Model Optimizer Changelog (Linux) — Model Optimizer 0.31.0 (original) (raw)
0.31 (2025-06-04)
Backward Breaking Changes
- NeMo and Megatron-LM distributed checkpoint (
torch-dist
) stored with legacy version can no longer be loaded. The remedy is to load the legacy distributed checkpoint with 0.29 and store atorch
checkpoint and resume with 0.31 to convert to a new format. The following changes only apply to storing and resuming distributed checkpoint.quantizer_state
ofTensorQuantizer
is now stored inextra_state
ofQuantModule
where it used to be stored in the shardedmodelopt_state
.- The dtype and shape of
amax
andpre_quant_scale
stored in the distributed checkpoint are now retored. Some dtype and shape are previously changed to make all decoder layers to have homogeneous structure in the checkpoint. - Togather with megatron.core-0.13, quantized model will store and resume distributed checkpoint in a heterogenous format.
- auto_quantize API now accepts a list of quantization config dicts as the list of quantization choices.
- This API previously accepts a list of strings of quantization format names. It was therefore limited to only pre-defined quantization formats unless through some hacks.
- With this change, now user can easily use their own custom quantization formats for auto_quantize.
- In addition, the
quantization_formats
now excludeNone
(indicating “do not quantize”) as a valid format because the auto_quantize internally always add “do not quantize” as an option anyway.
- Model export config is refactored. The quant config in
hf_quant_config.json
is converted and saved toconfig.json
.hf_quant_config.json
will be deprecated soon.
Deprecations
- Deprecate
Python 3.9
support.
New Features
- Upgrade LLM examples to use TensorRT-LLM 0.19.
- Add new model support in the
llm_ptq
example: Qwen3 MoE. - ModelOpt now supports advanced quantization algorithms such as AWQ, SVDQuant and SmoothQuant for cpu-offloaded Huggingface models.
- Add AutoCast tool to convert ONNX models to FP16 or BF16.
- Add
--low_memory_mode
flag in the llm_ptq example support to initialize HF models with compressed weights and reduce peak memory of PTQ and quantized checkpoint export.
0.29 (2025-05-08)
Backward Breaking Changes
- Refactor
SequentialQuantizer
to improve its implementation and maintainability while preserving its functionality.
Deprecations
- Deprecate
torch<2.4
support.
New Features
- Upgrade LLM examples to use TensorRT-LLM 0.18.
- Add new model support in the
llm_ptq
example: Gemma-3, Llama-Nemotron. - Add INT8 real quantization support.
- Add an FP8 GEMM per-tensor quantization kernel for real quantization. After PTQ, you can leverage the mtq.compress API to accelerate evaluation of quantized models.
- Use the shape of Pytorch parameters and buffers of
TensorQuantizer
to initialize them during restore. This makes quantized model restoring more robust. - Support adding new custom quantization calibration algorithms. Please refer to mtq.calibrate or custom calibration algorithm for more details.
- Add EAGLE3 (
LlamaForCausalLMEagle3
) training and unified ModelOpt checkpoint export support for Megatron-LM. - Add support for
--override_shapes
flag to ONNX quantization.--calibration_shapes
is reserved for the input shapes used for calibration process.--override_shapes
is used to override the input shapes of the model with static shapes.
- Add support for UNet ONNX quantization.
- Enable
concat_elimination
pass by default to improve the performance of quantized ONNX models. - Enable Redundant Cast elimination pass by default in moq.quantize.
- Add new attribute
parallel_state
to DynamicModule to support distributed parallelism such as data parallel and tensor parallel. - Add MXFP8, NVFP4 quantized ONNX export support.
- Add new example for torch quantization to ONNX for MXFP8, NVFP4 precision.
0.27 (2025-04-03)
Deprecations
- Deprecate real quantization configs, please use mtq.compress API for model compression after quantization.
New Features
- Add new model support in the
llm_ptq
example: OpenAI Whisper. Experimental support: Llama4, QwQ, Qwen MOE. - Add blockwise FP8 quantization support in unified model export.
- Add quantization support to the Transformer Engine Linear module.
- Add support for SVDQuant. Currently, only simulation is available; real deployment (for example, TensorRT deployment) support is coming soon.
