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JAX implementation of emcee #499

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amifalk opened this issue Jan 26, 2024 · 3 comments
Open

JAX implementation of emcee #499

amifalk opened this issue Jan 26, 2024 · 3 comments

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@amifalk
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amifalk commented Jan 26, 2024

Greetings!

I've ported a subset of emcee functionality to the NumPyro project under the sampler name AIES.

(For the uninitiated, NumPyro uses JAX, a library with an interface to numpy and additional features like JIT compiling and GPU support, in the backend. The upshot is that if you're using currently using emcee, switching to NumPyro may give you a dramatic inference speedup!)

I've tried my best to match the existing API. You can use either the NumPyro model specification language

import jax
import jax.numpy as jnp

import numpyro
from numpyro.infer import MCMC, AIES
import numpyro.distributions as dist

n_dim, num_chains = 5, 100
mu, sigma = jnp.zeros(n_dim), jnp.ones(n_dim)

def model(mu, sigma):
    with numpyro.plate('n_dim', n_dim):
        numpyro.sample("x", dist.Normal(mu, sigma))

kernel = AIES(model, moves={AIES.DEMove() : 0.5,
                            AIES.StretchMove() : 0.5})

mcmc = MCMC(kernel, 
            num_warmup=1000,
            num_samples=2000, 
            num_chains=num_chains, 
            chain_method='vectorized')

mcmc.run(jax.random.PRNGKey(0), mu, sigma)
mcmc.print_summary()

or provide your own potential function.

def potential_fn(z):
    return 0.5 * jnp.sum(((z - mu) / sigma) ** 2)

kernel = AIES(potential_fn=potential_fn, 
              moves={AIES.DEMove() : 0.5,
                     AIES.StretchMove() : 0.5})
mcmc = MCMC(kernel, 
            num_warmup=1000,
            num_samples=2000, 
            num_chains=num_chains, 
            chain_method='vectorized')

init_params = jax.random.normal(jax.random.PRNGKey(0), 
                                (num_chains, n_dim))

mcmc.run(jax.random.PRNGKey(1), mu, sigma, init_params=init_params)
mcmc.print_summary()

Hope this is helpful to some folks!

@dfm
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dfm commented Jan 26, 2024

Very cool! Thanks for sharing.

@jcblemai
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jcblemai commented Apr 5, 2024

@amifalk Do you have some idea of the speedup ?

@amifalk
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amifalk commented Apr 5, 2024

It depends on how many chains you run, whether or not you have a gpu, the amount of native python code in your model, etc., but it can often be a few orders of magnitude faster.

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3 participants