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Field
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of PD-1 and other coinhibitory pathways in immune responses and particularly on therapeutic synergies of coinhibitory blockade for anti-tumor immunity. A background in immunology and mouse tumor models is
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the omic studies. The desired skill set is split between dry lab (bioinformatics) and wet lab (basic science/animal models). Additionally, the individual will be required to design and perform experiments
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Falls Posting Context Statement Position Overview Lead research projects focusing on developing and optimizing network protocols for power systems. Explore innovative applications of AI in modeling and
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digital elevation model (DEM). Experience in using landscape evolution, flow routing, sediment transport, or hydrological models. Experience with drone survey and data processing. Field experience in
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internationally known, unique facilities. This team has developed state-of-the-art experimental and computational models for solving water resource problems worldwide. CHL research and development addresses water
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or microworlds, conduct laboratory studies, and construct computational cognitive models including paradigms in Cognitive Science (Instance-Based Learning models) or AI (Reinforcement Learning). The fellow will
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framework. This includes developing the sensors, sensing robotic platform, environmental prediction model, and visualization tool as needed. The tasks will also include field experiments to test the
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modeling, experimental testing, and validation. AFIT is pursing cutting edge research in these areas with a variety of academic, government, and national laboratory partners. Appointment activities may
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to computational modeling, simulations, and advanced data analytics for scientific discovery in materials science, biology, astronomy, environmental science, energy, particle physics, genomics, and other scientific
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, machine learning or AI to computational modeling, simulations, and advanced data analytics for scientific discovery in materials science, biology, astronomy, environmental science, energy, particle physics