CosmoForge Documentation
CosmoForge is a comprehensive Python framework for power spectrum estimation and likelihood analysis of spin-0 and spin-2 fields on the sphere, using Fisher matrix, Quadratic Maximum Likelihood (QML), and pixel-based likelihood methods. While widely applicable to any sky signal (e.g. CMB, galaxy surveys, 21 cm), it is particularly optimized for the analysis of partial-sky, noisy observations with complex noise covariance.
Architecture
CosmoForge is organized as a namespace package containing four main subpackages:
cosmoforge.cosmocore: Core functionality for cosmological analysis including field management, matrix operations, and mathematical utilities
cosmoforge.qube: QML and Fisher matrix implementations for power spectrum estimation
cosmoforge.picslike: Pixel-based Inference with Correlated-Skies Likelihood — pixel-space likelihood analysis for parameter estimation
cosmoforge.meta: Metadata and utilities package for project-wide configuration
Key Features
Fisher Matrix Analysis: Fast parameter forecasting and covariance estimation
QML Power Spectrum Estimation: Optimal power spectrum recovery from noisy data
Pixel-Based Likelihood: Direct likelihood evaluation in map pixel space
High-Performance Computing: Numba-optimized functions and MPI parallelization support
HEALPix Integration: Full support for HEALPix pixelization schemes
Flexible Field Management: Support for scalar (spin-0) and tensor (spin-2) fields
Instrumental Effects: Comprehensive beam and noise modeling
Quick Start
# Fisher Matrix Analysis
from qube import Fisher
fisher = Fisher(params_file="config/fisher_config.yaml")
fisher.run()
# Pixel-Based Likelihood
from picslike import PICSLike
picslike = PICSLike(params_file="config/pixel_config.yaml")
picslike.run()
# Core mathematical utilities
from cosmocore import InputParams
params = InputParams()
print(f"HEALPix resolution: nside={params.nside}")
Contents
Documentation:
API Reference:
Development: