Filter
Exclude
Time range
-
Near
9. Building Video AI Applications Learn to use DeepStream for annotating video streams. 🔗 learn.nvidia.com/courses/cou…
1
8
357
8 free NVIDIA courses worth more than most paid certifications No payment. No waitlist. No excuse. Here are the 8 worth your time: 1. Generative AI Explained How it works, where it applies, and what the real limits are. The foundation before everything else. lnkd.in/gBb3peXi 2. AI for All: From Basics to GenAI Practice The full arc from machine learning to generative AI. Real applications across healthcare and autonomous vehicles. lnkd.in/gXmmnC4G 3. Getting Started with AI on Jetson Nano You collect real image data, annotate it, train a neural network, create your own model. Hands-on from the first session. lnkd.in/gnmrhBJm 4. Building a Brain in 10 Minutes How neural networks actually learn. The math behind a single neuron. Shorter than most meetings and more useful than most of them. lnkd.in/gCaA-XKp 5. Building Video AI Applications on Jetson Nano DeepStream pipelines. Multiple video streams. YOLO inference. For practitioners building production-grade video AI systems. lnkd.in/gNffgw5C 6. Building RAG Agents with LLMs Scalable deployment. Microservices. LangChain for dialog management. RAG is the architecture that makes AI reliable at scale. The most important course on this list for enterprise AI work. lnkd.in/gcK2ZJ4a 7. Accelerate Data Science Workflows with Zero Code Changes GPU-accelerated data processing and machine learning. Faster output. Same codebase. No rewrites. lnkd.in/gF7eVk2V 8. Introduction to AI in the Data Center GPU architecture. Deep learning frameworks. Multi-system cluster planning. If you build or advise on enterprise AI infrastructure, this is not optional. lnkd.in/gKTS6uMS Here is what separates this list from every other free AI resource. Most free AI training teaches you how to use the tools sitting on top. This teaches you what sits underneath them. Every AI model you use runs on NVIDIA hardware. ChatGPT. Claude. Gemini. All of it. The professionals who understand both layers are not interchangeable. They are the ones organizations call when the demo works but the system doesn't. They are the ones who know why it's failing before anyone else does. That knowledge does not come from prompting faster. It comes from understanding the infrastructure the prompts run on. That's what NVIDIA is giving away for free. Use it. 💾 Save this list before you need it. ♻️ Repost to give someone in your network a real technical edge in AI.
2
74
NVIDIA/skills Official NVIDIA-verified agent skills that enhance AI coding assistants with trusted guidance for CUDA-X, NeMo, DeepStream, distributed training, and GPU-accelerated development workflows. ⭐ Stars: ~1.8k 🧾 License: Apache-2.0 & CC BY 4.0 🔔 Discover Open Source.
1
10
Replying to @jarzoombek
Najpierw niech te setki tysięcy agentów nauczą się odpowiadać na pytania o błędy w CUDA, TensorRT i DeepStream lepiej niż forum z 2021 roku. Dopiero potem pogadamy o internecie 100 miliardów agentów.
1
268
*2026 starter pack for building an edge AI product: Trained model ✓ Jetson dev kit ✓ DeepStream installed ✓ First camera stream working ✓ Now add 7 more cameras. Need someone who understands GStreamer plugin architecture. Need someone who knows GPU memory management. Need someone who has debugged NvBufSurface memory leaks at 2am. Need someone who can explain batched-push-timeout to a non-technical PM without crying. ₹50-70 LPA. 3-month onboarding. Already has 4 other offers. Everything in the edge AI stack democratized except the perception pipeline layer. The model? Solved. The hardware? Solved. The pipeline between them? Still 2015. PipeGen by @craftifai .
