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
206 views

Version mismatch after update: How to find matching versions of dask and distributed?

How can I figure out, which version of dask is compatible to which version of distributed? Background: I updated dask using the conda package manager. In this process, distributed was updated as well....
4
votes
0answers
390 views

Aggregation fails when using lambdas

I'm trying to port parts of my application from pandas to dask and I hit a roadblock when using a lamdba function in a groupby on a dask DataFrame. import dask.dataframe as dd dask_df = dd....
2
votes
0answers
104 views

using DataFrame with ask.multiprocessing not executing in parallel

Why the dask dosesn't use all of the cores available? I'm running this code import pandas as pd import numpy as np for year in range(2000, 2005): #i have change days idx = pd.date_range(...
2
votes
1answer
1k views

MemoryError merging two dataframes with pandas and dasks---how can I do this?

I have two dataframes in pandas. I would like to merge these two dataframes, but I keep running into Memory Errors. What is a work around I could use? Here is the setup: import pandas as pd df1 = ...
1
vote
1answer
410 views

KeyError using `dask.merge()`

So I have two pandas dataframes created via df1 = pd.read_cvs("first1.csv") df2 = pd.read_csv("second2.csv") These both have the column column1. To double check, print(df1.columns) print(df2....
3
votes
2answers
266 views

Dask + Pandas: Returning a sequence of conditional dummies

In Pandas if I want to create a column of conditional dummies (say 1 if a variable is equal to a string and 0 if it is not), then my goto in pandas is: data["ebt_dummy"] = np.where((data["...
0
votes
2answers
126 views

How to use Dask to parallelize object detection on a massive image on the cluster

I am trying to see if i can use Dask for blockwise parallelization of the detection and segmentation of objects in massive 2D images (~20-50 GB) on a cluster. My logic to detect/segment objects in an ...
0
votes
2answers
71 views

Not able to load castra files with from_castra() function of dask

I am trying to replicate the example of this page about castra, dask and reddit comments, and I get the above error when I run the dd.from_castra(data,columns) My castra file took some hours to ...
4
votes
1answer
1k views

Python Dask - dataframe.map_partitions() return value

So dask.dataframe.map_partitions() takes a func argument and the meta kwarg. How exactly does it decide its return type? As an example: Lots of csv's in ...\some_folder. ddf = dd.read_csv(r"...\...
1
vote
2answers
701 views

Row-wise selection based on multiple conditions in dask?

What is the most performant way in dask to select rows based on multiple conditions? In pandas, something like df[df.A > 0 & df.B <= 10] does work. In dask, however, this will return an ...
9
votes
1answer
2k views

How to specify the number of threads/processes for the default dask scheduler

Is there a way to limit the number of cores used by the default threaded scheduler (default when using dask dataframes)? With compute, you can specify it by using: df.compute(get=dask.threaded.get, ...
3
votes
1answer
472 views

Compute forward difference with Dask DataFrame?

How do I compute the first discrete difference using Dask DataFrame? Or, in "Pandas speak", how do I do pandas.DataFrame.diff() in Dask? Mathematically, the operation is very simple: subtract a ...
1
vote
1answer
2k views

How to get the result of a future in a callback?

The add_done_callback method was recently added to the distributed Future object which allows you to take some action after the future finishes, irrespective of whether it succeeded or not. http://...
6
votes
1answer
665 views

How to convert an xarray dataset to pandas dataframes inside a dask dataframe

I have a calculation that expects a pandas dataframe as input. I'd like to run this calculation on data stored in a netCDF file that expands to 51GB - currently I've been opening the file with xarray....
4
votes
0answers
429 views

Dask Dataframe Load by Index

I have a pandas dataframe with metadata on a bunch of text documents: meta_df = pd.read_csv( "./mdenny_copy_early2015/Metadata/Metadata/Bill_Metadata_1993-2014.csv", low_memory=False, ...
0
votes
2answers
1k views

Can not find the shared library:libhdfs3.so

everyone. I'm try to used Dask with Distributed + HDFS for processing some files. when I installed the distributed try to install the HDFS3 plugins, the error was : Can not find the shared library:...
3
votes
1answer
855 views

read process and concatenate pandas dataframe in parallel with dask

I'm trying to read and process in parallel a list of csv files and concatenate the output in a single pandas dataframe for further processing. My workflow consist of 3 steps: create a series of ...
1
vote
1answer
87 views

Dask - exclusive resource access?

