Post Date: June 4, 2026

Hiring Organization: Krishna Group of Institutions, Kanpur, Uttar Pradesh

About the Organization: Krishna Group of Institutions (KGI), Kanpur, is a leading educational institution in Uttar Pradesh, approved by AICTE, PCI, and INC, and affiliated with AKTU, BTE, UPSMF, and ABVMU. The institution is committed to delivering industry-oriented and career-focused education through experiential learning, research, innovation, and skill development. KGI maintains strong industry collaborations with organizations such as Intel Unnati and IBM SkillsBuild, providing students with opportunities for global certifications, emerging technology training, internships, and enhanced career readiness.

Positions Open:

  • Associate Professor
  • Assistant Professor

Departments:

  • Computer Science & Engineering (CSE)
  • Artificial Intelligence & Machine Learning (AIML)

Educational Qualification:

  • Associate Professor: Ph.D. in CSE / IT.
  • Assistant Professor: M.Tech. / MCA.

Experience:

  • Experience requirements shall be as per institutional and applicable regulatory norms.
  • Relevant teaching, research, and academic experience will be preferred.
Pay Scale/Salary:
  • Associate Professor: Salary package up to ₹15 LPA.
  • Assistant Professor: Salary package up to ₹8.40 LPA.

Important Dates:

  • Last Date to Apply: Not Mentioned (Apply at the earliest)

Job Location: Kanpur, Uttar Pradesh

Apply Mode: Email

How to Apply:

Interested candidates should email their latest CV to the official email address.

Email: career@kgikanpur.in

Organization Website (for details): https://kgikanpur.in/

Organization Address:

Krishna Group of Institutions
Gram Amiliha, Post Tatiyaganj
Kanpur – 209217
Uttar Pradesh, India

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