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EEDP EID

The EID (Early Identification) Program is GE’s Internship Program designed to identify high-potential engineering students as candidates for GE’s entry level engineering training program: EEDP. The Internship Program offers students the opportunity to experience a real-life work environment at GE, while developing the professional skills critical to a successful career.

The internship assignment offers:
l Challenging work assignments on GE Healthcare’s technology fields
l Formal goal-setting and appraisal processes
l Multiple resources: manager, mentor, buddy, etc.
l Networking and social activities
l Prioritized to participate in the selection of the Edison Engineering Development Program (EEDP) that will start in 2022/2023.
l Finish a 2~6 month technical project (flexible term according to the candidate’s available time) in one GE Healthcare technology function
l Complete required internship trainings defined in the program
l Present the project summary upon completion of the assignment
 
· Pursuing a Master’s degree in Mechanical, Electrical, Electronics, Control, Software Engineering, Computer Science, Bio-medical, Physics, etc. (see detailed technical requirements below)
. Graduation in 2022/2023.
· Demonstrated Academic excellence;
· Passion for engineering with strong technical skills, innovation spirit, and an analytical approach to problem solving;
· Strong commitment to a career in technology;
· Self-motivated, self-confident team play with mature & positive attitude and fast learning ability;
· Excellent interpersonal and communication skills;
· Bilingual proficiency in English and Chinese.
. Able to work for a minimum of 8weeks
 
· Prior engineering or research experience in the design field such as hardware design (electrical or mechanical), Radio Frequency, wireless systems, diagnostic imaging equipment, patient monitoring devices, or life support system equipment, firmware design or software design/applications, deep learning or other AI technologies applied in medial areas.