• صحاف زين! واش راكم؟

    حبينا اليوم نهضروا على حاجة جديدة في عالم e-commerce. شركة Amazon قررت توقف إعادة توزيع الفانات بعد الضجة الكبيرة من أصحاب شركات التسليم، لي كانوا يعانوا من فواتير الصيانة المفاجئة. يعني، الوضع كان صعيب بزاف!

    شخصيا، نحب نرتاح لما نستعمل خدمات التوصيل، لكن لما تكون التكاليف تفاجأ الناس، هذي حاجة ماشي معقولة. كل واحد عنده مصاريفه، وأي حاجة تزيد عليهم تزيد من الضغط.

    فاكرين أنه الأوقات هاذي تتطلب شوية تفكير في كيفية تحسين الأمور؟

    https://www.wsj.com/tech/amazon-pauses-delivery-fleet-redeployments-after-outcry-over-repair-costs-ffa1a791?mod=rss_Technology

    #أمازون #توصيل #صيانة #Ecommerce #Algérie
    📦 صحاف زين! واش راكم؟ حبينا اليوم نهضروا على حاجة جديدة في عالم e-commerce. شركة Amazon قررت توقف إعادة توزيع الفانات بعد الضجة الكبيرة من أصحاب شركات التسليم، لي كانوا يعانوا من فواتير الصيانة المفاجئة. يعني، الوضع كان صعيب بزاف! شخصيا، نحب نرتاح لما نستعمل خدمات التوصيل، لكن لما تكون التكاليف تفاجأ الناس، هذي حاجة ماشي معقولة. كل واحد عنده مصاريفه، وأي حاجة تزيد عليهم تزيد من الضغط. فاكرين أنه الأوقات هاذي تتطلب شوية تفكير في كيفية تحسين الأمور؟ https://www.wsj.com/tech/amazon-pauses-delivery-fleet-redeployments-after-outcry-over-repair-costs-ffa1a791?mod=rss_Technology #أمازون #توصيل #صيانة #Ecommerce #Algérie
    www.wsj.com
    The e-commerce giant said it would suspend reassignment of vans after delivery-company owners complained about surprise repair bills.
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  • NVIDIA Jetson Thor Unlocks Real-Time Reasoning for General Robotics and Physical AI

    Robots around the world are about to get a lot smarter as physical AI developers plug in NVIDIA Jetson Thor modules — new robotics computers that can serve as the brains for robotic systems across research and industry.
    Robots demand rich sensor data and low-latency AI processing. Running real-time robotic applications requires significant AI compute and memory to handle concurrent data streams from multiple sensors. Jetson Thor, now in general availability, delivers 7.5x more AI compute, 3.1x more CPU performance and 2x more memory than its predecessor, the NVIDIA Jetson Orin, to make this possible on device.
    This performance leap will enable roboticists to process high-speed sensor data and perform visual reasoning at the edge — workflows that were previously too slow to run in dynamic real-world environments. This opens new possibilities for multimodal AI applications such as humanoid robotics.

    Agility Robotics, a leader in humanoid robotics, has integrated NVIDIA Jetson into the fifth generation of its robot, Digit — and plans to adopt Jetson Thor as the onboard compute platform for the sixth generation of Digit. This transition will enhance Digit’s real-time perception and decision-making capabilities, supporting increasingly complex AI skills and behaviors. Digit is commercially deployed and performs logistics tasks such as stacking, loading and palletizing in warehouse and manufacturing environments.
    “The powerful edge processing offered by Jetson Thor will take Digit to the next level — enhancing its real-time responsiveness and expanding its abilities to a broader, more complex set of skills,” said Peggy Johnson, CEO of Agility Robotics. “With Jetson Thor, we can deliver the latest physical AI advancements to optimize operations across our customers’ warehouses and factories.”
    Boston Dynamics — which has been building some of the industry’s most advanced robots for over 30 years — is integrating Jetson Thor into its humanoid robot Atlas, enabling Atlas to harness formerly server-level compute, AI workload acceleration, high-bandwidth data processing and significant memory on device.
    Beyond humanoids, Jetson Thor will accelerate various robotic applications — such as surgical assistants, smart tractors, delivery robots, industrial manipulators and visual AI agents — with real-time inference on device for larger, more complex AI models.
    A Giant Leap for Real-Time Robot Reasoning
    Jetson Thor is built for generative reasoning models. It enables the next generation of physical AI agents — powered by large transformer models, vision language models and vision language action models — to run in real time at the edge while minimizing cloud dependency.
    Optimized with the Jetson software stack to enable the low latency and high performance required in real-world applications, Jetson Thor supports all popular generative AI frameworks and AI reasoning models with unmatched real-time performance. These include Cosmos Reason, DeepSeek, Llama, Gemini and Qwen models, as well as domain-specific models for robotics like Isaac GR00T N1.5, enabling any developer to easily experiment and run inference locally.
    NVIDIA Jetson Thor opens new capabilities for real-time reasoning with multi-sensor input. Further performance improvement is expected with FP4 and speculative decoding optimization.
    With NVIDIA CUDA ecosystem support through its lifecycle, Jetson Thor is expected to deliver even better throughput and faster responses with future software releases.
    Jetson Thor modules also run the full NVIDIA AI software stack to accelerate virtually every physical AI workflow with platforms including NVIDIA Isaac for robotics, NVIDIA Metropolis for video analytics AI agents and NVIDIA Holoscan for sensor processing.
    With these software tools, developers can easily build and deploy applications, such as visual AI agents that can analyze live camera streams to monitor worker safety, humanoid robots capable of manipulation tasks in unstructured environments and smart operating rooms that guide surgeons based on data from multi-camera streams.
    Jetson Thor Set to Advance Research Innovation 
    Research labs at Stanford University, Carnegie Mellon University and the University of Zurich are tapping Jetson Thor to push the boundaries of perception, planning and navigation models for a host of potential applications.
    At Carnegie Mellon’s Robotics Institute, a research team uses NVIDIA Jetson to power autonomous robots that can navigate complex, unstructured environments to conduct medical triage as well as search and rescue.
    “We can only do as much as the compute available allows,” said Sebastian Scherer, an associate research professor at the university and head of the AirLab. “Years ago, there was a big disconnect between computer vision and robotics because computer vision workloads were too slow for real-time decision-making — but now, models and computing have gotten fast enough so robots can handle much more nuanced tasks.”
    Scherer anticipates that by upgrading from his team’s existing NVIDIA Jetson AGX Orin systems to Jetson AGX Thor developer kit, they’ll improve the performance of AI models including their award-winning MAC-VO model for robot perception at the edge, boost their sensor-fusion capabilities and be able to experiment with robot fleets.
    Wield the Strength of Jetson Thor
    The Jetson Thor family includes a developer kit and production modules. The developer kit includes a Jetson T5000 module, a reference carrier board with abundant connectivity, an active heatsink with a fan and a power supply.
    NVIDIA Jetson AGX Thor Developer Kit
    The Jetson ecosystem supports a variety of application requirements, high-speed industrial automation protocols and sensor interfaces, accelerating time to market for enterprise developers. Hardware partners including Advantech, Aetina, ConnectTech, MiiVii and TZTEK are building production-ready Jetson Thor systems with flexible I/O and custom configurations in various form factors.
    Sensor and Actuator companies including Analog Devices, Inc., e-con Systems,  Infineon, Leopard Imaging, RealSense and Sensing are using NVIDIA Holoscan Sensor Bridge — a platform that simplifies sensor fusion and data streaming — to connect sensor data from cameras, radar, lidar and more directly to GPU memory on Jetson Thor with ultralow latency.
    Thousands of software companies can now elevate their traditional vision AI and robotics applications with multi-AI agent workflows running on Jetson Thor. Leading adopters include Openzeka, Rebotnix, Solomon and Vaidio.
    More than 2 million developers use NVIDIA technologies to accelerate robotics workflows. Get started with Jetson Thor by reading the NVIDIA Technical Blog and watching the developer kit walkthrough.

