Expoint - all jobs in one place

The point where experts and best companies meet

Limitless High-tech career opportunities - Expoint

PayPal Machine Learning Scientist Intern 
China, Shanghai 
992893422

01.05.2024

Job Description:

Your day-to-day:
  • Perform in-depth machine learning algorithm to identify opportunities in understanding user documents.
  • Collaborate with x-functional teams to translate business challenges into data science problems, transform data into analytical assets, data products and actionable intelligence for faster decision making for all our customers.
  • Regularly evaluate and communicate performance of analytical solutions, identify improvement opportunities, exercise judgment in selecting methods, techniques, and evaluation criteria for obtaining results on matters of significance to the business.
  • Assisting machine learning team in daily work

What do you need to bring:

  • Master or equivalent degree in Mathematics, Statistics, Computer Science and Engineering.
  • Have deep understanding of machine learning algorithms and their applications in multi-modal and CV/NLP with practical experience, good knowledge of broader AI/Statistics fields is a plus. Good knowledge on documentary image processing is a plus.
  • Hands on with Python. Familiar with Big Data Technologies like Torch, TF, PaddlePaddle, etc. Able to pick up new programming skills quickly.
  • Hands on SQL skill, experienced on data analytics, statistical modeling, data mining and using analytical tool, good at transform business knowledge into analytical problems and solutions.
  • Strong in problem solving. Good business sense and logical thinking. Ability to synthesize information and generalize the pattern. Highly skilled in drawing relevant conclusion from analysis.
  • Good Communication capabilities, able to collaborate with remote teams effectively. Skilled in Presenting – can effectively communicate in large or small group settings.

It's paid internship


Any general requests for consideration of your skills, please