mirror of
https://github.com/xai-org/grok-1.git
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606 lines
21 KiB
Python
606 lines
21 KiB
Python
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# Copyright 2024 X.AI Corp.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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import bisect
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import functools
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import logging
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import math
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import re
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from dataclasses import dataclass
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from typing import Any, Callable, NamedTuple, Optional, Tuple
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import haiku as hk
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import jax
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import jax.experimental.pjit as pjit
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import jax.numpy as jnp
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import numpy as np
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import sentencepiece
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from jax.experimental import mesh_utils
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from jax.sharding import PartitionSpec as P
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from jax.typing import ArrayLike
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import checkpoint as xai_checkpoint
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from model import (
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LanguageModelConfig,
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LanguageModelOutput,
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TrainingState,
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apply_rules,
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Memory,
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KVMemory,
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)
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logger = logging.getLogger(__name__)
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rank_logger = logging.getLogger("rank")
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TOP_K = 8
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class SampleSettings(NamedTuple):
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temperature: ArrayLike
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nucleus_p: ArrayLike
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mask: ArrayLike
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# Whether a given batch element is actively used. [B]
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active: ArrayLike
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class SampleOutput(NamedTuple):
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token_id: ArrayLike
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prob: ArrayLike
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top_k_token_ids: ArrayLike
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top_k_probs: ArrayLike
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def insert_slice(memory: Memory, slice, length, i):
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slice = Memory(
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layers=[
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KVMemory(layer.k, layer.v, step=jnp.array([length]))
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for layer in slice.layers
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],
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)
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return jax.tree_map(lambda m, u: jax.lax.dynamic_update_index_in_dim(m, u[0], i, axis=0),
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memory, slice)
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def pad_to_size(x, size):
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if x.shape[0] > size:
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# Left truncate if the context is too long.
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x = x[-size:]
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return np.pad(x, [0, size - x.shape[0]], mode="constant", constant_values=0)
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def top_p_filter(logits: jax.Array, top_p: jax.Array) -> jax.Array:
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"""Performs nucleus filtering on logits."""
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assert logits.ndim == top_p.ndim, f"Expected {logits.ndim} equal {top_p.ndim}"
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sorted_logits = jax.lax.sort(logits, is_stable=False)
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sorted_probs = jax.nn.softmax(sorted_logits)
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threshold_idx = jnp.argmax(jnp.cumsum(sorted_probs, -1) >= 1 - top_p, axis=-1)
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threshold_largest_logits = jnp.take_along_axis(
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sorted_logits, threshold_idx[..., jnp.newaxis], axis=-1
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)
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assert threshold_largest_logits.shape == logits.shape[:-1] + (1,)
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mask = logits >= threshold_largest_logits
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# Set unused logits to -inf.
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logits = jnp.where(mask, logits, -1e10)
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return logits
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def sample_token(
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rngs: jax.random.PRNGKey,
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lm_outputs: LanguageModelOutput,
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settings: SampleSettings,
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) -> SampleOutput:
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# Expand the settings shape to match the logit shape.
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settings = SampleSettings(
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temperature=jnp.expand_dims(settings.temperature, (1, 2)), # Input [B], output [B, 1, 1].
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nucleus_p=jnp.expand_dims(settings.nucleus_p, (1, 2)), # Input [B], output [B, 1, 1].
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mask=jnp.expand_dims(settings.mask, 1), # Input [B, V], output [B, 1, V].
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active=settings.active, # [B].
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)
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logits = lm_outputs.logits / settings.temperature.astype(lm_outputs.logits.dtype)
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# Mask out all disallowed tokens by assigning them a near-zero probability.
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logits = jnp.where(settings.mask, logits, -1e10)
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# Mask out all tokens that don't fall into the p-th percentile.
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logits = top_p_filter(logits, settings.nucleus_p.astype(logits.dtype))
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new_token = jax.vmap(jax.random.categorical)(rngs, logits)
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probabilities = jax.nn.softmax(logits)
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token_prob = jnp.take_along_axis(probabilities, jnp.expand_dims(new_token, 1), axis=2)
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token_prob = jnp.squeeze(token_prob, 1)
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# Gather the top-k tokens and probabilities.
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top_k_probs, top_k_token_ids = jax.lax.top_k(probabilities, TOP_K)
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top_k_probs = jnp.squeeze(top_k_probs, 1)
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top_k_token_ids = jnp.squeeze(top_k_token_ids, 1)
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return SampleOutput(
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new_token,
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token_prob,
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top_k_token_ids,
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top_k_probs,
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)
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@dataclass
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class ModelRunner:
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model: LanguageModelConfig
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bs_per_device: float = 2.0
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load_rename_rules: Optional[list[tuple[str, str]]] = None
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load_exclude_rules: Optional[list[str]] = None
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rng_seed: int = 42 # Initial rng seed.
