
Data Scientist
Patent and Trademark OfficeThis position is located in the U.S. Patent and Trademark Office, Office of the Chief Financial Officer, Office of Finance (OF). The primary mission of the USPTO is to build for the future and promote U.S. competitiveness in the global marketplace by protecting and strengthening intellectual property rights world-wide. The OCFO oversees USPTO's financial management, advising the Under Secretary and Director on planning, budgetary, financial, and procurement matters.The physical worksite for this position is located in Alexandria, Virginia. Presence at the Alexandria, VA campus is required for this role, as it includes on site functions that must be performed in person. Position may be eligible for situational The agency currently allows for 52 hours of telework per calendar year. This role is the ideal next career step for you if: You enjoy conducting advanced data analysis and implementing highly complex design algorithms to extract meaningful insights. You are committed to applying creative and innovative approaches to perform data mining and discover new patterns from large datasets. You are skilled in developing, adopting and promoting ground-breaking guidelines, policies, and standards for data science activities and applications across organizations. You enjoy utilize diverse analytical and assessment methods and tools to produce comprehensive findings and actionable recommendations.
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