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Raghunathan Rengaswamy
Raghunathan Rengaswamy
Development and external validation of Indian population-specific Garbhini-GA2 model for estimating gestational age in second and third trimesters
Towards Personalized Cancer treatment
Integration of machine learning and first principles models
Multi-omic data helps improve prediction of personalised tumor suppressors and oncogenes
Designing Biological Circuits: From Principles to Applications
CDiNN – Convex difference neural networks
Novel ratio-metric features enable the identification of new driver genes across cancer types
Comparison of first trimester dating methods for gestational age estimation and their implication on preterm birth classification in a North Indian cohort
Data Science and IoT for addressing ambient air sanctity
Multi-city hyperlocal environmental monitoring using distributed low-cost sensor network
Domain agnostic methods for integration of prior knowledge in learning algorithms
Incorporating prior knowledge about structural constraints in model identification
Novel ratio-metric features enable the identification of new driver genes across cancer types
Optimal power distribution control for a network of fuel cell stacks
Actuator network design to mitigate contamination effects in Water Distribution Networks
Prediction error-based clustering approach for multiple-model learning using statistical testing
Modeling and control of battery systems. Part I: Revisiting Butler–Volmer equations to model non-linear coupling of various capacity fade mechanisms
A novel approach for benchmarking and assessing the performance of state estimators
Data mining and control loop performance assessment: The multivariate case
Sensor network design for contaminant detection and identification in water distribution networks