Questions tagged [dask]

Dask is a flexible parallel computing library for analytic computing. It supports dynamic task scheduling optimized for computation as well as big data collections.

8
votes
1answer
395 views

does npartitions influence the result of dask.dataframe.head()?

When running the following code, the result of dask.dataframe.head() depends on npartitions: import dask.dataframe as dd import pandas as pd df = pd.DataFrame({'A': [1,2,3], 'B': [2,3,4]}) ddf = dd....
2
votes
1answer
96 views

How to avoid an empty result with `Bag.take(n)` when using dask?

Context: Dask documentation states clearly that Bag.take() will only collect from the first partition. However, when using a filter it can occur that the first partition is empty, while others are not....
1
vote
2answers
126 views

single pass data transformation using dask to do same as basic pandas example

Im trying to understand how dask can help me do data transformation on a huge dataset. The task I need to perform is as the example below in pandas. import pandas as pd pdf = pd.DataFrame({'ID': ['A',...
1
vote
1answer
407 views

RAM issue with DASK and its from_pandas function

i'm trying to use DASK package in Python 3.4 for avoid RAM problems with large datasets, but i've notice a problem. Using native fucntion "read_csv" i load big dataset into a dask dataframe using ...
5
votes
1answer
885 views

Dask: very low CPU usage and multiple threads? is this expected?

I am using dask as in how to parallelize many (fuzzy) string comparisons using apply in Pandas? Basically I do some computations (without writing anything to disk) that invoke Pandas and Fuzzywuzzy (...
0
votes
1answer
483 views

DASK : IOError: [Errno 13] Permission denied:

I am using Dask 0.10 with the latest Anaconda distribution and I run into the following error after calling .compute(get=dask.multiprocessing.get) : File "<ipython-input-8-cd6a1c9a02b6>", ...
1
vote
1answer
583 views

dask dataframe apply not executing in parallel

I have the following python script, where I create a dask dataframe using an existing pandas dataframe. I'm using the multiprocessing scheduler, since my function use pure python. The scheduler ...
1
vote
1answer
590 views

How to draw a histogram in dask?

t is a dask array. I'd like to plot a histogram of t. Dask documentation has method dask.array.histogram(a, bins=None, range=None, normed=False, weights=None, density=None) but no example. I've ...
3
votes
1answer
62 views

What is the dask equivalent of numpy.tile?

Dask (http://dask.pydata.org/en/latest/array-api.html) is a flexible parallel computing library for analytics. It scales to big data, in constrast to Numpy and has many similar methods. How can I ...
1
vote
1answer
289 views

multiplication of large arrays in python

I have big arrays to multiply in large number of iterations also. I am training a model with array long around 1500 and I will perform 3 multiplications for about 1000000 times which takes a long ...
17
votes
2answers
4k views

how to parallelize many (fuzzy) string comparisons using apply in Pandas?

I have the following problem I have a dataframe master that contains sentences, such as master Out[8]: original 0 this is a nice sentence 1 this is another one 2 ...
0
votes
1answer
200 views

Parallelizing 3D numpy array calculation using dask.array.core.map_blocks

I have a 3D numpy array (dimensions: depth, latitude, longtitude) and I am trying to do some parallelized calculation using the data along the depth axis at each lat-lon point and so far I have been ...
1
vote
1answer
202 views

dask.array.reshape very slow

I have an array that I iteratively build up like follows: step1.shape = (200,200) step2.shape = (200,200,200) step3.shape = (200,200,200,200) and then reshape to: step4.shape = (200,200**3) I do ...
0
votes
1answer
312 views

memory exhaust on big matrix operation using dask

Currently I'm implementing this paper for my undergraduate theses with python, but I only use the mahalanobis metric learning (in case you're curious). In a shortcut, I face a problem when I need to ...
1
vote
1answer
87 views

Dask Bag.to_textfiles works with single partition but not multiple

Very briefly.. is this a bug or am I missing something? tmp_j is a bag with a single item and 6 partitions. However, I get similar responses with larger bags. This particular bag was constructed ...
2
votes
1answer
102 views

When using Bag.to_textfiles with dask, I get the error “AttributeError: 'dict' object has no attribute 'endswith'”

Title says most of it but the object in question is: >>> import dask.bag as db >>> b = db.from_sequence([{'name': 'Alice', 'balance': 100}, ... {'name': 'Bob'...
1
vote
1answer
202 views

