KinFinder Casting
Compare casting candidates by quantum fidelity so directors pick the closest match in one tap.
SWAP testยท similarity
Section ยท Quantum
full primer โThe hook.
Two casting candidates go into a quantum similarity check; the app shows directors a single 0โ100% match score so they can pick the closest one in a tap.
Why this primitiveSWAP test is the right primitive here because casting reduces to a similarity problem; the kernel returns a result you can drop straight into the UI.
Kernel
a 2-register SWAP-test kernel returning fidelity in [0,1] between two amplitude-encoded vectors
Drives the UI as
a similarity score (0-100%) and a 'closest match' surface
Appendix A
The mega-prompt.
This prompt is engineered to ship in a single Lovable build. Real Quantinuum Guppy/Selene circuit runs in the Linux sandbox at build time and the results are baked in as JSON. read the build strategy โ
~14.3 KB297 lines1 msg ยท ~5 credits
Build "KinFinder Casting" โ a one-page quantum casting-match app for theater directors.
โ ๏ธ BUDGET: Lovable FREE tier (~5 credits). Ship in ONE message. No auth, no database, no Lovable Cloud.
โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
BUILD ORDER (follow exactly):
1. **Quantum kernel (build-time only)**
- Run: `pip install guppylang selene-sim` in sandbox.
- Create `quantum/kernel.py`: a real .py file with a @guppy 2-register SWAP-test kernel that encodes two amplitude vectors and returns fidelity โ [0,1]. Use Guppy syntax; Guppy reads source via inspect.getsource.
- Create `quantum/run.py`: import kernel, compile to Selene (โค8 qubits), run 256 shots over 10 candidate ร 10 reference vectors (100 fidelities total). Write results to `src/data/quantum-results.json` as array of {input, output} where output.fidelity โ [0,1].
- Execute `quantum/run.py` ONCE during build. Commit `src/data/quantum-results.json` with real Selene output.
2. **Frontend (TanStack Start, single route /)**
- Import `src/data/quantum-results.json` statically.
- Layout: use shadcn Card (left picker), Card (center visual), Badge + Slider (right score).
- Left: Tabs component listing 10 candidates; click to select.
- Center: Card showing selected candidate name + reference vector ID.
- Right: Badge displaying fidelity as 0โ100% similarity; Slider (disabled, visual only) at same value.
- Bottom: Card with "About the quantum" section + collapsible "Quantum trace" (show raw fidelity + "View Guppy source" toggle that renders quantum/kernel.py inline).
3. **Design**
- Dark theme (bg-slate-900, text-white).
- Accent: deep purple (#7c3aed) for theater mood.
- Font: Geist (default).
- Micro-interaction: fade + scale on candidate selection.
4. **Validation**
- Every number on screen traces to src/data/quantum-results.json (real Selene output).
- Judges see genuine SWAP-test kernel source inline.
Deliver a single deploy. No runtime Python calls.
--- QUANTINUUM APPENDIX (self-contained reference โ paste verbatim) ---
[1] INSTALL (Lovable Linux sandbox):
python -m pip install --no-cache-dir guppylang selene-sim
[2] IMPORTS (use exactly these โ no other quantum libs):
# quantum/kernel.py and quantum/run.py top
from guppylang import guppy
from guppylang.std.builtins import result
from guppylang.std.quantum import qubit, h, cx, rx, ry, rz, measure, discard, t as tgate, tdg
from guppylang.std.angles import angle, pi
from selene_sim import build, Quest
import math, json, sys, tempfile, importlib.util, uuid
from pathlib import Path
[3] HARD RULES (violating any breaks the build):
- @guppy reads source via inspect.getsource โ kernels MUST live in a real .py file on disk. No exec(), no REPL strings, no inline templates.
- Allowed gate set ONLY: h, rx, ry, rz, cx, tgate, tdg. There is NO native ccx/toffoli, cswap, cphase, or crz โ decompose using the snippets in [7].
- Qubit ownership: a qubit passed to a function is moved. You MUST measure() or discard() every qubit exactly once; never reuse after measure.
- Angle hygiene before baking a float into generated source:
theta = ((theta + math.pi) % (2.0 * math.pi)) - math.pi
and write it with repr: f"... {theta!r} ..." (str(float) can truncate).
