Applied Scientist / Applied ML Engineer

Tolken

Tolken

Software Engineering, Data Science

India · Remote

Posted on May 6, 2026

Location

Remote

Employment Type

Full time

Location Type

Remote

Department

Engineering

The Role

We are looking for an Applied Scientist / Applied ML Engineer to design, build, and deploy machine learning models that power pricing, bidding, and decisioning on a cross-border payments platform. This role owns problems end to end, from formulation to production, and partners closely with Product and Backend Engineering.

Key Responsibilities

  1. End-to-End ML Ownership

    • Own end-to-end ML solutions for pricing, bidding, and risk decisioning.

    • Formulate model objectives from first principles, including loss functions, constraints, and metrics, and implement them as production-grade services.

  2. Experimentation & Iteration

    • Design and run experiments, including A/B tests and offline evaluations, and iterate with clear success metrics.

  3. Production Monitoring

    • Monitor models in production, investigate regressions, and continuously improve performance.

Requirements

Essential

  • 3-7 years of experience as an ML Engineer, Applied Scientist, or Data Scientist in industry.

  • Bachelor's or Master's in Computer Science, Machine Learning, Mathematics, Statistics, or equivalent practical experience.

  • Strong Python skills, including pandas, NumPy, and scikit-learn, plus at least one of PyTorch, TensorFlow.

  • Strong ML fundamentals, including supervised and unsupervised learning, model evaluation, regularization, feature engineering, and statistics.

  • Experience designing models from first principles and shipping them to production, in batch or real-time.

  • Hands-on experience with data pipelines and ETL, such as Airflow or Spark, and strong SQL for feature engineering.

  • Experience integrating ML into REST or gRPC APIs and microservice architectures.

  • Ability to design and interpret experiments with statistical rigor.

  • Strong problem-solving and communication skills, and the ability to work effectively in cross-functional and distributed teams.

Nice to Have

  • Optimization, bandits, or decision-making under uncertainty, including dynamic pricing and bid optimization.

  • Bidding, auctions, marketplace, or recommendation systems experience.

  • Fintech background, including payments, cross-border, lending, trading, or risk and scoring.

  • Fraud, AML, credit risk, or vendor risk scoring models.

  • Model explainability tooling, including SHAP and feature importance, for auditable decisions.

  • Cloud experience (AWS, GCP, or Azure), Docker, and MLOps basics such as model registry and CI/CD.

What We Offer

  • Real ML in production with direct impact on pricing, risk, and vendor decisions at scale.

  • Ownership of core models with room to influence architecture and roadmap.

  • Strong engineering peers and complex optimization problems in a high-growth fintech.

Equal Opportunities Statement

Tolken is an equal opportunity employer. We are committed to creating an inclusive environment for all employees.