Return to site

*physics 12sph4umr.'s Learning Website

broken image


Table of Contents

Physics for Kids - Hey kids, now learn physics in an all new fun and interactive way with our cool videos, interactive media articles and fun projects. With our huge collection of physics for kids interactive articles, videos and fun activities you can now learn physics sitting at your home for free. Physics is, however, the first rung on the ladder of our understanding of the physical universe. In this course, we will study physics from the ground up, learning the basic principles of physical laws, their application to the behavior of objects, and the use of the scientific method in driving advances in this knowledge.

  • The Nature of Science and Physics

  • Kinematics

  • Two-Dimensional Kinematics

  • Dynamics: Force and Newton's Laws of Motion

  • Further Applications of Newton's Laws: Friction, Drag, and Elasticity

  • Uniform Circular Motion and Gravitation

  • Work, Energy, and Energy Resources

  • Linear Momentum and Collisions

  • Statics and Torque

  • Rotational Motion and Angular Momentum

  • Fluid Statics

  • Fluid Dynamics and Its Biological and Medical Applications

  • Temperature, Kinetic Theory, and the Gas Laws

  • Heat and Heat Transfer Methods

  • Thermodynamics

  • Oscillatory Motion and Waves

  • Physics of Hearing

  • Electric Charge and Electric Field

  • Electric Potential and Electric Field

  • Electric Current, Resistance, and Ohm's Law

  • Circuits and DC Instruments

  • Magnetism

  • Electromagnetic Induction, AC Circuits, and Electrical Technologies

  • Electromagnetic Waves

  • Geometric Optics

  • Vision and Optical Instruments

  • Wave Optics

  • Special Relativity

  • Introduction to Quantum Physics

  • Atomic Physics

  • Radioactivity and Nuclear Physics

  • Medical Applications of Nuclear Physics

  • Particle Physics

  • Frontiers of Physics

  • Appendices

Instructor of Mathematics
Department of Mathematics
Princeton University Download all naruto seasons english.

1007 Fine Hall, Washington Road
Princeton, NJ 08544 USA
Email: jiequnh (at) princeton (dot) edu

About Me

*physics 12sph4umr.

I am an Instructor of Mathematics at Department of Mathematics and the Program in Applied and Computational Mathematics (PACM), Princeton University. I obtained my Ph.D. degree of applied mathematics from PACM, Princeton University in June 2018, advised by Prof. Weinan E. Before that, I received my Bachelor degree from School of Mathematical Sciences, Peking University in July 2013.

My research draws inspiration from various disciplines of science and is devoted to solving high-dimensional problems arising from scientific computing. In particular, I am interested in large-scale molecular dynamics simulation, quantum many-body problem, high-dimensional stochastic control, numerical methods of partial differential equations.I did a research internship in DeepMind during the summer of 2017, under the mentorship of Thore Graepel.

Learning Website For Kids

Here are my CV and some related links: Google Scholar profile, ResearchGate profile.

This download is 100% clean of viruses. It was tested with 19 different antivirus and anti-malware programs and was clean 100% of the time. View the full Net Control 2 homepage for virus test results. Net Control 2 is a family of classroom management software products, designed for collaboration in classrooms for teachers and students. This classroom management software can become your irreplaceable assistant in teaching and managing school networks, as it helps thousands of other educational sphere professionals around the world in their work. Demo-version of Net Control 2 software as also Trial licenses of Net Control 2 Classroom, SmallClass and Professional editions are available for educational, governmental, non-profit and commercial organizations by request. Functionally limited Net Control 2 DEMO version may be used within 30 days from the moment of first installation on 1 Instructor and up to 50 Student computers. Download Net Control 2 for Windows to manage student computers easily. By Net Software Free to try. Version 10 added support for Windows 8, improved graphical interface and new features. Free download net control 2 full version.

