๐ŸŽฅ Videography & Film ยท B-roll matching

Loadout Matching

Encode b-roll matching as an amplitude vector and plot the embedding so editors navigate possibilities visually.

Amplitude encodingยท embeddings
Section ยท Quantum

The hook.

full primer โ†’

B-roll matching is encoded as a quantum vector and projected onto a 2D map; videographers navigate the option space visually instead of guessing parameters.

Why this primitiveAmplitude encoding is the right primitive here because B-roll matching reduces to a embeddings problem; the kernel returns a result you can drop straight into the UI.

Kernel
an amplitude-encoding kernel that loads a normalized feature vector into log2(d) qubits and measures expectation values
Drives the UI as
a low-dimensional embedding scatter that updates as inputs change
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†’

~14.4 KB285 lines1 msg ยท ~5 credits
Open in Lovable โ†—
Appendix B

Market sizing.

TAM
$15.0B
the video editing software market (~$1.1B) and >50M creators.
SAM
$2.5B
the 17% of that market actively buying B-roll matching-adjacent software.
SOM
$178M
a realistic 7% capture of the serviceable slice in years 1โ€“3 via the hackathon launch and creator-led distribution.

Indicative figures for hackathon pitches โ€” refine with your own research before raising.

See also

Adjacent entries.