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Проверка ИИ-оптимизации • 19.07.2026
Редакционное резюме ИИ
NVIDIA Developer добавлен по независимой проверке международного каталога. На момент аудита AI-готовность домена developer.nvidia.com оценена в 80/100: llms.txt доступен. Расширенный llms-full.txt не обнаружен; карточка сформирована по фактическим данным сайта и его публичным файлам.
7 199Токены llms.txt
—Токены llms-full.txt
ai.txt
sitemap.xml
Проверки ИИ-оптимизации
llms-full.txt
Полная версия не найдена
ai.txt
Файл ai.txt не найден
Sitemap в robots.txt6 шт.
Найдено карт сайта: 6
llms.txt в robots.txt
Ссылки: Allow: /llms.txt$, Allow: /*/llms.txt$, Disallow: /*.llms.txt$
Schema.org (JSON-LD)
Типы: Organization
OpenGraph80%
Найдено OG-тегов: 5
Доступ ИИ-ботов
На основе анализа robots.txt
GPTBotНе упомянут
OAI-SearchBotНе упомянут
ChatGPT-UserНе упомянут
Google-ExtendedНе упомянут
ClaudeBotНе упомянут
Claude-SearchBotНе упомянут
Claude-UserНе упомянут
BytespiderНе упомянут
CCBotНе упомянут
PerplexityBotНе упомянут
Perplexity-UserНе упомянут
Карты сайта
OpenGraph теги
Полнота разметки: 80%
og:site_nameNVIDIA Developerog:titleNVIDIA Developerog:typewebsiteog:urlhttps://developer.nvidia.com/Schema.org разметка
Найдено типов: 1 · Свойств: 4
Organization
nameNVIDIA Developerurlhttps://developer.nvidia.comlogohttps://www.nvidia.com/en-us/about-nvidia/legal-info/logo-brand-usage/_jcr_content/root/responsivegrid/nv_container_392921705/nv_container_412055486/nv_image.coreimg.100.630.png/1703060329095/nvidia-logo-horz.pngsameAshttps://github.com/nvidia, https://www.linkedin.com/company/nvidia/, https://x.com/nvidiadeveloper# NVIDIA Developer > Comprehensive developer portal for NVIDIA accelerated computing, AI, robotics, graphics, and simulation technologies. ## Getting Started - [NVIDIA Developer Home](https://developer.nvidia.com/index.md): Markdown projection of the developer.nvidia.com homepage with curated links into NVIDIA's developer ecosystem - [Platforms and Tools](https://developer.nvidia.com/platforms-and-tools.md): Explore NVIDIA platforms, SDKs, and developer tools by category - [Developer Tools Catalog](https://developer.nvidia.com/developer-tools-catalog.md): Search the full catalog of NVIDIA developer tools, SDKs, and libraries - [Open Source Catalog](https://developer.nvidia.com/open-source.md): Browse NVIDIA open source projects, libraries, and community contributions - [Downloads](https://developer.nvidia.com/downloads.md): Download drivers, SDKs, toolkits, and firmware for NVIDIA hardware and software - [Documentation](https://docs.nvidia.com/): Access technical documentation, API references, and programming guides across all NVIDIA products - [Build API Catalog](https://build.nvidia.com/): Try and integrate the latest AI models, blueprints, and microservices with API endpoints - [Developer Sandbox (Brev)](https://developer.nvidia.com/brev.md): Launch preconfigured cloud environments for prototyping and experimenting with NVIDIA tools - [NGC Catalog](https://catalog.ngc.nvidia.com/): Browse GPU-optimized containers, pre-trained models, SDKs, and Helm charts for AI and HPC - [AI Models](https://developer.nvidia.com/ai-models.md): Discover pre-trained models, containers, and resources for AI development on NGC - [Topics](https://developer.nvidia.com/topics.md): Browse all developer topics across AI, simulation, graphics, HPC, and more ## Generative AI - [AI Developer Resources](https://developer.nvidia.com/topics/ai.md): Overview of all NVIDIA AI tools, frameworks, and resources for developers - [Generative AI](https://developer.nvidia.com/topics/ai/generative-ai.md): Overview of tools and models for generating text, image, audio, and video content - [AI Inference](https://developer.nvidia.com/topics/ai/ai-inference.md): Overview of tools for deploying and optimizing AI inference models in production - JSON data: https://developer.nvidia.com/search-data/ai_inference.json - [Retrieval-Augmented Generation](https://developer.nvidia.com/topics/ai/retrieval-augmented-generation.md): Overview of RAG tools for grounding AI output with external knowledge sources - [NeMo Customizer](https://developer.nvidia.com/nemo-customizer.md): Fine-tune and adapt large language models using supervised and parameter-efficient techniques - [NeMo