2
22
GStreamer DeepStream perception pipeline tip: If your pipeline freezes intermittently with 5 RTSP sources, check your batched-push-timeout in streammux config. Default is often too low for high-stream counts. The muxer gives up waiting for slow sources and ships partial batches. (1/3)
1
10
8 free NVIDIA courses worth more than most paid certifications No payment. No waitlist. No excuse. Here are the 8 worth your time: 1. Generative AI Explained How it works, where it applies, and what the real limits are. The foundation before everything else. lnkd.in/gBb3peXi 2. AI for All: From Basics to GenAI Practice The full arc from machine learning to generative AI. Real applications across healthcare and autonomous vehicles. lnkd.in/gXmmnC4G 3. Getting Started with AI on Jetson Nano You collect real image data, annotate it, train a neural network, create your own model. Hands-on from the first session. lnkd.in/gnmrhBJm 4. Building a Brain in 10 Minutes How neural networks actually learn. The math behind a single neuron. Shorter than most meetings and more useful than most of them. lnkd.in/gCaA-XKp 5. Building Video AI Applications on Jetson Nano DeepStream pipelines. Multiple video streams. YOLO inference. For practitioners building production-grade video AI systems. lnkd.in/gNffgw5C 6. Building RAG Agents with LLMs Scalable deployment. Microservices. LangChain for dialog management. RAG is the architecture that makes AI reliable at scale. The most important course on this list for enterprise AI work. lnkd.in/gcK2ZJ4a 7. Accelerate Data Science Workflows with Zero Code Changes GPU-accelerated data processing and machine learning. Faster output. Same codebase. No rewrites. lnkd.in/gF7eVk2V 8. Introduction to AI in the Data Center GPU architecture. Deep learning frameworks. Multi-system cluster planning. If you build or advise on enterprise AI infrastructure, this is not optional. lnkd.in/gKTS6uMS Here is what separates this list from every other free AI resource. Most free AI training teaches you how to use the tools sitting on top. This teaches you what sits underneath them. Every AI model you use runs on NVIDIA hardware. ChatGPT. Claude. Gemini. All of it. The professionals who understand both layers are not interchangeable. They are the ones organizations call when the demo works but the system doesn't. They are the ones who know why it's failing before anyone else does. That knowledge does not come from prompting faster. It comes from understanding the infrastructure the prompts run on. That's what NVIDIA is giving away for free. Use it. 💾 Save this list before you need it. ♻️ Repost to give someone in your network a real technical edge in AI.
1
187
Using AI agents just for normal coding is using them to their full extend. The real money is chaining them into complex workflows, but the bottleneck is always trust. If you run random instructions from the internet, you expose your system to trigger abuse and mismatched behaviors. NVIDIA bypassed this completely. NVIDIA has an under-the-radar GitHub repo that acts as a trusted skill layer. It is a catalog of official, verified AI agent skills. Instead of rolling the dice on third-party junk, you plug production-ready NVIDIA expertise directly into your agents. RAG, DeepStream video analytics, Omniverse and Physical AI workflows, ASR, TTS you name it. This repo will teach your coding agent how to use NVIDIA tools efficiently. You can install the entire catalog or just the specific skill you need to execute a highly specialized task without the security risks. They already built the infrastructure for you. Stop playing small and start delegating the real work. github.com/NVIDIA/skills
3
1
4
418
🚀Your First Physical AI Agent Dev Kit The reComputer J401 Dev Kit with @NVIDIARobotics #Jetson Orin Super gives you the hardware open-source tutorials to start building on the edge. 🟢 For Learning: J401 Nano Bundle (#OrinNano 8GB, 67 TOPS): seeedstudio.com/reComputer-J… 🧠For Performance: Super J401 NX Bundle (#OrinNX 16GB, 157 TOPS): seeedstudio.com/reComputer-S… 📘Includes step-by-step guides on #Linux, #YOLO, #DeepStream, Local #LLMs/#VLMs, and more: github.com/Seeed-Projects/re…
1
3
19
1,520
Jun 2
375edge turns highways and street corners into structured data. NVIDIA Jetson DeepStream run computer vision on-device, distilling terabytes of raw video into megabytes of insight daily. No round trip to the cloud or personally identifiable information. Just the physical world, made machine-readable in real time.
