Phoenix (Huang) Feng, Phd

Phoenix (Huang) Feng, Phd Email and Phone Number

CIB Divisional Strats at Deutsche Bank, PhD in Statistics @ Deutsche Bank
frankfurt, hessen, germany
Phoenix (Huang) Feng, Phd's Location
United Kingdom, United Kingdom
Phoenix (Huang) Feng, Phd's Contact Details

Phoenix (Huang) Feng, Phd work email

Phoenix (Huang) Feng, Phd personal email

n/a
About Phoenix (Huang) Feng, Phd

Phoenix (Huang) Feng, Phd is a CIB Divisional Strats at Deutsche Bank, PhD in Statistics at Deutsche Bank. They possess expertise in statistics, data analysis, fixed income, bonds, research and 3 more skills. They is proficient in English.

Phoenix (Huang) Feng, Phd's Current Company Details
Deutsche Bank

Deutsche Bank

View
CIB Divisional Strats at Deutsche Bank, PhD in Statistics
frankfurt, hessen, germany
Website:
db.com
Employees:
66557
Phoenix (Huang) Feng, Phd Work Experience Details
  • Deutsche Bank
    Cib Divisional Strats
    Deutsche Bank Jan 2019 - Present
    London, United Kingdom
  • The London School Of Economics And Political Science (Lse)
    Graduate Teaching Assistant
    The London School Of Economics And Political Science (Lse) Sep 2015 - Jun 2018
    London, United Kingdom
    I work as class teacher at LSE. The classes I teach include the following courses:- Time Series: mater level course, focusing on basic time series models: AR, MA, ARMA; ARCH and GARCH models for financial time series, estimation and forecasting. - Data Analysis and Statistical Methods: master level course, providing an introduction to methods of statistics and data analysis, with hands-on experience of data analysis by using the statistical software R.- Elementary Statistical Theory: undergraduate level course, providing a precise and accurate treatment of introductory probability theory, statistical ideas, methods and techniques. I also do some Help Sessions and Marking for - Regression and Generalized Linear Models: master level course; - Time Series and Forecasting: undergraduate level course;- Probability, Distribution Theory and Inference: undergraduate level course.
  • Shanghai Purang Financial Service
    Researcher
    Shanghai Purang Financial Service Feb 2014 - Sep 2014
    Shanghai City, China

Phoenix (Huang) Feng, Phd Skills

Statistics Data Analysis Fixed Income Bonds Research Matlab R Financial Analysis

Phoenix (Huang) Feng, Phd Education Details

Frequently Asked Questions about Phoenix (Huang) Feng, Phd

What company does Phoenix (Huang) Feng, Phd work for?

Phoenix (Huang) Feng, Phd works for Deutsche Bank

What is Phoenix (Huang) Feng, Phd's role at the current company?

Phoenix (Huang) Feng, Phd's current role is CIB Divisional Strats at Deutsche Bank, PhD in Statistics.

What is Phoenix (Huang) Feng, Phd's email address?

Phoenix (Huang) Feng, Phd's email address is phoenix.feng@db.com

What schools did Phoenix (Huang) Feng, Phd attend?

Phoenix (Huang) Feng, Phd attended The London School Of Economics And Political Science (Lse), The London School Of Economics And Political Science (Lse), Xi'an Jiaotong-Liverpool University.

What are some of Phoenix (Huang) Feng, Phd's interests?

Phoenix (Huang) Feng, Phd has interest in Dance, Violin.

What skills is Phoenix (Huang) Feng, Phd known for?

Phoenix (Huang) Feng, Phd has skills like Statistics, Data Analysis, Fixed Income, Bonds, Research, Matlab, R, Financial Analysis.

Who are Phoenix (Huang) Feng, Phd's colleagues?

Phoenix (Huang) Feng, Phd's colleagues are Nikolia Veigas, Harald Giese, Laveena Balani, Caitlin Brunton, Jolanta Piętka, Skyler Hanna, Rohit Vijayvergia.

Free Chrome Extension

Find emails, phones & company data instantly

Find verified emails from LinkedIn profiles
Get direct phone numbers & mobile contacts
Access company data & employee information
Works directly on LinkedIn - no copy/paste needed
Get Chrome Extension - Free

Aero Online

Your AI prospecting assistant

Download 750 million emails and 100 million phone numbers

Access emails and phone numbers of over 750 million business users. Instantly download verified profiles using 20+ filters, including location, job title, company, function, and industry.