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See all 204 →Activities & events
| Title & Speakers | Event |
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Google Map Software Architecture
2025-12-13 · 12:00
Learn How Google Map Scales to Millions of users across the globe, how is Google Map reliable. How does Google Map able to tell you the distance and time between two locations? When you’re travelling in your vehicle and the traffic situation changes how does Google Map able to tune and inform you the traffic situation has changed and takes more time to reach your destination, etc Network with other like-minded people in the community. Note: the objective of this session is to teach how the MAP works and your able to reach your destination using Maps. We are using Google Map in the Subject since people can easily relate to Google Map. Ignore the term Google Here. Join Software Architecture WhatsApp group if you’re from Software Industry for Free Training, Paid Training, Technical Updates and Job Search, Click link below to join: https://chat.whatsapp.com/FD3rKUxig0JBS2ekdxhkLv?mode=ems_copy_t Free Video on what does it take to become a real Industry level Software Architect (higher than a product level architect), You can view the short video of the Syllabus of the Software Architecture or System Design at the below link and the importance of being a Strong Software Architects (click on link below): - https://www.youtube.com/watch?v=j--SnqSrltg Join in the below link (copy paste to the browser) https://meet.google.com/ibz-chtw-ikk Join our Instagram Page:- https://www.instagram.com/accounts/onetap/?next=%2F Note: the objective of this session is to teach how the MAP works and your able to reach your destination using Maps. We are using Google Map in the Subject and other places since people can easily relate to Google Map. Ingore the term Google. |
Google Map Software Architecture
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Google Map Software Architecture
2025-11-22 · 12:00
Learn How Google Map Scales to Millions of users across the globe, how is Google Map reliable. How does Google Map able to tell you the distance and time between two locations? When you’re travelling in your vehicle and the traffic situation changes how does Google Map able to tune and inform you the traffic situation has changed and takes more time to reach your destination, etc Network with other like-minded people in the community. Note: the objective of this session is to teach how the MAP works and your able to reach your destination using Maps. We are using Google Map in the Subject since people can easily relate to Google Map. Ignore the term Google Here. Join Software Architecture WhatsApp group if you’re from Software Industry for Free Training, Paid Training, Technical Updates and Job Search, Click link below to join: https://chat.whatsapp.com/FD3rKUxig0JBS2ekdxhkLv?mode=ems_copy_t Free Video on what does it take to become a real Industry level Software Architect (higher than a product level architect), You can view the short video of the Syllabus of the Software Architecture or System Design at the below link and the importance of being a Strong Software Architects (click on link below): - https://www.youtube.com/watch?v=j--SnqSrltg Join in the below link (copy paste to the browser) https://meet.google.com/ibz-chtw-ikk Join our Instagram Page:- https://www.instagram.com/accounts/onetap/?next=%2F Note: the objective of this session is to teach how the MAP works and your able to reach your destination using Maps. We are using Google Map in the Subject and other places since people can easily relate to Google Map. Ingore the term Google. |
Google Map Software Architecture
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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Nov 21 - Best of ICCV (Day 3)
2025-11-21 · 17:00
Welcome to the Best of ICCV series, your virtual pass to some of the groundbreaking research, insights, and innovations that defined this year’s conference. Live streaming from the authors to you. Date, Time and Location Nov 21, 2025 9 AM Pacific Online. Register for the Zoom! GECO: Geometrically Consistent Embedding with Lightspeed Inference Recent advances in feature learning have shown that self-supervised vision foundation models can capture semantic correspondences but often lack awareness of underlying 3D geometry. GECO addresses this gap by producing geometrically coherent features that semantically distinguish parts based on geometry (e.g., left/right eyes, front/back legs). We propose a training framework based on optimal transport, enabling supervision beyond keypoints, even under occlusions and disocclusions. With a lightweight architecture, GECO runs at 30 fps, 98.2% faster than prior methods, while achieving state-of-the-art performance on PFPascal, APK, and CUB, improving PCK by 6.0%, 6.2%, and 4.1%, respectively. Finally, we show that PCK alone is insufficient to capture geometric quality and introduce new metrics and insights for more geometry-aware feature learning About the Speaker Regine Hartwig is a PHD Graduate Student at the Technical University of Munich Proactive Comorbidity Prediction in HIV: Towards Fair and Trustworthy Care HIV is a chronic infection that weakens the immune system and exposes patients to a high burden of comorbidities. While antiretroviral therapy has improved life expectancy, comorbidities