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
1answer
17 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
1answer
16 views

dask equivalent of df.loc[df.index.intesection(mylabels)]

When I run df.loc[mylabels] in dask I get a warning with the link to Warning Starting in 0.21.0, using .loc or [] with a list with one or more missing labels, is deprecated, in favor of ....
0
votes
0answers
10 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 ...
2
votes
1answer
30 views

How do Dask threads interact with OpenBLAS/MKL/…?

According to What threads do Dask Workers have active?, a dask worker has A pool of threads in which to run tasks. The documentation says If your computations are mostly numeric in nature (for ...
0
votes
0answers
27 views

diagnostics pages no longer available

I'm running dask 0.19.4, and distributed 1.23.3. The Bokeh diagnostics pages are not available, though I have used them extensively in the past. Here's a test case, which generates a 404: from ...
0
votes
1answer
39 views

Dask dataframe from delayed zip csv

I am trying to create a dask dataframe from a set of zipped CSV files. Reading up on the problem, it seems that dask needs to use dask.distributed delayed() import glob import dask.dataframe as dd ...
0
votes
1answer
27 views

Using dask to read data from Hive

I am using as_pandas utility from impala.util to read the data in dataframe form fetched from hive. However, using pandas, I think I will not be able to handle large amount of data and it will also be ...
1
vote
1answer
28 views

Simple Dask Frequency Count

I want to do a frequency count. Imagine this list of people and their age: IN [110]: b = db.from_sequence([('alex', 31), ('cassee', 31), ('Wes', 25), ('Allison', 35)]) In [111]: b.map(lambda ...
0
votes
0answers
17 views

Too many files while trying to read in xarray using dask

I'm trying to learn dask to be able to do some calculations on a 18 year NetCDF dataset which has 1464 files for each year and each file being 1MB in size. I can do it in a loop instead but I want to ...
2
votes
1answer
32 views

Dask: Drop NAs on columns?

I have tried to apply a filter to remove columns with too many NAs to my dask dataframe: df.dropna(axis=1, how='all', thresh=round(len(df) * .8)) Unfortunately it seems that the dask dropna API is ...
0
votes
1answer
40 views

dask dataframe from python list of tuples

I am really new to dask. I want to create a dask dataframe from a python list of tuples. In pandas, you can use DataFrame.from_records to convert a list of tuples to a dataframe. What function can ...
0
votes
0answers
23 views

Dask how to pivot DataFrame

I am using the code below but get an error after pivoting the DataFrame: dataframe: name day value time 0 MAC000002 2012-12-16 0.147 09:30:00 1 MAC000002 2012-12-16 ...
0
votes
0answers
39 views

Dask groupby vs Pandas groupby

I am trying to migrate my pandas code to dask to support big data. Data for my python program usually fits in memory. So pandas is good for it. But rarely data exceeds system memory requirement. My ...
0
votes
1answer
34 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
0answers
17 views

Python change the default caching location?

I hope you are having a great day! I have been having an issue writing a .csv file which is based on a very large Dask dataframe (which is the result of some hefty merging). I have continuously ...
0
votes
0answers
38 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,...
1
vote
1answer
28 views

Pandas-Dask DataFrame Apply Function with List Return

I am trying to add multiple columns to a dask dataframe to store the results of an apply function. This will be my first question on stack overflow, I hope this isn't too long! Current I have this ...
0
votes
0answers
14 views

How to configure DaskExecuter in Apache Airflow

I want configure Dask for distribute DAG's in Airflow. I have read https://airflow.apache.org/howto/executor/use-dask.html and https://distributed.readthedocs.io/en/latest/, but I don't understand ...
2
votes
1answer
86 views

Dask: why has CPU usage suddenly dropped?

I'm doing some Monte Carlo for a model and figured that Dask could be quite useful for this purpose. For the first 35 hours or so, things were running quite "smoothly" (apart from the fan noise giving ...
0
votes
0answers
5 views

dask.dataframe.DataFrame.max on large HDF5 dataset from xarray consumes lots of memory?

I'm trying to learn use of DataFrame of dask, I come with two problems: Can not read dataset directly using dask.dataframe.read_hdf, get ValueError:No object to concatenate. But same HDF5 file can be ...
1
vote
1answer
26 views

Difference between dask pivot_table and pandas pivot_table python

It seems we can achieve same goal using pivot_table from both libraries, but which one is more efficient in performance for large dataset?
3
votes
3answers
140 views

Merging pandas Data frames uses way too much memory

I'm working on this Kaggle competition as the final project for the course I'm taking, and for that, I was trying to replicate this notebook but there is a function he uses to get the lagged features ...
0
votes
1answer
28 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 ...
0
votes
1answer
15 views

Custom Dask traversable object

I used a custom dictionary like object to easily store the results of a Dask-graph, but using the resulting object to compute the Dask graph, doesn't compute its children. Is it possible to change ...
2
votes
1answer
38 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
28 views

