Hum Nath Bhandari
Areas of Expertise
Mathematical Modeling and Optimization; High Performance Computing and Parallel Programming; Stochastic Processes, Machine Learning, and Data Science.Education
2018: PhD in Mathematics, Texas Tech University, USA
- Dissertation Topic: Particle Swarm Optimization (PSO) Algorithm: Analysis, Improvements, and Applications
2016: M.S. in Mathematics, Texas Tech University, USA
2007: M.Sc. in Mathematics, Tribhuvan University, Nepal
2005: B.Sc. in Mathematics, Tribhuvan University, Nepal
Dr. Bhandari鈥檚 primary research and teaching interests focus on scientific computing, data visualization, mathematical optimization, machine learning and data science. He is involved in several interdisciplinary research projects with faculty colleagues and students. His collaborative research work has produced a number of journal publications and conference presentations. Currently, he teaches a wide range of courses in mathematics, statistics, and computing. In addition, he has lead numerous students鈥 research and capstone projects, including applications of machine learning and statistical models for solving time series and computer vision problems. Besides teaching and research, Dr. Bhandari is involved in various curriculum/program development initiatives related to scientific computing, data science, and applied mathematics. Dr. Bhandari is a lead contributor to the several community shared software packages that supply open-source programs for researchers who need high performance optimization and machine learning algorithms.
Research Interests:
- Scientific Computing and Data Visualization
- Mathematical Modeling, Approximation, and Optimization
- High Performance Computing and Cloud Computing
- Stochastic Processes, Machine Learning, and Data Science
Current Research Projects:
- 鈥淐omparative Study of Machine Learning Models on Predicting Real Estate Market Indices鈥, Ramchandra Rimal, Binod Rimal, Hum Nath Bhandari, Nawa Raj Pokhrel, Keshab R Dahal: manuscript in preparation.
- 鈥淚mproving Performance of the PSO Algorithm Using the Cyclic Coordinate Descent (CCD) Local Optimizer鈥, Hum Nath Bhandari, Philip W. Smith: manuscript in preparation.
Current Student Research Projects:
- 鈥淎pplication of Machine Learning for Rotifer Lifespan Analysis鈥. Students: Colton Pelletier, Victoria Freitas, Ella Costigan, and Kim Quaranto.
- 鈥淚nvestment Portfolio Construction, Optimization, and Performance Analysis Using Machine Learning鈥. Students: Chris Cline, Alex Cole, Rachel Piraino, and Will Bailey.
- 鈥淒eveloping Efficient Model Selection and Training Strategies for Machine Learning Models鈥. Students: Morgan Kiely and Tyler Edwards.
Selected Publications:
- Hum Nath Bhandari, Nawa Raj Pokhrel, Ramchandra Rimal, Keshab R Dahal, Binod Rimal. 鈥淚mplementation of Deep Learning Models in Predicting ESG Index Volatility鈥, Springer Journal of Financial Innovation (): under second review
- Hum Nath Bhandari, Binod Rimal, Nawa Raj Pokhrel, Ramchandra Rimal, Keshab R Dahal, Rajendra KC Khatri, 鈥淧redicting stock market index using LSTM鈥, Elsevier Journal of Machine Learning with Applications, Volume 9, (2022), 100320, ISSN 2666-8270, DOI: , ScienceDirect:
- Nawa Raj Pokhrel, Keshab Raj Dahal, Ramchandra Rimal, Hum Nath Bhandari, Rajendra K.C. Khatri, Binod Rimal, William Edward Hahn, 鈥淧redicting NEPSE index price using deep learning models鈥, Elsevier Journal of Machine Learning with Applications, Volume 9, (2022), 100385, ISSN 2666-8270, DOI: , ScienceDirect:
- Hum Nath Bhandari, Binod Rimal, Nawa Raj Pokhrel, Ramchandra Rimal, Keshab R. Dahal, 鈥淟STM-SDM: An integrated framework of LSTM implementation for sequential data modeling鈥, Elsevier Journal of Software Impacts, Volume 14, (2022), 100396, ISSN 2665-9638, DOI: , ScienceDirect:
- Hyunsik Kim, Hum Nath Bhandari, Subha Pratihar, William L Hase, 鈥淐hemical Dynamics Simulation of Energy Transfer: Propylbenzene Cation and N2 Collisions鈥, Journal of Physical Chemistry A, (2019), 123(12), pp 2301-230 DOI:
- Hum Nath Bhandari, Xinyou Ma, Amit K. Paul, Philip Smith, William L. Hase, 鈥淧SO Method for Fitting an Analytic Potential Energy Function, Application to I- (H2O)鈥, Journal of Chemical Theory Computation, (2018), 14 (3), pp 1321-1332 DOI:
- Moumita Majumder, Hum Nath Bhandari, Subha Pratihar, William L. Hase, 鈥淐hemical Dynamics Simulations of Low Energy N2 Collisions with Graphite鈥, Journal of Physical Chemistry C, (2017), 122 (1), pp 612-623 DOI:
Software Products:
- Lead contributor to deep learning model implementation package: 鈥淟STM-SDM: An integrated framework of LSTM implementation for sequential data modeling鈥, Elsevier Journal of Software Impacts, Volume 14, (2022), 100396, ISSN 2665-9638, Code Link:
- Lead contributor to optimization algorithm package: 鈥淧SO CCD Method鈥, a hybrid global optimization algorithm developed by combining the PSO algorithm with the Cyclic Coordinate Descent local optimizer, (2018)
- Lead contributor of 鈥淧SO-Method鈥, an optimization software package for solving nonlinear least-square fitting problems in computational chemistry (fitting potential energy surfaces), (2018)
Journal Review:
- 鈥淎 stock portfolio trading system: a proposed image-based deep learning model for stock selection and a mean-variance model for portfolio optimization鈥, Springer journal of Financial Innovation (2022) ()
- 鈥淚mpacts of online public opinion on stock price synchronicity in China鈥, Elsevier Journal of Expert Systems with Applications (2022)()
- 鈥淐ombination of Deep Learning Models to forecast stock price of AAPL and TSLA鈥, Jordanian Journal of Computers and Information Technology (2022) ()
Invited Talks:
- Instructor of Course 1-Data Visualization and Statistical Inference in 鈥淐IMPA Summer School in Data Visualization, Modeling and Mathematical Tools鈥, May 15-24, (2023), Tribhuvan University, Nepal ()
- Presenter of Talk on CDM-MMS Talk Series: 鈥淢achine Learning and Data Science Techniques for Solving Complex Real World Problems鈥, Central Department of Mathematics, Kirtipur, TU, Nepal, December 31, (2022).
- Presenter of Talk on MNS Seminars: 鈥淎pplications of Artificial Intelligence, Machine Learning, and Big Data for Solving Complex Problems in Science, Engineering, and Business鈥, Division of Marine & Natural Sciences, November 30, (2022), MNS, Roger Williams University.
Organizer of Workshops and Conferences:
- Organizer of 鈥淭hird International Conference on Applications of Mathematics to Nonlinear Sciences (AMNS-2023)鈥, May 25-28, (2023), Pokhara, Nepal
- Moderator of 鈥淕rant Writing Webinar鈥 (Nov 24, 6:30 pm - 9:00 pm)鈥, (2020), organized by Association of Nepalese Mathematicians of America (ANMA)
- Organizer of 鈥淲orkshop on Collaborative Research in Mathematical Sciences-2020鈥, May 17 (5:00 pm -7:00 pm), (2020)
- Organizer of 鈥淪econd International Conference on Applications of Mathematics to Nonlinear Sciences (AMNS-2019)鈥, June 27-30, (2019), Pokhara, Nepal ()
Conference Presentations:
- Presented a Talk 鈥淚mplementation of Deep Learning Models in Predicting ESG Index Volatility鈥, The Global Interdisciplinary Green Cities Conference鈥, June 21 鈥 June 25, Luzern, Switzerland (2022)
- Presented a Talk 鈥滻mplementation of Deep Learning Models in Stock Market Index Prediction鈥, Joint Mathematics Meeting (JMM), April 6-9, (2022).