Distributed dask matrix from flat text file

I'm attempting to read a flat text file (tab-delimited) representation of a matrix into a dask array, using distributed to distributed the chunks of the array across the cluster. (Aside: this is not ...
1
vote
1answer
192 views

Masking with 'where' using Python xarray is not working anymore

I am running into troubles after updating xarray. I have a salinity dataset whose dimensions are: (u'time', u'stations', u'layer') For a specific station, I want to get the salinity of a chosen ...
3
votes
1answer
468 views

using dask multi threaded module

I am trying to use dask's multi-threaded module. This code def foo(arg): return arg*2 jobs = [] t = delayed(foo)(100) jobs.append(t) j = delayed(jobs, pure=True) #j = j.compute() j = j.compute(...
0
votes
0answers
127 views

dask processes not terminating for some reason

My dask child processes are not terminating for some reason when I set num_workers to be large (like 10). My job is running on a 100+ core machine and running code similar to word count on a 50GB file....
1
vote
2answers
63 views

firing a sequence of parallel tasks

For this dask code: def inc(x): return x + 1 for x in range(5): array[x] = delay(inc)(x) I want to access all the elements in array by executing the delayed tasks. But I can't call array....
0
votes
1answer
98 views

how to use named arguments in dask task graph

How can I create a call with named arguments in creating a dask task graph? For instance: def foo (x=1, y=2): ... graph = { 'z': foo, "y=100" } This doesn't work.
8
votes
2answers
1k views

Dask Array from DataFrame

Is there a way to easily convert a DataFrame of numeric values into an Array? Similar to values with a pandas DataFrame. I can't seem to find any way to do this with the provided API, but I'd assume ...
3
votes
1answer
2k views

How do I actually get dask to compute a list of delayed or dask-container-based results?

I have a trivially parallelizable task of computing results independently for many tables split across many files. I can construct delayed or dask.dataframe lists (and have also tried with, e.g. a ...
2
votes
1answer
858 views

Read blocks of files in parallel from filesystem/S3 with Dask?

I'm putting together a proof of concept in which I want to use PyCuda to process large-ish files of character data (~8GB in one file per task) in a distributed environment - AWS to be specific. I'm ...
1
vote
1answer
184 views

How do you use dask + distributed for NFS files?

Working from Matthew Rocklin's post on distributed data frames with Dask, I'm trying to distribute some summary statistics calculations across my cluster. Setting up the cluster with dcluster ... ...
0
votes
1answer
119 views

Python dask program failing to produce output even though it seems to compute

I am confused as to why my dask program is not producing any output, it simply hangs after submitting. I have specified to use processes instead of threads and can see all of the cores fire up upon ...
3
votes
1answer
139 views

Difference in processing time between map_block and map_overlap is it due to dask.array to np.array conversion?

Introduction I have an image stack (ImgStack) made of 42 planes each of 2048x2048 px and a function that I use for the analysis: def All(ImgStack): some filtering more filtering I ...
0
votes
1answer
337 views

Memory error with dask array

I am implementing Neural Network whose input and output matrices are very large, so I am using dask arrays for storing them. X is input matrix of 32000 x 7500 and y is output matrix of same dimension....
0
votes
1answer
898 views

Python : Change dtype of dask array

Below is a dask array >>> import dask.array as da >>> x = da.random.normal(5,2,size=(3,3),chunks=(1,1)) >>> x dask.array<da.rand..., shape=(3, 3), dtype=float64, ...
4
votes
2answers
923 views

Applying a function along an axis of a dask array

I'm analyzing ocean temperature data from a climate model simulation where the 4D data arrays (time, depth, latitude, longitude; denoted dask_array below) typically have a shape of (6000, 31, 189, 192)...
1
vote
1answer
802 views

How do Dask dataframes handle larger-than-memory datasets?

