Search Engines and Data Mining Lecture & Lab – Adjunct Faculty – Traditional Campus - (Fall 2025) – College of Engineering and Technology

AZ Phoenix, United States

Grand Canyon University

Grand Canyon University (Phoenix, AZ) offers affordable, accredited campus or online degrees. Learn more about tuition, scholarships, academic calendar + more!

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Make a Difference at Grand Canyon University

The College of Engineering and Technology employs faculty and faculty leaders who are passionate about engaging and mentoring students to best prepare them for the continuously changing worlds of IT and Engineering. Our faculty are energetic advisors who are committed to helping our students grow academically, spiritually, and personally. They are experts in their respective fields, in addition to being passionate educators and collaborators who help enhance the college experience for all students.

Join our mission in helping others find their purpose and start your instructor career with GCU. The College of Engineering and Technology offers rewarding opportunities for adjunct faculty to teach part-time, face-to-face instruction at our Phoenix campus. If you are highly motivated and passionate about teaching exceptional quality instruction in modern facilities with smaller class sizes, we’d like to hear from you.  

Why Work at GCU:

  • Tuition benefits specifically for the adjunct employee
  • 401(k)
  • Employee Perks and Discounts
  • Gym and Fitness Center
  • Canyon Health & Wellness Center

GCU Traditional Campus – Phoenix, AZ:

  • Courses are in-person and on-campus for the Fall 2025 Semester (09/02/2025 - 12/14/2025)

Course: Search Engines and Data Mining Lecture & Lab

This course provides a comprehensive introduction to neural networks and deep learning. The location, retrieval, and conversion of raw data into usable information is accomplished by implementing a variety of neural network models. Students implement deep learning algorithms for organizing and searching very large data collections, like those typically found in enterprise databases and on websites. Students use clustering and categorization to generate various information taxonomies based on document ranking, evaluation, and classification. The laboratory reinforces and expands deep learning principles introduced in the lecture. Hands-on activities focus on using neural networks for performing data mining on a large business database and extracting trends and actionable information.

What You Will Do:

  • Facilitate classroom lecture and discussions
  • Engage students in learning course objectives and topics
  • Assess student performance and mentor success in the classroom
  • Provide a positive example to students by supporting the University’s Doctrinal Statement, Ethical Position Statement, and Mission of Grand Canyon University

What You Will Bring:

  • Preferred: Master's in Computer Science or Statistics or closely related degree AND experience in Big Data Analytics or Data Science with proficiency in Python.
  • Minimum: Bachelor in Statistics or closely related degree AND 5 or more years of experience in Big Data Analytics or Data Science with proficiency in Python.
  • All candidates must be proficient in Python programming, with an emphasis on pandas, numpy, matplotlib, scikit, and tensorflow.

Before submitting your application, please attach the following to review:

  • Your unofficial transcript reflecting degree earned with 18 graduate credit hours in the areas listed above
  • Your unofficial transcripts for any applicable conferred graduate degrees

#gcu #highered #faculty #datamining #python

       

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Tags: Big Data Classification Clustering Computer Science Data Analytics Data Mining Deep Learning Engineering Matplotlib NumPy Pandas Python Scikit-learn Statistics Teaching TensorFlow

Perks/benefits: Career development Fitness / gym Health care

Region: North America
Country: United States

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