Alok Talekar
            Alok Talekar is a Software Engineer at Google Research and leads an effort focused on sustainable agriculture in India, and previously worked at YouTube, and AI for Social Good. His primary interests are in the field of climate crisis solutions, with an emphasis on the global south. He is also a founding member of ClimateTrace, an effort to create a comprehensive inventory of all global emissions from each industry using remote sensing, while he was working pro bono with WattTime via a Google.org fellowship.
His technological interests are in usage of Remote Sensing, Machine learning and Multi-agent systems.
          
        
        Research Areas
      Authored Publications
    
  
  
  
    
    
  
      
        Sort By
        
        
    
    
        
          
            
              Cohorting to isolate asymptomatic spreaders: An agent-based simulation study on the Mumbai Suburban Railway
            
          
        
        
          
            
              
                
                  
                    
                
              
            
              
                
                  
                    
                    
    
    
    
    
    
                      
                        Sharad Shriram
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Nidhin Vaidhiyan
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Gaurav Aggarwal
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Jiangzhuo Chen
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Srini Venkatramanan
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Lijing Wang
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Aniruddha Adiga
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Adam Sadilek
                      
                    
                  
              
            
              
                
                  
                    
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Madhav Marathe
                      
                    
                  
              
            
              
                
                  
                    
                    
                      
                        Rajesh Sundaresan
                      
                    
                  
              
            
              
                
                  
                    
                    
                  
              
            
          
          
          
          
            AMAAS 2021 (2021), pp. 1680
          
          
        
        
        
          
              Preview abstract
          
          
              The Mumbai Suburban Railways, \emph{locals}, are a key transit infrastructure of the city and is crucial for resuming normal economic activity. To reduce disease transmission, policymakers can enforce reduced crowding and mandate wearing of masks. \emph{Cohorting} -- forming groups of travelers that always travel together, is an additional policy to reduce disease transmission on \textit{locals} without severe restrictions. Cohorting allows us to: (i) form traveler bubbles, thereby decreasing the number of distinct interactions over time; (ii) potentially quarantine an entire cohort if a single case is detected, making contact tracing more efficient, and (iii) target cohorts for testing and early detection of symptomatic as well as asymptomatic cases. Studying impact of cohorts using compartmental models is challenging because of the ensuing representational complexity. Agent-based models provide a natural way to represent cohorts along with the representation of the cohort members with the larger social network. This paper describes a novel multi-scale agent-based model to study the impact of cohorting strategies on COVID-19 dynamics in Mumbai. We achieve this by modeling the Mumbai urban region using a detailed agent-based model comprising of 12.4 million agents. Individual cohorts and their inter-cohort interactions as they travel on locals are modeled using local mean field approximations. The resulting multi-scale model in conjunction with a detailed disease transmission and intervention simulator is used to assess various cohorting strategies. The results provide a quantitative trade-off between cohort size and its impact on disease dynamics and well being. The results show that cohorts can provide significant benefit in terms of reduced transmission without significantly impacting ridership and or economic \& social activity.
              
  
View details