The embodiments of the invention relate generally to the field of quantum computing. More particularly, these embodiments relate to techniques for improving quantum computing accuracy and/or efficiency by performing phase adjustments in a quantum control chip.
Quantum computing refers to the field of research related to computation systems that use quantum mechanical phenomena to manipulate data. These quantum mechanical phenomena, such as superposition (in which a quantum variable can simultaneously exist in multiple different states) and entanglement (in which multiple quantum variables have related states irrespective of the distance between them in space or time), do not have analogs in the world of classical computing, and thus cannot be implemented with classical computing devices.
A better understanding of the present invention can be obtained from the following detailed description in conjunction with the following drawings, in which:
In the following description, for the purposes of explanation, numerous specific details are set forth in order to provide a thorough understanding of the embodiments of the invention described below. It will be apparent, however, to one skilled in the art that the embodiments of the invention may be practiced without some of these specific details. In other instances, well-known structures and devices are shown in block diagram form to avoid obscuring the underlying principles of the embodiments of the invention.
A quantum computer uses quantum-mechanical phenomena such as superposition and entanglement to perform computations. In contrast to digital computers which store data in one of two definite states (0 or 1), quantum computation uses quantum bits (qbits), which can be in superpositions of states. Qubits may be implemented using physically distinguishable quantum states of elementary particles such as electrons and photons. For example, the polarization of a photon may be used where the two states are vertical polarization and horizontal polarization. Similarly, the spin of an electron may have distinguishable states such as “up spin” and “down spin.”
Qubit states are typically represented by the bracket notations |0> and |1>. In a traditional computer system, a bit is exclusively in one state or the other, i.e., a ‘0’ or a ‘1.’ However, qbits in quantum mechanical systems can be in a superposition of both states at the same time, a trait that is unique and fundamental to quantum computing.
Quantum computing systems execute algorithms containing quantum logic operations performed on qubits. The sequence of operations is statically compiled into a schedule and the qubits are addressed using an indexing scheme. This algorithm is then executed a sufficiently large number of times until the confidence interval of the computed answer is above a threshold (e.g., ˜95+%). Hitting the threshold means that the desired algorithmic result has been reached.
Qubits have been implemented using a variety of different technologies which are capable of manipulating and reading quantum states. These include, but are not limited to quantum dot devices (spin based and spatial based), trapped-ion devices, superconducting quantum computers, optical lattices, nuclear magnetic resonance computers, solid-state NMR Kane quantum devices, electrons-on-helium quantum computers, cavity quantum electrodynamics (CQED) devices, molecular magnet computers, and fullerene-based ESR quantum computers, to name a few. Thus, while a quantum dot device is described below in relation to certain embodiments of the invention, the underlying principles of the invention may be employed in combination with any type of quantum computer including, but not limited to, those listed above. The particular physical implementation used for qbits is orthogonal to the embodiments of the invention described herein.
Quantum dots are small semiconductor particles, typically a few nanometers in size. Because of this small size, quantum dots operate according to the rules of quantum mechanics, having optical and electronic properties which differ from macroscopic entities. Quantum dots are sometimes referred to as “artificial atoms” to connote the fact that a quantum dot is a single object with discrete, bound electronic states, as is the case with atoms or molecules.
The quantum dot device 100 of
Generally, the quantum dot devices 100 disclosed herein may further include a source of magnetic fields (not shown) that may be used to create an energy difference in the states of a quantum dot (e.g., the spin states of an electron spin-based quantum dot) that are normally degenerate, and the states of the quantum dots (e.g., the spin states) may be manipulated by applying electromagnetic energy to the gates lines to create quantum bits capable of computation. The source of magnetic fields may be one or more magnet lines, as discussed below. Thus, the quantum dot devices 100 disclosed herein may, through controlled application of electromagnetic energy, be able to manipulate the position, number, and quantum state (e.g., spin) of quantum dots in the quantum well stack 146.
