NVIDIA Developer
230 lines. NVIDIA Developer came to play.
NVIDIA Developer empowers creators with cutting-edge tools for generative AI, enabling the development of innovative solutions across text, image, audio, and video. Their comprehensive suite, including NeMo customizers and evaluators, ensures developers can fine-tune and assess LLMs for maximum impact.
Not sure yours is this good? Check it →
NVIDIA Developer's llms.txt Insights
Overachiever
24 sections. Most sites can barely manage 3. This one went all in.
War and Peace vibes
230 lines. They really wanted AI to understand them.
What's inside NVIDIA Developer's llms.txt
NVIDIA Developer's llms.txt contains 11 sections:
- NVIDIA Developer
- Generative AI
- Inference Optimization
- Data Science
- Healthcare
- Quantum Computing
- CUDA
- CUDA-X Libraries
- Multi-GPU and Multi-Node Communication
- Networking
- Game Development and Graphics SDKs
How does NVIDIA Developer's llms.txt compare?
| NVIDIA Developer | Directory Avg | Top Performer | |
|---|---|---|---|
| Lines | 230 | 1029 | 163,447 |
| Sections | 24 | 17 | 3207 |
Cool table. Now the real question — where do you land? Find out →
NVIDIA Developer's llms.txt preview
First 100 of 230 lines
# NVIDIA Developer
Comprehensive developer portal for NVIDIA’s accelerated computing and AI tools.
## Generative AI
Create scalable generative AI solutions using neural networks to learn patterns from existing data and generate new, original text, image, audio, and video content.
- [NeMo Customizer](https://developer.nvidia.com/nemo-customizer.md): Fine-tune LLMs using supervised techniques
- [NeMo Evaluator](https://developer.nvidia.com/nemo-evaluator.md): Comprehensive evaluation capabilities for LLMs
- [NeMo Guardrails](https://developer.nvidia.com/nemo-guardrails.md): Safety checks and content moderation
- [NeMo Agent Toolkit](https://developer.nvidia.com/nemo-agent-toolkit.md): Build AI-powered conversational agents and agentic applications with NeMo
- [NeMo Retriever](https://developer.nvidia.com/nemo-retriever.md): Multimodal retrieval-augmented generation microservices
- [NIM](https://developer.nvidia.com/nim.md): Inference microservices for foundation models
## Inference Optimization
Deploy high-performance AI inference workloads.
- [TensorRT](https://developer.nvidia.com/tensorrt.md): Ecosystem of APIs, compilers, and runtimes for high-performance deep learning inference
- [Dynamo](https://developer.nvidia.com/dynamo.md): Unified framework for high-performance LLM inference with KV-aware routing and SLA-based auto-scaling
## Data Science
Analyze large-scale data with GPU-accelerated libraries for machine learning and analytics.
- [CUDA-X Data Science](https://developer.nvidia.com/topics/ai/data-science/cuda-x-data-science-libraries.md): High-performance GPU-accelerated suite for modern data science workflows
- [cuDF](https://developer.nvidia.com/topics/ai/data-science/cuda-x-data-science-libraries/cudf.md): GPU DataFrame library accelerating pandas workflows
- [cuML](https://developer.nvidia.com/topics/ai/data-science/cuda-x-data-science-libraries/cuml.md): GPU-accelerated machine learning algorithms compatible with scikit-learn
- [NeMo Curator](https://developer.nvidia.com/nemo-curator.md): High-speed, scalable data curation and preparation for AI training
- [Morpheus](https://developer.nvidia.com/morpheus-cybersecurity.md): End-to-end AI pipeline for cybersecurity analytics and processing
- [cuVS](https://developer.nvidia.com/cuvs.md): GPU-accelerated vector search and clustering to supercharge search and RAG
## Healthcare
Accelerate drug discovery, medical imaging, and clinical AI development with NVIDIA healthcare platforms.