- Store
modelopt_state
in Megatron Core distributed checkpoint (used in NeMo and Megatron-LM) differently to support distributed checkpoint resume expert-parallel (EP). The legacymodelopt_state
in the distributed checkpoint generated by previous modelopt version can still be loaded in 0.27 and 0.29 but will need to be stored in the new format. - Add triton-based NVFP4 quantization kernel that delivers approximately 40% performance improvement over the previous implementation.
- Add a new API mtq.compress for model compression for weights after quantization.
- Add option to simplify ONNX model before quantization is performed.
- Add FP4 KV cache support for unified HF and TensorRT-LLM export.
- Add speculative decoding support to Multi-Token Prediction (MTP) in Megatron Core models.
- (Experimental) Improve support for ONNX models with custom TensorRT op:
- Add support for
--calibration_shapes
flag. - Add automatic type and shape tensor propagation for full ORT support with TensorRT EP.
- Add support for
Known Issues
- Quantization of T5 models is broken. Please use
nvidia-modelopt==0.25.0
withtransformers<4.50
meanwhile.
0.25 (2025-03-03)
Deprecations
- Deprecate Torch 2.1 support.
- Deprecate
humaneval
benchmark inllm_eval
examples. Please use the newly addedsimple_eval
instead. - Deprecate
fp8_naive
quantization format inllm_ptq
examples. Please usefp8
instead.
New Features
- Support fast hadamard transform in
TensorQuantizer
. It can be used for rotation based quantization methods, e.g. QuaRot. Users need to install the package fast_hadamard_transfrom to use this feature. - Add affine quantization support for the KV cache, resolving the low accuracy issue in models such as Qwen2.5 and Phi-3/3.5.
- Add FSDP2 support. FSDP2 can now be used for QAT.
- Add LiveCodeBench and Simple Evals to the
llm_eval
examples. - Disabled saving modelopt state in unified hf export APIs by default, i.e., added
save_modelopt_state
flag inexport_hf_checkpoint
API and by default set to False. - Add FP8 and NVFP4 real quantization support with LLM QLoRA example.
- The
modelopt.deploy.llm.LLM
now support use thetensorrt_llm._torch.LLM
backend for the quantized HuggingFace checkpoints. - Add NVFP4 PTQ example for DeepSeek-R1.
- Add end-to-end AutoDeploy example for AutoQuant LLM models.
0.23 (2025-01-29)
Backward Breaking Changes
- Support TensorRT-LLM to 0.17. Examples (e.g. benchmark task in llm_ptq) may not be fully compatible with TensorRT-LLM 0.15.
- Nvidia TensorRT Model Optimizer has changed its LICENSE from NVIDIA Proprietary (library wheel) and MIT (examples) to Apache 2.0 in this first full OSS release.
- Deprecate Python 3.8, Torch 2.0, and Cuda 11.x support.
- ONNX Runtime dependency upgraded to 1.20 which no longer supports Python 3.9.
- In the Huggingface examples, the
trust_remote_code
is by default set to false and require users to explicitly turning it on with--trust_remote_code
flag.
New Features
- Added OCP Microscaling Formats (MX) for fake quantization support, including FP8 (E5M2, E4M3), FP6 (E3M2, E2M3), FP4, INT8.
- Added NVFP4 quantization support for NVIDIA Blackwell GPUs along with updated examples.
- Allows export lm_head quantized TensorRT-LLM checkpoint. Quantize lm_head could benefit smaller sized models at a potential cost of additional accuracy loss.
- TensorRT-LLM now supports Moe FP8 and w4a8_awq inference on SM89 (Ada) GPUs.
- New models support in the
llm_ptq
example: Llama 3.3, Phi 4. - Added Minitron pruning support for NeMo 2.0 GPT models.
- Exclude modules in TensorRT-LLM export configs are now wildcards
- The unified llama3.1 FP8 huggingface checkpoints can be deployed on SGLang.
0.21 (2024-12-03)
Backward Breaking Changes
- Support TensorRT-LLM to 0.15. Examples (e.g. benchmark task in llm_ptq) may not be fully compatible with TensorRT-LLM 0.14.
- Remove the deprecated arg
export_npz
from themt.export.export_tensorrt_llm_checkpoint
API - Deprecate
mt.export.export_to_vllm
API formt.export.export_hf_checkpoint
- Rename decoder type
gptnext
togpt
inllm_ptq
to align with TensorRT-LLM model definition.
New Features
- Added new tutorial notebooks for Minitron pruning and distillation in NVIDIA NeMo framework.