remain a major challenge, and traditional screening protocols often fail to capture subtle risk patterns early enough. To address this, we develop a novel method trained on lab tests and demographic data from 2,200 patients in SE London. The method integrates feature interaction modeling, attention mechanisms, residual fusion and label-specific attention heads, outperforming TabNet, MLPs and classical machine learning models. Our experiments show that incorporating demographic information improves predictive performance, though demographic recoverability analyses reveal that age and gender can still be inferred from lab data alone, raising fairness concerns. Finally, robustness checks confirm stable feature importance across cross-validation folds, reinforcing the trustworthiness of our approach. About the Speaker Dimitrios Kollias is an Associate Professor in Multimodal AI at Queen Mary University of London, specializing in machine/deep learning, trustworthy AI, computer vision, medical imaging & healthcare, behavior analysis, HMI. I have published 80+ papers (h-index 39; 6100+ citations) in top venues (e.g., CVPR, ICCV, ECCV, AAAI, IJCV, ECAI), invented a patent in behavior analysis (Huawei) and my research is widely adopted by academia and industry. I also serve as AI consultant and advisor to global companies, and have played leading roles in major international AI workshops and competitions. Toward Trustworthy Embodied Agents: From Individuals to Teams Modern intelligent embodied agents, such as service robots and autonomous vehicles, interact frequently with humans in dynamic, uncertain environments. They may also collaborate with each other as a team through effective communication to enhance task success, safety, and efficiency. These brings a few significant challenges. First, building reliable agents that safely navigate multi-agent scenarios requires scalable and generalizable prediction of surrounding agents’ behaviors and robust decision making under environmental uncertainty in out-of-distribution (OOD) scenarios. Second, effective cooperation between agents requires efficient communication and information fusion strategies and reliable task planning for complex long-horizon tasks. In this talk, I will introduce a series of our recent work that addresses these challenges to enable safe and trustworthy embodied agents and their application to autonomous driving and service robots. Specifically, I will first demonstrate principled uncertainty quantification techniques and how they enable generalizable prediction and planning in out-of-distribution scenarios. Then, I will talk about effective approaches to enable efficient multi-agent communication and cooperation in centralized and decentralized settings. About the Speaker Dr. Jiachen Li is an Assistant Professor in the Department of Electrical and Computer Engineering (ECE) and a cooperating faculty in the Department of Computer Science and Engineering (CSE) at the University of California, Riverside. He is the Director of the Trustworthy Autonomous Systems Laboratory and is affiliated with the Riverside Artificial Intelligence Research Institute (RAISE), the Center for Robotics and Intelligent Systems (CRIS), and the Center for Environmental Research and Technology (CE-CERT). DRaM-LHM: A Quaternion Framework for Iterative Camera Pose Estimation We explore a quaternion adjugate matrix-based representation for rotational motion in the Perspective-n-Point (PnP) problem. Leveraging quadratic quaternion terms within a Determinant Ratio Matrix (DRaM) estimation framework, we extend its application to perspective scenarios, providing a robust and efficient initialization for iterative PnP pose estimation. Notably, by solving the orthographic projection least-squares problem, DRaM provides a reliable initialization that enhances the accuracy and stability of iterative PnP solvers. Experiments on synthetic and real data demonstrate its efficiency, accuracy, and robustness, particularly under high noise conditions. Furthermore, our nonminimal formulation ensures numerical stability, making it effective for real-world applications. About the Speaker Chen Lin was a Research Fellow at the Simons Foundation, where she specialized in 3D computer vision and visual(-inertial) SLAM. Her research spans from classical multiview geometry to learning-based pose estimation and scene understanding. Her ICCV 2025 paper introduces a new framework for rotation and pose estimation built on advanced algebraic paradigms. |
Nov 21 - Best of ICCV (Day 3)
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#313 Developing Better Predictive Models with Graph Transformers with Jure Leskovec, Pioneer of Graph Transformers, Professor at Stanford
2025-08-04 · 10:00
Jure Leskovec
– Professor of Computer Science
@ Stanford University
,
Richie
– host
@ DataCamp
