How to¶
This is a small list of how-tos specific to PyTango. A more general Tango how-to list can be found here.
Check the default TANGO host¶
The default TANGO host can be defined using the environment variable
TANGO_HOST
or in a tangorc file
(see Tango environment variables
for complete information)
To check what is the current value that TANGO uses for the default configuration simple do:
1 2 3 | >>> import PyTango
>>> PyTango.ApiUtil.get_env_var("TANGO_HOST")
'homer.simpson.com:10000'
|
Check TANGO version¶
There are two library versions you might be interested in checking: The PyTango version:
1 2 3 4 5 6 | >>> import PyTango
>>> PyTango.__version__
'8.1.1'
>>> PyTango.__version_info__
(8, 1, 1, 'final', 0)
|
... and the Tango C++ library version that PyTango was compiled with:
1 2 3 | >>> import PyTango
>>> PyTango.constants.TgLibVers
'8.1.2'
|
Report a bug¶
Bugs can be reported as tickets in TANGO Source forge.
When making a bug report don’t forget to select PyTango in Category.
It is also helpfull if you can put in the ticket description the PyTango information. It can be a dump of:
$ python -c "from PyTango.utils import info; print(info())"
Test the connection to the Device and get it’s current state¶
One of the most basic examples is to get a reference to a device and determine if it is running or not:
1 2 3 4 5 6 7 8 9 10 11 | from PyTango import DeviceProxy
# Get proxy on the tango_test1 device
print("Creating proxy to TangoTest device...")
tango_test = DeviceProxy("sys/tg_test/1")
# ping it
print(tango_test.ping())
# get the state
print(tango_test.state())
|
Read and write attributes¶
Basic read/write attribute operations:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 | from PyTango import DeviceProxy
# Get proxy on the tango_test1 device
print("Creating proxy to TangoTest device...")
tango_test = DeviceProxy("sys/tg_test/1")
# Read a scalar attribute. This will return a PyTango.DeviceAttribute
# Member 'value' contains the attribute value
scalar = tango_test.read_attribute("long_scalar")
print("Long_scalar value = {0}".format(scalar.value))
# PyTango provides a shorter way:
scalar = tango_test.long_scalar.value
print("Long_scalar value = {0}".format(scalar))
# Read a spectrum attribute
spectrum = tango_test.read_attribute("double_spectrum")
# ... or, the shorter version:
spectrum = tango_test.double_spectrum
# Write a scalar attribute
scalar_value = 18
tango_test.write_attribute("long_scalar", scalar_value)
# PyTango provides a shorter way:
tango_test.long_scalar = scalar_value
# Write a spectrum attribute
spectrum_value = [1.2, 3.2, 12.3]
tango_test.write_attribute("double_spectrum", spectrum_value)
# ... or, the shorter version:
tango_test.double_spectrum = spectrum_value
# Write an image attribute
image_value = [ [1, 2], [3, 4] ]
tango_test.write_attribute("long_image", image_value)
# ... or, the shorter version:
tango_test.long_image = image_value
|
Note that if PyTango is compiled with numpy support the values got when reading a spectrum or an image will be numpy arrays. This results in a faster and more memory efficient PyTango. You can also use numpy to specify the values when writing attributes, especially if you know the exact attribute type:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 | import numpy
from PyTango import DeviceProxy
# Get proxy on the tango_test1 device
print("Creating proxy to TangoTest device...")
tango_test = DeviceProxy("sys/tg_test/1")
data_1d_long = numpy.arange(0, 100, dtype=numpy.int32)
tango_test.long_spectrum = data_1d_long
data_2d_float = numpy.zeros((10,20), dtype=numpy.float64)
tango_test.double_image = data_2d_float
|
Execute commands¶
As you can see in the following example, when scalar types are used, the Tango binding automagically manages the data types, and writing scripts is quite easy:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 | from PyTango import DeviceProxy
# Get proxy on the tango_test1 device
print("Creating proxy to TangoTest device...")
tango_test = DeviceProxy("sys/tg_test/1")
# First use the classical command_inout way to execute the DevString command
# (DevString in this case is a command of the Tango_Test device)
result = tango_test.command_inout("DevString", "First hello to device")
print("Result of execution of DevString command = {0}".format(result))
# the same can be achieved with a helper method
result = tango_test.DevString("Second Hello to device")
print("Result of execution of DevString command = {0}".format(result))
# Please note that argin argument type is automatically managed by python
result = tango_test.DevULong(12456)
print("Result of execution of DevULong command = {0}".format(result))
|
Execute commands with more complex types¶
In this case you have to use put your arguments data in the correct python structures:
1 2 3 4 5 6 7 8 9 10 11 12 | from PyTango import DeviceProxy
# Get proxy on the tango_test1 device
print("Creating proxy to TangoTest device...")