Evaluator](https://developer.nvidia.com/nemo-evaluator.md): Evaluate LLM quality with automated benchmarks, human preference metrics, and safety checks - [NeMo Guardrails](https://developer.nvidia.com/nemo-guardrails.md): Add programmable safety, topic control, and content moderation to LLM-based applications - [NeMo Agent Toolkit](https://developer.nvidia.com/nemo-agent-toolkit.md): Build multi-step agentic AI workflows with tool use, planning, and memory capabilities - [NeMo Retriever](https://developer.nvidia.com/nemo-retriever.md): Deploy retrieval-augmented generation pipelines with GPU-accelerated embedding and reranking - [NeMo Curator](https://developer.nvidia.com/nemo-curator.md): Curate, deduplicate, and filter large-scale training datasets for language model development - [Nemotron](https://developer.nvidia.com/nemotron.md): Access open-weight LLMs with training recipes optimized for customization and deployment - [Megatron Core](https://developer.nvidia.com/megatron-core.md): Train large language models at scale with GPU-optimized parallelism and mixed precision - [TAO Toolkit](https://developer.nvidia.com/tao-toolkit.md): Customize pre-trained AI models with transfer learning for vision, speech, and language tasks - [DALI](https://developer.nvidia.com/dali.md): Accelerate data loading and augmentation pipelines on GPUs for deep learning training - [NIM](https://developer.nvidia.com/nim.md): Deploy optimized inference microservices for foundation models with a single API call - [Dynamo](https://developer.nvidia.com/dynamo.md): Serve LLMs at scale with disaggregated inference, KV-aware routing, and SLA-based autoscaling - [Dynamo/Triton Inference Server](https://developer.nvidia.com/dynamo-triton.md): Deploy multi-framework AI models in production with dynamic batching and model ensemble support - [TensorRT](https://developer.nvidia.com/tensorrt.md): Optimize and deploy deep learning models for high-throughput, low-latency GPU inference - [TensorRT-LLM](https://developer.nvidia.com/tensorrt-llm.md): Compile and optimize large language models for production GPU inference with quantization support - [Riva](https://developer.nvidia.com/riva.md): Build speech AI applications with GPU-accelerated ASR, TTS, and neural machine translation - [Maxine](https://developer.nvidia.com/maxine.md): Integrate AI-powered audio, video, and augmented reality effects into communication applications - [CUDA-X Data Science Libraries](https://developer.nvidia.com/topics/ai/data-science/cuda-x-for-data-science.md): A collection of open-source libraries that accelerate popular data science libraries and platforms on NVIDIA GPUs through CUDA primitives and algorithms. - JSON data: https://developer.nvidia.com/search-data/data_science.json - [Data Center Deep Learning Product Performance Hub](https://developer.nvidia.com/deep-learning-performance-training-inference.md): View reproducible performance data for the latest NVIDIA Data Center products. - JSON data: https://developer.nvidia.com/search-data/deep_learning_performance.json - [Inference Performance for Data Center Deep Learning](https://developer.nvidia.com/deep-learning-performance-training-inference/ai-inference.md): Balance throughput and latency to deliver great user experiences and optimal throughput while containing deployment costs. - JSON data: https://developer.nvidia.com/search-data/nv_inference_benchmark.json ## Accelerated Computing - [CUDA Platform](https://developer.nvidia.com/cuda.md): NVIDIA's parallel computing platform for building GPU-accelerated applications - [Data Science](https://developer.nvidia.com/topics/ai/data-science.md): Overview of GPU-accelerated tools for data processing, analytics, and machine learning - [CUDA Toolkit](https://developer.nvidia.com/cuda/toolkit): Develop GPU-accelerated applications with compilers, libraries, and debugging tools - [CUDA Python](https://developer.nvidia.com/cuda/python): Access CUDA runtime and driver APIs directly from Python for GPU programming - [CUDA-X Data Science / RAPIDS](https://developer.nvidia.com/topics/ai/data-science/cuda-x-data-science-libraries.md): Accelerate data science workflows with GPU-powered analytics, ML, and ETL libraries - [cuDF](https://developer.nvidia.com/topics/ai/data-science/cuda-x-data-science-libraries/cudf.md): Process DataFrames on GPUs with