Unverified Commit 4df43dbe authored by Santosh Bhavani's avatar Santosh Bhavani Committed by GitHub
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docs: Update README Latest News section (#2583)



* Move older news to Previous
Signed-off-by: default avatarSantosh Bhavani <santosh.bhavani@live.com>

* Add Nov 2025 news entries
Signed-off-by: default avatarSantosh Bhavani <santosh.bhavani@live.com>

---------
Signed-off-by: default avatarSantosh Bhavani <santosh.bhavani@live.com>
parent fcfa0c3c
...@@ -13,23 +13,14 @@ Transformer Engine ...@@ -13,23 +13,14 @@ Transformer Engine
Latest News Latest News
=========== ===========
* [11/2025] `NVIDIA Blackwell Architecture Sweeps MLPerf Training v5.1 Benchmarks <https://developer.nvidia.com/blog/nvidia-blackwell-architecture-sweeps-mlperf-training-v5-1-benchmarks/>`_
* [11/2025] `Scale Biology Transformer Models with PyTorch and NVIDIA BioNeMo Recipes <https://developer.nvidia.com/blog/scale-biology-transformer-models-with-pytorch-and-nvidia-bionemo-recipes/>`_
* [11/2025] `FP8 Training of Large-Scale RL Models <https://lmsys.org/blog/2025-11-25-fp8-rl/>`_
* [09/2025] `Pretraining Large Language Models with NVFP4 <https://www.arxiv.org/pdf/2509.25149>`_ * [09/2025] `Pretraining Large Language Models with NVFP4 <https://www.arxiv.org/pdf/2509.25149>`_
* [09/2025] `Native FP8 Mixed Precision Training for Ling 2.0, Open Sourced! <https://huggingface.co/blog/im0qianqian/ling-mini-2-fp8-mixed-precision-training-solution>`_ * [09/2025] `Native FP8 Mixed Precision Training for Ling 2.0, Open Sourced! <https://huggingface.co/blog/im0qianqian/ling-mini-2-fp8-mixed-precision-training-solution>`_
* [09/2025] `Faster Training Throughput in FP8 Precision with NVIDIA NeMo <https://developer.nvidia.com/blog/faster-training-throughput-in-fp8-precision-with-nvidia-nemo/>`_ * [09/2025] `Faster Training Throughput in FP8 Precision with NVIDIA NeMo <https://developer.nvidia.com/blog/faster-training-throughput-in-fp8-precision-with-nvidia-nemo/>`_
* [08/2025] `How we built DeepL's next-generation LLMs with FP8 for training and inference <https://www.deepl.com/en/blog/tech/next-generation-llm-fp8-training>`_ * [08/2025] `How we built DeepL's next-generation LLMs with FP8 for training and inference <https://www.deepl.com/en/blog/tech/next-generation-llm-fp8-training>`_
* [08/2025] `NVFP4 Trains with Precision of 16-bit and Speed and Efficiency of 4-bit <https://developer.nvidia.com/blog/nvfp4-trains-with-precision-of-16-bit-and-speed-and-efficiency-of-4-bit/>`_ * [08/2025] `NVFP4 Trains with Precision of 16-bit and Speed and Efficiency of 4-bit <https://developer.nvidia.com/blog/nvfp4-trains-with-precision-of-16-bit-and-speed-and-efficiency-of-4-bit/>`_
* [06/2025] `Floating Point 8: An Introduction to Efficient, Lower-Precision AI Training <https://developer.nvidia.com/blog/floating-point-8-an-introduction-to-efficient-lower-precision-ai-training/>`_
* [05/2025] `Advanced Optimization Strategies for LLM Training on NVIDIA Grace Hopper <https://developer.nvidia.com/blog/advanced-optimization-strategies-for-llm-training-on-nvidia-grace-hopper/>`_
* [03/2025] `Stable and Scalable FP8 Deep Learning Training on Blackwell | GTC 2025 <https://www.nvidia.com/en-us/on-demand/session/gtc25-s72778/>`_
* [03/2025] `Measure and Improve AI Workload Performance with NVIDIA DGX Cloud Benchmarking <https://developer.nvidia.com/blog/measure-and-improve-ai-workload-performance-with-nvidia-dgx-cloud-benchmarking/>`_
.. image:: docs/examples/comparison-fp8-bf16-training-nvidia-dgx-cloud-benchmarking-performance-explorer.jpg
:width: 600
:alt: Comparison of FP8 versus BF16 training, as seen in NVIDIA DGX Cloud Benchmarking Performance Explorer
* [02/2025] `Understanding the Language of Life's Biomolecules Across Evolution at a New Scale with Evo 2 <https://developer.nvidia.com/blog/understanding-the-language-of-lifes-biomolecules-across-evolution-at-a-new-scale-with-evo-2/>`_