In the quantum dot device 100 of
Multiple parallel second gate lines 104 may be disposed over and between the first gate lines 102. As illustrated in
Multiple parallel third gate lines 106 may be disposed over and between the first gate lines 102 and the second gate lines 104. As illustrated in
Although
Not illustrated in
After Richard Feynman asked in 1982 whether quantum physics could be simulated efficiently using a quantum computer, much effort researching for a quantum computer has been focused on its universality and its efficiency over classical computation. One such example is David Deutsch's quantum Turing machine in 1985 that can be programmed to perform any computational task that can be performed by any physical object.
In contrast to theories and algorithms, quantum physical machines are in still their infancy. Efforts to build quantum information processing systems have resulted in modest success to date. Small quantum computers, capable of performing a small set of quantum operations on a very few qubits, represent the state of the art in quantum computation. In addition, quantum states are fragile in the sense that quantum states only remain coherent for a limited duration. This gap between algorithms and physical machines has driven the effort to invent hybrid classical-quantum algorithms. Some recent quantum algorithm developments have focused on short-depth quantum circuits to carry out quantum computations formed as subroutines embedded in a larger classical optimization loop, such as the variational eigensolver (P. J. J. O'Malley, 2016). Quantum languages, tools, and flows have been developed, providing software layers/stacks to translate and optimize applications to the quantum physical layer to cope with the stringent resource constraints in quantum computing (Frederic T. Chong, 2017, 14 Sep.).
On the hardware side, classical computers have been used to perform error correction for quantum computations. The “quantum co-processor” model is the most favorable prevailing execution model where a classical CPU controls a quantum processing unit in a similar manner to how CPUs in modern computer systems interact with GPUs. As described in (X. Fu, 2016, May) and (X. Fu, 2018), the microarchitecture for experimental superconducting quantum co-processors included features such as an arbiter on the code fetch data path to steer classical instruction to host CPU and quantum instruction to quantum co-processor, an exchange register file to synchronize register files between host CPU and the quantum co-processor, and a quantum instruction cache.
The microarchitectures for these mechanisms, however, are not well defined and explicit support for hybrid classical-quantum programs is lacking. Consequently, it is unclear how a quantum co-processor would be implemented within a quantum computer, particularly one which is required to run a diverse set of quantum programs. A flexible and programmable model has yet to be developed for executing hybrid classical-quantum algorithms.
One embodiment of the invention adds a set of quantum instructions to an instruction set architecture (ISA) of a processor such as a CPU. By way of example, these instructions may be included in an extension to the ISA (e.g., such as the AVX-512 extensions for the x86 platform). In addition, in one embodiment, a quantum engine is added to the processor's execution unit and the new quantum instructions are fetched, decoded, scheduled, and executed on the functional units of the quantum engine. In one embodiment, the quantum engine interacts with the classical execution engines using a shared register file and/or system memory. Upon executing the quantum instructions (or quantum cops in certain embodiments described herein), the quantum execution engine generates control signals to manipulate the state of the qubits within the quantum processor. The quantum engine also executes instructions to take a measurement of specified sets of qubits and store the results. In these embodiments, a quantum/classical interface provides connectivity between the quantum engine of the classical processor and the quantum processor.
Quantum and non-quantum instructions 201A-B are fetched from memory 205 at the front end of the instruction pipeline and stored in a Level 1 (L1) instruction cache 201. Instructions and data may also be stored within a Level 2 or Level 3 cache within a cache/memory subsystem 215, which manages memory requests and cache coherency.
A decoder 202 decodes the instructions 201A-B into micro-operations or uops 203A which are scheduled for execution by a scheduler 203 and executed by execution circuitry 204. In one embodiment, certain stages of the pipeline are enhanced to include hardware support for processing the quantum instructions 201B while other stages are unaltered. For example, quantum decode circuitry 202A may be added to the decoder 202 for decoding the quantum instructions 201A, just as non-quantum decode circuitry 202B decodes non-quantum instructions 201B. Although illustrated as separate components in
In one embodiment, the decoder 202 generates a sequence of uops 203A in response to decoding the instructions 201A-B. In an implementation with quantum and non-quantum instructions, the uops may include a mixture of quantum uops and non-quantum uops, which are then scheduled for execution by an instruction scheduler 203.
