Head of Business Intelligence, Veeqo

Amazon
London
2 months ago
Applications closed

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Veeqo (veeqo.com) — a startup which was acquired by Amazon in 2021 — is Amazon’s recommended multichannel inventory and shipping solution for SMB sellers. Within only one year post-acquisition, Veeqo carried an S-Team goal and publicly launched at Accelerate 2022.

Our vision is to become the back office hub for SMB ecommerce sellers, for both their on-Amazon and off-Amazon business. We help sellers manage fulfillment operations across all their online stores, and ship orders to customers at the lowest cost and in the fastest possible time.

We are looking for an experienced Business Intelligence Engineer to play a pivotal role in owning complex analytics and serving as a team lead for BIEs and BAs on the team to help drive the growth of Veeqo.

Key job responsibilities
As a Head of Business Intelligence, you will be responsible for leading and mentoring a team of business intelligence engineers and business analysts to deliver high-quality work, ensuring business needs are effectively communicated and met. You will be responsible for conducting data analysis and deep dives to determine actionable insights, trends, and patterns to help inform and drive decision-making. You will collaborate with various teams across Veeqo, including Product, Marketing, Sales, Seller Support, and Finance to understand their needs and provide business analytic solutions and recommendations. You will be managing & prioritizing multiple projects simultaneously across the team, ensuring that they align with Veeqo’s strategic priorities.

BASIC QUALIFICATIONS

  1. Experience programming to extract, transform and clean large (multi-TB) data sets
  2. Experience with theory and practice of design of experiments and statistical analysis of results
  3. Experience in scripting for automation (e.g. Python) and advanced SQL skills.
  4. Experience with theory and practice of information retrieval, data science, machine learning and data mining
  5. Experience working directly with business stakeholders to translate between data and business needs
  6. Experience with SQL
  7. Experience with data visualization using Tableau, Quicksight, or similar tools
  8. Experience in the data/BI space

PREFERRED QUALIFICATIONS

  1. Experience managing, analyzing and communicating results to senior leadership
  2. Experience with AWS technologies
  3. 5+ years of SQL experience


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