    To get hands-on experience with Jetson Thor, sign up to participate in upcoming hackathons with Seeed Studio and LeRobot by Hugging Face.
    The NVIDIA Jetson AGX Thor developer kit is available now starting at NVIDIA Jetson T5000 modules are available starting at for 1,000 units. Buy now from authorized NVIDIA partners.
    NVIDIA today also announced that the NVIDIA DRIVE AGX Thor developer kit, which provides a platform for developing autonomous vehicles and mobility solutions, is available for preorder. Deliveries are slated to start in September.
    #nvidia #jetson #thor #unlocks #realtime
    NVIDIA Jetson Thor Unlocks Real-Time Reasoning for General Robotics and Physical AI
    Robots around the world are about to get a lot smarter as physical AI developers plug in NVIDIA Jetson Thor modules — new robotics computers that can serve as the brains for robotic systems across research and industry. Robots demand rich sensor data and low-latency AI processing. Running real-time robotic applications requires significant AI compute and memory to handle concurrent data streams from multiple sensors. Jetson Thor, now in general availability, delivers 7.5x more AI compute, 3.1x more CPU performance and 2x more memory than its predecessor, the NVIDIA Jetson Orin, to make this possible on device. This performance leap will enable roboticists to process high-speed sensor data and perform visual reasoning at the edge — workflows that were previously too slow to run in dynamic real-world environments. This opens new possibilities for multimodal AI applications such as humanoid robotics. Agility Robotics, a leader in humanoid robotics, has integrated NVIDIA Jetson into the fifth generation of its robot, Digit — and plans to adopt Jetson Thor as the onboard compute platform for the sixth generation of Digit. This transition will enhance Digit’s real-time perception and decision-making capabilities, supporting increasingly complex AI skills and behaviors. Digit is commercially deployed and performs logistics tasks such as stacking, loading and palletizing in warehouse and manufacturing environments. “The powerful edge processing offered by Jetson Thor will take Digit to the next level — enhancing its real-time responsiveness and expanding its abilities to a broader, more complex set of skills,” said Peggy Johnson, CEO of Agility Robotics. “With Jetson Thor, we can deliver the latest physical AI advancements to optimize operations across our customers’ warehouses and factories.” Boston Dynamics — which has been building some of the industry’s most advanced robots for over 30 years — is integrating Jetson Thor into its humanoid robot Atlas, enabling Atlas to harness formerly server-level compute, AI workload acceleration, high-bandwidth data processing and significant memory on device. Beyond humanoids, Jetson Thor will accelerate various robotic applications — such as surgical assistants, smart tractors, delivery robots, industrial manipulators and visual AI agents — with real-time inference on device for larger, more complex AI models. A Giant Leap for Real-Time Robot Reasoning Jetson Thor is built for generative reasoning models. It enables the next generation of physical AI agents — powered by large transformer models, vision language models and vision language action models — to run in real time at the edge while minimizing cloud dependency. Optimized with the Jetson software stack to enable the low latency and high performance required in real-world applications, Jetson Thor supports all popular generative AI frameworks and AI reasoning models with unmatched real-time performance. These include Cosmos Reason, DeepSeek, Llama, Gemini and Qwen models, as well as domain-specific models for robotics like Isaac GR00T N1.5, enabling any developer to easily experiment and run inference locally. NVIDIA Jetson Thor opens new capabilities for real-time reasoning with multi-sensor input. Further performance improvement is expected with FP4 and speculative decoding optimization. With NVIDIA CUDA ecosystem support through its lifecycle, Jetson Thor is expected to deliver even better throughput and faster responses with future software releases. Jetson Thor modules also run the full NVIDIA AI software stack to accelerate virtually every physical AI workflow with platforms including NVIDIA Isaac for robotics, NVIDIA Metropolis for video analytics AI agents and NVIDIA Holoscan for sensor processing. With these software tools, developers can easily build and deploy applications, such as visual AI agents that can analyze live camera streams to monitor worker safety, humanoid robots capable of manipulation tasks in unstructured environments and smart operating rooms that guide surgeons based on data from multi-camera streams. Jetson Thor Set to Advance Research Innovation  Research labs at Stanford University, Carnegie Mellon University and the University of Zurich are tapping Jetson Thor to push the boundaries of perception, planning and navigation models for a host of potential applications. At Carnegie Mellon’s Robotics Institute, a research team uses NVIDIA Jetson to power autonomous robots that can navigate complex, unstructured environments to conduct medical triage as well as search and rescue. “We can only do as much as the compute available allows,” said Sebastian Scherer, an associate research professor at the university and head of the AirLab. “Years ago, there was a big disconnect between computer vision and robotics because computer vision workloads were too slow for real-time decision-making — but now, models and computing have gotten fast enough so robots can handle much more nuanced tasks.” Scherer anticipates that by upgrading from his team’s existing NVIDIA Jetson AGX Orin systems to Jetson AGX Thor developer kit, they’ll improve the performance of AI models including their award-winning MAC-VO model for robot perception at the edge, boost their sensor-fusion capabilities and be able to experiment with robot fleets. Wield the Strength of Jetson Thor The Jetson Thor family includes a developer kit and production modules. The developer kit includes a Jetson T5000 module, a reference carrier board with abundant connectivity, an active heatsink with a fan and a power supply. NVIDIA Jetson AGX Thor Developer Kit The Jetson ecosystem supports a variety of application requirements, high-speed industrial automation protocols and sensor interfaces, accelerating time to market for enterprise developers. Hardware partners including Advantech, Aetina, ConnectTech, MiiVii and TZTEK are building production-ready Jetson Thor systems with flexible I/O and custom configurations in various form factors. Sensor and Actuator companies including Analog Devices, Inc., e-con Systems,  Infineon, Leopard Imaging, RealSense and Sensing are using NVIDIA Holoscan Sensor Bridge — a platform that simplifies sensor fusion and data streaming — to connect sensor data from cameras, radar, lidar and more directly to GPU memory on Jetson Thor with ultralow latency. Thousands of software companies can now elevate their traditional vision AI and robotics applications with multi-AI agent workflows running on Jetson Thor. Leading adopters include Openzeka, Rebotnix, Solomon and Vaidio. More than 2 million developers use NVIDIA technologies to accelerate robotics workflows. Get started with Jetson Thor by reading the NVIDIA Technical Blog and watching the developer kit walkthrough. To get hands-on experience with Jetson Thor, sign up to participate in upcoming hackathons with Seeed Studio and LeRobot by Hugging Face. The NVIDIA Jetson AGX Thor developer kit is available now starting at NVIDIA Jetson T5000 modules are available starting at for 1,000 units. Buy now from authorized NVIDIA partners. NVIDIA today also announced that the NVIDIA DRIVE AGX Thor developer kit, which provides a platform for developing autonomous vehicles and mobility solutions, is available for preorder. Deliveries are slated to start in September. #nvidia #jetson #thor #unlocks #realtime
    NVIDIA Jetson Thor Unlocks Real-Time Reasoning for General Robotics and Physical AI
    blogs.nvidia.com
    Robots around the world are about to get a lot smarter as physical AI developers plug in NVIDIA Jetson Thor modules — new robotics computers that can serve as the brains for robotic systems across research and industry. Robots demand rich sensor data and low-latency AI processing. Running real-time robotic applications requires significant AI compute and memory to handle concurrent data streams from multiple sensors. Jetson Thor, now in general availability, delivers 7.5x more AI compute, 3.1x more CPU performance and 2x more memory than its predecessor, the NVIDIA Jetson Orin, to make this possible on device. This performance leap will enable roboticists to process high-speed sensor data and perform visual reasoning at the edge — workflows that were previously too slow to run in dynamic real-world environments. This opens new possibilities for multimodal AI applications such as humanoid robotics. Agility Robotics, a leader in humanoid robotics, has integrated NVIDIA Jetson into the fifth generation of its robot, Digit — and plans to adopt Jetson Thor as the onboard compute platform for the sixth generation of Digit. This transition will enhance Digit’s real-time perception and decision-making capabilities, supporting increasingly complex AI skills and behaviors. Digit is commercially deployed and performs logistics tasks such as stacking, loading and palletizing in warehouse and manufacturing environments. “The powerful edge processing offered by Jetson Thor will take Digit to the next level — enhancing its real-time responsiveness and expanding its abilities to a broader, more complex set of skills,” said Peggy Johnson, CEO of Agility Robotics. “With Jetson Thor, we can deliver the latest physical AI advancements to optimize operations across our customers’ warehouses and factories.” Boston Dynamics — which has been building some of the industry’s most advanced robots for over 30 years — is integrating Jetson Thor into its humanoid robot Atlas, enabling Atlas to harness formerly server-level compute, AI workload acceleration, high-bandwidth data processing and significant memory on device. Beyond humanoids, Jetson Thor will accelerate various robotic applications — such as surgical assistants, smart tractors, delivery robots, industrial manipulators and visual AI agents — with real-time inference on device for larger, more complex AI models. A Giant Leap for Real-Time Robot Reasoning Jetson Thor is built for generative reasoning models. It enables the next generation of physical AI agents — powered by large transformer models, vision language models and vision language action models — to run in real time at the edge while minimizing cloud dependency. Optimized with the Jetson software stack to enable the low latency and high performance required in real-world applications, Jetson Thor supports all popular generative AI frameworks and AI reasoning models with unmatched real-time performance. These include Cosmos Reason, DeepSeek, Llama, Gemini and Qwen models, as well as domain-specific models for robotics like Isaac GR00T N1.5, enabling any developer to easily experiment and run inference locally. NVIDIA Jetson Thor opens new capabilities for real-time reasoning with multi-sensor input. Further performance improvement is expected with FP4 and speculative decoding optimization. With NVIDIA CUDA ecosystem support through its lifecycle, Jetson Thor is expected to deliver even better throughput and faster responses with future software releases. Jetson Thor modules also run the full NVIDIA AI software stack to accelerate virtually every physical AI workflow with platforms including NVIDIA Isaac for robotics, NVIDIA Metropolis for video analytics AI agents and NVIDIA Holoscan for sensor processing. With these software tools, developers can easily build and deploy applications, such as visual AI agents that can analyze live camera streams to monitor worker safety, humanoid robots capable of manipulation tasks in unstructured environments and smart operating rooms that guide surgeons based on data from multi-camera streams. Jetson Thor Set to Advance Research Innovation  Research labs at Stanford University, Carnegie Mellon University and the University of Zurich are tapping Jetson Thor to push the boundaries of perception, planning and navigation models for a host of potential applications. At Carnegie Mellon’s Robotics Institute, a research team uses NVIDIA Jetson to power autonomous robots that can navigate complex, unstructured environments to conduct medical triage as well as search and rescue. “We can only do as much as the compute available allows,” said Sebastian Scherer, an associate research professor at the university and head of the AirLab. “Years ago, there was a big disconnect between computer vision and robotics because computer vision workloads were too slow for real-time decision-making — but now, models and computing have gotten fast enough so robots can handle much more nuanced tasks.” Scherer anticipates that by upgrading from his team’s existing NVIDIA Jetson AGX Orin systems to Jetson AGX Thor developer kit, they’ll improve the performance of AI models including their award-winning MAC-VO model for robot perception at the edge, boost their sensor-fusion capabilities and be able to experiment with robot fleets. Wield the Strength of Jetson Thor The Jetson Thor family includes a developer kit and production modules. The developer kit includes a Jetson T5000 module, a reference carrier board with abundant connectivity, an active heatsink with a fan and a power supply. NVIDIA Jetson AGX Thor Developer Kit The Jetson ecosystem supports a variety of application requirements, high-speed industrial automation protocols and sensor interfaces, accelerating time to market for enterprise developers. Hardware partners including Advantech, Aetina, ConnectTech, MiiVii and TZTEK are building production-ready Jetson Thor systems with flexible I/O and custom configurations in various form factors. Sensor and Actuator companies including Analog Devices, Inc. (ADI), e-con Systems,  Infineon, Leopard Imaging, RealSense and Sensing are using NVIDIA Holoscan Sensor Bridge — a platform that simplifies sensor fusion and data streaming — to connect sensor data from cameras, radar, lidar and more directly to GPU memory on Jetson Thor with ultralow latency. Thousands of software companies can now elevate their traditional vision AI and robotics applications with multi-AI agent workflows running on Jetson Thor. Leading adopters include Openzeka, Rebotnix, Solomon and Vaidio. More than 2 million developers use NVIDIA technologies to accelerate robotics workflows. Get started with Jetson Thor by reading the NVIDIA Technical Blog and watching the developer kit walkthrough. To get hands-on experience with Jetson Thor, sign up to participate in upcoming hackathons with Seeed Studio and LeRobot by Hugging Face. The NVIDIA Jetson AGX Thor developer kit is available now starting at $3,499. NVIDIA Jetson T5000 modules are available starting at $2,999 for 1,000 units. Buy now from authorized NVIDIA partners. NVIDIA today also announced that the NVIDIA DRIVE AGX Thor developer kit, which provides a platform for developing autonomous vehicles and mobility solutions, is available for preorder. Deliveries are slated to start in September.
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  • واش راكم؟ عندي جديد يفرح القلب!

