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contrastive.py
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# Copyright 2022 Big Vision Authors.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""Contrastive training loop.
For models Like
- LiT (https://arxiv.org/abs/2111.07991)
- CLIP (https://arxiv.org/abs/2103.00020)
"""
# pylint: disable=consider-using-from-import
import functools
import importlib
import multiprocessing.pool
import os
from absl import app
from absl import flags
from absl import logging
import big_vision.evaluators.common as eval_common
import big_vision.input_pipeline as input_pipeline
import big_vision.optax as bv_optax
import big_vision.utils as u
from clu import parameter_overview
import flax
import jax
import jax.numpy as jnp
from ml_collections import config_flags
import numpy as np
import optax
import tensorflow as tf
from tensorflow.io import gfile
# pylint: disable=logging-fstring-interpolation
config_flags.DEFINE_config_file(
"config", None, "Training configuration.", lock_config=True)
flags.DEFINE_string("workdir", default=None, help="Work unit directory.")
flags.DEFINE_boolean("cleanup", default=False,
help="Delete workdir (only) after successful completion.")
# Adds jax flags to the program.
jax.config.parse_flags_with_absl()
def all_gather(z):
"""All gather and flatten first two dims."""
gather_flat = lambda x: jnp.concatenate(jax.lax.all_gather(x, "batch"), 0)
return jax.tree_map(gather_flat, z)
def main(argv):
del argv
tf.config.experimental.set_visible_devices([], "GPU")
config = flags.FLAGS.config
workdir = flags.FLAGS.workdir
logging.info( # pylint: disable=logging-fstring-interpolation
f"\u001b[33mHello from process {jax.process_index()} holding "
f"{jax.local_device_count()}/{jax.device_count()} devices and "
f"writing to workdir {workdir}.\u001b[0m")
save_ckpt_path = None
if workdir: # Always create if requested, even if we may not write into it.
gfile.makedirs(workdir)
save_ckpt_path = os.path.join(workdir, "checkpoint.npz")
# The pool is used to perform misc operations such as logging in async way.
pool = multiprocessing.pool.ThreadPool()
# Here we register preprocessing ops from modules listed on `pp_modules`.
for m in config.get("pp_modules", ["ops_general", "ops_image", "ops_text"]):
importlib.import_module(f"big_vision.pp.{m}")
# This seed makes the Jax part of things (like model init) deterministic.
# However, full training still won't be deterministic, for example due to the
# tf.data pipeline not being deterministic even if we would set TF seed.
# See (internal link) for a fun read on what it takes.
rng = jax.random.PRNGKey(config.get("seed", 0))
# These functions do more stuff internally, for OSS release we mock them by
# trivial alternatives in order to minize disruptions in the code.
xid, wid = -1, -1
def info(s, *a):
logging.info("\u001b[33mNOTE\u001b[0m: " + s, *a)
def write_note(note):
if jax.process_index() == 0:
info("%s", note)
write_note("Initializing...")
batch_size = config.input.batch_size
if batch_size % jax.device_count() != 0:
raise ValueError(f"Batch size ({batch_size}) must "
f"be divisible by device number ({jax.device_count()})")
info("Global batch size %d on %d hosts results in %d local batch size. With "
"%d dev per host (%d dev total), that's a %d per-device batch size.",
batch_size, jax.process_count(), batch_size // jax.process_count(),
jax.local_device_count(), jax.device_count(),
batch_size // jax.device_count())
# First thing after above sanity checks, so we can log "start" ticks.
mw = u.BigVisionMetricWriter(xid, wid, workdir, config)
write_note("Initializing train dataset...")
train_ds, ntrain_img = input_pipeline.training(config.input)
# Start prefetching already.
n_prefetch = config.get("prefetch_to_device", 1)
train_iter = input_pipeline.start_input_pipeline(train_ds, n_prefetch)
total_steps = u.steps("total", config, ntrain_img, batch_size)
def get_steps(name, default=ValueError, cfg=config):
return u.steps(name, cfg, ntrain_img, batch_size, total_steps, default)
u.chrono.inform(total_steps=total_steps, global_bs=batch_size,
steps_per_epoch=ntrain_img / batch_size,
measure=mw.measure, write_note=write_note)
info("Running for %d steps, that means %f epochs",
total_steps, total_steps * batch_size / ntrain_img)
write_note(f"Initializing {config.model_name} model...")