- New models support in the
llm_ptq
example: Minitron, Phi3.5 MOE. - New models support in the
vlm_ptq
example: Llama3.2(Mllama) mt.export.export_tensorrt_llm_checkpoint
andmt.export.export_hf_checkpoint
no longer requires thedtype
arg.- Added an example to deploy and run quantized fp8 llama3.1 8B instruct model from HuggingFace modelopt model hub on both TensorRT and vLLM.
Bug Fixes
- Improve Minitron pruning quality by avoiding possible bf16 overflow in importance calculation and minor change in
hidden_size
importance ranking.
Misc
- Added deprecation warnings for Python 3.8, torch 2.0, and CUDA 11.x. Support will be dropped in the next release.
0.19 (2024-10-23)
Backward Breaking Changes
- Deprecated the summarize task in the
llm_ptq
example. - Deprecated the
type
flag in the huggingface_example.sh - Deprecated Python plugin support in ONNX.
- Support TensorRT-LLM 0.13. Examples not compatible with TensorRT-LLM 0.12.
- mtq.auto_quantize API has been updated. The API now accepts
forward_step
andforward_backward_step
as arguments instead ofloss_func
andcollect_func
. Please see the API documentation for more details.
New Features
- ModelOpt is compatible for SBSA aarch64 (e.g. GH200) now! Except ONNX PTQ with plugins is not supported.
- Add
effective_bits
as a constraint for mtq.auto_qauntize. lm_evaluation_harness
is fully integrated to modelopt backed by TensorRT-LLM.lm_evaluation_harness
benchmarks are now available in the examples for LLM accuracy evaluation.- A new
--perf
flag is introduced in themodelopt_to_tensorrt_llm.py
example to build engines with max perf. - Users can choose the execution provider to run the calibration in ONNX quantization.
- Added automatic detection of custom ops in ONNX models using TensorRT plugins. This requires the
tensorrt
python package to be installed. - Replaced
jax
withcupy
for faster INT4 ONNX quantization. - mtq.auto_quantize now supports search based automatic quantization for NeMo & MCore models (in addition to HuggingFace models).
- Add
num_layers
andhidden_size
pruning support for NeMo / Megatron-core models.
0.17 (2024-09-11)
Backward Breaking Changes
- Deprecated
torch<2.0
support. - modelopt.torch.utils.dataset_utils.get_dataset_dataloader() now returns a key value pair instead of the tensor.
New Features
- New APIs and examples: modelopt.torch.prune for pruning Conv, Linear, and Attention heads for NVIDIA Megatron-core GPT-style models (e.g. Llama 3), PyTorch Computer Vision models, and HuggingFace Bert/GPT-J models.
- New API: modelopt.torch.distill for knowledge distillation, along with guides and example.
- New Example: HF BERT Prune, Distill & Quantizeshowcasing how to chain pruning, distillation, and quantization to achieve the best performance on a given model.
- Added INT8/FP8 DQ-only support for ONNX model.
- New API: modelopt.torch.speculative for end-to-end support of Medusa models.
- Added Medusa QAT and End-to-end examples.
- Modelopt now supports automatic save/restore of
modelopt_state
with the.save_pretrained
and.from_pretrained
APIs from Huggingface libraries, such astransformers
anddiffusers
. This feature can be enabled by callingmto.enable_huggingface_checkpointing(). - ONNX FP8 quantization support with amax calibration.
- TensorRT-LLM dependency upgraded to 0.12.0. Huggingface tokenizer files are now also stored in the engine dir.
- The unified model export API modelopt.torch.export.export_hf_checkpointsupports exporting
fp8
andint4_awq
quantized checkpoints with packed weights for Hugging Face models with namings aligned with its original checkpoints. The exportedfp8
checkpoints can be deployed with both TensorRT-LLM and VLLM. - Add int8 and fp8 quantization support for the FLUX.1-dev model.
- Add a Python-friendly TensorRT inference pipeline for diffusion models.
Misc
- Added deprecation warning for
set_data_parallel_group
andset_tensor_parallel_group
. These APIs are no longer needed for supporting distributed data and tensor parallelism in quantization. They will be removed in a future release.
0.15 (2024-07-25)
Backward Breaking Changes
- Deprecated
QuantDescriptor
. Use QuantizerAttributeConfig to configureTensorQuantizer
.set_from_attribute_config
can be used to set the quantizer attributes from the config class or attribute dictionary. This change applies only to backend APIs. The change is backward compatible if you are using only the mtq.quantize API.