    Robomart خرجت علينا بروبوت توصيل جديد، RM5، اللي يقدر يشيل حتى 50 باوند ويجيبلك الطلبات للدار كأنك تشري من عند جارتك! والمفاجأة؟ التكلفة ثابتة بـ$3. يعني لا باهظ ولا تعقيدات.

    شوفوا، أنا دايماً نقول بلي التكنولوجيا لازم تكون في خدمتنا، لكن تخيلوا لو كان الروبوت هذا يجيبلك الطلبات وأنت في البيجاما؟! كاين أيام راني نتمنى لو كان عندي واحد في الدار، نقول للروبوت: “جيبيلي مشروبات، وعيد الكعك!”

    أنتم كيفاه تشوفوا هذا التوجه الجديد في عالم التوصيل؟

    https://techcrunch.com/2025/08/25/robomart-unveils-new-delivery-robot-with-3-flat-fee-to-challenge-doordash-uber-eats/

    #روبوت #توصيل #Innovations #TechAlgeria #Delivery
    ✨ واش راكم؟ عندي جديد يفرح القلب! 😄 Robomart خرجت علينا بروبوت توصيل جديد، RM5، اللي يقدر يشيل حتى 50 باوند ويجيبلك الطلبات للدار كأنك تشري من عند جارتك! 😂 والمفاجأة؟ التكلفة ثابتة بـ$3. يعني لا باهظ ولا تعقيدات. شوفوا، أنا دايماً نقول بلي التكنولوجيا لازم تكون في خدمتنا، لكن تخيلوا لو كان الروبوت هذا يجيبلك الطلبات وأنت في البيجاما؟! كاين أيام راني نتمنى لو كان عندي واحد في الدار، نقول للروبوت: “جيبيلي مشروبات، وعيد الكعك!” 😜 أنتم كيفاه تشوفوا هذا التوجه الجديد في عالم التوصيل؟ https://techcrunch.com/2025/08/25/robomart-unveils-new-delivery-robot-with-3-flat-fee-to-challenge-doordash-uber-eats/ #روبوت #توصيل #Innovations #TechAlgeria #Delivery
    techcrunch.com
    Robomart's RM5 autonomous delivery robot can carry up to 50 pounds and deliver multiple customer orders at once.
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  • شفتوا كيفاش كاين حوايج جديدين كل يوم؟ اليوم حبيت نتكلم على روبوت جديد رايح يغيّر طريقة توصيل المشتريات. شركة Robomart من لوس أنجلوس كشفت على روبوت توصيل هائل، بحجم باص صغير، وقادر يحمل حتى 500 رطل من المنتجات! الفكرة هنا هي توصيل المشتريات مباشرة عند باب دارك، وكل هذا بطريقة عصرية ومبتكرة.

