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¥é¨ï¼æè¯ä¹¦ï¼(æä¸æï¼ å·¥å ·ãåºãæ¡æ¶ï¼TensorFlow 2 with Kerasãpandas Getting Started with Deep Learningï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: TensorFlow 2 With Keras, pandas |
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| 4 妿¶ | ä¸ºå¤§è§æ¨¡æ¨çé¨ç½²æ¨¡åï¼æä¸æï¼ å·¥å ·ãåºãæ¡æ¶ï¼NVIDIA Triton⢠Deploying a Model for Inference at Production Scale ï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: NVIDIA Triton⢠|
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| 8 妿¶ | ä½¿ç¨ CUDA å é Python åºç¨ï¼æè¯ä¹¦ï¼(æä¸æï¼ å·¥å ·ãåºãæ¡æ¶ï¼NumbaãNumPy Fundamentals of Accelerated Computing with CUDA Pythonï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: NumbaãNumPy |
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| 8 妿¶ | ä½¿ç¨ CUDA å é C/C++ åºç¨ ï¼æè¯ä¹¦ï¼(æä¸æï¼ å·¥å ·ãåºåæ¡æ¶ï¼NVIDIA Nsight Systems Getting Started with Accelerated Computing in CUDA C/C++ CUDA®ï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: NVIDIA Nsight Systems |
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| 8 妿¶ | æå»ºå®æ¶è§é¢ AI åºç¨ï¼æè¯ä¹¦ï¼(æä¸æï¼ å·¥å ·ãåºåæ¡æ¶ï¼NVIDIA DeepStreamãNVIDIA TAO å·¥å ·å ãå NVIDIA TensorRT Building Real-Time Video AI Applicationsï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: NVIDIA DeepStream, NVIDIA TAO Toolkit, NVIDIA TensorRT |
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| 2 妿¶ | å¾ç¥ç»ç½ç»å
¥é¨ (æä¸æï¼ å·¥å ·ãåºåæ¡æ¶ï¼DGL and PyTorch Introduction to Graph Neural Networksï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: DGL and PyTorch |
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| 4 妿¶ | ä½¿ç¨ Isaac Sim å®ç°æºå¨äººä»¿çå
¥é¨ (æä¸æï¼ å·¥å ·ãåºåæ¡æ¶ï¼Isaac SimãOmniverse KIT å NumPy Introduction to Robotic Simulations in Isaac Simï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: Isaac Sim, Omniverse KIT, NumPy |
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| 2 妿¶ | $0 | çæå¼ AI å
¥é¨ (æä¸æï¼ Generative AI Explainedï¼è¯¾ç¨è±æåç§°ï¼ |
| 3 妿¶ | ä½¿ç¨ LLaMA-2 è¿è¡æç¤ºå·¥ç¨ (æä¸æï¼ å·¥å ·ãåºåæ¡æ¶ï¼LLaMA-2ï¼HuggingFace Prompt Engineering with LLaMA-2ï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: LLaMA-2ï¼HuggingFace |
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| 1 妿¶ | $0 | ä½¿ç¨ RAG å¢å¼ºå¤§è¯è¨æ¨¡åå
¥é¨ (æä¸æï¼ Augment your LLM Using Retrieval Augmented Generationï¼è¯¾ç¨è±æåç§°ï¼ |
| 2 妿¶ | Omniverse ä¸ç USD 使ç¨è¦ç¹ (æä¸æï¼ å·¥å ·ãåºåæ¡æ¶ï¼OpenUSD, Omniverse Essentials of USD in Omniverseï¼è¯¾ç¨è±æåç§°ï¼ Tools, libraries, frameworks used: OpenUSD, Omniverse |
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| 2 妿¶ | Optimizing CUDA Machine Learning Codes With Nsight Profiling Tools Tools, libraries, frameworks used: NVIDIA Nsights Systems, NVIDIA Nsight Compute |
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| 8 妿¶ | Fundamentals of Accelerated Computing with OpenACC
Tools, libraries, frameworks used: OpenACCâ¢, C/C++ |
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| 4 妿¶ | Integrating Sensors with NVIDIA DRIVE®
Tools, libraries, frameworks used: C++, DriveWorks |
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| 2 妿¶ | Get Started with Highly Accurate Custom ASR for Speech AI
Tools, libraries, frameworks used: NVIDIA Riva, NVIDIA NeMo, NVIDIA TAO Toolkit, Models in NGC, Hardware |
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| 6 妿¶ | Introduction to Transformer-Based Natural Language Processing
Tools, libraries, frameworks used: NVIDIA NeMo |
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| 8 妿¶ | Generative AI with Diffusion Models
Tools, libraries, frameworks used: PyTorch, CLIP |
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| 8 妿¶ | $0 | Building RAG Agents with LLMs
Tools, libraries, frameworks used: PyTorch, LangChain, Llama 2, Llama-Index, Milvus |
| 4 妿¶ | Introduction to Physics-informed Machine Learning with Modulus
Tools, libraries, frameworks used: NVIDIA Modulus |
|
| 3 妿¶ | Synthetic Data Generation for Training Computer Vision Models
Tools, libraries, frameworks used: NVIDIA Omniverse⢠Replicator, NVIDIA Triton Inference Server, PyTorch |
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