# Tag Info

0

Had a similar problem, fixed it by calling python3 instead of python, my modules were in Python3.5.

0

It seems, that you constructed your figure manually, like fig=plt.figure() ? Then you can add a size directly as a tuple of x,y in inches: fig=plt.figure(figsize = (5, 7)) Indeed, this is the idea behind explicitly constructing the figure. If you don't want to configure anything, you don't have to mention the figure at all, you can just do plt.plot(...), ...

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You can configure the default size in your configuration. Look at this page, to identify how to create/locate a configuration. And then, open your config file in your favorit editor and look for a line # c.InlineBackend.rc = {'font.size': 10, 'figure.figsize': (6.0, 4.0), 'figure.facecolor': 'white', 'savefig.dpi': 72, 'figure.subplot.bottom': 0.125, ...

0

It's answered in this SO question: http://stackoverflow.com/a/634581/1339987 The command is who. Here is some sample code: In [9]: who You can also use whos for more detail, like this: In [10]: whos

1

You can use boolean arrays to select the ones that satisfy the condition: M_vir1[(8e+11 < M_vir1) & (M_vir1 < 2.4e+14)] Out[111]: array([ 2.32309127e+14, 2.22871759e+14, 2.17820810e+14])

0

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Using windows is not an issue. I hooked up to my notebook in AWS from my home computer. I have Windows 10. You can link up to AWS using putty. I am using a Ubuntu AMI. Once you have a terminal open you simply follow the instruction you gave in your link It worked like a charm for me.

0

This is crazy, and it makes no sense to me, but placing the plt.figure(figsize=(a,b)) line before I plot anything makes it work. I really don't understand how they structured these objects. from sklearn.metrics import confusion_matrix import matplotlib.pyplot as plt import numpy as np %matplotlib inline def plot_confusion_matrix(cm, title='Confusion ...

3

This may be an answer (from http://stackoverflow.com/a/16629125/5717589): When index is unique, pandas use a hashtable to map key to value. When index is non-unique and sorted, pandas use binary search, when index is random ordered pandas need to check all the keys in the index. So, if entries are unique, np.nan gets hashed I think. In a ...

0

Hmmm... this might be considered a bug but it seems like this problem occurs if your columns are labeled with the same label, in this case as foo. If I switch up the labels, the issue disappears: mapping2 = pd.DataFrame(['foo','boo'], index=range(2), columns=['test']) I also attempted to call the columns by their index positions ...

0

Using ipywidgets, an instance of a control class can be passed to interact. from ipywidgets import interact, FloatSlider def update(a): print a interact(update, a=FloatSlider(min=1000., max=100000., step=1000, value=R10, description='Parameter A')) The GitHub repo has many great examples.

1

You need to create an instance of the class first. MassFunction myinstance = MassFunction() myinstance.NofM(halomass3,100, 75000)

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The function NofM doesn't depend on self so it can be defined as a class method. Class methods are created with @classmethod decorator to make them that doesn't require a first implicit argument self. Update the method as follows: @classmethod def NofM(cls, masses, numbins, boxsize): ... Class methods receives the class (cls) as implicit first ...

0

Because the return value of raw_input is str, you should try n = int(raw_input("Please enter a number: ")) instead.

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You forgot to turn the string n you get from raw_input into an integer. Since the comparison is done by type name in this case b < n will always be True. Use n = int(raw_input("Please enter a number: "))

0

Thanks to darkf in the #learnprogramming channel; this is caused by the type of the item returned from the ax.get_xticks() method which is numpy.int32; so it's likely returning a pointer reference rather than the actual int. Corrected line of code: x.set_xticklabels([(datetime(year=2015,month=12,day=28)+timedelta(minutes=15*(int(x)))).strftime('%H:%M') for ...

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I am running Jupyter on Google Cloud Platform using Tensorflow Docker image and it was located at /usr/local/lib/python2.7/dist-packages/notebook/static/custom/. In Any case, you can find it by searching for it.

