klipper/docs/Debugging.md

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# Debugging
This document describes some of the Klipper debugging tools.
## Running the regression tests
The main Klipper GitHub repository uses "github actions" to run a
series of regression tests. It can be useful to run some of these
tests locally.
The source code "whitespace check" can be run with:
```
./scripts/check_whitespace.sh
```
The Klippy regression test suite requires "data dictionaries" from
many platforms. The easiest way to obtain them is to
[download them from github](https://github.com/Klipper3d/klipper/issues/1438).
Once the data dictionaries are downloaded, use the following to run
the regression suite:
```
tar xfz klipper-dict-20??????.tar.gz
~/klippy-env/bin/python ~/klipper/scripts/test_klippy.py -d dict/ ~/klipper/test/klippy/*.test
```
## Manually sending commands to the micro-controller
Normally, the host klippy.py process would be used to translate gcode
commands to Klipper micro-controller commands. However, it's also
possible to manually send these MCU commands (functions marked with
the DECL_COMMAND() macro in the Klipper source code). To do so, run:
```
~/klippy-env/bin/python ./klippy/console.py /tmp/pseudoserial
```
See the "HELP" command within the tool for more information on its
functionality.
Some command-line options are available. For more information run:
`~/klippy-env/bin/python ./klippy/console.py --help`
## Translating gcode files to micro-controller commands
The Klippy host code can run in a batch mode to produce the low-level
micro-controller commands associated with a gcode file. Inspecting
these low-level commands is useful when trying to understand the
actions of the low-level hardware. It can also be useful to compare
the difference in micro-controller commands after a code change.
To run Klippy in this batch mode, there is a one time step necessary
to generate the micro-controller "data dictionary". This is done by
compiling the micro-controller code to obtain the **out/klipper.dict**
file:
```
make menuconfig
make
```
Once the above is done it is possible to run Klipper in batch mode
(see [installation](Installation.md) for the steps necessary to build
the python virtual environment and a printer.cfg file):
```
~/klippy-env/bin/python ./klippy/klippy.py ~/printer.cfg -i test.gcode -o test.serial -v -d out/klipper.dict
```
The above will produce a file **test.serial** with the binary serial
output. This output can be translated to readable text with:
```
~/klippy-env/bin/python ./klippy/parsedump.py out/klipper.dict test.serial > test.txt
```
The resulting file **test.txt** contains a human readable list of
micro-controller commands.
The batch mode disables certain response / request commands in order
to function. As a result, there will be some differences between
actual commands and the above output. The generated data is useful for
testing and inspection; it is not useful for sending to a real
micro-controller.
## Motion analysis and data logging
Klipper supports logging its internal motion history, which can be
later analyzed. To use this feature, Klipper must be started with the
[API Server](API_Server.md) enabled.
Data logging is enabled with the `data_logger.py` tool. For example:
```
~/klipper/scripts/motan/data_logger.py /tmp/klippy_uds mylog
```
This command will connect to the Klipper API Server, subscribe to
status and motion information, and log the results. Two files are
generated - a compressed data file and an index file (eg,
`mylog.json.gz` and `mylog.index.gz`). After starting the logging, it
is possible to complete prints and other actions - the logging will
continue in the background. When done logging, hit `ctrl-c` to exit
from the `data_logger.py` tool.
The resulting files can be read and graphed using the `motan_graph.py`
tool. To generate graphs on a Raspberry Pi, a one time step is
necessary to install the "matplotlib" package:
```
sudo apt-get update
sudo apt-get install python-matplotlib
```
However, it may be more convenient to copy the data files to a desktop
class machine along with the Python code in the `scripts/motan/`
directory. The motion analysis scripts should run on any machine with
a recent version of [Python](https://python.org) and
[Matplotlib](https://matplotlib.org/) installed.
Graphs can be generated with a command like the following:
```
~/klipper/scripts/motan/motan_graph.py mylog -o mygraph.png
```
One can use the `-g` option to specify the datasets to graph (it takes
a Python literal containing a list of lists). For example:
```
~/klipper/scripts/motan/motan_graph.py mylog -g '[["trapq(toolhead,velocity)"], ["trapq(toolhead,accel)"]]'
```
The list of available datasets can be found using the `-l` option -
for example:
```
~/klipper/scripts/motan/motan_graph.py -l
```
It is also possible to specify matplotlib plot options for each
dataset:
```
~/klipper/scripts/motan/motan_graph.py mylog -g '[["trapq(toolhead,velocity)?color=red&alpha=0.4"]]'
```
Many matplotlib options are available; some examples are "color",
"label", "alpha", and "linestyle".
