Purpose: This Problem Set Gives Students The Opportunity To ✓ Solved

Purposethis Problem Set Gives Students The Opportunity To Practice Ste

Purposethis Problem Set Gives Students The Opportunity To Practice Ste

Purpose This problem set gives students the opportunity to practice steps in the analytical lifecycle to help determine if a company should be acquired. Students will practice theses skills using SAS Visual Analytics. SAS Software This problem set uses SAS Visual Analytics in SAS Viya for Learners 3.5. Complete E-Learning course – Prerequisites. Industry Alignment This activity aligns with the retail industry. SAS Course Alignment This problem set compliments SAS Visual Analytics 1 for SAS Viya: Basics and can be used to practice skills learned in the course.

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Purposethis Problem Set Gives Students The Opportunity To Practice Ste

Purposethis Problem Set Gives Students The Opportunity To Practice Ste

The purpose of this problem set is to provide students with an opportunity to practice analytical skills necessary for evaluating whether a company should be acquired. This activity is designed to guide students through each step of the analytical lifecycle, emphasizing critical thinking, data analysis, and decision-making processes using SAS Visual Analytics. By engaging with real-world tools and data, students will develop a nuanced understanding of the factors influencing corporate acquisition decisions, particularly within the retail industry.

This exercise leverages the capabilities of SAS Visual Analytics in SAS Viya for Learners 3.5, a powerful platform for data visualization and analysis. Students are expected to have completed prerequisite e-learning courses to familiarize themselves with the software environment and analytical techniques necessary for this activity. The integration of SAS Visual Analytics enhances students' ability to handle complex datasets, generate insights, and communicate findings effectively.

The industry focus of this problem set is aligned with retail, a sector characterized by dynamic market conditions, diverse consumer preferences, and intense competition. By concentrating on retail-specific scenarios, students will learn to identify key performance indicators, analyze market trends, and assess strategic fit during the acquisition process. This targeted approach prepares students for real-world applications in a competitive industry context.

Furthermore, this problem set complements the SAS Visual Analytics 1 course for SAS Viya: Basics, serving as an applied practice module. It allows students to consolidate their skills in data preparation, visualization, and interpretation. Through guided exercises, students will learn to apply analytical techniques to evaluate the financial health, customer base, operational efficiency, and growth potential of target companies. The practical application of these skills aims to foster critical analytical thinking and informed decision-making skills essential for careers in data analytics and corporate strategy.

References

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