RIFFT
RIFFT is a self-contained FFT runtime that combines RustFFT plans, Rayon parallelism, and optional
std::simd acceleration to deliver deterministic 2-D FFTs, fused forward/filter/inverse passes, and
zero-copy bridges into C and Python runtimes.
Install
Python:
# optional (to enable torch comparisons / helpers)
Rust:
From source (optional)
# Build/install the Python extension into the current environment
# End-to-end harness (builds the extension + runs comparisons)
Quickstart
Python:
=
=
Torch optional:
=
=
Torch “drop-in” wrapper (keeps existing codepaths smooth):
# RIFFT: CPU-only, complex64, 2-D. Fall back to torch.fft otherwise.
return
return
return
return
Rust:
use Complex32;
use RifftHandle;
let handle = new;
let mut plane = vec!;
handle.fft2d_forward?;
# Ok::
Benchmark on your machine
Performance is hardware- and environment-dependent. Benchmark on your machine and pick the fastest backend for your workload.
# Quick benchmark (installed package)
# Source build + A/B compare vs torch.fft / numpy.fft
When to reach for RIFFT
- Deterministic spectral filtering pipelines where you control the kernels and want repeatable CPU-only latency (e.g., classical vision, audio, radar, or scientific imaging).
- Embedding Torch/NumPy workloads into Rust without copying data: transfer ownership through DLPack and let RIFFT mutate in place, then return the capsule to Python.
- Services that batch a small set of FFT shapes (tile-based convolutions, patch-wise inference) and benefit from the built-in planner/workspace cache to skip repeated allocations.
- Interop tooling: export from a C++ or Python stack, run RIFFT’s fused forward→filter→inverse path, and re-import without touching disk or extra serialization layers.
If you primarily need GPU throughput, autograd support, many dtypes, or arbitrary dimension counts, stick to torch.fft / numpy.fft; RIFFT intentionally narrows the scope to keep the CPU kernels lean.
Features
- Planner + workspace cache keyed by geometry/direction/SIMD flag with per-thread scratch.
- Fused kernels (
fft → filter → ifft) with SIMD element-wise multiply helpers. - Zero-copy DLPack bridge for Torch tensors plus an optional C FFI surface.
- PyO3/Maturin bindings shipping the same runtime to Python (
pip install rifft). - Criterion benchmarks and Python harness for reproducible timing across standard sizes.
- Focused surface area: currently limited to complex64 2-D FFTs (single plane or batches). No autograd, dtype promotion, filtering helpers, or half/complex128 kernels—use NumPy/Torch for generic transforms and hand buffers to RIFFT only when you need the tuned path.
┌──────────────┐ ┌───────────────┐ ┌───────────────┐
│ DLPack inputs│ ──▶ │ Planner cache │ ──▶ │ Row FFT stage │
└──────────────┘ └───────────────┘ └───────────────┘
│ │
▼ ▼
┌──────────────┐ ┌───────────────┐ ┌───────────────┐
│ TLS scratch │ ◀── │ Workspace pool│ ◀── │ Column FFT/T │
└──────────────┘ └───────────────┘ └───────────────┘
│ │
▼ ▼
┌──────────────┐ ┌───────────────┐ ┌───────────────┐
│ SIMD fused │ ◀── │ C / Python FFI│ ◀── │ Torch adapters │
└──────────────┘ └───────────────┘ └───────────────┘
Benchmark Results
Hardware: M1 Max 32GB RAM
Environment: cpu=arm, threads=10, RUSTFLAGS=-C target-cpu=native
Performance is hardware- and environment-dependent. For an apples-to-apples comparison on your
machine (including optional torch.fft baselines), run ./scripts/build_and_bench.sh locally.
