Quick Start Guide ================= Basic Usage ----------- LiLit is designed to be easy to use with Cobaya. Here's a basic example: .. code-block:: python from lilit import LiLit # Define the fields you want to use fields = ["t", "e", "b"] # Set multipole ranges for each field lmax = [1500, 1200, 900] # [lmaxTT, lmaxEE, lmaxBB] lmin = [20, 2, 2] # [lminTT, lminEE, lminBB] fsky = [1.0, 0.8, 0.6] # [fskyTT, fskyEE, fskyBB] # Create the likelihood likelihood = LiLit(fields=fields, lmax=lmax, lmin=lmin, fsky=fsky) Working with Different Field Combinations ----------------------------------------- LiLit is flexible and supports different field combinations: Temperature Only ~~~~~~~~~~~~~~~~ .. code-block:: python from lilit import LiLit likelihood = LiLit( fields=["t"], lmax=[1500], lmin=[20], fsky=[1.0] ) Temperature + Polarization ~~~~~~~~~~~~~~~~~~~~~~~~~~ .. code-block:: python from lilit import LiLit likelihood = LiLit( fields=["t", "e"], lmax=[1500, 1200], lmin=[20, 2], fsky=[1.0, 0.8] ) B-modes Only ~~~~~~~~~~~~ .. code-block:: python from lilit import LiLit likelihood = LiLit( fields=["b"], lmax=[900], lmin=[2], fsky=[0.6], r=0.01 # tensor-to-scalar ratio for B-modes ) Using Custom Fiducial Spectra ------------------------------ If you want to provide your own fiducial power spectra instead of using the default Planck 2018 values: .. code-block:: python import numpy as np from lilit import LiLit # Generate your custom spectra (example) ells = np.arange(2, 1001) cl_tt = your_tt_spectrum(ells) cl_ee = your_ee_spectrum(ells) cl_bb = your_bb_spectrum(ells) fiducial_spectra = { 'tt': cl_tt, 'ee': cl_ee, 'bb': cl_bb } likelihood = LiLit( fields=["t", "e", "b"], lmax=[1500, 1200, 900], lmin=[20, 2, 2], fsky=[1.0, 0.8, 0.6], fiducial_spectra=fiducial_spectra ) Integration with Cobaya ----------------------- LiLit is designed to work seamlessly with Cobaya. Here's an example configuration: .. code-block:: yaml likelihood: lilit.LiLit: fields: ["t", "e", "b"] lmax: [1500, 1200, 900] lmin: [20, 2, 2] fsky: [1.0, 0.8, 0.6] r: 0.01 params: # Your cosmological parameters here H0: prior: min: 60 max: 80 ref: dist: norm loc: 67.4 scale: 0.5 # ... other parameters Utility Functions ----------------- LiLit also provides utility functions for working with CAMB results: .. code-block:: python from lilit import CAMBres2dict import camb # Get CAMB results pars = camb.CAMBparams() # ... set up parameters results = camb.get_results(pars) # Convert to dictionary format cl_dict = CAMBres2dict(results) This function converts CAMB results into a dictionary format that's easy to work with in your analysis.