1

You can still set up things with the same initial steps, ie create a profile using ipython profile create pyspark and place the startup script in $(ipython profile locate pyspark)/startup/. Next, to make it available in Jupyter notebooks you have to specify a kernel that uses that profile, by creating a file$(ipython locate)/kernels/pyspark/kernel.json. ...

0

Your code can run and create a file where you run iPython. (Of course you must initialized both of used variable) If you run iPython from terminal or command prompt, which directory is your actual path will contain the new file.

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The file should be opened in binary writing mode: f = open("featuresvmt.txt", "wb"). The file featuresvmt.txt will be created in the current working directory. You can find the current working directory using os.getcwd(). Or, simply supply an absolute path: f = open("/path/to/featuresvmt.txt", "wb"). import pickle as pk feature_svmt, out_val = 'foo', ...

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If you run the IPython as administrator you won't run into error for starting a new notebook. To do that right click on the Ipython shortcut and click on run as administrator.

0

I was looking for the same thing again and again, getting tired of having to load dozens of arrays each time in the way: data = np.load("file.npz") var1 = data["my_var1"] ... Since I let computations regularly run on the campus cluster and post-process the results (numpy arrays) on my laptop, I really appreciate the free Spyder IDE (which btw runs an ...

0

You could use df.dropna() to ensure NULL values are ignored. For example, import numpy as np import pandas as pd df = pd.DataFrame({'foo': [1, np.nan, 1, 2, 3, 2, 3, np.nan, float('nan'), np.nan, float('nan'), 'xyz']}) print(df.dropna().loc[df['foo'].duplicated()]) yields foo 2 1 5 2 6 3 Note that ...

1

Unfortunately there is not a way to capture a returned value from a cell magic. With a line magic you can do: a = %prun -r ... But cell magics have to start at the beginning of the cell, with nothing before them.

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It might be a registry problem on Windows: https://github.com/ipython/ipython/issues/7024

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Latest version of Ipython/Jupyter notebook allows selection of multiple cells using shift key which can be useful for batch operations such as copy, paste, delete, etc.

2

try concerts = pd.read_csv(path1, encoding = 'utf8') if that doesnt work try concerts = pd.read_csv(path1, encoding = "ISO-8859-1")

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Use on_status(self, status) in the listener class: class StdOutListener(tweepy.StreamListener): def on_status(self, status): print status.text print status.id

0

Use an "evaluate(False)" block to stop the simplifaction/evaluation rules: (I am using Python 3.4, sympy 0.7) with evaluate(False): print(sqrt(4*x)) sqrt(4*x) >>>

0

The best way so far is to use the hide_code package (https://pypi.python.org/pypi/hide_code/0.1.5). To install: $pip install hide_code This will enable you to hide or display the content of each individual cell. It is great ! Though I hope the vertical scroll bar for input cells will be available soon. 0 I'm self-answering, in case anyone else runs into the same problem. Looks like the answers are here: Set LD_LIBRARY_PATH before importing in python Changing LD_LIBRARY_PATH at runtime for ctypes According to these answers (and my experience), the linker reads LD_LIBRARY_PATH when python is launched, so changing it from within python doesn't have any ... 4 Thanks to Thomas, here is the solution I was looking for: from IPython.core.interactiveshell import InteractiveShell InteractiveShell.ast_node_interactivity = "all" 0 Okay so my problem was that pip was installed, but in a location that was not included in my$PATH variable. One of the answers here is relevant.

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May be there is an error locating the pyspark shell by the spark. export PYTHONPATH=$SPARK_HOME/python/:$PYTHONPATH export PYTHONPATH=$SPARK_HOME/python/lib/py4j-0.9-src.zip:$PYTHONPATH This will work for Spark 1.6.1. If you have a different version try locating the .zip file and adding the path to the extract.

