Arni Rao, PhD

Director and Professor Augusta University

  • Augusta GA

Director of the Laboratory for Theory and Mathematical Modeling and professor at the Medical College of Georgia at Augusta University.

Contact

Augusta University

View more experts managed by Augusta University

Multimedia

Biography

Dr. Rao is the director of the Laboratory for Theory and Mathematical Modeling and professor at the Medical College of Georgia at Augusta University.

Until 2012, he held a permanent faculty position at Indian Statistical Institute, Kolkata. He has taught and/or performed research at several premier institutions including, the Indian Statistical Institute (ISI), University of Oxford (Oxford, UK), the Indian Institute of Science (Bengaluru, India) and the University of Guelph, (Guelph, Canada) prior to his arrival at Augusta University.

Dr. Rao developed the first AI model in the world for the identification of COVID-19 through apps. His recent works on partition theorem in populations, Chicken-walk models, Rao's Partition Theorem in Populations, and Rao-Carey Fundamental Theorem in stationary populations, Multilevel Contours, and Bundles of Complex Planes are well received. His recent EDLM (Exact Deep Learning Machines) are anticipated as a game changer in AI related experiments.

Areas of Expertise

Mathematical Analyses
Artifical Intelligence
Complex Dynamics,
Infectious Disease

Accomplishments

Invited Speaker for American Mathematical Society (January 2024)

Invited Speaker for American Mathematical Society Special Session at The Joint Mathematics Meetings in San Francisco.

Invited Speaker for American Mathematical Society (January 2023)

Invited to be the speaker for the Special Session at The Joint Mathematics Meetings in Boston.

GIAN, MED, Govt of India, External Foreign Faculty lecturer (June 2022)

Delivered a presentation hosted by the Department of Education in Science and Mathematics within the National Council of Educational Research and Training of India. The presentation, “United Nation’s Annual Country-Wise Human Development Index,” was part of the group’s National Student Outreach Program and the Pravasi Bharatiya Academic and Scientific Sampark’s series “Integrating Indian Diaspora with the Motherland.”

Show All +

Education

Deemed University, Internation

Doctoral degree

Demography and Population Stud

Andhra University

Master's degree

Pre-Medicine/Pre-Medical Studi

Affiliations

  • Handbook of Statistics (Elsevier/North-Holland, Amsterdam)
  • Demography India
  • Complex Analysis and Operator Theory (CAOT), Springer
  • Handbook of Statistics, Elsevier
  • Demography, Duke University Press
Show All +

Media Appearances

Reevaluating the United Nations' Human Development Index: A Critique of Historical Context and Colonialism's Impact on Wealth and Development

Georgia Updates  

2023-06-09

Arni S.R. Srinivasa Rao, PhD, has presented a talk on the United Nations Development Programme's (UNDP) Human Development Index (HDI) as part of a National Student Outreach Program in India.

Rao's presentation, "United Nation’s Annual Country-Wise Human Development Index," criticized the HDI's lack of historical context and its failure to account for the impact of colonialism on countries' wealth.

Rao argued that the HDI should consider the economic, social, and developmental history of countries over the past 5,000 years, rather than starting from 1990.

View More

MCG: Math model shows millions of COVID cases may have gone unreported

WRDW  tv

2022-09-27

Researchers found millions of COVID cases may have gone unreported in the first two and half years of the pandemic.

According to the World Health Organization, there have been more than half a billion COVID cases and more than 6 million deaths reported worldwide.

As staggering as that sounds, a new study, including research from a Medical College of Georgia professor found the true number of COVID cases is very likely much higher than we realize.

“Back when the pandemic started, people were at home, and then some of them were not sure of about the symptoms,” said Dr. Arni Rao.

View More

As few as 1 in 5 COVID cases may have been counted worldwide, mathematical models suggest

Medical Xpres  online

2022-09-27

Mathematical models indicate that as few as one in five cases of COVID-19 which occurred during the first 29 months of the pandemic are accounted for in the half billion cases officially reported.

