Job DescriptionThe IBM Science for Social Good initiative is an opportunity for graduate students to develop their skills and develop artificial intelligence-based solutions that benefit humanity. Mentored by leading IBM Research scientists and engineers at the T. J. Watson Research Center in Yorktown Heights, NY (north of New York City), fellows use artificial intelligence and machine learning methods to complete projects with social impact. Working closely with non-governmental organizations, social enterprises, government agencies, and other mission-driven partners, fellows take on real-world problems in health, energy, environment, education, international development, equality, justice, and more.
  • At least 2 years of experience in predictive modeling, machine learning, data science, data mining, pattern recognition, design, mobile development or visualization

Preferred Technical And Professional Experience

  • Experience with visualization

Eligibility Requirements

  • None

Required EducationBachelor’s DegreePreferred EducationNonePosition TypeInternTravel RequiredNo TravelIs this role a commissionable/sales incentive based position?NoEO StatementIBM is committed to creating a diverse environment and is proud to be an equal opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, gender, gender identity or expression, sexual orientation, national origin, genetics, disability, age, or veteran status. IBM is also committed to compliance with all fair employment practices regarding citizenship and immigration status.

Seniority Level

Internship

Industry

  • Information Technology and Services
  • Computer Software
  • Financial Services

Employment Type

Internship

Job Functions

  • Education
  • Training

For more information please visit: https://krb-sjobs.brassring.com/TGnewUI/Search/home/HomeWithPreLoad?PageType=JobDetails&partnerid=26059&siteid=5016&jobId=126618&Code=JB_LinkedInorganic#jobDetails=126618_5016


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