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transform_forward: bool = False
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checkpoint_path: str = ""
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def make_forward_fn(self, mesh: Any):
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def forward(tokens):
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out = self.model.make(mesh=mesh)(tokens)
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return out, None
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if self.transform_forward:
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forward = hk.transform(forward)
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return forward
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def initialize(
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self,
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init_data,
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local_mesh_config: tuple[int, int],
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between_hosts_config: tuple[int, int],
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):
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num_replicas = math.prod(between_hosts_config)
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self.model.initialize()
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self.model.fprop_dtype = jnp.bfloat16
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num_local_gpus = len(jax.local_devices())
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# Calculate the global batch size from the local batch size.
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self.batch_size = int(self.bs_per_device * num_local_gpus * num_replicas)
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# Calculate the batch size per host from the global batch size.
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self.local_batch_size = self.batch_size // jax.process_count()
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self.local_mesh_config = local_mesh_config
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self.between_hosts_config = between_hosts_config
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rank_logger.info(
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f"Initializing mesh for {self.local_mesh_config=} {self.between_hosts_config=}..."
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)
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self.mesh = make_mesh(self.local_mesh_config, self.between_hosts_config)
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self.forward = self.make_forward_fn(mesh=self.mesh)
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self.logits_fn = hk.transform(lambda tokens: self.forward(tokens)[0])
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self.eval_forward = self.make_forward_fn(mesh=self.mesh)
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self.logits_eval_fn = hk.transform(lambda tokens: self.eval_forward(tokens)[0])
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if self.transform_forward:
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self.state_sharding = self.get_state_sharding(init_data)
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rank_logger.info(f"State sharding type: {type(self.state_sharding)}")
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self.init_fn = pjit.pjit(self.init, out_shardings=self.state_sharding)
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def init(self, rng: jax.Array, data) -> TrainingState:
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assert self.transform_forward
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rng, init_rng = jax.random.split(rng)
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params = self.forward.init(init_rng, data["inputs"])
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return TrainingState(params=params)
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def get_state_sharding(self, init_data):
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assert self.transform_forward
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rng = jax.random.PRNGKey(self.rng_seed)
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rank_logger.info(f"partition rules: {self.model.partition_rules}")
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with self.mesh:
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shapes = jax.eval_shape(self.init, rng, init_data)
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sharding = jax.tree_util.tree_map_with_path(
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apply_rules(self.model.partition_rules()),
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shapes,
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)
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return sharding
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def load_or_init(
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self,
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init_data: Any,
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from_checkpoint: bool = True,
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init_fn: Optional[Callable] = None,
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):
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rng = jax.random.PRNGKey(self.rng_seed)
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if not self.checkpoint_path or not from_checkpoint:
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rank_logger.info("Initializing model...")
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with self.mesh:
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if init_fn is not None:
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state = init_fn(rng, init_data)
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else:
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assert self.transform_forward
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state = self.init_fn(rng, init_data)
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rank_logger.info("Model state is newly initialized.")