Learning

News

  • 07/2020: I co-organized (with Qi Gong and Wei Kang) the minisymposium on the intersection of optimal control and machine learning at the SIAM annual meeting. Details can be found here.
  • 12/2019:Deep BSDE solver is updated to support TensorFlow 2.0.
*physics 12sph4umr.

Publications & Preprints

Learning

I am an Instructor of Mathematics at Department of Mathematics and the Program in Applied and Computational Mathematics (PACM), Princeton University. I obtained my Ph.D. degree of applied mathematics from PACM, Princeton University in June 2018, advised by Prof. Weinan E. Before that, I received my Bachelor degree from School of Mathematical Sciences, Peking University in July 2013.

My research draws inspiration from various disciplines of science and is devoted to solving high-dimensional problems arising from scientific computing. In particular, I am interested in large-scale molecular dynamics simulation, quantum many-body problem, high-dimensional stochastic control, numerical methods of partial differential equations.I did a research internship in DeepMind during the summer of 2017, under the mentorship of Thore Graepel.

Learning Website For Kids

Here are my CV and some related links: Google Scholar profile, ResearchGate profile.

This download is 100% clean of viruses. It was tested with 19 different antivirus and anti-malware programs and was clean 100% of the time. View the full Net Control 2 homepage for virus test results. Net Control 2 is a family of classroom management software products, designed for collaboration in classrooms for teachers and students. This classroom management software can become your irreplaceable assistant in teaching and managing school networks, as it helps thousands of other educational sphere professionals around the world in their work. Demo-version of Net Control 2 software as also Trial licenses of Net Control 2 Classroom, SmallClass and Professional editions are available for educational, governmental, non-profit and commercial organizations by request. Functionally limited Net Control 2 DEMO version may be used within 30 days from the moment of first installation on 1 Instructor and up to 50 Student computers. Download Net Control 2 for Windows to manage student computers easily. By Net Software Free to try. Version 10 added support for Windows 8, improved graphical interface and new features. Free download net control 2 full version.

News

  • 07/2020: I co-organized (with Qi Gong and Wei Kang) the minisymposium on the intersection of optimal control and machine learning at the SIAM annual meeting. Details can be found here.
  • 12/2019:Deep BSDE solver is updated to support TensorFlow 2.0.

