Quil (instruction set architecture)

Quil is a quantum instruction set architecture that first introduced a shared quantum/classical memory model. It was introduced by Robert Smith, Michael Curtis, and William Zeng in A Practical Quantum Instruction Set Architecture.[1] Many quantum algorithms (including quantum teleportation, quantum error correction, simulation,[2][3] and optimization algorithms[4]) require a shared memory architecture. Quil is being developed for the superconducting quantum processors developed by Rigetti Computing through the Forest quantum programming API.[5][6] A Python library called pyQuil was introduced to develop Quil programs with higher level constructs. A Quil backend is also supported by other quantum programming environments.[7][8]

Underlying quantum abstract machine

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In the paper presented by Smith, Curtis and Zeng, Quil specifies the instruction set for a Quantum Abstract Machine (QAM,) akin to a Turing machine, yet more practical for accomplishing "real-world" tasks.[1] The state of the QAM can be represented as a 6-tuple   where:

  •   is the (quantum) state of a fixed but arbitrary number of qubits   indexed using a 0-based indexing.
  •   is a classical memory of a number   of classical bits indexed using a 0-based indexing.
  •   a fixed but arbitrary list of static gates (quantum gates that do not depend on parameters, like the Hadamard gate.)
  •   a fixed but arbitrary list of parametric gates (gates that depend on a number of complex parameters like the phase shift gate that requires an angle parameter to be completely defined.)
  •   a sequence of Quil instructions to be executed, representing the program. The length of   is denoted by  .
  •   an integer program counter pointing to the next instruction to be executed.   always starts at 0 (pointing to the   instruction) and ends at   indicating program halting (note that the last instruction has the index  .) The program counter is incremented after every instruction, except for special control flow instructions (conditional and unconditional jumps, and the special HALT instruction that halts the program by setting   to  .

The semantics of the QAM are defined using tensor products of Hilbert spaces and the linear maps between them.[1]

Features

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Quil has support for defining possibly parametrized gates in matrix form (the language does not include a way to verify that the matrices are unitary, which is a necessary condition for the physical realizability of the defined gate) and their application on qubits. The language also supports macro-like definitions of possibly parametrized quantum circuits and their expansion, qubit measurement and recording of the outcome in classical memory, synchronization with classical computers with the WAIT instruction which pauses the execution of a Quil program until a classical program has ended its execution, conditional and unconditional branching, pragma support, as well as inclusion of files for use as libraries (a standard set of gates is provided as one of the libraries.)

Rigetti QVM

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Rigetti Computing developed a quantum virtual machine in Common Lisp that simulates the defined Quantum Abstract Machine on a classical computer and is capable of the parsing and execution of Quil programs with possibly remote execution via HTTP.[9]

Example

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The following example demonstrates the classical control flow needed to do quantum teleportation of the qubit in register 2 to register 1:[10][11]

# Declare classical memory
DECLARE ro BIT[2]
# Create Bell Pair
H 0
CNOT 0 1
# Teleport
CNOT 2 0
H 2
MEASURE 2 ro[0]
MEASURE 0 ro[1]
# Classically communicate measurements
JUMP-UNLESS @SKIP ro[1]
X 1
LABEL @SKIP
JUMP-UNLESS @END ro[0]
Z 1
LABEL @END

Examples of the implementations of the quantum fourier transform and the variational quantum Eigensolver are given in the paper.

References

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  1. ^ a b c Smith, Robert S.; Curtis, Michael J.; Zeng, William J. (2016-08-10). "A Practical Quantum Instruction Set Architecture". arXiv:1608.03355 [quant-ph].
  2. ^ McClean, Jarrod R.; Romero, Jonathan; Babbush, Ryan; Aspuru-Guzik, Alán (2016-02-04). "The theory of variational hybrid quantum-classical algorithms". New Journal of Physics. 18 (2): 023023. arXiv:1509.04279. Bibcode:2016NJPh...18b3023M. doi:10.1088/1367-2630/18/2/023023. ISSN 1367-2630. S2CID 92988541.
  3. ^ Rubin, Nicholas C. (2016-10-21). "A Hybrid Classical/Quantum Approach for Large-Scale Studies of Quantum Systems with Density Matrix Embedding Theory". arXiv:1610.06910 [quant-ph].
  4. ^ Farhi, Edward; Goldstone, Jeffrey; Gutmann, Sam (2014-11-14). "A Quantum Approximate Optimization Algorithm". arXiv:1411.4028 [quant-ph].
  5. ^ "Rigetti Launches Full-Stack Quantum Computing Service and Quantum IC Fab". IEEE Spectrum: Technology, Engineering, and Science News. 26 June 2017. Retrieved 2017-07-06.
  6. ^ "Rigetti Quietly Releases Beta of Forest Platform for Quantum Programming in the Cloud | Quantum Computing Report". quantumcomputingreport.com. 8 March 2017. Retrieved 2017-07-06.
  7. ^ "XACC Rigetti Accelerator". ornl-qci.github.io. Retrieved 2017-07-06.
  8. ^ Doiron, Nick (2017-03-07), jsquil: Quantum computer instructions for JavaScript developers, retrieved 2017-07-06
  9. ^ The @rigetti high-performance quantum virtual machine.: rigetti/qvm, Rigetti Computing, 2019-04-26, retrieved 2019-04-28
  10. ^ Nielsen, Michael A.; Chuang, Isaac L. (2000). Quantum Computation and Quantum Information. Cambridge University Press. p. 27. ISBN 978-0-521-63503-5.
  11. ^ Computing, Rigetti (28 May 2019). "pyQuil Documentation" (PDF). pyQuil Documentaion. Retrieved 6 June 2019.
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