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else:
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with self.mesh:
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if init_fn:
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state_shapes = jax.eval_shape(init_fn, rng, init_data)
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else:
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assert self.transform_forward
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state_shapes = jax.eval_shape(self.init_fn, rng, init_data)
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init_state = None
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state = xai_checkpoint.restore(
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checkpoint_path=self.checkpoint_path,
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state_shapes=state_shapes,
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mesh=self.mesh,
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between_hosts_config=self.between_hosts_config,
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state_sharding=self.state_sharding,
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init_state=init_state,
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params_only=True,
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)
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del init_state
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return state
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@dataclass
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class Request:
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prompt: str
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temperature: float
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nucleus_p: float
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rng_seed: int
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max_len: int
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@dataclass
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class InferenceRunner:
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name: str
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runner: Any
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load: str
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tokenizer_path: str = "/tmp/xai_data/tokenizer.model"
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local_mesh_config: Tuple[int, int] = (1, 1)
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between_hosts_config: Tuple[int, int] = (1, 1)
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pad_sizes: tuple[int] = (1024,)
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def get_pad_bucket(self, size):
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i = bisect.bisect_left(self.pad_sizes, size)
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return self.pad_sizes[min(i, len(self.pad_sizes) - 1)]
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def initialize(self):
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runner = self.runner
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self.runner.transform_forward = True
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dummy_data = dict(
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inputs=np.zeros((1, 256), dtype=np.int32),
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targets=np.zeros((1, 256), dtype=np.int32),
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)
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runner.initialize(
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dummy_data,
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local_mesh_config=self.local_mesh_config,
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between_hosts_config=self.between_hosts_config,
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)
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self.tokenizer = sentencepiece.SentencePieceProcessor(model_file=self.tokenizer_path)
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max_len = runner.model.sequence_len
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self.vocab_size = self.runner.model.vocab_size
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params = runner.load_or_init(dummy_data)
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self.params = params
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def pad_to_max_len(x):
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if len(x.shape) > 1:
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pad_width = max_len - x.shape[1]
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return jnp.pad(x, [(0, 0), (0, pad_width), (0, 0), (0, 0)])
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else:
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return x
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@functools.lru_cache
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def lm():
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return runner.model.make(mesh=runner.mesh)
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def hk_forward(
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tokens,
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memory=None,
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length=None,
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active=None,
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) -> LanguageModelOutput:
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if memory is not None:
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assert active is not None
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layers = []
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for l in memory.layers:
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# Reset steps to 0 for inactive requests to avoid unnecessary computations.
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step = jnp.where(active, l.step, jnp.zeros_like(l.step))
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layers.append(l._replace(step=step))
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memory = memory._replace(layers=layers)
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return lm()(tokens, memory, length=length)
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def hk_sample_step(rngs, last_output: SampleOutput, memory, settings):
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rngs, rngs_ = jax.vmap(jax.random.split, out_axes=1)(rngs)
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lm_outputs = hk_forward(last_output.token_id, memory=memory, active=settings.active)
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sample_result = sample_token(rngs_, lm_outputs, settings)
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return rngs, sample_result, lm_outputs.model_state
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def hk_new_memory(batch_size, sequence_len):
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return lm().init_memory(batch_size, sequence_len)
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def hk_prefill_memory(
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rngs,
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memory,
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settings,
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last_output,
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prompt,
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length,
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rng_seed,
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new_settings,
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i,
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):
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rng = jax.random.PRNGKey(seed=rng_seed)
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rng, rng_ = jax.random.split(rng)
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# Allocate new memory for this sample. The memory length is equal to the length of the
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# prompt.
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slice = hk_new_memory(1, prompt.shape[0])
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# Move the settings for this individual batch entry into the joint settings tensor.
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settings = jax.tree_map(
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lambda o, v: jax.lax.dynamic_update_index_in_dim(o, v, i, axis=0),
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settings,
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new_settings,
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)
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# Get the settings for the batch entry from the joint settings tensor.
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settings_slice = jax.tree_map(lambda t: jnp.expand_dims(t[i], axis=0), settings)
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# Process the first n-1 tokens of the prompt.
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lm_outputs = hk_forward(
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jnp.expand_dims(prompt, 0),
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memory=slice,
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length=jnp.expand_dims(length, 0),
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active=settings_slice.active,
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)
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# The forward pass doesn't correctly set the `step` counter inside the memory. Manually
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# override it so `hk_forward` uses the correct context length in the next call.
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slice = lm_outputs.model_state
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slice = slice._replace(
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layers=[l._replace(step=jnp.array([length])) for l in slice.layers]
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)
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# Sample the actual output token.
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rng_ = jnp.expand_dims(rng_, 0)
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new_output = sample_token(rng_, lm_outputs, settings_slice)
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# Update the KV cache/memory.
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slice = jax.tree_map(pad_to_max_len, slice)
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memory = insert_slice(memory, slice, length, i)
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rng = jnp.expand_dims(rng, 0)
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rngs = jax.lax.dynamic_update_index_in_dim(rngs, rng, i, axis=0)
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# Move the network outputs for this batch entry into the joint output tensor.