tango_test = DeviceProxy("sys/tg_test/1")
# The input argument is a DevVarLongStringArray so create the argin
# variable containing an array of longs and an array of strings
argin = ([1,2,3], ["Hello", "TangoTest device"])
result = tango_test.DevVarLongArray(argin)
print("Result of execution of DevVarLongArray command = {0}".format(result))
|
Work with Groups¶
Todo
write this how to
Registering devices¶
Here is how to define devices in the Tango DataBase:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 | from PyTango import Database, DbDevInfo
# A reference on the DataBase
db = Database()
# The 3 devices name we want to create
# Note: these 3 devices will be served by the same DServer
new_device_name1 = "px1/tdl/mouse1"
new_device_name2 = "px1/tdl/mouse2"
new_device_name3 = "px1/tdl/mouse3"
# Define the Tango Class served by this DServer
new_device_info_mouse = DbDevInfo()
new_device_info_mouse._class = "Mouse"
new_device_info_mouse.server = "ds_Mouse/server_mouse"
# add the first device
print("Creating device: %s" % new_device_name1)
new_device_info_mouse.name = new_device_name1
db.add_device(new_device_info_mouse)
# add the next device
print("Creating device: %s" % new_device_name2)
new_device_info_mouse.name = new_device_name2
db.add_device(new_device_info_mouse)
# add the third device
print("Creating device: %s" % new_device_name3)
new_device_info_mouse.name = new_device_name3
db.add_device(new_device_info_mouse)
|
Setting up device properties¶
A more complex example using python subtilities. The following python script example (containing some functions and instructions manipulating a Galil motor axis device server) gives an idea of how the Tango API should be accessed from Python:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 | from PyTango import DeviceProxy
# connecting to the motor axis device
axis1 = DeviceProxy("microxas/motorisation/galilbox")
# Getting Device Properties
property_names = ["AxisBoxAttachement",
"AxisEncoderType",
"AxisNumber",
"CurrentAcceleration",
"CurrentAccuracy",
"CurrentBacklash",
"CurrentDeceleration",
"CurrentDirection",
"CurrentMotionAccuracy",
"CurrentOvershoot",
"CurrentRetry",
"CurrentScale",
"CurrentSpeed",
"CurrentVelocity",
"EncoderMotorRatio",
"logging_level",
"logging_target",
"UserEncoderRatio",
"UserOffset"]
axis_properties = axis1.get_property(property_names)
for prop in axis_properties.keys():
print("%s: %s" % (prop, axis_properties[prop][0]))
# Changing Properties
axis_properties["AxisBoxAttachement"] = ["microxas/motorisation/galilbox"]
axis_properties["AxisEncoderType"] = ["1"]
axis_properties["AxisNumber"] = ["6"]
axis1.put_property(axis_properties)
|
Write a server¶
Before reading this chapter you should be aware of the TANGO basic concepts. This chapter does not explain what a Tango device or a device server is. This is explained in details in the Tango control system manual
Since version 8.1, PyTango provides a helper module which simplifies the
development of a Tango device server. This helper is provided through the
PyTango.server
module.
