GK100668 Python for Data Science Primer

New – Learn core Python data science skills.This course introduces data analysts, business analysts, and anyone interested in Data Science to the Python programming language as it's often used in Data Science in web notebooks. The goal is to provide you with a baseline understanding of core concepts that will serve as a platform of knowledge to follow-up with more in-depth training and real-world practice.The course begins with a quick overview of Python with demonstrations of both script-based and web notebook-based Python and then you'll dive into the essentials of Python necessary for a data scientist. The end of the course explores a quick integration of these skills with key Data Science libraries including NumPy, Pandas, and Matplotlib.This class is hands-on and includes light programming labs that introduce students to basic Python syntax and concepts applicable to using Python to work with data.

Kontakt oss: Kurs@sgpartner.no

COURSE OBJECTIVE:
Join an engaging hands-on learning environment, where you'll learn: • How to work with Python interactively in web notebooks • The essentials of Python scripting • Key concepts necessary to enter the world of Data Science via PythonThis course has a 50% hands-on labs to 50% lecture ratio with engaging instruction, demos, group discussions, labs, and project work.

 

TARGET AUDIENCE:
Business Analysts, Data Analysts, and anyone interested in data science who is comfortable working with numerical data in Excel or other spreadsheet environments.

COURSE PREREQUISITES:
No prior programming experience is required. • Data Science Overview

COURSE CONTENT:
An Overview of Python • Why Python? • Python in the Shell • Python in Web Notebooks (iPython, Jupyter, and Zeppelin) • Demo: Python, Notebooks, and Data ScienceGetting Started • Using variables • Built-in functions • Strings • Numbers • Converting among types • Writing to the screen • Command line parametersFlow Control • About flow control • White space • Conditional expressions • Relational and Boolean operators • While loops • Alternate loop exitsSequences, Arrays, Dictionaries, and Sets • About sequences • Lists and list methods • Tuples • Indexing and slicing • Iterating through a sequence • Sequence functions, keywords, and operators • List comprehensions • Generator Expressions • Nested sequences • Working with Dictionaries • Working with SetsWorking with files • File overview • Opening a text file • Reading a text file • Writing to a text file • Reading and writing raw (binary) dataFunctions • Defining functions • Parameters • Global and local scope • Nested functions • Returning valuesEssential Demos • Sorting • Exceptions • Importing Modules • Classes • Regular ExpressionsThe standard library • Math functions • The string moduleDates and times • Working with dates and times • Translating timestamps • Parsing dates from text • Formatting dates • Calendar dataPython and Data Science • Data Science Essentials • Pandas Overview • NumPy Overview • SciKit Overview • MatPlotLib Overview • Working with Python in Data Science

FOLLOW ON COURSES:
Next Level Python for Data Science

Additional information