Some resources like GPUs or certain data stores are best utilized exclusively, i.e. a single client at a time. Dask supports selecting a subset of workers by name 1 (aliases) so I can limit GPU work ...
1
vote
1answer
181 views

dask, execute non-serializable object on every worker

I am trying to execute the following graph: which is generated by the following code: energies = [10, 20] system = delayed(make_non_serializable_oject)(x=1) trans = [delayed(...
4
votes
2answers
2k views

dask DataFrame equivalent of pandas DataFrame sort_values

What would be the equivalent of sort_values in pandas for a dask DataFrame ? I am trying to scale some Pandas code which has memory issues to use a dask DataFrame instead. Would the equivalent be : ...
2
votes
1answer
194 views

dask.bag processing data out-of-memory

I'm trying to use dask bag for wordcount 30GB of json files, I strict according to the tutoral from offical web: http://dask.pydata.org/en/latest/examples/bag-word-count-hdfs.html But still not work, ...
1
vote
1answer
121 views

correct pattern for dask compute minimum?

Is this the correct way to call compute()? def call_minmax_duration(data): mmin = dd.DataFrame.min(data).compute() mmax = dd.DataFrame.max(data).compute() return mmin, mmax
0
votes
1answer
304 views

The Key Pair was not found in AWS

I'm strict according to the anaconda introduction for setup my own cluster, seems have some issues, hope some one can help me. https://docs.continuum.io/anaconda-cluster/ I'm pretty sure my pem ...
7
votes
1answer
345 views

What are the scaling limits of Dask.distributed?

Are there any anecdotal cases of Dask.distributed deployments with hundreds of worker nodes? Is distributed meant to scale to a cluster of this size?
1
vote
1answer
202 views

Efficient n-body simulation with dask

An N-body simulation is used to simulated dynamics of a physical system involving particles interactions, or a problem reduced to some kind of particles with physical meaning. A particle could be a ...
0
votes
1answer
318 views

Dask - Rechunk or array slicing causing large memory usage?

Good afternoon, I was looking for some help with understanding some excessive (or possibly not) memory usage in my Dask processing chain. The problem comes from the execution of the following ...
2
votes
1answer
260 views

flatMap in dask

Many functional languages define flatMap function which works like map but can flatten returning values. Spark/pyspark has it http://spark.apache.org/docs/latest/api/python/pyspark.html#pyspark.RDD....
2
votes
0answers
383 views

Pathos, Dask, futures, which one to use for parallel cluster application?

I am confused here. I have an application that is CPU bounded so I went to implementing a parallelisation using multiprocess to overcome GIL issues. I first tried to use multiprocessing and futures ...
3
votes
1answer
267 views

Slow Performance with Python Dask bag?

I'm trying out some tests of dask.bag to prepare for a big text processing job over millions of text files. Right now, on my test sets of dozens to hundreds of thousands of text files, I'm seeing that ...
1
vote
1answer
410 views

How to convert/rename categories in dask

I'm trying to rename categories of a dtype 'category' column of a dask dataframe to a series of numbers from 1 to len(categories). In pandas I was doing it like this: df['name'] = dd.Categorical(df....
1
vote
0answers
36 views

Unexpected scheduler behaviour

In a simple workflow, which is as far as I can tell embarrassingly parallel (please correct me), I observe a strange order of execution by the dask.distributed (and presumably the multiprocessing) ...
4
votes
2answers
162 views

How to programm a stencil with Dask

In many occasions, scientists simulates a system's dynamics using a Stencil, this is convolving a mathematical operator over a grid. Commonly, this operation consumes a lot of computational resources. ...
9
votes
1answer
4k views

Can dask parralelize reading fom a csv file?

I'm converting a large textfile to a hdf storage in hopes of a faster data access. The conversion works allright, however reading from the csv file is not done in parallel. It is really slow (takes ...
1
vote
1answer
290 views

Compute sum of the elements in a chunk of a dask array

I'd like to apply a function to each block and return a single element, for example, from a 10x10 matrix I'd like to sum each 2x2 block. I've tried some combinations of what you see below but I ...
3
votes
1answer
839 views

How would I use Dask to perform parallel operations on slices of NumPy arrays?