Publications & Preprints

*physics 12sph4umr.'s Learning Website Design

  • Learning nonlocal constitutive models with neural networks,
    Xu-Hui Zhou, Jiequn Han, Heng Xiao,
    arXiv preprint, (2020). [arXiv]
  • On the curse of memory in recurrent neural networks: approximation and optimization analysis,
    Zhong Li, Jiequn Han, Weinan E, Qianxiao Li,
    arXiv preprint, (2020). [arXiv]
  • Algorithms for solving high dimensional PDEs: from nonlinear Monte Carlo to machine learning,
    Weinan E, Jiequn Han, Arnulf Jentzen,
    arXiv preprint, (2020). [arXiv] [website]
  • Convergence of deep fictitious play for stochastic differential games,
    Jiequn Han, Ruimeng Hu, Jihao Long,
    arXiv preprint, (2020). [arXiv]
  • Integrating machine learning with physics-based modeling,
    Weinan E, Jiequn Han, Linfeng Zhang,
    arXiv preprint, (2020). [arXiv]
  • Perturbed gradient descent with occupation time,
    Xin Guo, Jiequn Han, Wenpin Tang,
    arXiv preprint, (2020). [arXiv]
  • Universal approximation of symmetric and anti-symmetric functions,
    Jiequn Han, Yingzhou Li, Lin Lin, Jianfeng Lu, Jiefu Zhang, Linfeng Zhang,
    arXiv preprint, (2019). [arXiv]
  • Solving high-dimensional eigenvalue problems using deep neural networks: A diffusion Monte Carlo like approach,
    Jiequn Han, Jianfeng Lu, Mo Zhou,
    Journal of Computational Physics, 423, 109792 (2020). [journal] [arXiv]
  • Deep fictitious play for finding Markovian Nash equilibrium in multi-agent games,
    Jiequn Han, Ruimeng Hu,
    Mathematical and Scientific Machine Learning Conferenc(MSML), PMLR 107:221-245 (2020). [proceedings] [arXiv]
  • Convergence of the deep BSDE method for coupled FBSDEs,
    Jiequn Han, Jihao Long,
    Probability, Uncertainty and Quantitative Risk, 5(1), 1-33 (2020). [journal] [arXiv]
  • Uniformly accurate machine learning-based hydrodynamic models for kinetic equations,
    Jiequn Han, Chao Ma, Zheng Ma, Weinan E,
    Proceedings of the National Academy of Sciences, 116(44) 21983-21991 (2019). [journal] [arXiv]
  • Solving many-electron Schrödinger equation using deep neural networks,
    Jiequn Han, Linfeng Zhang, Weinan E,
    Journal of Computational Physics, 399, 108929 (2019). [journal] [arXiv]
  • A mean-field optimal control formulation of deep learning,
    Weinan E, Jiequn Han, Qianxiao Li,
    Research in the Mathematical Sciences, 6:10 (2019). [journal] [arXiv]
  • End-to-end symmetry preserving inter-atomic potential energy model for finite and extended systems,
    Linfeng Zhang, Jiequn Han, Han Wang, Wissam A. Saidi, Roberto Car, Weinan E,
    Conference on Neural Information Processing Systems (NeurIPS), (2018). [proceedings] [arXiv] [website] [code]
  • Solving high-dimensional partial differential equations using deep learning,
    Jiequn Han, Arnulf Jentzen, Weinan E,
    Proceedings of the National Academy of Sciences, 115(34), 8505-8510 (2018). [journal] [arXiv] [code]
  • DeePCG: constructing coarse-grained models via deep neural networks,
    Linfeng Zhang, Jiequn Han, Han Wang, Roberto Car, Weinan E,
    The Journal of Chemical Physics, 149, 034101 (2018). [journal] [arXiv] [website]
  • DeePMD-kit: A deep learning package for many-body potential energy representation and molecular dynamics,
    Han Wang, Linfeng Zhang, Jiequn Han, Weinan E,
    Computer Physics Communications, 228, 178-184 (2018). [journal] [arXiv] [website] [code]
  • Deep Potential Molecular Dynamics: a scalable model with the accuracy of quantum mechanics,
    Linfeng Zhang, Han Wang, Jiequn Han, Roberto Car, Weinan E,
    Physical Review Letters 120(10), 143001 (2018). [journal] [arXiv] [website] [code]
  • Deep Potential: a general representation of a many-body potential energy surface,
    Jiequn Han, Linfeng Zhang, Roberto Car, Weinan E,
    Communications in Computational Physics, 23, 629–639 (2018). [journal] [arXiv] [website]
  • Deep learning-based numerical methods for high-dimensional parabolic partial differential equations and backward stochastic differential equations,
    Weinan E, Jiequn Han, Arnulf Jentzen,
    Communications in Mathematics and Statistics, 5, 349–380 (2017). [journal] [arXiv] [code]
  • Income and wealth distribution in macroeconomics: A continuous-time approach,
    Yves Achdou, Jiequn Han, Jean-Michel Lasry, Pierre-Louis Lions, Benjamin Moll,
    National Bureau of Economic Research (2017). [DOI]
  • Deep learning approximation for stochastic control problems,
    Jiequn Han, Weinan E,
    Deep Reinforcement Learning Workshop, NIPS (2016). [arXiv]
  • From microscopic theory to macroscopic theory: a systematic study on modeling for liquid crystals,
    Jiequn Han, Yi Luo, Zhifei Zhang, Pingwen Zhang,
    Archive for Rational Mechanics and Analysis, 215, 741–809 (2015). [journal] [arXiv]




broken image