"""Code for serving bloom blocks via hivemind-server""" from typing import Sequence, Tuple import torch from hivemind.moe.server.module_backend import ModuleBackend from hivemind.moe.server.task_pool import TaskPool from src.bloom.from_pretrained import BloomBlock from src.server.cache import MemoryCache MAX_LENGTH = 2048 class TransformerBackend(ModuleBackend): """A wrapper for BloomBlock that can process requests for bloom layer forward, forward_incremental, and backward""" def __init__(self, *args, memory_cache: MemoryCache, **kwargs): super().__init__(*args, **kwargs) assert isinstance(self.module, BloomBlock) self.memory_cache = memory_cache for name, param in self.module.named_parameters(): assert not param.requires_grad, f"Bloom layer parameters must not accumulate gradients, but {name} does" for name, buf in self.module.named_buffers(): assert not buf.requires_grad, f"Bloom layer parameters must not accumulate gradients, but {name} does" self.inference_pool = TaskPool(self.inference_step, max_batch_size=1, name=f"{self.name}_inference") def inference_step(self, cache_metadata: torch.IntTensor, *inputs: torch.Tensor) -> Tuple[torch.Tensor, ...]: with torch.inference_mode(): attention_cache_handle = int(cache_metadata[0, 0].item()) prefix_length = int(cache_metadata[0, 1].item()) hidden_states = inputs[0] # todo: in future, it would be best to support attention mask here assert ( hidden_states.ndim == 3 ), "expected hidden states to be 3-dimensional: [batch_size, seq_len, hid_size]" with self.memory_cache.use_cache(attention_cache_handle) as cache: assert isinstance(self.module, BloomBlock) and cache.shape[0] == 2 and cache.ndim == 5 layer_past = past_k, past_v = cache[0, :, :prefix_length], cache[1, :, :prefix_length] print("METADATA:", cache_metadata, past_k.shape, past_v.shape) hidden_states, (new_k, new_v) = self.module.forward( hidden_states, layer_past=layer_past, use_cache=True ) # todo remove these asserts once we pass all tests new_length = new_v.shape[1] assert new_length > prefix_length assert new_k.shape[0] == past_k.shape[0] and new_v.shape[0] == past_v.shape[0] assert new_k.shape[1] == new_length and new_v.shape[1] == new_length assert new_k.shape[2:] == past_k.shape[2:] and new_v.shape[2:] == past_v.shape[2:] assert torch.allclose(new_v[:, : past_v.shape[1]], past_v) assert torch.allclose(new_k[:, : past_k.shape[1]], past_k) cache[0, :, prefix_length:new_length, :] = new_k[:, prefix_length:new_length] cache[1, :, prefix_length:new_length, :] = new_v[:, prefix_length:new_length] return (hidden_states,) def get_pools(self) -> Sequence[TaskPool]: return self.forward_pool, self.backward_pool, self.inference_pool