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last_output = jax.tree_util.tree_map(
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lambda last, new: jax.lax.dynamic_update_index_in_dim(last, new, i, axis=0),
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last_output,
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new_output,
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)
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return rngs, last_output, memory, settings
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sample_step_ = hk.without_apply_rng(hk.transform(hk_sample_step))
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prefill_memory_ = hk.without_apply_rng(hk.transform(hk_prefill_memory))
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new_memory_ = hk.without_apply_rng(hk.transform(hk_new_memory))
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forward_ = hk.without_apply_rng(hk.transform(hk_forward))
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rng = jax.random.PRNGKey(42)
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dummy_tokens = jnp.zeros((1, max_len), jnp.int32)
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with runner.mesh:
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shapes = jax.eval_shape(forward_.init, rng, dummy_tokens)
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self.params_sharding = jax.tree_util.tree_map_with_path(
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apply_rules(runner.model.partition_rules()),
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|
shapes,
|
||
|
)
|
||
|
|
||
|
ds = P("data")
|
||
|
ms = runner.model.model.get_memory_sharding()
|
||
|
self.sample_step = pjit.pjit(
|
||
|
sample_step_.apply,
|
||
|
in_shardings=(self.params_sharding, None, ds, ms, None),
|
||
|
out_shardings=(None, ds, ms),
|
||
|
donate_argnums=3,
|
||
|
)
|
||
|
self.prefill_memory = pjit.pjit(
|
||
|
functools.partial(prefill_memory_.apply),
|
||
|
in_shardings=(
|
||
|
self.params_sharding,
|
||
|
None,
|
||
|
ms,
|
||
|
None,
|
||
|
ds,
|
||
|
None,
|
||
|
None,
|
||
|
None,
|
||
|
None,
|
||
|
None,
|
||
|
),
|
||
|
out_shardings=(None, ds, ms, None),
|
||
|
donate_argnums=(2,),
|
||
|
)
|
||
|
self.new_memory = pjit.pjit(
|
||
|
new_memory_.apply,
|
||
|
static_argnums=(1, 2),
|
||
|
out_shardings=ms,
|
||
|
)
|
||
|
|
||
|
def run(self):
|
||
|
"""Generator that accepts prompts."""
|
||
|
runner = self.runner
|
||
|
mesh = runner.mesh
|
||
|
max_len = runner.model.sequence_len
|
||
|
batch_size = runner.batch_size
|
||
|
params = self.params
|
||
|
rngs = jax.random.split(jax.random.PRNGKey(1), batch_size)
|
||
|
with mesh:
|
||
|
memory = self.new_memory(params, batch_size, max_len)
|
||
|
settings = SampleSettings(
|
||
|
temperature=np.zeros((batch_size,), dtype=np.float32),
|
||
|
nucleus_p=np.zeros((batch_size,), dtype=np.float32),
|
||
|
mask=np.ones((batch_size, self.vocab_size), dtype=np.int32),
|
||
|
active=np.zeros((batch_size), dtype=np.int32),
|
||
|
)
|
||
|
last_output = SampleOutput(
|
||
|
token_id=np.zeros((batch_size, 1), dtype=np.int32),
|
||
|
prob=np.zeros((batch_size, 1), dtype=jnp.bfloat16),
|
||
|
top_k_token_ids=np.zeros((batch_size, TOP_K), dtype=np.int32),
|
||
|
top_k_probs=np.zeros((batch_size, TOP_K), dtype=jnp.bfloat16),
|
||
|
)
|
||
|
|
||
|
prompt = np.array([300, 400, 500, 600, 600, 700, 800])
|
||
|
|
||
|
new_settings = SampleSettings(
|
||
|
temperature=np.float32(1),
|
||
|
nucleus_p=np.float32(1),
|
||
|
mask=np.ones((self.vocab_size,), dtype=np.int32),
|
||
|
active=np.zeros((), dtype=np.int32),
|
||
|
)
|
||
|
rng_seed = np.uint64(1)
|
||
|
|
||
|
for size in self.pad_sizes:
|
||
|
if size > runner.model.sequence_len:
|
||
|
break
|
||
|
logger.info("Precompile {}".format(size))
|
||
|
prompt_len = len(prompt)
|
||
|
prompt = pad_to_size(prompt, size)
|
||
|
rngs, last_output, memory, settings = self.prefill_memory(
|
||
|
params,
|
||
|
rngs,
|
||
|
memory,
|
||
|
settings,
|
||
|
last_output,
|
||
|
prompt,
|
||
|
prompt_len,
|
||
|
rng_seed,
|
||
|
new_settings,
|
||
|
0,
|
||
|
)
|
||
|
with runner.mesh:
|
||
|
logger.info("Compiling...")
|
||
|
rngs, last_output, memory = self.sample_step(
|
||
|
params, rngs, last_output, memory, settings
|
||
|
)
|
||
|
logger.info("Done compiling.")