    الصراحة، في وقتنا الحالي، وين كل واحد عنده مشاغل بزاف، نحتاجوا لحلول مثل هذي. تخيّلوا كيفاش تولي التسوق أسهل وأسرع، بلا العناء اللي كانوا فيه قبل. شخصياً، كنت نحب نستعمل خدمات التوصيل، لكن هذي تكنولوجيا جديدة راح تجعل الأمور أفضل.

    نتمنى كل واحد فينا يفكر في كيفاش هذي الابتكارات راح تأثر على حياتنا اليومية.

    https://www.theverge.com/news/765167/robomart-autonomous-food-delivery-locker-rm5

    #روبوتات #توصيل #Innovation #Livraison #مشتريات
    شفتوا كيفاش كاين حوايج جديدين كل يوم؟ اليوم حبيت نتكلم على روبوت جديد رايح يغيّر طريقة توصيل المشتريات. شركة Robomart من لوس أنجلوس كشفت على روبوت توصيل هائل، بحجم باص صغير، وقادر يحمل حتى 500 رطل من المنتجات! الفكرة هنا هي توصيل المشتريات مباشرة عند باب دارك، وكل هذا بطريقة عصرية ومبتكرة. الصراحة، في وقتنا الحالي، وين كل واحد عنده مشاغل بزاف، نحتاجوا لحلول مثل هذي. تخيّلوا كيفاش تولي التسوق أسهل وأسرع، بلا العناء اللي كانوا فيه قبل. شخصياً، كنت نحب نستعمل خدمات التوصيل، لكن هذي تكنولوجيا جديدة راح تجعل الأمور أفضل. نتمنى كل واحد فينا يفكر في كيفاش هذي الابتكارات راح تأثر على حياتنا اليومية. https://www.theverge.com/news/765167/robomart-autonomous-food-delivery-locker-rm5 #روبوتات #توصيل #Innovation #Livraison #مشتريات
    www.theverge.com
    A new company aims to take the idea of sidewalk delivery robots and supersize it. Los Angeles-based Robomart unveiled its new delivery robot Monday, with the goal of making “on‑demand delivery work economically.” The level-four autonomous vehicle is
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  • يا جماعة، واش راكم ديرين؟ اليوم حبيت نشارك معاكم موضوع مهم بزاف للمطورين والناس اللي يحبوا يشتغلوا في مجال الـ Machine Learning.

    في المقال هذا، نتكلموا على كيفية تسريع توصيل الـ ML workloads باستخدام Code Editor في Amazon SageMaker Unified Studio. الحل المعروض يوريك كيفاش تطور pipeline للـ ML يسهّل عليك كل المراحل من البناء، التدريب، التقييم، وحتى النشر إذا تحب. شكون فيكم جرب يستعمل SageMaker من قبل؟ كفاش كانت التجربة؟

    أنا شخصياً لقيت أنو هذا الأداة توفر وقت كبير وتخليك تركز أكثر على الابتكار بدل المشاكل التقنية.

    تخيلوا معايا لو تقدروا تطوروا مشاريعكم بفاعلية أكبر. كيفاش ممكن هذي التقنيات تبدل شكل الشغل في المستقبل؟

    https://aws.amazon.com/blogs/machine-learning/speed-up-delivery-of-ml-workloads-using-code-editor-in-amazon-sagemaker-unified-studio/

    #MachineLearning #SageMaker #Développement #Innovation #Tech
    يا جماعة، واش راكم ديرين؟ 🌟 اليوم حبيت نشارك معاكم موضوع مهم بزاف للمطورين والناس اللي يحبوا يشتغلوا في مجال الـ Machine Learning. في المقال هذا، نتكلموا على كيفية تسريع توصيل الـ ML workloads باستخدام Code Editor في Amazon SageMaker Unified Studio. الحل المعروض يوريك كيفاش تطور pipeline للـ ML يسهّل عليك كل المراحل من البناء، التدريب، التقييم، وحتى النشر إذا تحب. شكون فيكم جرب يستعمل SageMaker من قبل؟ كفاش كانت التجربة؟ أنا شخصياً لقيت أنو هذا الأداة توفر وقت كبير وتخليك تركز أكثر على الابتكار بدل المشاكل التقنية. تخيلوا معايا لو تقدروا تطوروا مشاريعكم بفاعلية أكبر. كيفاش ممكن هذي التقنيات تبدل شكل الشغل في المستقبل؟ https://aws.amazon.com/blogs/machine-learning/speed-up-delivery-of-ml-workloads-using-code-editor-in-amazon-sagemaker-unified-studio/ #MachineLearning #SageMaker #Développement #Innovation #Tech
    aws.amazon.com
    In this post, we walk through how you can use the new Code Editor and multiple spaces support in SageMaker Unified Studio. The sample solution shows how to develop an ML pipeline that automates the typical end-to-end ML activities to build, train, ev
    1 Commentaires ·0 Parts
  • Gearing Up for the Gigawatt Data Center Age

    Across the globe, AI factories are rising — massive new data centers built not to serve up web pages or email, but to train and deploy intelligence itself. Internet giants have invested billions in cloud-scale AI infrastructure for their customers. Companies are racing to build AI foundries that will spawn the next generation of products and services. Governments are investing too, eager to harness AI for personalized medicine and language services tailored to national populations.
    Welcome to the age of AI factories — where the rules are being rewritten and the wiring doesn’t look anything like the old internet. These aren’t typical hyperscale data centers. They’re something else entirely. Think of them as high-performance engines stitched together from tens to hundreds of thousands of GPUs — not just built, but orchestrated, operated and activated as a single unit. And that orchestration? It’s the whole game.
    This giant data center has become the new unit of computing, and the way these GPUs are connected defines what this unit of computing can do. One network architecture won’t cut it. What’s needed is a layered design with bleeding-edge technologies — like co-packaged optics that once seemed like science fiction.
    The complexity isn’t a bug; it’s the defining feature. AI infrastructure is diverging fast from everything that came before it, and if there isn’t rethinking on how the pipes connect, scale breaks down. Get the network layers wrong, and the whole machine grinds to a halt. Get it right, and gain extraordinary performance.
    With that shift comes weight — literally. A decade ago, chips were built to be sleek and lightweight. Now, the cutting edge looks like the multi‑hundred‑pound copper spine of a server rack. Liquid-cooled manifolds. Custom busbars. Copper spines. AI now demands massive, industrial-scale hardware. And the deeper the models go, the more these machines scale up, and out.
    The NVIDIA NVLink spine, for example, is built from over 5,000 coaxial cables — tightly wound and precisely routed. It moves more data per second than the entire internet. That’s 130 TB/s of GPU-to-GPU bandwidth, fully meshed.
    This isn’t just fast. It’s foundational. The AI super-highway now lives inside the rack.
    The Data Center Is the Computer

