Free Python 101 Class Beginners Bootcamp Intro to Python NYC
Free Python 101 Class Beginners Bootcamp Intro to Python NYC, available at Free, has an average rating of 3.55, with 40 lectures, based on 2363 reviews, and has 70856 subscribers.
You will learn about Become Ready to join our Data Science Bootcamp Course in NYC 312 285 6886 Find out and debub problems in the code and prepare yourself for Bootcamp in NYC Search google and get help on the error and ask yourself and google right answer Gain confidence to join Part time evening Bootcamp in NYC, New York After this course the learners will assume confidence and gain fundamentals to use Python and advance to Python for Data Analytics This course is ideal for individuals who are Begineers who would like to use Python for Analytics should start with this Python 101 Bootcamp Course or Anyone one who also thinks to be a python hero and want to become super hero or If you thought programming is not for your and want to give a last try! or Python is a very popular programming language used by companies like Google, Facebook, Amazon, Microsoft, etc. Python is used for all variety of things like building websites using Django Python, web scraping, data analysis, machine learning, and natural language processing using Python. Python allows you to code fast, building complex applications with minimum lines of code and use existing libraries and use cloud infrastructure resulting true use of Infra on Cloud and code that is 5 times less than Java and 10 times less than C++ / C#. It is particularly useful for Begineers who would like to use Python for Analytics should start with this Python 101 Bootcamp Course or Anyone one who also thinks to be a python hero and want to become super hero or If you thought programming is not for your and want to give a last try! or Python is a very popular programming language used by companies like Google, Facebook, Amazon, Microsoft, etc. Python is used for all variety of things like building websites using Django Python, web scraping, data analysis, machine learning, and natural language processing using Python. Python allows you to code fast, building complex applications with minimum lines of code and use existing libraries and use cloud infrastructure resulting true use of Infra on Cloud and code that is 5 times less than Java and 10 times less than C++ / C#.
Enroll now: Free Python 101 Class Beginners Bootcamp Intro to Python NYC
Summary
Title: Free Python 101 Class Beginners Bootcamp Intro to Python NYC
Price: Free
Average Rating: 3.55
Number of Lectures: 40
Number of Published Lectures: 40
Number of Curriculum Items: 40
Number of Published Curriculum Objects: 40
Original Price: Free
Quality Status: approved
Status: Live
What You Will Learn
- Become Ready to join our Data Science Bootcamp Course in NYC 312 285 6886
- Find out and debub problems in the code and prepare yourself for Bootcamp in NYC
- Search google and get help on the error and ask yourself and google right answer
- Gain confidence to join Part time evening Bootcamp in NYC, New York
- After this course the learners will assume confidence and gain fundamentals to use Python and advance to Python for Data Analytics
Who Should Attend
- Begineers who would like to use Python for Analytics should start with this Python 101 Bootcamp Course
- Anyone one who also thinks to be a python hero and want to become super hero
- If you thought programming is not for your and want to give a last try!
- Python is a very popular programming language used by companies like Google, Facebook, Amazon, Microsoft, etc. Python is used for all variety of things like building websites using Django Python, web scraping, data analysis, machine learning, and natural language processing using Python. Python allows you to code fast, building complex applications with minimum lines of code and use existing libraries and use cloud infrastructure resulting true use of Infra on Cloud and code that is 5 times less than Java and 10 times less than C++ / C#.
Target Audiences
- Begineers who would like to use Python for Analytics should start with this Python 101 Bootcamp Course
- Anyone one who also thinks to be a python hero and want to become super hero
- If you thought programming is not for your and want to give a last try!
- Python is a very popular programming language used by companies like Google, Facebook, Amazon, Microsoft, etc. Python is used for all variety of things like building websites using Django Python, web scraping, data analysis, machine learning, and natural language processing using Python. Python allows you to code fast, building complex applications with minimum lines of code and use existing libraries and use cloud infrastructure resulting true use of Infra on Cloud and code that is 5 times less than Java and 10 times less than C++ / C#.
