DP World

Machine Learning Scientist

DP World  •  Bengaluru, IN (Hybrid)  •  3 months ago
Apply
AI can make mistakes so check important info. Chat history is never stored.

Job Description

KEY ACCOUNTABILITIES

● Build ML solutions for decision-making problems: planning, sequencing, routing,
allocation, and resource utilization.
● Prototype fast using agentic coding tools (e.g., Claude Code-style workflows):
generate scaffolds, refactor, write tests, iterate on experiments—while maintaining
strong engineering discipline.
● Develop and evaluate models in areas like:
○ Optimization & solvers: MILP/CP-SAT, heuristics/metaheuristics, constraint
programming, search methods
○ Deep RL / Decision Intelligence: RL baselines, offline RL, bandits,
MCTS-style planning, policy/value learning
○ Predictive ML: forecasting and estimation models that feed decision systems
● Design robust evaluation harnesses: offline simulation, counterfactual testing,
ablations, and scenario analysis; define KPIs and acceptance thresholds.
● Collaborate with ML engineers to support productionization: latency/throughput
constraints, monitoring, reproducibility, model versioning, and safe rollout.
● Write clear technical documentation and communicate findings to both technical and
non-technical stakeholders.

What We’re Looking For (Required)
● 0–5 years experience in applied ML / data science / applied research (internships,
thesis work, and strong project portfolios count).
● Demonstrated experience using agentic coding assistants in real development
(e.g., Claude Code, similar agentic coding environments) to accelerate
iteration—without sacrificing code quality.
● Strong Python skills and comfort with ML tooling (PyTorch preferred; TensorFlow ok).
● Solid foundations in algorithms, probability/statistics, and experimental design.
● Ability to translate messy real-world problems into clear formulations and measurable
success metrics.

Strong Plus / Preferred
● Prior work in Deep RL (a strong differentiator), such as:
○ PPO/SAC/DQN style methods, offline RL, imitation learning, MCTS/planning
hybrids
○ Building environments/simulators, reward design, stability/debugging,
evaluation
● Experience with simulation-based evaluation or digital twins (even lightweight
simulators).
● Familiarity with MLOps basics: MLflow, Docker, CI/CD, model monitoring.
● Domain exposure to logistics/supply chain/industrial operations (nice-to-have, not
required).

Tools & Tech (Indicative)
Python, PyTorch, OR-Tools / solver stacks, RL libraries (Ray RLlib / Stable Baselines), SQL,
Docker, Git, MLflow; cloud platforms a plus.

#LI-MP1

DP World

About DP World

Trade is the lifeblood of the global economy, creating opportunities and improving the quality of life for people around the world. DP World exists to make the world’s trade flow better, changing what’s possible for the customers and communities we serve globally.

With a dedicated, diverse and professional team of more than 119,000 employees from 164 nationalities, spanning 83 countries on six continents and 560+ business units, DP World is pushing trade further and faster towards a seamless supply chain that’s fit for the future.

We’re rapidly transforming and integrating our businesses -- Ports and Terminals, Marine Services, Logistics and Technology – and uniting our global infrastructure with local expertise to create stronger, more efficient end-to-end supply chain solutions that can change the way the world trades.

What's more, we're reshaping the future by investing in innovation. From intelligent delivery systems to automated warehouse stacking, we’re at the cutting edge of disruptive technology, pushing the sector towards better ways to trade, minimising disruptions from the factory floor to the customer’s door.

WE MAKE TRADE FLOW

TO CHANGE WHAT'S POSSIBLE FOR EVERYONE

Industry
Transportation & Logistics
Company Size
10,000+ employees
Headquarters
Dubai, AE
Year Founded
Unknown
Social Media