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

Use multiple Dask schedulers

We're using Dask to distribute the computation tasks to multiple servers. There is 1 dask-scheduler and 5 dask-worker servers. My question is: is there a way so that multiple dask-schedulers can be ...
0
votes
1answer
21 views

Limitations to using LocalCluster? Crashing persisting 50GB of data to 90GB of memory

System Info: CentOS, python 3.5.2, 64 cores, 96 GB ram So I'm trying to load a large array (50GB) from a hdf file into ram (96GB). Each chunk is around 1.5GB less than the worker memory limit. It ...
1
vote
0answers
12 views

Problem when importing distributed on Ubuntu 18.04

I am trying to import distributed version 1.22.0 installed with pip3. However, I get this error : >>> import distributed Traceback (most recent call last): File "<stdin>", line ...
0
votes
0answers
22 views

Managing Long Running Tasks in Dask

I have the following use case and I'm wondering if its supported in dask/dask-distributed. I want to have a python process that creates a client connection to a remote dask cluster (I got this part ...
0
votes
0answers
35 views

Merge Two very Large dataframe after some processing giving Memory Error On Dask

I have Two tables in Database and each table contains 9 gb of data. I want to join two table after doing some processing. I loaded both tables into dask dataframe and did some processing and exported ...
0
votes
1answer
20 views

Cannot start dask cluster over SSH

I'm trying to start a dask cluster over SSH, but I am encountering a strange errors like these: Exception in thread Thread-6: Traceback (most recent call last): File "/home/localuser/miniconda3/lib/...
0
votes
0answers
13 views

How to run Dask Client via call from another script?

I have a processing that is done in Luigi, in one of the phases I perform a series of calculations in the DataFrame. To speed up I decided to use a local Dask cluster. When I run through Python or ...
1
vote
1answer
47 views

Is there any good way to read the content of a Spark RDD into a Dask structure

Currently the integration between Spark structures and Dask seems cubersome when dealing with complicated nested structures. Specifically dumping a Spark Dataframe with nested structure to be read by ...
-1
votes
0answers
19 views

Setting up number of cores, processes and threads for embarrassingly parallel problems on HPC clusters

I am a bit confused with the setup of PBSCluster() for an embarrassingly parallel problem on a dedicated cluster. In particular, I am confused about the combination of 'cores', 'processes' and '...
0
votes
1answer
15 views

dask jobqueue worker failure at startup 'Resource temporarily unavailable'

I'm running dask over slurm via jobqueue and I have been getting 3 errors pretty consistently... Basically my question is what could be causing these failures? At first glance the problem is that ...
0
votes
1answer
35 views

Dask force kill all workers

I want to force kill all the dask-worker processes connected to my dask.distributed scheduler. I am NOT running the cluster locally, it is a distributed cluster. I have tried the following: workers =...
1
vote
0answers
31 views

Dask Distributed client takes to long to initialize in jupyter lab

Trying to initialize a client with local cluster in Jupyter lab but hangs. This behaviour happens for python 3.5 and jupyter lab 0.35. import dask.dataframe as dd from dask import delayed from ...
0
votes
0answers
29 views

Getting Dask map_blocks to make use of all available resources

I am using Dask to parallelize time series satellite imagery analysis on a cluster with a substantial amount of computational resources. I have set up a distributed scheduler with many workers (--...
1
vote
0answers
22 views

dask cluster doesn't utilise all cores

I tried to use dask_jobqueue to initiate a cluster and successfully launched many running jobs and cores (more than the desired number of workers; e.g., 100 cores were successfully acquired from the ...
0
votes
0answers
18 views

Dask Memory Management with Default Scheduler

I have been trying to manage the memory usage of Dask on a single local machine. For some reason, the default Dask Client() and LocalCluster() scheduler always seem to break, however Dask works great ...
0
votes
0answers
29 views

Dask distributed cluster, 'str' object has no attribute 'apply' error during computations

I have a dynamic Dask Kubernetes cluster on GCloud based on this repo https://github.com/VMois/dask-k8s-chart. During data processing (20 parquet files, about 80MB each, on Gcloud storage) using ....
0
votes
0answers
56 views