a pandas-compatible API for accelerated data manipulation - [cuML](https://developer.nvidia.com/topics/ai/data-science/cuda-x-data-science-libraries/cuml.md): Train machine learning models on GPUs with scikit-learn-compatible algorithms - [cuVS](https://developer.nvidia.com/cuvs.md): Perform GPU-accelerated vector search and nearest-neighbor retrieval for RAG and recommendation - [NCCL](https://developer.nvidia.com/nccl.md): Coordinate multi-GPU and multi-node collective communication with topology-aware routing - [NVSHMEM](https://developer.nvidia.com/nvshmem.md): Enable GPU-initiated one-sided communication across distributed memory for multi-GPU clusters - [Nsight Developer Tools](https://developer.nvidia.com/tools-overview.md): Overview of profiling, debugging, and optimization tools for GPU-accelerated applications - [Nsight Systems](https://developer.nvidia.com/nsight-systems.md): Profile system-wide CPU/GPU performance with timeline visualization and bottleneck analysis - [Nsight Compute](https://developer.nvidia.com/nsight-compute.md): Analyze CUDA kernel performance with detailed hardware metrics and optimization guidance - [Nsight Graphics](https://developer.nvidia.com/nsight-graphics.md): Debug and profile graphics applications across DirectX, Vulkan, and OpenGL APIs - [CUDA-GDB](https://developer.nvidia.com/cuda-gdb.md): Debug CUDA GPU kernels and host code interactively with breakpoints and variable inspection - [Compute Sanitizer](https://developer.nvidia.com/compute-sanitizer.md): Detect memory errors, race conditions, and synchronization bugs in CUDA applications ## CUDA-X Libraries - [cuBLAS](https://developer.nvidia.com/cublas.md): Accelerate dense linear algebra with GPU-optimized BLAS routines for matrix operations - [cuDNN](https://developer.nvidia.com/cudnn.md): Accelerate deep neural network training and inference with GPU-optimized primitives - [cuFFT](https://developer.nvidia.com/cufft.md): Compute Fast Fourier Transforms on GPUs for signal processing and scientific workloads - [cuSOLVER](https://developer.nvidia.com/cusolver.md): Solve dense and sparse linear systems with GPU-accelerated factorization and eigensolvers - [cuSPARSE](https://developer.nvidia.com/cusparse.md): Perform sparse matrix operations on GPUs for scientific computing and graph analytics - [cuRAND](https://developer.nvidia.com/curand.md): Generate high-quality random numbers on GPUs for Monte Carlo simulations and sampling - [cuTENSOR](https://developer.nvidia.com/cutensor.md): Accelerate tensor contractions and element-wise operations for scientific and ML workloads - [cuDSS](https://developer.nvidia.com/cudss.md): Solve large sparse linear systems with GPU-accelerated direct solver methods - [nvCOMP](https://developer.nvidia.com/nvcomp.md): Compress and decompress data on GPUs with high-throughput batched algorithms - [Thrust](https://developer.nvidia.com/thrust.md): Write portable parallel algorithms in C++ using an STL-like interface targeting CUDA GPUs - [cuPyNumeric](https://developer.nvidia.com/cupynumeric.md): Run NumPy programs on GPUs and distributed systems without code changes - [NVPL](https://developer.nvidia.com/nvpl.md): Access CPU-optimized math libraries for Arm-based NVIDIA Grace platforms - [Nvmath-python](https://developer.nvidia.com/nvmath-python.md): Call CUDA math libraries from Python with a high-level pythonic API - [cuEquivariance](https://developer.nvidia.com/cuequivariance.md): Accelerate equivariant neural networks with optimized CUDA kernels for geometric deep learning - [cuLitho](https://developer.nvidia.com/culitho.md): Accelerate computational lithography for semiconductor manufacturing with GPU compute - [Warp](https://developer.nvidia.com/warp-python.md): Write GPU-accelerated simulation and spatial computing kernels in Python - [CUPTI](https://developer.nvidia.com/cupti.md): Instrument and trace CUDA applications programmatically for custom profiling tools ## Simulation and Physical AI - [Design and Simulation](https://developer.nvidia.com/topics/design-and-simulation.md): Overview of developer resources for simulation, digital twins, and computer-aided engineering - [Computer Aided Engineering](https://developer.nvidia.com/topics/cae.md): Overview of GPU-accelerated tools for CAE simulation and computational engineering - [Omniverse](https://developer.nvidia.com/omniverse.md): Build and operate physically accurate 3D simulations and digital twins with OpenUSD and RTX - JSON data: https://developer.nvidia.com/search-data/omniverse.json - [OpenUSD](https://developer.nvidia.com/openusd): Author, compose, and simulate 3D scenes using the Universal Scene Description framework - JSON data: https://developer.nvidia.com/search-data/usd_resources.json - [ACE](https://developer.nvidia.com/ace-for-games.md): Create AI-driven digital humans with speech, animation, and conversational intelligence - [Newton Physics](https://developer.nvidia.com/newton-physics.md): Simulate rigid and soft body physics for robotics, gaming, and industrial applications - [PhysX SDK](https://developer.nvidia.com/physx-sdk.md): Integrate real-time physics simulation for rigid bodies, fluids, cloth, and destruction effects - [PhysicsNeMo](https://developer.nvidia.com/physicsnemo.md): Build and train physics-informed neural networks and neural operators for scientific simulation - [Kaolin](https://developer.nvidia.com/kaolin.md): Accelerate 3D deep learning research with differentiable rendering and mesh operations - [NanoVDB](https://developer.nvidia.com/nanovdb.md): Render sparse volumetric data on GPUs in real time with a lightweight VDB implementation - [fVDB](https://developer.nvidia.com/fvdb.md): Train deep learning models on large-scale sparse 3D volumetric data - [Warp](https://developer.nvidia.com/warp-python.md): Write GPU-accelerated simulation and spatial computing kernels in Python - [AI Models & Framework for Quantum Computing](https://developer.nvidia.com/ising.md): AI model family & training framework for quantum computing — automating calibration & accelerating error correction without ML expertise. - JSON data: https://developer.nvidia.com/search-data/quantum_computing.json - [Isaac Sim - Robotics Simulation and Synthetic Data Generation](https://developer.nvidia.com/isaac/sim.md): A reference application enabling developers to design, simulate, test, and train AI-based robots in a physically-based virtual environment. - JSON data: https://developer.nvidia.com/search-data/robotics.json ## Robotics and Edge AI - [Embedded Computing](https://developer.nvidia.com/embedded-computing.md): Overview of NVIDIA edge AI and embedded computing platforms for developers - [Vision AI](https://developer.nvidia.com/computer-vision.md): Overview of tools for building applications that analyze images and videos with AI - [Isaac](https://developer.nvidia.com/isaac.md): Develop and deploy AI-powered robots with end-to-end simulation, perception, and manipulation - JSON data: https://developer.nvidia.com/search-data/robotics.json - [Isaac ROS](https://developer.nvidia.com/isaac/ros.md): Add hardware-accelerated AI perception and navigation to ROS 2 robotics applications - [Isaac Sim](https://developer.nvidia.com/isaac/sim.md): Simulate and test robots in physically accurate 3D environments with synthetic data generation - [Isaac Lab](https://developer.nvidia.com/isaac/lab.md): Train robot policies with reinforcement learning and imitation learning in simulation - [Isaac GR00T](https://developer.nvidia.com/isaac/gr00t.md): Develop general-purpose humanoid robot foundation models for dexterous manipulation - [Jetson Platform](https://developer.nvidia.com/embedded/jetson-developer-kits.md): Build edge AI and robotics applications on compact, energy-efficient GPU modules - [Jetson Modules](https://developer.nvidia.com/embedded/jetson-modules.md): Deploy edge AI on production-ready Jetson modules for commercial and industrial products - [JetPack SDK](https://developer.nvidia.com/embedded/jetpack.md): Develop on Jetson with a complete BSP, CUDA toolkit, and AI libraries in one package - [DeepStream SDK](https://developer.nvidia.com/deepstream-sdk.md): Build GPU-accelerated video analytics pipelines for multi-stream, multi-sensor AI at the edge - [Holoscan SDK](https://developer.nvidia.com/holoscan-sdk.md): Process real-time sensor data with AI at the edge for medical devices and industrial systems - [DGX Spark](https://developer.nvidia.com/topics/ai/dgx-spark): Develop and run AI workloads locally on a desktop-class NVIDIA Grace Blackwell system - [Fleet Command](https://developer.nvidia.com/fleet-command.md): Deploy, manage, and update