283 parallel-and-distributed-computing-phd-"Meta"-"Meta" positions at New York University
Sort by
Refine Your Search
-
Listed
-
Category
-
Country
-
Program
-
Field
-
well as market and organization considerations. Education: Ph.D. in machine learning, computer science, engineering, science or related technical discipline. Experience: Expertise in developing and training AI
-
wireless technology, cybersecurity, urban informatics, data sciences, artificial intelligence, renewable energy, and health, among others. Our faculty and students are part of the high-tech start-up culture
-
: High School Diploma or equivalent and relevant technical training Preferred Education: Bachelor's Degree in Computer Science or related field and CCNA Certification Required Experience: 3+ years
-
to multidisciplinary centers in wireless technology, cybersecurity, urban informatics, data sciences, artificial intelligence, renewable energy, and health, among others. Our faculty and students are part of the high
-
, cybersecurity, urban informatics, data sciences, artificial intelligence, renewable energy, and health, among others. Our faculty and students are part of the high-tech start-up culture in New York City and in
-
ties to multidisciplinary centers in wireless technology, cybersecurity, urban informatics, data sciences, artificial intelligence, renewable energy, and health, among others. Our faculty and students
-
that make a difference in the world. We lead and have ties to multidisciplinary centers in wireless technology, cybersecurity, urban informatics, data sciences, artificial intelligence, renewable energy, and
-
of and demonstrated experience implementing strategies related to global inclusion, diversity, belonging, equity, and access through an intersectional lens. Extensive conversation and program facilitation
-
informatics, data sciences, artificial intelligence, renewable energy, and health, among others. Our faculty and students are part of the high-tech start-up culture in New York City and in downtown Brooklyn
-
into account tuition strategies, endowment performance and performance expectations, program income, financial-aid commitments, and borrowing activities; with approval from the Foundation’s Budget Committee