Dask with jobqueue not using multiple nodes

I am trying to use Dask to do parallel processing on multiple nodes on supercomputing resources - yet the Dask-distributed map only takes advantage of one of the nodes. Here is a test script I am ...
0
votes
1answer
11 views

Route to dask worker debug pages

The docs say: Debug Worker pages for each worker at http://worker-address:8789. These pages have detailed diagnostic information about the worker. Like the diagnostic scheduler pages they are of ...
0
votes
0answers
14 views

Is there a way to store and display dask distributed history

Is there a way to store an display(over Bokeh) dask distributed history I would like to analyse/compare old dask distributed runs
0
votes
1answer
37 views

How to composite tasks in dask-distributed

I am trying to run a joblib parallel loop inside of a threaded dask-distributed cluster (see below the reason), but I can't get any speedup due to GIL-lock. Here's an example: def task(x): """ ...
0
votes
0answers
12 views

ipython interface to distributed Dask workers over ssh yields “Connection refused”

Today, I thought I would attempt get to know my workers better through spawning an ipython kernel. Doing so seemed easy enough using the handy client.start_ipython_workers() I was able to get the ...
0
votes
1answer
41 views

Analyzing data flow of Dask dataframes

I have a dataset stored in a tab-separated text file. The file looks as follows: date time temperature 2010-01-01 12:00:00 10.0000 ... where the temperature column contains values in ...
0
votes
1answer
48 views

Unable to catch KeyboardInterrupt exception after starting dask.distributed Client/LocalClient

I'm trying to use Ctrl+C to gracefully stop my running code, including a local dask.distrubted Client. The code below is an example of my setup. When I use Ctrl+C, the stop() method is called properly,...
0
votes
0answers
4 views

Identification of bottleneck in dask-distributed S3

I'm hoping to gain an understanding of how dask distributed handles the distribution of tasks from the command line. I've got the following structure: In primary code (is there a better term for ...
0
votes
1answer
31 views

Dask distributed perform computations without returning data

I have a dynamic Dask Kubernetes cluster. I want to load 35 parquet files (about 1.2GB) from Gcloud storage into Dask Dataframe then process it with apply() and after saving the result to parquet file ...
2
votes
1answer
69 views

Dask compute is very slow

I have a dataframe that consist of 5 million records. I am trying to process it using below code by leveraging the dask dataframes in python import dask.dataframe as dd ...
1
vote
1answer
47 views

Reading multiple files with Dask

I'm trying out dask on a simple embarassingly parallel reading of 24 scientific data files, each of ~250MB, so total ~6GB. The data is in a 2D array format. Its stored on a parallel file system, and ...
0
votes
2answers
35 views

Dask Distributed with Asynchronous Real-time Parallelism

I'm reading the documentation on dask.distributed and it looks like I could submit functions to the distributed cluster via client.submit(). I have an existing function some_func that is grabbing ...
1
vote
1answer
27 views

(Dask) How to distribute expensive resource needed for computation?

What is the best way to distribute a task across a dataset that uses a relatively expensive-to-create resource or object for the computation. # in pandas df = pd.read_csv(...) foo = Foo() # expensive ...
1
vote
1answer
26 views

Configuring how workers switch between multiple tasks?

We are seeing some strange behavior from the dask distributed scheduler. With 200 workers, we distribute 1200 tasks that are essentially the same, these are long tasks that alternate between being ...
1
vote
1answer
23 views

Streamz with Dask Distributed

Based on the streamz documentation, one could leverage a dask distributed cluster in the following way: from distributed import Client client = Client('tcp://localhost:8786') # Connect to scheduler ...
0
votes
0answers
18 views

Submitting unique local variables on each Dask worker as an argument to a function

I am trying to run an embarrassingly parallel process from a Jupyter Notebook hosted on a remote Linux Server using Dask Distributed. I am using LocalCluster() to setup the scheduler and workers. The ...
0
votes
0answers
13 views

dask jobqueue and scheduler_file

For dask_jobqueue, is it OK to pass a SGECluster and scheduler_file when creating a Client? Something like this: client = Client(cluster, scheduler_file='shirley.json') The reason is really, I ...
0
votes
0answers
10 views

dask jobqueue spread workers across multiple queues

For dask_jobqueue, is it possible to create a cluster on multiple queues and spread workers across the queues? If so, how? Thanks so much for the help.
1
vote
0answers
69 views

split bigquery dataframe into chunks using dask

I searched and tested different ways to find if I can be able to split bigquery dataframe into chunks of 75 rows, but couldn't find a way to do so. here is the senario: I got a very large bigquery ...
2
votes
0answers
70 views

