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I 310D: Introduction to Human-Centered Data Science

Undergraduate
Human-Centered Data Science

I310D- Introduction to Human-Centered Data Science is a survey course that introduces students to the theory and practice of data science through a human-centered lens, with emphasis on how design choices influence algorithmic results. Students will gain comfort and facility with fundamental principles of data science including (a) Programming for Data Science with Python (b) Data Engineering (c) Database Systems (d) Machine Learning and (e) Human centered aspects such as privacy, bias, fairness, transparency, accountability, reproducibility, interpretability, and societal implications. Each week’s class divided into two segments: (a) Theory and Methods, a concise description of theoretical concept in data science, and (b) Tutorial, a hands-on session on applying the theory just discussed to a real-world task on publicly available data. We will use Python for programming and cover Python basics in the beginning of the course. For modules related to databases, we will use PostGre SQL.

Skills: Basic Python Programing for Data Science, Basic Machine Learning , Basic Database Design
Topics: Python For Data Science , SQL Basics, Crowdsourcing Basics , Research Methods, Machine Learning - Classification Basics, Data Storytelling And Visualization, Privacy And Ethics In DS

I 320D: Topics in Human-Centered Data Science

Undergraduate
Human-Centered Data Science

No description provided.

I 320D: Topics in Human-Centered Data Science: Database Design

Undergraduate
Human-Centered Data Science

The class explores the principles of relational database design, and SQL as a query language in depth.

Skills: Relational Database Design, how To Create Databases
Topics: Relational Database Design, How To Write SQL Queries

I 320D: Topics in Human-Centered Data Science: Data Engineering

Undergraduate
Human-Centered Data Science

Principles and practices in Data Engineering. Emphasis on the data engineering lifecycle and how to build data pipelines to collect, transform, analyze and visualize data from operational systems. This is a hands-on and highly interactive course. Students will learn analytical data modeling techniques for organizing and querying data. They will learn how to transform data into dimensional models, how to build data products, and how to visualize the data. We will also examine the various roles data engineers can have in an organization and career paths for data professionals

Skills: SQL, Data Modeling, Data Visualization
Topics: Data Pipelines, Data Warehouses , Analytical Systems

I 320D: Topics in Human-Centered Data Science: Applied Machine Learning with Python

Undergraduate
Human-Centered Data Science

This course will cover relevant fundamental concepts in machine learning (ML) and how they are used to solve real-world problems. Students will learn the theory behind a variety of machine learning tools and practice applying the tools to real-world data such as numerical data, textual data (natural language processing), and visual data (computer vision). Each class is divided into two segments: (a) Theory and Methods, a concise description of an ML concept, and (b) Lab Tutorial, a hands-on session on applying the theory just discussed to a real-world task on publicly available data. We will use Python for programming.   By the end of the course, the goals for the students are to: 1. Develop a sense of where to apply machine learning and where not to, and which ML algorithm to use 2. Understand the process of garnering and preprocessing a variety of “big” real-world data, to be used to train ML systems 3. Characterize the process to train machine learning algorithms and evaluate their performance 4. Develop programming skills to code in Python and use modern ML and scientific computing libraries like SciPy and scikit-learn 5. Propose a novel product/research-focused idea (this will be an iterative process), design and execute experiments, and present the findings and demos to a suitable audience (in this case, the class).

Skills: Python Programing For Machine Learning , Handling Numerical And Textual And Image Data, Building ML Based Prototypes
Topics: Data Preprocessing for ML, Classification And Regression, ML Model Evaluation , Neural Network Basics

I 320D: Topics in Human-Centered Data Science: Open Source Software Development

Undergraduate
Human-Centered Data Science

Practical skills and understandings required to effectively work with open source software and understand the projects that build them. Includes git-based collaboration as well as conceptual understanding of licenses, security, technical and social processes in open source development. Class projects involve working with digital trace data from open source repositories.