- [BioNeMo](https://www.nvidia.com/en-us/clara/biopharma/): Generative AI platform and SDK for chemistry, biology, and drug discovery
- [Clara Guardian](https://developer.nvidia.com/clara-guardian.md): Application framework for building and deploying smart sensors and multimodal AI in healthcare facilities
- [Isaac for Healthcare](https://developer.nvidia.com/isaac/healthcare.md): Robotics development platform for building AI-powered surgical, diagnostic, and medical automation systems
-[HoloScan](https://developer.nvidia.com/holoscan-sdk.md): Accelerate AI-powered medical and sensor device development with real-time edge data processing
## Quantum Computing
Simulate quantum circuits and develop hybrid quantum-classical solutions on NVIDIA GPUs.
- [cuQuantum](https://developer.nvidia.com/cuquantum-sdk.md): Libraries and tools for quantum circuit and device-level simulation
- [CUDA-Q](https://developer.nvidia.com/cuda-q.md): Open-source quantum development platform for hybrid systems
- [CUDA-QX](https://developer.nvidia.com/cuda-qx.md): Extension for advanced quantum simulations
- [cuPQC](https://developer.nvidia.com/cupqc.md): Toolkit for pre-quantum computing R&D
## CUDA
Develop GPU-accelerated applications.
- [CUDA Toolkit](https://developer.nvidia.com/cuda-toolkit.md): Complete development environment for building GPU-accelerated applications
## CUDA-X Libraries
Accelerate core computing and domain-specific workloads with NVIDIA-optimized CUDA-X software libraries.
- [cuBLAS](https://developer.nvidia.com/cublas.md): Basic Linear Algebra Subprograms
- [cuDNN](https://developer.nvidia.com/cudnn.md): Deep neural network library
- [cuFFT](https://developer.nvidia.com/cufft.md): Fast Fourier Transform library
- [cuPyNumeric](https://developer.nvidia.com/cupynumeric.md): NumPy replacement
- [NVPL](https://developer.nvidia.com/nvpl.md): NVIDIA Performance Libraries
- [Thrust](https://developer.nvidia.com/thrust.md): A parallel algorithms library for C++ that resembles the C++ Standard Template Library (STL).
- [CUB](https://docs.nvidia.com/cuda/cub/index.html): A reusable software components library for building high-performance CUDA kernels.
- [cuSOLVER](https://developer.nvidia.com/cusolver.md): A GPU-accelerated library for dense and sparse direct solvers.
- [cuSPARSE](https://developer.nvidia.com/cusparse.md): A GPU-accelerated library for basic linear algebra subroutines with sparse matrices.
- [cuTENSOR](https://developer.nvidia.com/cutensor.md): A GPU-accelerated tensor linear algebra library.
- [cuDSS](https://developer.nvidia.com/cudss.md): GPU-accelerated Direct Sparse Solver library for solving linear systems with very sparse matrices.
- [cuRAND](https://developer.nvidia.com/curand.md): Delivers high performance GPU-accelerated random number generation (RNG).
- [Nvmath-python](https://developer.nvidia.com/nvmath-python.md): An open source library that gives Python applications high-performance pythonic access to the core mathematical operations implemented in the CUDA-X Math Libraries.
- [cuEquivariance](https://developer.nvidia.com/cuequivariance.md): Provides optimized NVIDIA CUDA kernels and comprehensive APIs, including those for triangle attention and triangle multiplication, to accelerate geometry-aware neural networks.
- [cuLitho](https://developer.nvidia.com/culitho.md): A library for accelerating computational lithography and the manufacturing process of semiconductors.
- [Warp](https://developer.nvidia.com/warp-python.md): Open-source kernel-based spatial computing library for Python, enabling GPU-accelerated simulation, differentiable programming, and advanced data generation for ML, robotics, and Omniverse digital twins
## Multi-GPU and Multi-Node Communication
Build scalable, high-performance applications that coordinate data exchange and computation across multiple GPUs and systems with NVIDIA’s communication libraries.
