Skip to main content

A Python and JAX wrapper to create a coronagraph object from a yield input package

Project description

yippy logo

PyPI Documentation Status License Python DOI Tests pre-commit


yippy

A Python and JAX library for loading coronagraph yield input packages (YIPs) and computing coronagraph performance metrics. yippy provides Fourier-based off-axis PSF interpolation, throughput/contrast/core-area curves, 2D performance maps, and export to EXOSIMS and AYO formats.

Installation

pip install yippy

Quick Start

The primary workflow is to point yippy at a YIP directory you already have on disk -- either one you built yourself or one you downloaded:

from yippy import Coronagraph

# Load a YIP from a folder on disk
coro = Coronagraph("path/to/eac1_aavc_2d")

# Off-axis PSF at a given (x, y) position
from lod_unit import lod
offaxis_psf = coro.offax(2 * lod, 5 * lod)

# Performance metrics at any separation
throughput = coro.throughput(5.0)        # scalar or array
contrast   = coro.raw_contrast(5.0)
occ_trans  = coro.occulter_transmission(5.0)

# 2D performance maps (pixel grids)
throughput_map = coro.throughput_map()
core_area_map  = coro.core_area_map()

If you don't have a YIP on hand, see Example data below for a convenience downloader.

Two-Class Design

yippy provides two coronagraph classes for different use cases:

Coronagraph EqxCoronagraph
Purpose Full-featured analysis & export JIT-compiled simulation
Backend NumPy/SciPy + JAX Pure JAX/Equinox
JIT-compatible No Yes (eqx.filter_jit)
GPU/TPU support PSF generation only Everything
I/O & export EXOSIMS FITS, AYO CSV None (simulation only)
Performance curves Computed on init Converted from Coronagraph

Coronagraph -- Analysis & Data Management

The primary class for loading YIPs, computing performance curves, and exporting to external formats:

from yippy import Coronagraph

coro = Coronagraph("path/to/yip")

# 1D performance curves (scalar or array separations in lam/D)
coro.throughput(5.0)
coro.raw_contrast(5.0)
coro.occulter_transmission(5.0)
coro.core_area(5.0)
coro.core_mean_intensity(5.0)

# Noise floors
coro.noise_floor_exosims(5.0)           # |raw_contrast| / ppf
coro.noise_floor_ayo(5.0, ppf=30.0)     # core_mean_intensity / ppf

# 2D maps (full pixel grids)
coro.separation_map()
coro.throughput_map()
coro.core_area_map()
coro.core_mean_intensity_map()
coro.noise_floor_ayo_map(ppf=30.0)

# Export
coro.to_exosims()
coro.dump_ayo_csv("output.csv")

EqxCoronagraph -- JIT-Compatible Simulation

A pure JAX/Equinox module for use inside jax.jit-compiled pipelines:

from yippy import EqxCoronagraph
import equinox as eqx

# Create from a YIP path directly
coro = EqxCoronagraph("path/to/yip")

# All methods are JIT-traceable
@eqx.filter_jit
def simulate(coro, x, y):
    psf = coro.create_psf(x, y)
    stellar = coro.stellar_intens(0.01)
    throughput = coro.throughput(5.0)
    return psf, stellar, throughput

Performance Metrics

Individual metric functions are available in yippy.performance for standalone analysis:

from yippy.performance import (
    compute_throughput_curve,
    compute_raw_contrast_curve,
    compute_core_area_curve,
    compute_occ_trans_curve,
    compute_core_mean_intensity_curve,
    compute_truncation_throughput_curve,     # PSF truncation-ratio aperture
    compute_truncation_core_area_curve,
)

# Compute individual curves
separations, throughputs = compute_throughput_curve(coro)
separations, contrasts  = compute_raw_contrast_curve(coro)

PSF Truncation Ratio

When psf_trunc_ratio is set (e.g. Coronagraph(path, psf_trunc_ratio=0.3)), throughput and core area are computed using an adaptive aperture that includes all oversampled pixels exceeding ratio * peak. This matches AYO's photap_frac / omega_lod calculation and is recommended for ETC integration.

Example data

Two reference YIPs ship as GitHub release assets on this repo and can be fetched on demand. This is useful for tutorials, CI, and "I just want to try it" exploration:

from yippy import Coronagraph, fetch_yip

yip_path = fetch_yip("eac1_aavc_2d")   # download (cached after first call)
coro     = Coronagraph(yip_path)

The catalog is currently minimal. Long-term YIP hosting will be provided by ExEP, and only the two reference YIPs used by the yippy paper validation pipeline and pyEDITH (eac1_aavc_2d and eac1_optimal_order_6_1d) are shipped here. For production work or YIPs outside this set, manage your own YIP paths and pass them to Coronagraph(path) directly.

