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@dominicshanshan dominicshanshan commented Nov 4, 2025

Summary by CodeRabbit

  • Bug Fixes
    • Enhanced error messages now include GPU memory usage information during CUDA operations for improved diagnostics.
    • Improved GPU memory allocation handling to prevent out-of-memory errors in FP8 model configurations.

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…uce max tokens in kv cache config.

Signed-off-by: Wangshanshan <[email protected]>
…uce memory fraction in kv cache config.

Signed-off-by: Wangshanshan <[email protected]>
Signed-off-by: Wangshanshan <[email protected]>
Signed-off-by: Wangshanshan <[email protected]>
Signed-off-by: Wangshanshan <[email protected]>
@dominicshanshan dominicshanshan requested a review from a team as a code owner November 4, 2025 06:12
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📝 Walkthrough

Walkthrough

Enhances CUDA handle management with GPU memory monitoring and improves error reporting during cublasHandle and cublasLtHandle creation/destruction. Updates integration tests to explicitly configure GPU memory fractions for fp8 scenarios to prevent allocation errors.

Changes

Cohort / File(s) Summary
GPU Memory Monitoring & CUDA Error Handling
cpp/tensorrt_llm/common/opUtils.cpp
Introduces MemoryInfo struct and helper functions (getMemoryInfo, logMemoryUsage, throwCublasErrorWithMemInfo) to track and log GPU memory usage. Modifies cublasHandle_t and cublasLtHandle_t creation/destruction to log memory context, check status explicitly, and throw errors with embedded memory information on failure.
FP8 Test Configuration Updates
tests/integration/defs/accuracy/test_llm_api_pytorch.py
Expands KvCacheConfig instantiations in three fp8 test paths to include free_gpu_memory_fraction=0.8 parameter alongside dtype="fp8" to prevent memory allocation failures.

Sequence Diagram

sequenceDiagram
    participant Client
    participant opUtils as opUtils.cpp
    participant CUDA as CUDA/cuBLAS

    rect rgb(240, 250, 255)
    Note over opUtils,CUDA: Handle Creation Flow (with monitoring)
    Client->>opUtils: Create cublasHandle_t
    opUtils->>opUtils: Get current CUDA context
    opUtils->>opUtils: Log current memory usage
    opUtils->>CUDA: cublasCreate()
    alt Success
        CUDA-->>opUtils: CUBLAS_STATUS_SUCCESS
        opUtils-->>Client: Handle created
    else Failure
        CUDA-->>opUtils: Error status
        opUtils->>opUtils: Fetch memory info
        opUtils->>opUtils: Construct error with memory context
        opUtils-->>Client: throw CublasException with memory info
    end
    end

    rect rgb(255, 245, 240)
    Note over opUtils,CUDA: Handle Destruction Flow (with logging)
    Client->>opUtils: Destroy cublasHandle_t
    opUtils->>CUDA: cublasDestroy()
    alt Success
        CUDA-->>opUtils: CUBLAS_STATUS_SUCCESS
        opUtils-->>Client: Handle destroyed
    else Failure
        CUDA-->>opUtils: Error status
        opUtils->>opUtils: Log warning with error status
        opUtils-->>Client: Continue (non-throwing)
    end
    end
Loading

Estimated code review effort

🎯 2 (Simple) | ⏱️ ~12 minutes

  • Memory monitoring functions: New utility functions are straightforward and localized; verify memory fetching logic and overhead implications
  • Error handling pattern: Consistent pattern applied twice (cublasHandle_t and cublasLtHandle_t); ensure both implementations correctly check status and include memory context
  • Test configuration changes: Simple, repetitive parameter additions in three locations; verify these values are appropriate for fp8 scenarios and don't break existing test coverage

Pre-merge checks and finishing touches

❌ Failed checks (1 warning)
Check name Status Explanation Resolution
Description check ⚠️ Warning The PR description contains only the template structure without filling in the required sections (Description, Test Coverage, and PR Checklist details), making it incomplete. Fill in the Description section explaining the issue and solution, and the Test Coverage section listing relevant tests that validate the changes.
✅ Passed checks (1 passed)
Check name Status Explanation
Title check ✅ Passed The PR title clearly summarizes the main fix: addressing a cuBLAS/cuBLASLt handle creation memory insufficiency error, with proper NVBugs ticket reference and [fix] type tag.
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Actionable comments posted: 0

🧹 Nitpick comments (1)
cpp/tensorrt_llm/common/opUtils.cpp (1)

328-356: LGTM: Consistent pattern for cublasLt handle management.

The getCublasLtHandle() implementation mirrors the improvements in getCublasHandle(), ensuring consistent error reporting and diagnostics across both cuBLAS handle types.

Optional: Consider reducing code duplication.

The nearly identical pattern between getCublasHandle() and getCublasLtHandle() could be refactored into a generic helper template:

template <typename HandleT, typename CreateFn, typename DestroyFn>
std::shared_ptr<HandleT> createCublasHandleWithLogging(
    const char* handleName, CreateFn createFn, DestroyFn destroyFn)
{
    // Common logic for context retrieval, logging, creation, and error handling
}

This would centralize the memory monitoring and error handling logic, but the current approach is perfectly acceptable given the small number of handle types.

