Education
Doctor of Science in Computational Science and Engineering (Mathematics track)
Cambridge, MAMassachusetts Institute of Technology09/2023
– Current
GPA: 4.75 / 5.00
Relevant Coursework: Eigenvalue of Random Matrices (A), Nonlinear Dynamics and Chaos (A), Fast Methods for Partial Differential Equations (A)
Master of Science in Computational Science and Engineering
Cambridge, MAMassachusetts Institute of Technology09/2021
– 06/2023
GPA: 5.00 / 5.00
Relevant Coursework: Parallel Computing & Scientific Machine Learning (A), Optimization Methods (A), Numerical Methods for Partial Differential Equations (A+), Introduction to Numerical Methods (A)
Bachelor of Science in Chemistry & Bachelor of Science in Physics
BeijingPeking University09/2017
– 07/2021
GPA: 3.89 / 4.00, rank 1 / 137, honored as Weiming Bachelor (top 1%)
Relevant Coursework: Introduction to Computation (97), Data Structure and Algorithms (96), Computational Physics (92), Ordinary Differential Equations (92), Mathematical Method in Physics (95), Advanced Mathematics I, II (92, 96), Advanced Algebra I, II (92, 94)
Exchange Student
Los Angeles, CAUniversity of California, Los Angeles09/2019
– 12/2019
GPA: 4.00 / 4.00
Relevant Coursework: Introduction to Probability (A+), Applied Numerical Methods (A)
Research Experience
Efficient Higher-order Automatic Differentiation for Differential Models
Cambridge, MAMassachusetts Institute of Technology09/2022
– Current
Advisor: Christopher Rackauckas & Alan Edelman
-
Developing higher-order forward-mode automatic differentiation (AD)
algorithms that scale linearly with the order, suitable for
differential models like ODEs and PDEs
-
Synthesizing code that is compiler-friendly and compatible with
reverse-mode AD libraries like Zygote.jl, by aggressively
specializing with compile-time type information
-
Deriving higher-order differentiation rules automatically from
first-order chain rules with symbolic computation and
metaprogramming in Julia
Low-level Automatic Differentiation for Linear Algebra Routines
Cambridge, MAMassachusetts Institute of Technology09/2021
– 06/2022
Advisor: Christopher Rackauckas & Alan Edelman
-
Joined the Enzyme project (enzyme.mit.edu), an automatic
differentiation framework based on source code transformation at
LLVM intermediate representation (IR) level, which can differentiate
through all languages with a LLVM backend (e.g. Julia, C++, Fortran)
-
Synthesized derivatives of BLAS/LAPACK kernels with generated
kernels and calls to other BLAS/LAPACK kernels, and performed
extensive optimizations based on linear algebra relations
-
Outperformed other high-level AD frameworks in Julia with 1.3× speed
on a linear algebra benchmark set
Optimization Methods for Self-Consistent Field Functional Models
BeijingPeking University12/2020
– 06/2021
Advisor: Weinan E & Linfeng Zhang
-
Modeled the exchange-correlation density functional in generalized
Kohn-Sham theory with deep neural networks and descriptors from
density matrices
-
Established a comprehensive theory for using physical quantities
data that depends on the functional minimization result to train the
functional model, in other words, addressed the “differentiate
through argmin” problem
-
Implemented the training process with multiple types of physical
quantity data, such as energy band structure and dipole moment
-
Improved the accuracy and generalization performance of the model,
obtained an average energy error of 0.06 kcal/mol on a test set that
includes 1200 water molecule configurations labeled with SCAN0
functional (48% less than previous methods)
Extended Lagrangian Scheme for Simulating Reactive Chemical Systems
Berkeley, CAUniversity of California, Berkeley12/2019
– 04/2020
Advisor: Teresa Head-Gordon & Lin Lin
-
Investigated reactive chemial systems with fluctuating charges
described with differential-algebraic equations
-
Developed an extended Lagrangian scheme to replace the algebraic
part with differential dynamics of an extended system, thereby
eliminating the expensive charge-equilibration step (i.e. algebraic
equation solving) in simulation
-
Proved the correctness of this scheme both theoretically and
practically (the modified simulation still reproduced statistic and
dynamic properties of that system)
Awards
MathWorks Prize for Outstanding Masters Research, MIT Center for Computational Science and Engineering
03/2023
Weiming Bachelor, Peking University (top 1%)
07/2021
Academic Award, College of Chemistry and Molecular Engineering, Peking University (top 2%)
07/2021
2020 Wusi Scholarship & Merit Student, Peking University (top 1%)
11/2020
National Second Prize in Contemporary Undergraduate Mathematical Contest in Modeling, China Society for Industrial and Applied Mathematics
12/2019
2019 National Scholarship & Merit Student, Peking University (top 1%)
11/2019
Education Aboard Program Scholarhsip, Peking University
05/2019
2018 National Scholarship & Merit Student, Peking University (top 1%)
11/2018