The `motan_graph.py` tool supports several other command-line
options - use the `--help` option to see a list. It may also be
convenient to view/modify the
[motan_graph.py](../scripts/motan/motan_graph.py) script itself.
The raw data logs produced by the `data_logger.py` tool follow the
format described in the [API Server](API_Server.md). It may be useful
to inspect the data with a Unix command like the following:
`gunzip < mylog.json.gz | tr '\03' '\n' | less`
## Generating load graphs
The Klippy log file (/tmp/klippy.log) stores statistics on bandwidth,
micro-controller load, and host buffer load. It can be useful to graph
these statistics after a print.
To generate a graph, a one time step is necessary to install the
"matplotlib" package:
```
sudo apt-get update
sudo apt-get install python-matplotlib
```
Then graphs can be produced with:
```
~/klipper/scripts/graphstats.py /tmp/klippy.log -o loadgraph.png
```
One can then view the resulting **loadgraph.png** file.
Different graphs can be produced. For more information run:
`~/klipper/scripts/graphstats.py --help`
## Extracting information from the klippy.log file
The Klippy log file (/tmp/klippy.log) also contains debugging
information. There is a logextract.py script that may be useful when
analyzing a micro-controller shutdown or similar problem. It is
typically run with something like:
```
mkdir work_directory
cd work_directory
cp /tmp/klippy.log .
~/klipper/scripts/logextract.py ./klippy.log
```
The script will extract the printer config file and will extract MCU
shutdown information. The information dumps from an MCU shutdown (if
present) will be reordered by timestamp to assist in diagnosing cause
and effect scenarios.
## Testing with simulavr
The [simulavr](http://www.nongnu.org/simulavr/) tool enables one to
simulate an Atmel ATmega micro-controller. This section describes how
one can run test gcode files through simulavr. It is recommended to
run this on a desktop class machine (not a Raspberry Pi) as it does
require significant cpu to run efficiently.
To use simulavr, download the simulavr package and compile with python
support. Note that the build system may need to have some packages (such as
swig) installed in order to build the python module.
```
git clone git://git.savannah.nongnu.org/simulavr.git
cd simulavr
make python
make build
```
Make sure a file like **./build/pysimulavr/_pysimulavr.*.so** is present
after the above compilation:
```
ls ./build/pysimulavr/_pysimulavr.*.so
```
This commmand should report a specific file (e.g.
**./build/pysimulavr/_pysimulavr.cpython-39-x86_64-linux-gnu.so**) and
not an error.
If you are on a Debian-based system (Debian, Ubuntu, etc.) you can
install the following packages and generate *.deb files for system-wide
installation of simulavr:
```
sudo apt update
sudo apt install g++ make cmake swig rst2pdf help2man texinfo
make cfgclean python debian
sudo dpkg -i build/debian/python3-simulavr*.deb
```
To compile Klipper for use in simulavr, run:
```
cd /path/to/klipper
make menuconfig
```
and compile the micro-controller software for an AVR atmega644p and
select SIMULAVR software emulation support. Then one can compile
Klipper (run `make`) and then start the simulation with:
```
PYTHONPATH=/path/to/simulavr/build/pysimulavr/ ./scripts/avrsim.py out/klipper.elf
```
Note that if you have installed python3-simulavr system-wide, you do
not need to set `PYTHONPATH`, and can simply run the simulator as
```
./scripts/avrsim.py out/klipper.elf
```
Then, with simulavr running in another window, one can run the
following to read gcode from a file (eg, "test.gcode"), process it
with Klippy, and send it to Klipper running in simulavr (see
[installation](Installation.md) for the steps necessary to build the
python virtual environment):
```
~/klippy-env/bin/python ./klippy/klippy.py config/generic-simulavr.cfg -i test.gcode -v
```
### Using simulavr with gtkwave
One useful feature of simulavr is its ability to create signal wave
generation files with the exact timing of events. To do this, follow
the directions above, but run avrsim.py with a command-line like the
following:
```
PYTHONPATH=/path/to/simulavr/src/python/ ./scripts/avrsim.py out/klipper.elf -t PORTA.PORT,PORTC.PORT
```
The above would create a file **avrsim.vcd** with information on each
change to the GPIOs on PORTA and PORTB. This could then be viewed
using gtkwave with:
```
gtkwave avrsim.vcd
```