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Artificial Intelligence and Machine Learning Adjunct Instructor
Location
California + 2 moreAll locations: California | Florida | New Mexico
Posted
153 days ago
Salary
$38 - $48 / hour
Seniority
Senior
Job Description
Artificial Intelligence and Machine Learning Adjunct Instructor
CTI
• Teaching: Available to teach synchronous online courses via Microsoft Teams • Plan and organize instruction in ways that maximize student learning and engagement • Modify, where appropriate, instructional methods and strategies to meet diverse student’s needs • Employ appropriate teaching and learning strategies to communicate subject matter to students via a synchronous online format (Microsoft Teams) • Current certifications in subjects taught • Demonstrate a thorough and accurate knowledge of their field or discipline • Connect their subject matter with related fields • Stay current in their subject matter through professional development, through involvement in professional organizations, and attending professional meetings, conferences, or workshops • Ensure Student Database is fully updated and accurate at all times regarding student grade record information • Maintain compliance with accreditation related to instructional and the quality of education, scheduled class hours requirements and CIAT policies and procedures • Promote collaboration with other staff members and participate in the implementation of new projects, ideas, etc. • Adhere to the CIAT business casual attire.
Job Requirements
- Information Technology Instructors must provide official transcripts of bachelor's (or higher) degree and active/current certification on the subject being taught
- General Education Instructors must provide official transcripts of bachelor's and master's (or higher) degrees that include at least 18 units on the subject being taught
- At least three years’ experience in the respective field OR two years of teaching experience
- Advanced subject matter expertise preferred in the following areas: Python programming and data science libraries (NumPy, Pandas, Matplotlib, Scikit-learn), AI/ML fundamentals (supervised/unsupervised learning, NLP, and gen AI concepts), and familiar with Azure AI services and/or other cloud-based AI platforms (e.g. AWS, Google Cloud)
- Synchronous online teaching preferred
- Effective presentation skills
- High level of flexibility, creativity, and dependability
- Good working knowledge of MS Office applications including Microsoft Teams Word, Excel, and PowerPoint as well as learning technologies such as Canvas
- Ability to multitask
- Problem solves rapidly and effectively, in a timely manner
- Works with a sense of urgency, while engaging and listening to coworkers from other departments
- Ability to work collaboratively with colleagues, academic departments, and administration to support student success, achieve institutional goals and contribute to a positive and inclusive culture
- Commitment to fostering an inclusive and supportive learning environment that respects the diversity of students' backgrounds, experiences, and perspectives
- Knowledge of current trends, best practices, and didactic approaches in higher education
- Demonstrated ability to deliver engaging and effective lesson plans that meet the diverse needs of students
- Strong communication skills, both verbal and written, with the ability to effectively convey information and interact with students, colleagues, and others
- Compliance with all college policies, procedures, and regulations, including those related to academic integrity, student conduct, and instructional delivery
- Adhere to CIAT’s compliance requirements to ensure all Federal, State, accreditation, and institutional policies and procedures are being met.
Benefits
- Schedule - Class schedule works well even if you already have a daytime job.
- Work from Home (WFH) - Remote work must be performed while residing in California, New Mexico or Florida
- CIAT prepares students for professional success by offering practical training in today’s most competitive technology fields to make sure students are job-ready.
- With a large selection of courses, flexible schedules, and an online campus, we aim to empower the working student.
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