If installed via pip, you can run basic RIFFT benchmarks with
python -m rifft.bench --sizes 256 512 1024 --iters 25 --device cpu.
| Shape | Impl | Median (ms) | Mean (ms) | Std (ms) |
|---|---|---|---|---|
| (256, 256) | torch.fft | 0.208 | 0.210 | 0.009 |
| (256, 256) | numpy | 0.769 | 0.789 | 0.064 |
| (256, 256) | rifft.torch | 0.387 | 0.390 | 0.051 |
| (256, 256) | rifft.np | 0.297 | 0.282 | 0.094 |
| (256, 256) | rifft.np_out | 0.182 | 0.199 | 0.085 |
| (512, 512) | torch.fft | 0.976 | 0.990 | 0.058 |
| (512, 512) | numpy | 4.266 | 4.331 | 0.258 |
| (512, 512) | rifft.torch | 0.668 | 0.710 | 0.548 |
| (512, 512) | rifft.np | 0.468 | 0.517 | 0.146 |
| (512, 512) | rifft.np_out | 0.628 | 0.686 | 0.274 |
| (1024, 1024) | torch.fft | 6.904 | 6.894 | 0.781 |
| (1024, 1024) | numpy | n/a | n/a | n/a |
| (1024, 1024) | rifft.torch | 2.090 | 2.153 | 0.487 |
| (1024, 1024) | rifft.np | 1.732 | 1.979 | 1.131 |
| (1024, 1024) | rifft.np_out | 2.360 | 2.782 | 1.431 |
| (1536, 1536) | torch.fft | 16.637 | 16.732 | 0.905 |
| (1536, 1536) | numpy | n/a | n/a | n/a |
| (1536, 1536) | rifft.torch | 3.968 | 4.400 | 1.668 |
| (1536, 1536) | rifft.np | 3.607 | 4.284 | 2.200 |
| (1536, 1536) | rifft.np_out | 4.770 | 5.382 | 1.698 |
| (2048, 2048) | torch.fft | 39.082 | 39.407 | 1.199 |
| (2048, 2048) | numpy | n/a | n/a | n/a |
| (2048, 2048) | rifft.torch | 8.540 | 9.268 | 2.575 |
| (2048, 2048) | rifft.np | 8.401 | 9.315 | 3.188 |
| (2048, 2048) | rifft.np_out | 10.117 | 10.945 | 2.276 |
Criterion benches live under benches/ and report timing, bandwidth, and thread scaling.
Limits & assumptions
- Complex64 2-D only: RIFFT currently handles batches of
(H, W)planes stored row-major. No real-only, half precision, complex128, or >2D transforms. Callers must prepack complex data. - CPU, host memory: targets x86-64 and aarch64 CPUs with AVX2/AVX-512/NEON fast paths. There is no GPU backend. Inputs must be host-resident, contiguous buffers.
- Normalized inverse: every inverse path (plain or fused) scales by
1/(H*W)for consistency. If you need the raw RustFFT output, divide manually before calling into RIFFT. - Caching is bounded: planner caches evict once the small/large FIFO caps are reached (env vars
RUSTFFT_SMALL_CACHE,RUSTFFT_LARGE_CACHE). Filter spectra use an LRU with capacity governed byRIFFT_FILTER_CACHE(default 32). Repeatedly cycling through many shapes/filters will thrash. - Bench tolerances: Torch/NumPy equivalence checks allow up to
5e-4for ≤1M elements and1.25e-3for larger grids to absorb expected CPU rounding drift. Failures outside those limits are treated as correctness bugs. - Contiguous inputs: The Rust core assumes C-contiguous row-major layout; Python helpers canonicalize the layout (with at most one copy) before passing buffers across the FFI boundary.
Rust API
use Complex32;
use RifftHandle;
let mut handle = new;
let mut plane = vec!;
handle.fft2d_forward.unwrap;
// Or keep the result column-major for chaining:
handle
.fft2d_forward_transposed
.unwrap;
The RifftHandle caches plans (height, width, direction, dtype, SIMD flag) and reuses aligned
workspace allocations for every call. Set RUSTFFT_THREADS to pin Rayon parallelism and
RUSTFFT_SMALL_MAX/RUSTFFT_SMALL_CACHE to tune the small-plan FIFO. On Linux runners with only one
or two logical cores (e.g., GitHub Actions VMs), RIFFT defaults to a single worker thread to avoid
oversubscribing the CPU.
