Recognition: unknown
Entanglement and tensor network states
classification
🪐 quant-ph
cond-mat.str-el
keywords
statesentanglementnetworkquantumsystemstensorappearingapplied
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These lecture notes provide a brief overview of methods of entanglement theory applied to the study of quantum many-body systems, as well as of tensor network states capturing quantum states naturally appearing in condensed-matter systems.
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