Course Standards

2025-2026 Academic Year

CL86 Data Analytics II

Course Type: Developed

Standard/Objective NumberStandard/ObjectiveCourse WeightRBT Designation
1.00Apply Advanced Statistical Methods15%-
1.01Understand and apply advanced statistical techniques such as regression analysis, ANOVA, and hypothesis testing.-Analyze
1.02Interpret and communicate results of a data set by using inference skills.-Critique
1.03Design scripts for automating data analysis workflows.-Design
1.04Hypothesis testing and confidence intervals.-Evaluate
2.00Evaluate Advanced Data Collection Methods20%-
2.01Identify and define common data collection methods, including surveys, interviews, observations, experiments, and secondary data sources.-Understanding
2.02Analyze data models to eliminate bias against certain groups or individuals.-Evaluate
2.03Analyze the advantages and limitations of each data collection method, considering factors such as cost, time, and feasibility.-Synthesize
3.00Data Security, Privacy, and Ethical Impacts25%-
3.01Implement techniques such as differential privacy to minimize the risk of re-identification in datasets.-Generate
3.02Analyze security measures to protect data systems from adversarial attacks and unauthorized access.-Formulate
3.03Clearly define roles and responsibilities for individuals involved in the development and deployment of data sets and analysis.-Demonstrate
3.04Address ethical implications associated with the use of machine learning, particularly in sensitive domains.-Analyze
3.05Consider the societal impact of machine learning applications and strive to minimize negative consequences.-Analyze
4.00Data Visualization20%-
4.01Understanding data visualization tools-Understanding
4.02Develop skills in storytelling with data, conveying insights through compelling narratives supported by visualizations.-Apply/Demonstrate
4.03Interpret complex visualizations and communicate insights effectively.-Compare/Contrast
4.04Applying data visualization techniques to compile data sets.-Analyze
5.00Big Data Technologies20%-
5.01Understand the concepts and challenges associated with big data.-Understanding
5.02Explore tools and technologies for handling large datasets.-Analyze
5.03Develop skills in feature engineering to enhance the predictive power of machine learning models.-Create/Design
5.04Write scripts in a programming language (e.g., Python, R) for automating data analysis workflows.-Compose