- [NCCL](https://developer.nvidia.com/nccl.md): Implement fast, topology-aware collective and point-to-point communication for multi-GPU and multinode systems
- [NVSHMEM](https://developer.nvidia.com/nvshmem.md): Enable scalable, efficient one-sided and GPU-initiated communication with a partitioned global address space for multi-GPU clusters
- [GPUDirect Storage](https://developer.nvidia.com/gpudirect-storage.md): Direct GPU-storage path
- [Magnum IO](https://developer.nvidia.com/magnum-io.md): Unify networking, storage, and compute IO management for large multi-GPU, multi-node data centers at scale
- [Legate](https://docs.nvidia.com/legate/latest/index.html): Distributed programming framework
## Networking
Build advanced, high-performance data center networks and communication frameworks with NVIDIA’s accelerated networking platforms, SDKs, and communication libraries.
- [NVIDIA Networking Platforms](https://developer.nvidia.com/networking.md): Solutions for InfiniBand and Ethernet connectivity, smart DPUs, and networking hardware integration for AI, HPC, and data analytics at massive scale.
- [DOCA Software Framework](https://developer.nvidia.com/networking/doca.md): SDK and runtime for developing software-defined, secure, GPU- and DPU-accelerated networking, storage, and security services across data centers.
- [NVIDIA Aerial](https://developer.nvidia.com/aerial.md): Platform and tools to build accelerated, software-defined 5G/6G radio access networks and wireless AI systems leveraging GPUs and DPUs.
- [HPC-X](https://developer.nvidia.com/networking/hpc-x.md): Complete communication stack with MPI, SHMEM, PGAS libraries, and performance-boosting collectives for InfiniBand- and Ethernet-enabled HPC clusters.
- [Magnum IO](https://developer.nvidia.com/magnum-io.md): Developer SDK for optimizing I/O and communication for AI, HPC, data science, and visualization—supporting storage, network, and GPU data movement at scale.
- [Rivermax](https://developer.nvidia.com/networking/rivermax.md): Optimized IP-based SDK for high-throughput, low-latency media and data streaming, SMPTE 2110 compliance, and direct NIC-to-GPU transfer for video and sensor applications.
- [InfiniBand](https://developer.nvidia.com/networking/infiniband-software.md): High-speed interconnect
- [Ethernet Switch SDK](https://developer.nvidia.com/networking/ethernet-switch-sdk.md): Develop high-performance, programmable Ethernet switches with advanced routing, switching, and abstraction APIs
## Game Development and Graphics SDKs
Render photorealistic visuals and accelerate ray-traced graphics with NVIDIA’s industry-leading real-time ray tracing toolkits.
- [CloudXR SDK](https://developer.nvidia.com/cloudxr-sdk.md): XR streaming platform
- [RTX Kit](https://developer.nvidia.com/rtx-kit.md): Suite of neural rendering and ray tracing technologies for real-time, photorealistic graphics and advanced game development
- [DLSS](https://developer.nvidia.com/rtx/dlss.md): Deep Learning Super Sampling to boost frame rates and image quality using AI-powered upscaling
- [OptiX](https://developer.nvidia.com/rtx/ray-tracing/optix.md): GPU-accelerated ray tracing engine and programming framework for rendering and visualization
- [ACE](https://developer.nvidia.com/ace-for-games.md): Avatar Cloud Engine for building AI-powered, conversational digital characters in games
- [NVIDIA VRWorks™ Graphics](https://developer.nvidia.com/vrworks.md): Graphics APIs and tools for building industry-leading virtual reality experiencesWhat is llms.txt?
llms.txt is an open standard that helps AI language models understand your website. By placing a structured markdown file at /llms.txt, websites provide AI search engines like ChatGPT, Claude, and Perplexity with a clear map of their content, services, and documentation. Companies like NVIDIA Developer use it to ensure AI accurately represents their brand when answering user queries. Read the spec.
NVIDIA Developer showed up. Where's yours?
1000+ companies didn't overthink it. 60 seconds. Go.
Check your site →