Senior Research Scientist, Medical Devises Relo Assistance to OH Job in San Jose 95101, California Us

Skills Required:

Research Scientist, Machine Learning, Product Development, Medical Imaging Applications, Pattern Recognition Algorithms, Matlab, Delivering Commercial Products, C++, Unix, Multimedia Visualization Systems

Job Description:

Are you a Research Scientist with a strong academic background in machine learning, pattern recognition, or image processing?

Would you like to keep your six figure salary and live in a lower cost of living region which is 168% less expensive than the San Francisco Bay area? To put this in perspective, $120,000 salary ion Dayton OH, is the equivalent of earning $321,982 in San Francisco? Interested, please..... read on!

We are a industry leader and technology innovator with RD efforts to advance our imaging technologies for new and innovative applications. We need someone who can research and develop state of the art image processing and pattern recognition algorithms for medical applications.

What you need for this position:

- You must be open to relocating to the Dayton, OH area.
- A strong foundational knowledge of pattern recognition, machine learning and image processing
- At least 5 years’ experience in advanced signal, image processing and pattern recognition applications
- Industry experience with proven history of delivering commercially successful results
- Advanced degree (minimum M.S.) Electrical Engineering, Mathematics or Computer Science
- Strong programming skills and strong working knowledge of Matlab
- Experience in medical applications desired
- If you have worked with one of the following companies it is a plus! Johnson and Johnson, GE healthcare, Baxter, Medtronic, Tyco Healthcare, Boston Scientific, Hospira, Cardinal Health, Siemens, Guidant Corp, Zimmer Holdings, St. Jude, Alcon, B. Braun, and others.

What you'll be doing:

- Play a key role in defining, validating and executing our existing and future roadmaps, including the expansion of machine learning methods to other diseases, modalities and medical applications
- Lead, develop and implement state of the art image processing and pattern recognition algorithms for medical applications
- Working with product management and marketing to identify research requirements
- Aid in the development and creation of patents

If you are a Research Scientist or Postdoc with a very strong academic background in machine learning, pattern recognition,or image processing who is ready for their next step and would like to work in an environment where you can use your expertise as a lead scientist to lead the design and implementation of signal, image processing and pattern recognition algorithms, we want to hear from you.

For your hard work, you will be rewarded with an offer that will include an aggressive base salary ($115,000 - $130,000), Top Benefits, a great and fun working environment, and other cool perks! We are well known for taking care of our employees because we want the best! Interviews are occurring early next week, so apply now if you are interested. Local candidates preferred, however we will provide relocation assistance for non local candidates.

Must be authorized to work in the United States on a full-time basis for any employer.

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Please Click Here to Apply!
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Looking forward to receiving your resume through our website and going over the position with you. Clicking apply is the best way to apply, but you may also:

Email your resume in Word to:

Daniel.Nadruz@CyberCoders.com
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Daniel Nadruz - Recruiting Manager - CyberCoders

CyberCoders, Inc is proud to be an Equal Opportunity Employer. Applicants are considered for all positions without regard to race, color, religion, sex, national origin, age, disability, sexual orientation, ancestry, marital or veteran status.