diff --git a/docs/tutorials/randomized_benchmarking.ipynb b/docs/tutorials/randomized_benchmarking.ipynb index b39bdbf5f5..1841e9f162 100644 --- a/docs/tutorials/randomized_benchmarking.ipynb +++ b/docs/tutorials/randomized_benchmarking.ipynb @@ -71,7 +71,7 @@ "outputs": [ { "data": { - "image/png": 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\n", 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\n", 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" ] @@ -85,39 +85,39 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_RBAnalysis\n", - "- value: [0.47734677 0.99788009 0.5079666 ] ± [0.02335133 0.00022262 0.0244754 ]\n", - "- χ²: 0.06537136051261279\n", - "- extra: <3 items>\n", + "- value: [0.47325525 0.99857849 0.51482729] ± [0.04291147 0.000212 0.04348468]\n", + "- χ²: 0.18703522671877898\n", + "- extra: <4 items>\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.9978800923752141 ± 0.00022262164357317153\n", - "- χ²: 0.06537136051261279\n", + "- value: 0.9985784889003964 ± 0.0002119983752573134\n", + "- χ²: 0.18703522671877898\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.001059953812392933 ± 0.00011131082178658576\n", - "- χ²: 0.06537136051261279\n", + "- value: 0.0007107555498018225 ± 0.0001059991876286567\n", + "- χ²: 0.18703522671877898\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_rz\n", - "- value: 0.0\n", - "- χ²: 0.06537136051261279\n", + "- value: 0.0 ± 0.0\n", + "- χ²: 0.18703522671877898\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_sx\n", - "- value: 0.00043701967376250566\n", - "- χ²: 0.06537136051261279\n", + "- value: 0.0004459224608734085 ± 6.650305947119535e-05\n", + "- χ²: 0.18703522671877898\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_x\n", - "- value: 0.00043701967376250566\n", - "- χ²: 0.06537136051261279\n", + "- value: 0.0004459224608734085 ± 6.650305947119535e-05\n", + "- χ²: 0.18703522671877898\n", "- device_components: ['Q0']\n", "- verified: False\n" ] @@ -197,7 +197,7 @@ "outputs": [ { "data": { - "image/png": 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\n", 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\n", "text/plain": [ "
" ] @@ -211,27 +211,27 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_RBAnalysis\n", - "- value: [0.70644503 0.96807336 0.2586955 ] ± [0.01860711 0.00248364 0.00766733]\n", - "- χ²: 0.13597829627769353\n", - "- extra: <3 items>\n", + "- value: [0.70685802 0.97261054 0.25608402] ± [0.01683357 0.00174592 0.00944188]\n", + "- χ²: 0.1689356514437035\n", + "- extra: <4 items>\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.9680733579696933 ± 0.0024836437562722395\n", - "- χ²: 0.13597829627769353\n", + "- value: 0.9726105387641925 ± 0.0017459157854863008\n", + "- χ²: 0.1689356514437035\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.02394498152273003 ± 0.0018627328172041795\n", - "- χ²: 0.13597829627769353\n", + "- value: 0.020542095926855658 ± 0.0013094368391147256\n", + "- χ²: 0.1689356514437035\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_cx\n", - "- value: 0.012825853009261189\n", - "- χ²: 0.13597829627769353\n", + "- value: 0.011821025421045548 ± 0.0008507590378741568\n", + "- χ²: 0.1689356514437035\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n" ] @@ -254,7 +254,7 @@ "output_type": "stream", "text": [ "Backend's reported EPG of the cx gate: 0.012438847900902494\n", - "Experiment computed EPG of the cx gate: 0.012825853009261189\n" + "Experiment computed EPG of the cx gate: 0.011821025421045548 ± 0.0008507590378741568\n" ] } ], @@ -305,22 +305,22 @@ "text": [ "global phase: 0\n", " ░ ┌───┐┌─────────┐ ░ ┌────────┐┌────┐┌────────┐ ░ ┌───┐┌─────────┐ ░ »\n", - " q_0: ─░─┤ X ├┤ Rz(π/2) ├─░─┤ Rz(-π) ├┤ √X ├┤ Rz(-π) ├─░─┤ X ├┤ Rz(π/2) ├─░─»\n", + " q: ─░─┤ X ├┤ Rz(π/2) ├─░─┤ Rz(-π) ├┤ √X ├┤ Rz(-π) ├─░─┤ X ├┤ Rz(π/2) ├─░─»\n", " ░ └───┘└─────────┘ ░ └────────┘└────┘└────────┘ ░ └───┘└─────────┘ ░ »\n", "meas: 1/══════════════════════════════════════════════════════════════════════»\n", " »\n", "« ┌────────┐┌───┐ ░ ░ ┌──────────┐ ░ ┌────────┐┌────┐┌────────┐ ░ »\n", - "« q_0: ┤ Rz(-π) ├┤ X ├─░──░─┤ Rz(-π/2) ├─░─┤ Rz(-π) ├┤ √X ├┤ Rz(-π) ├─░─»\n", + "« q: ┤ Rz(-π) ├┤ X ├─░──░─┤ Rz(-π/2) ├─░─┤ Rz(-π) ├┤ √X ├┤ Rz(-π) ├─░─»\n", "« └────────┘└───┘ ░ ░ └──────────┘ ░ └────────┘└────┘└────────┘ ░ »\n", "«meas: 1/═════════════════════════════════════════════════════════════════»\n", "« »\n", "« ┌─────────┐┌────┐ ░ ┌────────┐┌────┐ ░ ┌────────┐┌────┐ ░ ┌────────┐»\n", - "« q_0: ┤ Rz(π/2) ├┤ √X ├─░─┤ Rz(-π) ├┤ √X ├─░─┤ Rz(-π) ├┤ √X ├─░─┤ Rz(-π) ├»\n", + "« q: ┤ Rz(π/2) ├┤ √X ├─░─┤ Rz(-π) ├┤ √X ├─░─┤ Rz(-π) ├┤ √X ├─░─┤ Rz(-π) ├»\n", "« └─────────┘└────┘ ░ └────────┘└────┘ ░ └────────┘└────┘ ░ └────────┘»\n", "«meas: 1/════════════════════════════════════════════════════════════════════»\n", "« »\n", "« ┌────┐┌────────┐ ░ ░ ┌─┐\n", - "« q_0: ┤ √X ├┤ Rz(-π) ├─░──░─┤M├\n", + "« q: ┤ √X ├┤ Rz(-π) ├─░──░─┤M├\n", "« └────┘└────────┘ ░ ░ └╥┘\n", "«meas: 1/═══════════════════════╩═\n", "« 0 \n" @@ -393,7 +393,7 @@ "outputs": [ { "data": { - "image/png": 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\n", 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\n", "text/plain": [ "
" ] @@ -407,27 +407,27 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_InterleavedRBAnalysis\n", - "- value: [0.46937484 0.99787803 0.9989359 0.51698123] ± [0.01233895 0.00010851 0.00015193 0.01245625]\n", - "- χ²: 0.13231343637875917\n", - "- extra: <3 items>\n", + "- value: [0.4697641 0.99857 0.99908972 0.51713843] ± [0.02208608 0.00011172 0.00013941 0.02225702]\n", + "- χ²: 0.0765870767257448\n", + "- extra: <4 items>\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.9978780306187175 ± 0.00010851496585805693\n", - "- χ²: 0.13231343637875917\n", + "- value: 0.9985699988408178 ± 0.0001117230936869531\n", + "- χ²: 0.0765870767257448\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha_c\n", - "- value: 0.9989358969928439 ± 0.0001519284713389758\n", - "- χ²: 0.13231343637875917\n", + "- value: 0.9990897165285715 ± 0.00013940662483373736\n", + "- χ²: 0.0765870767257448\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.000532051503578046 ± 7.59642356694879e-05\n", - "- χ²: 0.13231343637875917\n", + "- value: 0.00045514173571425953 ± 6.970331241686868e-05\n", + "- χ²: 0.0765870767257448\n", "- extra: <2 items>\n", "- device_components: ['Q0']\n", "- verified: False\n" @@ -476,7 +476,7 @@ "outputs": [ { "data": { - "image/png": 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\n", + "image/png": 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\n", "text/plain": [ "
" ] @@ -490,27 +490,27 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_InterleavedRBAnalysis\n", - "- value: [0.70855284 0.96968431 0.98351871 0.25798637] ± [0.01005356 0.00122526 0.00417234 0.00511482]\n", - "- χ²: 0.13149383528430175\n", - "- extra: <3 items>\n", + "- value: [0.70274796 0.97035249 0.98485742 0.26247689] ± [0.01159372 0.00171774 0.00379993 0.00627353]\n", + "- χ²: 0.10569146207959387\n", + "- extra: <4 items>\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.969684305061878 ± 0.001225255934935573\n", - "- χ²: 0.13149383528430175\n", + "- value: 0.9703524888467481 ± 0.0017177422587946788\n", + "- χ²: 0.10569146207959387\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha_c\n", - "- value: 0.9835187076175217 ± 0.004172338756402175\n", - "- χ²: 0.13149383528430175\n", + "- value: 0.984857422538254 ± 0.003799934248703551\n", + "- χ²: 0.10569146207959387\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.01236096928685873 ± 0.003129254067301631\n", - "- χ²: 0.13149383528430175\n", + "- value: 0.011356933096309474 ± 0.0028499506865276632\n", + "- χ²: 0.10569146207959387\n", "- extra: <2 items>\n", "- device_components: ['Q1', 'Q4']\n", "- verified: False\n" @@ -550,7 +550,7 @@ "- verified: False\n", "\n", "extra:\n", - "{'experiment_types': ['StandardRB', 'StandardRB', 'StandardRB'], 'experiment_ids': ['b0d730ce-b2ca-40c3-8c34-d16c313b5938', '4a3bf58e-a5f2-4a46-903d-4ddb34a670ca', '9d77eb14-b3d8-455f-bf6f-73e49bcf0177']}\n" + "{'experiment_types': ['StandardRB', 'StandardRB', 'StandardRB'], 'experiment_ids': ['62c779ac-a6a8-4c93-9fcc-d17752270350', '536588d5-35f3-4ea3-b826-aa620f7d6a40', 'c53df2f0-22e1-488a-8c37-055a95efeb9f']}\n" ] } ], @@ -586,7 +586,9 @@ { "cell_type": "code", "execution_count": 14, - "metadata": {}, + "metadata": { + "scrolled": false + }, "outputs": [ { "name": "stdout", @@ -597,7 +599,7 @@ }, { "data": { - "image/png": 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\n", + "image/png": 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\n", 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" ] @@ -611,39 +613,39 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_RBAnalysis\n", - "- value: [0.48175495 0.99791712 0.50586784] ± [0.02620521 0.0002168 0.02645333]\n", - "- χ²: 0.11392393632261068\n", - "- extra: <3 items>\n", + "- value: [0.53341098 0.99884234 0.45103783] ± [0.07602008 0.00024832 0.07745288]\n", + "- χ²: 0.025119652660208484\n", + "- extra: <4 items>\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.9979171206762044 ± 0.00021680432602452058\n", - "- χ²: 0.11392393632261068\n", + "- value: 0.9988423367790261 ± 0.00024832399199222296\n", + "- χ²: 0.025119652660208484\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.0010414396618977917 ± 0.00010840216301226029\n", - "- χ²: 0.11392393632261068\n", + "- value: 0.0005788316104869407 ± 0.00012416199599611148\n", + "- χ²: 0.025119652660208484\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_rz\n", - "- value: 0.0\n", - "- χ²: 0.11392393632261068\n", + "- value: 0.0 ± 0.0\n", + "- χ²: 0.025119652660208484\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_sx\n", - "- value: 0.0004293862769910837\n", - "- χ²: 0.11392393632261068\n", + "- value: 0.0003631544153986893 ± 7.789826307649375e-05\n", + "- χ²: 0.025119652660208484\n", "- device_components: ['Q0']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_x\n", - "- value: 0.0004293862769910837\n", - "- χ²: 0.11392393632261068\n", + "- value: 0.0003631544153986893 ± 7.789826307649375e-05\n", + "- χ²: 0.025119652660208484\n", "- device_components: ['Q0']\n", "- verified: False\n", "Component experiment 1\n" @@ -651,7 +653,7 @@ }, { "data": { - "image/png": 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\n", 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\n", 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" ] @@ -665,39 +667,39 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_RBAnalysis\n", - "- value: [0.47664067 0.99822007 0.51512506] ± [0.03962914 0.00025769 0.03987201]\n", - "- χ²: 0.12242302783386039\n", - "- extra: <3 items>\n", + "- value: [0.43578395 0.99867691 0.55470135] ± [0.05050235 0.00024692 0.05099867]\n", + "- χ²: 0.08769649860161718\n", + "- extra: <4 items>\n", "- device_components: ['Q1']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.9982200716766461 ± 0.0002576909794643549\n", - "- χ²: 0.12242302783386039\n", + "- value: 0.9986769121724647 ± 0.00024692370149939684\n", + "- χ²: 0.08769649860161718\n", "- device_components: ['Q1']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.0008899641616769705 ± 0.00012884548973217746\n", - "- χ²: 0.12242302783386039\n", + "- value: 0.0006615439137676593 ± 0.00012346185074969842\n", + "- χ²: 0.08769649860161718\n", "- device_components: ['Q1']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_rz\n", - "- value: 0.0\n", - "- χ²: 0.12242302783386039\n", + "- value: 0.0 ± 0.0\n", + "- χ²: 0.08769649860161718\n", "- device_components: ['Q1']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_sx\n", - "- value: 0.00036592299539668757\n", - "- χ²: 0.12242302783386039\n", + "- value: 0.0004137426797767616 ± 7.721548927637645e-05\n", + "- χ²: 0.08769649860161718\n", "- device_components: ['Q1']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_x\n", - "- value: 0.00036592299539668757\n", - "- χ²: 0.12242302783386039\n", + "- value: 0.0004137426797767616 ± 7.721548927637645e-05\n", + "- χ²: 0.08769649860161718\n", "- device_components: ['Q1']\n", "- verified: False\n", "Component experiment 2\n" @@ -705,7 +707,7 @@ }, { "data": { - "image/png": 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\n", + "image/png": 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\n", 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" ] @@ -719,39 +721,39 @@ "text": [ "DbAnalysisResultV1\n", "- name: @Parameters_RBAnalysis\n", - "- value: [0.46818491 0.99810666 0.51888504] ± [0.02800125 0.00021673 0.02843552]\n", - "- χ²: 