Data Analyst Expert

DHL
Hounslow
3 days ago
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Overview

Grade: L
Contract Type: Permanent (Full-Time)
Shift patterns: Monday - Friday - day shift
Location: Heathrow Airport (TW6 3AE) - Hybrid working 1/2 days (once fully trained)

PLEASE NOTE: The role is based within an airport. You will be required to undergo a security/background check if you are to be successful for this position.

Think you know DHL? Think again! We\'re not just about delivering parcels. DHL Supply Chain is the world\'s leading logistics company, providing top-notch ground handling services at numerous UK airports. Join us in our mission to deliver excellence in aviation logistics!

We\'re seeking a Data Analyst Expert to play an integral role in our aviation contract, delivering a first-class service and achieving fantastic results.

Responsibilities
  • Drive the definition of project contents, deliverables and timelines of data analytics projects, usually of a descriptive or diagnostic nature
  • Support predictive / prescriptive data analytics use cases through data preparation and basic programming (mapping, cleansing, exploratory analysis) and feature engineering
  • Gather and analyze data from different sources to inform business decisions, support process reviews and drive actionable insights
  • Apply mathematics and statistics to discover patterns and knowledge in recorded data - Build data models, analyses, and dashboards e.g. in Power BI
  • Develop analytics product prototypes and user front-ends (e.g. in PowerBI) for (executive) decision maker
Who this role would suit
  • Comfortable shaping analysis from scratch
  • Confident with Power BI and data modelling
  • Keen to work hands-on with operational teams through automation and digitalisation
  • Enthusiastic about using data to help us deliver real customer value
  • Knowledge of baggage handling/aviation contracts at Heathrow
  • Experience with ERP and BI systems.
Security process to work within aviation and travel at DHL

To obtain a full airside ID, you must:

  • Be able to provide five years\' address history
  • Be able to provide five years\' reference history (employment/education/benefit claim/character)
  • Pass a pre-employment Drug and Alcohol test
Why join us?
  • We\'re happy to talk about flexible working
  • Join our generous pension scheme and benefit from an 8% employer contribution, alongside a 4% employee contribution
  • Free confidential 24/7 GP consultations
  • Hundreds of retail and lifestyle discounts
  • Affordable loans, savings schemes and free mortgage advice
  • Visit the careers page to learn more
Who we are

We\'re the global leaders in supply chain management with 188,000 people in over 50 countries. Our expert teams work together to deliver for our customers across a range of industries including retail, automotive, healthcare and more.

Building an inclusive workplace

At DHL, we\'re all about creating a workplace where everyone\'s skills and experiences matter, and where you can be your true self every day.

As proud supporters of the Armed Forces Covenant, we value the skills and experience of ex-service personnel and are dedicated to helping our veterans find jobs.

Please be aware that interviews are provisionally scheduled to take place during the week commencing 16th March. Applications received after this date may not be considered but will be added to our talent pool for future opportunities, subject to your consent. Please also be aware that we review applications continuously and where we have a large number of applications the application period may close ahead of the provisional interview date. To ensure your application is considered we recommend submitting it as early as possible.


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