Mark Asch currently leads an action theme in the Belmont Forum Data Management and e-Infrastructure initiative, is a co-organizer of the BDEC (Big Data and Extreme-Scale Computing) forum, and is a full professor of mathematics at Universite de Picardie Jules Verne, Amiens. He was programme manager for Mathematics, Computer Science, HPC, and Big Data at the French National Research Agency (ANR). From 2012 to 2015, he was scientific officer for mathematics and e-infrastructures at the French ministry of research. Marc Bocquet is professor, senior scientist, and deputy director of the Environment Research Centre (CEREA) at Ecole des Ponts ParisTech. He is chair of the Statistics for Analysis, Modelling and Assimilation group of the Pierre-Simon Laplace Institute (IPSL). Prior to 2002, he worked in the Rudolf Peierls Centre for Theoretical Physics of the University of Oxford, the Department of Physics at the University of Warwick, and the Theoretical Physics Institute of the French Alternative Energies and Atomic Energy Commission, Saclay. He is Associate Editor for the Quarterly Journal of the Royal Meteorological Society. Maelle Nodet is an associate professor in applied mathematics at Universite Grenoble Alpes. Her research interests are data assimilation methods, inverse problems, sensitivity analysis, control, optimal transport, and imaging applied to various geoscience fields. She is strongly involved in teaching and outreach activities, particularly in developing and promoting active, problem-based, and student-centred learning.
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Part I: Basic Methods and Algorithms for Data Assimilation Chapter 1: Introduction to Data Assimilation and Inverse Problems Chapter 2: Optimal Control and Variational Data Assimilation Chapter 3: Statistical Estimation and Sequential Data Assimilation Part II: Advanced Methods and Algorithms for Data Assimilation Chapter 4: Nudging Methods Chapter 5: Reduced Methods Chapter 6: The Ensemble Kalman Filter Chapter 7: Ensemble Variational Methods Part III: Applications and Case Studies Chapter 8: Applications in Environmental Sciences Chapter 9: Applications in Atmospheric Sciences Chapter 10: Applications in Geosciences Chapter 11: Applications in Medicine, Biology, Chemistry, and Physical Sciences Chapter 12: Applications in Human and Social Sciences

