Certificate Authentication

Basic and Advanced Python Certificate for Roy K C Lo

Add to LinkedIn

Certificate ID: 
704583
Authentication Code: 
c6544
Certified Person Name: 
Roy K C Lo
Trainer Name: 
Tomasz Puton
Duration Days: 
5
Duration Hours: 
35
Course Name: 
Basic and Advanced Python
Course Date: 
9 January 2023 02:30 to 13 January 2023 09:30
Course Outline: 

Python Programming

 

Getting started with Python

 

  • Overview of Python

  • Installing Python

  • Getting ready to develop

 

Python Language Fundamentals

 

  • Overview of core Python syntax rules

  • Simple data types and variables

  • Object essentials

  • Flow control

 

Working with Functions

 

  • The benefit of functions

  • Writing and calling functions

  • Passing parameters

 

Exception Handling

 

  • Overview of exceptions in Python

  • Handling exceptions

  • Raising exceptions

  • Design issues

 

Collections

 

  • Overview of collections in Python

  • Lists

  • Tuples

  • Sets

  • Dictionaries

 

Strings and Regular Expressions

 

  • Overview of strings in Python

  • Basic string manipulation

  • Introduction to regular expressions

 

Classes and Iterators

 

  • Defining classes

  • Instance variables

  • Iterators

  • Creating and initializing objects

 

File Handling

 

  • Overview of file handling in Python

  • Reading and writing text files

  • Binary files

  • Streaming and serializing

 

XML Processing

 

  • XML essentials

  • Parsing XML documents

  • Searching for XML content

  • Generating XML data

 

Web Services

 

  • Overview of Web services

  • Implementing Web services using Python

  • Caching

  • Compression

  • Handling redirects

 

Recap Essential Python Features

 

  • Language Fundamentals

  • Functions

  • Data Structures

  • Defining and Using Packages

  • Additional Techniques

 

Object-Oriented Programming

 

  • Essential concepts

  • Defining and using a class

  • Class-wide members

 

Additional Object-Oriented Techniques

 

  • A closer look at attributes

  • Implementing special methods

  • Inheritance

 

XML Processing

 

  • XML essentials

  • Reading XML data in Python

  • Locating content using Xpath

  • Updating XML data in Python

  • Using the LXML library

 

Functional Programming

 

  • Functional programming in Python

  • Higher order functions

  • Additional Techniques

 

Web Processing

 

  • Python web servers

  • Python rest services

  • Python web sockets

 

Decorators

 

  • Getting started with decorators

  • Additional decorator techniques

  • Parameterized decorators

 

Asynchronous Processing in Python

 

  • Getting started with asynchrony in Python

  • Creating tasks to run in different threads

  • Additional task techniques

 

Getting Started with Python Data Science and NumPy

 

  • Introduction to Python data science

  • NumPy arrays

  • Manipulating array elements

  • Manipulating array shape

 

NumPy Techniques

 

  • NumPy universal functions

  • Aggregations

  • Broadcasting

  • Manipulating arrays using Boolean Logic

  • Additional techniques

 

Getting Started with Pandas

 

  • Introduction to Pandas

  • Creating a series

  • Using a series

  • Creating a DataFrame

  • Using a DataFrame

 

Pandas Techniques

 

  • Universal functions

  • Merging and joining datasets

  • A closer look at joins

 

Working with Time Series Data

 

  • Introduction to time series data

  • Indexing and plotting time series data

  • Testing data for stationarity

  • Making data stationary

  • Forecasting time series data

  • Scaling back the ARIMA results

 

Introduction to Machine Learning

 

  • Machine learning concepts

  • Classification

  • Clustering

 

Getting Started with Scikit-Learn

 

  • Scikit_Learn essentials

  • A closer look at datasets

 

Understanding the Scikit-Learn API

 

  • Introduction

  • Scikit-Learn API essentials

  • Performing linear regression

 

Going Further with Scikit-Learn

 

  • Introduction

  • Understanding Naive Bayes classification

  • Naive Bayes example using Scikit-Learn

 

Case Study

 

  • Worked example of a real-world data science problem