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evofed_partitioning.py
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import chex
import jax
import jax.numpy as jnp # JAX NumPy
import tensorflow_datasets as tfds # TFDS for MNIST
import wandb
from evosax import NetworkMapper
from backprop import sl
from args import get_args
from utils import helpers, evo
from evosax import NetworkMapper, ParameterReshaper, FitnessShaper
from flax.core import FrozenDict
import os
os.environ['TF_FORCE_GPU_ALLOW_GROWTH'] = 'true'
# cosine distance
def cosine(x, y):
return jnp.sum(x * y) / (jnp.sqrt(jnp.sum(x ** 2)) * jnp.sqrt(jnp.sum(x ** 2)))
def cosine2(x, y):
return jnp.sum(x * y) / (jnp.sqrt(jnp.sum(x ** 2)) * jnp.sqrt(jnp.sum(y ** 2)))
# l2 distance
def l2(x, y):
return -1 * jnp.sqrt(jnp.sum((x - y) ** 2))
def l1(x, y):
return -1 * jnp.sum(jnp.abs(x - y))
def pnorm(x, y, p):
x = jnp.abs(x - y)
return -1 * jnp.sum(x ** p) ** (1 / p)
def max_dist(x, y):
return -1 * 0.02 * jnp.max(jnp.abs(x - y)) + 0.98 * l2(x, y)
# def l2_std(x, y):
# return l2(x, y) +
num_devices = jax.local_device_count()
class TaskManager:
def __init__(self, rng: chex.PRNGKey, args):
wandb.run.name = '{}-{}-{} b{} c{} s{} -- {}' \
.format(args.dataset, args.algo,
args.dist,
args.batch_size, args.n_clients,
args.seed, wandb.run.id)
wandb.run.save()
self.train_ds, self.test_ds = sl.get_fed_datasets(args.dataset, args.n_clients, 20, args.dist == 'IID')
rng = jax.random.PRNGKey(0)
rng, init_rng = jax.random.split(rng)
self.learning_rate = wandb.config.lr
self.momentum = wandb.config.momentum
network = NetworkMapper[wandb.config.network_name](**wandb.config.network_config)
self.state = sl.create_train_state(init_rng, network, self.learning_rate, self.momentum)
self.param_reshaper = ParameterReshaper(self.state.params, n_devices=num_devices)
self.test_param_reshaper = ParameterReshaper(self.state.params, n_devices=1)
self.param_count = sum(x.size for x in jax.tree_util.tree_leaves(self.state.params))
self.parts = args.parts
self.padding = self.parts - self.param_reshaper.total_params % self.parts
self.strategy, self.es_params = evo.get_strategy_and_params(args.pop_size, (self.param_reshaper.total_params + self.padding) // self.parts, args)
self.fit_shaper = FitnessShaper(centered_rank=args.centered_rank, z_score=args.z_score, w_decay=args.w_decay, maximize=args.maximize)
server = self.strategy.initialize(init_rng, self.es_params)
flat_param = self.test_param_reshaper.network_to_flat(self.state.params)
flat_param = jnp.concatenate([flat_param, jnp.zeros(self.padding)])
self.server = [server.replace(mean=flat_param.reshape(self.parts, -1)[i]) for i in range(self.parts)]
# add zero padding to flat_param to n jax.tree_leaves(self.state.params))
self.num_epochs = wandb.config.n_rounds
self.batch_size = wandb.config.batch_size
self.n_clients = args.n_clients
min_cut = 10000
self.X = jnp.array([train['image'][:min_cut] for train in self.train_ds])
self.y = jnp.array([train['label'][:min_cut] for train in self.train_ds])
self.args = args
del init_rng # Must not be used anymore.
def run(self, rng: chex.PRNGKey):
for epoch in range(0, self.num_epochs + 1):
rng, input_rng, rng_ask = jax.random.split(rng, 3)
clients, loss, acc = jax.vmap(sl.train_epoch, in_axes=(None, 0, 0, None, None))(self.state,
self.X,
self.y,
self.batch_size, input_rng)
# for c_epoch in range(self.args.client_epoch):
# input_rng, c_rng = jax.random.split(input_rng)
# clients, loss, acc = jax.vmap(sl.train_epoch, in_axes=(0, 0, 0, None, None))(clients,
# self.X,
# self.y,
# self.batch_size, c_rng)
target_server = jax.vmap(self.param_reshaper.network_to_flat)(clients.params)
target_server = jax.vmap(jnp.concatenate)([target_server, jnp.zeros([self.n_clients, self.padding])])
x_server = [self.strategy.ask(rng_ask, self.server[i].replace(sigma=self.args.sigma_init), self.es_params) for i in range(self.parts)]
x, self.server = jnp.array([x[0] for x in x_server]), [x[1] for x in x_server]
# x, self.server = self.strategy.ask(rng_ask, self.server, self.es_params)
# split x and target_server into 4 parts
target_server = target_server.reshape(self.n_clients, self.parts, -1)
fitness = jax.vmap(jax.vmap(jax.vmap(l2, in_axes=(0, None))), in_axes=(None, 0))(x, target_server)
# fitness = self.fit_shaper.apply(x, -1.0 * jnp.linalg.norm(fitness, axis=0))
# fitness = jax.vmap(jnp.meanjax.vmap(self.fit_shaper.apply)(x, fitness.mean(0))
fitness = jax.vmap(jax.vmap(self.fit_shaper.apply), in_axes=(None, 0))(x, fitness).mean(axis=0)
# self.server = self.strategy.tell(x, fitness, self.server, self.es_params)
self.server = [self.strategy.tell(x[i], fitness[i], self.server[i], self.es_params) for i in range(self.parts)]
# self.state = self.state.replace(params=FrozenDict(self.test_param_reshaper.reshape_single_net(self.server.mean)))
mean = jnp.concatenate([server.mean for server in self.server])[:-self.padding]
self.state = self.state.replace(params=FrozenDict(self.test_param_reshaper.reshape_single_net(mean)))
rng, eval_rng = jax.random.split(rng)
test_loss, test_accuracy = sl.eval_model(self.state.params, self.test_ds, eval_rng)
wandb.log({
'Round': epoch,
'Test Loss': test_loss,
'Global Accuracy': test_accuracy,
'Communication': epoch * 2 * self.args.pop_size * self.parts,
})
def run():
print(jax.devices())
args = get_args()
config = helpers.load_config(args.config)
wandb.init(project='evofed-publish', config=args, save_code=True, notes=os.path.basename(__file__))
wandb.config.update(config, allow_val_change=True)
args = wandb.config
rng = jax.random.PRNGKey(args.seed)
rng, rng_init, rng_run = jax.random.split(rng, 3)
manager = TaskManager(rng_init, args)
manager.run(rng_run)
SWEEPS = {
'cifar-bp': 'bc4zva3u',
'cifar-bp2': '82la1zw0',
'fmnits-mah': '1yksrmvs',
'cifar-mah-part': 'u4of6nir',
'cifar-fedpart2': 'mf4es3wq',
'cifar-fedpart': 'd4nm9bgr',
'cifar-fedpart4': 'przlfcf8',
'cifar-fedpart3': 'xv6ne4jw',
'cifar100-fedpart': 'mt9fse4u',
'cifar100-fedpart2': 'nsx80v02',
'cifar100-fedpart3': '5j57zzkf',
}
if __name__ == '__main__':
run()
# wandb.agent(SWEEPS['cifar100-fedpart3'], function=run, project='evofed', count=20)