[4] SELENE SHOT LOOP (canonical):
compiled = my_kernel.compile()
runner = build(compiled)
shots = []
for shot in runner.run_shots(Quest(), n_qubits=N, n_shots=S):
shots.append({str(lbl): int(v) for lbl, v in shot})
# N = MAX number of qubits simultaneously LIVE in the kernel.
# measure(q) releases the slot, so one ancilla reused across k windows still counts as 1.
[5] DRIVER PATTERN โ sweep a kernel over many inputs (closures do NOT work):
ROOT = Path(__file__).resolve().parent.parent
if str(ROOT) not in sys.path: sys.path.insert(0, str(ROOT))
def run_one(params: dict, shots: int = 256):
# Bake params as literals into a fresh .py file that imports your kernel helpers.
src = (
"from quantum.kernel import guppy, my_helper\n"
"@guppy\n"
"def program() -> None:\n"
f" my_helper({params['a']!r}, {params['b']!r})\n"
)
tmp = Path(tempfile.gettempdir()) / "qprogs"; tmp.mkdir(exist_ok=True)
name = f"prog_{uuid.uuid4().hex[:8]}"
path = tmp / f"{name}.py"; path.write_text(src)
spec = importlib.util.spec_from_file_location(name, path)
mod = importlib.util.module_from_spec(spec)
sys.modules[name] = mod # register BEFORE exec_module
spec.loader.exec_module(mod)
runner = build(mod.program.compile())
out = []
for shot in runner.run_shots(Quest(), n_qubits=5, n_shots=shots):
out.append({str(l): int(v) for l, v in shot})
return out
[6] PER-QUBIT INTEGER DECODE (host-side):
# kernel emits: for j in range(n): result(f"x{j}", measure(q[j]))
def decode(rec, n):
x = 0
for j in range(n): x |= (rec.get(f"x{j}", 0) & 1) << j
return x
[7] DECOMPOSITION LIBRARY (copy verbatim into quantum/kernel.py):
# ---- Toffoli (CCX) from H, CX, T, Tdg โ 6-T standard decomposition ----
@guppy
def toffoli(c1: qubit, c2: qubit, tgt: qubit) -> None:
h(tgt)
cx(c2, tgt); tdg(tgt)
cx(c1, tgt); tgate(tgt)
cx(c2, tgt); tdg(tgt)
cx(c1, tgt); tgate(c2); tgate(tgt)
h(tgt)
cx(c1, c2); tgate(c1); tdg(c2)
cx(c1, c2)
# ---- CSWAP (Fredkin) from CX + Toffoli ----
@guppy
def cswap(c: qubit, a: qubit, b: qubit) -> None:
cx(b, a)
toffoli(c, a, b)
cx(b, a)
# ---- Controlled phase exp(i*theta) on |11> from rz + cx ----
@guppy
def cphase(c: qubit, d: qubit, theta: float) -> None:
rz(d, angle(theta / 2.0))
cx(c, d)
rz(d, angle(-theta / 2.0))
cx(c, d)
# ---- Amplitude-encoded feature state (3 floats in [0,1] โ 2-qubit state) ----
@guppy
def prep_features(q0: qubit, q1: qubit, a: float, b: float, c: float) -> None:
ry(q0, angle(a))
ry(q1, angle(b))
cx(q0, q1)
rz(q1, angle(c))
# ---- SWAP test kernel; HOST inverts: F = clamp(2*P(anc=0) - 1, 0, 1) ----
@guppy
def swap_test(ai: float, bi: float, ci: float,
aj: float, bj: float, cj: float) -> None:
anc = qubit()
pi0 = qubit(); pi1 = qubit()
pj0 = qubit(); pj1 = qubit()
prep_features(pi0, pi1, ai, bi, ci)
prep_features(pj0, pj1, aj, bj, cj)
h(anc)
cswap(anc, pi0, pj0)
cswap(anc, pi1, pj1)
h(anc)
result("anc", measure(anc))
discard(pi0); discard(pi1); discard(pj0); discard(pj1)
