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    • Data Science with Microsoft Power Bi
    • Data Analytics with Python
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Data Analytics with Python

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  • Data Analytics with Python

Why should you learn Data Analytics / Data Science?

pythonData is taking over decision-making in all areas of business.The ability to obtain and analyze data will put you in the right position to go after in demand jobs in this space.  Let the instructors at Reliant IT Career Schools help teach you the skills in SQL, Power BI and Python that will set you apart.  Contact us today!

we’ve designed online courses to meet your needs and prepare you for a data science career. You’ll learn MS SQL, Power BI and fundamentals of Python and machine learning.

Data‌ ‌Analytics ‌with‌ ‌Python‌ Syllabus

Rev 07.14.2020

Subject‌ PTY 101

 

Subject Description:                        ‌Python‌ ‌Fundamentals‌ ‌

 

Subject Hours:                                  150 contact hours (75 hours of lecture, 75 hours of lab)

 

Performance objectives:               You will be introduced to what Python is and learn the fundamentals of Python programming.

After successful completion of this and the following Python course work, students would be qualified for Entry-level data science / data analyst positions that require Python coding as a requisite.

 

Prerequisites:                                    Acceptance into the program

 

Required Tools:                                 Any Modern laptop w 8 gb min of ram.  No chrome books.

 

Instructional Methods:  

1. Lecture

  1. Lab

 

Maximum Student: Instructor Ratio:  30:1

 

Content Outline Weekly:

Week 1:  Overview of Python and demonstration of different Applications where Python is used.

Week 2: Discuss Python Scripts on UNIX/Windows. Values, Types, Variables

Week 3: Operands and Expressions Conditional Statements Loops

Week 4: Variables.  Demonstrating Conditional Statements. Demonstrating Loops. Writing to the screen

 

 

Basis of Grades:                                Tests and/or Quizzes 25 percent

Final Exam 25 percent

Class and/or Homework assignments 25 percent

Attendance 25 percent

 

 

Subject‌ PTY 102

 

Subject Description:                        ‌Object‌ ‌Oriented‌ ‌Programming‌ ‌with‌ ‌Python‌.

 

Subject Hours:                                  150 contact hours (75 hours of lecture, 75 hours of lab)

 

Performance objectives:               Students will have a firm grasp on designing and writing Python Scripts on UNIX/Windows to include values, types and variables.

After successful completion of this, the preceding and following Python course work, students would be qualified for Entry-level data science / data analyst positions that require Python coding as a requisite.

Prerequisites:                                    Acceptance into the program

Required Tools:                                 Any Modern laptop w 8 gb min of ram.  No chrome books.

Instructional Methods:

1. Lecture

  1. Lab

Maximum Student: Instructor Ratio: 30:1

Content Outline Weekly:

Week 5: Functions – Syntax, Arguments, Keyword Arguments, Return Values

Week 6: Sorting – Sequences, Dictionaries, Limitations of Sorting

Week 7: Working with functions in Python

Week 8: Error and Exception management in Python

 

Basis of Grades:                                Tests and/or Quizzes 25 percent

Final Exam 25 percent

Class and/or Homework assignments 25 percent

Attendance 25 percent

Subject‌ PTY 103

Subject Description:                        ‌Scripting‌ ‌with‌ ‌Python‌

Subject Hours:                                   150 contact hours (75 hours of lecture, 75 hours of lab)

Performance objectives:               Students will become familiar with Python Operands and Expressions Conditional Statements and Loops.

After successful completion of this, the preceding and following Python course work, students would be qualified for Entry-level data science / data analyst positions that require Python coding as a requisite.

Prerequisites:                                    Acceptance into the program

Required Tools:                                 Any Modern laptop w 8 gb min of ram.  No chrome books.

Instructional Methods:

1. Lecture

  1. Lab

Maximum Student: Instructor Ratio: 30:1

Content Outline Weekly:

Week 9 File Operations using Python

Week 10: Working with data types of Python. Operations on arrays indexing slicing and iterating Reading and writing arrays on files

Week 11: Lambda Functions and Object-Oriented Concepts

Week 12: Python for Data Visualization

 

Basis of Grades:                                Tests and/or Quizzes 25 percent

Final Exam 25 percent

Class and/or Homework assignments 25 percent

Attendance 25 percent

Subject‌ PTY 104

 

Subject Description:                        ‌Python and statistics, different types of measures and probability distributions, and the supporting libraries used for data visualization

Subject Hours:                                   150 contact hours (75 hours of lecture, 75 hours of lab)

Performance objectives:               This course helps students get familiar with basics of statistics, different types of measures and probability distributions, and the supporting libraries in Python that assist in these operations. Also, students will learn in detail about data visualization.

After successful completion of this and the preceding Python course work, students would be qualified for Entry-level data science / data analyst positions that require Python coding as a requisite.

 

 

 

 

Prerequisites:                                    Acceptance into the program

 

Required Tools:                                 Any Modern laptop w 8 gb min of ram.  No chrome books.

 

 

Instructional Methods:                  1. Lecture

  1. Lab

 

Maximum Student: Instructor Ratio: 30:1

 

Content Outline Weekly:

Week 13: NumPy – arrays Operations on arrays Indexing slicing and iterating Reading and writing arrays on files

Week 14: Pandas – data structures & index operations Reading and Writing data from Excel/CSV formats into Pandas matplotlib library Grids, axes, plots Markers, colours, fonts and styling Types of plots – bar graphs, pie charts, histograms

Week 15: Pandas library- Creating series and dataframes, Importing and exporting data. Probability Distributions in Python

 

Basis of Grades:                                Tests and/or Quizzes 25 percent

Final Exam 25 percent

Class and/or Homework assignments 25 percent

Attendance 25 percent

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