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15

Summary of the chat discussion: CPU affinity is a mechanism for pinning a process to a particular CPU core, and the issue here is that sometimes importing numpy can end up pinning Python processes to CPU 0, as a result of linking against particular BLAS libraries. You can unpin all of your engines by running this cell: %%px import os import psutil from ...


8

It's actually more similar to subprocess.Popen( ... , stdout=PIPE) than you seem to be expecting. Just like the Popen object has a stdout attribute, which you can read to see the stdout of the subprocess, An AsyncResult has a stdout attribute that contains the stdout captured from the engines. It does differ in that AsyncResult.stdout is a list of strings, ...


6

The IPython notebook talks to the kernels over predefined ports. To talk to a remote kernel, you just need to forward the ports to the remote machine as part of the kernel initialisation, the notebook doesn't care where the kernel is as long as it can talk to it. You could either set up a wrapper script that gets called in the kernel spec file ...


6

The problem is that you're changing the PYTHONPATH just in the local process running the Client, and not in the remote processes running in the ipcluster. You can observe this behaviour if you run the next peace of code: from IPython.parallel import Client rc = Client() dview = rc[:] with dview.sync_imports(): import sys sys.path[:] = ...


5

You can see stdout in the meantime by accessing AsyncResult.stdout, which will return a list of strings, which are the stdout from each engine. The simplest case being: print ar.stdout You can wrap this in a simple function that prints stdout while you wait for the AsyncResult to complete: import sys import time from IPython.display import clear_output ...


4

You might underestimate the issue, there is no super-easy way to accomplish what you want. As a general guideline, you need to work at the operating system level to get things set up the way you want. You want to work with so-called "CPU affinity" and "memory affinity" and you need to think hard about your system architecture as well as your software ...


3

The problem is that Sire.System._System.System can't be serialized so it can't be sent to the child process. Multiprocessing uses the pickle module for serialization and you can frequently do a sanity check in the main program with pickle.dumps(my_mp_object) to verify. You have another problem, though (or I think you do, based on variable names). the map ...


3

What if you avoid creating a closure in root(b)? I would try def root(b): g = lambda a, b=b : f(a,b) return scipy.optimize.fsolve( g, 0.0 ) which for your example gives the expected result instead of the Pickle Error. Explanation: I believe the closure occurs because your lambda function was calling f(a,b) where b is a variable from the outer ...


3

You can scatter a dict with: def scatter_dict(view, name, d): """partition a dictionary across the engines of a view""" ntargets = len(view) keys = d.keys() # list(d.keys()) in Python 3 for i, target in enumerate(view.targets): subd = {} for key in keys[i::ntargets]: subd[key] = d[key] ...


3

From here: Instead of editing jupyter_notebook_config.py, edit jupyter_notebook_config.json and look for: "NotebookApp": { "server_extensions": [ <some lines> ] change this to: "NotebookApp": { "server_extensions": [ <some lines>, "ipyparallel.nbextension" ]


3

Does the fact that func calls func2 make func not be executed in parallel (ie. does the GIL come into play?) Not at all. The GIL is not at all relevant here, nor is it ever relevant in the parallelism in IPython.parallel. The GIL only comes up when coordinating threads within each engine, or within the Client process itself. I assume that when you ...


2

This is a bug in IPython 0.13 that should be fixed in master. There is a special case for serializing numpy arrays that avoids copying data, and this behavior is triggered by an isinstance(numpy.ndarray) check. This was inappropriate, because isinstance catches subclasses, which includes pandas objects, but those pandas objects (and array subclasses in ...


2

As of IPython 1.0, you can instruct %%px to also execute the cell locally. This is done using the "--local" flag. %%px --local http://nbviewer.ipython.org/github/ipython/ipython/blob/2.x/examples/Parallel%20Computing/Parallel%20Magics.ipynb


2

I took a slightly different approach to your problem that may be useful to others. Below, I attempted to mimic the behavior of the multiprocessing.pool.Pool.imap method by wrapping IPython.parallel.map. This required me to re-write your functions slightly. import IPython from itertools import product def stringcount((longstring, substrings)): scount = ...