# n_qubits = 5 for swap_test above.
[8] CLASSICAL CROSS-CHECK (NumPy reference โ commit alongside quantum result):
import numpy as np
I = np.eye(2); X = np.array([[0,1],[1,0]])
def RY(t): c,s = math.cos(t/2), math.sin(t/2); return np.array([[c,-s],[s,c]])
def RZ(t): return np.array([[np.exp(-1j*t/2),0],[0,np.exp(1j*t/2)]])
CX = np.array([[1,0,0,0],[0,1,0,0],[0,0,0,1],[0,0,1,0]])
def prep_psi(a,b,c):
s = np.kron(RY(a)@np.array([1,0]), RY(b)@np.array([1,0]))
s = CX @ s
s = np.kron(I, RZ(c)) @ s
return s
def classical_fidelity(p, q):
return float(abs(np.vdot(prep_psi(*p), prep_psi(*q)))**2)
# Commit BOTH quantum and classical values per record:
# {"input": [...], "quantum": 0.873, "classical": 0.881, "shots": 256}
[9] FRONTEND HANDOFF (TanStack Start):
# quantum/run.py last step:
Path("src/data/quantum-results.json").write_text(json.dumps({
"records": records, # list of {input, quantum, classical, ...}
"circuit": {"n_qubits": 5, "shots": 256},
"kernel_source": Path("quantum/kernel.py").read_text(), # show on /code tab
}, indent=2))
# In React: import data from "@/data/quantum-results.json" (resolveJsonModule:true).
# Render data.records; render data.kernel_source in a <pre> inside the Quantum trace tab.
[10] BUILD ORDER (do not deviate โ keeps you under 5 credits):
1. Write quantum/kernel.py with the helpers from [7] you actually need.
2. Write quantum/run.py: driver pattern from [5], Selene loop from [4], cross-check from [8], JSON write from [9].
3. Execute once: python quantum/run.py (commit src/data/quantum-results.json).
4. Build the React route: static JSON import, shadcn Card + Tabs + Slider + Badge wiring.
5. Deploy. No Python at runtime; every on-screen number traces to committed Selene output.
[11] OUTPUT CONTRACT โ selene_run v1 (write this exact shape to src/data/quantum-results.json):
{
"schemaVersion": 1,
"experiment": "<idea-slug>",
"title": "<idea title>",
"description": "<one plain-English sentence โ what a non-quantum dev sees>",
"kernel": { "snippet": "<first 40 lines of quantum/kernel.py>", "qubits": <int>, "shotsPerRow": <int> },
"verdict": { "text": "<one-sentence headline of the result>", "good": true },
"metrics": [ { "name": "<label>", "value": <number>, "unit": "<%|bits|Hz|...>", "good": true } ],
"series": [ { "id": "<id>", "kind": "histogram"|"bar"|"line", "title": "...",
"xLabel": "...", "yLabel": "...", "yKeys": ["count"],
"points": [ { "label": "<x>", "values": { "count": <num> } } ] } ]
}
Reason: one schema = one renderer = a polished demo without bespoke React per idea.
All metric / series VALUES must come from real Selene shot data committed in step 3 โ no mocks.
[12] RENDERER โ create src/components/SeleneRunView.tsx with EXACTLY this body (no deps beyond react + tailwind):
import * as React from "react";
type Point = { label: string; values: Record<string, number> };
type Series = { id: string; kind: "histogram"|"bar"|"line"; title: string;
xLabel?: string; yLabel?: string; yKeys: string[]; points: Point[] };
type Metric = { name: string; value: number; unit?: string; good?: boolean };
export type SeleneRun = {
schemaVersion: 1; experiment: string; title: string; description: string;
kernel: { snippet: string; qubits: number; shotsPerRow: number };
verdict: { text: string; good: boolean };
metrics: Metric[]; series: Series[]; notes?: string;
};
const fmt = (n: number) => Math.abs(n) >= 100 ? n.toFixed(0) : Math.abs(n) >= 1 ? n.toFixed(2) : n.toFixed(3);
function Bars({ s }: { s: Series }) {
const max = Math.max(1, ...s.points.flatMap(p => s.yKeys.map(k => p.values[k] ?? 0)));
return (
<div className="space-y-1">
{s.points.map((p, i) => (
<div key={i} className="flex items-center gap-2 text-xs">
<div className="w-20 truncate text-muted-foreground">{p.label}</div>
<div className="flex-1 h-3 bg-muted rounded-sm overflow-hidden">
<div className="h-full bg-primary" style={{ width: `${(100*(p.values[s.yKeys[0]]??0))/max}%` }} />
</div>
