Ms. Wenqing Bao | Computer Science | Best Researcher Award

Ms. Wenqing Bao | Computer Science | Best Researcher Award

Ms. Wenqing Bao | Computer Science | The Home Depot | United States

Ms. Wenqing Bao is a highly skilled Data Analyst and Quantitative Researcher with expertise in SQL, Python, predictive analytics, and machine learning. With a strong foundation in finance, e-commerce, and customer insights, she has consistently demonstrated her ability to transform complex datasets into actionable strategies that drive business growth and operational efficiency. She possesses a unique blend of technical proficiency and analytical problem-solving, enabling her to design predictive models, automate data pipelines, and develop intelligent dashboards. Throughout her professional journey, she has collaborated with cross-functional teams to optimize pricing strategies, improve customer retention, and streamline business operations, establishing herself as a result-driven data specialist committed to innovation and excellence.

Professional Profile

SCOPUS

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Summary of Suitability

Ms. Wenqing Bao is a highly skilled Data Analyst and Quantitative Researcher with a strong academic background and practical expertise in data science, machine learning, predictive analytics, and financial modeling. With a Master’s in Analytical Finance – Data Science from Emory University (GPA 4.0/4.0) and a Bachelor’s in Mathematics & Finance from The Ohio State University, she has demonstrated an exceptional ability to combine theoretical knowledge with real-world applications.Her research-oriented projects, innovative data-driven solutions, and application of advanced analytical techniques position her as a highly suitable candidate for the Best Researcher Award.

Education

Ms. Wenqing Bao holds a Master of Science in Analytical Finance – Data Science from Emory University, Goizueta Business School, where she achieved a perfect GPA of 4.0/4.0. Her rigorous training in data-driven finance, portfolio modeling, and machine learning enabled her to build a strong foundation in financial analytics and quantitative techniques. She also earned a Bachelor of Science with a double major in Mathematics and Finance from The Ohio State University, where she developed critical problem-solving skills, statistical modeling expertise, and financial risk assessment capabilities. This multidisciplinary background has equipped her with a deep understanding of both technical data science methodologies and business-focused decision-making.

Experience

Ms. Wenqing Bao brings a diverse professional background across logistics, finance, and technology, demonstrating her adaptability and leadership in analytical roles. At Americold Logistics, she serves as a Business Analyst, where she develops automated SQL scripts to extract and analyze performance data, enabling strategic site and customer profitability decisions. She has designed and implemented Power BI dashboards for real-time insights, conducted annual pricing analyses, and collaborated on profitability models, reducing analysis time by 50% and improving operational workflows.Previously, at Invesco, she worked as a Quantitative Researcher, conducting web scraping, portfolio back-testing, and Monte Carlo simulations to enhance investment performance. She developed an LSTM-based price prediction model in Python, improving forecasting accuracy and optimizing portfolio returns.As a Product Data Analyst at HIWOO LLC, she built an ETL pipeline for multi-client data integration and visualization using Tableau, achieving a 12% improvement in customer retention and identifying opportunities that drove a 50% increase in service enrollments. At American Yuncheng Gravure Cylinder, she analyzed large datasets, created dashboards for tracking business KPIs, and contributed to $1M in cost savings through actionable insights.

Research Interests

Ms. Wenqing Bao research focuses on predictive modeling, financial risk analytics, and customer behavior analysis. She is passionate about developing machine learning models for credit risk prediction, portfolio optimization, and customer segmentation. Her academic and professional work explores applying AI-driven techniques to enhance decision-making in finance, logistics, and e-commerce. With growing expertise in time-series forecasting, neural networks, and natural language processing, she aims to bridge the gap between advanced data science methodologies and real-world business applications.

Awards

Ms. Wenqing Bao has been consistently recognized for her academic excellence, professional impact, and analytical contributions. Her achievements include outstanding academic performance, excellence in predictive modeling, and impactful contributions to data-driven decision-making. She has received recognition for developing advanced pricing models, implementing data automation pipelines, and creating innovative dashboards that enhanced business performance. Her work reflects a strong commitment to leveraging data science to deliver measurable outcomes and support organizational growth.

Publication Top Notes

Innovative application of artificial intelligence technology in bank credit risk management
Year: 2024
Citations: 26

Research on the application of data analysis in predicting financial risk
Year: 2024
Citations: 24

The challenges and opportunities of financial technology innovation to bank financing business and risk management
Year: 2024
Citations: 22

Customer-centric AI in banking: Using AIGC to improve personalized services
Year: 2024
Citations: 17

Application progress of natural language processing technology in financial research
Year: 2024
Citations: 17

Conclusion

Ms. Wenqing Bao is an accomplished data analyst and quantitative researcher whose expertise bridges the fields of data science, finance, and predictive analytics. Her career demonstrates a proven record of success in automating processes, optimizing decision-making, and delivering actionable insights that drive performance and growth. With a strong academic foundation, diverse professional experience, and impactful research contributions, she stands out as an innovative problem-solver dedicated to advancing data-driven strategies across industries. Her achievements reflect not only technical mastery but also a commitment to applying advanced analytics to create tangible business value, making her a highly deserving candidate for prestigious research and professional awards.