AI applications across distributed edge infrastructure - [IGX Orin](https://developer.nvidia.com/igx-downloads.md): Build safety-certified edge AI applications for industrial and healthcare environments ## Autonomous Vehicles - [DRIVE Platform](https://developer.nvidia.com/drive.md): Develop autonomous vehicle software with end-to-end simulation, perception, and planning tools - [DRIVE OS](https://developer.nvidia.com/drive/os.md): Run safety-certified autonomous driving workloads on NVIDIA DRIVE hardware - [DriveWorks SDK](https://developer.nvidia.com/drive/driveworks.md): Access sensor abstraction, calibration, and perception modules for autonomous driving pipelines - [DRIVE AGX](https://developer.nvidia.com/drive/agx.md): Prototype autonomous vehicle applications on production-grade AI compute hardware - [DRIVE Sim](https://developer.nvidia.com/drive/simulation.md): Test and validate autonomous driving software in physically accurate virtual environments - [DRIVE Infrastructure](https://developer.nvidia.com/drive/infrastructure.md): Manage data pipelines and fleet operations for autonomous vehicle development at scale ## Graphics and Rendering - [Ray Tracing](https://developer.nvidia.com/rtx/ray-tracing.md): Overview of NVIDIA ray tracing technologies, SDKs, and integration guides - [Game Engines](https://developer.nvidia.com/game-engines.md): Integrate NVIDIA technologies into Unity, Unreal Engine, and other game engines - [RTX Kit](https://developer.nvidia.com/rtx-kit.md): Integrate neural rendering and ray tracing technologies for photorealistic real-time graphics - [DLSS](https://developer.nvidia.com/rtx/dlss.md): Boost frame rates and image quality with AI-powered super resolution and ray reconstruction - [OptiX](https://developer.nvidia.com/rtx/ray-tracing/optix.md): Build GPU-accelerated ray tracing applications for rendering and scientific visualization - [Reflex](https://developer.nvidia.com/performance-rendering-tools/reflex.md): Reduce system latency in competitive games with GPU-to-display pipeline optimization - [Streamline](https://developer.nvidia.com/rtx/streamline.md): Integrate super resolution and latency reduction technologies via a single cross-vendor plugin - [Vulkan](https://developer.nvidia.com/vulkan.md): Develop high-performance graphics and compute applications with the Vulkan GPU API - [Extended Reality (XR)](https://developer.nvidia.com/xr.md): Build immersive AR, VR, and mixed reality experiences with NVIDIA XR technologies - [AI Apps for RTX PCs](https://developer.nvidia.com/ai-apps-for-rtx-pcs.md): Develop and deploy AI applications that run locally on NVIDIA RTX Windows hardware - [CloudXR SDK](https://developer.nvidia.com/cloudxr-sdk.md): Stream high-fidelity XR experiences from GPU-powered servers to lightweight client devices - [VRWorks](https://developer.nvidia.com/vrworks.md): Build high-performance VR applications with GPU-accelerated rendering and display APIs - [PhysX SDK](https://developer.nvidia.com/physx-sdk.md): Integrate real-time physics simulation for rigid bodies, fluids, cloth, and destruction effects - [Video Codec SDK](https://developer.nvidia.com/video-codec-sdk.md): Encode, decode, and transcode H.264, H.265, and AV1 video using GPU hardware acceleration ## Video and Image Processing - [Video and Audio Solutions](https://developer.nvidia.com/video-and-audio-solutions.md): Overview of NVIDIA video, audio, and broadcast processing technologies - [Image Processing](https://developer.nvidia.com/image-processing.md): Overview of GPU-accelerated image processing and analysis tools - [Metropolis](https://developer.nvidia.com/metropolis.md): Build and deploy intelligent video analytics and smart space applications at scale - [DeepStream SDK](https://developer.nvidia.com/deepstream-sdk.md): Build GPU-accelerated video analytics pipelines for multi-stream, multi-sensor AI at the edge - [CV-CUDA](https://developer.nvidia.com/cv-cuda.md): Accelerate computer vision pre- and post-processing pipelines on GPUs for AI inference - [RTX Video SDK](https://developer.nvidia.com/rtx-video-sdk.md): Integrate AI-enhanced video upscaling, HDR, and processing into applications - [nvImageCodec](https://developer.nvidia.com/nvimagecodec.md): Decode and encode images on GPUs with support for JPEG, JPEG2000, and other formats - [nvJPEG](https://developer.nvidia.com/nvjpeg.md): Decode and encode JPEG images on GPUs for high-throughput batch image processing - [nvTIFF](https://developer.nvidia.com/nvtiff.md): Decode and encode TIFF images on GPUs for scientific imaging and geospatial workloads - [NPP](https://developer.nvidia.com/npp.md): Process images and signals with GPU-accelerated filtering, transforms, and color conversion - [Optical Flow SDK](https://developer.nvidia.com/optical-flow-sdk.md): Estimate dense optical flow and motion vectors using dedicated GPU hardware engines ## Networking - [Networking](https://developer.nvidia.com/networking.md): Overview of NVIDIA networking platforms for InfiniBand, Ethernet, and DPU development - [DOCA](https://developer.nvidia.com/networking/doca.md): Develop data center services on NVIDIA BlueField DPUs for networking, storage, and security - [InfiniBand](https://developer.nvidia.com/networking/infiniband-software.md): Build high-bandwidth, low-latency cluster interconnects for AI and HPC workloads - [HPC-X](https://developer.nvidia.com/networking/hpc-x.md): Deploy optimized MPI and SHMEM communication libraries for InfiniBand and Ethernet clusters - [Ethernet Switch SDK](https://developer.nvidia.com/networking/ethernet-switch-sdk.md): Program NVIDIA Spectrum switches with routing, ACL, and telemetry APIs - [Rivermax](https://developer.nvidia.com/networking/rivermax.md): Stream media and sensor data over IP with hardware-accelerated SMPTE 2110 support - [Magnum IO](https://developer.nvidia.com/magnum-io.md): Optimize I/O and data movement across GPUs, networks, and storage in multi-node systems - [GPUDirect Storage](https://developer.nvidia.com/gpudirect-storage.md): Transfer data directly between storage and GPU memory bypassing the CPU for faster I/O - [Aerial](https://developer.nvidia.com/industries/telecommunications/ai-aerial): Build software-defined 5G and 6G RAN infrastructure on GPU-accelerated platforms - JSON data: https://developer.nvidia.com/search-data/telecommunications.json - [Sionna](https://developer.nvidia.com/sionna.md): Simulate and research 6G link-level wireless communication systems on GPUs ## Cloud and Infrastructure - [Cloud-Native Technologies](https://developer.nvidia.com/cloud-native.md): Deploy and manage GPU-accelerated applications in cloud and containerized environments - [DGX Cloud](https://developer.nvidia.com/dgx-cloud.md): Develop and train AI models on a fully managed multi-node GPU cloud platform - [DGX Cloud Serverless / NVCF](https://developer.nvidia.com/dgx-cloud/nvcf): Deploy AI models as serverless endpoints with auto-scaling GPU inference - [DGX Cloud Benchmarking](https://developer.nvidia.com/dgx-cloud/benchmarking.md): Benchmark AI training and inference performance with standardized templates and dashboards - [Morpheus Cybersecurity](https://developer.nvidia.com/morpheus-cybersecurity.md): Build GPU-accelerated cybersecurity analytics pipelines for real-time threat detection - [FLARE Federated Learning](https://developer.nvidia.com/flare.md): Train AI models across distributed datasets without centralizing sensitive data - [DCGM](https://developer.nvidia.com/dcgm.md): Monitor GPU health, diagnostics, and utilization across data center clusters - [NVML](https://developer.nvidia.com/management-library-nvml.md): Query and control GPU state programmatically for monitoring and management tools - [Grace CPU](https://developer.nvidia.com/grace-cpu.md): Develop for NVIDIA's Arm-based data center CPU optimized for AI and HPC workloads ## Healthcare and Life Sciences - [Isaac for Healthcare](https://developer.nvidia.com/isaac/healthcare.md): Build AI-powered surgical, diagnostic, and medical automation robotics systems - [Clara Guardian](https://developer.nvidia.com/clara-guardian.md): Deploy multimodal AI smart sensors for patient monitoring in healthcare facilities - [Holoscan SDK](https://developer.nvidia.com/holoscan-sdk.md): Process real-time sensor data with AI at the edge for medical devices and industrial systems - [Healthcare and Life Sciences - Developer Resources](https://developer.nvidia.com/industries/healthcare.md): Explore a suite of computing platforms, software, and services that powers AI solutions for healthcare and life sciences, from imaging to genomics and drug discovery. - JSON data: