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zr)n9sn+2Y}Cyixf(siDzs}D7<6ZjSE4giMh;G|PKbX4>|PLB9zXjnr2iqgJ-Ady?0 zm$Bjhy}!q@RW&C5to5=2fL~Z=3S%UP>&%V=w5~+Rq6!iQC52}p`j2X#*+q-8XZ=ah zXQo-$1)zMB?|H8$I>`@@Oq-W*vSd1%z{8^FE@v96t4|R33unRng0#hzF@{ISe}4YsF71=*eI9Qa^wjV7M1i4)`#-((o_J1= X9FVeOg5PISu|-UI^Yx-XEd2Pt)p11G literal 0 HcmV?d00001 diff --git a/_sources/lecture-04/math-for-qc.md b/_sources/lecture-04/math-for-qc.md index f47dd19..8be5060 100644 --- a/_sources/lecture-04/math-for-qc.md +++ b/_sources/lecture-04/math-for-qc.md @@ -1367,6 +1367,7 @@ The size of the basis, and hence the dimension of the Hilbert space of $n$ qubit The quantum state we referred to so far are what one calls pure states, and they are represented by a normalised vector in a complex Hilbert space. In the Dirac notation, they are described as a ket $|v\rangle$ or a bra $\langle v|$. There is another way to describe the state of quantum system which can be generalised to mixed states (defined below), and the is through **density operator**. For a system in pure quantum state $|v\rangle$, the density operator is defined as + $$ {\Huge \rho = |v\rangle \langle v| diff --git a/lecture-04/math-for-qc.html b/lecture-04/math-for-qc.html index 8e1244f..b97ba3b 100644 --- a/lecture-04/math-for-qc.html +++ b/lecture-04/math-for-qc.html @@ -1708,12 +1708,13 @@

Pure vs Mixed States

Pure state#

The quantum state we referred to so far are what one calls pure states, and they are represented by a normalised vector in a complex Hilbert space. In the Dirac notation, they are described as a ket \(|v\rangle\) or a bra \(\langle v|\).

-

There is another way to describe the state of quantum system which can be generalised to mixed states (defined below), and the is through density operator. For a system in pure quantum state \(|v\rangle\), the density operator is defined as -$\( +

There is another way to describe the state of quantum system which can be generalised to mixed states (defined below), and the is through density operator. For a system in pure quantum state \(|v\rangle\), the density operator is defined as

+
+\[ {\Huge \rho = |v\rangle \langle v| } -\)$

+\]
  • It is easy to see that trace of the density operator is 1, i.e., \(\text{Tr}(\rho)=1\).

  • For a pure state, \(\rho^2 = \rho\), so \(\text{Tr}(\rho^2)=1\)

  • diff --git a/lecture-08/accessing-qc-systems.html b/lecture-08/accessing-qc-systems.html index 16b0fd3..3f98210 100644 --- a/lecture-08/accessing-qc-systems.html +++ b/lecture-08/accessing-qc-systems.html @@ -428,7 +428,7 @@

    What are Classical Programs -../_images/49a31f021b1368ef172e5634d87908515d5c25262c7f1222956579054a78d1da.png +../_images/405d6dcc8319dd5ef2848d725f075087a3eec47cacebfb16eba40e0272ecdbff.png

    The small piece of code above is a program written in Python programming language and uses the popular scientific library Numpy. The first line imports the module[1]/library, and the second line imports the famous plotting library matplotlib. @@ -492,7 +492,7 @@

    What are Quantum Programs -../_images/06d86a2d1832054629c11019ce74eea737702ff1ac1e230d5e6e60f29b9cb64d.png +../_images/2536a1a1ad345cc254deb4043a3a2a4998d469070c73587841e8910464b104eb.png

    The Aer module is part of qiskit software ecosystem, and provides us with a few backend software simulators for quantum computing. The line sim = Aer.get_backend('aer_simulator') defines a simulator object based on Aer’s ‘aer_simulator backend’. diff --git a/lecture-11-note.html b/lecture-11-note.html index 4dbf05a..199a109 100644 --- a/lecture-11-note.html +++ b/lecture-11-note.html @@ -377,8 +377,8 @@

    Example 1 -()#\[\begin{align} +
    +()#\[\begin{align} f(\{n_i\}) &= (S_A - S_B)^2 = S_A^2 + S_B^2 - 2S_A S_B\\ &= (\sum_{i\in U} n_i x_i)^2 + (\sum_{i\in U}n_i (1-x_i))^2 - 2 (\sum_{i\in U} n_i x_i)\sum_{j\in U}n_j (1-x_j)\\ &= \sum_{ij\in U}\left[ diff --git a/searchindex.js b/searchindex.js index 4c63371..1be1999 100644 --- a/searchindex.js +++ b/searchindex.js @@ -1 +1 @@ -Search.setIndex({"alltitles": {"": [[5, null], [9, null], [17, "id1"]], "A new paradigm for computation": [[7, "a-new-paradigm-for-computation"]], "AND gate": [[4, "and-gate"]], "About the Guest": [[6, "about-the-guest"]], "Accessing QCSS": [[9, "accessing-qcss"]], "Adding in Binary": [[4, "adding-in-binary"]], "Adjoint operator": [[5, "adjoint-operator"]], "Advantage of NISQ machine learning algorithms": [[15, "advantage-of-nisq-machine-learning-algorithms"]], "Advantage of NISQ simulation algorithms": [[15, "advantage-of-nisq-simulation-algorithms"]], "Affiliation and activities": [[6, null]], "Amazon Braket": [[9, "amazon-braket"]], "Analog 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    @@ -397,22 +397,22 @@

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