I 320D: Topics in Human-Centered Data Science: Data Visualization

Undergraduate
Human-Centered Data Science, User-Experience Design

This course offers students in Information Science a comprehensive exploration into the theories, techniques, and tools of data visualization. It is designed to equip students with the skills to effectively communicate complex information visually, enabling data analysis and decision-making. Through a combination of lectures, hands-on projects, and case studies, students will learn how to design and implement effective and aesthetically appealing data visualizations for a variety of data types and audiences. Upon successful completion of this course, students will be able to: • Understand the principles and psychology of visual perception and how they influence data visualization. • Critically evaluate the effectiveness of different data visualization techniques for varying data types and user needs. • Master the use of leading data visualization tools and libraries such as D3.js, or Tableau. • Develop interactive dashboards and reports that effectively communicate findings to both technical and non-technical audiences. • Apply design principles to create visually appealing, accurate, and accessible data visualizations.

Skills: Information Dashboards, Decision-support Visualizations, Tableau
Topics: Principles Of Visual Perception, best Practices For Visualizing Different Data, effective Use Of Graphs And Tables

I 320D: Topics in Human-Centered Data Science: Explainable AI

Undergraduate
Human-Centered Data Science

Introduction to the emerging field of Explainable Artificial Intelligence (XAI) from the perspectives of a developer and end-user. Students will gain hands-on experience with some of the most commonly used explainability techniques and algorithms.

I 320D: Topics in Human-Centered Data Science: Text Mining and NLP Essentials

Undergraduate
Human-Centered Data Science

Leveraging Text Mining, Natural Language Processing, and Computational Linguistics to address real-world textual data challenges, including document processing, keyword extraction, question answering, translation, summarization, sentiment analysis, search, recommendation, and information extraction. Each week, classes include (a) Theory and Methods for NLP concepts and (b) Lab Tutorials for practical application with Python on multilingual text datasets.

I 320D: Topics in Human-Centered Data Science: Data Science for Biomedical Informatics

Undergraduate
Human-Centered Data Science

This course lays the foundation for data science education targeting health informatics students interested in learning more broadly about biomedical informatics. No previous coding experience is required. The students will be introduced to basic concepts and tools for data analysis. The focus is on hands-on practice and enjoyable learning. The course will use python as the programming language, and Jupyter Notebooks as the development environment (our “home base”) for the examples, tutorials, and assignments. We use Jupyterlab Notebooks because they are both the industry standard and a nice way to load, visualize, and analyze data and describe our findings in one environment. We will also learn GitHub to document changes and backup our work and, eventually, for use as a collaboration tool. Hands-on data analysis, final projects, and associated presentations will be mandatory for the completion of the course. The outcome for the class is that each student will have a GitHub repository with all of their work (Jupyter notebooks, data, etc.), including a final project that will be presented to the class. Specific topics to be covered include GitHub, Linux/Unix File system, Jupyter Notebooks, Python Programming, and Data Visualization.

I 320D: Topics in Human-Centered Data Science: Fine Tuning Open-Source Large Language Models

Undergraduate
Human-Centered Data Science

This course offers an introduction to Fine-Tuning Open-Source Large Language Models (LLMs) through project-based applications and real-world examples. The course will begin with a foundational understanding of Natural Language Processing (NLP), focusing on Text Preprocessing techniques such as Tokenization and Vectorization. A basic overview of Large Language Models will be provided, covering the fundamental structure and architecture of commonly used Open-Source Frameworks. The course will then focus on three key methods for fine-tuning LLMs: Self-Supervised, Supervised and Reinforcement Learning. Each method will be explored through both theoretical explanations and practical group-based projects, applying these concepts to real-world examples. Students will engage in hands-on projects to strengthen their understanding of how to customize and optimize LLMs for specific tasks or domains.

INF 385S: Digital Libraries

MSIS/PhD
Archival Science/Preservation/Records Management, Library Science/Librarianship

This course explores the life cycle of a digital library/collection through various critical lenses and hands-on experiences. The objective of the course is for students to obtain a solid understanding of the theoretical frameworks, technical processes, and technologies needed to build meaningful, ethical, and reusable digital libraries.