|
||
|
|
||
|
all_tokens = []
|
||
|
free_slots = list(range(batch_size))
|
||
|
requests = [None] * batch_size
|
||
|
first_output = [None] * batch_size
|
||
|
jax.tree_map(lambda x: x.copy_to_host_async(), last_output)
|
||
|
prev_token = last_output
|
||
|
step = 0
|
||
|
total_num_tokens = 0
|
||
|
total_num_sequences = 0
|
||
|
with mesh:
|
||
|
while True:
|
||
|
while free_slots:
|
||
|
request: Optional[Request] = yield
|
||
|
tokens = self.tokenizer.encode(request.prompt)
|
||
|
temperature = request.temperature
|
||
|
nucleus_p = request.nucleus_p
|
||
|
rng_seed = request.rng_seed
|
||
|
|
||
|
i = free_slots.pop()
|
||
|
prompt = np.array(tokens, dtype=np.int32)
|
||
|
prompt_len = len(prompt)
|
||
|
prompt = pad_to_size(prompt, self.get_pad_bucket(prompt.shape[0]))
|
||
|
# All tokens are allowed.
|
||
|
mask = np.ones((self.vocab_size,), dtype=np.int32)
|
||
|
|
||
|
new_settings = SampleSettings(
|
||
|
temperature=np.float32(temperature),
|
||
|
nucleus_p=np.float32(nucleus_p),
|
||
|
mask=mask,
|
||
|
active=np.ones((), dtype=np.int32),
|
||
|
)
|
||
|
rng_seed = np.uint64(rng_seed)
|
||
|
rngs, last_output, memory, settings = self.prefill_memory(
|
||
|
params,
|
||
|
rngs,
|
||
|
memory,
|
||
|
settings,
|
||
|
last_output,
|
||
|
prompt,
|
||
|
prompt_len,
|
||
|
rng_seed,
|
||
|
new_settings,
|
||
|
i,
|
||
|
)
|
||
|
jax.tree_map(lambda x: x.copy_to_host_async(), last_output)
|
||
|
first_output[i] = last_output
|
||
|
requests[i] = request
|
||
|
total_num_sequences += 1
|
||
|
|
||
|
rngs, last_output, memory = self.sample_step(
|
||
|
params, rngs, last_output, memory, settings
|
||
|
)
|
||
|
total_num_tokens += batch_size - len(free_slots)
|
||
|
|
||
|
# prev_token should already be on the host.
|
||
|
prev_token = jax.tree_map(np.array, prev_token)
|
||
|
for i in range(batch_size):
|
||
|
if requests[i] is not None:
|
||
|
if first_output[i] is not None:
|
||
|
first_output_i = jax.tree_map(np.array, first_output[i])
|
||
|
all_tokens.append(int(first_output_i.token_id[i][0]))
|
||
|
first_output[i] = None
|
||
|
continue
|
||
|
|
||
|
all_tokens.append(int(prev_token.token_id[i][0]))
|
||
|
cont = len(all_tokens) < requests[i].max_len
|
||
|
|
||
|
if not cont:
|
||
|
output_str = self.tokenizer.decode(all_tokens)
|
||
|
requests[i] = None
|
||
|
free_slots.append(i)
|
||
|
all_tokens = []
|
||
|
settings = settings._replace(active=settings.active.at[i].set(0))
|
||
|
yield output_str
|
||
|
|
||
|
jax.tree_map(lambda x: x.copy_to_host_async(), last_output)
|
||
|
prev_token = last_output
|
||
|
step += 1
|
||
|
|
||
|
|
||
|
def make_mesh(
|
||
|
local_mesh_config: tuple[int, ...], between_hosts_config: tuple[int, ...]
|
||
|
) -> jax.sharding.Mesh:
|
||
|
assert len(local_mesh_config) == 2
|
||
|
assert len(between_hosts_config) == 2
|
||
|
rank_logger.info("Detected %s devices in mesh", jax.device_count())
|
||
|
device_mesh = mesh_utils.create_hybrid_device_mesh(
|
||
|
local_mesh_config,
|
||
|
between_hosts_config,
|
||
|
devices=jax.devices(),
|
||
|
process_is_granule=True,
|
||
|
)
|
||
|
rank_logger.debug(re.sub("\n+", "\n", f"Job device mesh is:\n{device_mesh}"))
|
||
|
return jax.sharding.Mesh(device_mesh, ("data", "model"))
|
||
|
|
||
|
|
||
|
def sample_from_model(server, prompt, max_len, temperature):
|
||
|
next(server)
|
||
|
inp = Request(
|
||
|
prompt=prompt,
|
||
|
temperature=temperature,
|
||
|
nucleus_p=1.0,
|
||
|
rng_seed=42,
|
||
|
max_len=max_len,
|
||
|
)
|
||
|
return server.send(inp)
|