Daemin Shin | Computer Science | Academic Luminary Achievement Award

Dr. Daemin Shin | Computer Science | Academic Luminary Achievement Award

Manager at Financial Security Institute (FSI), South Korea

Daemin Shin is a Manager at the Financial Security Institute, where he has been actively involved in advancing financial security measures since April 2015. With expertise in cloud security, Zero Trust security models, and data security, he has played a significant role in shaping secure financial infrastructures. Before his current role, he was a Senior Researcher at the Financial Security Research Institute from July 2012 to April 2015. His contributions to financial cybersecurity research have been instrumental in addressing security threats and enhancing the resilience of financial institutions. Shin continues to lead innovative research and development in financial security.

Profile

Scopus

Education

Daemin Shin earned his Master of Science in Engineering from the Graduate School of Information Security at Korea University, South Korea, in February 2009. He further pursued his Ph.D. in Engineering at the Department of Information Security, Soonchunhyang University, South Korea, which he successfully completed in February 2020. His academic journey reflects a strong foundation in cybersecurity, particularly focusing on financial security, cloud computing, and data protection. Throughout his education, he has been deeply engaged in research on securing financial transactions and developing security frameworks for modern digital finance ecosystems.

Experience

Shin has over a decade of experience in the field of financial security, with a strong emphasis on cloud security, data protection, and Zero Trust architectures. He started his career as a Senior Researcher at the Financial Security Research Institute, where he contributed to innovative research projects on financial cybersecurity from 2012 to 2015. Since April 2015, he has been serving as a Manager at the Financial Security Institute, where he continues to work on financial security infrastructure, cybersecurity policies, and security compliance strategies. His professional experience has significantly contributed to the development of robust security measures for the financial sector.

Research Interests

Shin’s research interests primarily focus on cloud security, financial security, and Zero Trust security models. He has conducted extensive research on securing cloud-based financial infrastructures, ensuring compliance with regulatory requirements, and mitigating security threats in digital finance. His recent works include studies on security considerations for DevSecOps software supply chains and Zero Trust evaluation frameworks tailored for financial institutions. His expertise in these domains has positioned him as a thought leader in enhancing cybersecurity resilience in the financial industry.

Awards and Recognitions

Shin has been recognized for his outstanding contributions to financial security and cybersecurity research. He has been nominated for the Best Researcher Award in recognition of his groundbreaking research on cloud security and financial security frameworks. His efforts in improving security compliance policies and implementing Zero Trust methodologies in financial institutions have gained widespread recognition. Shin’s work has had a substantial impact on the cybersecurity domain, making financial transactions and data storage more secure against emerging threats.

Publications

D. Shin, V. Sharma, J. Kim, S. Kwon, and I. You (2017). “Secure and Efficient Protocol for Route Optimization in PMIPv6-Based Smart Home IoT Networks,” IEEE Access, vol. 5, pp. 11100-11117, DOI: 10.1109/ACCESS.2017.2710379. Cited by 200+ articles.

D. Shin, K. Yun, J. Kim, P. V. Astillo, J.-N. Kim, and I. You (2019). “A Security Protocol for Route Optimization in DMM-Based Smart Home IoT Networks,” IEEE Access, vol. 7, pp. 142531-142550, DOI: 10.1109/ACCESS.2019.2943929. Cited by 150+ articles.

Shin, Daemin, Kim, Jiyoon, & You, Ilsun (2023). “국내 금융구득 클라우드 전환 동형 및 보안,” REVIEW OF KIISC, 33(5), 57-68. Cited by 50+ articles.

Shin, Daemin, You, Ilsun, and Kim, Jiyoon (2024). “국내 금융구득 클라우드 보안 위험 및 보안 요구사항에 관한 연구,” Journal of Next-Generation Computing, 20(4), 77-96, DOI: 10.23019/kingpc.20.4.202408.007. Cited by 30+ articles.

Daemin Shin, Jiyoon Kim, I Wayan Adi Juliawan Pawana, Ilsun You (2025). “Enhancing Cloud-Native DevSecOps: A Zero Trust Approach for the Financial Sector,” Computer Standards & Interfaces, DOI: 10.1016/j.csi.2025.103975. Cited by 20+ articles.

Conclusion

Daemin Shin’s dedication to advancing financial security and cybersecurity has been instrumental in shaping modern security frameworks for financial institutions. His research on cloud security, Zero Trust models, and DevSecOps methodologies continues to drive innovation in securing financial infrastructures. With a strong academic and professional background, he remains committed to developing secure financial ecosystems and mitigating cybersecurity risks in an ever-evolving digital landscape. His contributions have earned him significant recognition, making him a leading figure in financial security research.