Here is a simple example on how to write a Clock device server using the high level API
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 | import time
from PyTango.server import run
from PyTango.server import Device, DeviceMeta
from PyTango.server import attribute, command, pipe
class Clock(Device):
__metaclass__ = DeviceMeta
@attribute
def time(self):
return time.time()
@command(dtype_in=str, dtype_out=str)
def strftime(self, format):
return time.strftime(format)
@pipe
def info(self):
return ('Information',
dict(manufacturer='Tango',
model='PS2000',
version_number=123))
if __name__ == "__main__":
run([Clock])
|
- line 2-4
- import the necessary symbols
- line 7
- tango device class definition. A Tango device must inherit from
PyTango.server.Device
- line 8
- mandatory magic line. A Tango device must define the metaclass as
PyTango.server.DeviceClass
. This has to be done due to a limitation on boost-python - line 10-12
- definition of the time attribute. By default, attributes are double, scalar,
read-only. Check the
attribute
for the complete list of attribute options. - line 14-16
- the method strftime is exported as a Tango command. In receives a string
as argument and it returns a string. If a method is to be exported as a
Tango command, it must be decorated as such with the
command()
decorator - line 18-23
- definition of the info pipe. Check the
pipe
for the complete list of pipe options. - line 28
- start the Tango run loop. The mandatory argument is a list of python classes
that are to be exported as Tango classes. Check
run()
for the complete list of options
Here is a more complete example on how to write a PowerSupply device server using the high level API. The example contains:
- a read-only double scalar attribute called voltage
- a read/write double scalar expert attribute current
- a read-only double image attribute called noise
- a ramp command
- a host device property
- a port class property
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 | from time import time
from numpy.random import random_sample
from PyTango import AttrQuality, AttrWriteType, DispLevel, run
from PyTango.server import Device, DeviceMeta, attribute, command
from PyTango.server import class_property, device_property
class PowerSupply(Device):
__metaclass__ = DeviceMeta
current = attribute(label="Current", dtype=float,
display_level=DispLevel.EXPERT,
access=AttrWriteType.READ_WRITE,
unit="A", format="8.4f",
min_value=0.0, max_value=8.5,
min_alarm=0.1, max_alarm=8.4,
min_warning=0.5, max_warning=8.0,
fget="get_current", fset="set_current",
doc="the power supply current")
noise = attribute(label="Noise", dtype=((float,),),
max_dim_x=1024, max_dim_y=1024,
fget="get_noise")
host = device_property(dtype=str)
port = class_property(dtype=int, default_value=9788)
@attribute
def voltage(self):
self.info_stream("get voltage(%s, %d)" % (self.host, self.port))
return 10.0
def get_current(self):
return 2.3456, time(), AttrQuality.ATTR_WARNING
def set_current(self, current):
print("Current set to %f" % current)
def get_noise(self):
return random_sample((1024, 1024))
@command(dtype_in=float)
def ramp(self, value):
print("Ramping up...")
if __name__ == "__main__":
run([PowerSupply])
|
Note
the __metaclass__
statement is mandatory due to a limitation in the
boost-python library used by PyTango.
If you are using python 3 you can write instead:
class PowerSupply(Device, metaclass=DeviceMeta)
pass
Server logging¶
This chapter instructs you on how to use the tango logging API (log4tango) to create tango log messages on your device server.
The logging system explained here is the Tango Logging Service (TLS). For detailed information on how this logging system works please check:
The easiest way to start seeing log messages on your device server console is by starting it with the verbose option. Example:
python PyDsExp.py PyDs1 -v4
This activates the console tango logging target and filters messages with importance level DEBUG or more. The links above provided detailed information on how to configure log levels and log targets. In this document we will focus on how to write log messages on your device server.
Basic logging¶
The most basic way to write a log message on your device is to use the
Device
logging related methods:
Example:
1 2 3 4 | def read_voltage(self):
self.info_stream("read voltage attribute")
# ...
return voltage_value
|
This will print a message like:
1282206864 [-1215867200] INFO test/power_supply/1 read voltage attribute
every time a client asks to read the voltage attribute value.
The logging methods support argument list feature (since PyTango 8.1). Example:
1 2 3 4 | def read_voltage(self):
self.info_stream("read_voltage(%s, %d)", self.host, self.port)
# ...
return voltage_value
|
Logging with print statement¶
This feature is only possible since PyTango 7.1.3
It is possible to use the print statement to log messages into the tango logging system. This is achieved by using the python’s print extend form sometimes refered to as print chevron.
Same example as above, but now using print chevron:
1 2 3 4 | def read_voltage(self, the_att):
print >>self.log_info, "read voltage attribute"
# ...
return voltage_value
|
Or using the python 3k print function:
1 2 3 4 | def read_Long_attr(self, the_att):
print("read voltage attribute", file=self.log_info)
