Yunfei

Yunfei "Iris" Yang Email and Phone Number

Machine Learning Engineer at Amazon @ Amazon
Yunfei "Iris" Yang's Location
San Francisco Bay Area, United States, United States
Yunfei "Iris" Yang's Contact Details

Yunfei "Iris" Yang work email

Yunfei "Iris" Yang personal email

n/a
About Yunfei "Iris" Yang

Stanford PhD, Machine Learning Engineer at Amazon. Experienced in machine learning and deep learning; familiar with REST API and OOD. Proficient in Python using Flask, Pandas, Numpy, Scikit-learn, Keras, and Tensorflow packages. Knowledge in Java, Javascript/jQuery, C/C++, Bootstrap, HTML/CSS and MATLAB. Filed two U.S. patent applications from two summer internships.

Yunfei "Iris" Yang's Current Company Details
Amazon

Amazon

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Machine Learning Engineer at Amazon
Yunfei "Iris" Yang Work Experience Details
  • Amazon
    Machine Learning Engineer
    Amazon Mar 2020 - Present
    Seattle, Wa, Us
  • Jpmorgan Chase & Co.
    Data Scientist / Machine Learning Engineer
    Jpmorgan Chase & Co. May 2019 - Mar 2020
    New York, Ny, Us
    • Build in-house AutoML web-app and data pipeline for analyzing time series data.• Started from scratch, delivered and demoed proof-of-concept version in two months.• Design and develop backend in Python using Flask, Scikit-learn, Pandas, Numpy; prototype frontend in Bootstrap, HTML/CSS and Javascript/jQuery.• Lead weekly meetings with customers (portfolio managers) to demo new features that address business needs.• Work closely with three machine learning engineers in the Agile/Scrum development framework.
  • Exxonmobil
    Intern
    Exxonmobil Jul 2018 - Sep 2018
    Us
    • Designed and implemented multiple machine learning models to predict rock types based on sequential data.• Integrated LSTM model into existing inversion platform on high-performance computing clusters.• Patent application: “Petrophysical Inversion with Machine Learning-Based Geologic Priors”; Ser. No.: 62/883348.
  • Halliburton
    Acoustic R&D Intern
    Halliburton Jun 2017 - Sep 2017
    Houston, Texas, Us
    • Developed data-driven real-time velocity profiling algorithm based on acoustic signals.• Designed novel methods to preprocess data and construct a constrained linear system to improve performance.• Performed sensitivity analyses to analyze wave mode dispersion for various down-hole scenarios.• Patent application: “Shear Velocity Radial Profiling Based on Flexural Mode Dispersion”; No.: PCT/US2018/068101.
  • Halliburton
    Intern
    Halliburton Jun 2016 - Sep 2016
    Houston, Texas, Us
  • Rock Solid Images
    Intern
    Rock Solid Images Jun 2014 - Sep 2014
    Houston, Tx, Us

Yunfei "Iris" Yang Skills

Python Artificial Intelligence Data Analysis Machine Learning Computer Vision Web Applications

Yunfei "Iris" Yang Education Details

  • Stanford University
    Stanford University
    Geophysics
  • Stanford University
    Stanford University
    Mechanical Engineering
  • University Of Illinois Urbana-Champaign
    University Of Illinois Urbana-Champaign
    Civil Engineering

Frequently Asked Questions about Yunfei "Iris" Yang

What company does Yunfei "Iris" Yang work for?

Yunfei "Iris" Yang works for Amazon

What is Yunfei "Iris" Yang's role at the current company?

Yunfei "Iris" Yang's current role is Machine Learning Engineer at Amazon.

What is Yunfei "Iris" Yang's email address?

Yunfei "Iris" Yang's email address is yu****@****zon.com

What schools did Yunfei "Iris" Yang attend?

Yunfei "Iris" Yang attended Stanford University, Stanford University, University Of Illinois Urbana-Champaign.

What skills is Yunfei "Iris" Yang known for?

Yunfei "Iris" Yang has skills like Python, Artificial Intelligence, Data Analysis, Machine Learning, Computer Vision, Web Applications.

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