My server runs many long running notebooks, and I'd like to monitor the notebooks memory.

Is there a way to match between the pid or process name and a notebook?

6 Answers 6


Since the question is about monitoring notebooks' memory, I've written a complete example showing the memory consumption of the running notebooks. It is based on the excellent @jcb91 answer and a few other answers (1, 2, 3, 4).

import json
import os
import os.path
import posixpath
import subprocess
import urllib2

import pandas as pd
import psutil

def show_notebooks_table(host, port):
    """Show table with info about running jupyter notebooks.

        host: host of the jupyter server.
        port: port of the jupyter server.

        DataFrame with rows corresponding to running notebooks and following columns:
            * index: notebook kernel id.
            * path: path to notebook file.
            * pid: pid of the notebook process.
            * memory: notebook memory consumption in percentage.
    notebooks = get_running_notebooks(host, port)
    prefix = long_substr([notebook['path'] for notebook in notebooks])
    df = pd.DataFrame(notebooks)
    df = df.set_index('kernel_id')
    df.index.name = prefix
    df.path = df.path.apply(lambda x: x[len(prefix):])
    df['pid'] = df.apply(lambda row: get_process_id(row.name), axis=1)
    # same notebook can be run in multiple processes
    df = expand_column(df, 'pid')
    df['memory'] = df.pid.apply(memory_usage_psutil)
    return df.sort_values('memory', ascending=False)

def get_running_notebooks(host, port):
    """Get kernel ids and paths of the running notebooks.

        host: host at which the notebook server is listening. E.g. 'localhost'.
        port: port at which the notebook server is listening. E.g. 8888.
        username: name of the user who runs the notebooks.

        list of dicts {kernel_id: notebook kernel id, path: path to notebook file}.
    # find which kernel corresponds to which notebook
    # by querying the notebook server api for sessions
    sessions_url = posixpath.join('http://%s:%d' % (host, port), 'api', 'sessions')
    response = urllib2.urlopen(sessions_url).read()
    res = json.loads(response)
    notebooks = [{'kernel_id': notebook['kernel']['id'],
                  'path': notebook['notebook']['path']} for notebook in res]
    return notebooks

def get_process_id(name):
    """Return process ids found by (partial) name or regex.

    Source: https://stackoverflow.com/a/44712205/304209.
    >>> get_process_id('kthreadd')
    >>> get_process_id('watchdog')
    [10, 11, 16, 21, 26, 31, 36, 41, 46, 51, 56, 61]  # ymmv
    >>> get_process_id('non-existent process')
    child = subprocess.Popen(['pgrep', '-f', name], stdout=subprocess.PIPE, shell=False)
    response = child.communicate()[0]
    return [int(pid) for pid in response.split()]

def memory_usage_psutil(pid=None):
    """Get memory usage percentage by current process or by process specified by id, like in top.

    Source: https://stackoverflow.com/a/30014612/304209.

        pid: pid of the process to analyze. If None, analyze the current process.

        memory usage of the process, in percentage like in top, values in [0, 100].
    if pid is None:
        pid = os.getpid()
    process = psutil.Process(pid)
    return process.memory_percent()

def long_substr(strings):
    """Find longest common substring in a list of strings.

    Source: https://stackoverflow.com/a/2894073/304209.

        strings: list of strings.

        longest substring which is found in all of the strings.
    substr = ''
    if len(strings) > 1 and len(strings[0]) > 0:
        for i in range(len(strings[0])):
            for j in range(len(strings[0])-i+1):
                if j > len(substr) and all(strings[0][i:i+j] in x for x in strings):
                    substr = strings[0][i:i+j]
    return substr

def expand_column(dataframe, column):
    """Transform iterable column values into multiple rows.

