Join us in building a kind, collaborative learning community via our updated Code of Conduct.

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.

0
votes
0answers
7 views

Dask DummyEncoder not returning all the columns

I tried using dask DummyEncoder for OneHotEncoding my data. But the results are not as expected. dask's DummyEncoder Example: from dask_ml.preprocessing import DummyEncoder import pandas as pd data ...
0
votes
0answers
17 views

dask multiprocessing.get stuck during custom graph computation

Here a minimal example of an otherwise more complicated custom graph for dask. When computing the result with get the execution freezes. The issue occurs when importing from dask.multiprocessing ...
0
votes
0answers
26 views

Efficient pairwise comparison of rows in pandas DataFrame

I am currently working with a smallish dataset (about 9 million rows). Unfortunately, most of the entries are strings, and even with coercion to categories, the frame sits at a few GB in memory. What ...
0
votes
0answers
9 views

Adding columns in a Dask DataFrame overload one worker

I'm trying Dask just for the fun of it, and grasp the good practice. After some try and error, I got the hand of Dask Array. Now with Dask DataFrame, I don't seem to be able to extend the DataFrame in ...
0
votes
0answers
12 views

Remove unnecessary output from dask.dataframe.head()

I ran the following piece of code: import dask.dataframe as dd import csv html_data=dd.read_csv('html_data.csv',quoting=3,error_bad_lines=False) html_data.head() The output was: b'Skipping line 5: ...
3
votes
2answers
78 views

Element-wise operations of arrays of different size

What would be the fastest and most pythonic way to perform element-wise operations of arrays of different size without oversampling the smaller array? For example: I have a large array, A 1000x1000 ...
0
votes
0answers
9 views

How to set number of thread on worker node for dask in cluster mode?

I have one Dask schedule and 4 workers. Each worker has 4 cpu and 8GB. When I specify the number of thread to run in the workers, it doesn't work. It always just default to the number of cpu(4). Here ...
0
votes
0answers
23 views

Error: No module name 'Custom Class' while passing a Client object in the custom class's constructor in dask

I have been trying to write custom classes for Preprocessing followed by Feature selection and Machine Learning algorithms as well. I cracked this (preprocessing only) using @delayed. But when I read ...
1
vote
0answers
11 views

downsample dask dataframe - possibly stratified

I have a large dask dataframe with a dependent variable Y to be used for binary probabilistic classification. I would like to down sample this (ideally stratified supposedly based on priors of Y?). ...
0
votes
0answers
8 views

how to set meta for dask apply_over_axes call

The following code a = da.random.normal(0, 1., size=(100, 100), chunks=(15, 15)) def cut(x,y): try: res = np.int8(np.digitize(x[0]+x[1], [.25,.50,.75])) except: res = np.int8(...
0
votes
0answers
11 views

dask distributed error when wrapping numpy random generator

Dask is great, yet when moving to use distributed, there are some things to take care of. However, the following example shows use of a random generator wrapper for numpy that breaks with dask ...
0
votes
0answers
11 views

dask xgboost giving different answers compared to xgboost

I am running the same piece of code on Normal XGBoost and Dask XGBoost. I am getting different probabilities from both models. Normal XGBoost Code params = {'objective': 'binary:logistic', 'nround'...
0
votes
0answers
14 views

Dask workers run out of memory just before finishing when writing parquet files

I am trying to convert a number of large .csv files to the parquet format using python and dask. This is the code that I use: trans = dd.read_csv(os.path.join(TRANS_PATH, "*.TXT"), ...
0
votes
1answer
18 views

All tasks assigned to one worker when using Dask in adaptive mode

When using Dask normally things work fine. However, when I use Dask with an adaptive cluster I find that sometimes all the tasks get assigned to a single worker. Why is this?
2
votes
1answer
37 views

Cleanest way to support xarray, dask, and numpy arrays in one function

I have a function that accepts multiple 2D arrays and creates two new arrays with the same shape. It was originally written to only support numpy arrays, but was "hacked" to support dask arrays if a "...
0
votes
0answers
9 views

Dask.groupby turns multiple partitions into one

I have a dask.dataframe df2 = dd.read_csv(path, dtype=dtypes, sep=',', error_bad_lines=False) which is split into 220 partitions by dask itself print(df2.npartitions) >>220 I'd like to use ...
0
votes
1answer
29 views

