Files
neuron-tai/packages/node/meshnet_node/architecture_boundary.py
2026-07-14 13:52:57 +03:00

187 lines
6.8 KiB
Python

"""Certified architecture adapters for the public TensorBundle boundary.
The adapter is intentionally small: it owns boundary names and endpoint rules,
not transformer execution. llama.cpp owns local graphs; callers select a
certified adapter before accepting an activation from another Shard.
"""
from __future__ import annotations
from dataclasses import dataclass
from enum import Enum
import struct
from typing import Callable, Mapping, Sequence
from .native_protocol import (
HIDDEN_STATES,
ProtocolError,
encode_bundle,
encode_tensor,
pb,
validate_tail_result,
)
class Architecture(str, Enum):
DENSE = "dense"
MOE = "moe"
MLA = "mla"
class BoundaryStage(str, Enum):
HEAD = "head"
MIDDLE = "middle"
TAIL = "tail"
@dataclass(frozen=True)
class ProtocolIdentity:
request_id: str
runtime_recipe_digest: str
chat_template_id: str
chat_template_version: str
reasoning_mode: str
architecture: Architecture
@dataclass(frozen=True)
class SamplingParameters:
temperature: float
top_p: float
top_k: int
seed: int
@dataclass(frozen=True)
class TailOutput:
kind: str
value: int | object
@classmethod
def sampled_token(cls, token_id: int) -> "TailOutput":
if token_id < 0:
raise ProtocolError("sampled token id must be non-negative")
return cls("sampled_token", token_id)
@dataclass(frozen=True)
class TypedTailResult:
identity: ProtocolIdentity
sampling: SamplingParameters
output_kind: str
message: pb.TailResult
@property
def sampled_token_id(self) -> int | None:
return self.message.sampled_token_id if self.output_kind == "sampled_token_id" else None
@dataclass(frozen=True)
class ArchitectureBoundaryAdapter:
architecture: Architecture
required_names: frozenset[str]
@property
def protocol_architecture(self) -> int:
return {
Architecture.DENSE: pb.ARCHITECTURE_TYPE_DENSE,
Architecture.MOE: pb.ARCHITECTURE_TYPE_MOE,
Architecture.MLA: pb.ARCHITECTURE_TYPE_MLA,
}[self.architecture]
def bundle_from_token_ids(
self,
token_ids: Sequence[int],
token_embedding: Callable[[int], Sequence[float]],
):
"""Head-only embedding entry point; middle/tail never receive IDs."""
if self.architecture is not Architecture.DENSE:
raise ProtocolError("head token embedding is not certified for this architecture")
if not token_ids:
raise ProtocolError("head requires at least one token id")
rows = [tuple(token_embedding(token)) for token in token_ids]
if not rows or not rows[0] or any(len(row) != len(rows[0]) for row in rows):
raise ProtocolError("token embedding returned inconsistent hidden widths")
payload = struct.pack("<" + "f" * (len(rows) * len(rows[0])), *(x for row in rows for x in row))
return self.bundle_from_named_payloads({HIDDEN_STATES: payload}, shape=[1, len(rows), len(rows[0])])
def bundle_from_named_payloads(
self, payloads: Mapping[str, bytes], *, shape: Sequence[int] | None = None
):
names = set(payloads)
if not self.required_names <= names:
missing = sorted(self.required_names - names)
raise ProtocolError(f"{self.architecture.value} boundary requires {missing}")
tensors = []
for name, payload in payloads.items():
tensor_shape = list(shape) if name == HIDDEN_STATES and shape else [len(payload) // 4]
if len(payload) % 4:
raise ProtocolError(f"{name!r} F32 fixture payload is not word aligned")
tensors.append(encode_tensor(name, payload, tensor_shape, pb.DTYPE_FLOAT32))
return encode_bundle(
tensors,
architecture=self.protocol_architecture,
boundary_point="pre_tail_residual",
)
def input_for(self, stage: BoundaryStage, bundle):
"""Accept architecture state only after the head embedding boundary."""
if stage is BoundaryStage.HEAD:
raise ProtocolError("head accepts token ids and owns token embedding")
if bundle is None:
raise ProtocolError(f"{stage.value} requires a TensorBundle")
from .native_protocol import decode_bundle
payloads = decode_bundle(bundle)
if bundle.architecture != self.protocol_architecture:
raise ProtocolError("boundary architecture does not match certified adapter")
if bundle.boundary_point != "pre_tail_residual":
raise ProtocolError("unsupported architecture boundary point")
if not self.required_names <= set(payloads):
raise ProtocolError(f"{self.architecture.value} boundary requires {sorted(self.required_names)}")
return bundle
def tail_result(
self, *, identity: ProtocolIdentity, sampling: SamplingParameters, output: TailOutput
) -> TypedTailResult:
if identity.architecture is not self.architecture:
raise ProtocolError("tail result architecture does not match certified adapter")
if not identity.request_id or not identity.runtime_recipe_digest:
raise ProtocolError("tail result requires exact request and recipe identity")
if output.kind != "sampled_token":
raise ProtocolError("uncertified tail output kind")
message = pb.TailResult(
identity=pb.RequestRecipeIdentity(
request_id=identity.request_id,
runtime_recipe_digest=identity.runtime_recipe_digest,
chat_template_id=identity.chat_template_id,
chat_template_version=identity.chat_template_version,
reasoning_mode=identity.reasoning_mode,
architecture=self.protocol_architecture,
),
sampling=pb.SamplingParameters(
temperature=sampling.temperature,
top_p=sampling.top_p,
top_k=sampling.top_k,
seed=sampling.seed,
greedy=sampling.temperature == 0.0,
),
sampled_token_id=int(output.value),
)
validate_tail_result(message)
return TypedTailResult(identity, sampling, "sampled_token_id", message)
_ADAPTERS = {
Architecture.DENSE: ArchitectureBoundaryAdapter(Architecture.DENSE, frozenset({HIDDEN_STATES})),
Architecture.MOE: ArchitectureBoundaryAdapter(Architecture.MOE, frozenset({HIDDEN_STATES, "router_logits"})),
Architecture.MLA: ArchitectureBoundaryAdapter(Architecture.MLA, frozenset({HIDDEN_STATES, "mla_position_state"})),
}
def adapter_for(architecture: Architecture | str) -> ArchitectureBoundaryAdapter:
try:
return _ADAPTERS[Architecture(architecture)]
except (KeyError, ValueError):
raise ProtocolError(f"unsupported architecture {architecture!r}") from None