Stay ahead by continuously learning and advancing your career.. Learn More

Python Practice Exam

description

Bookmark 1200 Enrolled (0) Intermediate

Python Certification


Python stands out as a high-level, interpreted programming language that finds extensive utility across web development, data science, machine learning, and various other fields. Its reputation stems from its clear syntax and ease of use, alongside its sizable and dynamic user base. Python scripts can be crafted in a basic text editor and run through a Python interpreter, a feature that attracts both novice and seasoned developers.


Who should take the Python Certification exam?

  • Software Developers
  • Data Analysts
  • Data Scientists
  • Researchers
  • Engineers
  • Students and professionals from non-technical fields who want to use Python in their work.
  • Anyone who want to learn or improve their programming skills using Python


Skills Evaluated

Candidates taking the Python exam are typically evaluated for a range of skills and competencies. These skills may include:

  • Writing Python code using correct syntax, operators, control flow statements, and data structures.
  • Create classes and objects, implement inheritance, polymorphism, and encapsulation concepts.
  • Knowledge of Python Standard Library
  • Knowledge of testing frameworks, as well as debugging techniques in Python code.
  • Understanding of web frameworks like Flask or Django, and knowledge of working with APIs for building web applications.
  • Use libraries like NumPy and pandas for data manipulation and analysis.
  • Use Scikit-learn library for implementing simple machine learning models.
  • Knowledge of threading and multiprocessing concepts in Python


Python Certification Course Outline

1. Python Basics
1.1 Variables and Data Types
1.2 Basic Operators
1.3 Control Flow (if, elif, else)
1.4 Loops (for, while)
1.5 Functions
1.6 Exception Handling
1.7 Modules and Packages

2. Data Structures
2.1 Lists
2.2 Tuples
2.3 Sets
2.4 Dictionaries

3. Object-Oriented Programming (OOP)
3.1 Classes and Objects
3.2 Inheritance
3.3 Polymorphism
3.4 Encapsulation

4. File Handling
4.1 Reading and Writing Files
4.2 Working with Different File Formats (CSV, JSON, etc.)

5. Advanced Python
5.1 Decorators
5.2 Generators
5.3 Context Managers
5.4 Regular Expressions
5.5 Lambda Functions
5.6 Comprehensions

6. Python Standard Library
6.1 os, sys, and other system-related modules
6.2 datetime, calendar, and time modules
6.3 random, math, and statistics modules
6.4 collections module

7. Testing in Python
7.1 unittest framework
7.2 pytest framework

8. Python Web Development
8.1 Flask or Django framework basics
8.2 Working with APIs

9. Data Science and Data Analysis with Python
9.1 NumPy and pandas libraries
9.2 Data visualization with Matplotlib or Seaborn

10. Machine Learning with Python
10.1 Scikit-learn library basics
10.2 Simple machine learning models and algorithms

11. Concurrency and Parallelism
11.1 Threading and Multiprocessing in Python

12. Best Practices and Code Quality
12.1 PEP 8 guidelines
12.2 Code documentation and commenting



Reviews

$7.99
Format
Practice Exam
No. of Questions
50
Delivery & Access
Online, Lifelong Access
Test Modes
Practice, Exam
Take Free Test

Tags: Python, Python MCQs, Python mock test, Python test online, Python multiple choice questions, Python practice test, free Python questions and answers, Python interview question,

Python Practice Exam

Python Practice Exam

  • Test Code:9500-P
  • Availability:In Stock
  • $7.99

  • Ex Tax:$7.99


Python Certification


Python stands out as a high-level, interpreted programming language that finds extensive utility across web development, data science, machine learning, and various other fields. Its reputation stems from its clear syntax and ease of use, alongside its sizable and dynamic user base. Python scripts can be crafted in a basic text editor and run through a Python interpreter, a feature that attracts both novice and seasoned developers.


Who should take the Python Certification exam?

  • Software Developers
  • Data Analysts
  • Data Scientists
  • Researchers
  • Engineers
  • Students and professionals from non-technical fields who want to use Python in their work.
  • Anyone who want to learn or improve their programming skills using Python


Skills Evaluated

Candidates taking the Python exam are typically evaluated for a range of skills and competencies. These skills may include:

  • Writing Python code using correct syntax, operators, control flow statements, and data structures.
  • Create classes and objects, implement inheritance, polymorphism, and encapsulation concepts.
  • Knowledge of Python Standard Library
  • Knowledge of testing frameworks, as well as debugging techniques in Python code.
  • Understanding of web frameworks like Flask or Django, and knowledge of working with APIs for building web applications.
  • Use libraries like NumPy and pandas for data manipulation and analysis.
  • Use Scikit-learn library for implementing simple machine learning models.
  • Knowledge of threading and multiprocessing concepts in Python


Python Certification Course Outline

1. Python Basics
1.1 Variables and Data Types
1.2 Basic Operators
1.3 Control Flow (if, elif, else)
1.4 Loops (for, while)
1.5 Functions
1.6 Exception Handling
1.7 Modules and Packages

2. Data Structures
2.1 Lists
2.2 Tuples
2.3 Sets
2.4 Dictionaries

3. Object-Oriented Programming (OOP)
3.1 Classes and Objects
3.2 Inheritance
3.3 Polymorphism
3.4 Encapsulation

4. File Handling
4.1 Reading and Writing Files
4.2 Working with Different File Formats (CSV, JSON, etc.)

5. Advanced Python
5.1 Decorators
5.2 Generators
5.3 Context Managers
5.4 Regular Expressions
5.5 Lambda Functions
5.6 Comprehensions

6. Python Standard Library
6.1 os, sys, and other system-related modules
6.2 datetime, calendar, and time modules
6.3 random, math, and statistics modules
6.4 collections module

7. Testing in Python
7.1 unittest framework
7.2 pytest framework

8. Python Web Development
8.1 Flask or Django framework basics
8.2 Working with APIs

9. Data Science and Data Analysis with Python
9.1 NumPy and pandas libraries
9.2 Data visualization with Matplotlib or Seaborn

10. Machine Learning with Python
10.1 Scikit-learn library basics
10.2 Simple machine learning models and algorithms

11. Concurrency and Parallelism
11.1 Threading and Multiprocessing in Python

12. Best Practices and Code Quality
12.1 PEP 8 guidelines
12.2 Code documentation and commenting