PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 1 mois
Deep Neural Networks (DNNs) are widely used in machine learning applications, but they are prone to hardware faults that can impact their accuracy and reliability. The goal of this PhD thesis is to design and develop an optimized algorithm-level fault injection framework to assess the resiliency of DNN hardware accelerators to hardware faults, and to design selective fault-tolerance approaches for DNN hardware accelerators.
Key ActivitiesThe PhD student will design and develop a methodology to perform large-scale fault analysis on state-of-the-art DNN hardware architectures. The fault analysis will determine the set of malignant hardware faults that mostly impact the accuracy of classification during the inference phase. The student will also design and develop an optimized accelerated fault injector framework, enabling large-scale fault simulations. The framework will allow performing several reliability assessments, such as training a faulty network to find the fault density beyond which the learning capacity starts degrading, and performing inference on a faulty network to identify the set of malignant faults.
Required SkillsThe candidate must have a good knowledge of computer architectures and embedded systems, as well as basic programming knowledge (C/C++, Python). Experience with High Level Synthesis (HLS) and fault-tolerant architectures is a plus. The candidate must also have a Master's degree in Computer Science, Computer Engineering, or Electrical Engineering, and proficiency in written English and fluency in spoken English or French.
AdvantagesThe PhD student will benefit from a monthly gross salary amounting to 2000 euros for the first and second years and 2100 euros for the third year. The student will also have access to subsidized meals, partial reimbursement of public transport costs, and the possibility of teleworking (90 days per year) and flexible organization of working hours.
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Rennes, Bretagne, France INRIA Temps pleinContext and benefits of the positionThe successful candidate will be part of a research team focused on designing and developing reliable hardware accelerators for deep neural networks. The goal of this PhD project is to investigate the impact of hardware faults on the accuracy of DNNs and to propose novel fault-tolerant architectures.Key...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 1 semaine
Rennes, Bretagne, France INRIA Temps pleinResearch Position in Fault-Tolerant Deep Neural NetworksAs part of our research team at INRIA, we are seeking a highly motivated PhD student to work on the design and development of fault-tolerant deep neural networks. The goal of this project is to investigate the impact of hardware faults on the reliability of deep neural networks and to develop novel...
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionINRIA is seeking a highly motivated PhD researcher to work on a project focused on designing and developing fault-tolerant deep learning architectures for hardware-accelerated artificial intelligence systems.Context and ObjectivesDeep neural networks (DNNs) are widely used in various applications, including image recognition, natural language...
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Rennes, Bretagne, France INRIA Temps pleinContext and ObjectivesDeep Neural Networks (DNNs) are widely used in machine learning applications, but they are prone to hardware faults that can impact their accuracy and reliability. This PhD position aims to design and develop an optimized algorithm-level fault injection framework to assess the resiliency of DNN hardware accelerators to hardware faults,...
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Reliable Deep Neural Network Hardware Accelerators PhD Position
il y a 4 semaines
Rennes, Bretagne, France INRIA Temps pleinJob DescriptionResearch ContextINRIA is seeking a highly motivated PhD student to work on a research project focused on designing and developing optimized algorithms for fault-tolerant deep neural network hardware accelerators. The goal of this project is to improve the reliability of AI hardware platforms, particularly in safety-critical applications such...
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionContext and ObjectivesWe are seeking a highly motivated PhD student to join our research team at INRIA. The goal of this PhD project is to design and develop an optimized algorithm-level fault injection framework to assess the resiliency of Deep Neural Network (DNN) hardware accelerators to hardware faults. This framework will enable the...
