Python For Data Science With Assignments
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English (US) | Size: 5.43 GB | Duration: 9h 16m
A Comprehensive and Practical Hands-On Guide to Learning Python for Beginners, Aspiring Developers, Self-Learners, etc.
What you'll learn
Real-world use cases of Python and its versatility.
Installation of Python on both Mac and Windows operating systems.
Fundamentals of programming with Python, including variables and data types.
Working with various operators in Python to perform operations.
Handling data using essential data structures like lists, tuples, sets, and dictionaries.
Utilizing functions and working with parameters and arguments.
Employing filter, map, and zip functions for data processing.
Exploring analytical and aggregate functions for data analysis.
Using built-in functions for regular expressions and handling special characters and sets.
Iterating over elements using for loops and while loops.
Understanding the object-oriented programming (OOP) concepts and principles.
Working with date and time classes, including TimeDelta for time manipulation.
Fundamental concepts and importance of statistics in various fields.
How to use statistics for effective data analysis and decision-making.
Introduction to Python for statistical analysis, including data manipulation and visualization.
Different types of data and their significance in statistical analysis.
Measures of central tendency, spread, dependence, shape, and position.
How to calculate and interpret standard scores and probabilities.
Key concepts in probability theory, set theory, and conditional probability.
Understanding Bayes' Theorem and its applications.
Permutations, combinations, and their role in solving real-world problems.
Practical knowledge of various statistical tests, including t-tests, chi-squared tests, and ANOVA, for hypothesis testing and inference.
Requirements
Students should have a general understanding of how to operate a computer.
Be comfortable with common tasks like file management and using a web browser.
No Prior Programming Experience Required.
Students should have Python installed on their computers.
A positive attitude and a willingness to learn and explore new concepts are essential for getting the most out of this course.
A basic understanding of mathematics, including algebra and arithmetic.
Familiarity with fundamental concepts in data analysis and problem-solving.
A willingness to learn and engage with statistical concepts and Python programming.
Basic knowledge of Python is a plus but not mandatory, as introductory Python concepts will be covered in the course.
Description
Are you ready to embark on an exciting journey into the world of Python programming? This comprehensive course is designed to take you from a Python novice to a proficient programmer, equipping you with the skills to tackle real-world projects, automate tasks, perform data analysis, and excel in coding interviews.In this course, you'll explore the following key topics through practical hands-on exercises and real-world examples:- Discover real-world use cases of Python and understand its versatility in various domains.- Learn how to install Python on both Mac and Windows operating systems to kickstart your programming journey.- Grasp the fundamentals of Python programming, starting with variables and their scope.- Dive into data types and type casting to effectively manage different kinds of data.- Gain insight into essential Python operators to perform various operations with ease.- Explore essential data structures like lists, tuples, sets, and dictionaries for efficient data manipulation.- Learn about stacks and queues and their applications in solving real-world problems.- Understand the space and time complexity of algorithms and their impact on code performance.- Study sorting and searching algorithms to efficiently organize and retrieve data.- Master the concept of parameters and arguments to write flexible and reusable functions.- Uncover the power of Python modules and their significance in building modular applications.- Utilize filter, map, and zip functions for streamlined data processing.- Harness the flexibility of lambda functions to write concise and efficient code.- Master list, set, and dictionary comprehensions for elegant data manipulation.- Perform data analysis using analytical and aggregate functions to gain valuable insights.- Handle strings and discover important string functions for text manipulation.- Learn string formatting and user input techniques for interactive programming.- Gain proficiency in working with meta characters and implementing regular expressions.- Unlock the potential of built-in functions for regular expressions, and handle special characters and sets.- Implement conditional statements for decision-making in your code.- Iterate over elements using for loops and while loops to process data efficiently.- Control loop flow with break and continue statements for better program control.- Combine conditional statements and loops effectively to tackle complex problems.- Grasp the fundamentals of object-oriented programming (OOPs) and its role in building robust applications.- Understand inheritance, encapsulation, and polymorphism, and leverage them to write efficient code.- Explore the Date and Time class for working with dates and times effectively.- Utilize the TimeDelta class for precise time manipulation in your Python programs.- Delve into the world of data-driven insights and discover how statistics plays a pivotal role in shaping our understanding of information.- Equip yourself with the essential Python skills required for effective data manipulation and visualization.- Learn to categorize data, setting the stage for meaningful analysis.- Discover how to summarize data with measures like mean, median, and mode.- Explore the variability in data using concepts like range, variance, and standard deviation.- Understand relationships between variables with correlation and covariance.- Grasp the shape and distribution of data using techniques like quartiles and percentiles.- Learn to standardize data and calculate z-scores.- Dive into probability theory and its practical applications.- Lay the foundation for probability calculations with set theory.- Explore the probability of events under certain conditions.- Uncover the power of Bayesian probability in real-world scenarios.- Solve complex counting problems with ease.- Understand the concept of random variables and their role in probability.- Explore various probability distributions and their applications.Join us on this enriching journey, and let's unlock the power of Python together! Whether you're an absolute beginner or looking to expand your programming skills, this course provides you with a solid foundation and practical expertise to succeed in your Python endeavors. Enroll now and start your Python programming adventure!
Who this course is for:
Beginners with no prior programming experience.,Students or professionals in various fields, including business, science, social sciences, and healthcare, who want to enhance their data analysis skills.,Anyone interested in automating tasks or data analysis.,Data analysts, researchers, and scientists seeking to strengthen their statistical foundations and Python programming skills.,Anyone interested in gaining a deeper understanding of statistical concepts and their practical applications.,Beginners with no prior statistical knowledge but with a curiosity to learn and apply statistical methods.,Professionals looking to advance their career by acquiring valuable statistical and data analysis skills.,Individuals preparing for standardized tests or exams that include statistical and data analysis components.
For More Courses Visit & Bookmark Your Preferred Language Blog
From Here: - - - - - - - -
https://ddownload.com/pgw0m7um1f1w/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part1.rar https://ddownload.com/igposeyv2f39/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part2.rar https://ddownload.com/p1wj5cv1e87x/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part3.rar https://ddownload.com/92uj52mhsgiy/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part4.rar https://ddownload.com/4ad5cxgzoanh/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part5.rar
https://rapidgator.net/file/94fe378508ea46ab8aeef81c0f8a7c23/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part1.rar https://rapidgator.net/file/4475d35901c4cb6f0a9cae38d0ffda67/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part2.rar https://rapidgator.net/file/33f348cfc7c0d73b2f53bd522bfe28a7/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part3.rar https://rapidgator.net/file/9a1807d279177b1218aafbd2eaf96a51/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part4.rar https://rapidgator.net/file/937d16bc4248227235fc82c4a83de5b1/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part5.rar
https://turbobit.net/dynww82ew7hf/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part1.rar.html https://turbobit.net/nvrsaufgpble/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part2.rar.html https://turbobit.net/61eaxr79pvy3/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part3.rar.html https://turbobit.net/bddmmrffjo5u/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part4.rar.html https://turbobit.net/rgtpwytttaw3/Udemy.Python.for.Data.Science.with.Assignments.BOOKWARE-LBWx.part5.rar.html