I wanted to share a little adventure I had while learning Angular. My blog at abelcastro.dev was doing just fine with Django, but I thought, "Why not tinker around with Angular and learn some new skills?" So, I created a playground at ng.abelcastro.dev and decided to see what I could do!
Angular is a fantastic toolbox for making web applications more interactive. Even though my blog was working perfectly with Django, I wanted to learn Angular just for the sake of learning, not necessarily to make it look fancier.
First things first, I set up a separate space for Angular at ng.abelcastro.dev. This way, I could experiment and learn without interfering with the good old Django backend.
To make things flow smoothly, I created a pathway for my Angular app to access the blog's data using a RESTful API at `abelcastro.dev/api/posts´ in my Django backend. This API helps Angular fetch blog posts.
In the Django world, I used the Django REST framework to create the /api/posts
endpoint. This way, my Angular app can easily fetch the blog post data it needs.
Inside the Angular app, I used Angular's HttpClient module to fetch data from the Django backend's /api/posts
.
You can find the repository for my new angular blog here 🚀.
During the development of web applications, working with APIs is a common task. However, sometimes APIs might not be fully developed or available, which can hinder the development process. To overcome this challenge, developers often resort to mocking APIs to simulate their behavior. One popular tool for achieving this is json-server
. In this article, we'll walk you through the process of mocking an API using json-server
and provide an example of how to create a mock API with custom data.
json-server
globally using npm:npm install -g json-server
db.json
with the following content:{
"products": [
{
"id": 1,
"name": "Mock Product 1",
"price": 19.99
},
{
"id": 2,
"name": "Mock Product 2",
"price": 29.99
}
]
}
Save this file in your project directory.
db.json
, and start the mock server by running:json-server --watch db.json
The mock server will start at http://localhost:3000
.
http://localhost:3000/products
.The example above showcased a simple mock API for products. You can customize the data and structure of the API according to your application's needs. Add more endpoints, nested data, or different types of data to match your requirements.
json-server
is a valuable tool for developers to create mock APIs that simulate real API behavior. It allows you to continue developing frontend components without waiting for backend APIs to be fully implemented. By following the steps outlined in this article, you can quickly set up a mock API for testing and development purposes. This approach enhances productivity and ensures a smooth development process, even when working with incomplete or unavailable APIs. Happy mocking!
Django is a popular and powerful web framework for Python that has become the go-to choice for many web developers. However, one common performance problem that can occur when using Django is the "n+1" issue. This problem can arise when querying a large amount of data, leading to increased loading times and decreased performance. In this blog post, we'll explore what the n+1 issue is, why it occurs, and how to solve it.
The n+1 issue occurs when querying a large amount of data from a database. Consider the following example: you have a model that represents a blog post, and you want to retrieve a list of all blog posts along with the author of each post. To do this, you might run the following code:
posts = BlogPost.objects.all()
for post in posts:
author = post.author
While this code will retrieve all the information you need, it can be slow and inefficient when dealing with large amounts of data. The reason for this is that it will execute a separate SQL query for each post to retrieve the author information. This can lead to an excessive number of SQL queries and slow down your application.
The n+1 issue occurs because Django does not retrieve all the data for a relationship in a single query. Instead, it retrieves data for each relationship as it is needed. In the example above, this means that Django will execute a separate SQL query for each post to retrieve the author information. This can lead to a large number of SQL queries and slow down your application.
There are several ways to solve the n+1 issue in Django, and the best solution depends on your specific use case. Here are some common solutions:
select_related
methodThe select_related
method is a convenient way to retrieve related data in a single query. You can use it to retrieve the author information for all posts in a single query like this:
posts = BlogPost.objects.all().select_related('author')
for post in posts:
author = post.author
prefetch_related
methodThe prefetch_related
method is similar to select_related
, but it is more flexible and can be used for more complex relationships. You can use it to retrieve the author information for all posts in a single query like this:
posts = BlogPost.objects.all().prefetch_related('author')
for post in posts:
author = post.author
The n+1 issue is a common performance problem that can occur when using Django. By understanding what the n+1 issue is, why it occurs, and how to solve it, you can ensure that your Django applications run smoothly and efficiently.
This content was generated by ChatGPT at 9th February 2023 with the following questions:
The original post had a solution number 3 that looked like this:
Use the in operator: The in operator can be used to retrieve multiple records in a single query. You can use it to retrieve the author information for all posts in a single query like this:
posts = BlogPost.objects.all()
author_ids = [post.author_id for post in posts]
authors = Author.objects.filter(id__in=author_ids)
I told ChatGPT that this is not a solution for the issue and it answered this:
"Thank you for pointing that out. You're correct, using the in operator as I described in Solution 3 is not a direct solution for the n+1 issue. It is more of a workaround that can be used to reduce the number of SQL queries, but it doesn't address the root cause of the problem."