Likelihood for the Atacama Cosmology Telescope DR6 CMB lensing data.
Project description
ACT DR6 Lensing Likelihood
This repository contains likelihood software for the ACT DR6 CMB lensing analysis. If you use this software and/or the associated data, please cite both of the following papers:
- Madhavacheril, Qu, Sherwin, MacCrann, Li et al ACT Collaboration (2023), arxiv:2304.05203
- Qu, Sherwin, Madhavacheril, Han, Crowley et al ACT Collaboration (2023), arxiv:2304.05202
In addition, if you use the ACT+Planck lensing combination variant from the likelihood, please also cite:
Chains
A pre-release version of the chains from Madhavacheril et al are available here. Please make sure to read the README file.
Step 1: Install
Option 1: Install from PyPI
You can install the likelihood directly with:
pip install act_dr6_lenslike
Option 2: Install from Github
If you wish to be able to make changes to the likelihood for development, first clone this repository. Then install with symbolic links:
pip install -e . --user
Tests can be run using
python setup.py test
Step 2: download and unpack data
This can be performed automatically with the supplied get-act-data.sh
script. Otherwise follow the steps below.
Download the likelihood data tarball for ACT DR6 lensing from NASA's LAMBDA archive.
Extract the tarball into the act_dr6_lenslike/data/
directory in the cloned repository such the directory v1.2
is directly inside it. Only then should you proceed with the next steps.
Step 3: use in Python codes
Generic Python likelihood
import act_dr6_lenslike as alike
variant = 'act_baseline'
lens_only = False # use True if not combining with any primary CMB data
like_corrections = True # should be False if lens_only is True
# Do this once
data_dict = alike.load_data(variant,lens_only=lens_only,like_corrections=like_corrections)
# This dict will now have entries like `data_binned_clkk` (binned data vector), `cov`
# (covariance matrix) and `binmat_act` (binning matrix to be applied to a theory
# curve starting at ell=0).
# Get cl_kk, cl_tt, cl_ee, cl_te, cl_bb predictions from your Boltzmann code.
# These are the CMB lensing convergence spectra (not potential or deflection)
# as well as the TT, EE, TE, BB CMB spectra (needed for likelihood corrections)
# in uK^2 units. All of these are C_ell (not D_ell), no ell or 2pi factors.
# Then call
lnlike=alike.generic_lnlike(data_dict,ell_kk,cl_kk,ell_cmb,cl_tt,cl_ee,cl_te,cl_bb)
Cobaya likelihood
Your Cobaya YAML or dictionary should have an entry of this form
likelihood:
act_dr6_lenslike.ACTDR6LensLike:
lens_only: False
stop_at_error: True
lmax: 4000
variant: act_baseline
No other parameters need to be set. (e.g. do not manually set like_corrections
or no_like_corrections
here).
An example is provided in ACTDR6LensLike-example.yaml
. If, however, you are combining with
the ACT DR4 CMB 2-point power spectrum likelihood, you should also set no_actlike_cmb_corrections: True
(in addition to lens_only: True
as described below). You do not need to do this if you are combining
with Planck CMB 2-point power spectrum likelihoods.
Important parameters
variant
should beact_baseline
for the ACT-only lensing power spectrum with the baseline multipole rangeact_extended
for the ACT-only lensing power spectrum with the extended multipole range (L<1250)actplanck_baseline
for the ACT+Planck lensing power spectrum with the baseline multipole rangeactplanck_extended
for the ACT+Planck lensing power spectrum with the extended multipole range (L<1250)
lens_only
should be- False when combining with any primary CMB measurement
- True when not combining with any primary CMB measurement
Recommended theory accuracy
For CAMB calls, we recommend the following (or higher accuracy):
lmax
: 4000lens_margin
:1250lens_potential_accuracy
: 4AccuracyBoost
:1lSampleBoost
:1lAccuracyBoost
:1halofit_version
:mead2016
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