Python
Python is a dynamically typed programming language designed by Guido van Rossum. Much like the programming language Ruby, Python was designed to be easily read by programmers. Because of its large following and many libraries, Python can be implemented and used to do anything from webpages to scientific research.
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A description is incomplete. It should mention:
These patterns are not competing, but complementing each other. To achieve availability, one needs both fail-over and replication.
right after
"There are two main patterns to support high availability: fail-over and replication. "
A curated list of awesome Python frameworks, libraries, software and resources
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Updated
Jan 19, 2020 - Python
Hey,
I'm new to github and thought this repo would be a good opportunity to get familiar and contribute a simple algorithm. I noticed the sorts folder is lacking a recursive implementation of the insertion sort. Is it OK if I add one?
Huge and nice collection and also getting very much appreciated from the community.
It would be great if somebody can translate into English then it will be reaching out to global.
Dead Links
Expected Behavior
Missing templates should raise a TemplateNotFound exception with the correct template name.
Actual Behavior
The top-level template is used as the error string even when it is not the template that failed.
There appears to be an issue in Flask's DispatchingJinjaLoader. If a template called parent.html fails to find a sub-template such as `{% extends child
https://github.com/keras-team/keras/blob/master/keras/engine/training.py#L1071-L1077
There are two validation_steps.
In = syntax,
- double quotes (
") - back slashes (
\) - non-ascii characters
$ http -v httpbin.org/post \
dquote='\"' \
multi-line='line 1\nline 2' SUMMARY
- include_tasks: included.yml
loop:
- 1
- 2
Expected output:
TASK [include_tasks] ******************************
included: …/included.yml for localhost => (item=1)
included: …/included.yml for localhost => (item=2)
Current output:
TASK [include_tasks] ******************************
included: …/included.yml for localhost
included: …/in
When i import requests and run help(requests), Output is this:
ESCRIPTION
Requests HTTP Library
~~~~~~~~~~~~~~~~~~~~~
Requests is an HTTP library, written in Python, for human beings. Basic GET
usage:
>>> import requests
>>> r = requests.get('https://www.python.org')
>>> r.status_code
200
>>> 'Python is a programming lang
I'm clearly overlooking something because I'm very confused.
Right now the default for values_format is .2g with seems not ideal as it formats 110 as 1.1+e01:
"{:.2g}".format(110)'1.1e+02'
Changing the precision doesn't really help.
There's a pretty easy way to fix this, but not with any standard python formatting from what I can see:
https://stackoverflow.com/qu
trainable_variables = weights.values() + biases.values() doesn't work.
Also if I write trainable_variables = list(weights.values()) + list(biases.values()), I have to turn on tf.enable_eager_execution(), but the training result is wrong, accuracy is ar
Versions Affected:
All versions after PR #2082 when flags were added to Request. (>1.4.0)
Response.follow() method not consistent with Request.init(). Missing flags.
No sure how this got missed since PR #2082 was merged, but looking at the parameters for Request.__init__ and Response.follow it appears flags wasn't added to Response.follow to keep it in line with ho
Context
We would like to add torch::nn::functional::normalize to the C++ API, so that C++ users can easily find the equivalent of Python API torch.nn.functional.normalize.
Steps
- Add
torch::nn::NormalizeOptionstotorch/csrc/api/include/torch/nn/options/normalization.h(add this file if it doesn’t exist), which should include the following parameters (based on https://pytorch.
Update the tutorial for "Building a container from scratch in Go - Liz Rice (Microscaling Systems)"
Description
The instructor in the above mentioned video has created a new version of the same tutorial, which can be found here
Why
It is always good to keep resources and tutorials up-to-date. The new video talks about namespaces, chroot and cgroups, and speaks about containers at a greater depth.
Is this something you're interest
Target Leakage in mentioned steps in Data Preprocessing. Train/test split needs to be before missing value imputation. Else you will have a bias in test/eval/serve.
Python 3.9 is planning on enforcing that abstract base classes in the collections module are imported from collections.abc. See https://docs.python.org/3/library/collections.html#module-collections.
We currently are not always doing this in Certbot and are ignoring the deprecation warning about it at https://github.com/certbot/certbot/blob/6e07e8b5c0f3c6da2ae03a2a63adc7ce8e15a202/pytest.ini#L
你的朋友正在使用键盘输入他的名字 name。偶尔,在键入字符 c 时,按键可能会被长按,而字符可能被输入 1 次或多次。
你将会检查键盘输入的字符 typed。如果它对应的可能是你的朋友的名字(其中一些字符可能被长按),那么就返回 True。
示例 1:
输入:name = "alex", typed = "aaleex"
输出:true
解释:'alex' 中的 'a' 和 'e' 被长按。
示例 2:
输入:name = "saeed", typed = "ssaaedd"
输出:false
解释:'e' 一定需要被键入两次,但在 typed 的输出中不是这样。
示例 3:
输入:name = "leelee", typed = "lleeelee"
输出:true
示例 4:
输入:name = "laiden", typ
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项目后续更新计划:
该项目已达到最低可行的产品质量水平。虽然贡献者将它作为日常驱动程序,但它可能对某些命
令不稳定。未来版本将填补缺失的功能并提高稳定性。它的设计也随着成熟而变化。Nu附带了一组内置命令(如下所示)。如果命令未知,命令将弹出并执行它(在 Windows 上使
用 cmd 或在 Linux 和 MacOS 上使用 bash),正确地通过 stdin,stdout 和 stderr,所以像你的日常 git 工作流程甚至 vim 可以正常工作。还有一本关于 Nu 的书,目前正在进行中。
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项目描述:这是一个 Github 时代下,一个更加现代的 shell。Nushell 将 shell 命
I think listing anti-patterns with some basic reasoning about "why not" is a good idea.
Example - singleton. Although #256 has "won't fix" label
- it is in PRs section, and people (if searching history at all) are searching issues first.
- it was misspelled, Singelton instead of Singleton, therefore impossible to find
Listing most popular anti-patterns (without actual implementation) shou
Code Sample, a copy-pastable example if possible
dataframe = pd.DataFrame({'x': [1, 2, 3], 'y': ['a', 'b', 'c']})
series = dataframe.stack()
print(series.to_json(orient="index"))The keys in the output have unescaped quotes in them, resulting in invalid JSON. Output here is indented for clarity:
{
"[0,"x"]": 1,
"[0,"y"]": "a",
"[1,"x"]": 2,AiLearning: 机器学习 - MachineLearning - ML、深度学习 - DeepLearning - DL、自然语言处理 NLP
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Updated
Jan 19, 2020 - Python
When trying to run notebook using binder, every time a cell has import matplotlib.pyplot as plt I get an error:
I was checking in the notebooks that the matplotlib version in this binder is '1.5.1', not sure if that is the problem, but as right now I can't run any notebook that has import matplotlib.pyplot as plt
------------------------------------------------------------------------
URL(s) with the issue:
https://github.com/tensorflow/examples/blob/master/courses/udacity_intro_to_tensorflow_for_deep_learning/l08c03_moving_average.ipynb
Description of issue (what needs changing):
It should be 'mean absolute error' instead of squared error while Naive Forecasting
![Screenshot from 2020-01-09 12-10-09](https://user-images.githubusercontent.com/29497701/72044240