Extending the Reach of Quantum Monte Carlo Methods via Machine Learning

Extending the Reach of Quantum Monte Carlo Methods via Machine Learning

Institute for Pure & Applied Mathematics (IPAM) via YouTube Direct link

MACHINE LEARNING WORKFLOW

10 of 15

10 of 15

MACHINE LEARNING WORKFLOW

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Extending the Reach of Quantum Monte Carlo Methods via Machine Learning

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  1. 1 Intro
  2. 2 A QMC DREAM Heterogeneous Catalysis
  3. 3 PREDICTION WORKFLOW
  4. 4 COMPARISONS WITH BENCHMARKS
  5. 5 EXTRAPOLATION COMPARISONS
  6. 6 COMPARISONS WITH SUBTRACTION TRIC • Comparison with the
  7. 7 AB INITIO MOLECULAR DYNAMICS AND RELAXATION
  8. 8 LEARNING FORCE FIELDS
  9. 9 MOLECULAR CASE STUDIES Carbon Dimer, Water, H, 0
  10. 10 MACHINE LEARNING WORKFLOW
  11. 11 C, ENERGY AND FORCE PREDICTIONS Challenges at Short Bond Lengths
  12. 12 C, MOLECULAR DYNAMICS Does Averaging Help? NVE Bond Distance vs. Time
  13. 13 EFFECTS OF STATISTICAL ERROR BARS HO Modeled via AMPTorch-DMC
  14. 14 CH CI: A MORE SOPHISTICATED EXAMPLE Generalization to 9 Degrees of Freedom
  15. 15 CONCLUSIONS AND OUTLOOK Machine Learning Methods Can Be Coupled with Quantum Monte Carlo Methods to Enable and Accelerate Calculations Difficult to Perform Using QMC Alone.

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