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1. Prediction rigidities for data-driven chemistry

2. Could ChatGPT get an Engineering Degree? Evaluating Higher Education Vulnerability to AI Assistants

3. Adaptive energy reference for machine-learning models of the electronic density of states

4. Probing the effects of broken symmetries in machine learning

5. i-PI 3.0: a flexible and efficient framework for advanced atomistic simulations

6. A prediction rigidity formalism for low-cost uncertainties in trained neural networks

7. Uncertainty quantification by direct propagation of shallow ensembles

8. Thermal conductivity of Li$_3$PS$_4$ solid electrolytes with ab initio accuracy

9. Electronic excited states from physically-constrained machine learning

10. Mechanism of charge transport in lithium thiophosphate

11. Modeling the ferroelectric phase transition in barium titanate with DFT accuracy and converged sampling

12. Surface segregation in high-entropy alloys from alchemical machine learning

13. Physics-inspired Equivariant Descriptors of Non-bonded Interactions

14. Robustness of Local Predictions in Atomistic Machine Learning Models

15. Probing the unfolded configurations of a $\beta$-hairpin using sketch-map

16. Smooth, exact rotational symmetrization for deep learning on point clouds

17. Wigner kernels: body-ordered equivariant machine learning without a basis

18. Completeness of Atomic Structure Representations

19. Fast evaluation of spherical harmonics with sphericart

20. Modeling high-entropy transition-metal alloys with alchemical compression

21. A data-driven interpretation of the stability of molecular crystals

22. A smooth basis for atomistic machine learning

23. Beyond potentials: integrated machine-learning models for materials

24. Electronic-structure properties from atom-centered predictions of the electron density

25. Predicting hot-electron free energies from ground-state data

26. Comment on 'Manifolds of quasi-constant SOAP and ACSF fingerprints and the resulting failure to machine learn four body interactions'

27. Unified theory of atom-centered representations and message-passing machine-learning schemes

28. Incompleteness of graph neural networks for points clouds in three dimensions

29. Wigner kernels: Body-ordered equivariant machine learning without a basis.

30. Thermodynamics and dielectric response of $\text{BaTiO}_3$ by data-driven modeling

31. Ranking the Synthesizability of Hypothetical Zeolites with the Sorting Hat

32. Equivariant representations for molecular Hamiltonians and N-center atomic-scale properties

33. Local invertibility and sensitivity of atomic structure-feature mappings

34. The importance of nuclear quantum effects for NMR crystallography

35. Learning electron densities in the condensed phase

36. Optimal radial basis for density-based atomic representations

37. Quantum vibronic effects on the electronic properties of solid and molecular carbon

38. Modeling the Ga/As binary system across temperaturesand compositions from first principles

39. Efficient implementation of atom-density representations

40. Physics-inspired structural representations for molecules and materials

41. Improving Sample and Feature Selection with Principal Covariates Regression

42. Machine learning at the atomic-scale

43. Uncertainty estimation for molecular dynamics and sampling

44. Finite-temperature materials modeling from the quantum nuclei to the hot electrons regime

45. The role of feature space in atomistic learning

46. Multi-scale approach for the prediction of atomic scale properties

47. Recursive evaluation and iterative contraction of $N$-body equivariant features

48. Simulating solvation and acidity in complex mixtures with first-principles accuracy: the case of CH$_3$SO$_3$H and H$_2$O$_2$ in phenol

49. Learning the electronic density of states in condensed matter

50. Machine learning force fields and coarse-grained variables in molecular dynamics: application to materials and biological systems

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