Establish English as the canonical ADR language with Korean translations held in a parallel docs/adr-ko/ tree as derived artifacts (1:1 mirror). Promotion from adr-proposed/ to adr/ now writes English to adr/ and the Korean to adr-ko/; bidirectional sync rule documented in CLAUDE.md. - Migrate 30 ADRs in docs/adr/: 28 Korean-only translated to English, 2 bilingual pairs (ADR-0020, ADR-0023) consolidated (.en.md suffix dropped). ADR-0023 EN regenerated against KO source which had newer HW Realization Notes (D16-D23) section. - docs/adr-history/ left frozen by design (transitional state). - CLAUDE.md (Part 2): update ADR Lifecycle for 4-folder layout, mark docs/adr-ko/ as a Derived Artifact, add ADR Translation Discipline section covering bidirectional sync, conflict resolution (EN wins), and proposed-language freedom. - tools/verify_adr_lang_pairs.py: new verification tool checking pair completeness, filename mirroring, ADR-ID match, Status byte-equality. Pre-commit hook intentionally not added; run on demand or in CI. - tests/test_verify_adr_lang_pairs.py: 11 cases including CRLF/LF normalization, em-dash title separator, underscore-slug edge case. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
6.8 KiB
ADR-0024: SIP-level Launcher — rank = SIP
Status
Accepted
Context
목표
torch.distributed collective 호출의 참여 단위(rank)를 SIP(device)
경계에 맞춘다. 실제 PyTorch DDP/TP 스크립트와 호스트 레벨에서 구분 없이
읽히는 bench 코드를 목표로 한다.
real PyTorch와 비교:
| 차원 | real PyTorch | KernBench |
|---|---|---|
| 프로세스 모델 | N개 프로세스, 각 1 GPU | 1 프로세스, N greenlet, 각 1 SIP |
get_rank() |
RANK env var |
greenlet-local 레지스트리 |
get_world_size() |
WORLD_SIZE env var |
topology의 SIP 수 |
torch.cuda.set_device(r) (real) / torch.ahbm.set_device(r) (KernBench) |
rank → GPU | rank → SIP |
mp.spawn |
OS 프로세스 fork | greenlet fan-out |
풀어야 할 문제
- 공개 API에서 rank = SIP — bench worker가 PE 개념을 알지 않도록.
- Greenlet-local rank/device tracking — 1-프로세스 모델 안에서 각 worker greenlet이 자기 rank / 자기 SIP를 정확히 식별.
- Tensor placement = structural (sip, cube, pe) — rank가 SIP이면 기본 텐서 배치도 구조적 좌표로 표현되어야 함.
Non-problem (이 ADR 밖)
- IPCQ direction addressing → ADR-0025
DPPolicy.sip/num_sips제거 → ADR-0026- Megatron-style TP → ADR-0027
- DTensor → ADR-0028 (future)
- Worker scheduling /
mp.spawn/ collective drain / exception cleanup → ADR-0027 D0/D1 - Collective algorithm 구현 (intercube_allreduce, SFR config) → ADR-0032
Decision
D1. rank = SIP (world_size 해석)
def _resolve_world_size(self) -> int:
if "world_size" in self._merged:
return int(self._merged["world_size"])
defaults = self._cfg_all.get("defaults", {})
if "world_size" in defaults:
return int(defaults["world_size"])
spec = self.ctx.spec or {}
return int(spec.get("system", {}).get("sips", {}).get("count", 1))
우선순위: 알고리즘 override > defaults override > SIP count. ccl.yaml
override는 legacy "rank = PE" 테스트 경로로 유지.
D2. Greenlet-local rank registry (+ debug warning)
class DistributedContext:
def __init__(self):
self._backend = None
self._rank_by_greenlet: dict = {}
def _bind_rank(self, g, rank: int) -> None:
self._rank_by_greenlet[g] = int(rank)
def get_rank(self) -> int:
self._ensure_initialized()
from greenlet import getcurrent
g = getcurrent()
if g not in self._rank_by_greenlet:
if os.environ.get("KERNBENCH_DEBUG"):
warnings.warn(
"get_rank() called outside a bound greenlet — returning 0. "
"Likely a bug unless running single-driver."
