- Expertini Resume Scoring: Our Semantic Matching Algorithm evaluates your CV/Résumé before you apply for this job role: Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program.
Urgent! Recommendation Algorithm Engineer-E-Commerce -Soaring Star Talent Program Job Opening In Singapore, Singapore – Now Hiring Pangleglobal
Overview
Recommendation Algorithm Engineer-E-Commerce -Soaring Star Talent Program
Location:
Team:
Algorithm
Employment Type:
Regular
Job Code:
A10707
Responsibilities
Team Introduction: E-commerce is a content e-commerce business based on short-video products.
Committed to becoming users' preferred platform for discovering and acquiring high-quality products at favorable prices, in scenarios like live-stream e-commerce and video content e-commerce, the E-commerce business aims to provide users with more personalized, proactive, and efficient consumption experiences, offer merchants reliable platform services, fulfill the mission of making high-quality products easy to sell in more regions and bringing a better life within reach.
We invite you to grow, delve deep, and unleash unlimited potential here, together tackling challenges in technology and business.
The team currently has rich experience in international product R&D, embraces diverse cultures, and has established R&D teams globally.
Join us to take on the challenge of cross-border collaboration, with business trip and overseas assignment opportunities waiting for you!
Research Project Introduction: As the world's leading short-video platform, ByteDance faces multiple challenges in its recommendation systems, including data sparsity for new users leading to insufficient personalisation, high timeliness requirements for live streaming recommendations, difficulty in maintaining user interest diversity, and complex e-commerce recommendation system chains.
Traditional recommendation methods heavily rely on historical behaviour modeling, which struggles with the cold-start problem for new users.
Live-streaming recommendations demand real-time responsiveness to rapidly changing content dynamics (e.g., host interactions, traffic fluctuations) within extremely short time windows (typically within 30 minutes) posing higher demands on the system's real-time perception and decision-making capabilities.
Additionally, the immersive single-feed format amplifies the challenge of maintaining content diversity, requiring a careful balance between multi-interest learning and the risk of content drift caused by exploratory recommendations.
The current e-commerce recommendation system follows a multi-stage funnel architecture (recall–ranking–re-ranking), which often leads to inconsistent chains, high maintenance costs, and an overreliance on short-term value prediction.
This leads users to fall into content homogenization fatigue.
To address these pain points, this project proposes leveraging large language models (LLMs) and large model technologies to achieve significant breakthroughs.
On one hand, LLMs—with their vast knowledge base and few-shot reasoning capabilities—can infer new users' potential intentions from registration data and external knowledge, thereby alleviating cold-start issues.
On the other hand, by integrating graph neural networks (GNNs) and full-lifecycle user behavior sequences for modeling social preferences, we aim to improve the accuracy of interest prediction.
Additionally, the project explores the generalization capabilities, long-context awareness, and end-to-end modeling strengths of large models to simplify the e-commerce recommendation chains, enhance adaptability to real-time changes, and improve exploratory recommendation effectiveness.
The ultimate goal is to build a more streamlined system with more accurate recommendations, enhancing user experience and retention while driving sustainable business growth.
Qualifications
Got PhD degree, preferably in Artificial Intelligence, Computer Science, Mathematics, or other related fields.
Strong programming skills with a good foundation in software design ability and coding practices.
Outstanding problem-solving and analytical skills, great passion for technology, and strong communication skills and teamwork.
Familiar with machine learning, natural language processing, and/or data mining.
Prior experience in recommendation systems, computational advertising, or search engines is a plus.
Job Information
About Us
Founded in 2012, ByteDance's mission is to inspire creativity and enrich life.
With a suite of more than a dozen products, including TikTok, Lemon8, CapCut and Pico as well as platforms specific to the China market, including Toutiao, Douyin, and Xigua, ByteDance has made it easier and more fun for people to connect with, consume, and create content.
Why Join ByteDance
Inspiring creativity is at the core of ByteDance's mission.
Our innovative products are built to help people authentically express themselves, discover and connect – and our global, diverse teams make that possible.
Together, we create value for our communities, inspire creativity and enrich life - a mission we work towards every day.
As ByteDancers, we strive to do great things with great people.
We lead with curiosity, humility, and a desire to make impact in a rapidly growing tech company.
By constantly iterating and fostering an Always Day 1 mindset, we achieve meaningful breakthroughs for ourselves, our Company, and our users.