The World Health Organization reported 513,955,910 cases from Jan. 1, 2020 to May 6, 2022 and 6,190,349 deaths, numbers which already moved COVID-19 to a top killer in some countries, including the United States, just behind heart disease and cancer, according to the Centers for Disease Control and Prevention.

Still mathematical models indicate overall underreporting of cases ranging from 1 in 1.2 to 1 in 4.7, investigators report in the journal Current Science. That underreporting translates to global pandemic estimates between 600 million and 2.4 billion cases.

View More

Show All +

Articles

Stationary status of discrete and continuous age-structured population models

Mathematical Biosciences

Rao, A.S.R.S*. and Carey J.R.

2023-10-01

From Leonhard Euler to Alfred Lotka and in recent years understanding the stationary process of the human population has been of central interest to scientists. Population reproductive measure NRR (net reproductive rate) has been widely associated with measuring the status of population stationarity and it is also included as one of the measures in the millennium development goals. This article argues how the partition theorem-based approach provides more up-to-date and timely measures to find the status of the population stationarity of a country better than the NRR-based approach. We question the timeliness of the value of NRR in deciding the stationary process of the country. We prove associated theorems on discrete and continuous age distributions and derive measurable functional properties. The partitioning metric captures the underlying age structure dynamic of populations at or near stationarity. As the population growth rates for an ever-increasing number of countries trend towards replacement levels and below, new demographic concepts and metrics are needed to better characterize this emerging global demography.

View more

Indian courts of law can benefit immensely by adopting artificial intelligence methods in bail applications for speedy and accurate justice

Handbook of Statistics

Rao, A. S. R. S.*, & Gore, A. P.

2023-06-12

A new thrust has emerged a few years ago under the leadership of Justice Dr. D. Y. Chandrachud of the Supreme Court of India (He is currently the Chief Justice of India) to digitize the work of courts (Government.com, 2023). Much progress has been made with consequent relief to plaintiffs and other participants. The possibility of using AI has also been mooted by (retired) Chief Justice of the Supreme Court Mr. Sharad Bobade (Mr. Sharad Bobade's statement, 2023). Fortunately, there is clarity that AI is to assist and not substitute judges. This aspect of technology does not seem to have made any serious inroads into the judicial system. Whatever the complexities involved in the courts of law, the judges needed to go through a set of rules and constitutional points before passing a judgment on a particular case. In the implementation of a set of rules through AI for passing a judgment for a specific case, there shouldn't be any scope for chance factors. Mathematical logical constructions are like having well-defined rules of law and no scope for subjectivity in implementing the law. Through this article, we provide a proof of concept of adapting deep learning techniques, especially exact deep learning techniques that can benefit Indian courts of law. Such techniques can be very much useful in relatively simple and routine but very numerous cases to expedite judgments. Even in complicated cases involving arguments and counterarguments, these approaches can play a constructive role. We recommend using such automation for producing draft judgments in a more expeditious and yet equally effective manner in various courts of law in India.

View more

Markov Chain Models for Cardiac Rhythm Dynamics in Patients Undergoing Catheter Ablation of Atrial Fibrillation

Bulletin of Mathematical Biology

Lee, T.J., Berman, A.E. & Rao, A.S.R.S*.

2023-03-24

We have developed a novel Markov Chain modeling system that considers vectors of patients with atrial fibrillation (AF) by their AF status over a period of time. Our model examines the impact of catheter ablation of AF upon the dynamics of a patient’s AF status and their potential return to sinus rhythm. We prove several theorems to determine the probabilities of patients achieving sinus rhythm or progressing to permanent AF. Additionally, we observed aggregation of patients within the paroxysmal AF state in simulation. The aggregating property of Markov chains illustrated the potential benefits of catheter ablation on healthcare resource allocation.

View more

Show All +