This commit is contained in:
Dobromir Popov
2026-07-08 23:32:51 +03:00
parent d648da3344
commit 94046f1102
6 changed files with 644 additions and 49 deletions

View File

@@ -1,5 +1,6 @@
"""US-012 tests for the real PyTorch node backend."""
from collections import OrderedDict
import json
import os
from pathlib import Path
@@ -14,6 +15,7 @@ import pytest
from meshnet_node.model_backend import (
InsufficientVRAMError,
PartialModelLoadUnsupported,
ShardCacheMiss,
TensorPayload,
TorchModelShard,
_call_layer,
@@ -43,7 +45,15 @@ class _FakeBackend:
position_ids_header=None,
)
def forward_bytes(self, body, shape, attention_mask_header, position_ids_header, start_layer=None):
def forward_bytes(
self,
body,
shape,
attention_mask_header,
position_ids_header,
start_layer=None,
**kwargs, # noqa: ARG002
):
assert shape == [1, 6, 8]
return TensorPayload(
body=body,
@@ -57,7 +67,15 @@ class _FakeTailBackend(_FakeBackend):
is_head = False
is_tail = True
def forward_bytes(self, body, shape, attention_mask_header, position_ids_header, start_layer=None):
def forward_bytes(
self,
body,
shape,
attention_mask_header,
position_ids_header,
start_layer=None,
**kwargs, # noqa: ARG002
):
assert len(body) == 1 * 6 * 8 * 2
return " Paris"
@@ -114,7 +132,15 @@ class _FakePipelineTailBackend(_FakeTailBackend):
def __init__(self) -> None:
self.start_layers: list[int | None] = []
def forward_bytes(self, body, shape, attention_mask_header, position_ids_header, start_layer=None):
def forward_bytes(
self,
body,
shape,
attention_mask_header,
position_ids_header,
start_layer=None,
**kwargs, # noqa: ARG002
):
self.start_layers.append(start_layer)
assert len(body) == 1 * 6 * 8 * 2
return " token"
@@ -125,7 +151,15 @@ class _BlockingStreamingTailBackend(_FakeTailBackend):
self._release = second_token_release
self.calls = 0
def forward_bytes(self, body, shape, attention_mask_header, position_ids_header, start_layer=None):
def forward_bytes(
self,
body,
shape,
attention_mask_header,
position_ids_header,
start_layer=None,
**kwargs, # noqa: ARG002
):
self.calls += 1
if self.calls == 1:
return " first"
@@ -488,13 +522,118 @@ def test_call_layer_passes_rotary_position_embeddings():
assert kwargs["position_embeddings"] == "rotary"
return hidden_states
assert _call_layer(
hidden, cache_state = _call_layer(
NeedsPositionEmbeddings(),
"hidden",
attention_mask=None,
position_ids="positions",
position_embeddings="rotary",
) == "hidden"
)
assert hidden == "hidden"
assert cache_state is None
def _fake_cache_shard(torch, *, max_sessions=16, ttl=600.0):
class RecordingLayer:
def __init__(self, index):
self.index = index
self.calls = []
def __call__(self, hidden_states, **kwargs):
self.calls.append({
"shape": tuple(hidden_states.shape),
"use_cache": kwargs.get("use_cache"),
"past_key_value": kwargs.get("past_key_value"),
})
present = {
"layer": self.index,
"shape": tuple(hidden_states.shape),
"opaque": object(),
}
return hidden_states + (self.index + 1), present
shard = object.__new__(TorchModelShard)
shard.shard_start = 0
shard.shard_end = 1
shard.torch = torch
shard.model = types.SimpleNamespace(model=types.SimpleNamespace(layers=[]))
shard.layers = [RecordingLayer(0), RecordingLayer(1)]
shard._session_cache = OrderedDict()
shard._cache_max_sessions = max_sessions
shard._cache_ttl_seconds = ttl
return shard
def test_shard_cache_prefill_then_decode_reuses_opaque_layer_state():
torch = pytest.importorskip("torch")
shard = _fake_cache_shard(torch)
prefill_hidden = torch.zeros((1, 4, 2), dtype=torch.bfloat16)
prefill_mask = torch.ones((1, 4), dtype=torch.long)
prefill_positions = torch.arange(4, dtype=torch.long).reshape(1, 4)
shard._run_layers(
prefill_hidden,
prefill_mask,
prefill_positions,
session_id="session-1",
cache_mode="prefill",
seq_len=4,
)
assert len(shard._session_cache) == 1
cached_states = next(iter(shard._session_cache.values())).layer_states
assert len(cached_states) == 2
assert cached_states[0]["shape"] == (1, 4, 2)
decode_hidden = torch.zeros((1, 1, 2), dtype=torch.bfloat16)
decode_mask = torch.ones((1, 5), dtype=torch.long)
decode_positions = torch.tensor([[4]], dtype=torch.long)
shard._run_layers(
decode_hidden,
decode_mask,
decode_positions,
session_id="session-1",
cache_mode="decode",
seq_len=5,
)
assert shard.layers[0].calls[-1]["shape"] == (1, 1, 2)
assert shard.layers[0].calls[-1]["past_key_value"] is cached_states[0]
assert shard.layers[1].calls[-1]["past_key_value"] is cached_states[1]
assert next(iter(shard._session_cache.values())).seq_len == 5
def test_shard_cache_decode_miss_is_explicit():
torch = pytest.importorskip("torch")
shard = _fake_cache_shard(torch)
with pytest.raises(ShardCacheMiss):
shard._run_layers(
torch.zeros((1, 1, 2), dtype=torch.bfloat16),
torch.ones((1, 5), dtype=torch.long),
torch.tensor([[4]], dtype=torch.long),
session_id="missing",
cache_mode="decode",
seq_len=5,
)
def test_shard_cache_lru_bounds_sessions():
torch = pytest.importorskip("torch")
shard = _fake_cache_shard(torch, max_sessions=1)
for session in ("old", "new"):
shard._run_layers(
torch.zeros((1, 2, 2), dtype=torch.bfloat16),
torch.ones((1, 2), dtype=torch.long),
torch.arange(2, dtype=torch.long).reshape(1, 2),
session_id=session,
cache_mode="prefill",
seq_len=2,
)
assert list(shard._session_cache.keys()) == [("new", 0, 1)]
def test_partial_materialize_guard_requires_local_non_full_non_quantized_snapshot(tmp_path):