The quantum and non-quantum uops 203A generated by the decoder 202 may initially be queued for execution within one or more uop queues of the scheduler 203, which dispatches the uops from the uop queue(s) in accordance with dependencies and/or execution resource availability. The embodiments of the invention may be implemented on various different types of processors with different types of schedulers. For example, in one embodiment, a set of execution “ports” couple the scheduler 203 to the execution circuitry 204, where each execution port is capable of issuing uops to a particular set of functional units 204C-E. In the example architecture shown in
In the particular embodiment shown in
In an embodiment in which quantum uops are mixed with non-quantum uops, the quantum uops are issued over one or more quantum ports to a set of quantum engine functional units 204E, which execute the quantum uops to perform the underlying quantum operations. For example, the quantum engine functional units 204E, in response to the quantum uops, may generate control signals over a quantum-classical interface 206 to manipulate and take measurements of the qubits of a quantum processor 207.
The quantum-classical interface 206 includes digital-to-analog (D-A) circuitry to convert the digital quantum control signals generated by the quantum engine functional units 204E to analog signals required to control the quantum processor 207 (e.g., such as the codeword triggered pulse generation (CTPG) units and Arbitrary Waveform Generator (AWG) described below) and also includes analog-to-digital (A-D) circuitry to convert the physical qubit measurements to digital result data.
In one embodiment, the quantum-classical interface 206 is integrated on the same semiconductor chip as the other components of the instruction processing pipeline (e.g., the execution circuitry 204, scheduler 203, decoder 202, etc). As discussed in detail below, different types of circuit/logic components may be used depending on the particular physical implementation of the quantum processor 207.
The operands for the quantum and non-quantum uops are stored in a set of shared registers 321 (as described above) and accessed by the quantum functional units 320 when executing the uops. The Q-C interface 320, in response to the quantum uops, controls the operation of the quantum processor 207.
Different examples of a quantum-classical interface 206 are illustrated in
The Q-C interface 206 shown in
To further guide the analysis and discussion, a concrete example is illustrated in
One example of a quantum program that uses this circuit for a portion of its computation is illustrated in
This program structure shows how classical operations and quantum operations may be tightly intertwined and executed on the classical-quantum processing architectures described herein. The most efficient way to execute this program is to process all instructions in a pipeline such as those described above, with the quantum engine functional units 204E for controlling qubits configured as execution engine peer to other classical execution engines 204A-B (such as integer, floating point, etc.).
A method in accordance with one embodiment of the invention is illustrated in
At 701 source code containing quantum instructions is compiled to generate runtime program code with quantum and non-quantum instructions. At 702 the quantum/non-quantum instructions are fetched from memory and stored in a local cache (e.g., the L1 instruction cache) or instruction buffer. As mentioned, quantum instructions may be freely mixed with non-quantum instructions within the pipeline.
At 703 the quantum and non-quantum instructions are decoded into sets of quantum and non-quantum uops, respectively, and stored in a queue prior to execution. At 704 the quantum/non-quantum uops are scheduled for execution based on uop and/or resource dependencies. For example, if a first uop is dependent on the results of a second uop then the first uop may be scheduled for execution only when the data produced by the second uop is available in one of the registers. Similarly, if a particular functional unit is busy, then the scheduler may wait for an indication that the functional unit is available before scheduling a uop which requires that functional unit. Various other/additional scheduling techniques may be implemented (e.g., scheduling based on priority, register load, etc).
At 705 the quantum uops and non-quantum uops are executed on their respective functional units within the execution circuitry. As mentioned, the shared register set may be used to store the source and destination operands required by these uops.
At 706, the results generated by the execution of the quantum uops may be used as input to an interface unit to control the quantum state of the qubits in a quantum processor. In one embodiment, a series of codewords or command packets may be generated which identify a quantum channel, one or more qubits within a quantum processor, a qubit type and/or a command state. The specific physical operations performed in response to the codeword or command packet is based on the underlying type of quantum processor used.
