{ "cells": [ { "attachments": {}, "cell_type": "markdown", "id": "7769945b", "metadata": {}, "source": [ "# Using Supercheq with Qiskit Superstaq" ] }, { "attachments": {}, "cell_type": "markdown", "id": "legendary-rebound", "metadata": {}, "source": [ "[](https://colab.research.google.com/github/Infleqtion/client-superstaq/blob/main/docs/source/apps/supercheq/Supercheq_qss.ipynb) [](https://mybinder.org/v2/gh/Infleqtion/client-superstaq/HEAD?labpath=docs/source/apps/supercheq/Supercheq_qss.ipynb)" ] }, { "attachments": {}, "cell_type": "markdown", "id": "4d322a70", "metadata": {}, "source": [ "This notebook demonstrates how to use Supercheq, a novel quantum fingerprinting protocol developed by Infleqtion. Supercheq is built into the Superstaq server, and can be accessed using `qiskit-superstaq`." ] }, { "attachments": {}, "cell_type": "markdown", "id": "221292d3", "metadata": {}, "source": [ "## Imports and API Token" ] }, { "attachments": {}, "cell_type": "markdown", "id": "1293f34a", "metadata": {}, "source": [ "This example tutorial notebook uses `qiskit-superstaq`, our Superstaq client for Qiskit; you can try it out by running `pip install qiskit-superstaq[examples]`:" ] }, { "cell_type": "code", "execution_count": 1, "id": "fb50eaf0", "metadata": {}, "outputs": [], "source": [ "try:\n", " import qiskit\n", " import qiskit_superstaq as qss\n", "except ImportError:\n", " print(\"Installing qiskit-superstaq...\")\n", " %pip install --quiet 'qiskit-superstaq[examples]'\n", " print(\"Installed qiskit-superstaq.\")\n", " print(\"You may need to restart the kernel to import newly installed packages.\")\n", " import qiskit\n", " import qiskit_superstaq as qss" ] }, { "cell_type": "code", "execution_count": 2, "id": "39fbad63", "metadata": {}, "outputs": [], "source": [ "# Required imports\n", "import matplotlib.pyplot as plt\n", "import numpy as np\n", "\n", "# Optional imports\n", "import os # Used if setting a token as an environment variable" ] }, { "attachments": {}, "cell_type": "markdown", "id": "ed311941", "metadata": {}, "source": [ "To interface Superstaq via Qiskit, we must first instantiate a provider in `qiskit-superstaq` with `SuperstaqProvider()`. We then supply a Superstaq API token (or key) by either providing the API token as an argument of `qss.SuperstaqProvider()` or by setting it as an environment variable (see more details [here](https://superstaq.readthedocs.io/en/latest/get_started/basics/basics_qss.html#Set-up-access-to-Superstaq%E2%80%99s-API))." ] }, { "cell_type": "code", "execution_count": 3, "id": "3181ee7f", "metadata": {}, "outputs": [], "source": [ "# Get the qiskit superstaq provider for Superstaq backend\n", "provider = qss.SuperstaqProvider()" ] }, { "attachments": {}, "cell_type": "markdown", "id": "418611fe", "metadata": {}, "source": [ "## File Construction" ] }, { "attachments": {}, "cell_type": "markdown", "id": "5039a536", "metadata": {}, "source": [ "To demonstrate Supercheq, we construct 32 files (for the sake of simplicitly, we just use lists in this notebook), each of length 5-bits. The lists represent the 32 different possible 5 bit values, so in theory these should all have distinguishable fingerprints." ] }, { "cell_type": "code", "execution_count": 4, "id": "61a7c97d", "metadata": {}, "outputs": [], "source": [ "# Demonstrate fingerprinting on all 32 5-bit bitstrings. We'll encode into just 3 qubits.\n", "# fmt: off\n", "files = [\n", " [0, 0, 0, 0, 0], [0, 0, 0, 0, 1], [0, 0, 0, 1, 0], [0, 0, 0, 1, 1],\n", " [0, 0, 1, 0, 0], [0, 0, 1, 0, 1], [0, 0, 1, 1, 0], [0, 0, 1, 1, 1],\n", " [0, 1, 0, 0, 0], [0, 1, 0, 0, 1], [0, 1, 0, 1, 0], [0, 1, 0, 1, 1],\n", " [0, 1, 1, 0, 0], [0, 1, 1, 0, 1], [0, 1, 1, 1, 0], [0, 1, 1, 1, 1],\n", " [1, 0, 0, 0, 0], [1, 0, 0, 0, 1], [1, 0, 0, 1, 0], [1, 0, 0, 1, 1],\n", " [1, 0, 1, 0, 0], [1, 0, 1, 0, 1], [1, 0, 1, 1, 0], [1, 0, 1, 1, 1],\n", " [1, 1, 0, 0, 0], [1, 1, 0, 0, 1], [1, 1, 0, 1, 0], [1, 1, 0, 1, 1],\n", " [1, 1, 1, 0, 0], [1, 1, 1, 0, 1], [1, 1, 1, 1, 0], [1, 1, 1, 1, 1],\n", "]\n", "# fmt: on" ] }, { "attachments": {}, "cell_type": "markdown", "id": "2fed492f", "metadata": {}, "source": [ "Supercheq uses quantum volume models to generate random circuits, using the file information as a seed. Hence, the final state vectors of the circuit act as a fingerprint for the file. Supercheq allows you to choose the number of qubits as well as circuit depth. To start with, we will use 3 qubits