Skip to main content

NI-DAQmx Python API

Project description

Info

Contains a Python API for interacting with NI-DAQmx. See GitHub for the latest source.

Author

National Instruments

About

The nidaqmx package contains an API (Application Programming Interface) for interacting with the NI-DAQmx driver. The package is implemented in Python. This package was created and is supported by NI. The package is implemented as a complex, highly object-oriented wrapper around the NI-DAQmx C API using the ctypes Python library.

nidaqmx 0.5 supports all versions of the NI-DAQmx driver that ships with the C API. The C API is included in any version of the driver that supports it. The nidaqmx package does not require installation of the C header files.

Some functions in the nidaqmx package may be unavailable with earlier versions of the NI-DAQmx driver. Visit the ni.com/downloads to upgrade your version of NI-DAQmx.

nidaqmx supports only the Windows operating system.

nidaqmx supports CPython 2.7, 3.4+, PyPy2, and PyPy3.

Installation

Running nidaqmx requires NI-DAQmx or NI-DAQmx Runtime. Visit the ni.com/downloads to download the latest version of NI-DAQmx.

nidaqmx can be installed with pip:

$ python -m pip install nidaqmx

Or easy_install from setuptools:

$ python -m easy_install nidaqmx

You also can download the project source and run:

$ python setup.py install

Usage

The following is a basic example of using an nidaqmx.task.Task object. This example illustrates how the single, dynamic nidaqmx.task.Task.read method returns the appropriate data type.

>>> import nidaqmx
>>> with nidaqmx.Task() as task:
...     task.ai_channels.add_ai_voltage_chan("Dev1/ai0")
...     task.read()
...
-0.07476920729381246
>>> with nidaqmx.Task() as task:
...     task.ai_channels.add_ai_voltage_chan("Dev1/ai0")
...     task.read(number_of_samples_per_channel=2)
...
[0.26001373311970705, 0.37796597238117036]
>>> from nidaqmx.constants import LineGrouping
>>> with nidaqmx.Task() as task:
...     task.di_channels.add_di_chan(
...         "cDAQ2Mod4/port0/line1:3", line_grouping=LineGrouping.CHAN_PER_LINE)
...     task.read(number_of_samples_per_channel=2)
...
[[False, True], [True, True]]

A single, dynamic nidaqmx.task.Task.write method also exists.

>>> import nidaqmx
>>> from nidaqmx.types import CtrTime
>>> with nidaqmx.Task() as task:
...     task.co_channels.add_co_pulse_chan_time("Dev1/ctr0")
...     sample = CtrTime(high_time=0.001, low_time=0.001)
...     task.write(sample)
...
1
>>> with nidaqmx.Task() as task:
...     task.ao_channels.add_ao_voltage_chan("Dev1/ao0")
...     task.write([1.1, 2.2, 3.3, 4.4, 5.5], auto_start=True)
...
5

Consider using the nidaqmx.stream_readers and nidaqmx.stream_writers classes to increase the performance of your application, which accept pre-allocated NumPy arrays.

Following is an example of using an nidaqmx.system.System object.

>>> import nidaqmx.system
>>> system = nidaqmx.system.System.local()
>>> system.driver_version
DriverVersion(major_version=16L, minor_version=0L, update_version=0L)
>>> for device in system.devices:
...     print(device)
...
Device(name=Dev1)
Device(name=Dev2)
Device(name=cDAQ1)
>>> import collections
>>> isinstance(system.devices, collections.Sequence)
True
>>> device = system.devices['Dev1']
>>> device == nidaqmx.system.Device('Dev1')
True
>>> isinstance(device.ai_physical_chans, collections.Sequence)
True
>>> phys_chan = device.ai_physical_chans['ai0']
>>> phys_chan
PhysicalChannel(name=Dev1/ai0)
>>> phys_chan == nidaqmx.system.PhysicalChannel('Dev1/ai0')
True
>>> phys_chan.ai_term_cfgs
[<TerminalConfiguration.RSE: 10083>, <TerminalConfiguration.NRSE: 10078>, <TerminalConfiguration.DIFFERENTIAL: 10106>]
>>> from enum import Enum
>>> isinstance(phys_chan.ai_term_cfgs[0], Enum)
True

Support / Feedback

The nidaqmx package is supported by NI. For support for nidaqmx, open a request through the NI support portal at ni.com.

Bugs / Feature Requests

To report a bug or submit a feature request, please use the GitHub issues page.

Information to Include When Asking for Help

Please include all of the following information when opening an issue:

  • Detailed steps on how to reproduce the problem and full traceback, if applicable.

  • The python version used:

    $ python -c "import sys; print(sys.version)"
  • The versions of the nidaqmx, numpy, six and enum34 packages used:

    $ python -m pip list
  • The version of the NI-DAQmx driver used. Follow this KB article to determine the version of NI-DAQmx you have installed.

  • The operating system and version, for example Windows 7, CentOS 7.2, …

Documentation

Documentation is available here.

Additional Documentation

Refer to the NI-DAQmx Help for API-agnostic information about NI-DAQmx or measurement concepts.

NI-DAQmx Help installs only with the full version of NI-DAQmx.

License

nidaqmx is licensed under an MIT-style license (see LICENSE). Other incorporated projects may be licensed under different licenses. All licenses allow for non-commercial and commercial use.

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

nidaqmx-0.5.2.zip (272.9 kB view details)

Uploaded Source

Built Distribution

nidaqmx-0.5.2-py2.py3-none-any.whl (263.1 kB view details)

Uploaded Python 2 Python 3

File details

Details for the file nidaqmx-0.5.2.zip.

File metadata

  • Download URL: nidaqmx-0.5.2.zip
  • Upload date:
  • Size: 272.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No

File hashes

Hashes for nidaqmx-0.5.2.zip
Algorithm Hash digest
SHA256 aef21421d1caa4e7a5e080fceaf22b4ed970a2e83a8513715234a7cae1ac9610
MD5 1aca01328357f7e724f53cc0aa0da0e3
BLAKE2b-256 a75d8f85366869de02e3a97820f4c98cc0db17fb6b35ae2efe0c655b6791b5d0

See more details on using hashes here.

File details

Details for the file nidaqmx-0.5.2-py2.py3-none-any.whl.

File metadata

File hashes

Hashes for nidaqmx-0.5.2-py2.py3-none-any.whl
Algorithm Hash digest
SHA256 b7ae11f20ca2b9a0464555bc4e6d5b426a2c532508e0bed5ad2cc36c3c8da540
MD5 e8b55023c2572b1d2b65fc8c89382c30
BLAKE2b-256 12ae5cfafa8ba40e86517c9fde60ae0537ca634ceb32afbd4998a59a51209570

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page