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

Questions tagged [dask-distributed]

Dask.distributed is a lightweight library for distributed computing in Python. It extends both the concurrent.futures and dask APIs to moderate sized clusters.

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
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 ...
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
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
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 = ...
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
0answers
36 views

rechunking multidimensional xarray with dask distributed: impact of operations order

I am performing rechunking operations on a 4-5TB zarr array with dask distributed and trying to understand the impact of the rechunking order on the memory footprint as well as scheduler computational ...
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 ...
-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
26 views

How to reliably clean up dask scheduler/worker

I'm starting up a dask cluster in an automated way by ssh-ing into a bunch of machines and running dask-worker. I noticed that I sometimes run into problems when processes from a previous experiment ...
0
votes
1answer
24 views

dask distributed: adding up a collection of vectors residing on different workers

I have a large set of vectors that were computed on different data, thus they reside on different workers. Is the following code the most efficient? grads = [client.submit(compute_grad, x) for x in ...
0
votes
1answer
20 views

difference between client and executor in dask

Executor is the primary entry point for users of distributed.Similarly, Client is the primary entry point for users of dask.distributed. So, both seem like identical. In dask, can both be used ...
1
vote
2answers
32 views

Load a single large file from client to dask workers

How do I make a single large file of 8 GB accessible by all other worker nodes in dask? I have tried pd.read_csv() with chunksize and client.scatter but it is taking quite long. I am running it on ...
0
votes
1answer
12 views

How to assign tasks to specific worker within Dask.Distributed

I am interesting in using Dask Distributed as task executor. In Celery it is possible to assign task to specific worker. How is it possible using Dask Distributed?
0
votes
0answers
19 views

client.scatter taking too long

I have a csv file on client . To make it's data accessible to worker nodes on different machines ,I am using client.scatter with reference to Loading local file from client onto dask distributed ...
0
votes
1answer
26 views

compute() in dask not working

I am trying a simple parallel computation in Dask. This is my code. import time import dask as dask import dask.distributed as distributed import dask.dataframe as dd import dask.delayed as ...
0
votes
1answer
45 views

Convert spark dataframe to dask dataframe

Is there a way to directly convert a Spark dataframe to a Dask dataframe.? I currently am using Spark's .toPandas() function to convert it into a pandas dataframe and then into a dask dataframe. I ...
1
vote
1answer
16 views

Memory buildup with dask using function with large intermediates

I have a general question about dask.compute() that's motivated by a memory buildup I've been experiencing with the function. I'm using dask.compute() and map_partitions() (have tried with dask....
0
votes
1answer
42 views

Parallelization on cluster dask

I'm looking for the best way to parallelize on a cluster the following problem. I have several files folder/file001.csv folder/file002.csv : folder/file100.csv They are disjoints with respect to the ...
0
votes
0answers
63 views

Tensorflow + joblib: limited to 8 processes?

I created a statistical estimator using TensorFlow. I followed sklearn's estimators, so I have a class that packages everything including importing Tensorflow and starting TF's session (if I import TF ...
0
votes
0answers
7 views

After start HPC Dask cluster in one jupyter notebook file, how to use the same cluster in another jupyter notebook file

Because the code is too long, I'd like to use multiple ipynb files. After I start dask cluseter as follows from dask_jobqueue import SLURMCluster from dask.distributed import Client cluster = ...
0
votes
1answer
22 views

processes =false in local distribution in dask

I read the documentation of DASK . It is written there in local distributed form that client = Client(processes=False) I would like to know why is the processes mentioned as false ?
0
votes
0answers
48 views

Dynamic repartitioning of a dask DataFrame

This is a follow-on to the below questions: How to repartition a dataframe into fixed sized partitions? Lazy repartitioning of dask dataframe ...where the answer was that there is no built-in way to ...
0
votes
1answer
95 views

How to use all the cpu cores using Dask?

I have a pandas series with more than 35000 rows. I want to use dask make it more efficient. However, I both the dask code and the pandas code are taking the same time. Initially "ser" is pandas ...
0
votes
1answer
27 views

How to let all worker do same task in dask?