model_mod = importlib.import_module(f"big_vision.models.{config.model_name}")
model = model_mod.Model(**config.get("model", {}))
# We want all parameters to be created in host RAM, not on any device, they'll
# be sent there later as needed, otherwise we already encountered two
# situations where we allocate them twice.
@functools.partial(jax.jit, backend="cpu")
def init(rng):
bs = batch_size // jax.device_count()
image_size = tuple(train_ds.element_spec["image"].shape[1:])
no_image = jnp.zeros((bs,) + image_size, jnp.float32)
text_size = tuple(train_ds.element_spec["labels"].shape[1:])
no_text = jnp.zeros((bs,) + text_size, jnp.int32)
params = flax.core.unfreeze(model.init(rng, no_image, no_text))["params"]
return params
rng, rng_init = jax.random.split(rng)
with u.chrono.log_timing("z/secs/init"):
params_cpu = init(rng_init)
if jax.process_index() == 0:
num_params = sum(p.size for p in jax.tree_leaves(params_cpu))
parameter_overview.log_parameter_overview(params_cpu, msg="init params")
mw.measure("num_params", num_params)
write_note(f"Initializing {config.optax_name} optimizer...")
tx, sched_fns = bv_optax.make(config, params_cpu, sched_kw=dict(
total_steps=total_steps, batch_size=batch_size, data_size=ntrain_img))
# We jit this, such that the arrays are created on the CPU, not device[0].
opt_cpu = jax.jit(tx.init, backend="cpu")(params_cpu)
sched_fns_cpu = [jax.jit(sched_fn, backend="cpu") for sched_fn in sched_fns]
@functools.partial(jax.pmap, axis_name="batch", donate_argnums=(0, 1))
def update_fn(params, opt, rng, batch):
"""Update step."""
assert "mixup" not in config, "We still have to figure out mixup."
# Get device-specific loss rng.
rng, rng_model = jax.random.split(rng, 2)
rng_model_local = jax.random.fold_in(rng_model, jax.lax.axis_index("batch"))
def loss_fn(params, images, labels):
zimg, ztxt, extras = model.apply(
{"params": params}, images, labels,
train=True, rngs={"dropout": rng_model_local})
# Gather representations across cores for larger batch size for loss.
if config.get("loss_use_global_batch", False):
zimg, ztxt = all_gather((zimg, ztxt))
l, l_extras = u.bidirectional_contrastive_loss(
zimg, ztxt, extras["t"], reduction=True)
return l, {
"t": extras["t"],
"t/parameter": extras["t/parameter"],
"nimg": jnp.mean(extras["img/norm"]),
"ntxt": jnp.mean(extras["txt/norm"]),
**l_extras,
}
(l, measurements), grads = jax.value_and_grad(
loss_fn, has_aux=True)(params, batch["image"], batch["labels"])
l, measurements, grads = jax.lax.pmean((l, measurements, grads),
axis_name="batch")
updates, opt = tx.update(grads, opt, params)
params = optax.apply_updates(params, updates)
gs = jax.tree_leaves(bv_optax.replace_frozen(config.schedule, grads, 0.))
measurements["l2_grads"] = jnp.sqrt(sum([jnp.vdot(g, g) for g in gs]))
ps = jax.tree_leaves(params)
measurements["l2_params"] = jnp.sqrt(sum([jnp.vdot(p, p) for p in ps]))
us = jax.tree_leaves(updates)
measurements["l2_updates"] = jnp.sqrt(sum([jnp.vdot(u, u) for u in us]))
return params, opt, rng, l, measurements
# We require hashable function reference for evaluator.
# We do not jit/pmap this function, because it is passed to evaluator that
# does it later. We output as many intermediate tensors as possible for
# maximal flexibility. Later `jit` will prune out things that are not needed.
def predict_fn(params, image=None, text=None, **unused_kwargs):
del unused_kwargs # `unused_kwargs` is to be compatible with few-shot
zimg, ztxt, out = model.apply({"params": params}, image, text)
return zimg, ztxt, out
# Only initialize evaluators when they are first needed.
@functools.lru_cache(maxsize=None)
def evaluators():
return eval_common.from_config(
config, {"predict": predict_fn},
lambda s: write_note(f"Init evaluator: {s}…\n{u.chrono.note}"),
lambda key, cfg: get_steps(key, default=None, cfg=cfg),
)
# Decide how to initialize training. The order is important.
# 1. Always resumes from the existing checkpoint, e.g. resumes a finetune job.
# 2. Resume from a previous checkpoint, e.g. start a cooldown training job.
# 3. Initialize model from something, e,g, start a fine-tuning job.
# 4. Train from scratch.
resume_ckpt_path = None
if save_ckpt_path and gfile.exists(save_ckpt_path):
resume_ckpt_path = save_ckpt_path
elif config.get("resume"):
resume_ckpt_path = config.resume.format(wid=xm_wu.id)
if resume_ckpt_path:
write_note("Resume training from checkpoint...")
checkpoint = {
"params": params_cpu,
"opt": opt_cpu,
"chrono": u.chrono.save(),
}
checkpoint_tree = jax.tree_structure(checkpoint)
loaded = u.load_checkpoint(checkpoint_tree, resume_ckpt_path)
# bfloat16 type gets lost when data is saved to disk, so we recover it.
checkpoint = jax.tree_map(u.recover_dtype, loaded)
params_cpu, opt_cpu = checkpoint["params"], checkpoint["opt"]
u.chrono.load(checkpoint["chrono"])
elif config.get("model_init"):
write_note(f"Initialize model from {config.model_init}...")
