Asynchronous tasks in Django with Django Q

Requirements
To follow along you’ll need:

  • a newer version of Python, ideally 3.6 or 3.7
  • Git
    Setting up the project
    Before starting off with the tutorial, make sure you have a Django project in place.
    The tutorial assumes your project is called django_q_django.
    Asynchronous tasks in Django with Django Q: the problem with synchronous code
    The main issue for Python and Django is that they’re synchronous. It’s not a bad thing per se, and there are a lot of ways to circumvent it.

#django #django q #asynchronous

What is GEEK

Buddha Community

Asynchronous tasks in Django with Django Q
Ahebwe  Oscar

Ahebwe Oscar

1620177818

Django admin full Customization step by step

Welcome to my blog , hey everyone in this article you learn how to customize the Django app and view in the article you will know how to register  and unregister  models from the admin view how to add filtering how to add a custom input field, and a button that triggers an action on all objects and even how to change the look of your app and page using the Django suit package let’s get started.

Database

Custom Titles of Django Admin

Exclude in Django Admin

Fields in Django Admin

#django #create super user django #customize django admin dashboard #django admin #django admin custom field display #django admin customization #django admin full customization #django admin interface #django admin register all models #django customization

Asynchronous tasks in Django with Django Q

Requirements
To follow along you’ll need:

  • a newer version of Python, ideally 3.6 or 3.7
  • Git
    Setting up the project
    Before starting off with the tutorial, make sure you have a Django project in place.
    The tutorial assumes your project is called django_q_django.
    Asynchronous tasks in Django with Django Q: the problem with synchronous code
    The main issue for Python and Django is that they’re synchronous. It’s not a bad thing per se, and there are a lot of ways to circumvent it.

#django #django q #asynchronous

Ahebwe  Oscar

Ahebwe Oscar

1620185280

How model queries work in Django

How model queries work in Django

Welcome to my blog, hey everyone in this article we are going to be working with queries in Django so for any web app that you build your going to want to write a query so you can retrieve information from your database so in this article I’ll be showing you all the different ways that you can write queries and it should cover about 90% of the cases that you’ll have when you’re writing your code the other 10% depend on your specific use case you may have to get more complicated but for the most part what I cover in this article should be able to help you so let’s start with the model that I have I’ve already created it.

**Read More : **How to make Chatbot in Python.

Read More : Django Admin Full Customization step by step

let’s just get into this diagram that I made so in here:

django queries aboutDescribe each parameter in Django querset

we’re making a simple query for the myModel table so we want to pull out all the information in the database so we have this variable which is gonna hold a return value and we have our myModel models so this is simply the myModel model name so whatever you named your model just make sure you specify that and we’re gonna access the objects attribute once we get that object’s attribute we can simply use the all method and this will return all the information in the database so we’re gonna start with all and then we will go into getting single items filtering that data and go to our command prompt.

Here and we’ll actually start making our queries from here to do this let’s just go ahead and run** Python manage.py shell** and I am in my project file so make sure you’re in there when you start and what this does is it gives us an interactive shell to actually start working with our data so this is a lot like the Python shell but because we did manage.py it allows us to do things a Django way and actually query our database now open up the command prompt and let’s go ahead and start making our first queries.

#django #django model queries #django orm #django queries #django query #model django query #model query #query with django

Jupyter Notebook Kernel for Running ansible Tasks and Playbooks

Ansible Jupyter Kernel

Example Jupyter Usage

The Ansible Jupyter Kernel adds a kernel backend for Jupyter to interface directly with Ansible and construct plays and tasks and execute them on the fly.

Demo

Demo

Installation:

ansible-kernel is available to be installed from pypi but you can also install it locally. The setup package itself will register the kernel with Jupyter automatically.

From pypi

pip install ansible-kernel
python -m ansible_kernel.install

From a local checkout

pip install -e .
python -m ansible_kernel.install

For Anaconda/Miniconda

pip install ansible-kernel
python -m ansible_kernel.install --sys-prefix

Usage

Local install

    jupyter notebook
    # In the notebook interface, select Ansible from the 'New' menu

Container

docker run -p 8888:8888 benthomasson/ansible-jupyter-kernel

Then copy the URL from the output into your browser:
http://localhost:8888/?token=ABCD1234

Using the Cells

Normally Ansible brings together various components in different files and locations to launch a playbook and performs automation tasks. For this jupyter interface you need to provide this information in cells by denoting what the cell contains and then finally writing your tasks that will make use of them. There are Examples available to help you, in this section we'll go over the currently supported cell types.

In order to denote what the cell contains you should prefix it with a pound/hash symbol (#) and the type as listed here as the first line as shown in the examples below.

#inventory

The inventory that your tasks will use

#inventory
[all]
ahost ansible_connection=local
anotherhost examplevar=val

#play

This represents the opening block of a typical Ansible play

#play
name: Hello World
hosts: all
gather_facts: false

#task

This is the default cell type if no type is given for the first line

#task
debug:
#task
shell: cat /tmp/afile
register: output

#host_vars

This takes an argument that represents the hostname. Variables defined in this file will be available in the tasks for that host.