The documentation of the Dask package for dataframes says: Dask dataframes look and feel like pandas dataframes, but operate on datasets larger than memory using multiple threads. But later in ...
2
votes
2answers
228 views

Array operations on dask arrays

I have got two dask arrays i.e., a and b. I get dot product of a and b as below >>>z2 = da.from_array(a.dot(b),chunks=1) >>> z2 dask.array<from-ar..., shape=(3, 3), dtype=int32, ...
1
vote
1answer
174 views

Python : Dot product of dask array

I am trying to do dot product of very large 2 dask arrays X (35000 x 7500) and Y(7500 x 10). As the dot product will also be very large I am storing it in hdf5 f = h5py.File('output.hdf5') f['output'...
4
votes
1answer
1k views

Item assignment to Python dask array objects

I've created a Python dask array and I'm trying to modify a slice of the array as follows: import numpy as np import dask.array as da x = np.random.random((20000, 100, 100)) # Create numpy array dx =...
0
votes
1answer
721 views

Using dask module to read large txt file

I am trying to read a large set of data using dask library as follows import dask.dataframe as dd df = dd.read_csv('some_file.txt', sep = '|', header = None) While this works fine and I get a set ...
2
votes
1answer
544 views

Name columns when importing csv to dataframe in dask

I would like to name columns when I import a csv to a dataframe with dask in Python.The code I use looks like this: for i in range(1, files + 1): filename = str(i) + 'GlobalActorsHeatMap.csv' ...
3
votes
0answers
305 views

Error while using dask to read in csv files

I am learning how to use dask.dataframe module to read in multiple csv files and when trying to read those, the error: ValueError: cannot convert float NaN to integer is thrown. My code is as follows:...
0
votes
2answers
133 views

optimizing dask Series filtering - lazy version of Series.isin()

I currently have the following pattern embedded inside a larger computation seq1.isin(seq2[seq3].unique().compute().values) where seq3 is a boolean Series. The performance seems acceptable, but it ...
3
votes
1answer
1k views

dask df.col.unique() vs df.col.drop_duplicates()

In dask what is the difference between df.col.unique() and df.col.drop_duplicates() Both return a series containing the unique elements of df.col. There is a difference in the index, unique result ...
2
votes
1answer
423 views

When are generators converted to lists in Dask?

In Dask, when do generators get converted to lists, or are they generally consumed lazily? For example, with the code: from collections import Counter import numpy as np import dask.bag as db def ...
0
votes
1answer
170 views

Does the Dask library for Python offer SVD yet?

The Dask FAQ mentions singular value decomposition (SVD), http://dask.pydata.org/en/latest/faq.html. But I don't see SVD in the API. I've installed 0.8.0, the latest version of PyPi. Thanks, Carl
0
votes
1answer
177 views

Is it possible to use dask imperative to build function graphs and then supply inputs later?

We're looking at using dask, in particular its lazy compute and dag capabilities. We have a moderately complicated compute dag, with unknown inputs. We want to be able to build it ahead of time, and ...
6
votes
1answer
888 views

dask computation not executing in parallel

I have a directory of json files that I am trying to convert to a dask DataFrame and save it to castra. There are 200 files containing O(10**7) json records between them. The code is very simple ...
12
votes
3answers
3k views

Speeding up reading of very large netcdf file in python

I have a very large netCDF file that I am reading using netCDF4 in python I cannot read this file all at once since its dimensions (1200 x 720 x 1440) are too big for the entire file to be in memory ...
2
votes
1answer
609 views

Multiplying large matrices with dask

I am working on a project which basically boils down to solving the matrix equation A.dot(x) = d where A is a matrix with dimensions roughly 10 000 000 by 2000 (I would like to increase this in both ...
2
votes
2answers
405 views

Combination of parallel processing and dask arrays to process multiple image stacks

I have a directory containing n h5 file each of which has m image stacks to filter. For each image, I will run the filtering (gaussian and laplacian) using dask parallel arrays in order to speed up ...
7
votes
1answer
2k views

Dask DataFrame Groupby Partitions

I have some fairly large csv files (~10gb) and would like to take advantage of dask for analysis. However, depending on the number of partitions I set the dask object to read in with, my groupby ...
1
vote
1answer
69 views

Dask's custom graph description

I'm Using dask custom graph How can i print the graph defeintion For example consider this grpah dsk = {'load-1': (load, 'myfile.a.data'), 'load-2': (load, 'myfile.b.data'), 'load-3'...
2
votes
1answer
173 views

Collecting attributes from dask dataframe providers

TL;DR: How can I collect metadata (errors during parsing) from distributed reads into a dask dataframe collection. I currently have a proprietary file format i'm using to feed into dask.DataFrame. I ...