Name: Hakeoung Hannah Lee
Type: User
Company: The University of Texas at Austin
Bio: University of Texas at Austin
Ph.D. Student in STEM Education - Computer Science Education, M.S. in Statistics
Location: Texas, US
Blog: https://www.hakeounghannahlee.com/
Hakeoung Hannah Lee's Projects
Automatically Score essays using Deep Learning
The guide to tackle with the Text Summarization
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For ones who want to study Database
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For ones who want to study Javascript
12 weeks, 24 lessons, classic Machine Learning for all
OpenMMLab's Next Generation Video Understanding Toolbox and Benchmark
For ones who want to study data analysis
Download and visualize single or multiple classes from the huge Open Images v4 dataset
Pandas Cookbook Second Edition, published by Packt
Are you an early š¤ or a night š¦? Let's check out in gist
Study Python and Deep Learning
scikit-learn-mooc
Ukrainian war-related news service
For ones who want to know about Python
Terracotta (a portmanteau of Tool for Education Research with RAndomized COnTrolled TriAls) is a plug-in to the learning management system that allows the contents of online assignments to be differentiated for experimental treatment variations, and to be assigned randomly to different groups of students. Terracotta also enables privacy protections for student participants, such as informed consent that is hidden from the teacher, filtering of non-consenting participants from result summaries and data exports, and removal of student identifiers from these exports. Terracotta's goal is to lower the technical and methodological barriers to conducting more rigorous and responsible education research.
Unstructured Data Analysis (Graduate) @Korea University
Practice spaces for teacher preparation programs
R for Data Science