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Data Science
Data science is an inter-disciplinary field that uses scientific methods, processes, algorithms, and systems to extract knowledge from structured and unstructured data. Data scientists perform data analysis and preparation, and their findings inform high-level decisions in many organizations.
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The Mixed Time-Series chart type allows for configuring the title of the primary and the secondary y-axis.
However, while only the title of the primary axis is shown next to the axis, the title of the secondary one is placed at the upper end of the axis where it gets hidden by bar values and zoom controls.
How to reproduce the bug
- Create a mixed time-series chart
- Configure axi
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Jun 1, 2022 - Jupyter Notebook
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Mar 15, 2022 - Jupyter Notebook
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Jun 2, 2022 - Python
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Apr 26, 2022 - Python
Description
The upscaling_speed and idle_timeout_minutes properties are useful and it already in RayCluster. However, it not ex
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Feb 10, 2022 - JavaScript
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May 26, 2022
Problem
See #3856 . Developer would like the ability to configure whether the developer menu or viewer menu is displayed while they are developing on cloud IDEs like Gitpod or Github Codespaces
Solution
Create a config option
showDeveloperMenu: true | false | auto
where
- true: always shows the developer menu locally and while deployed
- false: always sho
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May 30, 2022
Proposed refactor
The current import time for the pytorch_lightning package on my machine is several seconds. There are some opportunities to improve this.
Motivation
High import times have an impact on the development and debugging speed.
Benchmark
I benchmarked the import time in two environments:
- Fresh environment with pytorch lightning installed, no extras.
Describe your context
Please provide us your environment, so we can easily reproduce the issue.
- replace the result of
pip list | grep dash
below
dash 2.0.0
dash-bootstrap-components 1.0.0
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if frontend related, tell us your Browser, Version and OS
- OS: [e.g. iOS] Windows
- Browser [e.g. chrome, safari]: Chrome 96.0x, Edge 96.0x, Firefox
Bug summary
For Axes.vlines()
, when I want to use axes coordinate for ymin
/ ymax
, as suggested in blended transformation, ymin
is incorrectly treated as data coordinate.
Axes.hlines()
has a similar problem with xmin
.
Code for reproduction
# Sample derived
https://ipython.readthedocs.io/en/stable/api/generated/IPython.lib.demo.html
The example of demo.py uses print statements instead of print function, which does not work in python 3.x
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May 27, 2022 - Jupyter Notebook
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May 20, 2020
Although the results look nice and ideal in all TensorFlow plots and are consistent across all frameworks, there is a small difference (more of a consistency issue). The result training loss/accuracy plots look like they are sampling on a lesser number of points. It looks more straight and smooth and less wiggly as compared to PyTorch or MXNet.
It can be clearly seen in chapter 6([CNN Lenet](ht
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Jun 2, 2022 - Python
- Base README.md
- Quizzes
- Introduction base README
- Defining Data Science README
- Defining Data Science assignment
- Ethics README
- Ethics assignment
- Defining Data README
- Defining Data assignment
- Stats and Probability README
- Stats and Probability assignment
- Working with Data base README
- Rel
In gensim/models/fasttext.py:
model = FastText(
vector_size=m.dim,
vector_size=m.dim,
window=m.ws,
window=m.ws,
epochs=m.epoch,
epochs=m.epoch,
negative=m.neg,
negative=m.neg,
# FIXME: these next 2 lines read in unsupported FB FT modes (loss=3 softmax or loss=4 onevsall,
# or model=3 supervi
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Apr 28, 2022
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May 31, 2022 - Go
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Jul 30, 2021 - Jupyter Notebook
Describe the issue:
During computing Channel Dependencies reshape_break_channel_dependency
does following code to ensure that the number of input channels equals the number of output channels:
in_shape = op_node.auxiliary['in_shape']
out_shape = op_node.auxiliary['out_shape']
in_channel = in_shape[1]
out_channel = out_shape[1]
return in_channel != out_channel
This is correct
Is your feature request related to a problem? Please describe.
I typically used compressed datasets (e.g. gzipped) to save disk space. This works fine with AllenNLP during training because I can write my dataset reader to load the compressed data. However, the predict
command opens the file and reads lines for the Predictor
. This fails when it tries to load data from my compressed files.
- Wikipedia
- Wikipedia
PR #22722 introduced a common method for the validation of the parameters of an estimator. We now need to use it in all estimators.
Please open one PR per estimator or family of estimators (if one inherits from another). The title of the PR should mention which estimator it's dealing with and the description of the PR should begin with
towards #
.Steps