2024 Capstone Course (Project Management, Data Analysis, Data Science, Business Analytics and Operation Management)
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Chronologie
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avril 29, 2024Début de expérience
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juillet 10, 2024Fin de expérience
Portée de Expérience
Catégories
Visualisation des données Analyse des données Étude de marché Gestion de projet Analyse concurrentielleCompétences
business analytics data analytics marketing strategy research financial risk analysis product management tableau microsoft excel microsoft power bi google analyticsThis Course allows students to demonstrate their proficiency in the key concepts of business analytics. As a capstone project, students will understand and critically apply the concepts and methods of business analytics., analytical skills, data visualization, data mining, data warehouse, and big data analytics throughout the program. Through this course, students will acquire soft (communications) and hard (technical) skills to support business analytics projects and decision-making. We will focus on using methodologies and analytical tools to solve real-world problems in R&D, marketing, supply chain, healthcare, finance, and so on.
Apprenant.es
The project's final deliverables may consist of:
- A detailed report including their research, analysis, insights, and recommendations.
- A presentation that includes suggestions for solving the problem facing your organization.
Please make sure to give them access to any software they might need if your business has a specific application or format that you would like them to utilize.
Chronologie du projet
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avril 29, 2024Début de expérience
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juillet 10, 2024Fin de expérience
Exemples de projets
Students will collaborate with your business in groups of three to seven to determine your needs and offer practical solutions based on their in-depth investigation and analysis.
Project activities might include but are not limited to:
- Analyze a complex project using business analytics.
- Gain insights for decision-makers by utilizing data mining and data visualization approaches.
- Make predictions using methods for descriptive and predictive analysis.
- Be able to produce or comprehend primary data to answer a question, as well as recognize appropriate secondary data sources for doing so.
- Clearly communicate outcomes to an outside audience and be able to provide a summary of those results.
- Examine a challenging assignment using business analytics
- possess self-discipline, leadership qualities, outstanding communication skills, a strong work ethic, and the capacity to work autonomously.
- Keep team members informed on any product management knowledge
- Use the proper statistical modeling approaches, such as k-nearest neighbors, random forests, logistic regression, decision trees, naive Bayes' classifier, time series analysis, neural nets, and boosted trees.
- Give the mathematical formula used by the statistical model to forecast the probability of success.
- Recommendations that cover the commercial aspects of model deployment
- Analysis of the budget to examine a wide range of data, assess costs and benefits, and resolve challenging issues
Critères supplé mentaires pour entreprise
Les entreprises doivent répondre aux questions suivantes pour soumettre une demande de jumelage pour cette expérience:
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Q1 - Texte court
Contact principal
Chronologie
-
avril 29, 2024Début de expérience
-
juillet 10, 2024Fin de expérience