The embodiments described herein integrates quantum instructions within an existing processor pipeline. Because of the tight integration, these embodiments significantly reduces the various overheads/bottlenecks associated with current co-processor designs. These overheads/bottlenecks include, for example, the communication between the classical computation layers/modules and the quantum computation layers/modules in the software stack and between the classical CPU and the quantum chip via the message queue. Given the relatively small size of quantum routines, the current GPU-like co-processor implementations are inefficient.
Due to increased classical processing capabilities, hybrid co-processor models reduce some of the overhead. In one particular implementation which supports the hybrid co-processor model, many new micro-architecture mechanisms were introduced. However, these micro-architectural mechanisms were ambiguously defined as was the boundary between the classical CPU and quantum co-processor.
In contrast, in the hybrid architecture described herein, the classical computation pipeline is equipped to fully support a defined set of quantum instructions which may be freely mixed with non-quantum instructions both at the front end of the pipeline (i.e., at the macroinstruction level) and within the back-end of the pipeline (e.g., where quantum cops are mixed with non-quantum uops) and executed on functional units within the execution circuitry of the processor.
In quantum computing, a qubit is a unit of quantum information which is the quantum analogue of a classical binary bit. The computation is achieved by applying quantum gates, representing quantum logical operations, directly to qubits. Mathematically, this computing process is described as qubits undergo unitary transformations. Upon completion of computation, qubits are measured to gain information about the qubit states.
Therefore, to describe a quantum operation, it is necessary to identify the qubit or set of qubits to which the operation is applied. In a quantum program, each quantum instruction needs to encode both an operation to be performed and one or more qubits on which to perform the operation. In existing quantum instruction set architectures (e.g., QASM, Open QASM, QIS, etc) register operands are normally encoded in the opcode of an instruction. This scheme works for classical computing because the number of registers are very limited (e.g., 16, 32, 64, etc). However, this scheme is not scalable for quantum computing as quantum instructions will ultimately need to address a very large numbers of qubits. Consequently, encoding qubit addresses in the opcode field of quantum instructions would explode the instruction width.
As described above, in one embodiment, quantum instructions and non-quantum instructions are processed together within a shared processor pipeline. As such, the quantum instructions may rely on the same addressing modes as those available to the non-quantum instructions. The qubits in this embodiment are therefore addressed in a similar manner as non-quantum instructions which access system memory, providing a sufficiently large address space to accommodate a large number of qubits.
As illustrated in
The QIG 802 may operate in accordance with different addressing modes supported by the processor. In one embodiment, the instruction identifies one of the shared registers 321 which contains the qubit index value (sometimes also referred to as a qubit ID). It may then use the qubit index value to identify the qubit within the codeword/command packet 606 and/or perform an operation using the qubit index value to generate one or more additional qubit index values. For example, it may add the qubit ID value to an integer specified by the uop to generate a second qubit ID.
The following examples demonstrate one way in which the QIG 802 generates qubit IDs in response to uops using an x86 assembly syntax. These operations may be performed within an x86 pipeline extended to support quantum instructions. However, the same general principles may be implemented on any processor architecture.
The single qubit instruction “QIROTX [RDI], 1” applies an X gate to the qubit number stored in RDI. Thus, if RDI contains 5, the X gate is applied to qubit number 5. In this example, the QIG 802 determines the qubit ID simply by reading the value stored in RDI (which is one of the shared registers 321 in this example). In this embodiment, the RDI value was stored previously by another uop. As another example, if the architecture register RBX contains a value of 2, then the two qubit instruction “QCNOTUP [RBX+3],” applies a CNOT operation with qubit 2 (q[2]) being the control qubit and qubit 5 (q[5]) being the target qubit. The QIG interprets the [RBX+3] notation as: the ID of the control qubit is stored in RBX and the ID of the control qubit+3 is the target qubit ID. Thus, the addressing scheme is extended so that two different qubits can be addressed with a single instruction, (i.e., CNOT). In contrast, in classical computing, only one memory location is addressed per instruction.
