1c8ddc2d03
Root cause: In ring all-reduce, PE_IPCQ's recv handler advances my_tail and issues a credit return immediately. With tight credit latency (0.12ns intra-cube), the sender can refill the slot BEFORE the receiver's outbound PE_DMA reads from it for the next send. The outbound snapshot then captures stale data from a later round. Fix: Propagate TensorHandle.data (captured at recv-time, before credit return) through the entire send chain: tl.send(src=handle) → IpcqSendCmd.data → IpcqDmaToken.data PE_DMA outbound already prefers token.data over MemoryStore read, so the recv-time snapshot is used for the in-flight data. This eliminates the race: the snapshot is captured before the slot can be overwritten. Additional fixes: - PE_MATH handle_command: compute SIMD latency from output tensor element count via _compute_ns(), using max(overhead_ns, compute_ns). Previously used overhead_ns=0.0 for all standalone MathCmd, making math ops take 0ns in SimPy. - DataExecutor secondary sort: same-t_start ops sorted by op_kind (memory < gemm < math) so IPCQ slot writes execute before math reads. - ipcq_copy recorded at INBOUND time (receiver PE_DMA arrival) instead of outbound. Inbound time is after fabric propagation, so it sorts correctly relative to the receiver's math. - record_copy accepts explicit snapshot parameter (from token.data). Result: N_ELEM=32 + 256-rank + n_slots=4 + cross-SIP now passes. n_slots reverted to 4 (the deeper buffer was a workaround, not needed). 502 tests pass. Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>