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Mar 12, 2025
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SDEV 122 - Data Analytics Technologies Credits: 5 A continuation of SDEV 121 . Students learn about emerging technologies and their applications through hands-on Python programming and case studies of artificial intelligence, big data, and cloud computing.
Enrollment Requirement: SDEV 121 with a grade of 2.0 or higher.
Course Outcomes: Students who successfully complete this class will be able to:
- Recall the six stages of the data processing cycle.
- Write a Python program that reads and processes large real-world data sets from files and/or databases.
- Create and use a custom class in Python.
- Use data science class libraries to support data analysis activities such as data acquisition, processing, visualization.
- Define terms and concepts relating to contemporary data science technologies such as artificial intelligence, big data, and cloud computing.
- Recognize broader impacts and issues relating to data analytics such as privacy, security, ethics, and transparency.
Program Outcomes
- Solve data-related problems using a programming language.
- Demonstrate the ability to acquire, clean, and prepare data for analysis.
- Perform basic data analysis techniques such as filtering, aggregation, and joins.
- Produce and interpret data visualizations to describe, explore, and communicate insights from data.
College-wide Outcomes
- Quantitative and Symbolic Reasoning - Quantitative Reasoning encompasses abilities necessary for a student to become literate in today’s technological world. Quantitative reasoning begins with basic skills and extends to problem solving.
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