- Presented Student Poster 鈥淚mplementation of LSTM Model in Financial Time Series Data Forecasting鈥, by research student Ian McCallum during Joint Mathematics Meeting(JMM), April 6-9, 2022
- Presented a Talk 鈥淗ybrid PSO Algorithm Models Using the Cyclic Coordinate Descent (CCD) Local Optimizer鈥, Joint Mathematics Meeting (JMM), Denver, CO, January 15-18, 2020
- Presented a Student鈥檚 Poster 鈥淧redicting Stock Market Volatility Using Neural Networks鈥, by research student Jess Messina during Joint Mathematics Meeting(JMM), Jan 15-18, 2020
- Presented a Talk 鈥淏ehavior of the Particle Swarm Optimization Algorithm鈥, Joint Mathematics Meeting (JMM), San Diego, January 10-13, 2018
- Presented a Poster 鈥淧SO Method for Fitting an Analytic Potential Energy Function, Application to I-(H2O)鈥, West Texas Applied Math Graduate Mini-symposium, 28 April, 2017
Past Student Projects:
- 鈥淩egression Models of Hungarian Chickenpox Cases鈥. Students: Nicole Rosa, Victoria Freitas, Kimberly Quaranto, and Maeve Kenny (Fall 2022).
- 鈥淚stanbul鈥檚 Stock Exchange Prediction Study Using Regression Models鈥. Students: Ella Costigana, Donovan Dunningb, and Morgan Kiely (Fall 2022).
- 鈥淧rediction of Indoor Air Temperature Using Regression Models鈥. Students: Issa Ramaji, Thomas MacGregor, and Tyler Edwards (Fall 2022).
- 鈥淧redicting Forest Fires Using Regression Models鈥. Students: Alexander Yeaw, Hank Bailey, and Will Bailey (Fall 2022).
- 鈥淧redicting the Std. Deviation of the S&P 500 using Regression Models鈥 Students: Aidan Ventresca, Alex Cole, and Chris Cline (Fall 2022).
- 鈥淏uilding Convolutional Neural Networks (CNN) Model for Identifying Aces in a Deck of Cards鈥. Students: Ella Costigan, Donovan Dunning, Morgan Kiely, and Will Bailey (Fall 2022).
- 鈥淯sing Deep Learning Models to Recognize Human Pointing Gestures鈥. Students: Issa Ramaji, Thomas MacGregor, Tyler Edwards, and Alexander Yeaw (Fall 2022).
- 鈥淩ice Grain Identification Using Deep Neural Networks鈥. Students: Aidan Ventresca, Alex Cole, Chris Cline, and Hank Bailey (Fall 2022). 鈥淐OVID-19 Face Mask Recognition Using Deep Neural Networks鈥. Students: Nicole Rosa, Victoria Freitas, Kimberly Quaranto, and Maeve Kenny (Fall 2022).
- 鈥淧redicting NASDAQ Composite Index Using Deep Learning Models鈥. Collaborators: Ella Costigan, Donovan Dunning, Morgan Kiely, and Will Bailey(Fall 2022).
- 鈥淧redicting PM10 Levels Using Deep Learning Models鈥. Students: Issa Ramaji, Thomas MacGregor, Tyler Edwards, and Alexander Yeaw (Fall 2022).
- 鈥淧redicting CBOE Volatility Index (VIX) Using Deep Learning Models鈥. Students: Aidan Ventresca, Alex Cole, Chris Cline, and Hank Bailey (Fall 2022).
