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resume.json
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265 lines (265 loc) · 10.7 KB
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{
"basics": {
"name": "Dongkyu Lee",
"label": "Ph.D.",
"image": "",
"email": "dongkyu.lee@unitn.it",
"phone": "(+39) 352 0993924",
"url": "https://dongkyu-lee.info/",
"summary": "Postdoctoral Researcher",
"location": {
"address": "Via Mesiano, 77",
"postalCode": "38123",
"city": "Trento",
"countryCode": "TN",
"region": "Trentino-Alto Adige"
},
"profiles": [
{
"network": "Twitter",
"username": "AlbertEinstein",
"url": "https://twitter.com/AlbertEinstein"
}
]
},
"work": [
{
"name": "University of Trento",
"location": "Trento, Italy",
"position": "Postdoctoral Researcher",
"url": "https://www.dicam.unitn.it/en",
"startDate": "2025-10-27",
"endDate": "NOW",
"summary": "Postdoctoral researcher",
"highlights": ["Uncertainty Quantification"]
},
{
"name": "Engineering Risk Analysis Group, Technical University of Munich",
"location": "Munich, Germany",
"position": "Postdoctoral Researcher",
"url": "https://www.cee.ed.tum.de/era/era-group/",
"startDate": "2024-09-01",
"endDate": "2025-08-31",
"summary": "Postdoctoral Fellowship Program (nurturing next-generation researchers), supported by National Research Foundation of Korea (NRF)",
"highlights": ["Deep reinforcement learning-based optimal maintenance strategy for large-scale infrastructure networks under seismic risk"]
},
{
"name": "Institute of Construction and Environmental Engineering, Seoul National University",
"location": "Seoul, S. Korea",
"position": "Postdoctoral Researcher",
"url": "https://systemreliability.wordpress.com/people/",
"startDate": "2023-09-01",
"endDate": "2024-08-31",
"summary": "Postdoctoral Researcher",
"highlights": ["Advisor: Prof. Junho Song"]
},
{
"name": "Princeton University, Princeton",
"location": "NJ, USA",
"position": "Visiting Researcher",
"url": "https://cis.scholar.princeton.edu/people/dongkyu-lee",
"startDate": "2023-10-01",
"endDate": "2023-11-01",
"summary": "Visiting Researcher",
"highlights": ["Hosting: Prof. Jürgen Hackl"]
},
{
"name": "University of California, Berkeley, Berkeley",
"location": "CA, USA",
"position": "Visiting Researcher",
"url": "https://coezresearch.wpenginepowered.com/99-2/",
"startDate": "2022-11-01",
"endDate": "2023-02-06",
"summary": "Brain Korea 21 Global Research Fellowship, supported by Ministry of Education, Korea",
"highlights": ["Advisor: Prof. Ziqi Wang"]
},
{
"name": "University of Illinois Urbana-Champaign, Champaign",
"location": "IL, USA",
"position": "Visiting Researcher",
"url": "https://experts.illinois.edu/en/persons/jong-sung-lee",
"startDate": "2019-12-23",
"endDate": "2020-02-23",
"summary": "EDRC Research Intern Program, supported by Ministry of Trade, Industry and Energy, Korea",
"highlights": ["Advisor: Dr. Jong S. Lee"]
}
],
"volunteer": [
{
"organization": "People's Climate March",
"location": "Zurich, Switzerland",
"position": "Lead Organizer",
"url": "https://example.com",
"startDate": "2014-04-01",
"endDate": "2015-07-01",
"summary": "Lead organizer for the New York City branch of the People's Climate March, the largest climate march in history.",
"highlights": ["Awarded 'Climate Hero' award by Greenpeace for my efforts organizing the march.", "Men of the year 2014 by Time magazine"]
}
],
"education": [
{
"institution": "Seoul National University",
"location": "Seoul, S. Korea",
"url": "https://systemreliability.wordpress.com/people/",
"area": "Civil & Environmental Engineering",
"studyType": "M.S./Ph.D.",
"startDate": "2017-09-01",
"endDate": "2023-08-31"
},
{
"institution": "Seoul National University",
"location": "Seoul, S. Korea",
"url": "https://cee.snu.ac.kr/",
"area": "Civil & Environmental Engineering",
"studyType": "B.S.",
"startDate": "2012-03-01",
"endDate": "2016-08-31"
}
],
"awards": [
{
"title": "Postdoctoral Fellowship Program (Nurturing next-generation researchers)",
"date": "2024-09",
"awarder": "Full financial support from National Research Foundation of Korea",
"url": "https://www.nrf.re.kr/",
"summary": "Awarded to outstanding early career Ph.D. researchers."
},
{
"title": "Brain Korea 21 Global Joint Research Fellowship for Graduate Students",
"date": "2022-11",
"awarder": "Full financial support from Ministry of Trade, Industry and Energy, Korea",
"url": "https://www.bk21infrasphere.snu.ac.kr/",
"summary": "Awarded to outstanding Ph.D. students for global joint research."
},
{
"title": "EDRC Research Intern Program",
"date": "2019-12",
"awarder": "Full financial support from Ministry of Trade, Industry and Energy, Korea",
"url": "http://edrcedu.com/",
"summary": "Awarded to outstanding Ph.D. students for global joint research."
