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Explore how faculty use data in their classes and the implications for digital libraries and data providers. Learn about the different types of data, why using data is important, and the range of current practices. Discover various activities that engage students in data analysis and interpretation. Find recommendations for developers on how to support students in accessing, evaluating, and manipulating data.
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Using Data in Undergraduate Science Classrooms Cathy Manduca and David Mogk NSDL Annual Meeting 2003
Faculty Using Data • What do we know about how faculty use data in their classes? • What are the implications for NSDL and its projects?
NSDL Workshop Report • What do we mean by data? • Why is using data important? • How do we do it? • What do we know about how well this works? • What are the implications for digital libraries and data providers ?
What do we mean by data? • Processed vs raw • Model vs observation • Images vs digital underpinnings • Student collected • On-line data sets
Why is it important ? • Real world complex problems • Use scientific methods • Critically evaluate validity of data and strength of conclusions • Quantitative skills, technical methods, scientific concepts; Communication skills • Values and ethics of working with data
What is range of current practices? • To illustrate concepts or ideas • To enable student investigations • Students collect and interpret their own data often in the context of a larger data set or model • Students use existing data sets to answer questions, often asking their own new questions • Students collect data, develop a model of processes at work, and test the relationship between model predictions and observed data
Kinds of activities • Open-ended activities that encourage students to ask questions of the data in order to discover patterns and relationships as a basis for understanding scientific processes or concepts • Activities that address a real, often complex problem to foster an understanding of scientific concepts and their application to the world around us • Activities that use analytic mathematical models, computer models or simulations to help students discover functions that describe data and the behavior of complex systems under varying conditions • Guided interpretation of data, testing of hypotheses, and making predictions • Activities that replicate or simulate documented scientific investigations to lead students to an understanding of fundamental scientific observations or principles
Recommendations for Developers • Students need to be able to: • Find and access data relevant to the topic they are investigating • Evaluate the quality of this data • Manipulate data to answer questions • Combine data sets to solve a central problem • Generate visualizations and representations that communicate interpretations and conclusions • Contribute student data to larger data sets • View individual student data in the context of larger data sets.
Repeating Themes • Finding data is hard for the non-expert • Use will vary dramatically with learning goals, course context, faculty style • Faculty and students like to adapt and create • Learning tools takes time for students and faculty--return must be worth the investment • Data and tools must be reliable • Understanding data uncertainty is an important aspect of working with data
Resources • NSDL/Cutting Edge Using Data Portal (serc.carelton.edu/usingdata/) • Report • Data sets/tools Activities/examples Pedagogy • On the Cutting Edge Using Data to teach Earth Processes Workshop/Session (serc.carleton.edu/NAGTWorkshops/usingdata/) • Research on Learning/Effective Teaching Practice • Assessment • Examples • Starting Point (serc.carleton.edu/introgeo) • Teaching with Models • DLESE (dlese.org) • DAWG, For Educators • NSDL Projects (nsdl.org)