# ...
return voltage_value
|
Logging with decorators¶
This feature is only possible since PyTango 7.1.3
PyTango provides a set of decorators that place automatic log messages when you enter and when you leave a python method. For example:
1 2 3 | @PyTango.DebugIt()
def read_Long_attr(self, the_att):
the_att.set_value(self.attr_long)
|
will generate a pair of log messages each time a client asks for the ‘Long_attr’ value. Your output would look something like:
1282208997 [-1215965504] DEBUG test/pydsexp/1 -> read_Long_attr()
1282208997 [-1215965504] DEBUG test/pydsexp/1 <- read_Long_attr()
- Decorators exist for all tango log levels:
- The decorators receive three optional arguments:
- show_args - shows method arguments in log message (defaults to False)
- show_kwargs shows keyword method arguments in log message (defaults to False)
- show_ret - shows return value in log message (defaults to False)
Example:
1 2 3 | @PyTango.DebugIt(show_args=True, show_ret=True)
def IOLong(self, in_data):
return in_data * 2
|
will output something like:
1282221947 [-1261438096] DEBUG test/pydsexp/1 -> IOLong(23)
1282221947 [-1261438096] DEBUG test/pydsexp/1 46 <- IOLong()
Multiple device classes (Python and C++) in a server¶
Within the same python interpreter, it is possible to mix several Tango classes.
Let’s say two of your colleagues programmed two separate Tango classes in two
separated python files: A PLC
class in a PLC.py
:
1 2 3 4 5 6 7 8 9 10 11 | # PLC.py
from PyTango.server import Device, DeviceMeta, run
class PLC(Device):
__metaclass__ = DeviceMeta
# bla, bla my PLC code
if __name__ == "__main__":
run([PLC])
|
... and a IRMirror
in a IRMirror.py
:
1 2 3 4 5 6 7 8 9 10 11 | # IRMirror.py
from PyTango.server import Device, DeviceMeta, run
class IRMirror(Device):
__metaclass__ = DeviceMeta
# bla, bla my IRMirror code
if __name__ == "__main__":
run([IRMirror])
|
You want to create a Tango server called PLCMirror that is able to contain
devices from both PLC and IRMirror classes. All you have to do is write
a PLCMirror.py
containing the code:
1 2 3 4 5 6 7 | # PLCMirror.py
from PyTango.server import run
from PLC import PLC
from IRMirror import IRMirror
run([PLC, IRMirror])
|
- It is also possible to add C++ Tango class in a Python device server as soon as:
- The Tango class is in a shared library
- It exist a C function to create the Tango class
For a Tango class called MyTgClass, the shared library has to be called MyTgClass.so and has to be in a directory listed in the LD_LIBRARY_PATH environment variable. The C function creating the Tango class has to be called _create_MyTgClass_class() and has to take one parameter of type “char *” which is the Tango class name. Here is an example of the main function of the same device server than before but with one C++ Tango class called SerialLine:
1 2 3 4 5 6 7 8 9 10 11 12 | import PyTango
import sys
if __name__ == '__main__':
py = PyTango.Util(sys.argv)
util.add_class('SerialLine', 'SerialLine', language="c++")
util.add_class(PLCClass, PLC, 'PLC')
util.add_class(IRMirrorClass, IRMirror, 'IRMirror')
U = PyTango.Util.instance()
U.server_init()
U.server_run()
|
Line 6: | The C++ class is registered in the device server |
---|---|
Line 7 and 8: | The two Python classes are registered in the device server |
Create attributes dynamically¶
It is also possible to create dynamic attributes within a Python device server. There are several ways to create dynamic attributes. One of the way, is to create all the devices within a loop, then to create the dynamic attributes and finally to make all the devices available for the external world. In C++ device server, this is typically done within the <Device>Class::device_factory() method. In Python device server, this method is generic and the user does not have one. Nevertheless, this generic device_factory method calls a method named dyn_attr() allowing the user to create his dynamic attributes. It is simply necessary to re-define this method within your <Device>Class and to create the dynamic attribute within this method:
dyn_attr(self, dev_list)
where dev_list is a list containing all the devices created by the generic device_factory() method.
There is another point to be noted regarding dynamic attribute within Python device server. The Tango Python device server core checks that for each attribute it exists methods named <attribute_name>_read and/or <attribute_name>_write and/or is_<attribute_name>_allowed. Using dynamic attribute, it is not possible to define these methods because attributes name and number are known only at run-time. To address this issue, the Device_3Impl::add_attribute() method has a diferent signature for Python device server which is:
add_attribute(self, attr, r_meth = None, w_meth = None, is_allo_meth = None)
attr is an instance of the Attr class, r_meth is the method which has to be executed with the attribute is read, w_meth is the method to be executed when the attribute is written and is_allo_meth is the method to be executed to implement the attribute state machine. The method passed here as argument as to be class method and not object method. Which argument you have to use depends on the type of the attribute (A WRITE attribute does not need a read method). Note, that depending on the number of argument you pass to this method, you may have to use Python keyword argument. The necessary methods required by the Tango Python device server core will be created automatically as a forward to the methods given as arguments.