* [02/2025] `NVIDIA DGX Cloud Introduces Ready-To-Use Templates to Benchmark AI Platform Performance <https://developer.nvidia.com/blog/nvidia-dgx-cloud-introduces-ready-to-use-templates-to-benchmark-ai-platform-performance/>`_
* [01/2025] `Continued Pretraining of State-of-the-Art LLMs for Sovereign AI and Regulated Industries with iGenius and NVIDIA DGX Cloud <https://developer.nvidia.com/blog/continued-pretraining-of-state-of-the-art-llms-for-sovereign-ai-and-regulated-industries-with-igenius-and-nvidia-dgx-cloud/>`_
`Previous News <#previous-news>`_ `Previous News <#previous-news>`_
...@@ -425,6 +416,18 @@ Videos ...@@ -425,6 +416,18 @@ Videos
Previous News Previous News
============= =============
* [06/2025] `Floating Point 8: An Introduction to Efficient, Lower-Precision AI Training <https://developer.nvidia.com/blog/floating-point-8-an-introduction-to-efficient-lower-precision-ai-training/>`_
* [05/2025] `Advanced Optimization Strategies for LLM Training on NVIDIA Grace Hopper <https://developer.nvidia.com/blog/advanced-optimization-strategies-for-llm-training-on-nvidia-grace-hopper/>`_
* [03/2025] `Stable and Scalable FP8 Deep Learning Training on Blackwell | GTC 2025 <https://www.nvidia.com/en-us/on-demand/session/gtc25-s72778/>`_
* [03/2025] `Measure and Improve AI Workload Performance with NVIDIA DGX Cloud Benchmarking <https://developer.nvidia.com/blog/measure-and-improve-ai-workload-performance-with-nvidia-dgx-cloud-benchmarking/>`_
.. image:: docs/examples/comparison-fp8-bf16-training-nvidia-dgx-cloud-benchmarking-performance-explorer.jpg
:width: 600
:alt: Comparison of FP8 versus BF16 training, as seen in NVIDIA DGX Cloud Benchmarking Performance Explorer
* [02/2025] `Understanding the Language of Life's Biomolecules Across Evolution at a New Scale with Evo 2 <https://developer.nvidia.com/blog/understanding-the-language-of-lifes-biomolecules-across-evolution-at-a-new-scale-with-evo-2/>`_
* [02/2025] `NVIDIA DGX Cloud Introduces Ready-To-Use Templates to Benchmark AI Platform Performance <https://developer.nvidia.com/blog/nvidia-dgx-cloud-introduces-ready-to-use-templates-to-benchmark-ai-platform-performance/>`_
* [01/2025] `Continued Pretraining of State-of-the-Art LLMs for Sovereign AI and Regulated Industries with iGenius and NVIDIA DGX Cloud <https://developer.nvidia.com/blog/continued-pretraining-of-state-of-the-art-llms-for-sovereign-ai-and-regulated-industries-with-igenius-and-nvidia-dgx-cloud/>`_
* [11/2024] `Developing a 172B LLM with Strong Japanese Capabilities Using NVIDIA Megatron-LM <https://developer.nvidia.com/blog/developing-a-172b-llm-with-strong-japanese-capabilities-using-nvidia-megatron-lm/>`_ * [11/2024] `Developing a 172B LLM with Strong Japanese Capabilities Using NVIDIA Megatron-LM <https://developer.nvidia.com/blog/developing-a-172b-llm-with-strong-japanese-capabilities-using-nvidia-megatron-lm/>`_
* [11/2024] `How FP8 boosts LLM training by 18% on Amazon SageMaker P5 instances <https://aws.amazon.com/blogs/machine-learning/how-fp8-boosts-llm-training-by-18-on-amazon-sagemaker-p5-instances/>`_ * [11/2024] `How FP8 boosts LLM training by 18% on Amazon SageMaker P5 instances <https://aws.amazon.com/blogs/machine-learning/how-fp8-boosts-llm-training-by-18-on-amazon-sagemaker-p5-instances/>`_
* [11/2024] `Efficiently train models with large sequence lengths using Amazon SageMaker model parallel <https://aws.amazon.com/blogs/machine-learning/efficiently-train-models-with-large-sequence-lengths-using-amazon-sagemaker-model-parallel/>`_ * [11/2024] `Efficiently train models with large sequence lengths using Amazon SageMaker model parallel <https://aws.amazon.com/blogs/machine-learning/efficiently-train-models-with-large-sequence-lengths-using-amazon-sagemaker-model-parallel/>`_
......
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