Daniel Ratner
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Daniel Ratner Email & Phone Number

Head of Machine Learning at SLAC National Accelerator Laboratory
Location: San Francisco Bay Area, United States, United States 9 work roles 2 schools
1 work email found @stanford.edu LinkedIn matched
✓ Verified Jun 2026 4 data sources Profile completeness 100%

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Work email d****@stanford.edu
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Role
Head of Machine Learning
Location
San Francisco Bay Area, United States, United States
Company size

Who is Daniel Ratner? Overview

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Quick answer

Daniel Ratner is listed as Head of Machine Learning at SLAC National Accelerator Laboratory, a company with 2214 employees, based in San Francisco Bay Area, United States, United States. AeroLeads shows a work email signal at stanford.edu and a matched LinkedIn profile for Daniel Ratner.

Daniel Ratner previously worked as Advisor at Instai Inc. and Department Head, Accelerator Machine Learning at Slac National Accelerator Laboratory. Daniel Ratner holds Phd, Applied Physics from Stanford University.

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Email format at SLAC National Accelerator Laboratory

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{first_initial}{last}@stanford.edu
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Profile bio

About Daniel Ratner

I am currently a staff scientist at SLAC National Accelerator Laboratory, where I lead a new lab-wide machine learning strategic initiative. I previously was head of the accelerator machine learning department and co-led the X-ray laser R&D program.In my career, I have worked across diverse fields, including early online advertising, art conservation, accelerator/biological physics, and automatic music transcription. The unifying thread for these topics is a focus on algorithm development, modeling, and data analysis of complex systems. Lately I have worked on machine learning applications for science, with a focus on ghost imaging and compressed sensing.

Listed skills include Matlab, Physics, Research, Data Analysis, and 9 others.

Current workplace

Daniel Ratner's current company

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SLAC National Accelerator Laboratory
Slac National Accelerator Laboratory
Head of Machine Learning
California, United States
Employees
2214
AeroLeads page
9 roles

Daniel Ratner work experience

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Head Of Machine Learning

Current

Menlo Park, California, US

Director of new lab-wide machine learning strategic initiative covering projects in high-energy physics, x-ray science, accelerator physics, and structural biology.

Feb 2019 - Present

Department Head, Accelerator Machine Learning

Menlo Park, California, US

Head of a new department applying machine learning to accelerator physics. Personal research includes ghost imaging, computer vision, and reinforcement learning for "in-the-loop" data acquisition.

Sep 2018 - Jun 2019

Program Manager, X-Ray Laser R&D

Menlo Park, California, US

Program manager for the accelerator X-ray laser R&D program ($3M/year).

Sep 2016 - Dec 2018

Staff Scientist, Project Manager

Menlo Park, California, US

Led a strategic initiative to apply machine learning and big data techniques to the linear accelerator and X-ray laser. Personal research included topics relating to X-ray lasers, biological imaging techniques, and EUV lithography sources.

Apr 2014 - Sep 2016

Associate Staff Scientist

Menlo Park, California, US

Led the Soft X-ray Self Seeding program, a multi-million dollar collaboration with Lawrence Berkeley National Lab and the Paul Scherrer Institute in Switzerland. Personal research on topics including the Large Hadron Collider and electron instabilities.

Aug 2011 - Apr 2014

Conservation Science Research Assistant

New York, NY, US

Research assistant in MoMA’s conservation science department. Invented and built a bifurcated version of the "microfader" to predict pigment fading (still in use). Assisted with data analysis for conservators.

Feb 2004 - Jun 2005

Research & Development

US

Data analysis and R&D for a top ten web property. Designed and coded sorting algorithms to automate data processing. Due diligence on potential acquisitions for co-founder.

Nov 2002 - Jan 2004
2 education records

Daniel Ratner education

Phd, Applied Physics

Stanford University

Undergraduate, Physics

Harvard University
FAQ

Frequently asked questions about Daniel Ratner

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What company does Daniel Ratner work for?

Daniel Ratner works for SLAC National Accelerator Laboratory.

What is Daniel Ratner's role at SLAC National Accelerator Laboratory?

Daniel Ratner is listed as Head of Machine Learning at SLAC National Accelerator Laboratory.

What is Daniel Ratner's email address?

AeroLeads has found 1 work email signal at @stanford.edu for Daniel Ratner at SLAC National Accelerator Laboratory.

Where is Daniel Ratner based?

Daniel Ratner is based in San Francisco Bay Area, United States, United States while working with SLAC National Accelerator Laboratory.

What companies has Daniel Ratner worked for?

Daniel Ratner has worked for Slac National Accelerator Laboratory, Instai Inc., The Museum Of Modern Art, and Whenu.

How can I contact Daniel Ratner?

You can use AeroLeads to view verified contact signals for Daniel Ratner at SLAC National Accelerator Laboratory, including work email, phone, and LinkedIn data when available.

What schools did Daniel Ratner attend?

Daniel Ratner holds Phd, Applied Physics from Stanford University.

What skills is Daniel Ratner known for?

Daniel Ratner is listed with skills including Matlab, Physics, Research, Data Analysis, Latex, Science, Mathematical Modeling, and Teaching.

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