    Training the modern large language modelsbehind AI isn’t about burning cycles on a single machine. It’s about orchestrating the work of tens or even hundreds of thousands of GPUs that are the heavy lifters of AI computation.
    These systems rely on distributed computing, splitting massive calculations across nodes, where each node handles a slice of the workload. In training, those slices — typically massive matrices of numbers — need to be regularly merged and updated. That merging occurs through collective operations, such as “all-reduce”and “all-to-all”.
    These processes are susceptible to the speed and responsiveness of the network — what engineers call latencyand bandwidth— causing stalls in training.
    For inference — the process of running trained models to generate answers or predictions — the challenges flip. Retrieval-augmented generation systems, which combine LLMs with search, demand real-time lookups and responses. And in cloud environments, multi-tenant inference means keeping workloads from different customers running smoothly, without interference. That requires lightning-fast, high-throughput networking that can handle massive demand with strict isolation between users.
    Traditional Ethernet was designed for single-server workloads — not for the demands of distributed AI. Tolerating jitter and inconsistent delivery were once acceptable. Now, it’s a bottleneck. Traditional Ethernet switch architectures were never designed for consistent, predictable performance — and that legacy still shapes their latest generations.
    Distributed computing requires a scale-out infrastructure built for zero-jitter operation — one that can handle bursts of extreme throughput, deliver low latency, maintain predictable and consistent RDMA performance, and isolate network noise. This is why InfiniBand networking is the gold standard for high-performance computing supercomputers and AI factories.
    With NVIDIA Quantum InfiniBand, collective operations run inside the network itself using Scalable Hierarchical Aggregation and Reduction Protocol technology, doubling data bandwidth for reductions. It uses adaptive routing and telemetry-based congestion control to spread flows across paths, guarantee deterministic bandwidth and isolate noise. These optimizations let InfiniBand scale AI communication with precision. It’s why NVIDIA Quantum infrastructure connects the majority of the systems on the TOP500 list of the world’s most powerful supercomputers, demonstrating 35% growth in just two years.
    For clusters spanning dozens of racks, NVIDIA Quantum‑X800 Infiniband switches push InfiniBand to new heights. Each switch provides 144 ports of 800 Gbps connectivity, featuring hardware-based SHARPv4, adaptive routing and telemetry-based congestion control. The platform integrates co‑packaged silicon photonics to minimize the distance between electronics and optics, reducing power consumption and latency. Paired with NVIDIA ConnectX-8 SuperNICs delivering 800 Gb/s per GPU, this fabric links trillion-parameter models and drives in-network compute.
    But hyperscalers and enterprises have invested billions in their Ethernet software infrastructure. They need a quick path forward that uses the existing ecosystem for AI workloads. Enter NVIDIA Spectrum‑X: a new kind of Ethernet purpose-built for distributed AI.
    Spectrum‑X Ethernet: Bringing AI to the Enterprise

    Spectrum‑X reimagines Ethernet for AI. Launched in 2023 Spectrum‑X delivers lossless networking, adaptive routing and performance isolation. The SN5610 switch, based on the Spectrum‑4 ASIC, supports port speeds up to 800 Gb/s and uses NVIDIA’s congestion control to maintain 95% data throughput at scale.
    Spectrum‑X is fully standards‑based Ethernet. In addition to supporting Cumulus Linux, it supports the open‑source SONiC network operating system — giving customers flexibility. A key ingredient is NVIDIA SuperNICs — based on NVIDIA BlueField-3 or ConnectX-8 — which provide up to 800 Gb/s RoCE connectivity and offload packet reordering and congestion management.
    Spectrum-X brings InfiniBand’s best innovations — like telemetry-driven congestion control, adaptive load balancing and direct data placement — to Ethernet, enabling enterprises to scale to hundreds of thousands of GPUs. Large-scale systems with Spectrum‑X, including the world’s most colossal AI supercomputer, have achieved 95% data throughput with zero application latency degradation. Standard Ethernet fabrics would deliver only ~60% throughput due to flow collisions.
    A Portfolio for Scale‑Up and Scale‑Out
    No single network can serve every layer of an AI factory. NVIDIA’s approach is to match the right fabric to the right tier, then tie everything together with software and silicon.
    NVLink: Scale Up Inside the Rack
    Inside a server rack, GPUs need to talk to each other as if they were different cores on the same chip. NVIDIA NVLink and NVLink Switch extend GPU memory and bandwidth across nodes. In an NVIDIA GB300 NVL72 system, 36 NVIDIA Grace CPUs and 72 NVIDIA Blackwell Ultra GPUs are connected in a single NVLink domain, with an aggregate bandwidth of 130 TB/s. NVLink Switch technology further extends this fabric: a single GB300 NVL72 system can offer 130 TB/s of GPU bandwidth, enabling clusters to support 9x the GPU count of a single 8‑GPU server. With NVLink, the entire rack becomes one large GPU.
    Photonics: The Next Leap

    To reach million‑GPU AI factories, the network must break the power and density limits of pluggable optics. NVIDIA Quantum-X and Spectrum-X Photonics switches integrate silicon photonics directly into the switch package, delivering 128 to 512 ports of 800 Gb/s with total bandwidths ranging from 100 Tb/s to 400 Tb/s. These switches offer 3.5x more power efficiency and 10x better resiliency compared with traditional optics, paving the way for gigawatt‑scale AI factories.

    Delivering on the Promise of Open Standards

    Spectrum‑X and NVIDIA Quantum InfiniBand are built on open standards. Spectrum‑X is fully standards‑based Ethernet with support for open Ethernet stacks like SONiC, while NVIDIA Quantum InfiniBand and Spectrum-X conform to the InfiniBand Trade Association’s InfiniBand and RDMA over Converged Ethernetspecifications. Key elements of NVIDIA’s software stack — including NCCL and DOCA libraries — run on a variety of hardware, and partners such as Cisco, Dell Technologies, HPE and Supermicro integrate Spectrum-X into their systems.

    Open standards create the foundation for interoperability, but real-world AI clusters require tight optimization across the entire stack — GPUs, NICs, switches, cables and software. Vendors that invest in end‑to‑end integration deliver better latency and throughput. SONiC, the open‑source network operating system hardened in hyperscale data centers, eliminates licensing and vendor lock‑in and allows intense customization, but operators still choose purpose‑built hardware and software bundles to meet AI’s performance needs. In practice, open standards alone don’t deliver deterministic performance; they need innovation layered on top.

    Toward Million‑GPU AI Factories
    AI factories are scaling fast. Governments in Europe are building seven national AI factories, while cloud providers and enterprises across Japan, India and Norway are rolling out NVIDIA‑powered AI infrastructure. The next horizon is gigawatt‑class facilities with a million GPUs. To get there, the network must evolve from an afterthought to a pillar of AI infrastructure.
    The lesson from the gigawatt data center age is simple: the data center is now the computer. NVLink stitches together GPUs inside the rack. NVIDIA Quantum InfiniBand scales them across it. Spectrum-X brings that performance to broader markets. Silicon photonics makes it sustainable. Everything is open where it matters, optimized where it counts.
     
     