    Source: https://stackoverflow.com/a/27266225/304209.

        dataframe: DataFrame to process.
        column: name of the column to expand.

        copy of the DataFrame with the following updates:
            * for rows where column contains only 1 value, keep them as is.
            * for rows where column contains a list of values, transform them
                into multiple rows, each of which contains one value from the list in column.
    tmp_df = dataframe.apply(
        lambda row: pd.Series(row[column]), axis=1).stack().reset_index(level=1, drop=True)
    tmp_df.name = column
    return dataframe.drop(column, axis=1).join(tmp_df)

Here is an example output of show_notebooks_table('localhost', 8888):

example output of show_notebooks_table

  • 1
    very nice! one small correction that I had to do, my notebooks don't have a common prefix, so the function long_substr returned .ipynb, so I removed that past since it just truncated 6 chars from each start of a path
    – lev
    Jul 6, 2017 at 6:54
  • thank you for accepting the answer! Feel free to update the code in it so that it works in your case too. Jul 6, 2017 at 11:38
  • 7
    With python3, after substituting urllib.request for urllib2, I am getting a 403 error at this line: response = urllib.request.urlopen(sessions_url).read()....
    – Him
    May 27, 2019 at 18:21
  • 1
    @Him I think the issue is authorization - jupyter has increased the security and now you need to add an authorization header like token or password. Here is a gist gist.github.com/2torus/dbeb47b81eb18f2baf20bff6adf7b805 that prompts you for a token and then adds it to request headers.
    – Torus
    Nov 12, 2020 at 20:10

I came here looking for the simple answer to this question, so I'll post it for anyone else looking.

import os
  • 1
    Brilliant in its simplicity!
    – Hugues
    Jun 27, 2022 at 21:51

This is possible, although I could only think of the rather hackish solution I outline below. In summary:

  1. Get the ports each kernel (id) is listening on from the corresponding json connection files residing in the server's security directory
  2. Parse the output of a call to netstat to determine which pid is listening to the ports found in step 1
  3. Query the server's sessions url to find which kernel id maps to which session, and hence to which notebook. See the ipython wiki for the api. Although not all of it works for me, running IPython 2.1.0, the sessions url does.

I suspect there is a much simpler way, but I'm not sure as yet where to find it.

import glob
import os.path
import posixpath
import re
import json
import subprocess
import urllib2

# the url and port at which your notebook server listens
server_path = 'http://localhost'
server_port = 8888
# the security directory of the notebook server, containing its connections files
server_sec_dir = 'C:/Users/Josh/.ipython/profile_default/security/'

# part 1 : open all the connection json files to find their port numbers
kernels = {}
for json_path in glob.glob(os.path.join(server_sec_dir, 'kernel-*.json')):
    control_port = json.load(open(json_path, 'r'))['control_port']
    key = os.path.basename(json_path)[7:-5]
    kernels[control_port] = {'control_port': control_port, 'key': key}

# part2 : get netstat info for which processes use which tcp ports
netstat_ouput = subprocess.check_output(['netstat', '-ano'])
# parse the netstat output to map ports to PIDs
netstat_regex = re.compile(
    "^\s+\w+\s+" # protocol word
    "\d+(\.\d+){3}:(\d+)\s+" # local ip:port
    "\d+(\.\d+){3}:(\d+)\s+" # foreign ip:port 
    "LISTENING\s+" # connection state
    "(\d+)$" # PID
for line in netstat_ouput.splitlines(False):
    match = netstat_regex.match(line)
    if match and match.lastindex == 5:
        port = int(match.group(2))
        if port in kernels:
            pid = int(match.group(5))
            kernels[port]['pid'] = pid

# reorganize kernels to use 'key' as keys
kernels = {kernel['key']: kernel for kernel in kernels.values()}

# part 3 : find which kernel corresponds to which notebook
# by querying the notebook server api for sessions
sessions_url = posixpath.join('%s:%d' % (server_path, server_port),
response = urllib2.urlopen(sessions_url).read()
for session in json.loads(response):
    key = session['kernel']['id']
    if key in kernels:
        nb_path = os.path.join(session['notebook']['path'],
        kernels[key]['nb_path'] = nb_path

# now do what you will with the dict. I just print a pretty list version:
print json.dumps(kernels.values(), sort_keys=True, indent=4)

outputs (for me, at the moment):