Python is a very popular programming language used by companies like Google, Facebook, Amazon, Microsoft, etc. Python is used for all variety of things like building websites using Django Python, web scraping, data analysis, machine learning, and natural language processing using Python. Python allows you to code fast, building complex applications with minimum lines of code and use existing libraries and use cloud infrastructure resulting true use of Infra on Cloud and code that is 5 times less than Java and 10 times less than C++ / C#. Python 101 Beginners Coding Boot-camp Class for Analytics. Python Programming for Beginners Course: Python 101 Intro to Python. Python 101 Bootcamp is build up based on the Python classes for Analytics taken in NYC, New York by Shivgan Joshi. Having taught at various bootcamps in NYC and gathering feedback from students this course addresses all the major topics you need to get started for Python Anlytics if you have never programmed.
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Create Azure Notebook Account
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Downloading Python Anaconda to your laptop
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Intro to common terminology for running Python (AWS, Jupyter, Azure Notebook)
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Hello World Practice, Variables, data types, functions, loops
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Print Hello World Azure Notebooks & Anaconda Book and Content Functions (Arguments and Return) Loops (For While) If else List/Dictionary Nested Loops with if else
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Over 100 code snippets to learn the same concept from different angle and poses
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction to Course and Style of Learning
Lecture 2: Introduction to Course and Style of Learning
Lecture 3: Soul of the language
Lecture 4: Different Ways to Run Python
Lecture 5: Soul and Motivation behind Python
Lecture 6: Soul and Motivation behind Python
Lecture 7: Soul of the language
Lecture 8: Different Ways to Run Python – 1
Lecture 9: Different Ways to Run Python 2
Lecture 10: Run Python on AWS
Chapter 2: Using Python for Printing, Variable managment and Calculator
Lecture 1: Printing
Lecture 2: Variables – Int and Str also system variables and str functions
Lecture 3: Variables – Int and Str also system variables and str functions
Lecture 4: Old ways of priting
Lecture 5: Old ways of printing
Lecture 6: String Concatination, String Multiplicaton & .format command with String
Lecture 7: String Concatination, String Multiplicaton & .format command with String
Lecture 8: Section 2 str split replace list from string.
Lecture 9: Input from a user and File Handling
Lecture 10: Input from a user and File Handling
Chapter 3: Functions
Lecture 1: Function Basics & Advanced (Recursion, optional arg, key word arg)
Lecture 2: Function Basics & Advanced (Recursion, optional arg, key word arg)
Lecture 3: Another way to look at Functions – Input and Output
Lecture 4: Another way to look at Functions – Input and Output
Lecture 5: Little Advanced Functions
Lecture 6: Little Advanced Functions
Lecture 7: Boundaries of loops, if else, functions in Python
Chapter 4: If Else Condition
Lecture 1: If Else or just if?
Lecture 2: If Else or just if?
Chapter 5: List, Tuples (Non Mutable) & Dictionary (Key Value Pair)
Lecture 1: List, Tuples (Non Mutable) & Dictionary (Key Value Pair)
Lecture 2: How to store list of elements?
Lecture 3: Key Value Pairing – Dict
Lecture 4: Key Value Pairing – Dict
Chapter 6: Loops – Iteration – Assume all values – Traver Through
Lecture 1: For Loops
Lecture 2: For Loops
Lecture 3: While Loops
Lecture 4: While Loops
Chapter 7: Recap and Takeaways
Lecture 1: What to remember from this course
Lecture 2: What to remember from this course
Lecture 3: What to remember from this course 2
Instructors
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Shivgan Joshi
Free Python Class Bootcamp Big Data Science NYC 312 285 6886
Rating Distribution
- 1 stars: 186 votes
- 2 stars: 157 votes
- 3 stars: 547 votes
- 4 stars: 744 votes
- 5 stars: 729 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!
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