Skills: Metadata Principles Standards And Schemas, Machine Learning Methods And Ethical Considerations For Their Use In Digital Libraries, Approaches To Connect Digital Libraries To Various Communities And Audiences
Topics: Ethical And Practical Issues That Emerge When Developing a Digital Library, Issues Of Representation In Digital Libraries, Digital Humanities Praxis

INF 385T: Special Topics in Information Science: Nonprofit Management and Strategy

MSIS/PhD
Archival Science/Preservation/Records Management, Library Science/Librarianship

This course examines key issues, challenges, and opportunities in the creation, management, and leadership of nonprofit organizations. Attention is given both to internal organizational issues and to nonprofits’ relationships with key external constituencies. Among the topics to be considered are nonprofit creation, mission management, organizational leadership, funding strategies, partnerships, and the impact of the public policy environment. Readings and discussion will examine nonprofits in varied fields of activity (such as human services and culture). Assignments and exercises will be employed to help develop presentation and grant writing skills. The course is organized in a seminar format and will employ exercises and cases to translate broad themes to practical issues related to nonprofit strategy and management. Guest speakers will periodically join us to share their own experiences building and running nonprofits (additional speakers may be added).

Skills: Management Of Nonprofit Organizations, Organizational Leadership, collaboration
Topics: Nonprofit Organization Creation, Impact Of Public Policy, Leadership Of Nonprofit Organizations

INF 385T: Special Topics in Information Science: Disaster Planning and Response

MSIS/PhD
Archival Science/Preservation/Records Management, Library Science/Librarianship

Disaster events, like floods and fires, can cause severe damage and loss in cultural heritage collections. How will you respond when disaster strikes? This course introduces students to the fundamental preservation concepts, planning strategies, and applied response techniques that make a difference. The class will evaluate the physical impact of fire, water, soot, mold, and insects on varied media, including books, flat paper, audiovisual materials, and other items. Disaster planning exercises model proactive methods to minimize damage. Hands-on response drills enable students to practice salvage techniques, and to triage and prioritize impacted materials.

Skills: Risk Assessment, Disaster Salvage
Topics: Agents Of Deterioration, emergency Triage, climate Change

INF 385T: Special Topics in Information Science: Games in Libraries, Archives, and Museums

MSIS/PhD
General Information Studies Elective, Archival Science/Preservation/Records Management

In this class, we will explore different strategies for including games in collections across libraries, archives, and museums using case studies of specific institutions. We will also address unique qualities of digital and board games that make them challenging to existing practice in the field. Students will have hands-on experience with games through the semester.

Skills: Collection Management
Topics: Gaming, metadata, experiential Learning

INF 385T.09: Special Topics in Information Science: Data Wrangling

MSIS/PhD
General Information Studies Elective, Archival Science/Preservation/Records Management, Data Science/Engineering/Analytics, Library Science/Librarianship, Human Computer Interaction/UX Design/UX Research

Learning key data wrangling maneuvers in abstract and implementations in SQL, Excel, R Tidyverse, and Python Pandas. Maneuvers in data transformations include Nest, Pivot, Mutate (inc. separate/unite), Group/Summarize and Rectangling. Projects include working with "wild caught" data datasets (usually CSV or JSON) and computational notebook environments (e.g., iPython, Jupyter, Rmarkdown, Quarto). Fall 2024 has changes from previous syllabus now that we have Database Design and Introduction to Programming. Nonetheless, the previous syllabus is still useful as it links to course materials that show the teaching approach and type of assignments. http://howisonlab.github.io/datawrangling/#Schedule_of_classes

Skills: Working With Data, data Transformations, data Analysis
Topics: SQL, Python Pandas, R Tidyverse

INF 386E: Information and Culture: Planning and Understanding Exhibits

MSIS/PhD
General Information Studies Elective, Archival Science/Preservation/Records Management, Library Science/Librarianship

Exhibits are a powerful way for libraries, archives, museums, and cultural institutions to engage the public with their collections. This course offers students the opportunity to plan and install an exhibit, focusing on objectives such as: crafting a narrative around physical objects; drafting exhibit text; accommodating media preservation issues; building basic display supports; and publicizing the exhibit. Students will learn about the historical origins of modern-day exhibit practices and will visit and evaluate current exhibits on campus and in the Austin area.