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Update TL;DR Right click on a formula > Math Settings > Math Renderer > MathML Create a bookmarklet from: javascript:(function() { var inline = document.getElementsByClassName("MathJax_MathML"); for (var i = 0; i < inline.length; i++) { var math = inline[i]; math.innerHTML = '<span>$</span>' + math.innerHTML + '<span>$</span>'; ...

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The following should work: myNotebook = <relative path to notebook> %run $myNotebook or simply %run <relative path to notebook> 0 Try this: import numpy as np df1.ix[df1.spend == 0, 'spend'] = np.nan I hope this helps 1 you need to use this command:$ source activate envir1 To exit this environment and return to the root one: \$ source deactivate

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Here is one workaround, I would suggest that you to try without depending on pyspark to load context for you:- Install finspark python package from !pip install findspark Then simply import and initialize the sparkcontext:- import findspark import os findspark.init() import pyspark sc = pyspark.SparkContext() Reference: ...

1

You must either print it, or display it from different cells, or display it from the same line - Jupyter displays the last result a=3 a out[1]: 3 (other cell) a+1 out[2]: 4 or: a=3 print(a) print(a+1) out[3]: 3 4 or: a=3 a, a+1 out[4]: (3, 4)

0

This question keeps coming up when I search for ipython change pwd even though I am not interested in a notebook, but a terminal or qtconsole. Not finding a relevant config entry I tried: # lines of code to run at IPython startup. c.InteractiveShellApp.exec_lines = ['%cd /home/paul/mypy'] This is the base level shell class; there are Terminal and Console ...

1

Refusing to serve hidden directory, via 404 Error points to no write permissions on the drive. IF you change security permissions on your D:\, you can use it as a default folder for Jupyter Notebook. You have to turn off UAC (User Account Control settings) from the Windows Control Panel (it blocks programs from writing to the root directory for security, ...

0

Not sure if this applies to your python 3.4 problem, but when I run your code on python 2.7.9, the map method generates an async object and not a dictionary. In order to get a dictionary using the map method, I have to use list comprehension to iterate through the async object. The map_sync method however works just fine. Here's a code snippet if you'd ...

1

Use unconfined=True to disable max-width confinement of the image: from IPython.core.display import Image, display display(Image('https://i.ytimg.com/vi/j22DmsZEv30/maxresdefault.jpg', width=1900, unconfined=True))

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IPython console to Editor -- Command + Shift + E Editor to IPython console -- Command + Shift + I

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You can try with c = c.loc[c.years_exp == 'NaN'] or c = c.loc[c.years_exp == None] or c = c.loc[c.years_exp.isnull()]

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You need isnull for checking NaN values: print (rr[rr.years_exp.isnull()]) Docs: Warning One has to be mindful that in python (and numpy), the nan's don’t compare equal, but None's do. Note that Pandas/numpy uses the fact that np.nan != np.nan, and treats None like np.nan. In [11]: None == None Out[11]: True In [12]: np.nan == np.nan Out[12]: ...

0

Normally the exception should be TypeError: 'NoneType' has no attribute '__getitem__' But however, you can not run this: scores.sort()[:20] That's simply because list.sort() modifies the list in-place and does not return anything (that means it implicitly returns None). So you either have to place the scores.sort() in a separate statement before the ...

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The file "custom_dark.css" is actually an html fragment containing a <style> tag and posing as a css file. When you "display" it by calling the HTML function, the fragment is inserted in the DOM inside a special div in the cell output area, causing a global change to the style of the html page. When you save the resulting notebook, all output is ...

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A sign of a good environment is many choices, so I'll add this from Anaconda Blaze, really using Odo import blaze as bz import pandas as pd df = pd.DataFrame({'col1':[1,2,3,4,5], 'col2':[2,4,6,8,10]}) for chunk in bz.odo(df, target=bz.chunks(pd.DataFrame), chunksize=2): # Do stuff with chunked dataframe

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