pip install dash-daq==0.5.0

DAQ components for Dash

Source
Among top 1% packages on PyPI.
Over 290.8K downloads in the last 90 days.

Commonly used with dash-daq

Based on how often these packages appear together in public requirements.txt files on GitHub.

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OANDA v20 bindings for Python

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ccxt

A JavaScript / Python / PHP cryptocurrency trading library with support for 130+ exchanges

admiral

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pyprofit

Libprofit wrapper for Python

PyResis

Python ship Resistance estimation package

nvector

Solves all kinds of geographical position calculations.

surgeo

Bayesian Improved Surname Geocoder model

pyinter

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regreg

A multi-algorithm Python framework for regularized regression

cythrust

Cython bindings for the Thrust parallel library.

Assimulo

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cluster-lensing

Galaxy Cluster and Weak Lensing Tools

snakemake

Snakemake is a workflow management system that aims to reduce the complexity of creating workflows by providing a fast and comfortable execution environment, together with a clean and modern specification language in python style. Snakemake workflows are essentially Python scripts extended by declarative code to define rules. Rules describe how to create output files from input files.

taxcalc

taxcalc

pymatgen

Python Materials Genomics is a robust materials analysis code that defines core object representations for structures and molecules with support for many electronic structure codes. It is currently the core analysis code powering the Materials Project (https://www.materialsproject.org).

Version usage of dash-daq

Proportion of downloaded versions in the last 3 months (only versions over 1%).

0.5.0

88.67%

0.1.0

3.61%

0.4.0

3.53%

0.3.3

1.17%

0.1.7

1.04%