Analysis tools for ros2_tracing
.
Note: make sure to use the right branch, depending on the ROS 2 distro: use rolling
for Rolling, humble
for Humble, etc.
After generating a trace (see ros2_tracing
), we can analyze it to extract useful execution data.
Then we can process a trace to create a data model which could be queried for analysis.
$ ros2 trace-analysis process /path/to/trace/directory
Note that this simply outputs lightly-processed ROS 2 trace data which is split into a number of pandas DataFrame
s.
This can be used to quickly check the trace data.
For real data processing/trace analysis, see Analysis.
Since CTF traces (the output format of the LTTng tracer) are very slow to read, the trace is first converted into a single file which can be read much faster and can be re-used to run many analyses.
This is done automatically, but if the trace changed after the file was generated, it can be re-generated using the --force-conversion
option.
Run with --help
to see all options.
The command above will process and output raw data models. We need to actually analyze the data and display some results. We recommend doing this in a Jupyter Notebook, but you can do this in a normal Python file.
$ jupyter notebook
Navigate to the analysis/
directory, and select one of the provided notebooks, or create your own!
For example:
from tracetools_analysis.loading import load_file
from tracetools_analysis.processor import Processor
from tracetools_analysis.processor.cpu_time import CpuTimeHandler
from tracetools_analysis.processor.ros2 import Ros2Handler
from tracetools_analysis.utils.cpu_time import CpuTimeDataModelUtil
from tracetools_analysis.utils.ros2 import Ros2DataModelUtil
# Load trace directory or converted trace file
events = load_file('/path/to/trace/or/converted/file')
# Process
ros2_handler = Ros2Handler()
cpu_handler = CpuTimeHandler()
Processor(ros2_handler, cpu_handler).process(events)
# Use data model utils to extract information
ros2_util = Ros2DataModelUtil(ros2_handler.data)
cpu_util = CpuTimeDataModelUtil(cpu_handler.data)
callback_symbols = ros2_util.get_callback_symbols()
callback_object, callback_symbol = list(callback_symbols.items())[0]
callback_durations = ros2_util.get_callback_durations(callback_object)
time_per_thread = cpu_util.get_time_per_thread()
# ...
# Display, e.g., with bokeh, matplotlib, print, etc.
print(callback_symbol)
print(callback_durations)
print(time_per_thread)
# ...
Note: bokeh has to be installed manually, e.g., with pip
:
$ pip3 install bokeh
See the ros2_tracing
design document, especially the Goals and requirements and Analysis sections.
Package containing a ros2cli
extension to perform trace analysis.
Package containing tools for analyzing trace data.
See the API documentation.