0.16639796775105106\n", - "- extra: <3 items>\n", + "- value: [0.48531479 0.99886256 0.50016619] ± [0.07498507 0.00026367 0.07625529]\n", + "- χ²: 0.18400385967817393\n", + "- extra: <4 items>\n", "- device_components: ['Q2']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: alpha\n", - "- value: 0.9981066628209091 ± 0.00021672876840672393\n", - "- χ²: 0.16639796775105106\n", + "- value: 0.9988625599332613 ± 0.0002636693541015199\n", + "- χ²: 0.18400385967817393\n", "- device_components: ['Q2']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPC\n", - "- value: 0.0009466685895454519 ± 0.00010836438420336196\n", - "- χ²: 0.16639796775105106\n", + "- value: 0.0005687200333693299 ± 0.00013183467705075994\n", + "- χ²: 0.18400385967817393\n", "- device_components: ['Q2']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_rz\n", - "- value: 0.0\n", - "- χ²: 0.16639796775105106\n", + "- value: 0.0 ± 0.0\n", + "- χ²: 0.18400385967817393\n", "- device_components: ['Q2']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_sx\n", - "- value: 0.0003922032701938318\n", - "- χ²: 0.16639796775105106\n", + "- value: 0.00036027684465565616 ± 8.351557651777046e-05\n", + "- χ²: 0.18400385967817393\n", "- device_components: ['Q2']\n", "- verified: False\n", "DbAnalysisResultV1\n", "- name: EPG_x\n", - "- value: 0.0003922032701938318\n", - "- χ²: 0.16639796775105106\n", + "- value: 0.00036027684465565616 ± 8.351557651777046e-05\n", + "- χ²: 0.18400385967817393\n", "- device_components: ['Q2']\n", "- verified: False\n" ] @@ -830,7 +832,7 @@ "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", - "version": "3.9.5" + "version": "3.8.11" } }, "nbformat": 4, diff --git a/qiskit_experiments/curve_analysis/curve_analysis.py b/qiskit_experiments/curve_analysis/curve_analysis.py index d86cb1d42f..c31277304a 100644 --- a/qiskit_experiments/curve_analysis/curve_analysis.py +++ b/qiskit_experiments/curve_analysis/curve_analysis.py @@ -33,6 +33,7 @@ FitOptions, ) from qiskit_experiments.curve_analysis.curve_fit import multi_curve_fit +from qiskit_experiments.curve_analysis.data_processing import multi_mean_xy_data, data_sort from qiskit_experiments.curve_analysis.visualization import FitResultPlotters, PlotterStyle from qiskit_experiments.data_processing import DataProcessor from qiskit_experiments.data_processing.exceptions import DataProcessorError @@ -199,6 +200,8 @@ class AnalysisExample(CurveAnalysis): - Customize pre-data processing: Override :meth:`~self._format_data`. For example, here you can apply smoothing to y values, remove outlier, or apply filter function to the data. + By default, data is sorted by x values and the measured values at the same + x value are averaged. - Create extra data from fit result: Override :meth:`~self._extra_database_entry`. You need to return a list of @@ -448,7 +451,6 @@ def _format_data(self, data: CurveData) -> CurveData: """An optional subroutine to perform data pre-processing. Subclasses can override this method to apply pre-precessing to data values to fit. - Otherwise the analysis uses extracted data values as-is. For example, @@ -458,6 +460,9 @@ def _format_data(self, data: CurveData) -> CurveData: etc... + By default, the analysis just takes average over the same x values and sort + data index by the x values in ascending order. + .. note:: The data returned by this method should have the label "fit_ready". @@ -465,13 +470,32 @@ def _format_data(self, data: CurveData) -> CurveData: Returns: Formatted CurveData instance. """ + # take average over the same x value by keeping sigma + series, xdata, ydata, sigma, shots = multi_mean_xy_data( + series=data.data_index, + xdata=data.x, + ydata=data.y, + sigma=data.y_err, + shots=data.shots, + method="shots_weighted", + ) + + # sort by x value in ascending order + series, xdata, ydata, sigma, shots = data_sort( + series=series, + xdata=xdata, + ydata=ydata, + sigma=sigma, + shots=shots, + ) + return CurveData( label="fit_ready", - x=data.x, - y=data.y, - y_err=data.y_err, - data_index=data.data_index, - metadata=data.metadata, + x=xdata, + y=ydata, + y_err=sigma, + shots=shots, + data_index=series, ) # pylint: disable=unused-argument @@ -566,6 +590,9 @@ def _is_target_series(datum, **filters): # Store metadata metadata = np.asarray([datum["metadata"] for datum in data], dtype=object) + # Store shots + shots = np.asarray([datum.get("shots", np.nan) for datum in data]) + # Format data x_values = np.asarray(x_values, dtype=float) y_values = np.asarray(y_values, dtype=float) @@ -585,6 +612,7 @@ def _is_target_series(datum, **filters): x=x_values, y=y_values, y_err=y_sigmas, + shots=shots, data_index=data_index, metadata=metadata, ) @@ -733,6 +761,7 @@ def _data( x=data.x[locs], y=data.y[locs], y_err=data.y_err[locs], + shots=data.shots[locs], data_index=idx, metadata=data.metadata[locs] if data.metadata is not None else None, ) diff --git a/qiskit_experiments/curve_analysis/curve_data.py b/qiskit_experiments/curve_analysis/curve_data.py index 361e9e09f3..4e4b0e2bef 100644 --- a/qiskit_experiments/curve_analysis/curve_data.py +++ b/qiskit_experiments/curve_analysis/curve_data.py @@ -68,6 +68,9 @@ class CurveData: # Error bar y_err: np.ndarray + # Shots number + shots: np.ndarray + # Maping of data index to series index data_index: Union[np.ndarray, int] diff --git a/qiskit_experiments/curve_analysis/data_processing.py b/qiskit_experiments/curve_analysis/data_processing.py index 36e69d75b8..a06cfbbd28 100644 --- a/qiskit_experiments/curve_analysis/data_processing.py +++ b/qiskit_experiments/curve_analysis/data_processing.py @@ -47,7 +47,11 @@ def filter_data(data: List[Dict[str, any]], **filters) -> List[Dict[str, any]]: def mean_xy_data( - xdata: np.ndarray, ydata: np.ndarray, sigma: Optional[np.ndarray] = None, method: str = "sample" + xdata: np.ndarray, + ydata: np.ndarray, + sigma: Optional[np.ndarray] = None, + shots: Optional[np.ndarray] = None, + method: str = "sample", ) -> Tuple[np.ndarray, ...]: r"""Return (x, y_mean, sigma) data. @@ -61,6 +65,12 @@ def mean_xy_data( * ``"iwv"`` *Inverse-weighted variance* :math:`\overline{y} = (\sum_{i=1}^N y_i / \sigma_i^2 ) \sigma^2` :math:`\sigma^2 = 1 / (\sum_{i=1}^N 1 / \sigma_i^2)` + * ``"shots_weighted_variance"`` *Sample mean and variance with weights from shots* + :math:`\overline{y} = \sum_{i=1}^N n_i y_i / M`, + :math:`\sigma^2 = \sum_{i=1}^N (n_i \sigma_i / M)^2`, + where :math:`n_i` is the number of shots per data point and :math:`M = \sum_{i=1}^N n_i` + is a total number of shots from different circuit execution at the same x value. + If ``shots`` is not provided, this applies uniform weights to all values. Args xdata: 1D or 2D array of xdata from curve_fit_data or @@ -68,14 +78,18 @@ def mean_xy_data( ydata: array of ydata returned from curve_fit_data or multi_curve_fit_data sigma: Optional, array of standard deviations in ydata. + shots: Optional, array of shots used to get a data point. method: The method to use for computing y means and standard deviations sigma (default: "sample"). Returns: - tuple: ``(x, y_mean, sigma)`` if ``return_raw==False``, where + tuple: ``(x, y_mean, sigma, shots)``, where ``x`` is an arrays of unique x-values, ``y`` is an array of - sample mean y-values, and ``sigma`` is an array of sample standard - deviation of y values. + sample mean y-values, ``sigma`` is an array of sample standard + deviation of y values, and ``shots`` are the total number of experiment shots + used to evaluate the data point. If ``shots`` in the function call is ``None``, + the numbers appear in the returned value will represent just a number of + duplicated x value entries. Raises: QiskitError: if "ivw" method is used without providing a sigma. @@ -83,6 +97,11 @@ def mean_xy_data( x_means = np.unique(xdata, axis=0) y_means = np.zeros(x_means.size) y_sigmas = np.zeros(x_means.size) + y_shots = np.zeros(x_means.size) + + if shots is None or any(np.isnan(shots)): + # this will become standard average + shots = np.ones_like(xdata) # Sample mean and variance method if method == "sample": @@ -90,12 +109,14 @@ def mean_xy_data( # Get positions of y to average idxs = xdata == x_means[i] ys = ydata[idxs] + ns = shots[idxs] # Compute sample mean and biased sample variance y_means[i] = np.mean(ys) y_sigmas[i] = np.sqrt(np.mean((y_means[i] - ys) ** 2)) + y_shots[i] = np.sum(ns) - return x_means, y_means, y_sigmas + return