Challenge: Simulate Test Coverage Tracking
Understanding and monitoring test coverage is a crucial aspect of quality assurance, as it helps you identify which parts of the codebase have been exercised by your tests and which have not. By simulating test coverage tracking, you can gain practical insights into how coverage tools operate and why they are valuable for continuous QA improvement. In this challenge, you will create a Python script that maintains a set of function names as they are "called" during test execution, then reports which functions from a predefined list were covered and which were not. This hands-on exercise reinforces the importance of thorough testing and the value of coverage metrics in real-world QA workflows.
Swipe to start coding
Write a Python function to simulate test coverage tracking for a list of functions. You are provided with a list of all function names that should be tested, and a list of function names that were actually called during test execution.
- Identify which function names from
functions_to_testare present intested_functions. - Identify which function names from
functions_to_testare not present intested_functions. - Prepare a string listing the covered functions, separated by commas, in sorted order.
- Prepare a string listing the untested functions, separated by commas, in sorted order.
- Print the covered functions with the label "Tested functions:".
- Print the untested functions with the label "Untested functions:".
Oplossing
Bedankt voor je feedback!
single
Vraag AI
Vraag AI
Vraag wat u wilt of probeer een van de voorgestelde vragen om onze chat te starten.
Can you explain how to simulate function calls for coverage tracking?
What should the predefined list of functions look like?
How do I report which functions were covered and which were not?
Geweldig!
Completion tarief verbeterd naar 4.76
Challenge: Simulate Test Coverage Tracking
Veeg om het menu te tonen
Understanding and monitoring test coverage is a crucial aspect of quality assurance, as it helps you identify which parts of the codebase have been exercised by your tests and which have not. By simulating test coverage tracking, you can gain practical insights into how coverage tools operate and why they are valuable for continuous QA improvement. In this challenge, you will create a Python script that maintains a set of function names as they are "called" during test execution, then reports which functions from a predefined list were covered and which were not. This hands-on exercise reinforces the importance of thorough testing and the value of coverage metrics in real-world QA workflows.
Swipe to start coding
Write a Python function to simulate test coverage tracking for a list of functions. You are provided with a list of all function names that should be tested, and a list of function names that were actually called during test execution.
- Identify which function names from
functions_to_testare present intested_functions. - Identify which function names from
functions_to_testare not present intested_functions. - Prepare a string listing the covered functions, separated by commas, in sorted order.
- Prepare a string listing the untested functions, separated by commas, in sorted order.
- Print the covered functions with the label "Tested functions:".
- Print the untested functions with the label "Untested functions:".
Oplossing
Bedankt voor je feedback!
single