I want to let all workers do same task ,like this: from dask import distributed from distributed import Client,LocalCluster import dask import socket def writer(filename,data): with open(...
0
votes
0answers
63 views

Metadata inference failed

I'm making a higher abstraction module, named edask above dask, that interfaces like pandas APIs and uses dask APIs internally. I'm having a problem with parsing this line of code: pts = task[(task....
0
votes
0answers
19 views

Meta for an single element of a series

I'm using output = dask.delayed(somefunction)(some_params) The some_params consists of a series. somefunction is such that it returns a single element of the series. The dask is giving me the error ...
0
votes
1answer
25 views

How is dask implemented on multiple systems?

I am new to Dask library.I wanted to know if we implement parallel computation using dask on two systems ,then is the data frame on which we apply the computation stored on both the systems ? How ...
0
votes
0answers
24 views

Custom search in Dask

I have 1000 regex patterns which I have to search in each of the 9000 strings. Normal brute force method using pandas list took 25 min for the same task. I have used delayed function of dask to ...
0
votes
0answers
21 views

Unable to Replace a Dask Series Partition

I'm trying to replace a Series dask partition with my own partition. I've used the code snippet given by @MRocklin in this post. list_of_delayed = dask_df.to_delayed() new_partition = dask.delayed(pd....
1
vote
1answer
15 views

Restricting tasks within block to specific worker(s)

Currently have a problem where I would like to constrain all calls to compute, persist, etc. within a block of code to run on worker(s) with specific resources. Unfortunately don't have access to the ...
0
votes
1answer
23 views

Use already done computation wisely

If I've got a dask dataframe df. Now I apply some computation on it. Mathematically, df1 = f1(df) df2 = f2(df1) df3 = f3(df1) Now if I run, df2.compute(), now after that if I run ...
0
votes
1answer
16 views

Need clarity in copying a dask.dataframe

Can pandas.DataFrame.copy API can be exactly imitated in dask.DataFrame, using the following code? from copy import copy df2 = copy(df) Is it simple copy or deep copy? How can I do the other type of ...
0
votes
0answers
20 views

Merge the pandas dataframe in descending order

There is an option for sorting the pandas dataframe in ascending order by using pandas.DataFrame.merge(df1,df2,how='outer',sort=True). How can I merge it in descending order, using minimal effort?
0
votes
0answers
18 views

Distribution and Computation of dask.delayed object

Does dask.delayed object gets distributed by dask on a cluster? Also, does the execution of its task graph is also distributed on a cluster?
0
votes
0answers
12 views

Implementation of a recursive function using dask.delayed

How can I successfully implement Merge Sort using dask.delayed or with some other dask API. So that it becomes faster with parallelism.
1
vote
1answer
56 views

Replace a dask dataframe partition

Can I replace a dask dataframe partition, with another dask dataframe partition that I've created separately, of the same number of rows and same structure? If yes, how? Is it possible with a ...
2
votes
1answer
65 views

Best practices in setting number of dask workers

I am a bit confused by the different terms used in dask and dask.distributed when setting up workers on a cluster. The terms I came across are: thread, process, processor, node, worker, scheduler. ...
0
votes
0answers
32 views

Need to implemented dask.dataframe.sort_values

I want to implement dask.dataframe.sort_values for multiple columns. Can you guys please tell me how can I do that?
4
votes
1answer
86 views

memory usage when indexing a large dask dataframe on a single multicore machine

I am trying to turn the Wikipedia CirrusSearch dump into Parquet backed dask dataframe indexed by title on a 450G 16-core GCP instance. CirrusSearch dumps come as a single json line formatted file. ...
2
votes
1answer
62 views

Specifying a Client to use with dask.config

The new Dask configuration encourages the use of a named scheduler. This works well for threads, multiprocessing, etc. It also deprecates the use get, which is reasonable. However it does raise the ...
0
votes
2answers
42 views

Confusion regarding cluster scheduler and single machine distributed scheduler

In below code, why dd.read_csv is running on cluster? client.read_csv should run on cluster. import dask.dataframe as dd from dask.distributed import Client client=Client('10.31.32.34:8786') dd....