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Published online by Cambridge University Press:  18 February 2021

Kevin W. Cassel
Affiliation:
Illinois Institute of Technology
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  • References
  • Kevin W. Cassel, Illinois Institute of Technology
  • Book: Matrix, Numerical, and Optimization Methods in Science and Engineering
  • Online publication: 18 February 2021
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  • References
  • Kevin W. Cassel, Illinois Institute of Technology
  • Book: Matrix, Numerical, and Optimization Methods in Science and Engineering
  • Online publication: 18 February 2021
Available formats
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  • References
  • Kevin W. Cassel, Illinois Institute of Technology
  • Book: Matrix, Numerical, and Optimization Methods in Science and Engineering
  • Online publication: 18 February 2021
Available formats
×