About the job
About the Team You Will Join
- The Machine Learning Engineer (MLOps) will be part of the ML Platform Team at Toss Bank.
- This team is responsible for developing and operating the machine learning platform within Toss Bank.
Your Responsibilities
- Collaborate on the development of common technologies within the ML chapter.
- Build and manage internal machine learning platforms using MLFlow, Airflow, Jupyterhub, and Kubeflow.
- Operate ScyllaDB clusters and develop Feature Store services.
- Develop a model serving environment based on Triton Inference Server.
- Establish and maintain the internal LLM platform.
We Are Looking For
- Experience with developing, deploying, and operating services on Kubernetes.
- A strong interest in machine learning and awareness of the latest trends in the field.
- Experience handling high-traffic applications.
- Experience in developing and optimizing performance using GPU-based frameworks.
- Experience managing distributed databases such as Apache Cassandra and ScyllaDB.
- Experience in building and operating LLM serving or LLMOps platforms is a plus.
- Strong problem-solving skills and excellent communication abilities to find optimal solutions in various situations.
Resume Tips
- Clearly describe impactful projects you've worked on.
- Detail your experience in building and operating machine learning platforms, including troubleshooting during operations.
- If applicable, share quantifiable results from improvements made to live services (omit sensitive external data).
Journey to Joining Toss Bank
- Application Submission > Live Coding Test > Job Interview > Cultural Fit Interview > Reference Check > Compensation Discussion > Final Acceptance and Onboarding
Please Note
- Any false information found in your resume or disciplinary actions in your work history may lead to cancellation of employment.
- Applicants who fall under the disqualification reasons per Toss Bank's employment regulations may have their applications canceled.
- Priority will be given to disabled individuals and national veterans in accordance with relevant laws.