Skills: Write Exhibit Text, Outreach & Promotion, Exhibit Design
Topics: Museum Studies, Museum Education, Historiography

INF 389E: Introduction to Records Management

MSIS/PhD
Archival Science/Preservation/Records Management

Records Management is the “field of management responsible for the efficient and systematic control of the creation, receipt, maintenance, use, and disposition of records…” (ISO 15489). This course introduces the principles and practices involved in managing physical and digital records and information in private and public sector organizations.

Topics: Records Management, Information Governance

INF 389S: Introduction to Archival Enterprise II

MSIS/PhD
Archival Science/Preservation/Records Management

This course will introduce students to contemporary issues in archival studies through readings, research, writing, group discussion, and visits from leaders in the archival studies field.

Skills: Writing, research
Topics: Archival Studies, Ethical Perspectives

INF 392G: Management of Preservation Programs

MSIS/PhD
Archival Science/Preservation/Records Management

Management of specific preservation strategies for the cultural record, with an emphasis on assessing preservation needs of a collection and grant writing.

Skills: Management, Grant Writing, Needs Assessment
Topics: Preservation, Conservation, Fundraising

INF 392K: Digital Archiving and Preservation

MSIS/PhD
Archival Science/Preservation/Records Management

Examines the permanent archiving of digital information. Covers media refreshment, emulation, migration, and electronic records repository construction and administration. Case study projects involving campus repositories and off-campus institutions. Students use legacy hardware and software and digital forensics tools to preprocess digital collections for repository storage. Also explores issues in long-term electronic records preservation

Skills: Digital Archives, digital Preservation
Topics: Born Digital Material, Digital Archives, Digital Preservation

INF 392L: Introduction to Audio Preservation and Reformatting

MSIS/PhD
Archival Science/Preservation/Records Management, Library Science/Librarianship

Study of audio recording through a chronological examination of the development of recording; basic care and preservation of recordings; Preservation of audio archives; and stability concerns of audiovisual media.

Skills: Archives, Preservation, Reference
Topics: Preservation Of Archival Collections, Knowledge Of Archival Methods, Organization Of Information

INF 393C: Conservation Laboratory Techniques: Preservation Science and Practice

MSIS/PhD
Archival Science/Preservation/Records Management, Library Science/Librarianship

Ever wondered how libraries and archives safeguard historical materials for future generations? Preservation is the answer. In this course, students learn collections care strategies that enable today’s information stewards to protect our growing cultural record. Scientific foundations and practical exercises will address common preservation challenges, such as environmental control, mold, insects, pollutants, and light damage. Modern topics in health, safety, and sustainability will highlight the developing nature of the field. Students will evaluate preservation risks for books, paper, electronic media, and other collections materials.

Skills: Environmental Monitoring, Light Monitoring, Integrated Pest Management
Topics: Agents Of Deterioration, preventive Care, Materials Science

INF 393C: Conservation Laboratory Techniques: Introduction to Moving Image Preservation

MSIS/PhD
Archival Science/Preservation/Records Management

Moving images have emerged in the 20th century as one of the dominant methods of conveying history, communications, and entertainment. The earliest films date back to the 1880s and paved the way for major technological and artistic developments, resulting in a modern-day media landscape including analog video, born-digital video, and even AI. Despite the recency of these inventions, moving images are rapidly degrading and their playback technologies are fading into obsolescence. The Library of Congress estimates that 70% of silent films from the United States are permanently lost, either due to lack of preservation, fire, or disposal. Films that do remain may succumb to vinegar syndrome, plasticizer decay, and poor housing conditions, rendering them unviewable despite being less than 150 years old. We see similar issues with analog video formats, many of which are struggling with sticky shed syndrome, scarcity in video decks for playback, and proprietary engineering. This course aims to provide a comprehensive overview of moving image technologies and their preservation, ranging from film to video to born-digital files, in order to prepare emerging archivists for future encounters with these formats when working in the field.

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