nipype.utils.profiler module¶
Utilities to keep track of performance
-
class
nipype.utils.profiler.ResourceMonitor(pid, freq=5, fname=None, python=True)¶ Bases:
threading.ThreadA
Threadto monitor a specific PID with a certain frequence to a file-
property
fname¶ Get/set the internal filename
-
run()¶ Core monitoring function, called by start()
-
stop()¶ Stop monitoring
-
property
-
nipype.utils.profiler.get_max_resources_used(pid, mem_mb, num_threads, pyfunc=False)¶ Function to get the RAM and threads utilized by a given process
- Parameters
pid (integer) – the process ID of process to profile
mem_mb (float) – the high memory watermark so far during process execution (in MB)
num_threads (int) – the high thread watermark so far during process execution
- Returns
mem_mb (float) – the new high memory watermark of process (MB)
num_threads (float) – the new high thread watermark of process
-
nipype.utils.profiler.get_system_total_memory_gb()¶ Function to get the total RAM of the running system in GB
-
nipype.utils.profiler.log_nodes_cb(node, status)¶ Function to record node run statistics to a log file as json dictionaries
- Parameters
node (nipype.pipeline.engine.Node) – the node being logged
status (string) – acceptable values are ‘start’, ‘end’; otherwise it is considered and error
- Returns
this function does not return any values, it logs the node status info to the callback logger
- Return type
None