Dask: many small workers vs a big worker

I am trying to understand this simple example from the dask-jobqueue documentation: from dask_jobqueue import PBSCluster cluster = PBSCluster(cores=36, memory"100GB", ...
1
vote
1answer
35 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
1answer
23 views

Dask DataFrame to_parquet return bytes instead of writing to file

Is it possible to write dask/pandas DataFrame to parquet and than return bytes string? I know that is not possible with to_parquet() function which accepts file path. Maybe, you have some other ways ...
1
vote
1answer
22 views

Dask Dataframe sum of column always returning scalar [duplicate]

I've created a Dask Dataframe (called "df") and the column with index "11" has integer values: In [62]: df[11] Out[62]: Dask Series Structure: npartitions=42 int64 ... ... ... ...
0
votes
2answers
26 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 ...
0
votes
1answer
40 views

Truth of Delayed objects is not Supported

I'm using dask to delay computation of some functions that return series in my code-base. Most operations seem to behave as expected so far - apart from my use of np.average. The function I have ...
0
votes
0answers
46 views

Repartition Dask DataFrame to get even partitions

I have a Dask DataFrames that contains index which is not unique (client_id). Repartitioning and resetting index ends up with very uneven partitions - some contains only a few rows, some thousands. ...
1
vote
1answer
23 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
19 views

What threads do Dask Workers have active?

When running a Dask worker I notice that there are a few extra threads beyond what I was expecting. How many threads should I expect to see running from a Dask Worker and what are they doing?
0
votes
1answer
21 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
20 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
2answers
28 views

get/access each chunk of dask.dataframe(df, chunksize=100)

I used below code to split a dataframe using dask: result=dd.from_pandas(df, chunksize=75) I use below code to create a custom json file: for z in result: createjson (z) It ...
1
vote
2answers
78 views

use dask to store larger then memory csv file(s) to hdf5 file

Task: read larger than memory csv files, convert to arrays and store in hdf5. One simple way is to use pandas to read the files in chunks but I wanted to use dask, so far without success: Latest ...
0
votes
1answer
30 views

using dask for sending parallel API request and error handling

I started using dask recently. I want to send data to a REST API using http request, the API return a json file to verify if the data upload is successful or not. Here is my API call function: def ...
1
vote
1answer
51 views

How to pass Dask dataframe as input to dask-ml models?

Usual ML pipelines involve processing pandas or dask dataframes into a form that can be passed into ML models. Many dask-ml models, however, cannot accept Dask dataframes because they do not track the ...
0
votes
0answers
14 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
1answer
23 views

Killing tasks spawned by a job

I am considering if replacing celery with dask. Currently we have a cluster where different jobs are submitted, each one generating multiple tasks that run in parallel. Celery has a killer feature, ...
0
votes
1answer
40 views

convert dask dataframe to dataframe is too slow, it does not save time when using it parallel process

import pandas as pd import dask.dataframe as dd import time import warnings warnings.simplefilter('ignore') data['x'] = range(1000) data['y'] = range(1000) def add(s): s['sum'] = s['x']+...
2
votes
1answer
27 views

How to use dask bag and delayed to join 2 mapping functions?

I have 2 functions: find_components and processing_partition_component import random import dask.bag as db def find_components(partition): # it will return a list of components return [x for x ...
0
votes
1answer
21 views

Which function does dask.dataframe have, append or concat?

The method for concatenating the dataframe is append in the online docs. But in the runtime I installed from pip, I only see concat. Why?
0
votes
1answer
70 views

Improve code efficiency when iterating through each row: Pandas Dataframe

The code below, calculates the duration and distance between two dataframes and if the duration and distance is less than a specific amount , a value is appended to a new dataframe. The code below ...
1
vote
0answers
19 views

using dask Parallel post fit on sklearn predictors (ParallelPostFit wrapper)

I am trying to evaluate an sklearn predictor which I have made over a larger than memory dask array of inputs. I have read over the parallel post fit documentation https://dask-ml.readthedocs.io/en/...
1
vote
1answer
35 views

Why is conversion of Dask dataframe to pandas dataframe really slow?

I'm getting pandas dataframe from dask using p_df_data=d_df_data.compute() But this is really slow... Is there an alternative method?
0
votes
2answers
37 views

Dask compute gives AttributeError: 'Series' object has no attribute 'encode'

I'm new to Dask. I applied map_partitions on the dask dataframe. But I've the following problem ddf.compute() gives me an error: AttributeError: 'Series' object has no attribute 'encode' Below is ...
-1
votes
0answers
20 views

Why Dask distributed is not using all the cores of each node?

I'm facing a problem in creating efficiency and speed in execution. Dask is using only 2 cores out of 8 cores in each node. Below is my code: partition_size_customer=int(1e6) def save_file(x): ...