Vanderlande

Airport Capacity Planning Data Scientist

Vanderlande  •  London, GB (Onsite)  •  8 days ago
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Job Description

Job Title

Airport Capacity Planning Data Scientist

Reports to: Process Information Manager

Location: London – Heathrow (All Terminals)

Contract Type: Permanent

Introduction to role

We are seeking an experienced Capacity Planning Data Scientist to join the Airport Capacity & Planning team at Vanderlande, embedded within Heathrow Airport’s baggage handling operations. This is a technically demanding role at the intersection of data science, operations research, and airport systems engineering.

Role Responsibilities

You will develop and maintain machine learning models, simulation tools, and analytical frameworks that directly inform capacity planning decisions across one of the world’s busiest airport baggage systems—processing in excess of 80 million bags annually across four terminals.

Your responsibilities and activities will include:

  • Design, build, and validate machine learning models (e.g. XGBoost, GBM, random forests) for forecasting baggage volumes, capacity utilisation, and recirculation rates across all terminals.
  • Engineer temporal and lag-based features from high-volume trace datasets (180M+ historical rows, 80,000+ daily ingestions) to improve model accuracy.
  • Conduct hyperparameter tuning, cross-validation, and model selection using rigorous statistical methods; target production-grade performance metrics (e.g. R² > 0.95, low RMSE/MAE).
  • Develop time-series decomposition and anomaly detection pipelines to identify emerging operational bottlenecks.
  • 2.2 Simulation & Capacity Analysis
  • Build and calibrate discrete event simulation (DES) models of terminal baggage systems to stress-test capacity under various demand scenarios.
  • Produce peak-flow analyses, what-if modelling, and scenario planning outputs to support infrastructure investment decisions and airline schedule changes.
  • Translate complex analytical outputs into clear, actionable capacity recommendations for operational stakeholders and airline partners.
  • Develop interactive Shiny applications and dashboards for real-time and historical performance monitoring.
  • Create publication-quality reports and presentations using LaTeX and PowerPoint for senior leadership, airline customers, and Heathrow Airport Ltd stakeholders.
  • Present findings to non-technical audiences, distilling complex statistical concepts into clear operational insights.
  • Stay current with advances in applied machine learning, operations research, and airport technology.
  • Identify opportunities to apply AI/ML techniques (e.g. GPU-accelerated training, LLM-assisted analysis) to improve operational decision-making.
  • Contribute to the team’s code standards, documentation, and reproducible research practices.

Role Qualification and Skills

  • Master’s degree (or equivalent) in Data Science, Statistics, Operations Research, Computer Science, Mathematics, or a closely related quantitative discipline
  • Demonstrable portfolio of applied machine learning projects with real-world datasets
  • Advanced proficiency in R programming, including tidyverse, data.table, caret/tidymodels, xgboost, and Shiny
  • Strong SQL skills with experience querying large-scale relational databases (Azure SQL, PostgreSQL, or equivalent)
  • Hands-on experience with DuckDB or similar columnar/analytical databases for high-performance local analytics
  • Solid understanding of supervised learning algorithms (gradient boosting, ensemble methods, regularised regression) with practical deployment experience
  • Experience with feature engineering for time-series and operational data, including lag features, rolling aggregates, and temporal encoding
  • Proficiency in data pipeline development using Azure Data Factory, or similar orchestration tools
  • Proven ability to translate business problems into analytical frameworks and deliver actionable recommendations
  • Excellent written and verbal communication skills; comfortable presenting to senior leadership and external stakeholders
  • Strong problem-solving mindset with attention to statistical rigour and reproducibility
  • Ability to work effectively within a team of 9 analysts while managing independent workstreams
  • Experience in aviation, airport operations, logistics, or baggage handling systems
  • Familiarity with discrete event simulation tools and methodologies
  • Knowledge of LaTeX for technical documentation and report generation
  • Experience with GPU-accelerated machine learning (CUDA, cuML) or high-performance computing environments
  • Exposure to version control (Git) and collaborative development workflows
  • Familiarity with Python as a secondary language for interoperability

What we offer

  • 28 days annual leave (excluding public holidays)
  • Bupa Medical Cover
  • YuLife – Wellbeing membership with fast access to GP appointments, promotion of health and wellbeing along with daily quests to gain Yucoins that can be swapped for shopping vouchers
  • A challenging work environment with lots of opportunities of career progression.
  • Cycle to work scheme
  • Yellow Nest is a salary exchange scheme that reduces childcare costs for parents and employers
  • Pension with Aviva
  • Access to Achievers an award-winning recognition platform that inspires to recognise your coworkers Where points are awarded that can be exchanged for a range of goods and discounts.

Diversity & Inclusion

Vanderlande is an equal opportunity/affirmative action employer. Qualified applicants will be considered without regards to race, religion, color, national origin, gender, sexual orientation, age marital status or disability status. If you feel there is a barrier that potentially prevents you from applying, we are always happy to discuss or explore, any reasonable adjustments can be made to support your application.

Vanderlande

About Vanderlande

Vanderlande is a market-leading, global partner for future-proof logistic process automation in the warehousing, airports and parcel sectors. Its extensive portfolio of integrated solutions – innovative systems, intelligent software and life-cycle services – results in the realisation of fast, reliable and efficient automation technology.

The company focuses on the optimisation of its customers’ business processes and competitive positions. Through close cooperation, it strives for the improvement of their operational activities and the expansion of their logistical achievements.

Established in 1949, Vanderlande has more than 11,000 employees and a turnover of 2.3 billion euros.

Toyota Industries Corporation (TICO) acquired Vanderlande in 2017 to cement its global leading position within material handling. It aims to achieve this by increasing its presence in all integrated and automated projects, and capitalising on the synergies between the organisations and the added value they offer to the market.

TICO therefore launched the Toyota Automated Logistics Group (TALG), which consists of Toyota L&F, Bastian Solutions, Vanderlande and viastore. TALG is a global partner for integrated logistic process automation, with its group companies collaborating under the guiding principle: for every challenge, a reliable solution.

In May 2025, Vanderlande completed the acquisition of Siemens Logistics' operations outside the USA and in doing so welcomed more than 2,000 new employees. The acquisition supports the company’s strategic ambition to accelerate its growth in automated logistics, particularly strengthening its capacity to deliver baggage, cargo and digital airport solutions.

Industry
Manufacturing & Production
Company Size
5,001-10,000 employees
Headquarters
Veghel, NL
Year Founded
1949
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