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Rennes, Bretagne, France INRIA Temps pleinContext and ObjectivesDeep Neural Networks (DNNs) are widely used predictive models in machine learning, but they require significant energy and resources. To address this, custom Artificial Intelligence (AI) hardware accelerators are being designed to support DNNs. However, these accelerators are prone to hardware faults (HW faults) that can cause...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 2 semaines
Rennes, Bretagne, France INRIA Temps pleinContext and ObjectivesDeep Neural Networks (DNNs) are widely used predictive models in machine learning, offering excellent results for complex tasks and applications. However, their energy-hungry data movement, computation speed, and memory resources require custom Artificial Intelligence (AI) hardware accelerators. To address data confidentiality issues...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 4 semaines
Rennes, Bretagne, France INRIA Temps pleinContext and ObjectivesDeep Neural Networks (DNNs) have become a crucial component in various applications, including object recognition, natural language processing, and robotics. However, DNNs are prone to hardware faults, which can lead to operational failures and detrimental effects on the application. Ensuring the reliability of DNN hardware accelerators...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 4 semaines
Rennes, Bretagne, France INRIA Temps pleinContext and ObjectivesDeep Neural Networks (DNNs) have become a crucial component in various applications, including object recognition, natural language processing, and robotics. However, DNNs are prone to hardware faults, which can lead to operational failures and detrimental effects on the application. Ensuring the reliability of DNN hardware accelerators...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 2 semaines
Rennes, Bretagne, France INRIA Temps pleinContext and BackgroundDeep Neural Networks (DNNs) are widely used predictive models in machine learning, offering excellent results for complex tasks and applications. However, their energy-hungry data movement, computation speed, and memory resources require custom Artificial Intelligence (AI) hardware accelerators to realize their full potential. The...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 3 semaines
Rennes, Bretagne, France INRIA Temps pleinJob DescriptionINRIA is seeking a highly motivated PhD researcher to work on a project focused on designing and developing fault-tolerant deep learning architectures for hardware-accelerated artificial intelligence systems.Context and ObjectivesThe goal of this project is to investigate the impact of hardware faults on deep neural networks (DNNs) and to...
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Rennes, Bretagne, France INRIA Temps pleinJob Context and RequirementsWe are seeking a highly motivated PhD researcher to join our team at INRIA and contribute to the development of fault-tolerant deep learning hardware. The successful candidate will have the opportunity to work on a cutting-edge research project that aims to design and develop an optimized algorithm-level fault injection framework...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 1 semaine
Rennes, Bretagne, France INRIA Temps pleinContext and BackgroundDeep Neural Networks (DNNs) are currently one of the most intensively and widely used predictive models in the field of machine learning. DNNs have proven to give very good results for many complex tasks and applications, such as object recognition in images/videos, natural language processing, satellite image recognition, robotics,...
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PhD Position F/M Reliable Deep Neural Network Hardware Accelerators
il y a 1 semaine
Rennes, Bretagne, France INRIA Temps pleinContext and ObjectivesThe goal of this PhD thesis is to design and develop an optimized algorithm-level fault injection framework to assess the resilience of DNN hardware accelerators to hardware faults. This framework will enable the application of low-cost selective fault-tolerance strategies.Main ActivitiesThe PhD student will design and develop a...
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionINRIA is seeking a highly motivated PhD student to work on the design and development of an optimized algorithm-level fault injection framework for assessing the resiliency of Deep Neural Network (DNN) hardware accelerators to hardware faults. The goal of this project is to enable the application of low-cost selective fault-tolerance...
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionPhD Position in Unconventional AI Accelerator Reliability EnhancementInria Rennes - Bretagne Atlantique Centre is seeking a highly motivated PhD student to work on the reliability enhancement of unconventional AI accelerators. The successful candidate will be part of a research team focused on developing innovative solutions for AI...
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionINRIA is seeking a highly motivated PhD student to join our team and contribute to the development of reliable and efficient AI accelerators.About the ProjectThe goal of this PhD project is to investigate the reliability of unconventional AI accelerators and propose novel fault mitigation techniques. The project will involve a combination of...
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionAt INRIA, we are seeking a highly motivated PhD student to join our team and contribute to the development of reliable AI accelerators.Project OverviewThe goal of this PhD project is to investigate the reliability of unconventional AI accelerators, specifically those based on PIM (Processing-In-Memory) and neuromorphic computing architectures....
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Rennes, Bretagne, France INRIA Temps pleinJob DescriptionAt INRIA, we are seeking a highly motivated PhD student to join our team and contribute to the development of reliable AI accelerators.Project OverviewThe goal of this PhD project is to investigate the reliability of unconventional AI accelerators, specifically those based on PIM (Processing-In-Memory) and neuromorphic computing architectures....