2

IPython has a use_dill option, where if you have the dill serializer installed, you can serialize most "unpicklable" objects. How can I use dill instead of pickle with load_balanced_view


2

I solved the issue by sudo mkdir /etc/ipython/ sudo nano /etc/ipython/ipython_config.py add these lines: c = get_config() c.LocalControllerLauncher.controller_cmd = ['/usr/bin/python2', '-m', 'IPython.parallel.controller'] c.LocalEngineLauncher.engine_cmd = ['/usr/bin/python2', '-m', 'IPython.parallel.engine'] ...


2

IPython use kernel is a file in ~/.ipython/kernel/<name> that describe how to launch a kernel. If you create your own kernel (remote, or whatever) it's up to you to have the program run the remote kernel and bind locally to the port the notebook is expected.


2

I think my CWD is not in the right directory. So you can check your CWD >>> import os >>> print(dview.apply_sync(os.getcwd).get()) If it is in wrong directory, before parallel computing, you can set the right CWD to make sure you ipyparallel env is in the right work directory: >>> import os >>> dview.map(os.chdir, ...


2

Short answer sync_imports is unnecessary when you use module functions. This should be sufficient: # notebook: import ipyparallel as ipp client = ipp.Client() dview = client[:] import module dview.map_sync(module.pll, [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10]) and # module.py from matplotlib import pyplot def pll(x): pyplot.plot(x, '.') One caveat: You ...


2

Look in your home directory for a .jupyter folder. It should contain the file according to the docs: The notebook web server can also be configured using Jupyter profiles and configuration files. The Notebook web server configuration options are set in a file named jupyter_notebook_config.py in your Jupyter directory, which itself is usually .jupyter in ...


2

One year later, I eventually managed to get what I wanted. 1) Create a function with what you want to do on the different cpu. Here it is just calling a script from the bash with the ! magic ipython command. I guess it would work with the call() function. def my_func(my_file): !python pgm.py {my_file} Don't forget the {} when using ! Note also that ...


2

The sshserver arg to Client is only for when the Controller is not directly accessible from the Client (e.g. Client on laptop, Controller behind a firewall on a remote network). The Client doesn't ever need to know or care where Engines are. Further, ssh tunnels are only required when the machines are not accessible to each other. I'll assume that you don't ...


2

You can't use View.map with a generator without walking through the entire generator first. But you can write your own custom function to submit batches of tasks from a generator and wait for them incrementally. I don't have a more interesting example, but I can illustrate with a terrible implementation of a prime search. Start with our token 'data ...


2

The problem is now fixed: one needs to make sure the IPython versions are the same (mine are 0.13.2) on the cluster and on the machine you are using it. On the Linux machine I had to specify the version I needed to install as the standard IPython was installed with version 0.12.1: sudo apt-get install ipython=0.13.2-1~ubuntu12.04.1


1

Ipython parallel clients and controllers store past results and other metadata from past transactions. The IPython.parallel.Client class provides a method for clearing this data: Client.purge_everything() documented here. There is also purge_results() and purge_local_results() methods that give you some control over what gets purged.


1

It seems that with dview.sync_imports() is being run someplace other than your IPython Notebook environment and is therefore relying a different PYTHONPATH. It is definitely not being run on one of the cluster engines and so wouldn't expect it to leverage your cluster settings of PYTHONPATH. I'm thinking you'll need to have that directory in your ...


1

Remote jupyter kernel/kernels administration utility (the rk): https://github.com/korniichuk/rk Install the rk from GitHub: $ sudo pip install git+git://github.com/korniichuk/rk#egg=rk Setup SSH for auto login without a password: $ rk ssh Install a template of a remote jupyter kernel: $ rk install-template Change the kernel.json file: $ sudo gedit ...


1

Here's a simple way to find out the processes involved, print the list of current processes before I fire off the controller and engines and then print the list after they're fired off. There's a wmic command to get the job done... C:\>wmic process get description,executablepath Interestingly enough the controller gets 5 python processes going, and ...


1

You are asking multiprocessing (or other python parallel modules) to output to a data structure that they don't directly output to. If you use a Pool, from any of the parallel packages, the best you are going to get a list (using map) or an iterator (using imap). If you use shared memory from multiprocessing, you might be able to get the result into a ...


1

I found an answer: Remote introspection of ASyncResult objects is possible from another client as long as a 'database backend' has been enabled by the controller with: ipcontroller --dictb # or --mongodb or --sqlitedb Then, it is possible to create a new client instance and retrieve the results with: client.get_result(task_id) where the task_ids can be ...



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