At a Glance
- Tasks: Design and evaluate ML models for predicting cargo and vessel destinations.
- Company: Join Kpler, a dynamic leader in global trade intelligence.
- Benefits: Inclusive culture, competitive salary, and opportunities for professional growth.
- Other info: Diverse team with a focus on innovation and customer satisfaction.
- Why this job: Make a real impact in commodities and maritime sectors with cutting-edge technology.
- Qualifications: 2+ years of ML experience and proficiency in Python required.
The predicted salary is between 60000 - 80000 £ per year.
At Kpler, we are dedicated to helping our clients navigate complex markets with ease. By simplifying global trade information and providing valuable insights, we empower organisations to make informed decisions in commodities, energy, and maritime sectors. Since our founding in 2014, we have focused on delivering top-tier intelligence through user‑friendly platforms. Our team of over 850 experts from 69 countries works tirelessly to transform intricate data into actionable strategies, ensuring our clients stay ahead in a dynamic market landscape.
The Commodities tribe at Kpler runs production ML models that predict what cargo a vessel is carrying (Product Estimation) and where in‑transit vessels are headed (Destination Forecast), and where they are expected to arrive (ETA) across LNG, DRY, LPG, and LIQUIDS. These predictions feed directly into Kpler's cargo intelligence platform, consumed by market analysts, trading desks, and external customers worldwide. You will own the science behind these models: designing and evaluating features from maritime AIS data, H3 geospatial routing distributions, transit statistics, and commodity‑specific signals; running structured experiments on an ML‑Flow based platform; and pushing the accuracy, coverage, and reliability of predictions forward.
Key Responsibilities
- Own the feature engineering roadmap for ETA & Destination Forecast across all 4 commodity types – propose and implement new features as dbt models using Airflow to orchestrate the data pipelines, and validate their impact through structured experiments.
- Design and run experiments using the kpler‑ml framework, logging all runs from train to evaluation to MLflow and producing structured comparison reports against the production baseline before any promotion.
- Work directly with Commodities Market Analysts and product stakeholders to understand where prediction quality matters most commercially – and use that to prioritise the experiment backlog.
- Contribute to the drift monitoring setup – validate PSI/KS thresholds using MLFlow against historical inference batches; define what constitutes a meaningful drift signal for PE and DF specifically.
- Document experiment decisions in MLflow and Confluence documents – the experiment history is a first‑class artifact, not an afterthought.
Experience & Background
- 2+ years applying ML to real‑world production problems – not research or hackathon work, but models running in production with real consequences for errors.
- Experience with geospatial or sequential data – vessel trajectories, routing patterns, H3/S2 grid systems, or equivalent spatial representations.
- Python proficiency at a level sufficient to implement new features, write dbt models, and script experiments – not just use notebooks.
- Familiarity with MLflow or equivalent experiment tracking (Weights & Biases, Neptune, etc.).
Desirable
- Domain knowledge of maritime shipping, commodity trading, or cargo intelligence – understanding what a port call sequence or a vessel's draught profile means physically, not just statistically.
- Familiarity with Redshift or columnar warehouses for large‑scale feature queries and dbt (authoring or reading SQL models).
We are a dynamic company dedicated to nurturing connections and innovating solutions to tackle market challenges head‑on. If you thrive on customer satisfaction and turning ideas into reality, then you’ve found your ideal destination. Kpler is committed to providing a fair, inclusive and diverse work‑environment. We believe that different perspectives lead to better ideas, and better ideas allow us to better understand the needs and interests of our diverse, global community. We welcome people of different backgrounds, experiences, abilities and perspectives and are an equal‑opportunity employer.
Data Scientist in London employer: Kpler
Kpler is an exceptional employer that fosters a collaborative and innovative work culture, perfect for those passionate about data analysis in the metals market. With a strong emphasis on employee growth, Kpler offers numerous opportunities for professional development and skill enhancement, particularly in a vibrant location that encourages networking and industry engagement. Join us to be part of a forward-thinking team where your contributions directly impact our clients and the broader market landscape.
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We think you need these skills to ace Data Scientist in London
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Show Off Your Projects:In the world of data science, your projects can speak volumes about your skills. Make sure to showcase a few key projects in your CV or portfolio, especially those that highlight your ability to work with data sets, build models, or use relevant tools like Python, R, or SQL. Don’t forget to include links to any GitHub repositories if applicable!
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