The quantum error correction unit 808 may implement various techniques for detecting and correcting quantum errors. For example, in one embodiment, an error decoder (within the QEC unit 808) decodes a multi-qubit measurement from the quantum processor 207 to determine whether an error has occurred and, if so, implements corrective measures (is possible). The error measurements may be taken from multiple qubits in a manner which does not disturb the quantum information in the encoded state of the qubits (e.g., using ancilla qubits). In response, the QEC unit 808 generates error syndrome data from which it may identify the errors that have occurred and implement corrective operations. In one embodiment, the error syndrome data comprises a stabilizer code such as a surface code. In some cases, the response may simply be to reinitialize the qbits and start over. In other cases, however, modifications to the quantum algorithm implemented in the quantum program code 205C can be made to stabilize the region of the quantum processor responsible for the error (e.g., where compiler 205B includes a just-in-time (JIT) compiler). In either case, the CTPGs 402A perform the underlying physical operations under the control of the codewords/command packets 606 generated by the QEFU 204E. For example, the CTPG 402A may generate electromagnetic pulses to adjust the phase of one or more qbits in accordance with the detected phase error, or to reset the phase/spin of all qbits if re-initialization is required.
Addressing qubits in a manner which is similar to how classical CPU's address memory provides the scalability characteristics/attributes required for future quantum processor implementations. In particular, the above-described embodiments provide qubit indexing which is seamlessly integrated within an existing processor ISA and scales to a large number of qubit systems. These embodiments also remove pressure from the quantum instruction opcode space by way of a quantum extension to x86 or other architectures to address the qubit space and integrate quantum operations to existing processor pipelines.
A method in accordance with one embodiment of the invention is illustrated in
At 901 quantum and non-quantum instructions from runtime program code are fetched and decoded, generating quantum and non-quantum uops. At 902 an index generation unit evaluates quantum uops including register identifiers and optionally one or more values included with the uops to determine qubit index values. As described above, the indices may be generated using a variety of techniques including reading qubit index values from registers identified by the uops and generating additional qubit index values using integer values included with the uops.
At 902, the quantum execution circuitry generates a codeword specifying the quantum operations to be performed on the qubits identified by the calculated qubit index values. At 905, qubit measurements are performed in response to another codeword generated based on additional uops. At 906, the analog measurement made on one or more of the qubits are converted to digital values. Error correction and/or flow control may then be performed based on the resulted digital result values stored in a register file of the processor.
Embodiments of the invention allow complex quantum algorithms to be executed on a quantum control device without storing large amounts of correction data such as Z-correction tables. In one implementation, phase is corrected only when it is needed for actual qubit manipulations by introducing an oscillator phase correction operation. This new operation does not change the state of any qubit but corrects the phase of selected oscillators, providing for a significant reduction in the memory requirements of the quantum control chip, which no longer stores all possible correction combinations (a number that grows exponentially with the number of qubit states). The resulting reduction in power and size enables the quantum control device to be used within the 4 Kelvin fridge.
In multi qubit systems, in order to modify state of a qubit a burst of high frequency energy is applied to common qubit line. Each qubit has its own resonance frequency so, theoretically, only one qubit is manipulated if resonance is ideal. However in real hardware, resonances are not ideal. Moreover, even if the target qubit is subject to an ideal tone, there will be victim qubits which change state due to a frequency drift, a phenomenon known as the AC-Stark shift effect. Thus, in any quantum system, the state of neighboring qubits are affected which requires correcting their coherent phase, as illustrated in
In order to execute the next operation in a predictable way, that influence must be accounted for in the oscillator responsible for the green qubit manipulation. In current implementations, these influences are calibrated during system characterization and are recorded in enormous data tables. For each sequence of qubit bit operations, the total accumulated error can be precomputed beforehand and used in qubit manipulations to compensate. This approach, however, breaks if there are branching or conditional operations since the same correction value for the same qubit may depend on the potentially variable sequence of prior operations. Oscillator phase can also be adjusted by a pre-calibrated amount, but this will require storing all possible correction values. Thus, for a cryogenic device controlling qubit from within the 4 Kelvin fridge, existing approaches are insufficient.
