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Limited Placement Statewide Program (NY HELPS). Non-competitive (NY HELPS): One year of experience where most work time is spent performing activities related to mail receipt, mail distribution, storage
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staff. Coordinate meeting logistics including scheduling, material preparation, and agendas for MEERI and the Learning Sciences and Educational Success Program (this may include scheduling debriefing
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mailings, and completing basic office tasks. Coordinate meetings, presentations, and events. Assist with faculty searches by organizing agendas and travel arrangements. Accurately record and distribute
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at the cutting edge of systems and systems research, including but not limited to computer architecture and hardware, distribution systems and networks, edge computing, embedded systems, mobile computing, and
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algorithms and complexity theory, including in both well-established settings (e.g., sequential computation on a single machine and distributed/parallel computation on multiple machines) as well as emerging
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maintenance staff, the university would not be able to have a residential program. Key accountabilities and responsibilities Performs routine and unskilled work such as carrying supplies, equipment, erecting
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, managing AI infrastructure, and optimizing distributed model training and inference. The IAD at the University at Buffalo is a leader in advancing AI, data science, and computational research. IAD fosters
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engineering; computer vision and multimedia systems; database systems; document analysis and recognition; programming languages; high-performance computing; cybersecurity; embedded, networked and distributed
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; programming languages; high-performance computing; cybersecurity; embedded, networked and distributed systems; machine learning and artificial intelligence; connected and autonomous vehicles and sustainable
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language models (LLMs), computer vision models, speech models, time series models, and many other related machine learning models, managing AI infrastructure, and optimizing distributed model training and