}
],
"certificates": [
{
"name": "Machine Learning",
"date": "2018-01-01",
"issuer": "Stanford University",
"url": "https://example.com",
"icon": "fa-solid fa-location-dot"
},
{
"name": "Quantum Computing",
"date": "2018-01-01",
"issuer": "Stanford University",
"url": "https://example.com",
"icon": "fa-solid fa-tag"
},
{
"name": "Quantum Information",
"date": "2018-01-01",
"issuer": "Stanford University",
"url": "https://example.com",
"icon": "fa-solid fa-envelope"
},
{
"name": "Quantum Cryptography",
"date": "2018-01-01",
"issuer": "Stanford University",
"url": "https://example.com",
"icon": "fa-solid fa-hashtag"
},
{
"name": "Quantum Communication",
"date": "2018-01-01",
"issuer": "Stanford University",
"url": "https://example.com",
"icon": "fa-solid fa-calendar"
},
{
"name": "Quantum Teleportation",
"date": "2018-01-01",
"issuer": "Stanford University",
"url": "https://example.com",
"icon": "fa-solid fa-clipboard-check"
}
],
"publications": [
{
"name": "Multi‐scale seismic reliability assessment of networks by centrality‐based selective recursive decomposition algorithm",
"publisher": "A new algorithm utilizing network centrality, termed “centrality-based selective recursive decomposition algorithm” (CS-RDA), is introduced. By preferentially decomposing the node which is most likely to belong to the min-cut identified based on the betweenness centrality, the convergence of the bounds on the O/D connectivity can be expedited significantly.",
"releaseDate": "2021-03-07",
"url": "https://doi.org/10.1002/eqe.3447",
"summary": "Earthquake Engineering & Structural Dynamics"
},
{
"name": "Risk-informed operation and maintenance of complex lifeline systems using parallelized multi-agent deep Q-network",
"publisher": "A multi-agent deep reinforcement learning framework, termed parallelized multi-agent deep Q-network (PM-DQN), is proposed to overcome the curse of dimensionality. The proposed method takes a divide-and-conquer strategy, in which multiple subsystems are identified by community detection, and each agent learns to achieve the O&M policy of the corresponding subsystem.",
"releaseDate": "2023-11-01",
"url": "https://doi.org/10.1016/j.ress.2023.109512",
"summary": "Reliability Engineering & System Safety"
},
{
"name": "Efficient seismic reliability and fragility analysis of lifeline networks using subset simulation",
"publisher": "The binary network limit-state function in the subset simulation is reformulated into more informative piecewise continuous functions. The proposed limit-state functions quantify the proximity of each sample to a potential network failure domain, thereby enabling the construction of specialized intermediate failure events, which can be utilized in subset simulation and other sequential Monte Carlo approaches.",
"releaseDate": "2025-08-01",
"url": "https://doi.org/10.1016/j.ress.2025.110947",
"summary": "Reliability Engineering & System Safety"
},
{
"name": "Dual graph-based Bayesian network modeling with Rao-Blackwellization for seismic reliability and complexity quantification of network connectivity",
"publisher": "The method employs the dual graph representation of a target system to automate the construction of a Bayesian network (BN). This enables the application of the junction tree algorithm to perform reliability analysis and quantify complexity based on a network topology. To further tackle SRA challenges associated with fully correlated seismic uncertainties, we propose to combine a cross entropy-based adaptive importance sampling technique with Rao-Blackwellization.",
"releaseDate": "2025-04-30",
"url": "https://doi.org/10.1002/eqe.4362",
"summary": "Earthquake Engineering & Structural Dynamics"
}
],
"skills": [
{
"name": "Physics",
"level": "Master",
"icon": "fa-solid fa-hashtag",
"keywords": [
"Quantum Mechanics",
"Quantum Computing",
"Quantum Information",
"Quantum Cryptography",
"Quantum Communication",
"Quantum Teleportation"
]
}
],
"languages": [
{
"language": "Korean",
"fluency": "Native speaker",
"icon": ""
},
{
"language": "English",
"fluency": "Fluent",
"icon": ""
}
],
"references": [
{
"name": "Professor John Doe",
"icon": "fa-solid fa-laptop",
"reference": "Lorem ipsum dolor sit amet, consectetur adipiscing elit. Aliquam condimentum, diam quis convallis euismod, arcu mi ullamcorper lorem, a vestibulum nunc magna at sem. Sed in risus ac felis varius blandit. D"
},
{
"name": "Professor John Doe",
"icon": "fa-solid fa-thumbtack",
"reference": "Lorem ipsum dolor sit amet, consectetur adipiscing elit. Aliquam condimentum, diam quis convallis euismod, arcu mi ullamcorper lorem, a vestibulum nunc magna at sem. Sed in risus ac felis varius blandit. D"
}
],
"projects": [
{
"name": "Deep reinforcement learning-based optimal maintenance strategy for large-scale infrastructure networks under seismic risk",
"summary": "",
"highlights": ["Deep Reinforcement Learning", "Maintenance Strategy"],
"startDate": "2024-09-01",
"endDate": "Now",
"url": "https://dongkyu-lee.info/projects/1_project/"
}
]
}