Courses from 1000+ universities
Two years after its first major layoff round, Coursera announces another, impacting 10% of its workforce.
600 Free Google Certifications
Data Analysis
Microsoft Excel
Artificial Intelligence
An Introduction to Interactive Programming in Python (Part 1)
Excel: Fundamentos y herramientas
The Future of Work: Preparing for Disruption
Organize and share your learning with Class Central Lists.
View our Lists Showcase
Explore deep learning techniques for predicting global precipitation patterns on a subseasonal timescale, advancing climate science through innovative machine learning approaches.
Discover dominant dynamical regimes in climate systems using machine learning and big data. Explore objective methods to advance theoretical understanding and inform future climate predictions at regional scales.
Explore the effects of global heating on ocean circulation using transparent machine learning techniques. Gain insights into climate system dynamics and future regional impacts.
Exploring causal inference techniques for Earth system sciences, focusing on advanced methods to uncover complex relationships in climate data and improve understanding of multi-scale processes.
Exploring deep unsupervised learning techniques for climate data analysis, focusing on innovative approaches to extract insights from complex Earth system observations and modeling data.
Explores representation learning and custom loss functions for atmospheric data analysis, advancing climate science through machine learning techniques to extract insights from complex Earth system observations.
Exploring Earth system dynamics through machine learning and big data analysis, focusing on multi-scale processes and causal inference to advance climate science and inform future predictions.
Explores innovative approaches combining physical principles and machine learning for stochastic modeling and ensemble prediction in weather and climate systems, addressing challenges in multi-scale processes and future projections.
Explores data-driven subgrid-scale modeling in climate science, focusing on stability, extrapolation, and interpretation. Discusses advancements in theoretical understanding and the potential of machine learning to address complex climate processes.
Explores universal aspects of non-equilibrium many-body physics, focusing on novel phases and universality classes beyond equilibrium paradigms. Bridges statistical, AMO, condensed matter, and high-energy physics.
Explores nonreciprocity in many-body physics, focusing on traveling and oscillatory states. Discusses universal aspects of non-equilibrium systems across various fields of physics.
Explore time-crystalline eigenstate order on quantum processors. Discover non-equilibrium many-body physics and its implications across diverse scientific fields, from statistical physics to high-energy physics.
Explore non-equilibrium many-body physics and universal aspects in diverse fields. Discover novel phases of matter, entanglement dynamics, and connections between classical and quantum systems.
Explores machine learning techniques to analyze complex quantum dynamics, focusing on non-equilibrium many-body physics and its applications across various fields of physics.
Explores quantum approaches to driven-dissipative lattice models, discussing non-equilibrium many-body physics and universal aspects in diverse fields like AMO, condensed matter, and high-energy physics.
Get personalized course recommendations, track subjects and courses with reminders, and more.