Bachelor of Science in Data Science

What you'll learn

In our program, you’ll dive into all aspects of data science, from data creation and management to analysis and visualization. You’ll also explore emerging fields like natural language processing, cloud computing, neural networks, and machine learning, while developing solutions that address both technical and social considerations in data science.

Graduates of the Data Science program will be equipped with the skills to analyze, visualize, and interpret data, using tools like statistics, machine learning, and programming languages such as R, Python, and SQL. They will understand the societal impact of data, including its ethical, political, and social implications, and advocate for fairness in data practices. Additionally, they will gain expertise in data management, including curation, security, and organization, and apply their knowledge to interdisciplinary projects, effectively communicating insights to diverse stakeholders.

Explore the specializations

Data Science

Build mathematical and technical skills to analyze complex data and solve real-world challenges. Study areas like analytics, cloud computing, and information infrastructure, while learning to design algorithms and make data-driven decisions using big data insights.

Information Science

Gain expertise in organizing, accessing, and managing datasets. Focus on data curation, management, and archiving, while exploring the societal impact of data to ensure responsible handling of the information we generate daily.

Graduates of the Data Science undergraduate program will demonstrate expertise in the following core competencies essential to succeed as a data and information science professional:

Data Literacy and Foundations

  1. Compare and explain the differences amongst data, information, knowledge, and wisdom.
  2. Interpret how data plays a key role in various contexts, including knowledge creation, innovation, and decision-making.
  3. Analyze datasets and data technologies to evaluate data veracity in data collection, organization, representation, dissemination, and technological applications.
  4. Utilize various data analysis techniques and methods to analyze and share insights across various contexts.
  5. Identify and analyze the relationship between data, community, and society.

Data Analysis and Visualization

  1. Apply data science concepts, techniques, and tools to support data analytics.
  2. Organize and analyze datasets using descriptive statistics and visualizations to interpret data and communicate findings.
  3. Design effective visualizations for various data types, analytical tasks, and contexts.
  4. Assess the purpose, benefits, and limitations of visualization as a data analysis methodology.
  5. Identify and select appropriate data analysis methods and models to solve real-world problems, weighing their advantages and disadvantages.

Computational and Statistical Techniques

  1. Apply inferential statistics, predictive analytics, and data mining to various informatics and data contexts.
  2. Utilize supervised machine learning methods, including regression, classification, and support vector machines, to analyze datasets.
  3. Implement unsupervised machine learning techniques, such as clustering and principal components analysis, for data exploration and pattern discovery.
  4. Write programs to perform data analytics using languages such as R, Python, and SQL.
  5. Evaluate statistical learning and modeling methods to solve real-world problems, considering their advantages and disadvantages.

Data Management and Information Science

  1. Demonstrate the application of the data lifecycle, including data curation, stewardship, and long-term preservation.
  2. Contextualize the characteristics of various genres of data utilized in a variety of disciplines, research communities, and government organizations.
  3. Apply principles of consistency and uniformity to recognize the need for authorized terms for describing various types of data.
  4. Implement principles of data organization, including metadata, encoding standards, access control, version control, and data documentation.
  5. Analyze critical issues associated with the storage, backup, and security of data.
  6. Analyze and compare data policies and their potential outcomes. 

Applied Experience and Communication

  1. Design, conduct, and communicate research results.
  2. Apply tools and techniques of research and project management.
  3. Apply data science skills to interdisciplinary projects, demonstrating the ability to integrate domain knowledge with data science methodologies.
  4. Analyze the economic, industrial, legal, and business contexts of technology and data, preparing to navigate and address challenges as data professionals.
  5. Develop and present data-driven and asset-based approaches to real-world problems, demonstrating effective communication skills to a variety of stakeholders.

Prepare for in-demand roles like data scientist, manager, researcher, or developer, equipped with expertise in data management, visualization, and analysis to meet industry needs. Data Science students have interned at top companies such as Rolls Royce, Cummins, Sweetwater, NGA, Berry Global, and Community Health Network.

Sample job titles for graduates:

  • Business Intelligence Analyst
  • Data Analyst
  • Data Curator
  • Data Warehousing Specialist
  • Database Administrator
  • Informatics Project Manager
  • Information Architect
  • Operations Research Analyst
  • Research Data Analyst
  • Software Developer

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The Luddy experience

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Find your community at the Luddy LLC—where Luddy students live together, connect through exclusive events, and grow in a supportive, tech‑focused environment.

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Scholarships

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Student organizations

IU Indy offers a variety of student organizations, from clubs for future entrepreneurs to those exploring ethics in tech. Discover Luddy’s student organizations and find one that fits your interests.

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