Writing Dask/XArray to NetCDF - Parallel IO

I am using Dask/Xarray with a ~150 GB dataset on a distributed cluster on a HPC system. I have the computation component complete, which takes about ~30 minutes. I want to save the final result to a ...
0
votes
0answers
40 views

TypeError: rechunk() got an unexpected keyword argument 'shape'

I want to give my dask.array a chunk size. My X_arr shape is (nan, 20). And I chose to do this with 'auto' method. I run this code: X_chunk = X_arr.rechunk(chunks='auto') Then I got this error: ...
1
vote
1answer
35 views

Dask Intermediate Results

I have a smallish Dask custom application (~20 nodes in the DAG). I would like to be able to somehow persist all of the intermediate results of the functions for future inspection, as sometimes we ...
0
votes
2answers
69 views

How can I run TPOT with dask TO spark cluster (Standalone model or Mesos model)

I am trying to use your project named dask-spark proposed by Matthew Rocklin. When adding the dask-spark into my project, I have a problem: Waiting for workers as shown in the following figure. ...
0
votes
0answers
59 views

YarnCluster constructor hangs in dask-yarn

Im using dask-yarn version 0.3.1. Following the basic example on https://dask-yarn.readthedocs.io/en/latest/. from dask_yarn import YarnCluster from dask.distributed import Client # Create a ...
1
vote
2answers
27 views

How to make custom object available for function passed to dask df.apply (cannot serialize)

All this code works in pandas, but running single threaded is slow. I have an object (it's a bloom filter) that's slow to create. I have dask code that looks something like: def has_match(row, ...
0
votes
0answers
127 views

Tornado unexpected exception in Future <Future cancelled> after timeout

I have set up a dask cluster. I can access a web dashboard, but when I'm trying to connect to the scheduler: from dask.distributed import Client client = Client('192.168.0.10:8786') I get the ...
0
votes
0answers
35 views

Dask client scatter is taking a long time for size of file dict in memory

I'm new to Dask and have recently made my foray into parallel computing with this nice and wonderful package. However, in my implementation, I've been struggling to understand why does it take 6 mins ...
0
votes
0answers
17 views

Losing columns in Dask group by expression

I have a DataFrame like this: EVENT_TYPE PRICE TICKER TIME 2018-07-02 06:00:00.030691 TRADE 22.52 HPQ My group by is as follows: g = dfs[dfs.EVENT_TYPE ==...
1
vote
0answers
49 views

Launch function on cluster with DASK

I am new to DASK and would like to make a test of running DASK on a cluster. The cluster has a head server and several other nodes. I can enter into other nodes by a simple ssh without password, once ...
0
votes
0answers
43 views

Launch tasks from tasks in Dask

I must launch tasks from tasks using dask. Although it is quite well explained here: https://distributed.readthedocs.io/en/latest/task-launch.html#launch-tasks-from-tasks, I can't make it work. After ...
1
vote
0answers
74 views

Why is `dask.distributed` not parallelizing the first run of my workflow?

Bear with me, this is a very specific setup; consider the following code: # sys.version = 3.6.6 # distributed.__version__ = 1.22.0 import subprocess from distributed import Client from time import ...
1
vote
1answer
58 views

Trying Dask on AWS

I am a scientist who is exploring the use of Dask on Amazon Web Services. I have some experience with Dask, but none with AWS. I have a few large custom task graphs to execute, and a few colleagues ...
1
vote
1answer
86 views

How to avoid large objects in task graph

I am running simulations using dask.distributed. My model is defined in a delayed function and I stack several realizations. A simplified version of what I do is given in this code snippet: import ...
13
votes
0answers
279 views

Converting numpy solution into dask (numpy indexing doen't work in dask)

I'm trying to convert my monte carlo simulation from numpy into dask, because sometimes the arrays are too large, and can't fit into the memory. Therefore I set up a cluster of computers in the cloud: ...