Here is an example of a device which has a TANGO command called createFloatAttribute. When called, this command creates a new scalar floating point attribute with the specified name:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 | from PyTango import Util, Attr
from PyTango.server import DeviceMeta, Device, command
class MyDevice(Device):
__metaclass__ = DeviceMeta
@command(dtype_in=str)
def CreateFloatAttribute(self, attr_name):
attr = Attr(attr_name, PyTango.DevDouble)
self.add_attribute(attr, self.read_General, self.write_General)
def read_General(self, attr):
self.info_stream("Reading attribute %s", attr.get_name())
attr.set_value(99.99)
def write_General(self, attr):
self.info_stream("Writting attribute %s", attr.get_name())
|
Create/Delete devices dynamically¶
This feature is only possible since PyTango 7.1.2
Starting from PyTango 7.1.2 it is possible to create devices in a device server “en caliente”. This means that you can create a command in your “management device” of a device server that creates devices of (possibly) several other tango classes. There are two ways to create a new device which are described below.
Tango imposes a limitation: the tango class(es) of the device(s) that is(are)
to be created must have been registered before the server starts.
If you use the high level API, the tango class(es) must be listed in the call
to run()
. If you use the lower level server API, it must
be done using individual calls to add_class()
.
Dynamic device from a known tango class name¶
If you know the tango class name but you don’t have access to the PyTango.DeviceClass
(or you are too lazy to search how to get it ;-) the way to do it is call
create_device()
/ delete_device()
.
Here is an example of implementing a tango command on one of your devices that
creates a device of some arbitrary class (the example assumes the tango commands
‘CreateDevice’ and ‘DeleteDevice’ receive a parameter of type DevVarStringArray
with two strings. No error processing was done on the code for simplicity sake):
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 | from PyTango import Util
from PyTango.server import DeviceMeta, Device, command
class MyDevice(Device):
__metaclass__ = DeviceMeta
@command(dtype_in=[str])
def CreateDevice(self, pars):
klass_name, dev_name = pars
util = Util.instance()
util.create_device(klass_name, dev_name, alias=None, cb=None)
@command(dtype_in=[str])
def DeleteDevice(self, pars):
klass_name, dev_name = pars
util = Util.instance()
util.delete_device(klass_name, dev_name)
|
An optional callback can be registered that will be executed after the device is registed in the tango database but before the actual device object is created and its init_device method is called. It can be used, for example, to initialize some device properties.
Dynamic device from a known tango class¶
If you already have access to the DeviceClass
object that
corresponds to the tango class of the device to be created you can call directly
the create_device()
/ delete_device()
.
For example, if you wish to create a clone of your device, you can create a
tango command called Clone:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 | class MyDevice(PyTango.Device_4Impl):
def fill_new_device_properties(self, dev_name):
prop_names = db.get_device_property_list(self.get_name(), "*")
prop_values = db.get_device_property(self.get_name(), prop_names.value_string)
db.put_device_property(dev_name, prop_values)
# do the same for attributes...
...
def Clone(self, dev_name):
klass = self.get_device_class()
klass.create_device(dev_name, alias=None, cb=self.fill_new_device_properties)
def DeleteSibling(self, dev_name):
klass = self.get_device_class()
klass.delete_device(dev_name)
|
Note that the cb parameter is optional. In the example it is given for demonstration purposes only.
Write a server (original API)¶
This chapter describes how to develop a PyTango device server using the original PyTango server API. This API mimics the C++ API and is considered low level. You should write a server using this API if you are using code generated by Pogo tool or if for some reason the high level API helper doesn’t provide a feature you need (in that case think of writing a mail to tango mailing list explaining what you cannot do).