with a depth of 1." ] }, { "cell_type": "code", "execution_count": 5, "id": "2f2a10af", "metadata": {}, "outputs": [], "source": [ "num_qubits = 3\n", "depth = 1\n", "circuits, fidelities = provider.supercheq(files, num_qubits, depth)" ] }, { "cell_type": "code", "execution_count": 6, "id": "05297e4f", "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "32\n", "(32, 32)\n" ] } ], "source": [ "print(len(circuits))\n", "print(fidelities.shape)" ] }, { "attachments": {}, "cell_type": "markdown", "id": "53d3bc01", "metadata": {}, "source": [ "Let's see what a couple of these circuits look like." ] }, { "attachments": {}, "cell_type": "markdown", "id": "d1e4f4d4", "metadata": {}, "source": [ "### Circuit for file [0, 0, 0, 0, 0]" ] }, { "cell_type": "code", "execution_count": 7, "id": "e7619b0c", "metadata": {}, "outputs": [ { "data": { "text/html": [ "
┌──────────┐┌───┐\n",
"q_0: ┤1 ├┤ I ├\n",
" │ Unitary │├───┤\n",
"q_1: ┤0 ├┤ I ├\n",
" └──┬───┬───┘└───┘\n",
"q_2: ───┤ I ├─────────\n",
" └───┘ "
],
"text/plain": [
" ┌──────────┐┌───┐\n",
"q_0: ┤1 ├┤ I ├\n",
" │ Unitary │├───┤\n",
"q_1: ┤0 ├┤ I ├\n",
" └──┬───┬───┘└───┘\n",
"q_2: ───┤ I ├─────────\n",
" └───┘ "
]
},
"execution_count": 7,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"circuits[0].draw(fold=-1)"
]
},
{
"attachments": {},
"cell_type": "markdown",
"id": "935bda29",
"metadata": {},
"source": [
"### Circuit for file [0, 0, 0, 0, 1]"
]
},
{
"cell_type": "code",
"execution_count": 8,
"id": "8b22de16",
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
" ┌──────────┐┌───┐\n",
"q_0: ┤1 ├┤ I ├\n",
" │ │├───┤\n",
"q_1: ┤ Unitary ├┤ I ├\n",
" │ │├───┤\n",
"q_2: ┤0 ├┤ I ├\n",
" └──────────┘└───┘"
],
"text/plain": [
" ┌──────────┐┌───┐\n",
"q_0: ┤1 ├┤ I ├\n",
" │ │├───┤\n",
"q_1: ┤ Unitary ├┤ I ├\n",
" │ │├───┤\n",
"q_2: ┤0 ├┤ I ├\n",
" └──────────┘└───┘"
]
},
"execution_count": 8,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"circuits[1].draw(fold=-1)"
]
},
{
"attachments": {},
"cell_type": "markdown",
"id": "1e2b8b87",
"metadata": {},
"source": [
"On first glance, these circuits look distinct (which is what we expect). However, we can't know for sure until we study the fidelities. The fidelity is calculated as the inner product of the final state vector pairs. For a good fingerprinting protocol, we would want all identical files to have a fidelity of 1, and distinct pairs to have a fidelity as close to 0 as possible.\n",
"\n",
"The code blocks below allow you to visualize all of the fidelities simultaneously."
]
},
{
"cell_type": "code",
"execution_count": 9,
"id": "756519eb",
"metadata": {},
"outputs": [],
"source": [
"def plot_heatmap(fidelities):\n",
" plt.figure(dpi=150)\n",
" plt.imshow(fidelities)\n",
" plt.colorbar()\n",
"\n",
"\n",
"def plot_histogram(fidelities):\n",
" off_diag = np.tril(fidelities, -1) # lower-right triangle of fidelities matrix\n",
" on_diag = np.diag(fidelities)\n",
" plt.figure(dpi=150)\n",
" plt.hist([off_diag.flatten(), on_diag], label=[\"Off-Diagonal\", \"On-Diagonal\"])\n",
" plt.legend()"
]
},
{
"cell_type": "code",
"execution_count": 10,
"id": "5572d16d",
"metadata": {},
"outputs": [
{
"data": {
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",
"text/plain": [
" ┌───┐ \n",
"q_0: ───┤ I ├─────────\n",
" ┌──┴───┴───┐┌───┐\n",
"q_1: ┤1 ├┤ I ├\n",
" │ Unitary │├───┤\n",
"q_2: ┤0 ├┤ I ├\n",
" └──────────┘└───┘"
],
"text/plain": [
" ┌───┐ \n",
"q_0: ───┤ I ├─────────\n",
" ┌──┴───┴───┐┌───┐\n",
"q_1: ┤1 ├┤ I ├\n",
" │ Unitary │├───┤\n",
"q_2: ┤0 ├┤ I ├\n",
" └──────────┘└───┘"
]
},
"execution_count": 29,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"circuits[0].draw(fold=-1)"
]
},
{
"cell_type": "code",
"execution_count": 30,
"id": "9809adae",
"metadata": {},
"outputs": [
{
"data": {
"text/html": [
" ┌──────────┐┌───┐\n",
"q_0: ┤0 ├┤ I ├\n",
" │ Unitary │├───┤\n",
"q_1: ┤1 ├┤ I ├\n",
" └──┬───┬───┘└───┘\n",
"q_2: ───┤ I ├─────────\n",
" └───┘ "
],
"text/plain": [
" ┌──────────┐┌───┐\n",
"q_0: ┤0 ├┤ I ├\n",
" │ Unitary │├───┤\n",
"q_1: ┤1 ├┤ I ├\n",
" └──┬───┬───┘└───┘\n",
"q_2: ───┤ I ├─────────\n",
" └───┘ "
]
},
"execution_count": 30,
"metadata": {},
"output_type": "execute_result"
}
],
"source": [
"circuits[1].draw(fold=-1)"
]
},
{
"cell_type": "code",
"execution_count": 31,
"id": "73df8bd9",
"metadata": {},
"outputs": [
{
"data": {
"image/png": 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",
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