998cc85762
Major changes:
PE-level IPCQ infrastructure:
- New PE_IPCQ component: ring-buffer control plane with 4-direction
neighbor mapping, head/tail pointers, backpressure (poll/sleep).
- PE_DMA extended with vc_comm channel for IPCQ outbound/inbound DMA,
including in-flight data snapshot (D9) and op_log recording at
outbound time for Phase 2 replay correctness.
- IpcqDmaToken piggyback model: data + metadata travel together,
atomic visibility at receiver (invariant I6).
- Credit return fast path: bottleneck-BW latency, no fabric vc_comm.
Phase 2 data execution (ADR-0020 integration):
- op_log extended: DmaWriteCmd now captures src_space/src_addr for
Phase 2 dma_write copy; ipcq_copy ops recorded at outbound time.
- DataExecutor replays dma_write + ipcq_copy in t_start order.
- Engine._flush_data_phase: incremental cursor-based replay after
each engine.wait() so host reads see post-Phase-2 data.
- KernelRunner Phase 1 writes disabled when op_log is active to
prevent stale data from corrupting the MemoryStore snapshot.
TLContext / kernel API:
- tl.send(dir, src=TensorHandle), tl.recv(dir, shape, dtype),
tl.recv_async, tl.wait(RecvFuture), copy_to_dst mode.
- TensorHandle operator overloading (add/sub/mul/div) via thread-local
active TLContext → MathCmd dispatch through PE_MATH.
- PE-local scratch allocator for math output handles.
- tl.load returns space="hbm" handles for correct Phase 2 addressing.
- Additional math functions: maximum, minimum, fma, clamp, softmax, cdiv.
Unified ccl_allreduce bench (PyTorch-compat host code):
- Single benches/ccl_allreduce.py with run() + worker(rank, ws, torch)
split matching real PyTorch DDP worker pattern.
- torch.distributed facade: init_process_group, get_world_size,
get_rank, get_backend, all_reduce, barrier — only real PyTorch names.
- AhbmCCLBackend: eager install_ipcq at init, all_reduce dispatches
kernel via tensor shard metadata (n_elem from shards[0].nbytes).
- world_size derived from topology spec (sips × cubes × pes_per_cube)
with optional algorithm-level override in ccl.yaml.
Tensor API (PyTorch-compat surface):
- Tensor.numpy(): gather-aware (all shards via VA-based addressing).
- Tensor.copy_(source): scatter from host tensor into sharded target.
- RuntimeContext.from_numpy(arr): host-side staging tensor.
- Tensor.data property fixed to use numpy() (was shards[0]-only).
Algorithm modules moved to src/kernbench/ccl/algorithms/:
- ring_allreduce, mesh_allreduce, tree_allreduce, hello_send.
- Each module exports kernel_args(world_size, n_elem) helper.
- ccl.yaml module paths updated to kernbench.ccl.algorithms.*.
Dead code removed:
- 7 per-variant bench files (ccl_allreduce_{tcm,hbm,sram}, etc.).
- _run_ccl_bench greenlet-per-SIP scheduler.
- benches.loader.is_ccl_bench + run_rank detection.
- benches/ccl/ directory.
Tests:
- New test_ccl_allreduce_matrix.py: 7 parametrized cases
(ring×3 buffers, ring 8/16, mesh 4, tree 7).
- New test_runtime_api_tensor.py: copy_/numpy/from_numpy unit tests.
- Existing tests updated for new import paths + world_size_override.
Docs:
- Korean ccl-author-guide.md and ADR-0023 paths updated.
- New English versions: ccl-author-guide.en.md, ADR-0023.en.md.
502 tests pass.
Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
57 lines
2.8 KiB
YAML
57 lines
2.8 KiB
YAML
# Component implementation registry.
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# Maps impl names (used in topology.yaml) to Python class paths.
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# Format: impl_name: module.path:ClassName
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#
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# Naming convention:
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# builtin.<name> — built-in implementations
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# custom.<name> — user-defined implementations
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#
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# ── Adding custom components ──────────────────────────────────────────
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#
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# 1. Create your implementation in:
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# src/kernbench/components/custom/<your_component>.py
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#
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# Your class must inherit from ComponentBase (or PeEngineBase for PE engines).
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#
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# 2. Register it below under "Custom" with a unique impl name:
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# custom.my_pe_cpu: kernbench.components.custom.my_pe_cpu:MyPeCpuComponent
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#
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# 3. Reference it in topology.yaml:
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# pe_cpu: { kind: pe_cpu, impl: custom.my_pe_cpu, attrs: { ... } }
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#
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# 4. Add unit tests in:
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# tests/custom/test_<your_component>.py
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#
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# External packages also work — use the full module path:
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# custom.fast_gemm: my_team.accel.fast_gemm:FastGemmComponent
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# ──────────────────────────────────────────────────────────────────────
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components:
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# Infrastructure
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builtin.forwarding: kernbench.components.builtin.forwarding:TransitComponent
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builtin.switch: kernbench.components.builtin.forwarding:TransitComponent
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builtin.noc: kernbench.components.builtin.forwarding:TransitComponent
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builtin.ucie: kernbench.components.builtin.forwarding:TransitComponent
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# IO / Host interface
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builtin.pcie_ep: kernbench.components.builtin.pcie_ep:PcieEpComponent
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builtin.io_cpu: kernbench.components.builtin.io_cpu:IoCpuComponent
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# Cube-level
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builtin.m_cpu: kernbench.components.builtin.m_cpu:MCpuComponent
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builtin.hbm_ctrl: kernbench.components.builtin.hbm_ctrl:HbmCtrlComponent
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builtin.sram: kernbench.components.builtin.sram:SramComponent
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# PE-level
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builtin.pe_cpu: kernbench.components.builtin.pe_cpu:PeCpuComponent
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builtin.pe_scheduler: kernbench.components.builtin.pe_scheduler:PeSchedulerComponent
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builtin.pe_dma: kernbench.components.builtin.pe_dma:PeDmaComponent
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builtin.pe_gemm: kernbench.components.builtin.pe_gemm:PeGemmComponent
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builtin.pe_math: kernbench.components.builtin.pe_math:PeMathComponent
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builtin.pe_fetch_store: kernbench.components.builtin.pe_fetch_store:PeFetchStoreComponent
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builtin.pe_mmu: kernbench.components.builtin.pe_mmu:PeMmuComponent
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builtin.pe_tcm: kernbench.components.builtin.pe_tcm:PeTcmComponent
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builtin.pe_ipcq: kernbench.components.builtin.pe_ipcq:PeIpcqComponent
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# Custom — add your implementations here
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