SEO YEON PARK

 (213) 274-1733    2635 Portland Street, LA, CA 90007     seoyeon9249@gmail.com

Education

University of Southern California, Los Angeles, CA                    Expected May 2018

Master of Science in Computer Science

Coursework: CSCI570 - Analysis of Algorithm, CSCI561 - Introduction of Artificial Intelligence, CSCI544 - Applied Natural Language Processing, CSCI578 - Software Architecture, CSCI534 - Affective Computing

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Ewha Womans University, Seoul, Republic of Korea                                    Feb 2016

Bachelor of Science in Computer Science and Engineering (Magna Cum Laude)

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Research Experience

Directed Research                                                                Jan 2017 - Present

Autonomous Networks Research Group (Advisor: Prof. Bhaskar Krishnamachari) at University of Southern California

  • CHARIOT project; Implementing Revolutionized Personal Learning Framework based on IoT technologies using physiological sensor data, image and text dataset combining with cutting-edge cognitive science 
  • Design and Implement Emotion Analysis submodules of CHARIOT project within Image and Text
  • Sentiment analysis Implementation with various version of Neural Network such as Recurrent Neural Network, LSTM, GRU, Echo state Network and Statistical Classification Training, Support Vector Machine, Logistic Regression or etc.

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Undergraduate Research Assistant                               Dec 2014 - Feb 2015

Embedded Real Time System Laboratory (Advisor: Prof. Sang Soo Park) at Ewha Womans University

  • Development of rapid recovery system for IoT devices based on ARM-Cortex M4 
  • Design and development of long-tailed watchdog timer algorithm combined with existing two types of watchdog timer
  • Overcome the limitation of existing fault tolerance hardware timer by combining software timer
  • Increased the recovery rate from 91% with time delay to 100% with rapid recovery

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Skills and Interests


  • TensorFlow, C++, Java, Python, R, Arduino, ARM-Cortex M4, SQL, Hadoop, UNIX, Machine learning, Statistical Analysis, Distributed Computing

Language


  • Proficient in Korean and English (Reading, Writing, Listening, Speaking)