params_cpu = model_mod.load(
params_cpu, config.model_init, config.get("model"),
**config.get("model_load", {}))
if jax.process_index() == 0:
parameter_overview.log_parameter_overview(
params_cpu, msg="restored params")
write_note("Kicking off misc stuff...")
first_step = bv_optax.get_count(opt_cpu)
u.chrono.inform(first_step=first_step)
prof = None # Keeps track of start/stop of profiler state.
write_note(f"Replicating...\n{u.chrono.note}")
params_repl = flax.jax_utils.replicate(params_cpu)
opt_repl = flax.jax_utils.replicate(opt_cpu)
rng, rng_loop = jax.random.split(rng, 2)
rngs_loop = flax.jax_utils.replicate(rng_loop)
ckpt_writer = None
write_note(f"First step compilations...\n{u.chrono.note}")
# Using a python integer for step here, because opt.state.step is allocated
# on TPU during replication.
for step, batch in zip(range(first_step + 1, total_steps + 1), train_iter):
mw.step_start(step)
with jax.profiler.StepTraceAnnotation("train_step", step_num=step):
with u.chrono.log_timing("z/secs/update0", noop=step > first_step + 1):
params_repl, opt_repl, rngs_loop, loss_value, measurements = update_fn(
params_repl, opt_repl, rngs_loop, batch)
# On the first host, let's always profile a handful of early steps.
if jax.process_index() == 0:
prof = u.startstop_prof(prof, step, first_step, get_steps("log_training"))
# Report training progress
if (u.itstime(step, get_steps("log_training"), total_steps, host=0)
or u.chrono.warmup and jax.process_index() == 0):
for i, sched_fn_cpu in enumerate(sched_fns_cpu):
mw.measure(f"global_schedule{i if i else ''}", sched_fn_cpu(step - 1))
l = mw.measure("training_loss", loss_value[0])
for name, value in measurements.items():
mw.measure(name, value[0])
u.chrono.tick(step)
if not np.isfinite(l):
raise RuntimeError(f"The loss became nan or inf somewhere within steps "
f"[{step - get_steps('log_training')}, {step}]")
# Checkpoint saving
if (save_ckpt_path and
(u.itstime(step, get_steps("ckpt", None), total_steps, host=0) or
u.itstime(step, get_steps("keep_ckpt", None), total_steps, host=0))):
u.chrono.pause(wait_for=(params_repl, opt_repl))
u.checkpointing_timeout(ckpt_writer, config.get("ckpt_timeout", 1))
# We need to transfer the weights over now or else we risk keeping them
# alive while they'll be updated in a future step, creating hard to debug
# memory errors (see (internal link)). Also, takes device 0's params only.
params_cpu = jax.tree_map(lambda x: np.array(x[0]), params_repl)
opt_cpu = jax.tree_map(lambda x: np.array(x[0]), opt_repl)
# Check whether we want to keep a copy of the current checkpoint.
copy_step = None
if u.itstime(step, get_steps("keep_ckpt", None), total_steps):
copy_step = step
ckpt = {"params": params_cpu, "opt": opt_cpu, "chrono": u.chrono.save()}
ckpt_writer = pool.apply_async(
u.save_checkpoint, (ckpt, save_ckpt_path, copy_step))
u.chrono.resume()
for (name, evaluator, log_steps, prefix) in evaluators():
if u.itstime(step, log_steps, total_steps, first=log_steps < total_steps,
last=False):
u.chrono.pause(wait_for=params_repl)
u.chrono.tick(step) # Record things like epoch number, core hours etc.
write_note(f"{name} evaluation...\n{u.chrono.note}")
with u.chrono.log_timing(f"z/secs/eval/{name}"):
for key, value in evaluator.run(params_repl):
mw.measure(f"{prefix}{key}", value)
u.chrono.resume()
mw.step_end()
# Run evals after done with training. Running them here guarantees evals
# will run if job is restarted after writting the last checkpoint and
# also supports eval only runs (when total_steps or num_epochs is 0).
mw.step_start(total_steps)
for (name, evaluator, _, prefix) in evaluators():
write_note(f"{name} evaluation...\n{u.chrono.note}")
with u.chrono.log_timing(f"z/secs/eval/{name}"):
for key, value in evaluator.run(params_repl):
mw.measure(f"{prefix}{key}", value)
# Always give a chance to stop the profiler, no matter how things ended.
# TODO: can we also do this when dying of an exception like OOM?
if jax.process_index() == 0 and prof is not None:
u.startstop_prof(prof)
# Last note needs to happen before the pool's closed =)
write_note(f"Done!\n{u.chrono.note}")
pool.close()
pool.join()
mw.close()
# Make sure all hosts stay up until the end of main.
u.sync()
u.maybe_cleanup_workdir(workdir, flags.FLAGS.cleanup, info)
if __name__ == "__main__":
app.run(main)