In one embodiment of the invention, a host device precomputes phase corrections for linear sequences of qubit manipulations which are actually used in a quantum program and introduces phase correction instructions which are inserted after such linear sequence of qubit manipulations to correct all accumulated phase error.
The qubits 1140 in the illustrated example include N data qubits P1, P2, . . . PN, and a corresponding set of N barrier qubits B1, B2, . . . BN which operate to block or permit interaction between adjacent data qubits. For example, when the barrier potential of barrier qubit B1 is above a threshold, data qubits P1 and P2 are prevented from interacting. A specified waveform may be generated by the stimulus generator 1102 to lower the barrier potential of barrier qubit B1, thereby allowing data qubits P1 and P2 to become entangled (e.g., in order to implement multi-qubit gates). It should be noted, however, that this particular arrangement of qubits 1140 is not required for complying with the underlying principles of the invention.
The computing device 1150 includes a processor 1152 to process quantum and non-quantum instructions, a storage device 1158 to store the quantum and non-quantum program code, and a memory 1154 to store program code being executed by the processor 1152. An I/O interface couples the computing device 1150 to the controller 1103, which includes a small local memory 1109 for storing sequences of quantum commands to be executed.
In one embodiment, a quantum preprocessor 1168 is executed by the processor 1152 to perform phase corrections for sequences of quantum operations to correct all accumulated phase error. In particular, a phase error evaluator 1162 evaluates the sequences of quantum operations 1161 to determine the accumulated phase error. The phase error data is provided to a phase correction component 1163 which inserts phase correction instructions into the quantum operation sequence in accordance with stored correction values 1165 to generate a new quantum operation sequence which includes the phase correction instructions 1164.
The new quantum operation sequence 1164 may be loaded to the qubit control chip memory 1109 for execution by the quantum controller 1103. An additional compilation and/or translation may be performed on the computing device 1150 to translate the quantum operation sequence with phase correction instructions 1164 to a corresponding sequence of commands to be executed by the controller 1103. In this embodiment, the sequence of commands, when executed, cause the controller to perform the underlying operations, including commands to perform phase compensation as described herein. The corresponding sequence of commands may be written to the qubit control chip memory 1109 from where they are executed by the controller 1103. In response to the controller executing these commands, the stimulus generator 1102 performs phase adjustments in accordance with the phase correction instructions (e.g., adjusting the phase of one or more of the mixers 1108).
In one embodiment, a set of possible correction values 1165 includes pre-calibrated correction values to adjust the oscillator phases of the mixer oscillators to compensate for phase errors. Using this data, the phase correction component 1163 of the preprocessor 1168 inserts phase correction instructions in the sequences of quantum operations 1161, with correction values for one or more oscillators in the stimulus generator 1102 (e.g., the oscillators of the mixer 1108). The set of possible correction values 1165 may be very large. However, in contrast to prior implementations, the correction values 1165 are only stored in the computing device memory 1154 and/or storage device 1158, where they may be accessed by the quantum preprocessor 1168 during the preprocessing stage as described herein. This allows for a smaller qubit control chip memory 1109 and smaller resulting power consumption values.
While illustrated as software components in
In one embodiment, an entire quantum program may be evaluated in this manner and the necessary phase correction instructions inserted into the instruction stream. This includes branching and conditional instruction sequences, where different conditions may be specified by the phase error evaluator 1162 so that the resulting program flow can be analyzed. Once the phase correction instructions are inserted, they may be translated to commands (if necessary), stored to the storage device 1158 of the computing device 1150, and/or loaded to the qubit control chip memory 1109 for execution by the quantum controller 1103.
A method in accordance with one embodiment is illustrated in
At 1201, the next (or first) sequence of quantum instructions of a quantum program are evaluated on a host computing device to determine the accumulated phase error. The evaluation may determine, for example, the extent to which phase adjustments to one or more oscillators of a qubit controller chip are needed. If phase adjustments are required, determined at 1202, then at 1203, phase correction instructions are inserted into the quantum instruction sequence. As mentioned, the phase correction instructions may be specifically configured in view of the phase correction values 1165 to make the required corrections to the phase of the stimulus signals. For example, a phase correction instruction may use operand values generated based on the phase correction values 1165.