     
    #gearing #gigawatt #data #center #age
    Gearing Up for the Gigawatt Data Center Age
    Across the globe, AI factories are rising — massive new data centers built not to serve up web pages or email, but to train and deploy intelligence itself. Internet giants have invested billions in cloud-scale AI infrastructure for their customers. Companies are racing to build AI foundries that will spawn the next generation of products and services. Governments are investing too, eager to harness AI for personalized medicine and language services tailored to national populations. Welcome to the age of AI factories — where the rules are being rewritten and the wiring doesn’t look anything like the old internet. These aren’t typical hyperscale data centers. They’re something else entirely. Think of them as high-performance engines stitched together from tens to hundreds of thousands of GPUs — not just built, but orchestrated, operated and activated as a single unit. And that orchestration? It’s the whole game. This giant data center has become the new unit of computing, and the way these GPUs are connected defines what this unit of computing can do. One network architecture won’t cut it. What’s needed is a layered design with bleeding-edge technologies — like co-packaged optics that once seemed like science fiction. The complexity isn’t a bug; it’s the defining feature. AI infrastructure is diverging fast from everything that came before it, and if there isn’t rethinking on how the pipes connect, scale breaks down. Get the network layers wrong, and the whole machine grinds to a halt. Get it right, and gain extraordinary performance. With that shift comes weight — literally. A decade ago, chips were built to be sleek and lightweight. Now, the cutting edge looks like the multi‑hundred‑pound copper spine of a server rack. Liquid-cooled manifolds. Custom busbars. Copper spines. AI now demands massive, industrial-scale hardware. And the deeper the models go, the more these machines scale up, and out. The NVIDIA NVLink spine, for example, is built from over 5,000 coaxial cables — tightly wound and precisely routed. It moves more data per second than the entire internet. That’s 130 TB/s of GPU-to-GPU bandwidth, fully meshed. This isn’t just fast. It’s foundational. The AI super-highway now lives inside the rack. The Data Center Is the Computer Training the modern large language modelsbehind AI isn’t about burning cycles on a single machine. It’s about orchestrating the work of tens or even hundreds of thousands of GPUs that are the heavy lifters of AI computation. These systems rely on distributed computing, splitting massive calculations across nodes, where each node handles a slice of the workload. In training, those slices — typically massive matrices of numbers — need to be regularly merged and updated. That merging occurs through collective operations, such as “all-reduce”and “all-to-all”. These processes are susceptible to the speed and responsiveness of the network — what engineers call latencyand bandwidth— causing stalls in training. For inference — the process of running trained models to generate answers or predictions — the challenges flip. Retrieval-augmented generation systems, which combine LLMs with search, demand real-time lookups and responses. And in cloud environments, multi-tenant inference means keeping workloads from different customers running smoothly, without interference. That requires lightning-fast, high-throughput networking that can handle massive demand with strict isolation between users. Traditional Ethernet was designed for single-server workloads — not for the demands of distributed AI. Tolerating jitter and inconsistent delivery were once acceptable. Now, it’s a bottleneck. Traditional Ethernet switch architectures were never designed for consistent, predictable performance — and that legacy still shapes their latest generations. Distributed computing requires a scale-out infrastructure built for zero-jitter operation — one that can handle bursts of extreme throughput, deliver low latency, maintain predictable and consistent RDMA performance, and isolate network noise. This is why InfiniBand networking is the gold standard for high-performance computing supercomputers and AI factories. With NVIDIA Quantum InfiniBand, collective operations run inside the network itself using Scalable Hierarchical Aggregation and Reduction Protocol technology, doubling data bandwidth for reductions. It uses adaptive routing and telemetry-based congestion control to spread flows across paths, guarantee deterministic bandwidth and isolate noise. These optimizations let InfiniBand scale AI communication with precision. It’s why NVIDIA Quantum infrastructure connects the majority of the systems on the TOP500 list of the world’s most powerful supercomputers, demonstrating 35% growth in just two years. For clusters spanning dozens of racks, NVIDIA Quantum‑X800 Infiniband switches push InfiniBand to new heights. Each switch provides 144 ports of 800 Gbps connectivity, featuring hardware-based SHARPv4, adaptive routing and telemetry-based congestion control. The platform integrates co‑packaged silicon photonics to minimize the distance between electronics and optics, reducing power consumption and latency. Paired with NVIDIA ConnectX-8 SuperNICs delivering 800 Gb/s per GPU, this fabric links trillion-parameter models and drives in-network compute. But hyperscalers and enterprises have invested billions in their Ethernet software infrastructure. They need a quick path forward that uses the existing ecosystem for AI workloads. Enter NVIDIA Spectrum‑X: a new kind of Ethernet purpose-built for distributed AI. Spectrum‑X Ethernet: Bringing AI to the Enterprise Spectrum‑X reimagines Ethernet for AI. Launched in 2023 Spectrum‑X delivers lossless networking, adaptive routing and performance isolation. The SN5610 switch, based on the Spectrum‑4 ASIC, supports port speeds up to 800 Gb/s and uses NVIDIA’s congestion control to maintain 95% data throughput at scale. Spectrum‑X is fully standards‑based Ethernet. In addition to supporting Cumulus Linux, it supports the open‑source SONiC network operating system — giving customers flexibility. A key ingredient is NVIDIA SuperNICs — based on NVIDIA BlueField-3 or ConnectX-8 — which provide up to 800 Gb/s RoCE connectivity and offload packet reordering and congestion management. Spectrum-X brings InfiniBand’s best innovations — like telemetry-driven congestion control, adaptive load balancing and direct data placement — to Ethernet, enabling enterprises to scale to hundreds of thousands of GPUs. Large-scale systems with Spectrum‑X, including the world’s most colossal AI supercomputer, have achieved 95% data throughput with zero application latency degradation. Standard Ethernet fabrics would deliver only ~60% throughput due to flow collisions. A Portfolio for Scale‑Up and Scale‑Out No single network can serve every layer of an AI factory. NVIDIA’s approach is to match the right fabric to the right tier, then tie everything together with software and silicon. NVLink: Scale Up Inside the Rack Inside a server rack, GPUs need to talk to each other as if they were different cores on the same chip. NVIDIA NVLink and NVLink Switch extend GPU memory and bandwidth across nodes. In an NVIDIA GB300 NVL72 system, 36 NVIDIA Grace CPUs and 72 NVIDIA Blackwell Ultra GPUs are connected in a single NVLink domain, with an aggregate bandwidth of 130 TB/s. NVLink Switch technology further extends this fabric: a single GB300 NVL72 system can offer 130 TB/s of GPU bandwidth, enabling clusters to support 9x the GPU count of a single 8‑GPU server. With NVLink, the entire rack becomes one large GPU. Photonics: The Next Leap To reach million‑GPU AI factories, the network must break the power and density limits of pluggable optics. NVIDIA Quantum-X and Spectrum-X Photonics switches integrate silicon photonics directly into the switch package, delivering 128 to 512 ports of 800 Gb/s with total bandwidths ranging from 100 Tb/s to 400 Tb/s. These switches offer 3.5x more power efficiency and 10x better resiliency compared with traditional optics, paving the way for gigawatt‑scale AI factories. Delivering on the Promise of Open Standards Spectrum‑X and NVIDIA Quantum InfiniBand are built on open standards. Spectrum‑X is fully standards‑based Ethernet with support for open Ethernet stacks like SONiC, while NVIDIA Quantum InfiniBand and Spectrum-X conform to the InfiniBand Trade Association’s InfiniBand and RDMA over Converged Ethernetspecifications. Key elements of NVIDIA’s software stack — including NCCL and DOCA libraries — run on a variety of hardware, and partners such as Cisco, Dell Technologies, HPE and Supermicro integrate Spectrum-X into their systems. Open standards create the foundation for interoperability, but real-world AI clusters require tight optimization across the entire stack — GPUs, NICs, switches, cables and software. Vendors that invest in end‑to‑end integration deliver better latency and throughput. SONiC, the open‑source network operating system hardened in hyperscale data centers, eliminates licensing and vendor lock‑in and allows intense customization, but operators still choose purpose‑built hardware and software bundles to meet AI’s performance needs. In practice, open standards alone don’t deliver deterministic performance; they need innovation layered on top. Toward Million‑GPU AI Factories AI factories are scaling fast. Governments in Europe are building seven national AI factories, while cloud providers and enterprises across Japan, India and Norway are rolling out NVIDIA‑powered AI infrastructure. The next horizon is gigawatt‑class facilities with a million GPUs. To get there, the network must evolve from an afterthought to a pillar of AI infrastructure. The lesson from the gigawatt data center age is simple: the data center is now the computer. NVLink stitches together GPUs inside the rack. NVIDIA Quantum InfiniBand scales them across it. Spectrum-X brings that performance to broader markets. Silicon photonics makes it sustainable. Everything is open where it matters, optimized where it counts.       #gearing #gigawatt #data #center #age
    Gearing Up for the Gigawatt Data Center Age
    blogs.nvidia.com
