companyToss Securities logo

Machine Learning Engineer at Toss Securities | Seoul

On-site Full-time

Clicking Apply Now takes you to AutoApply where you can tailor your resume and apply.


Unlock Your Potential

Generate Job-Optimized Resume

One Click And Our AI Optimizes Your Resume to Match The Job Description.

Is Your Resume Optimized For This Role?

Find Out If You're Highlighting The Right Skills And Fix What's Missing

Experience Level

Experience

Qualifications

Key Qualifications Proven experience in developing and optimizing recommendation systems. Strong analytical skills and a background in machine learning and data science. Experience with programming languages such as Python, R, or Java. Familiarity with frameworks and libraries such as TensorFlow, PyTorch, or similar.

About the job

Join Our Team

  • As a Machine Learning Engineer at Toss Securities, you will be part of the AI Tribe, collaborating with Data Engineers, Server Engineers, Frontend Engineers, Product Owners, and Product Designers.
  • The AI Tribe aims to create data services that provide essential information to investors using data from various securities domains and cutting-edge Machine Learning technologies.
  • Our focus is on developing personalized recommendation systems and utilizing LLM-based technologies.

 

Your Responsibilities

  • Develop personalized services based on diverse securities domain data and user behavior data.
  • Experiment with reinforcement learning, deep learning, and machine learning methodologies to build recommendation models.
  • Formulate and validate hypotheses regarding user information consumption, enhancing our services in the process.
  • Define the criteria for recommendations and user profiles beyond simple item suggestions.

 

Ideal Candidate

  • Experience in validating hypotheses through personalization and recommendation systems in real-world applications.
  • Strong foundational knowledge of recommendation system domains.
  • Hands-on experience experimenting with and optimizing various deep learning and machine learning-based recommendation models.
  • Familiarity with modeling based on actual user behavior data from apps.

 

Resume Tips

  • Detail your projects or services, including their objectives and outcomes.
  • Focus on impactful projects or services.
  • Explain the problems you solved and the technologies you used.
  • If certain information is sensitive, please omit those details.

Technologies Used at Toss Securities

  • Predict user behaviors through User Modeling based on diverse user data.
  • Build deep learning recommendation models by defining and utilizing User Features.
  • Implement Multi-Armed Bandit (MAB) technology in our recommendation services.
  • Generate and validate data as needed, fine-tuning and testing Large Language Models.
  • Conduct experiments and build Retrieval/Chunking/Reranker/Generation models to establish RAG systems.

 

Application Process

  • Application Submission > Job Interview > Cultural Fit Interview > Reference Check > Compensation Negotiation > Final Offer and Onboarding

 

Important Notes

  • Any false information found in your resume or documents may lead to cancellation of your application.
  • Individuals prohibited from hiring under Toss Securities regulations may have their applications canceled.
  • Disabled individuals and those eligible for national veterans' benefits will be given preference in accordance with relevant laws.

 

A Message to Future Colleagues

“We are looking for colleagues who are ready to innovate financial services through Machine Learning technology!”

  • Investors in the financial market require vast amounts of information to make informed decisions, but knowing what information to seek and where to find it can be challenging.

About Toss Securities

Toss Securities is at the forefront of integrating advanced technology and financial services to empower investors with the information they need, leveraging data and machine learning to create tailored solutions.

Similar jobs

Tailoring 0 resumes

We'll move completed jobs to Ready to Apply automatically.