Sr. Manager, QA Development - Stability and Deviation Management at Bayer HealthCare
Location:
San Francisco Bay Area
Industry:
Biotechnology
Work:
Bayer HealthCare - Berkeley, CA since Feb 2013
Sr. Manager, QA Development - Stability and Deviation Management
Bayer HealthCare - Berkeley, CA Apr 2012 - Feb 2013
Sr. Manager, QA Stability
Bayer HealthCare - Berkeley, CA Oct 2007 - Apr 2012
QA Manager, QA Stability
Merck & Co., Inc. - West Point, PA Jun 2006 - Oct 2007
Sr Stability Analyst
Merck & Co., Inc. - West Point, PA Jan 2005 - Jun 2006
QC Laboratory Supervisor
Education:
San Diego State University-California State University 2005 - 2011
Master of Science, Regulatory Affairs
Temple University 2001 - 2002
BA Chemistry, Analytical Chemistry, French
Indiana University of Pennsylvania 1997 - 2001
N/A, Elementary Education, French, Chemistry
Skills:
Analytical Chemistry Chemistry QC GMP cGMP Project Management Software Project Management Quality Assurance Biotechnology Vaccines Regulatory Affairs FDA LIMS SOP Pharmaceuticals Chromatography GxP 21 CFR Part 11 Quality Systems CAPA Computer System Validation Life Sciences Change Control GCP GLP Validation HPLC UV-Vis Technology Transfer Regulatory Requirements Biochemistry Biopharmaceuticals IR Regulatory Submissions Quality Management Quality Control Sop Pharmaceutical Industry Lifesciences
Bayer Healthcare Apr 2008 - Jun 2016
Principal Engineer
Biomarin Pharmaceutical Inc. Apr 2008 - Jun 2016
Senior Facilities Engineer, Biomarin Pharmaceutical Inc
Validation Technologies, Inc. Jan 2006 - Mar 2008
Project Leader and Commissioning Engineer
Biogen Apr 2002 - Jan 2006
Process Engineer Iii
Regeneron Pharmaceuticals, Inc. Aug 1996 - Apr 2002
Project Engineer
Education:
University of Rochester 1992 - 1996
Bachelors, Bachelor of Science, Chemical Engineering
San Diego State University
Temple University
Indiana University of Pennsylvania
Skills:
Gmp Biotechnology Capa Fda Validation Biopharmaceuticals Technology Transfer V&V 21 Cfr Part 11 Manufacturing Change Control Fermentation Purification Process Simulation Computer System Validation Corrective and Preventive Action U.s. Food and Drug Administration
Interests:
Skiing Managing Others Languages Beaches Science Hiking Pharma/Biopharma Travel
Personal Injury Litigation Consumer Protection Workers Compensation Animal & Dog Bites Birth Injury Brain Injury Car Accidents Defective and Dangerous Products Medical Malpractice Motorcycle Accident Nursing Home Abuse and Neglect Slip and Fall Accident Spinal Cord Injury Trucking Accident Wrongful Death Real Estate
ISLN:
1000785378
Admitted:
2017
Law School:
University of Arkansas at Little Rock, William H. Bowen School of Law, Doctor of Jurisprudence/Juris Doctor (J.D.), 2016
Methods and apparatus are disclosed to generate a recommendation, including an attribute vector aggregator to form a resultant attribute vector based on an input set of attribute vectors, the set of attribute vectors containing at least one of a media attribute vector, an attendee attribute vector, an artist attribute vector, an event attribute vector, or a venue attribute vector, and a recommendation generator, the recommendation generator including: a vector comparator to perform a comparison between an input attribute vector and other attribute vectors and a recommendation compiler to create one or more recommendations of at least one of media, an artist, an event, or a venue based on the comparison.
Methods And Apparatus To Generate Recommendations Based On Attribute Vectors
Methods and apparatus are disclosed to generate a recommendation, including an attribute vector aggregator to form a resultant attribute vector based on an input set of attribute vectors, the set of attribute vectors containing at least one of a media attribute vector, an attendee attribute vector, an artist attribute vector, an event attribute vector, or a venue attribute vector, and a recommendation generator, the recommendation generator including: a vector comparator to perform a comparison between an input attribute vector and other attribute vectors and a recommendation compiler to create one or more recommendations of at least one of media, an artist, an event, or a venue based on the comparison.
Responding To Remote Media Classification Queries Using Classifier Models And Context Parameters
- Emeryville CA, US Jason Cramer - Berkeley CA, US Phillip Popp - Oakland CA, US Cameron Aubrey Summers - Oakland CA, US
International Classification:
G06F 16/35 G06N 3/04 G06F 16/41 G06F 16/61
Abstract:
A neural network-based classifier system can receive a query including a media signal and, in response, provide an indication that a particular received query corresponds to a known media type or media class. The neural network-based classifier system can select and apply various models to facilitate media classification. In an example embodiment, classifying a media query includes accessing digital media data and a context parameter from a first device. A model for use with the network-based classifier system can be selected based on the context parameter. In an example embodiment, the network-based classifier system provides a media type probability index for the digital media data using the selected model and spectral features corresponding to the digital media data. In an example embodiment, the digital media data includes an audio or video signal sample.
Responding To Remote Media Classification Queries Using Classifier Models And Context Parameters
- Emeryville CA, US Jason Cramer - Berkeley CA, US Phillip Popp - Oakland CA, US Cameron Aubrey Summers - Oakland CA, US
International Classification:
G06N 3/08 G06F 17/30
Abstract:
A neural network-based classifier system can receive a query including a media signal and, in response, provide an indication that a particular received query corresponds to a known media type or media class. The neural network-based classifier system can select and apply various models to facilitate media classification. In an example embodiment, classifying a media query includes accessing digital media data and a context parameter from a first device. A model for use with the network-based classifier system can be selected based on the context parameter. In an example embodiment, the network-based classifier system provides a media type probability index for the digital media data using the selected model and spectral features corresponding to the digital media data. In an example embodiment, the digital media data includes an audio or video signal sample.