ICQA Data Analyst

Amazon
Kettering
3 days ago
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Job ID: 3198370 | Amazon UK Services Ltd. - A10


Operations is the heart and soul of everything Amazon does. It is thanks to effective operations that items are processed and dispatched to our customers on time. Being an Operations Lead/Supervisor gives you the chance to see how all the different parts of operations work and play a role in making sure everything runs smoothly. You’ll be the first point of contact for team members during their shift and help them follow the processes that your managers have put in place. This is a hands‑on role, which will give you experience in using the tools and systems that make our operations successful.


Key job responsibilities

  • Measurement of quality & inventory transaction integrity accuracy while providing feedback to the operations
  • Plan for and identify root causes of inventory deviation through cause & effect analysis
  • Design queries, compile data, and generate reports to present analysis (charts, graphs)
  • Review & analysis of customer defect data with development of corresponding action plans to reduce defect
  • Development of data collection processes and data management systems

A day in the life

You will ensure key performance metrics are reviewed on a daily, weekly, or monthly basis and perform detailed analysis on behaviors and processes impacting inventory integrity. You will work closely with the Inbound, Outbound, and Inventory Control operations to develop tools and analyze data to support improvement initiatives, dig deep into data to determine root cause of defects, build and maintain decision support tools, and present findings to business partners to drive improvements in fulfillment center (FC) wide quality. You will also partner with Area Managers & Operations Managers in the communication of policies in accordance to standard work.


About the team

Customer Fulfilment, or CF, is where it all started for Amazon. CF has scaled up from a humble team of booksellers to a sophisticated global team which handles more than 1.5 million orders every day. The team is the foundation of our business and its efforts have helped us diversify across new regions and services. With the help of emerging technology, we’re always looking for ways to offer a bigger, better product range – delivered quickly and affordably. The CF team are the first people in the chain that helps customers get products at the speed we’re known for. We’re based in Fulfilment Centres, which are at the heart of Amazon’s fast‑paced Operations network. Our centres are sometimes referred to as the ‘First Mile’ because it’s where most Amazon packages start their journey. We help to manage dynamic inventory and facilitate speedy deliveries round the clock. Lots of different people work in our Fulfilment Centres, so there are plenty of opportunities for every skillset. Some of us work with physical products, while others analyse data to help everyone across the business make smart decisions.


Basic Qualifications

  • Advanced proficiency in local language in both written and verbal communication
  • Relevant experience working with data analytics and using these metrics to identify problems
  • Relevant experience working with the MS Office suite (Word, Excel, Outlook) in a professional environment

Preferred Qualifications

  • Initiative to develop tools, data collection processes, and data management systems
  • Knowledge of Amazon systems and fulfillment center processes
  • Proficient with SQL / VBA
  • Good communication skills and ability to influence senior leadership based on findings
  • Experience working using Agile development

Amazon is an equal opportunities employer. We believe passionately that employing a diverse workforce is central to our success. We make recruiting decisions based on your experience and skills. We value your passion to discover, invent, simplify and build. Protecting your privacy and the security of your data is a longstanding top priority for Amazon. Please consult our Privacy Notice (https://www.amazon.jobs/en/privacy_page ) to know more about how we collect, use and transfer the personal data of our candidates. Amazon is an equal opportunity employer and does not discriminate on the basis of protected veteran status, disability, or other legally protected status. Our inclusive culture empowers Amazonians to deliver the best results for our customers. If you have a disability and need a workplace accommodation or adjustment during the application and hiring process, including support for the interview or onboarding process, please visit https://amazon.jobs/content/en/how-we-hire/accommodations for more information. If the country/region you’re applying in isn’t listed, please contact your Recruiting Partner.


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