining how many GCUs to assign for a given kernel.

Advantages

  • GPU provides tremendous computational power under reasonable power/energy budgets
  • Our work exploits concurrent kernel execution for real-time scheduling
  • More economical than multi-GPU model

Results

  • Dynamic schedule management framework for soft-real-time jobs
  • Support for a-periodic and recurring (periodic) soft-real-time tasks.
  • Smart GPU Memory Management

note: