![]() Allow EventHandlers to provide list of required events See merge request micro-ROS/ros_tracing/tracetools_analysis!38 |
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ros2trace_analysis | ||
tracetools_analysis | ||
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README.md |
tracetools_analysis
Analysis tools for ROS 2 tracing.
Setup
To display results, install:
Trace analysis
After generating a trace (see ros2_tracing
), we can analyze it to extract useful execution data.
Commands
Since CTF traces (the output format of the LTTng tracer) are very slow to read, we first convert them into a single file which can be read much faster.
$ ros2 trace-analysis convert /path/to/trace/directory
Then we can process it to create a data model which could be queried for analysis.
$ ros2 trace-analysis process /path/to/trace/directory
Jupyter
The last command will process and output the raw data models, but to actually display results, process and analyze using a Jupyter Notebook.
$ jupyter notebook
Then navigate to the analysis/
directory, and select one of the provided notebooks, or create your own!
For example:
from tracetools_analysis import loading
from tracetools_analysis import processor
from tracetools_analysis import utils
# Load converted trace file
events = loading.load_file('/path/to/converted/file')
# Process
ros2_handler = processor.Ros2Handler()
cpu_handler = processor.CpuTimeHandler()
processor.Processor(ros2_handler, cpu_handler).process(events)
# Use data model utils to extract information
ros2_util = utils.ros2.Ros2DataModelUtil(ros2_handler.data)
cpu_util = utils.cpu_time.CpuTimeDataModelUtil(cpu_handler.data)
callback_durations = ros2_util.get_callback_durations()
time_per_thread = cpu_util.get_time_per_thread()
# ...
# Display, e.g. with bokeh or matplotlib
# ...
Design
See the ros2_tracing
design document, especially the Goals and requirements and Analysis architecture sections.