x_means, y_means, y_sigmas, y_shots # Inverse-weighted variance method if method == "iwv": @@ -107,14 +128,33 @@ def mean_xy_data( # Get positions of y to average idxs = xdata == x_means[i] ys = ydata[idxs] + ns = shots[idxs] # Compute the inverse-variance weighted y mean and variance weights = 1 / sigma[idxs] ** 2 y_var = 1 / np.sum(weights) y_means[i] = y_var * np.sum(weights * ys) y_sigmas[i] = np.sqrt(y_var) + y_shots[i] = np.sum(ns) + + return x_means, y_means, y_sigmas, y_shots + + # Quadrature sum of variance + if method == "shots_weighted": + for i in range(x_means.size): + # Get positions of y to average + idxs = xdata == x_means[i] + ys = ydata[idxs] + ss = sigma[idxs] + ns = shots[idxs] + weights = ns / np.sum(ns) + + # Compute sample mean and sum of variance with weights based on shots + y_means[i] = np.sum(weights * ys) + y_sigmas[i] = np.sqrt(np.sum(weights ** 2 * ss ** 2)) + y_shots[i] = np.sum(ns) - return x_means, y_means, y_sigmas + return x_means, y_means, y_sigmas, y_shots # Invalid method raise QiskitError(f"Unsupported method {method}") @@ -125,11 +165,27 @@ def multi_mean_xy_data( xdata: np.ndarray, ydata: np.ndarray, sigma: Optional[np.ndarray] = None, + shots: Optional[np.ndarray] = None, method: str = "sample", -): - r"""Return (series, x, y_mean, sigma) data. - Performs `mean_xy_data` for each series - and returns the concatenated results +) -> Tuple[np.ndarray, np.ndarray, np.ndarray, np.ndarray, np.ndarray]: + """Take mean of multi series data set. + + Args: + series: Series index. + xdata: 1D or 2D array of xdata from curve_fit_data or + multi_curve_fit_data + ydata: array of ydata returned from curve_fit_data or + multi_curve_fit_data + sigma: Optional, array of standard deviations in ydata. + shots: Optional, array of shots used to get a data point. + method: The method to use for computing y means and + standard deviations sigma (default: "sample"). + + Returns: + Tuple of (series, xdata, ydata, sigma, shots) + + See also: + :py:func:`~qiskit_experiments.curve_analysis.data_processing.mean_xy_data` """ series_vals = np.unique(series) @@ -137,18 +193,22 @@ def multi_mean_xy_data( xdata_means = [] ydata_means = [] sigma_means = [] + shots_sums = [] # Get x, y, sigma data for series and process mean data for series_val in series_vals: idxs = series == series_val sigma_i = sigma[idxs] if sigma is not None else None - x_mean, y_mean, sigma_mean = mean_xy_data( - xdata[idxs], ydata[idxs], sigma=sigma_i, method=method + shots_i = shots[idxs] if shots is not None else None + + x_mean, y_mean, sigma_mean, shots_sum = mean_xy_data( + xdata[idxs], ydata[idxs], sigma=sigma_i, shots=shots_i, method=method ) series_means.append(np.full(x_mean.size, series_val, dtype=int)) xdata_means.append(x_mean) ydata_means.append(y_mean) sigma_means.append(sigma_mean) + shots_sums.append(shots_sum) # Concatenate lists return ( @@ -156,9 +216,48 @@ def multi_mean_xy_data( np.concatenate(xdata_means), np.concatenate(ydata_means), np.concatenate(sigma_means), + np.concatenate(shots_sums), ) +def data_sort( + series: np.ndarray, + xdata: np.ndarray, + ydata: np.ndarray, + sigma: Optional[np.ndarray] = None, + shots: Optional[np.ndarray] = None, +) -> Tuple[np.ndarray, np.ndarray, np.ndarray, np.ndarray, np.ndarray]: + """Sort data. + + Input x values may not be lined up in order, since experiment may accept user input array, + or data may be concatenated with previous scan. This sometimes confuses the algorithmic + generation of initial guesses especially when guess depends on derivative. + + This returns data set that is sorted by xdata and series in ascending order. + + Args: + series: Series index. + xdata: 1D or 2D array of xdata from curve_fit_data or + multi_curve_fit_data + ydata: array of ydata returned from curve_fit_data or + multi_curve_fit_data + sigma: Optional, array of standard deviations in ydata. + shots: Optional, array of shots used to get a data point. + + Returns: + Tuple of (series, xdata, ydata, sigma, shots) sorted in ascending order of xdata and series. + """ + if sigma is None: + sigma = np.full(series.size, np.nan, dtype=float) + + if shots is None: + shots = np.full(series.size, np.nan, dtype=float) + + sorted_data = sorted(zip(series, xdata, ydata, sigma, shots), key=lambda d: (d[0], d[1])) + + return np.asarray(sorted_data).T + + def level2_probability(data: Dict[str, any], outcome: str) -> Tuple[float, float]: """Return the outcome probability mean and variance. diff --git a/qiskit_experiments/curve_analysis/guess.py b/qiskit_experiments/curve_analysis/guess.py index faef1b1955..2a039f706f 100644 --- a/qiskit_experiments/curve_analysis/guess.py +++ b/qiskit_experiments/curve_analysis/guess.py @@ -22,7 +22,6 @@ from scipy import signal from qiskit_experiments.exceptions import AnalysisError -from .data_processing import mean_xy_data def frequency( @@ -48,6 +47,7 @@ def frequency( This function returns always positive frequency. This function is sensitive to the DC offset. + This function assumes sorted, no-overlapping x values. Args: x: Array of x values. @@ -58,14 +58,6 @@ def frequency( Returns: Frequency estimation of oscillation signal. """ - # TODO averaging and sort should be done by data processor - - # average the same data points - x, y, _ = mean_xy_data(x, y) - - # sorted by x to be monotonic increase - x, y = np.asarray(sorted(zip(x, y), key=lambda xy: xy[0])).T - # to run FFT x interval should be identical sampling_interval = np.unique(np.round(np.diff(x), decimals=20)) diff --git a/qiskit_experiments/library/randomized_benchmarking/rb_analysis.py b/qiskit_experiments/library/randomized_benchmarking/rb_analysis.py index 3159c16e2e..62c6e720a1 100644 --- a/qiskit_experiments/library/randomized_benchmarking/rb_analysis.py +++ b/qiskit_experiments/library/randomized_benchmarking/rb_analysis.py @@ -18,7 +18,7 @@ import numpy as np import qiskit_experiments.curve_analysis as curve -from qiskit_experiments.curve_analysis.data_processing import multi_mean_xy_data +from qiskit_experiments.curve_analysis.data_processing import multi_mean_xy_data, data_sort from qiskit_experiments.database_service.device_component import Qubit from qiskit_experiments.framework import AnalysisResultData, FitVal from .rb_utils import RBUtils @@ -134,20 +134,33 @@ def _initial_guess( return opt def _format_data(self, data: curve.CurveData) -> curve.CurveData: - """Take average over the same x values.""" - mean_data_index, mean_x, mean_y, mean_e = multi_mean_xy_data( + """Data format with averaging with sampling strategy.""" + # take average over the same x value by regenerating sigma from variance of y values + series, xdata, ydata, sigma, shots = multi_mean_xy_data( series=data.data_index, xdata=data.x, ydata=data.y, sigma=data.y_err, + shots=data.shots, method="sample", ) + + # sort by x value in ascending order + series, xdata, ydata, sigma, shots = data_sort( + series=series, + xdata=xdata, + ydata=ydata, + sigma=sigma, + shots=shots, + ) + return curve.CurveData( label="fit_ready", - x=mean_x, - y=mean_y, - y_err=mean_e, - data_index=mean_data_index, + x=xdata, + y=ydata, + y_err=sigma, + shots=shots, + data_index=series, ) def _extra_database_entry(self, fit_data: curve.FitData) -> List[AnalysisResultData]: diff --git a/releasenotes/notes/add-new-xy-mean-strategy-45cf11e86c0919c5.yaml b/releasenotes/notes/add-new-xy-mean-strategy-45cf11e86c0919c5.yaml new file mode 100644 index 0000000000..053b051c38 --- /dev/null +++ b/releasenotes/notes/add-new-xy-mean-strategy-45cf11e86c0919c5.yaml @@ -0,0 +1,8 @@ +--- +features: + - | + ``shots_weighted`` options is added to :py:func:`~qiskit_experiments.curve_analysis.\ + data_processing.mean_xy_data` and :py:func:`~qiskit_experiments.curve_analysis.\ + data_processing.multi_mean_xy_data`. This options will change averaging stategy to + compute value and sigma of y data by weighted average and weighed sum of variances, + respectively. The number of shots used to obtain the data point is used as a weight. diff --git a/releasenotes/notes/update-curve-analysis-pre-process-9cc2aefc449d2bb0.yaml b/releasenotes/notes/update-curve-analysis-pre-process-9cc2aefc449d2bb0.yaml new file mode 100644 index 0000000000..c9a175a6af --- /dev/null +++ b/releasenotes/notes/update-curve-analysis-pre-process-9cc2aefc449d2bb0.yaml @@ -0,0 +1,8 @@ +--- +other: + - | + Default data pre-processing for fit data is added to the :py:class:`~qiskit_experiments.