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subfield Ph.D. preferred Minimum Experience/Training: Prior college teaching experience is preferred. The successful candidate must have a high level of computer literacy and a commitment to teaching. All
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level of computer literacy and a commitment to teaching. All schedules require office hours and some may require evening and/or weekend hours. Position Time Type Part time Position Number P0053531
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and/or law enforcement or corrections training courses is preferred. The successful candidate must have a high level of computer literacy and a commitment to teaching. All schedules require office hours
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. Minimum Experience/Training: Prior college teaching experience is preferred. The successful candidate must have a high level of computer literacy and a commitment to teaching. The successful candidate must
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candidate must have a high level of computer literacy and a commitment to teaching. The successful candidate must be willing and able to teach in both the traditional face-to-face and blended (hybrid) format
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preferred. • The successful candidate must have a high level of computer literacy and a commitment to teaching. • The successful candidate must be willing and able to teach in both the traditional face-to
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http://www.archives.gov/veterans/military-service-records/ or call 1-866-272-6272. Minimum Education: Associate's degree. An equivalent combination of experience and education may be considered. Minimum
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candidate must have a high level of computer literacy and a commitment to teaching. The successful candidate must be willing and able to teach in both the traditional face-to-face and blended (hybrid) format
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. The successful candidate must have a high level of computer literacy and a commitment to teaching. The successful candidate must be willing and able to teach in Fully Online format. All schedules require office
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underprepared students achieve academic success. The successful candidate will be expected to learn to use and maintain the use of computer assisted referral software in identifying students at academic risk and