Frisby.js

Frisby is a REST API testing framework built on node.js and Jasmine.

Install Frsiby.js

Install Frisby.js with NPM locally. Execute the following command in your project folder.

sudo npm install frisby

Write Tests

Frisby tests start with frisby.create(‘Test Title’), where Test Title is a description for this test.

The tests are then followed by one of the HTTP methods (get, post, …, etc). For example, .get(url) make a GET request to url.

The tests can be chained with expects after the HTTP methods. For example, .expectStatus(200) tests if the response status is 200.

The tests end with .toss() to generate the resulting Jasmine tests.

Run Tests

Frisby.js uses the Jasmine-node test runner.

Write the tests in *.js files and put them in the /spec folder.

Note: The test files must be named as *spec.js in order for jasmine-node to find them

Run the tests with the command jasmine-node spec/ and the result of the test should show.

Generate Test Reports

To generate test reports in JUnit format, use –junitreport argument with jasmine-node command.

A Simple Example:

This simple example includes a HTTP server for GET, PUT, POST, DELETE requests. The server will return a json object with method field being the request type.

For example, the server will respond to a GET request with {“method”:”GET”}.

Each test case includes sending a request and check the HTTP status code, response header, and response JSON body.

For example,

frisby.create(‘GET Method’)
.get(‘http://localhost:4000’)
.expectStatus(200)
.expectHeaderContains(‘content-type’, ‘application/json’)
.expectJSON({
method : ‘GET’
})
.expectJSONTypes({
method : String
}).toss();


Posted

in

by

Tags:

Recent Post

  • AI Chatbots for Sales Team Automation: The Critical Role of AI Sales Assistants in Automating Your Sales Team

    Sales teams are the heart of any successful business, but managing them effectively can often feel like trying to juggle flaming swords. The constant pressure to generate leads, maintain relationships, and close deals leaves your team overwhelmed, spending more time on administrative tasks than actual selling. Here’s where AI-powered sales assistants step in to completely […]

  • Transforming HR with AI Assistants: The Comprehensive Guide

    The role of Human Resources (HR) is critical for the smooth functioning of any organization, from handling administrative tasks to shaping workplace culture and driving strategic decisions. However, traditional methods often fall short of meeting the demands of a modern, dynamic workforce. This is where our Human Resource AI assistants enter —a game-changing tool that […]

  • How Conversational AI Chatbots Improve Conversion Rates in E-Commerce?

    The digital shopping experience has evolved, with Conversational AI Chatbots revolutionizing customer interactions in e-commerce. These AI-powered systems offer personalized, real-time communication with customers, streamlining the buying process and increasing conversion rates. But how do Conversational AI Chatbots improve e-commerce conversion rates, and what are the real benefits for customers? In this blog, we’ll break […]

  • 12 Essential SaaS Metrics to Track Business Growth

    In the dynamic landscape of Software as a Service (SaaS), the ability to leverage data effectively is paramount for long-term success. As SaaS businesses grow, tracking the right SaaS metrics becomes essential for understanding performance, optimizing strategies, and fostering sustainable growth. This comprehensive guide explores 12 essential SaaS metrics that every SaaS business should track […]

  • Bagging vs Boosting: Understanding the Key Differences in Ensemble Learning

    In modern machine learning, achieving accurate predictions is critical for various applications. Two powerful ensemble learning techniques that help enhance model performance are Bagging and Boosting. These methods aim to combine multiple weak learners to build a stronger, more accurate model. However, they differ significantly in their approaches. In this comprehensive guide, we will dive […]

  • What Is Synthetic Data? Benefits, Techniques & Applications in AI & ML

    In today’s data-driven era, information is the cornerstone of technological advancement and business innovation. However, real-world data often presents challenges—such as scarcity, sensitivity, and high costs—especially when it comes to specific or restricted datasets. Synthetic data offers a transformative solution, providing businesses and researchers with a way to generate realistic and usable data without the […]

Click to Copy