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Fernando G.S.L. Brand ão University College London

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Fernando G.S.L. Brand ão University College London New Perspectives on Thermalization , Aspen 2014. Thermalization and Quantum Information. p artially based on joint work with Aram Harrow and Michal Horodecki. Plan. Quantum Information. Thermalization. - PowerPoint PPT Presentation
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Thermalization and Quantum Information Fernando G.S.L. Brandão University College London New Perspectives on Thermalization, Aspen 2014 partially based on joint work with Aram Harrow and Michal Horodecki
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Page 1: Fernando  G.S.L.  Brand ão University College London

Thermalization and Quantum Information

Fernando G.S.L. BrandãoUniversity College London

New Perspectives on Thermalization, Aspen 2014

partially based on joint work with Aram Harrow and Michal Horodecki

Page 2: Fernando  G.S.L.  Brand ão University College London

Plan

1. Equivalence of microcanonical and canonical ensembles

quantum information-theoretic proof

2. Equilibration by random unitary evolutions

relation to unitary designs, quantum circuit complexity

Quantum Information Thermalization

Page 3: Fernando  G.S.L.  Brand ão University College London

Microcanonical and Canonical Ensembles

Given a Hamiltonian of n particles :

Microcanonical:

Canonical:

Page 4: Fernando  G.S.L.  Brand ão University College London

Microcanonical and Canonical Ensembles

When should we use each?

Micro: System in isolation Macro: System in equilibrium with a heat bath at temperature 1/β

What if we are only interestedin expectation values of local observables?

Is the system an environment for itself?

i.e. For every e, is there a β(e) s.t.

A

X

Page 5: Fernando  G.S.L.  Brand ão University College London

Previous Results• Equivalence when A interacts weakly with Ac

• Non-equivalence for critical systems (e.g. 2D Ising model)

• Equivalence for infinite lattices in the “unique phase region” (i.e. only one KMS state). But no bounds on the size of A.

(Goldstein, Lebowitz, Tumulka, Zanghi ’06; Riera, Gogolin, Eisert ‘12)

(Desermo ’04)

(Lima ‘72; Muller, Adlam, Masanes, Wiebe ‘13)

Page 6: Fernando  G.S.L.  Brand ão University College London

Equivalence of Ensembles Away from Criticality

thm Let H be a Hamiltonian of n particles on a d-dimensional lattice. Let β be such that ρβ has a correlation length ξ. Then for most regions A of size at most nO(1/d),

Ad = 2 Hij

Page 7: Fernando  G.S.L.  Brand ão University College London

Equivalence of Ensembles Away from Criticality

thm Let H be a Hamiltonian of n particles on a d-dimensional lattice. Let β be such that ρβ has a correlation length ξ. Then for most regions A of size at most nO(1/d),

Ad = 2 Hij

Correlation length ξ: For all X, Z

Page 8: Fernando  G.S.L.  Brand ão University College London

Equivalence of Ensembles Away from Criticality

thm Let H be a Hamiltonian of n particles on a d-dimensional lattice. Let β be such that ρβ has a correlation length ξ. Then for most regions A of size at most nO(1/d),

Ad = 2 Hij

Obs1: e(β) given by mean energy of ρβ

Obs2: Equivalent to

for all observables X in A

Obs3: For every H, ρβ has finite ξ for β sufficiently small

Page 9: Fernando  G.S.L.  Brand ão University College London

Entropy and Relative Entropy

Entropy:

Subaditivity:

Page 10: Fernando  G.S.L.  Brand ão University College London

Entropy and Relative Entropy

Entropy:

Subaditivity:

Relative Entropy:

S(ρ || σ) measures the distinguishability of ρ and σ

Positivity:

Data Processing Inequality:

Pinsker Ineq:

Page 11: Fernando  G.S.L.  Brand ão University College London

Free Energy and Relative Entropy

Free energy:

Relative Entropy:

Easy-to-derive identity: For every state ρ,

Obs: That ρβ minimizes free energy follows directly from positivity of relative entropy

Page 12: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas I

A1 B1 A2 B2 …

size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

Page 13: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas I

A1 B1 A2 B2 …

size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

(energy window has spread O(n1/2))

((Simon ’93) proved o(n) bound.

