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First Mile Group

Senior Data Scientist, Client Insights

First Mile Group, New York, NY


Alloy is where you belong! Alloy solves the identity risk problem for companies that offer financial products by enabling them to outpace fraud and confidently serve more people around the world. Banks and Fintechs turn to Alloy to take control of fraud, credit, and compliance risk, and grow with the clearest picture of their customers.  Through our values: Be Bold, Get Scrappy, Collaborate, and Celebrate Our Differences, we are creating a workplace where you can grow, thrive, and belong. See how we’ve been continuously recognized and named one of Inc.Magazine’s Best Workplaces, Forbes America’s Best Startup Employers, Best Fintech to Work for by American Banker, year after year.  Check out our investors and read more about us here.  About the teamThe Client Insights team focuses on helping clients get the most value out of their data. We rely on analytics and data science to help clients improve their policies, better detect fraud, and stay up to date with industry best practices. The Client Insights team is made up of data scientists and data engineers who are working to deliver in-app tools that leverage client data to enhance the agent experience and quicker detect fraud.What you’ll be doingApply statistical and machine learning methods to build customer-facing models.Work closely with application engineers to operationalize models you've built, ensuring they meet rigors for customer usage, including model performance tracking and having mechanisms to retrain models.Take the initiative to innovate on our current models and apply new methodologies to new and existing problems/projects/products.Thought leadership around data governance and standardizationSet standards for feature/variable definitionsProduce documents that give visibility into the data pipelines you've built.Partner with engineering and product leads to provide guidance and leadership in roadmap planning.Anticipate future support and maintenance overhead for the data-driven features and models you've built.Analyze our data sets to help inform product roadmaps.Devise optimization models to recommend ways to improve fraud and compliance workflows.Use heuristics, anomaly detection methods, and unsupervised machine learning methods to detect and predict fraud.Leverage a deep, data-driven understanding of the key drivers and metrics underpinning Alloy's products and business lines to draw insights and make recommendations that will help the company grow and scale effectivelyConduct bespoke analyses and research for new customer use cases that support future development of data science productsWe’re looking forYou are:Always building with end-solution in mind. Able to communicate complicated concepts to a non-technical audience without diluting the complexity of the work.Able to build strong cross-functional relationships within Alloy.Naturally curious with a knack for asking tough questions.A team player. You believe that big things happen when the right people are working together.A fast learnerHumble. Mistakes happen and owning them helps us learn and move on quicklyAn excellent teammate, willing to offer help and advice when neededProduct-oriented. You have a desire to understand Alloy's business, strategy and priorities to help guide future product developmentYou have:6 years of relevant experience as a data scientist, conducting advanced analytics and building/iterating on real-world production end-to-end models.2 years experience as a tech leadAdvanced proficiency in scripting languages like Python and querying languages like SQLExperience with classification, clustering, regression, and time series models.Experience working with unbalanced data sets and regularization methods.Experience building models from scratch, iterating, and owning projects end to end.A BA in a quantitative field, or equivalent experienceYou have experience in a highly analytical role in fast-paced environmentsYou have a knack for details, and making sure things are correct/accurateNice to Haves:Professional experience in fraud detectionExperience maintaining production machine learning modelsExperience with AWS SageMakerPrior startup experienceAirflowSparkDbtGitHexAt Alloy, we strive to attract & retain talent by providing compensation that is competitive with other organizations of our size & stage. We are committed to ensuring each candidate has what they need to be successful in their role with a balanced range of compensation, equity, perks & benefits. We actively share our compensation philosophy with employees, with the goal of fostering open and honest dialogue. Finally, we work to administer our philosophy and drive consistency in order to promote equity and monitor the fairness of each outcome.This position has a minimum base salary of $150,000 and a midpoint base salary of $177,000. The base pay may vary depending on job-related knowledge, skills, and experience. In addition to a competitive base salary, this position is also eligible for equity awards in the form of stock options (ISOs).Benefits and Perks Unlimited PTO and flexible work policyMedical, dental, vision plans with HSA (monthly employer contribution) and FSA options401k with 100% match up to 4% of annual employee compensation with immediate eligibility and vesting Eligible new parents receive 16 weeks of paid parental leaveHome office stipend for new employeesHealth & wellness monthly stipend$1,000 learning & development annual stipendWell-being benefits include access to OneMedical and ClasspassWe're a lean team, so your impact will be felt immediately. If this all sounds like a good fit for you, why not join us?How to ApplyApply right here. You've found the application!Alloy is proud to be an equal opportunity workplace and employer. We’re committed to equal opportunity regardless of race, color, ancestry, religion, gender, gender identity, parental or pregnancy status, national origin, sexual orientation, age, citizenship, marital status, disability, or veteran status. We are committed to an inclusive interview experience and provide reasonable accommodations to applicants with visible and invisible disabilities. We encourage applicants to share needed accommodations with their recruiter.