The structured data that powers business decisions is more complex than the sequences processed by traditional AI models. Enterprise databases with their interconnected tables of customers, products, and transactions form intricate graphs that contain valuable predictive signals. But how can we effectively extract insights from these complex relationships without extensive manual feature engineering? Graph transformers are revolutionizing this space by treating databases as networks and learning directly from raw data. What if you could build models in hours instead of months while achieving better accuracy? How might this technology change the role of data scientists, allowing them to focus on business impact rather than data preparation? Could this be the missing piece that brings the AI revolution to predictive modeling? Jure Leskovec is a Professor of Computer Science at Stanford University, where he is affiliated with the Stanford AI Lab, the Machine Learning Group, and the Center for Research on Foundation Models. Previously, he served as Chief Scientist at Pinterest and held a research role at the Chan Zuckerberg Biohub. He is also a co-founder of Kumo.AI, a machine learning startup. Leskovec has contributed significantly to the development of Graph Neural Networks and co-authored PyG, a widely-used library in the field. Research from his lab has supported public health efforts during the COVID-19 pandemic and informed product development at companies including Facebook, Pinterest, Uber, YouTube, and Amazon. His work has received several recognitions, including the Microsoft Research Faculty Fellowship (2011), the Okawa Research Award (2012), the Alfred P. Sloan Fellowship (2012), the Lagrange Prize (2015), and the ICDM Research Contributions Award (2019). His research spans social networks, machine learning, data mining, and computational biomedicine, with a focus on drug discovery. He has received 12 best paper awards and five 10-year Test of Time awards at leading academic conferences. In the episode, Richie and Jure explore the need for a foundation model for enterprise data, the limitations of current AI models in predictive tasks, the potential of graph transformers for business data, and the transformative impact of relational foundation models on machine learning workflows, and much more. Links Mentioned in the Show: Jure’s PublicationsKumo AIConnect with JureCourse - Transformer Models with PyTorchRelated Episode: High Performance Generative AI Applications with Ram Sriharsha, CTO at PineconeRewatch RADAR AI New to DataCamp? Learn on the go using the DataCamp mobile appEmpower your business with world-class data and AI skills with DataCamp for business |
DataFramed |
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Era dos Agentes de IA: Impulsionar a Inovação e Expandir o Potencial Humano
2025-06-25 · 18:00
A Inteligência Artificial já não se limita a algoritmos que processam dados; estamos a entrar na era dos Agentes de IA—entidades digitais inteligentes que atuam, raciocinam e colaboram para resolver desafios complexos. Estes agentes estão a transformar indústrias, a aumentar a produtividade e a desbloquear possibilidades criativas que nunca imaginámos. Nesta sessão, vamos explorar como os Agentes de IA estão a moldar o futuro, desde a tomada de decisões autónoma até interações fluídas entre humanos e máquinas. Iremos aprofundar aplicações práticas, considerações éticas e as vastas oportunidades que oferecem a todos os setores—seja nos negócios, na saúde ou nas artes. Mais importante ainda, vamos questionar o status quo: Como podemos aproveitar os Agentes de IA para amplificar a engenhosidade humana, em vez de a substituir? O que significa desenvolver sistemas de IA responsáveis e impactantes que potenciem, em vez de limitarem, as nossas capacidades? Participa nesta sessão envolvente e descobre como os Agentes de IA irão liderar um futuro colaborativo, onde a tecnologia se tornará uma verdadeira parceira na criação de um mundo de possibilidades ilimitadas. |
PortoDATA#103 - A Era dos Agentes de IA - Expandir o Potencial Humano
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AI Frontiers Forum - Advertising, Marketing & Creative Agencies
2024-04-30 · 09:30
Event Description: Welcome to the AI Frontiers Forum: London, a distinguished event where the cutting-edge of artificial intelligence meets practical implementation. This forum is meticulously crafted for industry leaders eager to bridge the gap between aspirational AI objectives and their real-world application. Agenda 11:00 - 11:30 - Navigating the AI Transformation Journey: A Roadmap for Leaders in Marketing, Sales, and Customer Service by Dr Anandhi Vivek Dhukaram PhD MBA 11:30 - 12:00 - Customer Journey Mapping for AI Products by Andrew Cheung 12:00 - 12:30 - The Role of NLP in Personalizing Customer Experiences Across Marketing, Sales, and Service by Angel Brown 12:30 - 13:00 - How to build RAG for Conversational AI Chatbots by Jason Frank 14:00 - 14:30 - AI Avatars Influencers and the Revolution in Targeted Advertising by Franki Tabor 14:30 - 15:00 - Automating AI Tools for Marketing Tasks by Kayla Lafi 15:00 - 15:30 - Smart SEO: Integrating AI for Enhanced Web Visibility. by Eldad Sotnick-Yogev 15:30 - 15:45 - ML-powered search engines by Yassine Lahna 15:45 - 16:15 - AI as a Catalyst for Entrepreneurial Marketing: Leveraging AI Assistants to Build Successful Ventures by Surya Varatharajan Why Attend? The AI Frontiers Forum: London is more than a gathering; it's a convergence of pioneering ideas, actionable solutions, and expert-led discussions. Our event features a series of insightful talks and panel discussions helmed by renowned thought leaders in AI. Topics Key topics include:
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AI Frontiers Forum - Advertising, Marketing & Creative Agencies
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Kaiser Fung: Exploring advanced histograms
2024-03-14 · 21:45