To obtain O(n1/2) consider H without boundary terms between Ai and Bi

and bound error in entropy)

Page 14: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas I

A1 B1 A2 B2 …

size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

(energy window has spread O(n1/2))

((Simon ’93) proved o(n) bound.

To obtain O(n1/2) consider H without boundary terms between Ai and Bi

and bound error in entropy)

What does imply?

Page 15: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas II

A1 B1 A2 B2 …size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

data processing previous slide

Page 16: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas II

A1 B1 A2 B2 …size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

data processing previous slide

Claim 1: Correlation length ξ implies:

Claim 2:

Page 17: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas III

A1 B1 A2 B2 …size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

To finish

subadditivity entropy previous slide

Page 18: Fernando  G.S.L.  Brand ão University College London

Proof by Information-Theoretic Ideas III

A1 B1 A2 B2 …size(Ai) = O(n1/3), size(Bi) = O(ξn1/3)

To finish

subadditivity entropy previous slide

Since m = O(n2/3):

By Pinsker inequality:

Page 19: Fernando  G.S.L.  Brand ão University College London

Further Implications

(Popescu, Short, Winter ’05; Goldstein, Lebowitz, Timulka, Zanghi ‘06, …) Let H be a Hamiltonian and Se the subspace of states with energy (en, en + n1/2). Then for almost every state |ψ> in Se, and region A sufficiently small,

Consequence: If ρβ(e) has a correlation finite correlation length,

Obs: Even stronger statement is conjectured to hold in some cases

Eigenstate Thermalization Hypothesis: For most eigenstates |Ek> in Se

Page 20: Fernando  G.S.L.  Brand ão University College London

Plan

1. Equivalence of microcanonical and canonical ensembles

quantum information-theoretic proof

2. Equilibration by random unitary evolutions

relation to unitary designs, quantum circuit complexity

Quantum Information Thermalization

Page 21: Fernando  G.S.L.  Brand ão University College London

Dynamical Equilibrationn

State at time t:

Page 22: Fernando  G.S.L.  Brand ão University College London

Dynamical Equilibrationn

State at time t:

Will equilibrate?

I.e. for most t ?

Page 23: Fernando  G.S.L.  Brand ão University College London

Dynamical Equilibrationn

State at time t:

Will equilibrate?

I.e. for most t ? NO!

Page 24: Fernando  G.S.L.  Brand ão University College London

Relative Equilibrationn

How about relative to particular kind of measurements?

• “macroscopic” measurements (e.g. magnetization)

• local measurements (e.g. measurements in the 3 first sites)

Examples

Page 25: Fernando  G.S.L.  Brand ão University College London

Equilibration is generic(Linden, Popescu, Short, Winter ’08)Almost* any Hamiltonian H equilibrates:

with

and

S E*Almost: (Ei + Ej – Ek - El) all non-zero and |0n> spread over energy eigenstates

Page 26: Fernando  G.S.L.  Brand ão University College London

Time Scale of Equilibration

The previous general approach only gives exponentially long convergence bounds (in of particles )♯

Goal: Show that

Generic local dynamics leads to rapid equilibration

Caveat: time-dependent Hamiltonians…

Page 27: Fernando  G.S.L.  Brand ão University College London

Random Quantum CircuitsLocal Random Circuit: in each step an index i in {1, … ,n} is chosen uniformly at random and a two-qubit Haar unitary is applied to qubits i e i+1

Random Walk in U(2n) (Another example: Kac’s random walk)

Introduced in (Hayden and Preskill ’07) as a toy model for the dynamics of a black hole

Example of random circuit (Emerson et al ’03, Oliveira et al ‘07, …)

Page 28: Fernando  G.S.L.  Brand ão University College London

Parallel Random Quantum CircuitsParallel Local Random Circuit: in each step n/2 independent Haar two-qubit gates are applied to either ((1, 2), (3, 4), …,(n-1,n)) or ((2, 3), (4, 5), …,(n-2,n-1))

Discrete version of

with random H(t) = H12(t) + H23(t) + … + Hnn-1(t)

(i.e. “brownian quantum circuits” (Lashkari, Stanford, Hastings, Osborne, Hayden ‘12))

Page 29: Fernando  G.S.L.  Brand ão University College London

How fast 1D random circuits equilibrate?