- 鈥淧redicting Dow Jones Industry Average Index Using Deep Learning Models鈥. Collaborators: Nicole Rosa, Victoria Freitas, Kimberly Quaranto, and Maeve Kenny (Fall 2022).
- 鈥淚mplementation of LSTM Model in Financial Time Series Data Forecasting鈥. Student: Ian McCallum (Spring 2022)
- 鈥淒eveloping Efficient Optimization Algorithm for Training Machine Learning Models鈥. Student: Rena Yamayashi (Spring 2022)
- 鈥淎n Analysis of the Percentage of Marine and Terrestrial Protected Areas in Countries Around the World in Recent Years鈥. Students: Molly Matthews and George Higham (Spring 2022).
- 鈥淎nalysis of Global CO2 Emissions with Historical Perspectives鈥. Students: Emily Valcourt and Lindsey Dreher (Spring 2022).
- 鈥淎 Study of Women Participation in Parliament鈥. Students: Ella Costigan, Jack Darakian, and Kimberly Quaranto (Spring 2022).
- 鈥淎nalysis of PM2.5 Air Pollution: Mean Annual Exposure鈥. Students: Brian Farrel (Spring 2022).
- 鈥淎 Study of Renewable Energy Production Around the World鈥. Students: Oswald Burgos, Mathew Fortin, and Kyle Haner (Spring 2022).
- 鈥淭otal Greenhouse Gas Emissions鈥. Students: David Fasolino and Travis Lajoie (Spring 2022).
- 鈥淎 Study of Cause of Death by Communicable Diseases and Maternal, Prenatal and Nutrition Conditions鈥. Students: Colton Pelletier and Donovan Dunning (Spring 2022).
- 鈥淎nalyzing the World GDP Per Capita鈥. Students: Victoria Freitas, Morgan Strassburg, and Seth Frohnheiser (Spring 2022).
- 鈥淔orecasting the Chicago Board Options Exchange Volatility Index Using a Long Short-Term Memory Neural Network鈥. Student: Misha Dubuc (Spring 2021)
- 鈥淒eveloping CNN model for Medical Image Classification鈥. Student: Ramirez Roderick (Spring 2020)
- 鈥淎pplication of Deep Learning Techniques in Finance鈥. Student: Kayle Witham and Alfred Caron (Spring 2021)
- 鈥淧redicting Stock Market Volatility Using Neural Networks鈥. Student: Jess Messina (Spring 2020)
Program Development Initiatives:
- Currently working on establishing interdisciplinary data science program 鈥淏S/BA in Data Science鈥, Department of Mathematics/ Department of Computer Science, 香港六合彩开奖资料.
- 鈥淎pplied Mathematics Minor鈥, Department of Mathematics
- 香港六合彩开奖资料 鈥淢ATH 355/COMSC 415-Machine Learning鈥, Department of Mathematics/Department of Computer Science, 香港六合彩开奖资料
- 鈥淢ATH 255-Scientific Computing and Data Visualization鈥, Department of Mathematics, 香港六合彩开奖资料
- 鈥淢ATH 225/COMSC 225-Introduction to Data Science鈥, Department of Mathematics/Department of Computer Science, 香港六合彩开奖资料
Leadership Positions:
- Member, Program Organizing Committee of 鈥淭hird International Conference on Applications of Mathematics to Nonlinear Sciences (AMNS-2023)鈥, May 25-28, 2023, Pokhara, Nepal. Conference Website:
- Member, Educational/Training Collaborations Committee of 鈥淒ata Science/Data Analytics Initiatives in Rhode Island鈥, 2021-2022.
- Member, 鈥淪enate Curriculum Committee (SCC)鈥(2021-2023), 香港六合彩开奖资料
- Co-chair, 鈥淒epartment of Mathematics鈥(Jan 2021-July 2021), 香港六合彩开奖资料
- Senator, 鈥淭he Faculty Senate (FS)鈥 (2019-2021), 香港六合彩开奖资料.
