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4 changes: 4 additions & 0 deletions .gitignore
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Expand Up @@ -9,3 +9,7 @@ mkl_fft/_pydfti.c
mkl_fft/_pydfti.cpython*.so
mkl_fft/_pydfti.*-win_amd64.pyd
mkl_fft/src/mklfft.c

# ASV benchmark artifacts
.asv/
benchmarks/.asv/
57 changes: 57 additions & 0 deletions benchmarks/README.md
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# mkl_fft ASV Benchmarks
Comment thread
vchamarthi marked this conversation as resolved.

Performance benchmarks for [mkl_fft](https://github.com/IntelPython/mkl_fft) using
[Airspeed Velocity (ASV)](https://asv.readthedocs.io/en/stable/).

### Coverage

| File | API | Transforms | Dtypes | Sizes/Shapes |
|------|-----|-----------|--------|-------------|
| `bench_fft1d.py` | `mkl_fft` | `fft`, `ifft`, `rfft`, `irfft` | float32, float64, complex64, complex128 | power-of-two and non-power-of-two |
| `bench_fftnd.py` | `mkl_fft` | `fft2`, `ifft2`, `rfft2`, `irfft2`, `fftn`, `ifftn`, `rfftn`, `irfftn` | float32, float64, complex64, complex128 | square and non-square/non-cubic |
| `bench_numpy_fft.py` | `mkl_fft.interfaces.numpy_fft` | All exported functions including Hermitian (`hfft`, `ihfft`) | float32, float64, complex64, complex128 | power-of-two |
| `bench_scipy_fft.py` | `mkl_fft.interfaces.scipy_fft` | All exported functions including Hermitian 2-D/N-D (`hfft2`, `hfftn`) | float32, float64, complex64, complex128 | square and cubic |
| `bench_memory.py` | `mkl_fft` | Peak RSS for 1-D, 2-D, and 3-D transforms | float32, float64, complex128 | power-of-two |

## Threading

Set `MKL_NUM_THREADS` in the environment before running ASV to control the
thread count used by MKL:

```bash
MKL_NUM_THREADS=8 asv run --python=same --quick HEAD^!
```

If `MKL_NUM_THREADS` is not set, `__init__.py` applies a default: **4** threads
when the machine has 4 or more physical cores, or **1** (single-threaded)
otherwise. This keeps results comparable across CI machines in the shared pool
regardless of their total core count. Physical cores are detected via
`psutil.cpu_count(logical=False)` — hyperthreads are excluded per MKL
recommendation.

## Running Benchmarks

Prerequisites:

```bash
pip install asv psutil
```

Run benchmarks against the current environment:

```bash
asv run --python=same --quick HEAD^!
```

Compare two commits:

```bash
asv continuous --python=same HEAD~1 HEAD
```

View results in a browser:

```bash
asv publish
asv preview
```
19 changes: 19 additions & 0 deletions benchmarks/asv.conf.json
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{
"version": 1,
"project": "mkl_fft",
"project_url": "https://github.com/IntelPython/mkl_fft",
"show_commit_url": "https://github.com/IntelPython/mkl_fft/commit/",
"repo": "..",
"branches": [
"master"
],
"benchmark_dir": "benchmarks",
"env_dir": ".asv/env",
"results_dir": ".asv/results",
"html_dir": ".asv/html",
"build_cache_size": 2,
"default_benchmark_timeout": 500,
"regressions_thresholds": {
".*": 0.3
}
}
21 changes: 21 additions & 0 deletions benchmarks/benchmarks/__init__.py
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"""ASV benchmarks for mkl_fft"""

import os

import psutil

_MIN_THREADS = 4 # minimum physical cores required for multi-threaded mode


def _physical_cores():
"""Return physical core count; fall back to 1 (conservative)."""
return psutil.cpu_count(logical=False) or 1


def _thread_count():
physical = _physical_cores()
return str(_MIN_THREADS) if physical >= _MIN_THREADS else "1"


_THREADS = os.environ.get("MKL_NUM_THREADS", _thread_count())
os.environ["MKL_NUM_THREADS"] = _THREADS
65 changes: 65 additions & 0 deletions benchmarks/benchmarks/_utils.py
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"""Shared utilities for mkl_fft benchmarks."""

import numpy as np

_RNG_SEED = 42


def _make_input(rng, shape, dtype):
"""Return an array of *shape* and *dtype*.

Complex dtypes get non-zero imaginary parts for a realistic signal.
*shape* may be an int (1-D) or a tuple.
"""
dt = np.dtype(dtype)
s = (shape,) if isinstance(shape, int) else shape
if dt.kind == "c":
return (rng.standard_normal(s) + 1j * rng.standard_normal(s)).astype(dt)
return rng.standard_normal(s).astype(dt)


class BenchC2C:
"""Base setup for complex-to-complex benchmarks.