Abstract: The histogram is a fundamental statistical chart. The simplest histogram is easy to make and interpret. More advanced variations of the histogram pose surprising challenges. I will cover insights from my recent exploration of varying-width histograms, which revealed gaps in my own understanding of this deceptively simple chart form. Bio: Kaiser is the creator of Junk Charts, a leading blog on data visualization, as well as the author of two bestsellers on statistical thinking, Numbers Rule Your World and Numbersense. His commentary on statistics and data visualization has been featured in Harvard Business Review, The Daily Beast, American Scientist, Wired, FiveThirtyEight, Slate, Financial Times, and CNN. He was the founding director of the Master of Science in Applied Analytics at Columbia University. He leads the data science team at VERSES, a cognitive computing startup. This event will be hosted at the Datadog NYC office (45th floor), with refreshments provided. Doors open at 5:45. Attendees are asked to respect the meetup's Code of Conduct. |
Kaiser Fung: Exploring advanced histograms
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Le Wagon x Ignition Program - Le recrutement dans la Tech en 2024
2024-02-01 · 11:30
✨ INSCRIPTION OBLIGATOIRE SUR LIVESTORM: [ICI] Job boards, cabinets de recrutement, processus d’entretiens, IA, technologies et nouveaux métiers recherchés... Le recrutement dans la Tech est en plein renouveau et se réinvente continuellement pour répondre aux exigences d’un secteur en pleine effervescence. Lors de ce webinaire du Jeudi 1er Février 2024 à 12h30, nous explorerons avec Ignition Program, agence de recrutement et d’accompagnement RH, les dynamiques actuelles du recrutement dans le secteur Tech pour vous aider à y voir plus clair, vous préparer et répondre efficacement à toutes ces évolutions. Au programme, les thèmes suivants : ✨ L’évolution des processus de recrutement ✨ Les tendances émergentes dans le recrutement Tech ✨ Les sujets de diversité et d’inclusion dans le secteur =>Vous découvrirez les métiers les plus recherchés, les fourchettes de salaire associées, le type d’entreprises qui recrutent, les innovations dans les pratiques de recrutement, et en quoi celles-ci favorisent une expérience candidat devenue capitale. Le webinaire mettra en lumière les défis et opportunités du domaine, du double point de vue du candidat et du recruteur. Caroline Pailloux et Marguerite Lafont sont respectivement CEO et Recruteuse Tech chez Ignition Program, cabinet de recrutement qui fête son dixième anniversaire et dont la croissance s’est construite sur le marché des startups. Elles vous donneront leurs conseils pour s’insérer et recruter sur un marché Tech en pleine mutation, tant technologique que managériale. Elles reviendront sur la méthode Ignition Program, qui met la connaissance candidat et la relation managériale au coeur d’une réflexion durable sur le recrutement. ------ Co-fondée en 2013 par Caroline Pailloux et Lucas Servant, Ignition Program accompagne les talents et les entreprises dans des projets professionnels utiles, à travers le recrutement, la formation, et des outils-ressources RH. Né de l’envie de bâtir un monde du travail à visage humain basé sur l’authenticité, l’apprentissage et la confiance, Ignition Program aide chaque talent à développer librement son potentiel et à s’épanouir dans son travail. Pour les entreprises, Ignition Program propose des clés de transformation RH en leur permettant de recruter efficacement des talents à la recherche de sens et d’impact, et en formant leurs équipes pour une croissance durable et sereine. À propos du Wagon Le Wagon est un des leaders mondiaux des formations intensives en Développement Web, Data et No-code. Depuis 2013, Le Wagon forme des professionnels en quête d’évolution, des esprits créatifs ou encore des entrepreneurs aux métiers de la Tech. À temps plein ou à temps partiel, sur l’un de nos 40 campus dans le monde ou en ligne, nos professeurs passionnés enseignent à nos étudiants les compétences les plus recherchées par les entreprises à travers une pédagogie basée sur la pratique. Rendez-vous sur lewagon.com pour accélérer votre carrière et rejoindre une communauté internationale de plus de 22 000 personnes ! |
Le Wagon x Ignition Program - Le recrutement dans la Tech en 2024
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Chris Grimm, Google
2023-11-11 · 16:50
Talk by Chris Grimm from Google. |
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Ume Habiba, Kode with Klossy
2023-11-11 · 16:40
Ume Habiba
– Instructor
@ Kode with Klossy
Talk by Ume Habiba from Kode with Klossy. |
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Roya Kandalan, Aware, Inc
2023-11-11 · 16:20
Roya Kandalan
– Senior Research Scientist
@ Aware, Inc.
Talk by Roya Kandalan from Aware, Inc. |
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Madd Madeleine Shang, OpenMined
2023-11-11 · 15:20
Madeleine Shang
– Sr. ML / Research Engineer
@ OpenMined
Talk by Madelein e Shang from OpenMined. |
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Josh Alphonse, ByteDance
2023-11-11 · 15:00
Talk by Josh Alphonse from ByteDance. |
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AI/ML Track
2023-11-11 · 14:00
Learn about the latest trends and developments in AI and ML from leading experts in the field. |
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