#host_vars Host1
hostname: host1

#group_vars

This takes an argument that represents the group name. Variables defined in this file will be available in the tasks for hosts in that group.

#group_vars BranchOfficeX
gateway: 192.168.1.254

#vars

This takes an argument that represents the filename for use in later cells

#vars example_vars
message: hello vars
#play
name: hello world
hosts: localhost
gather_facts: false
vars_files:
    - example_vars

#template

This takes an argument in order to create a templated file that can be used in later cells

#template hello.j2
{{ message }}
#task
template:
    src: hello.j2
    dest: /tmp/hello

#ansible.cfg

Provides overrides typically found in ansible.cfg

#ansible.cfg
[defaults]
host_key_checking=False

Examples

You can find various example notebooks in the repository

Using the development environment

It's possible to use whatever python development process you feel comfortable with. The repository itself includes mechanisms for using pipenv

pipenv install
...
pipenv shell

Author: ansible
Source Code:  https://github.com/ansible/ansible-jupyter-kernel
License: Apache-2.0 License

#jupyter #python 

Ananya Gupta

Ananya Gupta

1597123834

Main Pros and Cons of Django As A Web Framework for Python Developers

Django depicts itself as “the web system for fussbudgets with cutoff times”. It was intended to help Python engineers take applications from idea to consummation as fast as could be expected under the circumstances.

It permits fast turn of events on the off chance that you need to make a CRUD application with batteries included. With Django, you won’t need to rehash an already solved problem. It just works and lets you center around your business rationale and making something clients can utilize.

Pros of Django

“Batteries included” theory

The standard behind batteries-included methods normal usefulness for building web applications accompanies the system, not as isolated libraries.

Django incorporates much usefulness you can use to deal with normal web advancement undertakings. Here are some significant level functionalities that Django gives you, which else you need to stay together if you somehow happened to utilize a small scale structure:

ORM

Database relocations

Client validation

Administrator board

Structures

Normalized structure

Django as a system proposes the right structure of an undertaking. That structure helps designers in making sense of how and where to execute any new component.

With a generally acknowledged venture structure that is like numerous tasks, it is a lot simpler to discover online good arrangements or approach the network for help. There are numerous energetic Python designers who will assist you with comprehending any issue you may experience.

Django applications

Django applications (or applications for short) permit designers to separate a task into numerous applications. An application is whatever is introduced by putting in settings.INSTALLED_APPS. This makes it simpler for engineers to add usefulness to the web application by coordinating outer Django applications into the venture.

There are many reusable modules and applications to accelerate your turn of events learn through Online Django Class and Check the Django website.

Secure of course

Django gives great security assurance out of the crate and incorporates avoidance components for basic assaults like SQL Injection (XSS) and Cross-site Request Forgery (CSRF). You can discover more subtleties in the official security diagram control.

REST structure for building APIs

Django REST Framework, commonly condensed “DRF”, is a Python library for building APIs. It has secluded and adaptable engineering that functions admirably for both straightforward and complex web APIs.

DRF gives a lot of verification and authorization strategies out of the case. It is an adaptable, full-included library with measured and adjustable engineering. It accompanies nonexclusive classes for CRUD tasks and an implicit API program for testing API endpoints.

GraphQL structure for building APIs

Huge REST APIs regularly require a lot of solicitations to various endpoints to recover every single required datum. GraphQL it’s a question language that permits us to share related information in a lot simpler design. For a prologue to GraphQL and an outline of its ideas, if it’s not too much trouble allude to the authority GraphQL documentation.

Graphene-Django gives reflections that make it simple to add GraphQL usefulness to your Django venture. Ordinary Django models, structures, validation, consent arrangements, and different functionalities can be reused to manufacture GraphQL blueprint. It additionally gives an implicit API program for testing API endpoints.

Cons of Django

Django ORM

Django ORM, made before SQLAlchemy existed, is currently much sub-par compared to SQLAlchemy. It depends on the Active Record design which is more regrettable than the Unit of Work design embraced by SQLAlchemy. This implies, in Django, models can “spare” themselves and exchanges are off as a matter of course, they are a bit of hindsight. Peruse more in Why I kind of aversion Django.

Django advances course popularity increses day by day:

Django is huge and is viewed as strong bit of programming. This permits the network to create several reusable modules and applications yet has additionally restricted the speed of advancement of the Django. On head of that Django needs to keep up in reverse similarity, so it advances gradually.

Rundown - Should I use Django as a Python designer?

While Django ORM isn’t as adaptable as SQLAlchemy and the enormous environment of reusable modules and applications hinders structure advancement - plainly Django ought to be the best option web system for Python engineers.

Elective, light systems, similar to Flask, while offering a retreat from Django huge biological system and designs, in the long haul can require substantially more additional libraries and usefulness, in the end making many experienced Python engineers winding up wishing they’d began with Django.

Django undertaking’s security and network have become enormously over the previous decade since the system’s creation. Official documentation and instructional exercises are probably the best anyplace in programming advancement. With each delivery, Django keeps on including huge new usefulness.

#django online training #django online course #online django course #django course #django training #django certification course