Daniel Russakoff

Daniel Russakoff Email and Phone Number

Chief Technology Officer @ Voxeleron LLC
Mountain View, CA, US
Daniel Russakoff's Location
Mountain View, California, United States, United States
Daniel Russakoff's Contact Details

Daniel Russakoff personal email

n/a
About Daniel Russakoff

Computer scientist specializing in computer vision, machine learning, and pattern recognition with experience with 2D, 3D, and 4D data sets. Professional with managerial experience and proven success leading and motivating diverse teams of researchers, meeting deadlines, and communicating results effectively both internally and externally.

Daniel Russakoff's Current Company Details
Voxeleron LLC

Voxeleron Llc

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Chief Technology Officer
Mountain View, CA, US
Daniel Russakoff Work Experience Details
  • Voxeleron Llc
    Chief Technology Officer
    Voxeleron Llc
    Mountain View, Ca, Us
  • Voxeleron Llc
    Chief Technology Officer
    Voxeleron Llc Sep 2020 - Present
    Austin, Tx, Us
  • Voxeleron Llc
    Co-Founder And Principal Scientist
    Voxeleron Llc Sep 2010 - Present
    Austin, Tx, Us
    Voxeleron LLC is a software house specializing in algorithm development for computer vision applications.
  • Fujifilm Medical Systems
    Chief Scientist
    Fujifilm Medical Systems Feb 2008 - Sep 2010
    Lexington, Massachusetts, Us
    • Lead the 3D medical image analysis research and development in the United States for Fujifilm’s Picture Archiving and Communication System (PACS). Worked together with consulting physician partners and marketing department to define the research agenda for Fujifilm’s U.S. R&D units in the CT and mammography applications space. Managed relationships with outside clinical research groups for data collection and algorithm validation.• Managed the algorithm development (research, schedules, and deliverables) for CT and mammography R&D resulting in several 3D image analysis projects. Algorithms are currently integrated into applications for Fujifilm’s PACS product/workstation.• Collaborated overseas with Fujifilm’s Tokyo labs to help allocate resources for development projects. Worked as a liaison between U.S. and Japanese operations to facilitate the design control and regulatory documentation of U.S. algorithms.• Designed and implemented a support vector machine system with an automated distributed, parallel-processing training method for general pattern analysis tasks. This system is being used in several products and has improved the accuracy of existing classification systems by up to 35 percent. • Designed and implemented a generalized statistical shape modeling system for atlas generation and model-based segmentation of arbitrary shapes. This system has been used in both the U.S. and Japan to aid segmentation algorithms for several different anatomical structures. • Served as technical lead for design and implementation of expert systems for feature-based pattern recognition of malignant tumors. Improved performance of existing system by more than 50 percent.• Designed and oversaw implementation of a distributed computer cluster for batch testing of algorithms using Condor. The cluster sped up regression testing by more than 10x and, since 2006, has performed more than 59 compute years of processing.
  • Fujifilm Medical Systems
    Principal Research Scientst
    Fujifilm Medical Systems Apr 2004 - Feb 2008
    Lexington, Massachusetts, Us
    See above
  • Stanford University Medical Center
    Research Assistant
    Stanford University Medical Center 2001 - 2004
    Palo Alto, California, Us
    • Built end-to-end, intensity-based 2D-3D registration system for minimally-invasive image-guided surgery and validated it to 1 mm accuracy on real, clinical data.• Developed attenuation-field rendering, an extension of light-field rendering from computer graphics applied to X-ray fluoroscopy. Achieved 20-30x speedup for rendering using attenuation fields vs. conventional techniques.
  • Stanford University Vision Laboratory
    Research Assistant
    Stanford University Vision Laboratory 1999 - 2000
    • Designed and implemented a 3D gesture tracking system for American Sign Language recognition.
  • Nist
    Computer Scientist
    Nist 1999 - 2000
    Gaithersburg, Md, Us
    • Designed and implemented a stereo-based, 3D head tracking system for use with a steerable microphone array.

Daniel Russakoff Skills

Algorithms Computer Vision Pattern Recognition Machine Learning Matlab Image Processing Medical Imaging C++ Image Analysis Research Software Engineering R&d Signal Processing Computer Science Programming C Imaging Python Management Artificial Intelligence Deep Learning Biomedical Engineering Latex Algorithm Design Algorithm Development Machine Vision Data Mining Data Analysis Digital Image Processing Research And Development

Daniel Russakoff Education Details

  • Stanford University
    Stanford University
    Computer Science
  • Harvard University
    Harvard University
    Solid Earth Geophysics

Frequently Asked Questions about Daniel Russakoff

What company does Daniel Russakoff work for?

Daniel Russakoff works for Voxeleron Llc

What is Daniel Russakoff's role at the current company?

Daniel Russakoff's current role is Chief Technology Officer.

What is Daniel Russakoff's email address?

Daniel Russakoff's email address is da****@****ord.edu

What schools did Daniel Russakoff attend?

Daniel Russakoff attended Stanford University, Harvard University.

What skills is Daniel Russakoff known for?

Daniel Russakoff has skills like Algorithms, Computer Vision, Pattern Recognition, Machine Learning, Matlab, Image Processing, Medical Imaging, C++, Image Analysis, Research, Software Engineering, R&d.

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