)
return 0
return int(self._rank_by_greenlet[g])
D3. torch.ahbm.set_device(rank) — SIP 바인딩
KernBench 백엔드 이름은 ahbm (ADR-0023). Real PyTorch는
torch.cuda.set_device(r)이지만 우리는 CUDA가 아니므로 honestly-named
namespace를 사용한다.
class _AhbmNamespace:
"""torch.ahbm — per-greenlet SIP device binding.
Real-PyTorch parity idiom: ``torch.cuda.set_device(rank)``. Since
KernBench's backend is 'ahbm' (not CUDA), we expose the equivalent
API under ``torch.ahbm`` to avoid pretending to be a CUDA runtime.
"""
def __init__(self):
self._device_by_greenlet: dict = {}
def set_device(self, device: int) -> None:
from greenlet import getcurrent
self._device_by_greenlet[getcurrent()] = int(device)
def current_device(self) -> int | None:
from greenlet import getcurrent
return self._device_by_greenlet.get(getcurrent())
# Attached to RuntimeContext as `self.ahbm = _AhbmNamespace()`.
# Bench code: `torch.ahbm.set_device(rank)` mirrors `torch.cuda.set_device`.
PyTorch 2.x style 병행 지원: 최신 PyTorch는 device-agnostic한
torch.accelerator 네임스페이스를 지향 (torch.accelerator.set_device_index(r),
torch.accelerator.current_device_index()). Device vendor에 종속되지 않는
코드를 쓰려는 사용자를 위해 KernBench도 이 표면을 병행 지원한다.
class _AcceleratorNamespace:
"""torch.accelerator — device-agnostic API (PyTorch 2.x style).
Aliases torch.ahbm for bench code that prefers device-neutral idiom:
torch.accelerator.set_device_index(rank)
torch.accelerator.current_device_index()
"""
def __init__(self, ahbm: _AhbmNamespace):
self._ahbm = ahbm
def set_device_index(self, device: int) -> None:
self._ahbm.set_device(device)
def current_device_index(self) -> int | None:
return self._ahbm.current_device()
# RuntimeContext
self.ahbm = _AhbmNamespace()
self.accelerator = _AcceleratorNamespace(self.ahbm) # alias
Bench 작성자는 다음 중 하나를 선택 — 둘 다 내부적으로 같은 레지스트리를 보유:
torch.ahbm.set_device(rank) # KernBench-native, explicit backend
torch.accelerator.set_device_index(rank) # PyTorch 2.x device-agnostic
D4. Tensor placement = structural (sip, cube, pe) 좌표
resolve_dp_policy가 target_sip을 직접 받아 구조적 좌표로 placement 생성.
세부는 ADR-0026.
# RuntimeContext._create_tensor
current_sip = self.ahbm.current_device() # (D3 naming)
if current_sip is None:
current_sip = 0 # single-driver fallback (D2와 일관)
placement = resolve_dp_policy(
dp, shape=shape_2d, itemsize=itemsize,
num_pe=eff_num_pe, num_cubes=eff_num_cubes,
target_sip=current_sip,
)
Post-hoc pe_index shifting 없음 — ShardSpec이 (sip, cube, pe) 구조적
좌표를 직접 보유. ShardSpec 상세는 ADR-0026.
Dependencies
- ADR-0023 (IPCQ): backend
ahbmnamespace의 기원. - ADR-0026 (DPPolicy intra-device): D4의
resolve_dp_policy시그니처와 ShardSpec의 구조적 좌표 표현. - ADR-0027 (Megatron TP + scheduler): worker scheduling,
mp.spawn, collective drain, exception cleanup의 구현 기준.
Non-goals
- IPCQ protocol 수정: ADR-0023 유지.
- DPPolicy 필드 정리: ADR-0026.
- Megatron-style TP: ADR-0027.
- Worker scheduling / spawn / drain / exception cleanup: ADR-0027 D0/D1.
- Collective algorithm 구현: ADR-0032.
- Multi-node (프로세스 간): 단일 프로세스.
Consequences
Positive
- Bench = real PyTorch DDP (공개 API 관점).
- Greenlet-local rank: 1-프로세스 모델에서 cross-rank correctness 가능.
- Structural placement 좌표: ADR-0026 / ADR-0027 / ADR-0032의 다른 ADR이
(sip, cube, pe)3튜플 위에서 일관되게 동작.
Neutral
- IPCQ PE-level protocol (ADR-0023) 불변.
- IO_CPU 역할 불변 (기존 transit 그대로).