Canonical:
kevinqz/RIFE-Frame-Interpolation-CoreAIβ source of truth.
RIFE Frame Interpolation (fabric)
An Apple Core AI conversion of TensorForger/RIFE-safetensors β a frame interpolation network that takes two stacked RGB frames and synthesizes the intermediate frame between them. Produced by coreai-fabric and indexed by coreai-catalog.
Frame interpolation, not a generator. This is a single-forward interpolator β two frames in, one synthesized frame at t=0.5 out. No temporal model, no audio. The host owns frame decode/encode and resizing each frame to a multiple of 32 before feeding the graph.
Model facts
| Field | Value |
|---|---|
| Parameters | 0.01B |
| Architecture | cnn/transformer |
| Capabilities | super-resolution |
| Input | 1Γ6Γ256Γ256 β concat(img0[:3], img1[3:]) in [0,1] |
| Output frame | 1Γ3Γ256Γ256 @ t=0.5 |
| Quantization / precision | none / float32 |
| On-disk size | 17 MB |
| Asset kind | single-graph frame interpolator (two frames -> middle frame) |
| assetVersion | 2.0 |
Use it β this needs host code you supply
The bundle is a single static-size graph: frames (1Γ6Γ256Γ256, img0 and img1 concatenated on the channel axis, RGB in [0,1]) in β the interpolated frame (1Γ3Γ256Γ256) out. You supply the video demux/mux, frame resizing, and any multi-t or recursive-interpolation loop in your host code (Swift or Python).
pip install coreai-catalog && coreai-catalog install rife-4-interp
Requirements
- Deployment: macOS 27.0+ / iOS 27.0+, Xcode 27+. The asset serializes with
minimum_os v27, so the on-device Swift runtime requires macOS/iOS 27+. A Mac on macOS 26 can convert and inspect it but not run it on-device. - Apple Silicon.
Verification (output parity)
- Gate A (structure): passed β the bundle's layout + metadata were validated; the graph loads.
- Gate B β graph_output_cosine: 1.000000 min output cosine (median 1.000000) vs the fp32 torch reference network over 8 seeded frame pairs, measured on apple_silicon. Certifies the export computes the SAME output as the source β a conversion-fidelity metric, not task accuracy.
- This certifies the export is numerically faithful to the source network β it
does NOT certify perceptual interpolation quality on your footage. Reproduce
with
coreai-fabric verify.
Provenance
| Field | Value |
|---|---|
| Base model | TensorForger/RIFE-safetensors @ 78a62b7c2dd910536432d6c2c3a25e76f14fbf78 |
| Converted by | models/rife/export.py (version not reported) |
| Recipe | rife-4-interp (recipe_source: fabric) |
| Precision / quantization | float32 / none |
| Conversion date | 2026-07-10 |
Machine-readable, in this repo:
parity-report.json Β·
reproduce-manifest.json Β· LICENSE.
License and attribution
Weights licensed mit β see the bundled LICENSE. This artifact is a converted derivative of the base model: its
weights were converted to Apple Core AI format. The conversion itself is
community work.
Links
- Base model: TensorForger/RIFE-safetensors
- Reproduce: recipe
rife-4-interp - Index: coreai-catalog
- HF Collection
The on-device Core AI ecosystem
- coreai-fabric β the reproducible
recipe β
.aimodelpipeline that produced this asset. - coreai-catalog β the index of Core AI models with provenance and integration snippets.
- apple/coreai-models β Apple's official exporters and runtimes.
Not affiliated with Apple
Community conversion. Not produced, hosted, or endorsed by Apple. Apple and Core AI are trademarks of Apple Inc., used here only to describe the target runtime/format.
Model tree for kevinqz/RIFE-Frame-Interpolation-CoreAI
Base model
TensorForger/RIFE-safetensors