https://developer.nvidia.com/search-data/healthcare.json ## Quantum Computing - [CUDA-Q](https://developer.nvidia.com/cuda-q.md): Program hybrid quantum-classical algorithms and simulate quantum circuits on GPUs - JSON data: https://developer.nvidia.com/search-data/quantum_computing.json - [CUDA-QX](https://developer.nvidia.com/cuda-qx.md): Extend CUDA-Q with optimized libraries for quantum chemistry and error correction - [cuQuantum](https://developer.nvidia.com/cuquantum-sdk.md): Simulate quantum circuits at scale using GPU-accelerated statevector and tensor network methods - [cuPQC](https://developer.nvidia.com/cupqc.md): Implement GPU-accelerated post-quantum cryptography algorithms for security research ## High-Performance Computing - [HPC](https://developer.nvidia.com/hpc.md): Overview of NVIDIA high-performance computing tools, compilers, and libraries - [HPC SDK](https://developer.nvidia.com/hpc-sdk.md): Build GPU-accelerated HPC applications with compilers, math libraries, and communication tools ## Developer Industry Solutions - [AECO](https://developer.nvidia.com/industries/aeco.md): Developer resources for architecture, engineering, construction, and operations - [Consumer Internet](https://developer.nvidia.com/industries/consumer-internet.md): Developer resources for recommendation systems, search, and consumer AI applications - [Energy](https://developer.nvidia.com/industries/energy.md): GPU-accelerated solutions for seismic processing, grid management, and energy analytics - [Financial Services](https://developer.nvidia.com/industries/financial-services.md): Developer tools for trading, risk modeling, fraud detection, and financial AI - [Game Development](https://developer.nvidia.com/industries/game-development.md): SDKs, engines, and tools for building GPU-accelerated games and interactive experiences - [Healthcare](https://developer.nvidia.com/industries/healthcare.md): Developer resources for medical imaging, genomics, clinical AI, and healthcare analytics - [Higher Education](https://developer.nvidia.com/higher-education-and-research.md): Academic programs, research tools, and curriculum for AI and accelerated computing - [Media and Entertainment](https://developer.nvidia.com/industries/media-and-entertainment.md): Tools for content creation, real-time rendering, broadcast, and visual effects - [Public Sector](https://developer.nvidia.com/industries/public-sector.md): Developer resources for government, defense, and public safety AI applications - [Restaurants and QSR](https://developer.nvidia.com/industries/restaurants.md): Developer resources for AI-powered restaurant and quick-service operations - [Retail and CPG](https://developer.nvidia.com/industries/retail-consumer-packaged-goods-cpg.md): AI solutions for store analytics, demand forecasting, and customer intelligence - [Telecommunications](https://developer.nvidia.com/industries/telecommunications.md): Developer platforms for 5G/6G RAN, edge AI, and network automation - JSON data: https://developer.nvidia.com/search-data/telecommunications.json ## Resources - [Technical Blog](https://developer.nvidia.com/blog): Technical articles, tutorials, and announcements for NVIDIA developers - [Training / DLI](https://www.nvidia.com/en-us/training/): Self-paced and instructor-led courses on AI, accelerated computing, and data science - [Developer Program](https://developer.nvidia.com/developer-program.md): Access SDKs, early releases, and community resources with a free developer account - [Developer Forums](https://forums.developer.nvidia.com/): Ask questions, share projects, and get technical support from the NVIDIA developer community - [Developer Discord](https://discord.gg/nvidiadeveloper): Join the NVIDIA developer community for real-time discussion and technical support - [NVIDIA On-Demand](https://www.nvidia.com/en-us/on-demand/): Watch recorded sessions from GTC and other NVIDIA technical events - [For Startups / Inception](https://www.nvidia.com/en-us/startups/): Get technical resources, co-marketing support, and hardware credits for AI startups ## Other - [Developer Champion](https://developer.nvidia.com/developer-champions-directory.md): Developer resource with downloadable JSON result data - JSON data: https://developer.nvidia.com/search-data/developer_champion_en.json
Добавлен 19.07.2026