3
12
70
3,752
Real-time quality control in manufacturing depends on more than just AI models. It’s about how the pipeline performs under real conditions: Camera → DeepStream → Analysis → Decision Results: ⚡ Stable FPS under load ⚡ Millisecond-level decisions ⚡ Consistent inspection in production This is where edge AI delivers real value. Need help to deploy AI systems in your manufacturing systems? Contact us: ridgerun.com/contact #EdgeAI #ComputerVision #RidgeRun
4
38
5. Building Video AI Applications at the Edge on Jetson Nano • Build DeepStream pipelines for real-time video analytics. • Run multiple video streams simultaneously. • Use models like YOLO for object detection. Course: bit.ly/49lr0Uo

1
12
449
What if you could go from concept to a vision AI app without writing every line of code? ⚡ NVIDIA DeepStream, combined with powerful coding agents like Claude Code and reusable Skills, can generate complete vision AI pipelines from simple natural language prompts, reducing development cycles from weeks to hours. Read ➡️ nvda.ws/3ROZgBh
2
9
34
1,077
9. Building Video AI Applications Learn to use DeepStream for annotating video streams. 🔗 learn.nvidia.com/courses/cou…
1
4
234
英伟达这波真狠,直接免费甩出9门AI在线课,白嫖党的春天来了! 你要是还觉得AI是未来、自己跟不上?焦虑感先拉满,赶紧看这9门课,错过就是亏大了🔥👇 1️⃣ 'AI入门':教你用Jetson Nano搭模型,零基础也能上车,别再说不会了🔗 learn.nvidia.com/courses/cou… 2️⃣ '加速数据科学工作流':RAPIDS直接让你的CPU工作流起飞,数据处理快到离谱🔗 learn.nvidia.com/courses/cou… 3️⃣ '生成式AI讲解':从概念到应用,挑战和机遇一把抓,别被忽悠了🔗 learn.nvidia.com/courses/cou… 4️⃣ '十分钟构建大脑':早期神经网络咋受大脑启发?看完你就懂🔗 learn.nvidia.com/courses/cou… 5️⃣ '用RAG增强你的大语言模型':检索增强生成,让AI更会聊天干活🔗 learn.nvidia.com/courses/cou… 6️⃣ '用LLM构建RAG代理':部署实用代理系统,别再纸上谈兵了🔗 learn.nvidia.com/courses/cou… 7️⃣ '掌握推荐系统':英伟达Kaggle大师教你赢竞赛策略,卷死同行🔗 classcentral.com/course/yout… 8️⃣ '大规模图像分类':高级技术解锁,模型精度直接拉满🔗 classcentral.com/course/yout… 9️⃣ '构建视频AI应用':用DeepStream搞视频流标注,未来风口在这🔗 learn.nvidia.com/courses/cou… 别光收藏不动,赶紧学起来,不然等别人都起飞了你还在原地,焦虑不焦虑?
40
14
35
23,046
9. Building Video AI Applications Learn how to use DeepStream to build and annotate video AI applications. 🔗 learn.nvidia.com/courses/cou…
1
2
2
175
9. Building Video AI Applications Learn to use DeepStream for annotating video streams. 🔗 learn.nvidia.com/courses/cou…
2
5
380
What if you could go from concept to a vision AI app without writing every line of code? ⚡ NVIDIA DeepStream, combined with powerful coding agents like Claude Code and reusable Skills, can generate complete vision AI pipelines from simple natural language prompts, reducing development cycles from weeks to hours. Read ➡️ nvda.ws/4euBLab
7
23
135
11,924
9. Building Video AI Applications Learn how to use DeepStream to build and annotate video AI applications. 🔗 learn.nvidia.com/courses/cou…
1
6
331
Just dropped a mega handy read for vision AI builders: NVIDIA DeepStream Coding Agents slice through real-time pipeline headaches with smart coding agents like Claude Code or Cursor. Shorter development cycles, deployable optimized code, and fewer coffee… ift.tt/EgNSpJb
2
45