Releases: intel-analytics/ipex-llm
IPEX-LLM release 2.1.0
BigDL release 2.4.0
Highlights
Note: BigDL v2.4.0 has been updated to include functional and security updates. Users should update to the latest version.
BigDL release 2.3.0
Highlights
Note: BigDL v2.3.0 has been updated to include functional and security updates. Users should update to the latest version.
Nano
- Enhanced
trace
andquantization
process (for PyTorch and TensorFlow model optimizations) - New inference optimization methods (including Intel ARC series GPU support, CPU fp16, JIT int8, etc.)
- New inference/training features (including TorchCCL support, async inference pipeline, compressed model saving, automatic channels_last_3d, multi-instance training for customized TF train loop, etc.)
- Performance enhancement and overhead reduction for inference optimized model
- More user-friendly document and API design
Orca:
- Step-by-step distributed TensorFlow and PyTorch tutorials for different data inputs.
- Improvement and examples for distributed MMCV pipelines.
- Further enhancement for Orca Estimator (more flexible PyTorch train loops via Hook, improved multi-output prediction, memory optimization for OpenVINO, etc.)
Chronos
- 70% latency reduction for Forecasters
- New
bigdl.chronos.aiops
module for AIOps use case on top of Chronos algorithms. - Enhanced TF-based TCNForecaster to better accuracy
Friesian:
- Automatic deployment of RecSys serving pipeline on Kubernetes with Helm Chart
PPML
- TDX (both VM and CoCo) support for Big Data, DL Training & Serving (including TDX-VM orchestration & k8s deployment, TDXCC installation & deployment, attestation and key management support, etc.)
- New Trusted Machine Learning toolkit (with secure and distributed SparkML & LightGBM support)
- Trusted Big Data toolkit upgrade (>2x EPC usage reduction, Apache Flink support, Azure MAA support, multi-KMS support, etc.)
- Trusted Deep Learning toolkit upgrade (with improved performance using BigDL Nano, tcmalloc, etc.)
- Trusted DL Serving toolkit upgrade (with Torch Serve, TF-Serving, and improved throughput and latency)
BigDL release 2.2.0
Highlights
Note: BigDL v2.2.0 has been updated to include functional and security updates. Users should update to the latest version.
- Nano
- Extend BigDL Nano inference to support iGPU and more data types (INT8/BF16/FP16 quantization)
- More performance features (e.g., InferenceOptimizer for Keras, Nano decorator for PyTorch training loop, Nano Context Manager for thread number control and autocast, etc.)
- Support installation with more PyTorch/TensorFlow versions and conditional dependencies on different platforms
- PPML
- Upgrade BigDL PPML solution to support new LibOS (e.g., Gramine1.3.1, Occlum0.29.2) with better security, higher performance, more stability and easier deployment.
- Support more Big Data frameworks (Spark 3.1.3, Flink, Hive etc.), more Python and Data Science tools (Numpy, Pandas, sklearn, Torch Serv, Triton, Flask etc.), and distributed DL training using Orca
- Improve the Attestation (e.g., MREnclave Attestation), Key Management (e.g., multi-KMS) & Encryption (e.g., transparent encryption) features for better end-to-end secure pipeline.
- Initial support of BigDL PPML on SPR TDX (Virtual Machine and TDX Confidential Container)
- Chronos
- Extend BigDL Chronos to support Windows and Mac, and new Python versions (3.8/3.9)
- Provide a benchmark tool for Chronos users to evaluate Chronos performance on their platform
- More performance features (e.g., accuracy and performance improvement for TCNForecaster, lower memory usage, auto optimization search, faster and portable TSDataset, etc.)
- Friesian
- LightGBM training support
- Performance improvements for online serving pipeline
- Orca
- Improve Orca Estimator APIs for better user experience
- Memory optimization for distributed training with Spark DataFrame,
- Better support for image inputs and visualization with Xshards
- Distributed MMCV applications using Orca
- Documentation
- Tutorials for running BigDL Orca on YARN/K8s/Databricks
- BigDL PPML solutions on Azure
- How-to guides and examples for Chronos forecasting and deployment process
BigDL release 2.0.0
Highlights
Note: BigDL v2.0.0 has been updated to include functional and security updates. Users should update to the latest version.
BigDL release 0.13.0
v0.13.0 Update deploy-spark2.sh
BigDL release 0.12.2
v0.12.2 flip version to 0.12.2 (#3119)
BigDL release 0.12.1
v0.12.1 add 0.12 release doc (#3095)
BigDL release 0.11.1
v0.11.1 flip version to 0.11.1 (#3048)
BigDL release 0.10.0
Highlights
-
Continue RNN optimization. We support both LSTM and GRU integration with MKL-DNN which acheives ~3x performance
-
ONNX support. We support loading third party framework models via ONNX
-
Richer data preprocssing support and segmentation inference pipeline support
Details
- [New Feature] Full MaskRCNN model support with data processing
- [New Feature] Support variable-size Resize
- [New Feature] Support batch input for region proposal
- [New Feature] Support samples of different size in one minibatch
- [New Feature] MAP validation method implementation
- [New Feature] ROILabel enhancement to support both object detection and segmentation
- [New Feature] Grey image support for segmentation
- [New Feature] Add TopBlocks support for Feature Pyramid Networks (FPN)
- [New Feature] GRU integration with MKL-DNN support
- [New Feature] MaskHead support for MaskRCNN
- [New Feature] BoxHead support for MaskRCNN
- [New Feature] RegionalProposal support for MaskRCNN
- [New Feature] Shape operation support for ONNX
- [New Feature] Gemm operation support for ONNX
- [New Feature] Gather operation support for ONNX
- [New Feature] AveragePool operation support for ONNX
- [New Feature] BatchNormalization operation support for ONNX
- [New Feature] Concat operation support for ONNX
- [New Feature] Conv operation support for ONNX
- [New Feature] MaxPool operation support for ONNX
- [New Feature] Reshape operation support for ONNX
- [New Feature] Relu operation support for ONNX
- [New Feature] SoftMax operation support for ONNX
- [New Feature] Sum operation support for ONNX
- [New Feature] Squeeze operation support for ONNX
- [New Feature] Const operation support for ONNX
- [New Feature] ONNX model loader implementation
- [New Feature] RioAlign layer support
- [Enhancement] Align batch normalization layer between mklblas and mkl-dnn
- [Enhancement] Python API enhancement to support nested list input
- [Enhancement] Multi-model training/inference support with MKL-DNN
- [Enhancement] BatchNormalization fusion with Scale
- [Enhancement] SoftMax companion object support no argument initialization
- [Enhancement] Python support for training with MKL-DNN
- [Enhancement] Docs enhancement
- [Bug Fix] Fix model version comparison
- [Bug Fix] Fix graph backward bug for ParallelTable
- [Bug Fix] Fix memory leak for training with MKL-DNN
- [Bug Fix] Fix performance caused by denormal values during training
- [Bug Fix] Fix SoftMax segment fault issue under MKL-DNN
- [Bug Fix] Fix TimeDistributedCriterion python API inconsistent with Scala