I have some Python code example I'd like to share that should do something different if executed in the terminal Python / IPython or in the IPython notebook.
How can I check from my Python code if it's running in the IPython notebook?
The question is what do you want execute differently.
We do our best in IPython prevent the kernel from knowing to which kind of frontend is connected, and actually you can even have a kernel connected to many differents frontends at the same time. Even if you can take a peek at the type of
stderr/out to know wether you are in a ZMQ kernel or not, it does not guaranties you of what you have on the other side. You could even have no frontends at all.
You should probably write your code in a frontend independent manner, but if you want to display different things, you can use the rich display system (link pinned to version 4.x of IPython) to display different things depending on the frontend, but the frontend will choose, not the library.
To check if you're in a notebook, which can be important e.g. when determining what sort of progressbar to use, this worked for me:
def in_ipynb(): try: cfg = get_ipython().config if cfg['IPKernelApp']['parent_appname'] == 'ipython-notebook': return True else: return False except NameError: return False
The following worked for my needs:
'TerminalInteractiveShell' on a terminal IPython,
'ZMQInteractiveShell' on Jupyter (notebook AND qtconsole) and fails (
NameError) on a regular Python interpreter. The method
get_python() seems to be available in the global namespace by default when IPython is started.
Wrapping it in a simple function:
def isnotebook(): try: shell = get_ipython().__class__.__name__ if shell == 'ZMQInteractiveShell': return True # Jupyter notebook or qtconsole elif shell == 'TerminalInteractiveShell': return False # Terminal running IPython else: return False # Other type (?) except NameError: return False # Probably standard Python interpreter
The above was tested with Python 3.5.2, IPython 5.1.0 and Jupyter 4.2.1 on macOS 10.12 and Ubuntu 14.04.4 LTS
You can check whether python is in interactive mode using the following snippet :
def is_interactive(): import __main__ as main return not hasattr(main, '__file__')
I have found this method very useful because I do a lot of prototyping in the notebook. For testing purposes, I use default parameters. Otherwise, I read the parameters from
from sys import argv if is_interactive(): params = [<list of default parameters>] else: params = argv[1:]
Recently I encountered a bug in Jupyter notebook which needs a workaround, and I wanted to do this without loosing functionality in other shells. I realized that keflavich's solution does not work in this case, because
get_ipython() is available only directly from the notebook, and not from imported modules. So I found a way to detect from my module whether it is imported and used from a Jupyter notebook or not:
import sys def in_notebook(): """ Returns ``True`` if the module is running in IPython kernel, ``False`` if in IPython shell or other Python shell. """ return 'ipykernel' in sys.modules # later I found out this: def ipython_info(): ip = False if 'ipykernel' in sys.modules: ip = 'notebook' elif 'IPython' in sys.modules: ip = 'terminal' return ip
Comments are appreciated if this is robust enough.
Similar way it is possible to get some info about the client, and IPython version as well:
import sys if 'ipykernel' in sys.modules: ip = sys.modules['ipykernel'] ip_version = ip.version_info ip_client = ip.write_connection_file.__module__.split('.') # and this might be useful too: ip_version = IPython.utils.sysinfo.get_sys_info()['ipython_version']
I am using Django Shell Plus to launch IPython, and I wanted to make 'running in notebook' available as a Django settings value.
get_ipython() is not available when loading settings, so I use this (which is not bulletproof, but good enough for the local development environments it's used in):
import sys if '--notebook' in sys.argv: ENVIRONMENT = "notebook" else: ENVIRONMENT = "dev"
As far as I know, Here has 3 kinds of ipython that used
ipython qtconsole("qtipython" for short)
'spyder' in sys.modules can distinguish spyder
but for qtipython and jn are hard to distinguish cause
they have same
sys.modules and same IPython config:
I find a different between qtipython and jn:
os.getpid() in IPython shell get the pid number
ps -ef|grep [pid number]
my qtipython pid is 8699
yanglei 8699 8693 4 20:31 ? 00:00:01 /home/yanglei/miniconda2/envs/py3/bin/python -m ipykernel_launcher -f /run/user/1000/jupyter/kernel-8693.json
my jn pid is 8832
yanglei 8832 9788 13 20:32 ? 00:00:01 /home/yanglei/miniconda2/bin/python -m ipykernel_launcher -f /run/user/1000/jupyter/kernel-ccb962ec-3cd3-4008-a4b7-805a79576b1b.json
the different of qtipython and jn is the ipython's json name, jn's json name are longer than qtipython's
so, we can auto detection all Python Environment by following code:
import sys,os def jupyterNotebookOrQtConsole(): env = 'Unknow' cmd = 'ps -ef' try: with os.popen(cmd) as stream: if not py2: stream = stream._stream s = stream.read() pid = os.getpid() ls = list(filter(lambda l:'jupyter' in l and str(pid) in l.split(' '), s.split('\n'))) if len(ls) == 1: l = ls import re pa = re.compile(r'kernel-([-a-z0-9]*)\.json') rs = pa.findall(l) if len(rs): r = rs if len(r)<12: env = 'qtipython' else : env = 'jn' return env except: return env pyv = sys.version_info.major py3 = (pyv == 3) py2 = (pyv == 2) class pyi(): ''' python info plt : Bool mean plt avaliable env : belong [cmd, cmdipython, qtipython, spyder, jn] ''' pid = os.getpid() gui = 'ipykernel' in sys.modules cmdipython = 'IPython' in sys.modules and not gui ipython = cmdipython or gui spyder = 'spyder' in sys.modules if gui: env = 'spyder' if spyder else jupyterNotebookOrQtConsole() else: env = 'cmdipython' if ipython else 'cmd' cmd = not ipython qtipython = env == 'qtipython' jn = env == 'jn' plt = gui or 'DISPLAY' in os.environ print('Python Envronment is %s'%pyi.env)
the source code are here: Detection Python Environment, Especially distinguish Spyder, Jupyter notebook, Qtconsole.py