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Tip revision: 59e41536cd612555ec8f1039d09c3d76f5264cab authored by alexggmatthews on 17 February 2017, 10:43:52 UTC
Incorporating sphinx rtd theme in codebase. MIT license.
Incorporating sphinx rtd theme in codebase. MIT license.
Tip revision: 59e4153
example_profiler.py
import GPflow
import simple_regression
GPflow.profiler.activateTracer('timeline_last')
simple_regression.runExperiments(sampling=False)
GPflow.profiler.deactivateTracer()
GPflow.profiler.activateTracer('timeline',outputDirectory='profiler_output',eachTime=True)
simple_regression.runExperiments(sampling=False)
GPflow.profiler.deactivateTracer()