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@yibinl-nvidia yibinl-nvidia commented Oct 30, 2025

Summary by CodeRabbit

  • Bug Fixes
    • Added validation to prevent multiple response requests with the PyTorch backend. When attempting to use multiple responses with PyTorch, the system now raises an informative error message, ensuring invalid configurations are caught early and consistent behavior across all deployment scenarios.

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@yibinl-nvidia yibinl-nvidia requested a review from a team as a code owner October 30, 2025 22:12
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📝 Walkthrough

Walkthrough

Adds a validation guard in the _check_arguments function to reject multi-response requests (n > 1) when using the PyTorch backend, raising a ValueError to align with existing serve behavior constraints.

Changes

Cohort / File(s) Summary
PyTorch backend validation
tensorrt_llm/llmapi/llm.py
Adds conditional check in _check_arguments to raise ValueError when sampling_params.n > 1 and backend is "pytorch", explicitly blocking multi-response support for PyTorch workflow

Estimated code review effort

🎯 1 (Trivial) | ⏱️ ~3 minutes

  • Straightforward validation guard with simple conditional logic
  • Single-file change with no interdependencies
  • Minor scope: adds one validation rule without modifying existing logic flow

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❌ Failed checks (2 warnings)
Check name Status Explanation Resolution
Description Check ⚠️ Warning The pull request description is essentially empty and does not fulfill the repository's required template sections. The "Description" section contains no explanation of the issue or solution, the "Test Coverage" section lists no relevant tests, and the "PR Checklist" section shows no items marked as reviewed. While the template structure is present, no substantive content has been provided to communicate the purpose, implementation details, or test coverage for this change. This represents a largely incomplete description that does not meet the minimum standards for documentation. The author should fill in the PR description with: a clear explanation of why the change was made and what problem it solves (e.g., ensuring PyTorch backend explicitly rejects multi-response requests), a list of relevant test cases that validate this new error condition, and completion of the PR checklist to confirm compliance with coding guidelines and testing requirements. This will provide reviewers with essential context and confidence that the change is well-tested and properly implemented.
Docstring Coverage ⚠️ Warning Docstring coverage is 0.00% which is insufficient. The required threshold is 80.00%. You can run @coderabbitai generate docstrings to improve docstring coverage.
✅ Passed checks (1 passed)
Check name Status Explanation
Title Check ✅ Passed The pull request title "[None][chore] Add error message for multiple response sampler_param with PyTorch backend" directly and accurately reflects the main change in the changeset. The raw summary confirms that a guard was added to _check_arguments that raises a ValueError when sampling_params.n > 1 with PyTorch backend, which is precisely an error message for multiple response sampling parameters. The title is concise, specific, and follows the repository's formatting conventions. A developer scanning the commit history would clearly understand this change is about adding validation to prevent multiple responses with PyTorch.
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Actionable comments posted: 1

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📥 Commits

Reviewing files that changed from the base of the PR and between b87448b and 10af79d.

📒 Files selected for processing (1)
  • tensorrt_llm/llmapi/llm.py (1 hunks)
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**/*.{h,hpp,hh,hxx,cpp,cxx,cc,cu,cuh,py}

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**/*.{cpp,cxx,cc,h,hpp,hh,hxx,cu,cuh,py}

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Files:

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🧠 Learnings (10)
📚 Learning: 2025-07-28T17:06:08.621Z
Learnt from: moraxu
Repo: NVIDIA/TensorRT-LLM PR: 6303
File: tests/integration/test_lists/qa/examples_test_list.txt:494-494
Timestamp: 2025-07-28T17:06:08.621Z
Learning: In TensorRT-LLM testing, it's common to have both CLI flow tests (test_cli_flow.py) and PyTorch API tests (test_llm_api_pytorch.py) for the same model. These serve different purposes: CLI flow tests validate the traditional command-line workflow, while PyTorch API tests validate the newer LLM API backend. Both are legitimate and should coexist.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-08-14T15:38:01.771Z
Learnt from: MatthiasKohl
Repo: NVIDIA/TensorRT-LLM PR: 6904
File: cpp/tensorrt_llm/pybind/thop/bindings.cpp:55-57
Timestamp: 2025-08-14T15:38:01.771Z
Learning: In TensorRT-LLM Python bindings, tensor parameter collections like mla_tensor_params and spec_decoding_tensor_params are kept as required parameters without defaults to maintain API consistency, even when it might affect backward compatibility.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-08-14T15:43:23.107Z
Learnt from: MatthiasKohl
Repo: NVIDIA/TensorRT-LLM PR: 6904
File: tensorrt_llm/_torch/attention_backend/trtllm.py:259-262
Timestamp: 2025-08-14T15:43:23.107Z
Learning: In TensorRT-LLM's attention backend, tensor parameters in the plan() method are assigned directly without validation (dtype, device, contiguity checks). This maintains consistency across all tensor inputs and follows the pattern of trusting callers to provide correctly formatted tensors.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 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, 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.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-08-19T12:45:11.997Z
Learnt from: amitz-nv
Repo: NVIDIA/TensorRT-LLM PR: 7033
File: tensorrt_llm/_torch/pyexecutor/model_engine.py:0-0
Timestamp: 2025-08-19T12:45:11.997Z
Learning: In tensorrt_llm/_torch/pyexecutor/model_engine.py, DoRA (Delta Orthogonal Rank Adaptation) functionality was removed from the PyTorch flow to eliminate issues with inverted DoRA detection logic. The original is_dora condition was checking if scaling_vec_pointer == 0, which was potentially incorrect.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-08-14T06:36:40.701Z
Learnt from: timlee0212
Repo: NVIDIA/TensorRT-LLM PR: 6886
File: tensorrt_llm/_torch/models/modeling_deepseekv3.py:0-0
Timestamp: 2025-08-14T06:36:40.701Z
Learning: In DeepSeek V3 model (tensorrt_llm/_torch/models/modeling_deepseekv3.py), the disagreement between AllReduce.__init__ guard and _compute_mlp_tp_size logic for MNNVL usage is expected by design. The AllReduce component and MLP TP-size computation intentionally use different criteria for MNNVL availability decisions.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-10-20T16:54:09.824Z
Learnt from: nvchenghaoz
Repo: NVIDIA/TensorRT-LLM PR: 8469
File: tensorrt_llm/_torch/auto_deploy/custom_ops/rms_norm.py:6-6
Timestamp: 2025-10-20T16:54:09.824Z
Learning: In tensorrt_llm/_torch/auto_deploy/custom_ops/rms_norm.py, the import `from ...modules.mamba.layernorm_gated import _layer_norm_fwd` is correct and should not be changed to modules.fla.layernorm_gated. The _layer_norm_fwd function exists in both modules/mamba/layernorm_gated.py and modules/fla/layernorm_gated.py, but the mamba version is the intended implementation for this use case.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-08-27T15:03:57.149Z
Learnt from: ixlmar
Repo: NVIDIA/TensorRT-LLM PR: 7294
File: tensorrt_llm/_torch/pyexecutor/sampler.py:368-392
Timestamp: 2025-08-27T15:03:57.149Z
Learning: In TensorRT-LLM's sampler.py, int32 usage for softmax_indices and related tensor indexing is intentional and should not be changed to int64. The torch.IntTensor type hint is correct for the sample() function's softmax_indices parameter.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 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 with asserts for total size and TP divisibility.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
📚 Learning: 2025-09-23T15:12:38.312Z
Learnt from: nv-lschneider
Repo: NVIDIA/TensorRT-LLM PR: 7910
File: cpp/tensorrt_llm/thop/allreduceOp.cpp:352-446
Timestamp: 2025-09-23T15:12:38.312Z
Learning: In TensorRT-LLM NCCL device implementation, NCCL version 2.28+ requirements are handled at runtime in the nccl_device/config layer rather than with compile-time guards. This allows the allreduceOp to remain version-agnostic and delegates version compatibility validation to the appropriate lower-level components that can gracefully handle unsupported configurations.

Applied to files:

  • tensorrt_llm/llmapi/llm.py
🪛 Ruff (0.14.2)
tensorrt_llm/llmapi/llm.py

632-634: Avoid specifying long messages outside the exception class

(TRY003)

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  • GitHub Check: Pre-commit Check

@yibinl-nvidia yibinl-nvidia force-pushed the dev-yibinl-multi-response-error branch from 10af79d to 1e363a7 Compare October 31, 2025 20:38
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