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Job

Software Engineer Graduate (E-commerce Recommendation Infrastructure) - 2024 start (BS/MS)

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TikTok

Sep 22

💼 Graduate Job

San Jose

⌛ Closed
Applications are closed

Graduate Job

Software EngineeringSan Jose

Description

  • E-commerce is a new and fast growing business that aims at connecting all customers to excellent sellers and quality products on TikTok Shop, through E-commerce live-streaming, E-commerce short videos, and commodity recommendation. Our E-ecommerce Recommendation Infra team is responsible for building up and optimizing the infrastructure for such recommendation systems, so as to provide the most stable and best experience for our users. We work closely with applied machine learning engineers and build scalable systems to support all kinds of innovative algorithms and techniques. University graduates are important parts to our team with your fresh ideas and creative thoughts.

Requirements

  • Bachelor's degree or above, majoring in Computer Science, or related fields, expected to start in 2024;
  • Experience in programming, included but not limited to, the following programming languages: C, C++, Java or Python;
  • Effective communication skills, self-driven learner, and strong sense of ownership;
  • Projects or research experience in at least one area of the following areas: personalized recommendations, search engine, machine learning infrastructure, distributed storage system, big data frameworks is a plus.

Education requirements

Bachelors
Masters

Area of Responsibilities

Software Engineering

Responsibilities

  • Build industry-leading globalized large-scale recommendation system;
  • Design and build high performance serving systems and reliable data pipelines;
  • Optimize and evolve the system continuously so as to support the skyrocket increase in both user traffic as well as the data amount;
  • Work with cross functional teams to deliver end-to-end infrastructure solutions, especially AI infrastructure solutions, to address critical product challenges and improve recommendation performance.

Details

Work type

Full time

Work mode

office

Location

San Jose