Subclasses define params, param_names, and time_* / peakmem_* methods.
"""

def setup(self, shape, dtype):
rng = np.random.default_rng(_RNG_SEED)
self.x = _make_input(rng, shape, dtype)


# dtype axes
_DTYPES_ALL = ["float32", "float64", "complex64", "complex128"]
_DTYPES_REAL = ["float32", "float64"]
_DTYPES_REDUCED = ["float64", "complex128"]

# shape/size axes shared across multiple files
_SHAPES_2D = [(64, 64), (128, 128), (256, 256), (512, 512)]
_SHAPES_2D_IFACE = [(64, 64), (256, 256), (512, 512)]
_SHAPES_3D = [(16, 16, 16), (32, 32, 32), (64, 64, 64)]


class BenchR2C:
"""Base setup for real-to-complex / complex-to-real and Hermitian benchmarks.

Prepares:
self.x_real — real array of full shape (rfft / ihfft input)
self.x_complex — complex half-spectrum array (irfft / hfft input)

Works for 1-D (shape as int) and multi-D (shape as tuple).
Subclasses define params, param_names, and time_* / peakmem_* methods.
"""

def setup(self, shape, dtype):
rng = np.random.default_rng(_RNG_SEED)
cdtype = "complex64" if dtype == "float32" else "complex128"
if isinstance(shape, int):
half_shape = shape // 2 + 1
else:
half_shape = shape[:-1] + (shape[-1] // 2 + 1,)
self.x_real = rng.standard_normal(shape).astype(dtype)
self.x_complex = (
rng.standard_normal(half_shape)
+ 1j * rng.standard_normal(half_shape)
).astype(cdtype)
84 changes: 84 additions & 0 deletions benchmarks/benchmarks/bench_fft1d.py
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"""Benchmarks for 1-D FFT operations using the mkl_fft root API."""

import mkl_fft

from ._utils import _DTYPES_ALL, _DTYPES_REAL, BenchC2C, BenchR2C

_SIZES_POW2 = [64, 256, 1024, 4096, 16384, 65536]
_SIZES_NONPOW2 = [127, 509, 1000, 4001, 10007]


# ---------------------------------------------------------------------------
# Complex-to-complex 1-D (power-of-two sizes)
# ---------------------------------------------------------------------------


class BenchFFT1D(BenchC2C):
"""Forward and inverse complex FFT — power-of-two sizes."""

params = [_SIZES_POW2, _DTYPES_ALL]
param_names = ["n", "dtype"]

def time_fft(self, n, dtype):
mkl_fft.fft(self.x)

def time_ifft(self, n, dtype):
mkl_fft.ifft(self.x)


# ---------------------------------------------------------------------------
# Real-to-complex / complex-to-real 1-D (power-of-two sizes)
# ---------------------------------------------------------------------------


class BenchRFFT1D(BenchR2C):
"""Forward rfft and inverse irfft — power-of-two sizes."""

params = [_SIZES_POW2, _DTYPES_REAL]
param_names = ["n", "dtype"]

def time_rfft(self, n, dtype):
mkl_fft.rfft(self.x_real)

def time_irfft(self, n, dtype):
mkl_fft.irfft(self.x_complex, n=n)


# ---------------------------------------------------------------------------
# Complex-to-complex 1-D (non-power-of-two sizes)
# ---------------------------------------------------------------------------


class BenchFFT1DNonPow2(BenchC2C):
"""Forward and inverse complex FFT — non-power-of-two sizes.

MKL uses a different code path for non-power-of-two transforms;
this suite catches regressions in that path.
"""

params = [_SIZES_NONPOW2, ["float64", "complex128", "complex64"]]
param_names = ["n", "dtype"]

def time_fft(self, n, dtype):
mkl_fft.fft(self.x)

def time_ifft(self, n, dtype):
mkl_fft.ifft(self.x)


# ---------------------------------------------------------------------------
# Real-to-complex / complex-to-real 1-D (non-power-of-two sizes)
# ---------------------------------------------------------------------------


class BenchRFFT1DNonPow2(BenchR2C):
"""Forward rfft and inverse irfft — non-power-of-two sizes."""

params = [_SIZES_NONPOW2, _DTYPES_REAL]
param_names = ["n", "dtype"]

def time_rfft(self, n, dtype):
mkl_fft.rfft(self.x_real)

def time_irfft(self, n, dtype):
mkl_fft.irfft(self.x_complex, n=n)
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