Senior Data Scientist, Ring Data Science and Engineering

Amazon
London
6 days ago
Create job alert

Senior Data Scientist, Ring Data Science and Engineering

Job ID: 2902116 | AMZN Dev Cntr Poland sp. z.o.o

Come build the future of smart security with us. Are you interested in helping shape the future of devices and services designed to keep people close to what’s important?

The Senior Data Scientist within Ring Data Science and Engineering plays a pivotal role in better understanding how customers interact with our products and how we can improve their experience. This role will build scalable solutions and models to support our business functions (Subscriptions, Product, Customer Service). By leveraging a range of methods with an emphasis on causal techniques, you will explain, quantify, predict and prescribe in support of informing critical business decisions. You will help the organization better understand customers and how to best impact them. You will seek to create value for both stakeholders and customers and inform findings in a clear, actionable way to managers and senior leaders.

Key job responsibilities

  1. Lead development and validation of state-of-the-art technical designs (causal inference, predictive tabular models, data insights/visualizations from EDA, etc).
  2. Drive shared understanding among business, engineering, and science teams of domain knowledge of processes, system structures, and business requirements.
  3. Apply domain knowledge to identify product roadmap, growth, engagement, and retention opportunities; quantify impact; and inform prioritization.
  4. Advocate technical solutions to business stakeholders, engineering teams, and executive level decision makers.
  5. Contribute to the hiring and development of others.
  6. Communicate strategy, progress, and impact to senior leadership.

A day in the life

  1. Translate/Interpret: Complex and interrelated datasets describing customer behavior, messaging, content, product design and financial impact.
  2. Measure/Quantify/Expand: Apply statistical or machine learning knowledge to specific business problems and data. Analyze historical data to identify trends and support decision making. Improve upon existing methodologies by developing new data sources, testing model enhancements, and fine-tuning model parameters. Provide requirements to develop analytic capabilities, platforms, and pipelines.
  3. Explore/Enlighten: Make decisions and recommendations. Build decision-making models and propose solution for the business problem you defined. Help productionalize them so they can be used systemically. Conduct written and verbal presentation to share insights and recommendations to audiences of varying levels of technical sophistication. Utilize code (Python/R/SQL) for data analyzing and modeling algorithms.

About the team

We started in a garage in 2012 when our founder asked a simple question: what if you could answer the front door from your phone? What if you could be there without needing to actually, you know, be there? After many late nights and endless tinkering, our first Video Doorbell was born. That invention has grown into over a decade of groundbreaking products and next-level features. And at the core of all that, everything we’ve done and everything we’ve yet to build, is that same inventor's spirit and drive to bridge the distance between people and what they care about. Whatever it is, at Ring we’re committed to helping you be there for it.

BASIC QUALIFICATIONS

  1. Bachelor's degree.
  2. Industry experience as a Data Scientist.
  3. Experience of data querying languages (e.g. SQL), scripting languages (e.g. Python) or statistical/mathematical software (e.g. R, SAS, Matlab, etc.) experience.
  4. Experience with a wide variety of modelling approaches with an emphasis on causality (e.g. DML).
  5. Hands-on experience in modelling and analysis, and in deploying machine learning / deep learning models in production.

PREFERRED QUALIFICATIONS

  1. Master's degree in a quantitative field such as statistics, mathematics, data science, business analytics, economics, finance, engineering, or computer science.
  2. Experience managing data pipelines and helping develop ML Ops stacks.
  3. Experience as a leader and mentor on a data science team.
  4. Knowledge of AWS tech stack (e.g., AWS Redshift, S3, EC2, Glue).
  5. Domain knowledge of comparable products and services.

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 to know more about how we collect, use and transfer the personal data of our candidates.

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 our accommodations page for more information. If the country/region you’re applying in isn’t listed, please contact your Recruiting Partner.

Amazon is committed to a diverse and inclusive workplace. Amazon is an equal opportunity employer and does not discriminate on the basis of race, national origin, gender, gender identity, sexual orientation, protected veteran status, disability, age, or other legally protected status.

#J-18808-Ljbffr

Related Jobs

View all jobs

SENIOR DATA SCIENTIST - Computer Vision / Generative AI HYBRID

Senior Data Scientist/ Senior Risk Scientist

Senior Data Scientist

Senior Data Scientist

Senior Data Scientist - Insurance

Senior Data Scientist - London

Get the latest insights and jobs direct. Sign up for our newsletter.

By subscribing you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Top 10 Data Science Career Myths Debunked: Key Facts for Aspiring Professionals

Data science has become one of the most sought-after fields in the tech world, promising attractive salaries, cutting-edge projects, and the opportunity to shape decision-making in virtually every industry. From e-commerce recommendation engines to AI-powered medical diagnostics, data scientists are the force behind innovations that drive productivity and improve people’s lives. Yet, despite the demand and glamour often associated with this discipline, data science is also shrouded in misconceptions. Some believe you need a PhD in mathematics or statistics; others assume data science is exclusively about machine learning or coding. At DataScience-Jobs.co.uk, we’ve encountered a wide array of myths that can discourage talented individuals or mislead those exploring a data science career. This article aims to bust the top 10 data science career myths—providing clarity on what data scientists actually do and illuminating the true diversity and inclusiveness of this exciting field. Whether you’re a recent graduate, a professional looking to pivot, or simply curious about data science, read on to discover the reality behind the myths.

Global vs. Local: Comparing the UK Data Science Job Market to International Landscapes

How to evaluate salaries, opportunities, and work culture in data science across the UK, the US, Europe, and Asia Data science has proven to be more than a passing trend; it is now a foundational pillar of modern decision-making in virtually every industry—from healthcare and finance to retail and entertainment. As the volume of data grows exponentially, organisations urgently need professionals who can transform raw information into actionable insights. This high demand has sparked a wave of new opportunities for data scientists worldwide. In this article, we’ll compare the UK data science job market to those in the United States, Europe, and Asia. We’ll explore hiring trends, salary benchmarks, and cultural nuances to help you decide whether to focus your career locally or consider opportunities overseas or in fully remote roles. Whether you’re a fresh graduate looking for your first data science position, an experienced data professional pivoting from analytics, or a software engineer eager to break into machine learning, understanding the global data science landscape can be a game-changer. By the end of this overview, you’ll be better equipped to navigate the expanding world of data science—knowing which skills and certifications matter most, how salaries differ between regions, and what to expect from distinct work cultures. Let’s dive in.

Data Science Leadership for Managers: Strategies to Motivate, Mentor, and Set Realistic Goals in Data-Driven Teams

Data science has become a linchpin in modern business, transforming oceans of raw data into actionable insights that guide strategy, product development, and personalised customer experiences. With this surge in data-centric operations, the need for effective data science leadership has never been more critical. Guiding a team of data scientists, analysts, and machine learning engineers requires not only technical acumen but also the ability to foster collaboration, champion ethical practices, and align complex modelling efforts with overarching business goals. This article provides practical guidance for managers and aspiring leaders aiming to excel in data-driven environments. By exploring strategies to motivate data science professionals, develop mentoring frameworks, and set achievable milestones, you will be better prepared to steer your team towards meaningful, evidence-based outcomes.