Set RIFFT_PREPLAN=auto (or a comma-separated list like RIFFT_PREPLAN=256x256,1024x512) to warm
up planner entries during RifftHandle::new().
C ABI
The shared library exports riff_create_handle, riff_fft2d_forward, riff_fft2d_inverse,
riff_fft2d_fused_filter, riff_get_version, and riff_get_backend_name. See
include/rifft.h for the full surface area.
Python bindings
- Built with Maturin + PyO3 (
pythonfeature). rifft.bridgeexposesfft2,ifft2,fft_filter_ifft, plus batched variants.rifftprovides a NumPy-first API that canonicalizes dtype/layout before calling the same backend.- CLI:
python -m rifft.bench --sizes 256 512 1024 --iters 25 --device cpu. - Higher-level helpers live in
rifft.helpersfor in-place Torch usage. rifft.runtimeexposespreplan,enable_timing,timing_reset, andtiming_summaryso you can warm caches and inspect kernel timings from Python.
=
# mutates `image`
=
# runs forward→filter→inverse in place
NumPy usage
=
=
= # zero-copy when already complex64 + C-contiguous
=
= # normalized inverse (divides by H*W)
= # leaves `x` untouched and returns a new buffer
# warm planner
=
canonicalize_numpy upgrades dtype to complex64 and enforces C-contiguity with at most one copy,
so rifft() can pass the buffer to the Rust kernel without branching on frameworks. Use
rifft_ifft(freq, normalize=False) if you want to skip the automatic 1/(H*W) scaling.
Performance debugging
# warm the planner cache for common shapes
# start collecting row/col/transpose timings
=
# mutates in place
# {'row_ms': ..., 'transpose_ms': ..., 'calls': ...}
Use this pattern when you benchmark or pipeline repeated transforms: warm the planner once, run a few iterations, and inspect timing_summary() to see if time is spent in the row kernels, column kernels, or the transpose steps. The same helpers back the Python benchmark harness, so the numbers you print locally align with the values in results/rifft_benchmark.json.
Zero-copy DLPack
rifft.bridge converts torch.Tensor objects into DLPack capsules via torch.utils.dlpack. The
PyO3 shim unwraps the capsule, validates contiguity/alignment, and hands the raw pointer to the Rust
planner without copying. Ownership is transferred back to PyTorch after the transform so the
returned tensor shares memory with the accelerated path. See python/examples/torch_fft_demo.py
for a runnable snippet.
Build & test matrix
Benchmarks:
# End-to-end harness (builds the extension + runs comparisons)
# Or run the Python benchmark directly:
# include NumPy timings for every shape (skipping >512 by default):
The benchmark script reports up to four implementations per shape: torch.fft, numpy, rifft.torch
(PyTorch+DLPack path), rifft.numpy (mutates the NumPy buffer in place), and rifft.numpy_out (uses
rifft_out, so it includes the single copy overhead). If PyTorch is unavailable (or you pass
--skip-torch), the torch rows are omitted automatically. Pair these numbers with the optional
timing summary to understand whether row kernels, column kernels, or transposes dominate a given
workload.
PyTorch is only required for torch comparisons; install it via pip install "rifft[bench]" (or
pip install "rifft[torch]") before running the benchmarks.
Release helper
Use ./scripts/release.sh to format/lint/test the Rust crate, ensure maturin is ready, and then
optionally publish to crates.io and PyPI (each step prompts for confirmation).
Roadmap
- CUDA + Metal back-ends via opaque
TensorHandles. - Mixed-precision kernels (bf16/half) with on-the-fly promotion.
- Autotuned fuse graph builder for multi-filter workloads.
License
Licensed under either of
- Apache License, Version 2.0, (
LICENSE-APACHEor http://www.apache.org/licenses/LICENSE-2.0) - MIT license (
LICENSE-MITor http://opensource.org/licenses/MIT)
at your option. Any contributions are accepted under the same dual license.