73 structures-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"https:"-"LGEF" positions at Carnegie Mellon University in United States
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-on experience developing software for U.S. vendor-based PLC platforms using Structured Text (ST) programming language. This role will play a key part in designing, programming, testing, and maintaining industrial
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, design and construction process. What you’ll do Extensive experience with ground and space systems, including software acquisition, architecture, systems/software engineering, testing, and operations, with
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guidelines and strategy. Support the usage of enterprise data technologies (ie, Snowflake, Power BI, DBT). Provide technical and programming support to business partners in the construction, implementation
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, design and construction process. What you’ll do Extensive experience with ground and space systems, including software acquisition, architecture, systems/software engineering, testing, and operations, with
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clarity, structure, and delivery. Lead practical exercises including role-plays, mock interviews, networking simulations, team challenges, and real-world communication drills. Offer structured feedback
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construction areas. Work in access-restricted areas – SCIFs and server room installations. Desired Experience: Professional training and certifications in Department of War National Industrial Security Program
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of fire and life safety systems, from design and construction to maintenance and repair. This includes ensuring all work meets University standards and applicable NFPA codes. This is an exciting
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–general and specialized; minor and major rehab or major construction projects–for those areas listed above along with waste removal, landscaping, parking, CS/IT (network, WiFi, contracted Melwood Screening
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trustworthiness of ML-enabled systems. Mission-tailored language models, including techniques to improve accuracy and reliability, reduce hallucinations, and integrate structured knowledge for operational tasks
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trustworthiness of ML-enabled systems. Mission-tailored language models, including techniques to improve accuracy and reliability, reduce hallucinations, and integrate structured knowledge for operational tasks