At 1204, the new instruction sequence is translated and/or saved to memory or storage and the process moves to the next quantum sequence if there are additional sequences to be evaluated, determined at 1205. If there are no additional quantum instruction sequences, then the new/translated instruction sequences containing the phase correction instructions/operations are loaded to the qubit controller at 1206. If additional sequences remain, the process returns for 1201.
Using the embodiments of the invention described above achieves the best results while maintaining low power and storage requirements. All complex compute operations are performed by host computing device and the memory requirements of the qubit control chip are minimized as only required corrections are stored in qubit control chip memory rather than all possible combinations.
In the above detailed description, reference is made to the accompanying drawings that form a part hereof, and in which is shown, by way of illustration, embodiments that may be practiced. It is to be understood that other embodiments may be utilized and structural or logical changes may be made without departing from the scope of the present disclosure. Therefore, the following detailed description is not to be taken in a limiting sense.
Various operations may be described as multiple discrete actions or operations in turn in a manner that is most helpful in understanding the claimed subject matter. However, the order of description should not be construed as to imply that these operations are necessarily order dependent. In particular, these operations may not be performed in the order of presentation. Operations described may be performed in a different order from the described embodiment. Various additional operations may be performed, and/or described operations may be omitted in additional embodiments. Terms like “first,” “second,” “third,” etc. do not imply a particular ordering, unless otherwise specified.
For the purposes of the present disclosure, the phrase “A and/or B” means (A), (B), or (A and B). For the purposes of the present disclosure, the phrase “A, B, and/or C” means (A), (B), (C), (A and B), (A and C), (B and C), or (A, B, and C). The term “between,” when used with reference to measurement ranges, is inclusive of the ends of the measurement ranges. As used herein, the notation “A/B/C” means (A), (B), and/or (C).
The description uses the phrases “in an embodiment” or “in embodiments,” which may each refer to one or more of the same or different embodiments. Furthermore, the terms “comprising,” “including,” “having,” and the like, as used with respect to embodiments of the present disclosure, are synonymous.
The following are example implementations of different embodiments of the invention.
Example 1. A machine-readable medium having program code stored thereon which, when executed by a machine, causes the machine to perform the operations of: evaluating a quantum instruction sequence of a quantum program to determine accumulated phase error; inserting one or more phase correction instructions into the quantum instruction sequence to generate a modified quantum instruction sequence to correct the accumulated phase error; and wherein the modified quantum instruction sequence or a translated version thereof is to be executed by a qubit controller chip.
Example 2. The machine-readable medium of example 1 wherein a phase correction instruction includes one or more operand values specifying phase adjustments to one or more oscillators of a qubit controller chip.
Example 3. The machine-readable medium of example 2 further comprising program code to cause the machine to perform the operations of: translating the modified quantum instruction sequence into a sequence of commands executable by the qubit controller chip.
Example 4. The machine-readable medium of example 2 wherein evaluating comprises determining a cumulative effect of the quantum instruction sequence on the phase error.
Example 5. The machine-readable medium of example 4 wherein the one or more operand values of the phase correction instruction are determined from a predetermined set of possible phase correction values.
Example 6. The machine-readable medium of example 5 wherein the predetermined set of possible phase correction values are stored in a memory or storage of a host computing device.
Example 7. The machine-readable medium of example 6 wherein the one or more oscillators comprise oscillators of one or more mixers of a stimulus generator.
Example 8. An apparatus comprising: a phase error evaluator to evaluate a quantum instruction sequence of a quantum program to determine accumulated phase error; phase correction hardware logic to insert one or more phase correction instructions into the quantum instruction sequence to generate a modified quantum instruction sequence to correct the accumulated phase error; and wherein the modified quantum instruction sequence or a translated version thereof is to be executed by a qubit controller chip.