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Repo: NVIDIA/TensorRT-LLM PR: 6029
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Repo: NVIDIA/TensorRT-LLM PR: 7910
File: cpp/tensorrt_llm/kernels/nccl_device/multimem.h:20-30
Timestamp: 2025-09-23T15:13:48.819Z
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Repo: NVIDIA/TensorRT-LLM PR: 7910
File: cpp/tensorrt_llm/kernels/nccl_device/multimem.h:20-30
Timestamp: 2025-09-23T15:13:48.819Z
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📚 Learning: 2025-09-23T15:01:00.070Z
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Repo: NVIDIA/TensorRT-LLM PR: 7910
File: cpp/tensorrt_llm/kernels/nccl_device/config.cu:15-17
Timestamp: 2025-09-23T15:01:00.070Z
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📚 Learning: 2025-08-25T00:03:39.294Z
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Repo: NVIDIA/TensorRT-LLM PR: 7104
File: cpp/tensorrt_llm/kernels/cutlass_kernels/moe_gemm/moe_kernels.cu:1185-1189
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📚 Learning: 2025-08-26T09:37:10.463Z
Learnt from: jiaganc
Repo: NVIDIA/TensorRT-LLM PR: 7031
File: tensorrt_llm/bench/dataclasses/configuration.py:90-104
Timestamp: 2025-08-26T09:37:10.463Z
Learning: In TensorRT-LLM's bench configuration, the `get_pytorch_perf_config()` method returns `self.pytorch_config` which is a Dict[str, Any] that can contain default values including `cuda_graph_config`, making the fallback `llm_args["cuda_graph_config"]` safe to use.

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Repo: NVIDIA/TensorRT-LLM PR: 7031
File: tensorrt_llm/bench/dataclasses/configuration.py:90-104
Timestamp: 2025-08-26T09:37:10.463Z
Learning: In TensorRT-LLM, the `get_pytorch_perf_config()` method returns `self.pytorch_config` which can contain default `cuda_graph_config` values, so `llm_args` may already have this config before the extra options processing.

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📚 Learning: 2025-09-29T15:14:28.503Z
Learnt from: amitz-nv
Repo: NVIDIA/TensorRT-LLM PR: 8063
File: tensorrt_llm/lora_manager.py:1080-1112
Timestamp: 2025-09-29T15:14:28.503Z
Learning: In tensorrt_llm/lora_manager.py, when calculating part_sizes for attn_qkv fused LoRA modules, the sizes are correctly multiplied by tp_size because model_config.num_heads and model_config.num_kv_heads are already divided by tp_size (per-TP-rank values), so multiplication is needed to get the original full concatenated dimension size. The interleave_fused_lora_weights_for_tp function provides proper validation.

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🔇 Additional comments (5)
tests/integration/defs/accuracy/test_llm_api_pytorch.py (2)

158-162: LGTM: Appropriate memory reservation for FP8 KV cache.

The explicit free_gpu_memory_fraction=0.8 parameter ensures sufficient GPU memory remains available for cuBLAS/cuBLASLt handle creation when using FP8 KV cache. This aligns with the enhanced error reporting in the C++ changes and provides a practical workaround for memory-constrained scenarios.


196-200: LGTM: Consistent memory configuration across multi-GPU test.

The same free_gpu_memory_fraction=0.8 configuration is correctly applied here, ensuring consistent memory management behavior between single-GPU and multi-GPU FP8 test scenarios.

cpp/tensorrt_llm/common/opUtils.cpp (3)

255-274: LGTM: Well-designed memory monitoring utilities.

The MemoryInfo structure and getMemoryInfo() function provide clear, efficient memory diagnostics. The conversion to MB and percentage calculation improves readability, and the defensive check for total_mem > 0 prevents division by zero.


277-293: LGTM: Excellent error context and actionable guidance.

Both logMemoryUsage() and throwCublasErrorWithMemInfo() provide valuable diagnostic information. The error message's suggestion to "reduce kv_cache_config.free_gpu_memory_fraction" directly aligns with the test configuration changes and gives users a clear remediation path.


297-326: LGTM: Robust handle creation with improved diagnostics.

The enhanced getCublasHandle() implementation adds:

  • Proactive memory logging before handle creation
  • Clear error messages with memory context when creation fails
  • Warning logs instead of silent failures during destruction
  • Use of make_unique for proper resource management

The overhead of cudaMemGetInfo() is negligible since handle creation is rare (once per CUDA context per thread).

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LGTM

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/bot run

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PR_Github #23568 [ run ] triggered by Bot. Commit: 18cfb69

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PR_Github #23568 [ run ] completed with state SUCCESS. Commit: 18cfb69
/LLM/release-1.1/L0_MergeRequest_PR pipeline #421 completed with status: 'SUCCESS'

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