\ + curve_analysis.curve_analysis.CurveAnalysis`. The input data to the analysis are + averaged over the same x values and sorted by x values. This processing is necessary to + correctly analyze an experimental data which has multiple same x values, e.g. run experiment + with the previous experimental data. diff --git a/test/curve_analysis/test_curve_fitting.py b/test/curve_analysis/test_curve_fitting.py index c7f1f1b4f7..0d6b5c0de9 100644 --- a/test/curve_analysis/test_curve_fitting.py +++ b/test/curve_analysis/test_curve_fitting.py @@ -120,7 +120,7 @@ def test_mean_xy_data(self): # pylint: disable=unbalanced-tuple-unpacking x = np.array([1, 1, 1, 2, 2, 2, 2, 3, 3, 4, 5, 5, 5, 5]) y = np.array([1, 2, 3, 8, 10, 50, 60, 10, 11, 17, 10, 10, 10, 10]) - x_mean, y_mean, y_sigma = mean_xy_data(x, y, method="sample") + x_mean, y_mean, y_sigma, _ = mean_xy_data(x, y, method="sample") expected_x_mean = np.array([1, 2, 3, 4, 5]) expected_y_mean = np.array([2, 32, 10.5, 17, 10]) @@ -130,17 +130,28 @@ def test_mean_xy_data(self): self.assertTrue(np.allclose(expected_y_sigma, y_sigma)) sigma = np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14]) - x_mean, y_mean, y_sigma = mean_xy_data(x, y, sigma, method="iwv") + x_mean, y_mean, y_sigma, _ = mean_xy_data(x, y, sigma, method="iwv") expected_y_mean = np.array([1.34693878, 23.31590234, 10.44137931, 17.0, 10.0]) expected_y_sigma = np.array([0.85714286, 2.57610543, 5.97927455, 10.0, 6.17470935]) self.assertTrue(np.allclose(expected_x_mean, x_mean)) self.assertTrue(np.allclose(expected_y_mean, y_mean)) self.assertTrue(np.allclose(expected_y_sigma, y_sigma)) + sigma = np.array([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14]) + shots = np.array([10, 20, 10, 30, 20, 10, 40, 10, 10, 20, 30, 20, 30, 10]) + x_mean, y_mean, y_sigma, y_shots = mean_xy_data(x, y, sigma, shots, method="shots_weighted") + expected_y_mean = np.array([2.0, 33.4, 10.5, 17.0, 10.0]) + expected_y_sigma = np.array([1.27475488, 3.26190129, 6.02079729, 10.0, 6.46166282]) + expected_y_shots = np.array([40, 100, 20, 20, 90]) + self.assertTrue(np.allclose(expected_x_mean, x_mean)) + self.assertTrue(np.allclose(expected_y_mean, y_mean)) + self.assertTrue(np.allclose(expected_y_sigma, y_sigma)) + self.assertTrue(np.allclose(expected_y_shots, y_shots)) + x = np.array([1, 1, 1, 1, 2, 2, 2, 2]) y = np.array([2, 6, 100, 200, 17, 50, 60, 70]) series = np.array([0, 0, 1, 1, 0, 1, 1, 1]) - series, x_mean, y_mean, y_sigma = multi_mean_xy_data(series, x, y, method="sample") + series, x_mean, y_mean, y_sigma, _ = multi_mean_xy_data(series, x, y, method="sample") expected_x_mean = np.array([1, 2, 1, 2]) expected_y_mean = np.array([4, 17, 150, 60]) expected_y_sigma = np.sqrt(np.array([4.0, 0.0, 2500.0, 66.66666667])) diff --git a/test/curve_analysis/test_guess.py b/test/curve_analysis/test_guess.py index b83b4f5447..d7994059fd 100644 --- a/test/curve_analysis/test_guess.py +++ b/test/curve_analysis/test_guess.py @@ -44,7 +44,7 @@ def test_frequency(self, freq: float): @data(1.1, 2.0, 1.6, -1.4, 4.5) def test_frequency_with_non_uniform_sampling(self, freq: float): """Test for frequency guess with non uniform x value.""" - x = np.concatenate((np.linspace(-1, 0, 15), np.linspace(0, 1, 30))) + x = np.concatenate((np.linspace(-1, 0, 15), np.linspace(0.1, 1, 30))) y = 0.3 * np.cos(2 * np.pi * freq * x + 0.5) + 1.2 freq_guess = guess.frequency(x, y) diff --git a/test/randomized_benchmarking/rb_interleaved_1qubit_output_analysis.json b/test/randomized_benchmarking/rb_interleaved_1qubit_output_analysis.json index 0bb602d396..db5018c04a 100644 --- a/test/randomized_benchmarking/rb_interleaved_1qubit_output_analysis.json +++ b/test/randomized_benchmarking/rb_interleaved_1qubit_output_analysis.json @@ -1 +1 @@ -[{"name": "@Parameters_InterleavedRBAnalysis", "value": {"__type__": "__object__", "__value__": {"__name__": "FitVal", "__module__": "qiskit_experiments.database_service.db_fitval", "__kwargs__": {"value": {"__type__": "array", "__value__": [0.5034561671663651, 0.9994727949681657, 0.9977551279697571, 0.49581463461118536]}, "stderr": {"__type__": "array", 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