    Across the globe, AI factories are rising — massive new data centers built not to serve up web pages or email, but to train and deploy intelligence itself. Internet giants have invested billions in cloud-scale AI infrastructure for their customers. Companies are racing to build AI foundries that will spawn the next generation of products and services. Governments are investing too, eager to harness AI for personalized medicine and language services tailored to national populations. Welcome to the age of AI factories — where the rules are being rewritten and the wiring doesn’t look anything like the old internet. These aren’t typical hyperscale data centers. They’re something else entirely. Think of them as high-performance engines stitched together from tens to hundreds of thousands of GPUs — not just built, but orchestrated, operated and activated as a single unit. And that orchestration? It’s the whole game. This giant data center has become the new unit of computing, and the way these GPUs are connected defines what this unit of computing can do. One network architecture won’t cut it. What’s needed is a layered design with bleeding-edge technologies — like co-packaged optics that once seemed like science fiction. The complexity isn’t a bug; it’s the defining feature. AI infrastructure is diverging fast from everything that came before it, and if there isn’t rethinking on how the pipes connect, scale breaks down. Get the network layers wrong, and the whole machine grinds to a halt. Get it right, and gain extraordinary performance. With that shift comes weight — literally. A decade ago, chips were built to be sleek and lightweight. Now, the cutting edge looks like the multi‑hundred‑pound copper spine of a server rack. Liquid-cooled manifolds. Custom busbars. Copper spines. AI now demands massive, industrial-scale hardware. And the deeper the models go, the more these machines scale up, and out. The NVIDIA NVLink spine, for example, is built from over 5,000 coaxial cables — tightly wound and precisely routed. It moves more data per second than the entire internet. That’s 130 TB/s of GPU-to-GPU bandwidth, fully meshed. This isn’t just fast. It’s foundational. The AI super-highway now lives inside the rack. The Data Center Is the Computer Training the modern large language models (LLMs) behind AI isn’t about burning cycles on a single machine. It’s about orchestrating the work of tens or even hundreds of thousands of GPUs that are the heavy lifters of AI computation. These systems rely on distributed computing, splitting massive calculations across nodes (individual servers), where each node handles a slice of the workload. In training, those slices — typically massive matrices of numbers — need to be regularly merged and updated. That merging occurs through collective operations, such as “all-reduce” (which combines data from all nodes and redistributes the result) and “all-to-all” (where each node exchanges data with every other node). These processes are susceptible to the speed and responsiveness of the network — what engineers call latency (delay) and bandwidth (data capacity) — causing stalls in training. For inference — the process of running trained models to generate answers or predictions — the challenges flip. Retrieval-augmented generation systems, which combine LLMs with search, demand real-time lookups and responses. And in cloud environments, multi-tenant inference means keeping workloads from different customers running smoothly, without interference. That requires lightning-fast, high-throughput networking that can handle massive demand with strict isolation between users. Traditional Ethernet was designed for single-server workloads — not for the demands of distributed AI. Tolerating jitter and inconsistent delivery were once acceptable. Now, it’s a bottleneck. Traditional Ethernet switch architectures were never designed for consistent, predictable performance — and that legacy still shapes their latest generations. Distributed computing requires a scale-out infrastructure built for zero-jitter operation — one that can handle bursts of extreme throughput, deliver low latency, maintain predictable and consistent RDMA performance, and isolate network noise. This is why InfiniBand networking is the gold standard for high-performance computing supercomputers and AI factories. With NVIDIA Quantum InfiniBand, collective operations run inside the network itself using Scalable Hierarchical Aggregation and Reduction Protocol technology, doubling data bandwidth for reductions. It uses adaptive routing and telemetry-based congestion control to spread flows across paths, guarantee deterministic bandwidth and isolate noise. These optimizations let InfiniBand scale AI communication with precision. It’s why NVIDIA Quantum infrastructure connects the majority of the systems on the TOP500 list of the world’s most powerful supercomputers, demonstrating 35% growth in just two years. For clusters spanning dozens of racks, NVIDIA Quantum‑X800 Infiniband switches push InfiniBand to new heights. Each switch provides 144 ports of 800 Gbps connectivity, featuring hardware-based SHARPv4, adaptive routing and telemetry-based congestion control. The platform integrates co‑packaged silicon photonics to minimize the distance between electronics and optics, reducing power consumption and latency. Paired with NVIDIA ConnectX-8 SuperNICs delivering 800 Gb/s per GPU, this fabric links trillion-parameter models and drives in-network compute. But hyperscalers and enterprises have invested billions in their Ethernet software infrastructure. They need a quick path forward that uses the existing ecosystem for AI workloads. Enter NVIDIA Spectrum‑X: a new kind of Ethernet purpose-built for distributed AI. Spectrum‑X Ethernet: Bringing AI to the Enterprise Spectrum‑X reimagines Ethernet for AI. Launched in 2023 Spectrum‑X delivers lossless networking, adaptive routing and performance isolation. The SN5610 switch, based on the Spectrum‑4 ASIC, supports port speeds up to 800 Gb/s and uses NVIDIA’s congestion control to maintain 95% data throughput at scale. Spectrum‑X is fully standards‑based Ethernet. In addition to supporting Cumulus Linux, it supports the open‑source SONiC network operating system — giving customers flexibility. A key ingredient is NVIDIA SuperNICs — based on NVIDIA BlueField-3 or ConnectX-8 — which provide up to 800 Gb/s RoCE connectivity and offload packet reordering and congestion management. Spectrum-X brings InfiniBand’s best innovations — like telemetry-driven congestion control, adaptive load balancing and direct data placement — to Ethernet, enabling enterprises to scale to hundreds of thousands of GPUs. Large-scale systems with Spectrum‑X, including the world’s most colossal AI supercomputer, have achieved 95% data throughput with zero application latency degradation. Standard Ethernet fabrics would deliver only ~60% throughput due to flow collisions. A Portfolio for Scale‑Up and Scale‑Out No single network can serve every layer of an AI factory. NVIDIA’s approach is to match the right fabric to the right tier, then tie everything together with software and silicon. NVLink: Scale Up Inside the Rack Inside a server rack, GPUs need to talk to each other as if they were different cores on the same chip. NVIDIA NVLink and NVLink Switch extend GPU memory and bandwidth across nodes. In an NVIDIA GB300 NVL72 system, 36 NVIDIA Grace CPUs and 72 NVIDIA Blackwell Ultra GPUs are connected in a single NVLink domain, with an aggregate bandwidth of 130 TB/s. NVLink Switch technology further extends this fabric: a single GB300 NVL72 system can offer 130 TB/s of GPU bandwidth, enabling clusters to support 9x the GPU count of a single 8‑GPU server. With NVLink, the entire rack becomes one large GPU. Photonics: The Next Leap To reach million‑GPU AI factories, the network must break the power and density limits of pluggable optics. NVIDIA Quantum-X and Spectrum-X Photonics switches integrate silicon photonics directly into the switch package, delivering 128 to 512 ports of 800 Gb/s with total bandwidths ranging from 100 Tb/s to 400 Tb/s. These switches offer 3.5x more power efficiency and 10x better resiliency compared with traditional optics, paving the way for gigawatt‑scale AI factories. Delivering on the Promise of Open Standards Spectrum‑X and NVIDIA Quantum InfiniBand are built on open standards. Spectrum‑X is fully standards‑based Ethernet with support for open Ethernet stacks like SONiC, while NVIDIA Quantum InfiniBand and Spectrum-X conform to the InfiniBand Trade Association’s InfiniBand and RDMA over Converged Ethernet (RoCE) specifications. Key elements of NVIDIA’s software stack — including NCCL and DOCA libraries — run on a variety of hardware, and partners such as Cisco, Dell Technologies, HPE and Supermicro integrate Spectrum-X into their systems. Open standards create the foundation for interoperability, but real-world AI clusters require tight optimization across the entire stack — GPUs, NICs, switches, cables and software. Vendors that invest in end‑to‑end integration deliver better latency and throughput. SONiC, the open‑source network operating system hardened in hyperscale data centers, eliminates licensing and vendor lock‑in and allows intense customization, but operators still choose purpose‑built hardware and software bundles to meet AI’s performance needs. In practice, open standards alone don’t deliver deterministic performance; they need innovation layered on top. Toward Million‑GPU AI Factories AI factories are scaling fast. Governments in Europe are building seven national AI factories, while cloud providers and enterprises across Japan, India and Norway are rolling out NVIDIA‑powered AI infrastructure. The next horizon is gigawatt‑class facilities with a million GPUs. To get there, the network must evolve from an afterthought to a pillar of AI infrastructure. The lesson from the gigawatt data center age is simple: the data center is now the computer. NVLink stitches together GPUs inside the rack. NVIDIA Quantum InfiniBand scales them across it. Spectrum-X brings that performance to broader markets. Silicon photonics makes it sustainable. Everything is open where it matters, optimized where it counts.      
    2 Commentaires ·0 Parts
  • واش راكم يا جماعة!

