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aoti-debug
Debug AOTInductor (AOTI) errors and crashes. Use when encountering AOTI segfaults, device mismatch errors, constant loading failures, or runtime errors from aot_compile, aot_load, aoti_compile_and_package, or aoti_load_package.
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Debug AOTInductor (AOTI) errors and crashes. Use when encountering AOTI segfaults, device mismatch errors, constant loading failures, or runtime errors from aot_compile, aot_load, aoti_compile_and_package, or aoti_load_package.
Review PyTorch pull requests for code quality, test coverage, security, and backward compatibility. Use when reviewing PRs, when asked to review code changes, or when the user mentions "review PR", "code review", or "check this PR".
Sub-triages issues in the oncall:distributed queue by assigning distributed module labels, routing to sub-oncalls, and marking triaged. Use when an issue has been routed to oncall:distributed and needs second-level triage.
Triages GitHub issues by routing to oncall teams, applying labels, and closing questions. Use when processing new PyTorch issues or when asked to triage an issue.
Fix bugs reported in PyTorch GitHub issues by reproducing, root-causing, and implementing a fix in the local working tree. Use when the user asks to fix a PyTorch GitHub issue.
Write Metal/MPS kernels for PyTorch operators. Use when adding MPS device support to operators, implementing Metal shaders, or porting CUDA kernels to Apple Silicon. Covers native_functions.yaml dispatch, host-side operators, and Metal kernel implementation.
Migrate a file to use stricter Pyrefly type checking with annotations required for all functions, classes, and attributes.
| name | aoti-debug |
| description | Debug AOTInductor (AOTI) errors and crashes. Use when encountering AOTI segfaults, device mismatch errors, constant loading failures, or runtime errors from aot_compile, aot_load, aoti_compile_and_package, or aoti_load_package. |
This skill helps diagnose and fix common AOTInductor issues.
Check the error message and route to the appropriate sub-guide:
If the error matches this pattern:
Assertion `index out of bounds: 0 <= tmpN < ksM` failed
→ Follow the guide in triton-index-out-of-bounds.md
Continue with the sections below.
For ANY AOTI error (segfault, exception, crash, wrong output), ALWAYS check these first:
# During compilation - note the device and shapes
model = MyModel().eval() # What device? CPU or .cuda()?
inp = torch.randn(2, 10) # What device? What shape?
compiled_so = torch._inductor.aot_compile(model, (inp,))
# During loading - device type MUST match compilation
loaded = torch._export.aot_load(compiled_so, "???") # Must match model/input device above
# During inference - device and shapes MUST match
out = loaded(inp.to("???")) # Must match compile device, shape must match
If any of these don't match, you will get errors ranging from segfaults to exceptions to wrong outputs.
AOTI requires compile and load to use the same device type.
Symptom: Segfault, exception, or crash during aot_load() or model execution.
Example error messages:
The specified pointer resides on host memory and is not registered with any CUDA deviceExpected out tensor to have device cuda:0, but got cpu insteadCause: Compile and load device types don't match (see "First Step" above).
Solution: Ensure compile and load use the same device type. If compiled on CPU, load on CPU. If compiled on CUDA, load on CUDA.
Symptom: RuntimeError during model execution.
Cause: Input device doesn't match compile device (see "First Step" above).
Better Debugging: Run with AOTI_RUNTIME_CHECK_INPUTS=1 for clearer errors. This flag validates all input properties including device type, dtype, sizes, and strides:
AOTI_RUNTIME_CHECK_INPUTS=1 python your_script.py
This produces actionable error messages like:
Error: input_handles[0]: unmatched device type, expected: 0(cpu), but got: 1(cuda)
If you encounter CUDA illegal memory access errors, follow this systematic approach:
Before diving deep, try these debugging flags:
AOTI_RUNTIME_CHECK_INPUTS=1
TORCHINDUCTOR_NAN_ASSERTS=1
These flags take effect at compilation time (at codegen time):
AOTI_RUNTIME_CHECK_INPUTS=1 checks if inputs satisfy the same guards used during compilationTORCHINDUCTOR_NAN_ASSERTS=1 adds codegen before and after each kernel to check for NaNCUDA IMA errors can be non-deterministic. Use these flags to trigger the error deterministically:
PYTORCH_NO_CUDA_MEMORY_CACHING=1
CUDA_LAUNCH_BLOCKING=1
These flags take effect at runtime:
PYTORCH_NO_CUDA_MEMORY_CACHING=1 disables PyTorch's Caching Allocator, which allocates bigger buffers than needed immediately. This is usually why CUDA IMA errors are non-deterministic.CUDA_LAUNCH_BLOCKING=1 forces kernels to launch one at a time. Without this, you get "CUDA kernel errors might be asynchronously reported" warnings since kernels launch asynchronously.Use the AOTI Intermediate Value Debugger to pinpoint the problematic kernel:
AOT_INDUCTOR_DEBUG_INTERMEDIATE_VALUE_PRINTER=3
This prints kernels one by one at runtime. Together with previous flags, this shows which kernel was launched right before the error.
To inspect inputs to a specific kernel:
AOT_INDUCTOR_FILTERED_KERNELS_TO_PRINT="triton_poi_fused_add_ge_logical_and_logical_or_lt_231,_add_position_embeddings_kernel_5" AOT_INDUCTOR_DEBUG_INTERMEDIATE_VALUE_PRINTER=2
If inputs to the kernel are unexpected, inspect the kernel that produces the bad input.
TORCH_LOGS="+inductor,output_code" to see more PT2 internal logs1 to see more stack tracestorch._export.aot_compile() # Deprecated
torch._export.aot_load() # Deprecated
torch._inductor.aoti_compile_and_package()
torch._inductor.aoti_load_package()
The new API stores device metadata in the package, so aoti_load_package() automatically uses the correct device type. You can only change the device index (e.g., cuda:0 vs cuda:1), not the device type.
| Variable | When | Purpose |
|---|---|---|
AOTI_RUNTIME_CHECK_INPUTS=1 | Compile time | Validate inputs match compilation guards |
TORCHINDUCTOR_NAN_ASSERTS=1 | Compile time | Check for NaN before/after kernels |
PYTORCH_NO_CUDA_MEMORY_CACHING=1 | Runtime | Make IMA errors deterministic |
CUDA_LAUNCH_BLOCKING=1 | Runtime | Force synchronous kernel launches |
AOT_INDUCTOR_DEBUG_INTERMEDIATE_VALUE_PRINTER=3 | Compile time | Print kernels at runtime |
TORCH_LOGS="+inductor,output_code" | Runtime | See PT2 internal logs |
TORCH_SHOW_CPP_STACKTRACES=1 | Runtime | Show C++ stack traces |