aoti-debug

📁 pytorch/pytorch 📅 9 days ago
48
总安装量
4
周安装量
#8047
全站排名
安装命令
npx skills add https://github.com/pytorch/pytorch --skill aoti-debug

Agent 安装分布

gemini-cli 4
opencode 4
replit 3
antigravity 3
codex 3

Skill 文档

AOTI Debugging Guide

This skill helps diagnose and fix common AOTInductor issues.

First Step: Always Check Device and Shape Matching

For ANY AOTI error (segfault, exception, crash, wrong output), ALWAYS check these first:

  1. Compile device == Load device: The model must be loaded on the same device type it was compiled on
  2. Input devices match: Runtime inputs must be on the same device as the compiled model
  3. Input shapes match: Runtime input shapes must match the shapes used during compilation (or satisfy dynamic shape constraints)
# 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.

Key Constraint: Device Type Matching

AOTI requires compile and load to use the same device type.

  • If you compile on CUDA, you must load on CUDA (device index can differ)
  • If you compile on CPU, you must load on CPU
  • Cross-device loading (e.g., compile on GPU, load on CPU) is NOT supported

Common Error Patterns

1. Device Mismatch Segfault

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 device
  • Crash during constant loading in AOTInductorModelBase
  • Expected out tensor to have device cuda:0, but got cpu instead

Cause: 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.

2. Input Device Mismatch at Runtime

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)

Debugging CUDA Illegal Memory Access (IMA) Errors

If you encounter CUDA illegal memory access errors, follow this systematic approach:

Step 1: Sanity Checks

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 compilation
  • TORCHINDUCTOR_NAN_ASSERTS=1 adds codegen before and after each kernel to check for NaN

Step 2: Pinpoint the CUDA IMA

CUDA 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.

Step 3: Identify Problematic Kernels with Intermediate Value Debugger

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.

Additional Debugging Tools

Logging and Tracing

  • tlparse / TORCH_TRACE: Provides complete output codes and records guards used
  • TORCH_LOGS: Use TORCH_LOGS="+inductor,output_code" to see more PT2 internal logs
  • TORCH_SHOW_CPP_STACKTRACES: Set to 1 to see more stack traces

Common Sources of Issues

  • Dynamic shapes: Historically a source of many IMAs. Pay special attention when debugging dynamic shape scenarios.
  • Custom ops: Especially when implemented in C++ with dynamic shapes. The meta function may need to be Symint’ified.

API Notes

Deprecated API

torch._export.aot_compile()  # Deprecated
torch._export.aot_load()     # Deprecated

Current API

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.

Environment Variables Summary

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