Business intelligence engineer, Global Mile Forecast and Planning

TN United Kingdom
London
1 month ago
Applications closed

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Business Intelligence Engineer, Global Mile Forecast and Planning, LondonClient:

Amazon UK Services Ltd.

Location:

London, United Kingdom

EU Work Permit Required:

Yes

Job Reference:

095524ce5896

Job Description:

The Global Mile planning BIE role is vital to our ambitious growth plans, supporting the production and sign off of a multi-functional plan.

Global Mile merges professional expertise, experience in international transportation and customs brokerage, innovation in supply-chain design and management, and world-class operations in order to digitize cross-border transactions. Our globally based teams of Product, Program, and Supply Chain Managers, Strategists, Analysts, and Sales and Operations Managers are building a global network that improves speed, reduces costs, and brings selection closer to Customers.

Our team is seeking experienced professionals to join our Global Shipping team providing business insights and deep dives that will determine our product designs, segment focus and shape our value proposition to our customers. Qualified candidates will bring their technical expertise and have the ability to directly impact the building of new tools, services, and distribution structures across Amazon’s growing footprint. The insights and analysis enabled by this role will deliver unprecedented selection while innovating beyond established supply chain norms. The right candidate will thrive in a fast-paced, ambiguous environment with interactions across a wide variety of e-commerce topics, and will demonstrate competence in multiple fields and skill sets.

As a BIE, you will serve as the subject matter expert on presenting data in an informative and actionable way, facilitating productive, cross-functional dialogue, especially between operators and key leadership. You will help to build and define the strategy for the Business Insights team and its projects. You will help build analytical models, develop new techniques to process large data sets, apply statistical testing methods, address quantitative problems, build dashboards that enable leaders to better understand their business data, assess functional business performance, and develop targeted, scalable action plans. As an experienced data expert, you will also be responsible for coaching and mentoring junior members within the team. You will be responsible for designing and implementing tangible insights, business metrics, and measurement systems that guide operations, projects, and programs roadmaps. You will have an opportunity to publish findings, updates, and data-driven recommendations to Senior Leadership. You will hold a highly visible role that requires interaction with leaders across operations.

BASIC QUALIFICATIONS
- Experience using SQL to pull data from a database or data warehouse and scripting experience (Python) to process data for modeling
- Experience with data modeling, warehousing and building ETL pipelines
- Experience in Statistical Analysis packages such as R, SAS and Matlab
- Experience with data visualization using Tableau, Quicksight, or similar tools

PREFERRED QUALIFICATIONS
- Experience with forecasting and statistical analysis
- Experience in data mining, ETL, etc. and using databases in a business environment with large-scale, complex datasets.

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