When we create and grow together, the possibilities are limitless.
Join us.
Diversity & Inclusion
ByteDance is committed to creating an inclusive space where employees are valued for their skills, experiences, and unique perspectives.
Our platform connects people from across the globe and so does our workplace.
At ByteDance, our mission is to inspire creativity and enrich life.
To achieve that goal, we are committed to celebrating our diverse voices and to creating an environment that reflects the many communities we reach.
We are passionate about this and hope you are too.
#J-18808-Ljbffr
✨ Smart • Intelligent • Private • Secure
Practice for Any Interview Q&A (AI Enabled)
Predict interview Q&A (AI Supported)
Mock interview trainer (AI Supported)
Ace behavioral interviews (AI Powered)
Record interview questions (Confidential)
Master your interviews
Track your answers (Confidential)
Schedule your applications (Confidential)
Create perfect cover letters (AI Supported)
Analyze your resume (NLP Supported)
ATS compatibility check (AI Supported)
Optimize your applications (AI Supported)
O*NET Supported
O*NET Supported
O*NET Supported
O*NET Supported
O*NET Supported
European Union Recommended
Institution Recommended
Institution Recommended
Researcher Recommended
IT Savvy Recommended
Trades Recommended
O*NET Supported
Artist Recommended
Researchers Recommended
Create your account
Access your account
Create your professional profile
Preview your profile
Your saved opportunities
Reviews you've given
Companies you follow
Discover employers
O*NET Supported
Common questions answered
Help for job seekers
How matching works
Customized job suggestions
Fast application process
Manage alert settings
Understanding alerts
How we match resumes
Professional branding guide
Increase your visibility
Get verified status
Learn about our AI
How ATS ranks you
AI-powered matching
Join thousands of professionals who've advanced their careers with our platform
Unlock Your Recommendation Algorithm Potential: Insight & Career Growth Guide
Real-time Recommendation Algorithm Jobs Trends in Singapore, Singapore (Graphical Representation)
Explore profound insights with Expertini's real-time, in-depth analysis, showcased through the graph below. This graph displays the job market trends for Recommendation Algorithm in Singapore, Singapore using a bar chart to represent the number of jobs available and a trend line to illustrate the trend over time. Specifically, the graph shows 318 jobs in Singapore and 313 jobs in Singapore. This comprehensive analysis highlights market share and opportunities for professionals in Recommendation Algorithm roles. These dynamic trends provide a better understanding of the job market landscape in these regions.
Great news! Pangleglobal is currently hiring and seeking a Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program to join their team. Feel free to download the job details.
Wait no longer! Are you also interested in exploring similar jobs? Search now: Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program Jobs Singapore.
An organization's rules and standards set how people should be treated in the office and how different situations should be handled. The work culture at Pangleglobal adheres to the cultural norms as outlined by Expertini.
The fundamental ethical values are:The average salary range for a Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program Jobs Singapore varies, but the pay scale is rated "Standard" in Singapore. Salary levels may vary depending on your industry, experience, and skills. It's essential to research and negotiate effectively. We advise reading the full job specification before proceeding with the application to understand the salary package.
Key qualifications for Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program typically include Other General and a list of qualifications and expertise as mentioned in the job specification. Be sure to check the specific job listing for detailed requirements and qualifications.
To improve your chances of getting hired for Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program, consider enhancing your skills. Check your CV/Résumé Score with our free Resume Scoring Tool. We have an in-built Resume Scoring tool that gives you the matching score for each job based on your CV/Résumé once it is uploaded. This can help you align your CV/Résumé according to the job requirements and enhance your skills if needed.
Here are some tips to help you prepare for and ace your job interview:
Before the Interview:To prepare for your Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program interview at Pangleglobal, research the company, understand the job requirements, and practice common interview questions.
Highlight your leadership skills, achievements, and strategic thinking abilities. Be prepared to discuss your experience with HR, including your approach to meeting targets as a team player. Additionally, review the Pangleglobal's products or services and be prepared to discuss how you can contribute to their success.
By following these tips, you can increase your chances of making a positive impression and landing the job!
Setting up job alerts for Recommendation Algorithm Engineer E Commerce Soaring Star Talent Program is easy with Singapore Jobs Expertini. Simply visit our job alerts page here, enter your preferred job title and location, and choose how often you want to receive notifications. You'll get the latest job openings sent directly to your email for FREE!