(B., Harrow, Horodecki ‘12) Let RCt be the set of all parallel circuits of depth t ≥ 100n. For almost all U in RCt

For every region S, |S| ≤ n/4:

with

As fast as possible:

S

(Brown and Fawzi ‘13, ‘14) Generalization to any dim (t ≥ O(n1/dpolylog(n)))

Page 30: Fernando  G.S.L.  Brand ão University College London

Warm-up: Equilibration for Haar Random Unitaries

Let and

We have

But

So for

S Sc

(Page ‘93)

only second moments needed

Haar measure

Is there a similar argument for random circuits?

Page 31: Fernando  G.S.L.  Brand ão University College London

Warm-up: Equilibration for Haar Random Unitaries

Let and

We have

But

So for

S Sc

(Page ‘93)

only second moments needed

Haar measure

Is there a similar argument for random circuits?

Page 32: Fernando  G.S.L.  Brand ão University College London

Unitary k-designs

Def. An ensemble of unitaries {μ(dU), U} in U(d) is an ε-approximate unitary k-design if for every monomial M = Up1, q1…Upk, qkU*r1, s1…U*rk, sk,

|Eμ(M(U)) – EHaar(M(U))|≤ ε

• First k moments are close to the Haar measure

• Natural quantum generalization of k-wise independent distributions

• Many applications in quantum information

Page 33: Fernando  G.S.L.  Brand ão University College London

Random Quantum Circuits as k-designs?

thm (B., Harrow, Horodecki ‘12) Parallel Local Random Circuits of size O(k5n + k4log(1/ε)) are an ε-approximate unitary k-design

• Can replace Page’s calculation with k=2 and ε = 2-O(n) to get

• What does k > 2 gives?

• Previous results (Oliveira et al ‘07, Harrow&Low ‘08, Znidaric ‘08, Brown&Viola ‘09, …)

Random circuits of size O(n(n + log(1/ε))) ε-approximate designs

Page 34: Fernando  G.S.L.  Brand ão University College London

Equilibration for low complexity measurements

Given an observable M (POVM element 0 < M < id) in we define its circuit complexity as the minimum number of two-qubit gates needed to measure {M, id-M}.

{0,1}

Let Mk := { M : 0 ≤ M ≤ id, M has gate complexity k }. For almost all U in RCt with t ≥ O(k6) and n ≤ k ≤ 2O(n),

• Shows U|0n> is quantum pseudo random.

• Circuit complexity of U is at least Ω(k).

Page 35: Fernando  G.S.L.  Brand ão University College London

Outline Proof Random Circuits are Polynomial Designs

1. Mapping the problem to bounding spectral gap of a Local Hamiltonian

2. Technique for bounding spectral gap (Nachtergaele ’94) + representation theory (reduces the problem to obtaining an exponentially small lower bound on the spectral gap)

3. Path Coupling applied to the unitary group (to prove convergence of the random walk in exponential time)

4. Use detectability Lemma (Arad et al ‘10) to go from local random circuits to parallel local random circuits

Page 36: Fernando  G.S.L.  Brand ão University College London

Conclusions• Quantum Information theory provides new tools for studying

thermalization/equilibration and poses new questions about them

Two examples:

• Info-theoretical proof of equivalence of ensembles for non-critical systems. What are the conditions for critical systems (diverging correlation length)?

• Equilibration of random quantum circuits. Can we prove equilibration for random time-independent Hamiltonians?

Thanks!


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