The main part of a Python device server¶
The rule of this part of a Tango device server is to:
- Create the
Util
object passing it the Python interpreter command line arguments- Add to this object the list of Tango class(es) which have to be hosted by this interpreter
- Initialize the device server
- Run the device server loop
The following is a typical code for this main function:
1 2 3 4 5 6 7 | if __name__ == '__main__':
util = PyTango.Util(sys.argv)
util.add_class(PyDsExpClass, PyDsExp)
U = PyTango.Util.instance()
U.server_init()
U.server_run()
|
- Line 2
- Create the Util object passing it the interpreter command line arguments
- Line 3
- Add the Tango class PyDsExp to the device server. The
Util.add_class()
method of the Util class has two arguments which are the Tango class PyDsExpClass instance and the Tango PyDsExp instance. ThisUtil.add_class()
method is only available since version 7.1.2. If you are using an older version please useUtil.add_TgClass()
instead. - Line 7
- Initialize the Tango device server
- Line 8
- Run the device server loop
The PyDsExpClass class in Python¶
The rule of this class is to :
- Host and manage data you have only once for the Tango class whatever devices of this class will be created
- Define Tango class command(s)
- Define Tango class attribute(s)
In our example, the code of this Python class looks like:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 | class PyDsExpClass(PyTango.DeviceClass):
cmd_list = { 'IOLong' : [ [ PyTango.ArgType.DevLong, "Number" ],
[ PyTango.ArgType.DevLong, "Number * 2" ] ],
'IOStringArray' : [ [ PyTango.ArgType.DevVarStringArray, "Array of string" ],
[ PyTango.ArgType.DevVarStringArray, "This reversed array"] ],
}
attr_list = { 'Long_attr' : [ [ PyTango.ArgType.DevLong ,
PyTango.AttrDataFormat.SCALAR ,
PyTango.AttrWriteType.READ],
{ 'min alarm' : 1000, 'max alarm' : 1500 } ],
'Short_attr_rw' : [ [ PyTango.ArgType.DevShort,
PyTango.AttrDataFormat.SCALAR,
PyTango.AttrWriteType.READ_WRITE ] ]
}
|
- Line 1
- The PyDsExpClass class has to inherit from the
DeviceClass
class - Line 3 to 7
- Definition of the cmd_list
dict
defining commands. The IOLong command is defined at lines 3 and 4. The IOStringArray command is defined in lines 5 and 6 - Line 9 to 17
- Definition of the attr_list
dict
defining attributes. The Long_attr attribute is defined at lines 9 to 12 and the Short_attr_rw attribute is defined at lines 14 to 16
If you have something specific to do in the class constructor like initializing some specific data member, you will have to code a class constructor. An example of such a contructor is
1 2 3 | def __init__(self, name):
PyTango.DeviceClass.__init__(self, name)
self.set_type("TestDevice")
|
The device type is set at line 3.
Defining commands¶
As shown in the previous example, commands have to be defined in a dict
called cmd_list as a data member of the xxxClass class of the Tango class.
This dict
has one element per command. The element key is the command
name. The element value is a python list which defines the command. The generic
form of a command definition is:
'cmd_name' : [ [in_type, <"In desc">], [out_type, <"Out desc">], <{opt parameters}>]
The first element of the value list is itself a list with the command input
data type (one of the PyTango.ArgType
pseudo enumeration value) and
optionally a string describing this input argument. The second element of the
value list is also a list with the command output data type (one of the
PyTango.ArgType
pseudo enumeration value) and optionaly a string
describing it. These two elements are mandatory. The third list element is
optional and allows additional command definition. The authorized element for
this dict
are summarized in the following array:
key Value Definition “display level” DispLevel enum value The command display level “polling period” Any number The command polling period (mS) “default command” True or False To define that it is the default command
Defining attributes¶
As shown in the previous example, attributes have to be defined in a dict
called attr_list as a data
member of the xxxClass class of the Tango class. This dict
has one element
per attribute. The element key is the attribute name. The element value is a
python list
which defines the attribute. The generic form of an
attribute definition is:
'attr_name' : [ [mandatory parameters], <{opt parameters}>]
For any kind of attributes, the mandatory parameters are:
[attr data type, attr data format, attr data R/W type]
The attribute data type is one of the possible value for attributes of the
PyTango.ArgType
pseudo enunmeration. The attribute data format is one
of the possible value of the PyTango.AttrDataFormat
pseudo enumeration
and the attribute R/W type is one of the possible value of the
PyTango.AttrWriteType
pseudo enumeration. For spectrum attribute,
you have to add the maximum X size (a number). For image attribute, you have
to add the maximun X and Y dimension (two numbers). The authorized elements for
the dict
defining optional parameters are summarized in the following
array:
key value definition “display level” PyTango.DispLevel enum value The attribute display level “polling period” Any number The attribute polling period (mS) “memorized” “true” or “true_without_hard_applied” Define if and how the att. is memorized “label” A string The attribute label “description” A string The attribute description “unit” A string The attribute unit “standard unit” A number The attribute standard unit “display unit” A string The attribute display unit “format” A string The attribute display format “max value” A number The attribute max value “min value” A number The attribute min value “max alarm” A number The attribute max alarm “min alarm” A number The attribute min alarm “min warning” A number The attribute min warning “max warning” A number The attribute max warning “delta time” A number The attribute RDS alarm delta time “delta val” A number The attribute RDS alarm delta val
The PyDsExp class in Python¶
The rule of this class is to implement methods executed by commands and attributes. In our example, the code of this class looks like:
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 | class PyDsExp(PyTango.Device_4Impl):
def __init__(self,cl,name):
PyTango.Device_4Impl.__init__(self, cl, name)
self.info_stream('In PyDsExp.__init__')
PyDsExp.init_device(self)
def init_device(self):
self.info_stream('In Python init_device method')
self.set_state(PyTango.DevState.ON)
self.attr_short_rw = 66
self.attr_long = 1246
#------------------------------------------------------------------
def delete_device(self):
self.info_stream('PyDsExp.delete_device')
#------------------------------------------------------------------
# COMMANDS
#------------------------------------------------------------------
def is_IOLong_allowed(self):
return self.get_state() == PyTango.DevState.ON
def IOLong(self, in_data):
self.info_stream('IOLong', in_data)
in_data = in_data * 2
self.info_stream('IOLong returns', in_data)
return in_data
#------------------------------------------------------------------
def is_IOStringArray_allowed(self):
return self.get_state() == PyTango.DevState.ON
def IOStringArray(self, in_data):
l = range(len(in_data)-1, -1, -1)
out_index=0
out_data=[]
for i in l:
self.info_stream('IOStringArray <-', in_data[out_index])
out_data.append(in_data[i])
self.info_stream('IOStringArray ->',out_data[out_index])
out_index += 1
self.y = out_data
return out_data
#------------------------------------------------------------------
# ATTRIBUTES
#------------------------------------------------------------------
def read_attr_hardware(self, data):
self.info_stream('In read_attr_hardware')
def read_Long_attr(self, the_att):
self.info_stream("read_Long_attr")
the_att.set_value(self.attr_long)
def is_Long_attr_allowed(self, req_type):
return self.get_state() in (PyTango.DevState.ON,)
def read_Short_attr_rw(self, the_att):
self.info_stream("read_Short_attr_rw")
the_att.set_value(self.attr_short_rw)
def write_Short_attr_rw(self, the_att):
self.info_stream("write_Short_attr_rw")
self.attr_short_rw = the_att.get_write_value()
def is_Short_attr_rw_allowed(self, req_type):
return self.get_state() in (PyTango.DevState.ON,)
|
- Line 1
- The PyDsExp class has to inherit from the PyTango.Device_4Impl
- Line 3 to 6
- PyDsExp class constructor. Note that at line 6, it calls the init_device() method
- Line 8 to 12
- The init_device() method. It sets the device state (line 9) and initialises some data members
- Line 16 to 17
- The delete_device() method. This method is not mandatory. You define it only if you have to do something specific before the device is destroyed
- Line 23 to 30
- The two methods for the IOLong command. The first method is called is_IOLong_allowed() and it is the command is_allowed method (line 23 to 24). The second method has the same name than the command name. It is the method which executes the command. The command input data type is a Tango long and therefore, this method receives a python integer.
- Line 34 to 47
- The two methods for the IOStringArray command. The first method is its is_allowed method (Line 34 to 35). The second one is the command execution method (Line 37 to 47). The command input data type is a string array. Therefore, the method receives the array in a python list of python strings.
- Line 53 to 54
- The read_attr_hardware() method. Its argument is a Python sequence of Python integer.
- Line 56 to 59
- The method executed when the Long_attr attribute is read. Note that before PyTango 7 it sets the attribute value with the PyTango.set_attribute_value function. Now the same can be done using the set_value of the attribute object
- Line 61 to 62
- The is_allowed method for the Long_attr attribute. This is an optional
method that is called when the attribute is read or written. Not defining it
has the same effect as always returning True. The parameter req_type is of
type
AttReqtype
which tells if the method is called due to a read or write request. Since this is a read-only attribute, the method will only be called for read requests, obviously. - Line 64 to 67
- The method executed when the Short_attr_rw attribute is read.