<div className="w-12 text-right tabular-nums">{fmt(p.values[s.yKeys[0]]??0)}</div>
</div>
))}
</div>
);
}
function Line({ s }: { s: Series }) {
const W=320, H=120, P=20;
const ys = s.points.map(p => p.values[s.yKeys[0]] ?? 0);
const min = Math.min(...ys), max = Math.max(...ys), span = max - min || 1;
const pts = ys.map((y, i) => {
const x = P + (i*(W-2*P))/Math.max(1, ys.length-1);
const yy = H - P - ((y - min)/span)*(H - 2*P);
return `${x},${yy}`;
}).join(" ");
return (
<svg viewBox={`0 0 ${W} ${H}`} className="w-full h-32">
<polyline fill="none" stroke="currentColor" strokeWidth="2" points={pts} className="text-primary" />
</svg>
);
}
export function SeleneRunView({ run }: { run: SeleneRun }) {
return (
<div className="space-y-6">
<header>
<div className="text-xs uppercase tracking-wider text-muted-foreground">{run.experiment}</div>
<h2 className="text-2xl font-semibold">{run.title}</h2>
<p className="text-sm text-muted-foreground">{run.description}</p>
<div className={`mt-2 inline-block px-3 py-1 rounded-full text-xs ${run.verdict.good?"bg-emerald-500/15 text-emerald-400":"bg-amber-500/15 text-amber-400"}`}>
{run.verdict.text}
</div>
</header>
<section className="grid grid-cols-2 md:grid-cols-4 gap-3">
{run.metrics.map((m, i) => (
<div key={i} className="rounded-lg border border-border p-3">
<div className="text-[10px] uppercase tracking-wider text-muted-foreground">{m.name}</div>
<div className="text-xl font-semibold tabular-nums">{fmt(m.value)}<span className="text-xs text-muted-foreground ml-1">{m.unit}</span></div>
</div>
))}
</section>
<section className="space-y-6">
{run.series.map(s => (
<div key={s.id} className="rounded-lg border border-border p-4">
<div className="flex items-baseline justify-between mb-3">
<div className="text-sm font-medium">{s.title}</div>
<div className="text-[10px] text-muted-foreground">{s.xLabel} / {s.yLabel}</div>
</div>
{s.kind === "line" ? <Line s={s} /> : <Bars s={s} />}
</div>
))}
</section>
<footer className="text-[11px] text-muted-foreground">
kernel: {run.kernel.qubits} qubits ยท {run.kernel.shotsPerRow} shots/row
</footer>
</div>
);
}
Then in the route: import data from "@/data/quantum-results.json"; <SeleneRunView run={data as any} />.
Quantum trace tab: <pre>{data.kernel.snippet}</pre>.
[HOOK] SWAP TEST โ state-vector fidelity.
Use swap_test() and prep_features() verbatim from [7].
Host inversion (per pair): p0 = zeros/S; F = max(0.0, min(1.0, 2.0*p0 - 1.0)).
n_qubits = 1 (anc) + 2*reg_size. Each shot emits one ("anc", bit).
selene_run mapping:
metrics: [ {"name":"avg fidelity","value":mean_F,"unit":"%","good":mean_F>0.5},
{"name":"best pair","value":best_F,"unit":"%","good":true} ]
series: [ {"id":"fidelity-hist","kind":"histogram","title":"Fidelity distribution",
"xLabel":"bucket","yLabel":"pairs","yKeys":["count"],
"points":[{"label":f"{b:.1f}","values":{"count":n}} for b,n in hist]},
{"id":"top-pairs","kind":"bar","title":"Top-5 closest pairs",
"xLabel":"pair","yLabel":"F","yKeys":["count"],
"points":[{"label":lbl,"values":{"count":F}} for lbl,F in top5]} ]Market sizing.
TAM
$26.0B
the live performance market (~$30B globally) with >100K active companies.
SAM
$5.7B
the 22% of that market actively buying casting-adjacent software.
SOM
$458M
a realistic 8% capture of the serviceable slice in years 1โ3 via the hackathon launch and creator-led distribution.
Indicative figures for hackathon pitches โ refine with your own research before raising.
Adjacent entries.
script analysis
Resonance Analysis
Compare script analysis candidates by quantum fidelity so directors pick the closest match in one tap.
cue programmingTwin Programming
Compare cue programming candidates by quantum fidelity so directors pick the closest match in one tap.
blocking diagramsMirror Diagram
Compare blocking diagrams candidates by quantum fidelity so directors pick the closest match in one tap.
castingForm Casting
Reveal the topological shape (clusters, loops, voids) hiding inside casting so directors read structure at a glance.