AutoMLContinual Learning 977 0.72 stars / hour Paper Code REPA-E: Unlocking VAE for End-to-End Tuning with Latent Diffusion Transformers End2End-Diffusion/REPA-E• •14 Apr 2025 We show that while diffusion loss is ineffective, end-to-end training can be unlocked through the representation...
Code BIP3D: Bridging 2D Images and 3D Perception for Embodied Intelligence HorizonRobotics/BIP3D• •22 Nov 2024 In embodied intelligence systems, a key component is 3D perception algorithm, which enables agents to understand their surrounding environments. ...
machine-learning spark deep-learning uber mxnet tensorflow mpi keras pytorch machinelearning baidu deeplearning ray Updated Apr 22, 2025 Python dragen1860 / Deep-Learning-with-TensorFlow-book Star 13.2k Code Issues Pull requests 深度学习入门开源书,基于TensorFlow 2.0案例实战。Open source Deep Lear...
-on projects were particularly beneficial, allowing me to apply concepts immediately. Overall, this course significantly deepened my understanding of machine learning and equipped me with valuable skills for my career. Highly recommended for anyone looking to delve into the world of machine learning....
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Machine-Learning-Source-Code-Plagiarism Using machine learning combined with attribute counting and structured based methods to obtain an accurate analysis of files for source code plagiarism Utilises the Rabin–Karp algorithm and AST's for improved performance. Getting the Data The data to train this...
使用Azure Machine Learning VS Code 延伸模組時,遠端計算執行個體需要存取公用存放庫,才能安裝延伸模組所需的封裝。 如果計算執行個體需要 Proxy 才能存取這些公用存放庫或網際網路,則必須在計算執行個體的 HTTP_PROXY 檔案中設定並匯出 HTTPS_PROXY 和~/.bashrc 環境變數。 可以使用自訂指令碼在佈建時自動執行此流程...
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the project. For natural language processing scenarios, administration and setup of the MLOps v2 environment is largely the same as for classical machine learning, but with an extra step: create image labeling and annotation projects by using the labeling feature of Machine Learning or another tool...