Example 9. The apparatus of example 8 wherein a phase correction instruction includes one or more operand values specifying phase adjustments to one or more oscillators of a qubit controller chip.
Example 10. The apparatus of example 9 further comprising: a compiler or translator to translate the modified quantum instruction sequence into a sequence of commands executable by the qubit controller chip.
Example 11. The apparatus of example 9 wherein the phase error evaluator is to determine a cumulative effect of the quantum instruction sequence on the phase error.
Example 12. The apparatus of example 11 wherein the one or more operand values of the phase correction instruction are determined from a predetermined set of possible phase correction values.
Example 13. The apparatus of example 12 wherein the predetermined set of possible phase correction values are stored in a memory or storage of a host computing device.
Example 14. The apparatus of example 13 wherein the one or more oscillators comprise oscillators of one or more mixers of a stimulus generator.
Example 15. A method comprising: evaluating a quantum instruction sequence of a quantum program to determine accumulated phase error; inserting one or more phase correction instructions into the quantum instruction sequence to generate a modified quantum instruction sequence to correct the accumulated phase error; and wherein the modified quantum instruction sequence or a translated version thereof is to be executed by a qubit controller chip.
Example 16. The method of example 15 wherein a phase correction instruction includes one or more operand values specifying phase adjustments to one or more oscillators of a qubit controller chip.
Example 17. The method of example 16 further comprising: translating the modified quantum instruction sequence into a sequence of commands executable by the qubit controller chip.
Example 18. The method of example 16 wherein evaluating comprises determining a cumulative effect of the quantum instruction sequence on the phase error.
Example 19. The method of example 18 wherein the one or more operand values of the phase correction instruction are determined from a predetermined set of possible phase correction values.
Example 20. The method of example 19 wherein the predetermined set of possible phase correction values are stored in a memory or storage of a host computing device.
Example 21. The method of example 20 wherein the one or more oscillators comprise oscillators of one or more mixers of a stimulus generator.
Embodiments of the invention may include various steps, which have been described above. The steps may be embodied in machine-executable instructions which may be used to cause a general-purpose or special-purpose processor to perform the steps. Alternatively, these steps may be performed by specific hardware components that contain hardwired logic for performing the steps, or by any combination of programmed computer components and custom hardware components.
As described herein, instructions may refer to specific configurations of hardware such as application specific integrated circuits (ASICs) configured to perform certain operations or having a predetermined functionality or software instructions stored in memory embodied in a non-transitory computer readable medium. Thus, the techniques shown in the figures can be implemented using code and data stored and executed on one or more electronic devices (e.g., an end station, a network element, etc.). Such electronic devices store and communicate (internally and/or with other electronic devices over a network) code and data using computer machine-readable media, such as non-transitory computer machine-readable storage media (e.g., magnetic disks; optical disks; random access memory; read only memory; flash memory devices; phase-change memory) and transitory computer machine-readable communication media (e.g., electrical, optical, acoustical or other form of propagated signals—such as carrier waves, infrared signals, digital signals, etc.).
In addition, such electronic devices typically include a set of one or more processors coupled to one or more other components, such as one or more storage devices (non-transitory machine-readable storage media), user input/output devices (e.g., a keyboard, a touchscreen, and/or a display), and network connections. The coupling of the set of processors and other components is typically through one or more busses and bridges (also termed as bus controllers). The storage device and signals carrying the network traffic respectively represent one or more machine-readable storage media and machine-readable communication media. Thus, the storage device of a given electronic device typically stores code and/or data for execution on the set of one or more processors of that electronic device. Of course, one or more parts of an embodiment of the invention may be implemented using different combinations of software, firmware, and/or hardware. Throughout this detailed description, for the purposes of explanation, numerous specific details were set forth in order to provide a thorough understanding of the present invention. It will be apparent, however, to one skilled in the art that the invention may be practiced without some of these specific details. In certain instances, well known structures and functions were not described in elaborate detail in order to avoid obscuring the subject matter of the present invention. Accordingly, the scope and spirit of the invention should be judged in terms of the claims which follow.