- Member, 鈥淔aculty Development Committee (FDC)鈥 (2020-2021), 香港六合彩开奖资料
- Member, 鈥淎cademic Standards Committee (FDC)鈥 ( 2019-2020), 香港六合彩开奖资料
- Member, 鈥淒iversity Committee (DC)鈥 (2019-2020), 香港六合彩开奖资料
- Executive Committee Member, 鈥淎ssociation of Nepalese Mathematicians of America (ANMA)鈥, 2019-2021
- Executive Committee Member, 鈥淣epalese Society in Lubbock (NSL)鈥, 2015-2017
- Treasurer, 鈥淣epalese Student Association Texas Tech (NSA-TTU)鈥, 2014-2015,
Awards:
- 鈥淗ybrid Hero Award鈥, 2020: Awarded by Student Senate, Roger Williams University.
- 鈥淛ohn T. White Graduate Scholarships鈥, 2017: Received from Mathematics and Statistics Department, Texas Tech University (TTU).
- 鈥淪IAM Scholarships鈥, 2016: Awarded by SIAM TTU Chapter. Training: o 鈥淢ath Workshop鈥, a teaching pedagogy training provided by Instructional Design, Roger Williams University, 2021
- 鈥淰irtual Workshop for Remote Instruction & Whiteboard Tools鈥, online and hybrid teaching pedagogy training provided by Instructional Design, Roger Williams University, 2020
Professional Societies:
- American Mathematical Society (AMS): 2012 - present
- Mathematical Association of America (MAA): 2012 - present
- Society of Industrial and Applied Mathematics (SIAM): 2012-present
- Association of Nepalese Mathematicians in America (ANMA): 2015-present
- Data Science/Data Analytics Initiatives in Rhode Island: 2019- present
Current Teaching:
- MATH 214-Calculus II, Spring 2023 (4 credits, 1 Section)
- MATH 315-Probability and Statistics, Spring 2023 (3 credits, 1 Section)
- MATH 255-Scientific Computing and Data Visualization, Spring 2023 (3 credits, 1 Section)
- MATH 479-Senior Data Science Capstone, Spring 2023 (4 credits, 1 section)
Past Teaching:
At Roger Williams University:
- MATH 213-Calculus I, Fall 2018, Spring 2019, Fall 2019, Spring 2020
- MATH 214-Calculus II, Sum 2020, Sum 2021, Fall 2021, WI-2022, Spring 2022, Sum 2022, Fall 2022, WI-2023
- MATH 315-Probability and Statistics , Spring 2019, Fall 2019, Spring 2020, Fall 2020, Spring 2021, Fall 2021, Sum 2022
- MATH 255-Scientific Computing and Data Visualization, Spring 2020, Spring 2021, Spring 2022
- MATH 225-Introduction to Data Science, Fall 2018, Fall 2020
- MATH 355/COMSC 415-Machine Learning, Fall 2022
- MATH 410-Mathematical Optimization, Spring 2021
- MATH 450-Research in Mathematical Sciences, Spring 2019, Fall 2019, Spring 2020, Fall 2020, Spring 2021, Fall 2021, Spring 2022
At Texas Tech University (2012 - 2018):
- MATH 3342-Statistics for Engineers and Scientists: Fall 2017
- MATH 3350-Differential Equations: Summer 2017, Spring 2017
- MATH 1452-Calculus II: Fall 2016, Spring 2016, Sum II 2015, Spring 2015
- MATH 1451-Calculus I: Fall 2014, Spring 2014, Fall 2013
- MATH 1321-Trigonometry: Summer 2016
- MATH 1550-Pre-Calculus: Spring 2013
Teaching in Nepal (2002 - 2012):
- 2009 - 2012: Lecturer of Mathematics, Xavier College
- 2008 - 2009: High School Maths and Science Teacher, Nobel Academy
- 2002 - 2005: High School Maths and Science Teacher, Oxford School