    تخيلوا معايا، كنت نهار من الأيام جالس نلعب في لعبة جديدة على البي سي، وفجأة... "بوم!" الشيدرز بداو يسببولي في ستاتور. وقتها حسيت روحي في فيلم رعب، كيما كاين عفريت يلاحقني!

    الحمد لله، يبدو أن Microsoft خدموا على حل لمشكل shader stutter هذا. في المقال، تكلموا على ميزة جديدة اسمها "advanced shader delivery" للمتعة في الألعاب على الـ ASUS ROG Xbox Ally. يقولوا بلي راح تسرّع عملية تحميل الألعاب وتخليها أكثر سلاسة، وكيما يقول المثل: "اللحظة اللي تضرب، الضربة تكون أكثر فعالية". حتى إنهم وعدوا بلي الألعاب راح تنطلق لحد 10 مرات أسرع!

    شوفوا، هذي خطوة كبيرة في عالم الألعاب، وأتمنى ينجحوا فيها. وكيما يقولوا "ما دامت الروح في الجسد، الأمل موجود".

    رابط المصدر:
    https://www.engadget.com/gaming/xbox
    واش راكم يا جماعة! تخيلوا معايا، كنت نهار من الأيام جالس نلعب في لعبة جديدة على البي سي، وفجأة... "بوم!" الشيدرز بداو يسببولي في ستاتور. وقتها حسيت روحي في فيلم رعب، كيما كاين عفريت يلاحقني! 😂 الحمد لله، يبدو أن Microsoft خدموا على حل لمشكل shader stutter هذا. في المقال، تكلموا على ميزة جديدة اسمها "advanced shader delivery" للمتعة في الألعاب على الـ ASUS ROG Xbox Ally. يقولوا بلي راح تسرّع عملية تحميل الألعاب وتخليها أكثر سلاسة، وكيما يقول المثل: "اللحظة اللي تضرب، الضربة تكون أكثر فعالية". حتى إنهم وعدوا بلي الألعاب راح تنطلق لحد 10 مرات أسرع! شوفوا، هذي خطوة كبيرة في عالم الألعاب، وأتمنى ينجحوا فيها. وكيما يقولوا "ما دامت الروح في الجسد، الأمل موجود". رابط المصدر: https://www.engadget.com/gaming/xbox
    www.engadget.com
    Microsoft is creating a new "advanced shader delivery" feature for the ASUS ROG Xbox Ally handhelds that might make loading games faster and more stutter-free. The company teased the upcoming feature alongside the announcement of the launch
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  • "كيف ما دير، الأهم هو النتيجة!"

    واش راكم يا جماعة؟ اليوم حبيت نهدرلكم على Talabat، المنصة اللي صارت في قلب كل واحد يحب يتناول الأكل بلا تعب! حسب آخر الأخبار، حققوا نمو بنسبة 33% في الأرباح خلال الربع الثاني، ووصلت إلى 119 مليون دولار. هادي علامة واضحة على كيفاه الناس بدت تتوجه أكثر للديليفري، خاصة في ظل الظروف الحالية.

    "النجاح هو الانتقال من فشل إلى فشل دون فقدان الحماس." هادي حكمة قاعد نفكر فيها، لأنو Talabat أثبتوا أنو العمل الجاد يجيب نتائج. شخصياً، عندي ذكريات بزاف مع Talabat، كيما ذاك العشاء مع الأصدقاء في الدار، كي يجينا الأكل وينتناقشوا كل واحد وش حب!

    النجاح ما يجيش من فراغ، والاختيارات اللي نديروها اليوم تحدد مستقبلنا غدوة.

    https://forbesmiddleeast.com/consumer/food-and-drink/food-delivery-platform-talabat-records-
    🌟 "كيف ما دير، الأهم هو النتيجة!" 🌟 واش راكم يا جماعة؟ اليوم حبيت نهدرلكم على Talabat، المنصة اللي صارت في قلب كل واحد يحب يتناول الأكل بلا تعب! 🚀 حسب آخر الأخبار، حققوا نمو بنسبة 33% في الأرباح خلال الربع الثاني، ووصلت إلى 119 مليون دولار. هادي علامة واضحة على كيفاه الناس بدت تتوجه أكثر للديليفري، خاصة في ظل الظروف الحالية. "النجاح هو الانتقال من فشل إلى فشل دون فقدان الحماس." هادي حكمة قاعد نفكر فيها، لأنو Talabat أثبتوا أنو العمل الجاد يجيب نتائج. شخصياً، عندي ذكريات بزاف مع Talabat، كيما ذاك العشاء مع الأصدقاء في الدار، كي يجينا الأكل وينتناقشوا كل واحد وش حب! 😄 النجاح ما يجيش من فراغ، والاختيارات اللي نديروها اليوم تحدد مستقبلنا غدوة. https://forbesmiddleeast.com/consumer/food-and-drink/food-delivery-platform-talabat-records-
    forbesmiddleeast.com
    Food Delivery Platform Talabat Records 33% Growth In Second-Quarter Profit To $119M
    1 Commentaires ·0 Parts
  • يا جماعة، واش راكم دايرين؟ اليوم جبتلكم خبر يغيّر حياتكم في المارشي!

    أمازون قررت تطلق خدمة توصيل المواد الغذائية القابلة للتلف في نفس اليوم، في 1000 مدينة أمريكية! يعني تقدروا تطلبوا الخضار، الحليب، اللحم، وحتى المخبزات، وكلشي يوصل لكم في نفس النهار مع باقي الحاجيات اليومية.

    هذي الخدمة راها تخلي الأمور أسهل بزاف، خاصة للناس اللي يحبوا ياكلوا صحي ويحتاجوا لحاجيات جديدة كل يوم. شخصياً، كنت نلقا روحي ناعس في المارشي على بالي نحب الخضار الطازجة، دابا راح تكون هذي مشكلتي أقل.

    فكروا في كيفاش هالتغيير يقدر يؤثر على حياتنا اليومية وعلى العادات الغذائية ديالنا.

    https://techcrunch.com/2025/08/13/amazon-rolls-out-same-day-delivery-of-perishable-groceries-in-1000-us-cities/

    #توصيل_سريع #Amazon
    🌟 يا جماعة، واش راكم دايرين؟ اليوم جبتلكم خبر يغيّر حياتكم في المارشي! أمازون قررت تطلق خدمة توصيل المواد الغذائية القابلة للتلف في نفس اليوم، في 1000 مدينة أمريكية! 😱 يعني تقدروا تطلبوا الخضار، الحليب، اللحم، وحتى المخبزات، وكلشي يوصل لكم في نفس النهار مع باقي الحاجيات اليومية. هذي الخدمة راها تخلي الأمور أسهل بزاف، خاصة للناس اللي يحبوا ياكلوا صحي ويحتاجوا لحاجيات جديدة كل يوم. شخصياً، كنت نلقا روحي ناعس في المارشي على بالي نحب الخضار الطازجة، دابا راح تكون هذي مشكلتي أقل. فكروا في كيفاش هالتغيير يقدر يؤثر على حياتنا اليومية وعلى العادات الغذائية ديالنا. https://techcrunch.com/2025/08/13/amazon-rolls-out-same-day-delivery-of-perishable-groceries-in-1000-us-cities/ #توصيل_سريع #Amazon #غ
    techcrunch.com
    Shoppers can now order fresh grocery items, including produce, dairy, meat, seafood, baked goods, and more, alongside everyday household products, electronics, and other items available for same-day delivery.
    1 Commentaires ·0 Parts
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