Drop column using Dask dataframe

This should work: raw_data.drop('some_great_column', axis=1).compute() But the column is not dropped. In pandas I use: raw_data.drop(['some_great_column'], axis=1, inplace=True) But inplace does ...
2
votes
0answers
27 views

write dask dataframe to one file

I can write a massive dask data frame to disk like so: raw_data.to_csv(r'C:\Bla\SubFolder\*.csv') This produces chunked data of the original (massaged) dataset in the subfolder: C:\Bla\SubFolder\ ...
0
votes
0answers
30 views

Error importing dask library python

I am getting started with dask and dask_ml. I have had no issues performing simple operations with dask but have been unable to successfully import dask_ml. The installation of the library was ...
0
votes
1answer
22 views

Export dask groups to csv

I have a single, large, file. It has 40,955,924 lines and is >13GB. I need to be able to separate this file out into individual files based on a single field, if I were using a pd.DataFrame I would ...
-1
votes
1answer
25 views

How to save a dask series to hdf5

Here is what I tried first df = dd.from_pandas(pd.DataFrame(dict(x=np.random.normal(size=100), y = np.random.normal(size=100))), chunksize=40) cat = df.map_partitions( lambda d: np.digitize(d['x']+...
0
votes
1answer
16 views

dask.read_parquet causes OOM Error

I have been using dask to perform data cleansing on multiple csv files. This code works fine: import pandas as pd import glob import os from timeit import default_timer from dask.distributed import ...
0
votes
1answer
11 views

In a dask distributed setup the worker sits idle

I'm trying to setup a dask distributed cluster, I've installed dask on three machines to get started: laptop (where searchCV gets called) scheduler (small box where the dask scheduler process lives) ...
0
votes
1answer
24 views

Restore precomputed index

I have approx. 1.5 TB of data stored in csv files. I have loaded it with dask and computed index with .set_index(sorted=True). The operation took 9 hours. Now my dataframe has got divisions filled ...
1
vote
1answer
23 views

What's the difference between dask=parallelized and dask=allowed in xarray's apply_ufunc?

In the xarray documentation for the function apply_ufunc it says: dask: ‘forbidden’, ‘allowed’ or ‘parallelized’, optional How to handle applying to objects containing lazy data in the form of ...
0
votes
1answer
29 views

Dask client runs out of memory loading from S3

I have a s3 bucket with a lot of small files, over 100K that add up to about 700GB. When loading the objects from a data bag and then persist the client always runs out of memory, consuming gigs very ...
0
votes
0answers
22 views

Cannot save Dask array made with delayed and lock to hdf5 file

Saving a Dask array built from delayed with lock causes error: TypeError: can't pickle _thread._local objects Just computing the Dask array does not cause error. Test: import numpy as np import ...
1
vote
0answers
18 views

Dask-Submit not hitting Dask Remote pod

I'm having issues with dask-submit giving me a 'CommClosedError: Stream is closed' error when trying to run code on the dask-remote pod. I can see the code executes in the dask-scheduler UI but there ...
1
vote
1answer
42 views

Reading a Block Structured ASCII file using Dask

I have a ASCII file structured in blocks as follows (simplified version): DATASET OBJTYPE "mesh2d" BEGSCL ND 4 NC 10 NAME "Depth" TIMEUNITS SECONDS TS 0 0.00 1.0 2.0 3.0 4.0 TS 0 180.00 1.1 2.1 3.1 ...
0
votes
0answers
26 views

streamz exception on dask gather

i am trying to use streamz to manage an image processing pipeline. I am simulating a camera using the class Camera and have set up the pipeline below. import time from skimage.io import imread from ...
0
votes
0answers
26 views

what is the equivalent of np.fill_diagonal in dask

I have a correlation matrix, where I fill the diagonals with 1 using np.fill_diagonal and then take the upper triangle using np.triu. but for the correlation matrix I am using dataframe.corr which ...
1
vote
2answers
28 views

Creating Dask delays with Lock. Error: _thread._local has no execution_state

I want to create a Dask array with multiple blocks. Each block is from a function that reads a file. To avoid reading multiple files from the hard disk at the same time, I follow the answer here and ...
1
vote
0answers
23 views

specify how to partition dask dataframe?