- Line 69 to 72
- The method executed when the Short_attr_rw attribute is written. Note that before PyTango 7 it gets the attribute value with a call to the Attribute method get_write_value with a list as argument. Now the write value can be obtained as the return value of the get_write_value call. And in case it is a scalar there is no more the need to extract it from the list.
- Line 74 to 75
- The is_allowed method for the Short_attr_rw attribute. This is an optional
method that is called when the attribute is read or written. Not defining it
has the same effect as always returning True. The parameter req_type is of
type
AttReqtype
which tells if the method is called due to a read or write request.
General methods¶
The following array summarizes how the general methods we have in a Tango device server are implemented in Python.
Name | Input par (with “self”) | return value | mandatory |
---|---|---|---|
init_device | None | None | Yes |
delete_device | None | None | No |
always_executed_hook | None | None | No |
signal_handler | int |
None | No |
read_attr_hardware | sequence<int > |
None | No |
Implementing a command¶
Commands are defined as described above. Nevertheless, some methods implementing them have to be written. These methods names are fixed and depend on command name. They have to be called:
is_<Cmd_name>_allowed(self)
<Cmd_name>(self, arg)
For instance, with a command called MyCmd, its is_allowed method has to be called is_MyCmd_allowed and its execution method has to be called simply MyCmd. The following array gives some more info on these methods.
Name | Input par (with “self”) | return value | mandatory |
---|---|---|---|
is_<Cmd_name>_allowed | None | Python boolean | No |
Cmd_name | Depends on cmd type | Depends on cmd type | Yes |
Please check Data types chapter to understand the data types that can be used in command parameters and return values.
The following code is an example of how you write code executed when a client calls a command named IOLong:
1 2 3 4 5 6 7 8 9 | def is_IOLong_allowed(self):
self.debug_stream("in is_IOLong_allowed")
return self.get_state() == PyTango.DevState.ON
def IOLong(self, in_data):
self.info_stream('IOLong', in_data)
in_data = in_data * 2
self.info_stream('IOLong returns', in_data)
return in_data
|
- Line 1-3
- the is_IOLong_allowed method determines in which conditions the command ‘IOLong’ can be executed. In this case, the command can only be executed if the device is in ‘ON’ state.
- Line 6
- write a log message to the tango INFO stream (click here for more information about PyTango log system).
- Line 7
- does something with the input parameter
- Line 8
- write another log message to the tango INFO stream (click here for more information about PyTango log system).
- Line 9
- return the output of executing the tango command
Implementing an attribute¶
Attributes are defined as described in chapter 5.3.2. Nevertheless, some methods implementing them have to be written. These methods names are fixed and depend on attribute name. They have to be called:
is_<Attr_name>_allowed(self, req_type)
read_<Attr_name>(self, attr)
write_<Attr_name>(self, attr)
For instance, with an attribute called MyAttr, its is_allowed method has to be
called is_MyAttr_allowed, its read method has to be called read_MyAttr and
its write method has to be called write_MyAttr.
The attr parameter is an instance of Attr
.
Unlike the commands, the is_allowed method for attributes receives a parameter
of type AttReqtype
.
Please check Data types chapter to understand the data types that can be used in attribute.
The following code is an example of how you write code executed when a client read an attribute which is called Long_attr:
1 2 3 | def read_Long_attr(self, the_att):
self.info_stream("read attribute name Long_attr")
the_att.set_value(self.attr_long)
|
- Line 1
- Method declaration with “the_att” being an instance of the Attribute class representing the Long_attr attribute
- Line 2
- write a log message to the tango INFO stream (click here for more information about PyTango log system).
- Line 3
- Set the attribute value using the method set_value() with the attribute value as parameter.
The following code is an example of how you write code executed when a client write the Short_attr_rw attribute:
1 2 3 | def write_Short_attr_rw(self,the_att):
self.info_stream("In write_Short_attr_rw for attribute ",the_att.get_name())
self.attr_short_rw = the_att.get_write_value(data)
|
- Line 1
- Method declaration with “the_att” being an instance of the Attribute class representing the Short_attr_rw attribute
- Line 2
- write a log message to the tango INFO stream (click here for more information about PyTango log system).
- Line 3
- Get the value sent by the client using the method get_write_value() and store the value written in the device object. Our attribute is a scalar short attribute so the return value is an int