        "key": "9142896a-34ca-4c01-bc71-e5709652cac5",
        "nb_path": "2015/2015-01-16\\serhsdh.ipynb",
        "pid": 11436,
        "port": 56173
        "key": "1ddedd95-5673-45a6-b0fb-a3083debb681",
        "nb_path": "Untitled0.ipynb",
        "pid": 11248,
        "port": 52191
        "key": "330343dc-ae60-4f5c-b9b8-e5d05643df19",
        "nb_path": "ipynb\\temp.ipynb",
        "pid": 4680,
        "port": 55446
        "key": "888ad49b-5729-40c8-8d53-0e025b03ecc6",
        "nb_path": "Untitled2.ipynb",
        "pid": 7584,
        "port": 55401
        "key": "26d9ddd2-546a-40b4-975f-07403bb4e048",
        "nb_path": "Untitled1.ipynb",
        "pid": 10916,
        "port": 55351

Adding to the Dennis Golomazov's answer to:

  • Make the code compatible with Python 3
  • Allow to login into a password-protected session

I replaced the get_running_notebooks function by this one (source):

import requests
import posixpath
import json

def get_running_notebooks(host, port, password=''):
    Get kernel ids and paths of the running notebooks.

        host: host at which the notebook server is listening. E.g. 'localhost'.
        port: port at which the notebook server is listening. E.g. 8888.
        list of dicts {kernel_id: notebook kernel id, path: path to notebook file}.
    BASE_URL = 'http://{0}:{1}/'.format(host, port)
    # Get the cookie data
    s = requests.Session()
    url = BASE_URL + 'login?next=%2F'
    resp = s.get(url)
    xsrf_cookie = resp.cookies['_xsrf']

    # Login with the password
    params = {'_xsrf': xsrf_cookie, 'password': password}
    res = s.post(url, data=params)

    # Find which kernel corresponds to which notebook
    # by querying the notebook server api for sessions
    url = posixpath.join(BASE_URL, 'api', 'sessions')
    ret = s.get(url)
    #print('Status code:', ret.status_code)

    # Get the notebook list
    res = json.loads(ret.text)
    notebooks = [{'kernel_id': notebook['kernel']['id'],
                  'path': notebook['notebook']['path']} for notebook in res]
    return notebooks

Here is a solution that solves the access issue mentioned in other posts by first obtaining the access-token via jupyter lab list.

import requests
import psutil
import re
import os
import pandas as pd

# get all processes that have a ipython kernel and get kernel id
dfp = pd.DataFrame({'p':  [p for p in psutil.process_iter() if 'ipykernel_launcher' in ' '.join(p.cmdline())]})
dfp['kernel_id'] = dfp.p.apply(lambda p: re.findall(r".+kernel-(.+)\.json", ' '.join(p.cmdline()))[0])

# get url to jupyter server with token and open once to get access
urlp = requests.utils.parse_url([i for i in os.popen("jupyter lab list").read().split() if 'http://' in i][0])
s = requests.Session()
res = s.get(urlp)

# read notebook list into dataframe and get kernel id
resapi = s.get(f'http://{urlp.netloc}/api/sessions')
dfn = pd.DataFrame(resapi.json())
dfn['kernel_id'] = dfn.kernel.apply(lambda item: item['id'])

# merge the process and notebook dataframes
df = dfn.merge(dfp, how = 'inner')

# add process info as desired
df['pid'] = df.p.apply(lambda p: p.pid)
df['mem [%]'] = df.p.apply(lambda p: p.memory_percent())
df['cpu [%]'] = df.p.apply(lambda p: p.cpu_percent())
df['status'] = df.p.apply(lambda p: p.status())

# reduce to columns of interest and sort
dfout = df.loc[:,['name','pid','mem [%]', 'cpu [%]','status']].sort_values('mem [%]', ascending=False)

I have asked similar question and in order to make it a duplicate I "reverse engineer" Dennis Golomazov's answer with focus on matching notebooks in a generic way (also manually).

  1. Get json from the api/sessions path of your Jupyter server (i.e. https://localhost:8888/api/sessions in most cases).
  2. Parse the json. It is a sequence of session objects (nested dicts if parsed with json module). Their .path attributes point to the notebook file, and .kernel.id is the kernel id (which is a part of path passed as an argument of python -m ipykernel_launcher, in my case `{PATH}/python -m ipykernel_launcher -f {HOME}/.local/share/jupyter/runtime/kernel-{ID}.json).
  3. Find PID of process run with that path (e.g. by pgrep -f {ID}).

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