I have a numpy array of coordinates of size n_slice x 2048 x 3, where n_slice is in the tens of thousands. I want to apply the following operation on each 2048 x 3 slice separately import numpy as ...
6
votes
1answer
264 views

How to execute a multi-threaded `merge()` with dask? How to use multiples cores via qsub?

I've just begun using dask, and I'm still fundamentally confused how to do simple pandas tasks with multiple threads, or using a cluster. Let's take pandas.merge() with dask dataframes. import ...
4
votes
2answers
428 views

How to specify the directory that dask uses for temporary files?

Apparently, dask writes to the /tmp folder during disk based shuffle operations. On the system that I am using, this folder is mounted on a very small partition (30GB), causing the following error ...
2
votes
1answer
2k views

How to map a column with dask

I want to apply a mapping on a DataFrame column. With Pandas this is straight forward: df["infos"] = df2["numbers"].map(lambda nr: custom_map(nr, hashmap)) This writes the infos column, based on the ...
2
votes
1answer
264 views

Dask/hdf5: Read by group?

I must read in and operate independently over many chunks of a large dataframe/numpy array. However, these chunks are chosen in a specific, non-uniform manner and are broken naturally into groups ...
1
vote
2answers
881 views

Dask “no module named xxxx” error

Using dask distributed i try to submit a function that is located in another file named worker.py. In workers i've the following error : No module named 'worker' However I'm unable to figure out ...
0
votes
1answer
264 views

Accessing S3 from Dask.bag

As the title suggests, I'm trying to use a dask.bag to read a single file from S3 on an EC2 instance: from distributed import Executor, progress from dask import delayed import dask import dask.bag ...
1
vote
1answer
123 views

dask / pandas categorical transformation differences

I am managing larger than memory csv files of mostly categorical data. Initially I used to create a large csv file, then read it via Pandas read_csv, convert to categorical and save into hdf5. Once ...
12
votes
1answer
2k views

How to concat multiple pandas dataframes into one dask dataframe larger than memory?

I am parsing tab-delimited data to create tabular data, which I would like to store in an HDF5. My problem is I have to aggregate the data into one format, and then dump into HDF5. This is ~1 TB-...
1
vote
1answer
786 views

How do I combine multiple pandas dataframes into an HDF5 object under one key/group?

I am parsing data from a large csv sized 800 GB. For each line of data, I save this as a pandas dataframe. readcsvfile = csv.reader(csvfile) for i, line in readcsvfile: # parse create dictionary ...
3
votes
3answers
3k views

How to read a compressed (gz) CSV file into a dask Dataframe?

Is there a way to read a .csv file that is compressed via gz into a dask dataframe? I've tried it directly with import dask.dataframe as dd df = dd.read_csv("Data.gz" ) but get an unicode error (...
4
votes
1answer
580 views

Lazy create Dask DataFrame from PostgreSQL / Cassandra

As I understand Dask DataFrame is proper way to handle tabular data like. I have a table in PostgreSQL, and I knowthe way to load it into pandas.Dataframe. I know, odo can be used to conver pandas....
2
votes
1answer
426 views

How do I apply a smoothing filter with dask

I have a 2 dimensional array, I would like to do a 2 dimensional convolution with a kernel, for example a simple flat square matrix. See for example: http://nbviewer.jupyter.org/gist/zonca/...
1
vote
2answers
142 views

Connection errors when attempting dask.distributed cluster on AWS ECS with Load Balancer

We're trying to start a dask cluster using ECS on AWS. Our current setup: Two services - a dask-scheduler service and a dask-worker service, each with a task definition. Each service has one task (in ...
3
votes
1answer
247 views

Does dask distributed use Tornado coroutines for workers tasks?

I've read at the dask distributed documentation that: Worker and Scheduler nodes operate concurrently. They serve several overlapping requests and perform several overlapping computations at ...
2
votes
1answer
456 views

Lazily create dask dataframe from generator

I want to lazily create a Dask dataframe from a generator, which looks something like: [parser.read(local_file_name) for local_file_name in repo.download_files())] Where both parser.read and repo....