Shelby Kimmel

Shelby Kimmel

Middlebury College

H-index: 15

North America-United States

About Shelby Kimmel

Shelby Kimmel, With an exceptional h-index of 15 and a recent h-index of 14 (since 2020), a distinguished researcher at Middlebury College, specializes in the field of Quantum Algorithms, Quantum Tomography.

His recent articles reflect a diverse array of research interests and contributions to the field:

Improved Quantum Query Complexity on Easier Inputs

Robust and space-efficient dual adversary quantum query algorithms

Quantum Algorithm for Path-Edge Sampling

Ungrading: Reflections Through a Feminist Pedagogical Lens

Consistency testing for robust phase estimation

Quantum computer systems for scientific discovery

A query-efficient quantum algorithm for maximum matching on general graphs

Shelby Kimmel Information

University

Position

___

Citations(all)

949

Citations(since 2020)

760

Cited By

480

hIndex(all)

15

hIndex(since 2020)

14

i10Index(all)

17

i10Index(since 2020)

16

Email

University Profile Page

Google Scholar

Shelby Kimmel Skills & Research Interests

Quantum Algorithms

Quantum Tomography

Top articles of Shelby Kimmel

Improved Quantum Query Complexity on Easier Inputs

Quantum

2024/4/8

Shelby Kimmel
Shelby Kimmel

H-Index: 11

Xiaohan Ye
Xiaohan Ye

H-Index: 15

Robust and space-efficient dual adversary quantum query algorithms

2023/9/4

Shelby Kimmel
Shelby Kimmel

H-Index: 11

Quantum Algorithm for Path-Edge Sampling

2023/3/6

Shelby Kimmel
Shelby Kimmel

H-Index: 11

Ungrading: Reflections Through a Feminist Pedagogical Lens

Feminist Pedagogy

2023

Erin M Eggleston
Erin M Eggleston

H-Index: 6

Shelby Kimmel
Shelby Kimmel

H-Index: 11

Consistency testing for robust phase estimation

Physical Review A

2021/4/15

Shelby Kimmel
Shelby Kimmel

H-Index: 11

A query-efficient quantum algorithm for maximum matching on general graphs

2021/8

Shelby Kimmel
Shelby Kimmel

H-Index: 11

See List of Professors in Shelby Kimmel University(Middlebury College)

Co-Authors

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