New Features
- Added quantization support for torch
RNN, LSTM, GRU
modules. Only available fortorch>=2.0
. modelopt.torch.quantization
now supports module class based quantizer attribute setting formtq.quantize API.- Added new LLM PTQ example for DBRX model.
- Added new LLM (Gemma 2) PTQ and TensorRT-LLM checkpoint export support.
- Added new LLM QAT example for NVIDIA NeMo framework.
- TensorRT-LLM dependency upgraded to 0.11.0.
- (Experimental): mtq.auto_quantize API which quantizes a model by searching for the best per-layer quantization formats.
- (Experimental): Added new LLM QLoRA example with NF4 and INT4_AWQ quantization.
- (Experimental):
modelopt.torch.export
now supports exporting quantized checkpoints with packed weights for Hugging Face models with namings aligned with its original checkpoints. - (Experimental) Added support for quantization of ONNX models with TensorRT plugin.
Misc
- Added deprecation warning for
torch<2.0
. Support will be dropped in next release.
0.13 (2024-06-14)
Backward Breaking Changes
- PTQ examples have been upgraded to use TensorRT-LLM 0.10.
New Features
- Adding TensorRT-LLM checkpoint export support for Medusa decoding (official
MedusaModel
and Megatron CoreGPTModel
). - Enable support for mixtral, recurrentgemma, starcoder, qwen in PTQ examples.
- Adding TensorRT-LLM checkpoint export and engine building support for sparse models.
- Import scales from TensorRT calibration cache and use them for quantization.
- (Experimental) Enable low GPU memory FP8 calibration for the Hugging Face models when the original model size does not fit into the GPU memory.
- (Experimental) Support exporting FP8 calibrated model to VLLM deployment.
- (Experimental) Python 3.12 support added.
0.11 (2024-05-07)
Backward Breaking Changes
- [!!!] The package was renamed from
ammo
tomodelopt
. The new full product name is Nvidia TensorRT Model Optimizer. PLEASE CHANGE ALL YOUR REFERENCES FROMammo
tomodelopt
including any paths and links! - Default installation
pip install nvidia-modelopt
will now only install minimal core dependencies. Following optional dependencies are available depending on the features that are being used:[deploy], [onnx], [torch], [hf]
. To install all dependencies, usepip install "nvidia-modelopt[all]"
. - Deprecated
inference_gpus
arg inmodelopt.torch.export.model_config_export.torch_to_tensorrt_llm_checkpoint
. User should useinference_tensor_parallel
instead. - Experimental
modelopt.torch.deploy
module is now available asmodelopt.torch._deploy
.
New Features
modelopt.torch.sparsity
now supports sparsity-aware training (SAT). Both SAT and post-training sparsification supports chaining with other modes, e.g. SAT + QAT.modelopt.torch.quantization
natively support distributed data and tensor parallelism while estimating quantization parameters. The data and tensor parallel groups needs to be registered withmodelopt.torch.utils.distributed.set_data_parallel_group
andmodelopt.torch.utils.distributed.set_tensor_parallel_group
APIs. By default, the data parallel group is set as the default distributed group and the tensor parallel group is disabled.modelopt.torch.opt
now supports chaining multiple optimization techniques that each require modifications to the same model, e.g., you can now sparsify and quantize a model at the same time.modelopt.onnx.quantization
supports FLOAT8 quantization format with Distribution calibration algorithm.- Native support of
modelopt.torch.opt
with FSDP (Fully Sharded Data Parallel) fortorch>=2.1
. This includes sparsity, quantization, and any other model modification & optimization. - Added FP8 ONNX quantization support in
modelopt.onnx.quantization
. - Added Windows (
win_amd64
) support for ModelOpt released wheels. Currently supported formodelopt.onnx
submodule only.
Bug Fixes
- Fixed the compatibility issue of
modelopt.torch.sparsity
with FSDP. - Fixed an issue in dynamic dim handling in
modelopt.onnx.quantization
with random calibration data. - Fixed graph node naming issue after opset conversion operation.
- Fixed an issue in negative dim handling like dynamic dim in
modelopt.onnx.quantization
with random calibration data. - Fixed allowing to accept
.pb
file for input file. - Fixed copy extra data to tmp folder issue for ONNX PTQ.