I have a pandas df that's indexed by id and date. I would like to run some regressions for each id in parallel using dask. I know dask splits the df into N partitions but is there a way to force it to ...
0
votes
1answer
43 views

Avoid simultaneously reading multiple files for a dask array

From a library, I get a function that reads a file and returns a numpy array. I want to build a Dask array with multiple blocks from multiple files. Each block is the result of calling the function ...
0
votes
1answer
13 views

Choose mode for saving a Dask array to hdf5 file

Can I choose file mode when I save a dask array to a hdf5 file? The to_hdf5 method doesn't have a mode keyword. Test: import dask.array as da a = da.arange(12, chunks=3) a.to_hdf5('a.hdf5', '/a', ...
-1
votes
1answer
39 views

Perform EDA and visualize it if my data can not fit in memory? my dataset size is 200gigs

Performing exploratory data analysis is the first step in any machine learning project, I mostly use pandas to perform data exploration using datasets that fit in memory... but I would like to know ...
-2
votes
0answers
66 views

newbie larger than memory dask array computation with write to hdf5 storage

I have an array a of 2 columns, size exceeds available memory. I would like to apply a binning operation such as pandas.cut(a[:, 0]+a[:, 1], bins) and store the result in an hdf5 file. ...
5
votes
1answer
87 views

Memory errors using xarray + dask - use groupby or apply_ufunc?

I am using xarray as the basis of my workflow for analysing fluid turbulence data, but I'm having trouble leveraging dask correctly to limit memory usage on my laptop. I have a dataarray n with ...
1
vote
1answer
22 views

Dask fails to read file while Pandas not

I was previoulsy using pandas to read and process data, having some memory issues. I could read a big file with: import pandas as pd df = pd.read_csv('mydata.csv.gz', sep=';') However, when doing ...
0
votes
0answers
35 views

How can I share data between dask workers?

If I use normal multiprocessing in python, I can use Queue to share any kind of data between processes. How can I do it with dask? dask tutorial have some examples about sharing data, but they are ...
0
votes
1answer
26 views

dask-jobqueue does not start any worker on slurm cluster

I am trying to run dask on a research cluster managed by slurm. Launching a job with a classical sbatch script is working. But when I am doing: from dask_jobqueue import SLURMCluster cluster = ...
0
votes
1answer
13 views

Confusion matrix with dask

I am trying to compute the confusion matrix elements using Dask. My implementation from an algorithmic point of view seems to be ok. However, when I run it on 2 arrays of size 1 million each, it takes ...
2
votes
1answer
20 views

How do I get adaptive dask workers to run some code on startup?

I'm creating a dask scheduler using dask-kubernetes and putting it into adaptive mode. from dask-kubernetes import KubeCluster cluster = KubeCluster() cluster.adapt(minimum=0, maximum=40) I need ...
0
votes
1answer
36 views

How to implement `iloc` function for dask dataframe?

I have a huge file, around 35GB stored in form of hdf5. I have to do certain calculations on some specific columns and want to insert those calculations as new columns. I know I can assign new columns ...
2
votes
1answer
28 views

Get One Row From Dask Dataframe Without Loading Entire Dataframe into Memory

Is it possible for dask to load a single row into memory at a time? I have a huge 200GB dataset and I would like dask to retrieve one row at a time given an index. Then I would like to get the numpy ...
-3
votes
0answers
40 views

'str' object is not callable" in numba and dask combined approach

I am trying to implement a combination of dask and numba . I take input of a dask dataframe and doing a simple computation of groupby and sum .To implement numba I am using it in a user defined ...
0
votes
1answer
27 views

Python Dask map_partitions

Probably a continuation of this question, working from the dask docs examples for map_partitions. import dask.dataframe as dd df = pd.DataFrame({'x': [1, 2, 3, 4, 5], 'y': [1., 2., 3., 4., 5.]}) ...
0
votes
1answer
39 views

Returning a dataframe in Dask

Aim: To speed up applying a function row wise across a large data frame (1.9 million ~ rows) Attempt: Using dask map_partitions where partitions == number of cores. I've written a function which is ...
1
vote
1answer
26 views

Save dask dataframe to csv and find out its length without computing twice

Say, i have some dask dataframe. I'd like to do some operations with it, than save to csv and print its len. As I understand, the following code will make dask to compute df twice, am I right? df = ...
1
vote
1answer
23 views

Dask DataFrame .head() very slow after indexing

Not reproducible, but can someone fill in why a .head() call is greatly slowed after indexing? import dask.dataframe as dd df = dd.read_parquet("Filepath") df.head() # takes 10 seconds df = df....