Yanxuan Wu

Yanxuan Wu

Biography

I am Yanxuan Wu (吴焱煊). I got a Bachelor’s degree in Electrical Engineering, with a minor in Finance, from Shanghai Jiao Tong University in 2023. After that, I worked as a data scientist at Moseeker (an AI-powered Human Resource technology firm), focusing on AI tools development and data analysis. In parallel, I have been working as a research assistant for Prof.Xitong Li (HEC, Paris) and Prof.Shunyuan Zhang (Harvard Business School).

Download my resumé.

Interests
  • Economics of AI
  • AI in Human Resource Management
  • Open-source Innovation
Education
  • B.Eng. in Electrical Engineering, 2023

    Shanghai Jiao Tong university

  • B.Sc. in Finance, 2023

    Shanghai Jiao Tong university

  • Exchange Student in Arts and Science, 2022

    University College London

Research Experience

 
 
 
 
 
Influencer Marketing (Empirical, Machine Learning)
Jun 2023 – Present Remote

“Influencer Selection with MMOE” with Prof. Shunyuan Zhang from Harvard Business School and Prof. Xitong Li from HEC, Paris.

  • Improved Multi-Gate Mixture-of-Experts (MMOE) algorithm, based on the incentive mechanism of influencer behavior and interactions between marketing goals (reputation, revenue, acceptance), increasing the revenue prediction performance by over 20%.
  • Explored the underlying mechanisms of multi-task learning models, based on literatures and regression analysis, identifying model-relevant factors such as the gating mechanism, data-relevant factors such as data sparsity, and feature-relevant factors such as latent relevance.
  • Embedded dynamic weighting algorithm (GradNorm) into MMOE to dynamically tune the weights of different tasks during the training process, increasing the model performance by over 200% over a highly unbalanced and sparse dataset.
  • Examined topic modeling algorithms (BerTopic, LDA etc.), implemented multimodal BerTopic model to cluster millions of posts (images and texts), optimized the topic representation, achieving a balanced performance on different metrics (coherence, topic overlap etc.).
 
 
 
 
 
Image Process and Classification (Machine Learning)
Jun 2022 – Aug 2022 Singapore

“Drowsy Driving Detection under Different Circumstances with Convolutional Neural Networks (CNN)” with Pro. Colin Tan from NUS

  • Developed the algorithm based on CNN to detect drowsiness with nearly 95% accuracy under different circumstances such as dark or bright.
  • Built the backend classification server that performed the algorithm to handle the data and communicated data between detectors and actuators.
  • Transferred data over Message Queueing Telemetry Transport (MQTT), RESTful APIs and stored in SQL databases.

Seminars I Attended Frequently

  • Information Systems Talks Series, Antai College of Economics and Management, SJTU

Honors and Awards

2021

  • Honor Student in Shanghai Jiao Tong University (Univesity, Top 2%)
  • Ren Yuan Electric Scholarship (University, Top 3%)
  • The Second Prize in Fanhai International Collidoscope Challenge (International, Top 1%)

2020

  • Honored Student in Shanghai Jiao Tong University (Univesity, Top 2%)
  • Ren Yuan Electric Scholarship (University, Top 3%)
  • Excellent League Member of Shanghai Jiao Tong university (Univesity, Top 3%)
  • Advanced Social Practice Individual in Shanghai Jiao Tong University (University, Top 1%)
  • Honorable Mention in the Mathematical Contest in Modeling (International, Top 10%)

Professional Experience

 
 
 
 
 
Moseeker
Data Scientist, AI Interview Team
Oct 2023 – Oct 2024 Shanghai, China
  • Designed an interview question generation algorithm, by combining knowledge graph and LLM, improving the depth and diversity of interview questions, smoothing the communication, and balancing the job requirements and the candidate’s experience.
  • Built an automated resume parsing system, based on multiple LLM agents (i.e., GPT and Deepseek) and text processing tools (i.e., Tika and pdfplumber), achieving over 90% accuracy across diverse formats of resumes such as image-based PDFs and multilingual resumes.
  • Demonstrated the effectiveness and potential socioeconomic biases of AI evaluation on candidates’ interview performance by using multiple methods such as hypothesis testing and regression to analyze the campus recruitment data.
  • Examined millions of job posts and applications to illustrate and visualize the talent trends from multiple aspects such as talent flows across job types and cities and most popular skills.
 
 
 
 
 
Guo Sheng Securities
Analyst intern, Electrical Engineering and New Energy Department
Jul 2021 – Aug 2021 Shanghai, China
  • Independently investigated the whole supply chain of electrical vehicle, analyzing the competitive landscape and comparing various companies, and forming in-depth reports with more than 15,000 words.
  • Built and managed a database for electrical vehicle to track the production and sales by country, firm, and model.

Activities and Leaderships

2022

  • Team Leader in FTxBocconi Challenge, Financial Times & Bocconi University

2021

  • Participant in Youth Club, United Nations Development Programme
  • Member of Champion Team in Warwick-SJTU Global Challenge
  • Volunteer at Human Resource Center, Hult Prize China

2020

  • Student Representative at Undergraduate Committee, SJTU