See yippy.list_yips() for the available names and the datasets guide for filtered queries and metadata inspection.

Cache location (advanced)

By default, fetch_yip caches archives under pooch.os_cache("yippy") -- the OS-conventional location provided by platformdirs (e.g. ~/Library/Caches/yippy on macOS, ~/.cache/yippy on Linux). To pin the cache elsewhere:

# Persistent override -- pyEDITH and other consumers inherit this
export YIPPY_CACHE_DIR=~/Documents/YIPs
# Per-call override (wins over the env var)
yip_path = fetch_yip("eac1_aavc_2d", cache_path="/data/shared/yips")

# Introspect the resolved cache directory without triggering a fetch
from yippy import cache_dir
print(cache_dir())

Units

Yield input packages use $\lambda / D$ units so yippy treats them as the default and uses the lod_unit package to define the lod unit. However, it can use three different astropy units: pixels (as defined by the yield input package), angular separation (angle units), or apparent separation (length units). If no units are provided it assumes the input is in $\lambda / D$.

import astropy.units as u
# pixels
x_pos = 2 * u.pix
y_pos = 5 * u.pix
offaxis_psf = coro.offax(x_pos, y_pos)

# angular separation
telescope_diameter = 10 * u.m
wavelength = 500 * u.nm
offaxis_psf = coro.offax(x_pos, y_pos, lam=wavelength, D=telescope_diameter)

# apparent separation
star_dist = 10 * u.pc
offaxis_psf = coro.offax(x_pos, y_pos, lam=wavelength, D=telescope_diameter, dist=star_dist)

JAX

yippy uses JAX for JIT compilation and GPU/TPU-accelerated PSF generation. JAX defaults to 32-bit precision; if you need 64-bit precision, configure it before importing yippy or any other JAX-based library:

# At the very top of your script
from hwoutils import enable_x64, set_platform

enable_x64()           # switch to float64
set_platform("cpu")    # or "gpu", "gpu,cpu" for fallback

# Now it's safe to import yippy
from yippy import Coronagraph

Or via environment variables (safest):

JAX_ENABLE_X64=True JAX_PLATFORMS=cpu python my_script.py

See the JAX Configuration Guide in hwoutils for details and common gotchas.

Constructor options

  • use_jax: Use JAX for PSF computation. Default is True.
  • x_symmetric: Off-axis PSFs are symmetric about the x-axis. Default is True.
  • y_symmetric: Off-axis PSFs are symmetric about the y-axis. Default is True.

Parallel processing of off-axis PSFs

The base call of coronagraph.offax(x,y) is the most user-friendly, but is not the most efficient. When generating many PSFs it is recommended to convert all required (x,y) positions into arrays of floats (in $\lambda / D$) and use the coronagraph.offax.create_psfs_parallel(x_arr, y_arr) function. This function uses JAX's shard_map to distribute the computation across multiple CPU devices.

To use multiple CPU devices, call hwoutils.set_host_device_count(N) or set XLA_FLAGS=--xla_force_host_platform_device_count=N before importing JAX. On GPU/TPU backends, yippy automatically uses vmap+jit instead of shard_map.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

yippy-2.7.3.tar.gz (4.6 MB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

yippy-2.7.3-py3-none-any.whl (58.9 kB view details)

Uploaded Python 3

File details

Details for the file yippy-2.7.3.tar.gz.

File metadata

  • Download URL: yippy-2.7.3.tar.gz
  • Upload date:
  • Size: 4.6 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for yippy-2.7.3.tar.gz
Algorithm Hash digest
SHA256 ef3b126b54bb51b2bdb1a77be7c7873acbcb1b3773a1da3e1e66cb56364bbc03
MD5 8e78390f97cfb21c6344ed5a6f6de40c
BLAKE2b-256 95c5bc79c109c7dfbd612a47d4f5083463386fda12ecea45ad9c2d293865e196

See more details on using hashes here.

Provenance

The following attestation bundles were made for yippy-2.7.3.tar.gz:

Publisher: publish-to-pypi.yml on CoreySpohn/yippy

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file yippy-2.7.3-py3-none-any.whl.

File metadata

  • Download URL: yippy-2.7.3-py3-none-any.whl
  • Upload date:
  • Size: 58.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for yippy-2.7.3-py3-none-any.whl
Algorithm Hash digest
SHA256 615ab78b13dd9845cfb3134b52505e699810a6bcc4a3ab7d04cbc1a3dd13febd
MD5 174d6070cbbe8ceb8e163c78cfce3741
BLAKE2b-256 05bddf3463bd8781695e745f92fb53b9eccd8feeaa89dde9318bde299ee2de04

See more details on using hashes here.

Provenance

The following attestation bundles were made for yippy-2.7.3-py3-none-any.whl:

Publisher: publish-to-pypi.yml on CoreySpohn/yippy

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page