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Data Solutions Architect (EMEA)

Anomalo
London
8 months ago
Applications closed

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About Anomalo Data management solutions accounted for more than one-fifth of all enterprise infrastructure spend in 2021. The “modern data stack” promises a centralized data platform for powering valuable new applications, from AI-powered products to real-time analytics. Unfortunately, a big problem stands in the way of most data projects and products – the issue of data quality. Rules-based data quality approaches that worked when data was small and tightly controlled don’t scale. And with more data sources, transformations, and users, quality issues are multiplying fast. The vast majority of issues go uncaught—until they lead to an expensive fire drill. Anomalo is the automated AI solution that plugs directly into the modern data stack and automatically monitors tables for a wide range of data quality issues. Our software uses unsupervised learning to catch deep problems in the data, like sudden changes in the distribution, that aren’t covered by static rules or basic observability. With built-in root cause analysis, Anomalo shows not only whether data is anomalous but also why and what the impact is. This prevents data issues from reaching dashboards, reports, and products, while data teams spend less time debugging and more time building. We’re rapidly growing and work with some of the biggest brands leveraging data today, like Block, Discover Financial Services, Buzzfeed, and Notion. The company has raised a total of $72M seed through Series B funding and is backed by top-tier venture firms like SignalFire, Norwest Venture Partners, Databricks Ventures, Foundation Capital, Two Sigma Ventures, and First Round Capital. Anomalo is building the platform that data-driven companies need to be able to make good data-driven decisions, and would love to have you join for the ride. As the first Data Solutions Architect in the EMEA region at Anomalo, you'll be instrumental in expanding our global customer solutions presence. You'll engage directly with enterprise customers across diverse industries, providing expert guidance on data quality monitoring and helping shape our offerings to meet regional needs. You'll also serve as a key point of contact for customer calls, ensuring their success while working closely with our global teams to drive innovation and excellence. What you’ll do as a Data Solutions Architect at Anomalo: Become an expert in data quality monitoring, and advise our industry-leading customers on the best way to monitor their complex datasets in cloud data warehouses like BigQuery, Snowflake, Databricks and Redshift via Anomalo Work closely with enterprise customers across multiple verticals to help solve their most complex data monitoring challenges Advise customers on how best to evolve the structure of their datasets to ensure they can effectively monitor their data for changes they care about Help customers understand and triage alerts that they are not familiar with, and advise configuration changes when necessary Develop working relationships with technical peers in data engineering, data science, and analytics at our customers Be a resource for our sales and customer success teams when they need technical questions answered about how best to apply Anomalo to a customer need Identify areas of opportunity for improving our product, algorithms, and processes and convey those to partners in product, engineering, and support What you’ll bring to the team: 8 years of data analytics experience Very proficient in SQL and data analysis in R or Python Experience working with one or more cloud data warehouse platforms (Snowflake, Bigquery, Redshift, etc.) or an equivalent MPP data warehouse Able to understand and advise on data quality problems across a variety of industries and use cases Track record of communicating complex analytical insights or findings to internal or external customers Bachelor’s degree or higher in Mathematics, Statistics, Computer Science or a related discipline or equivalent practical experience Nice to have: Experience with python Experience working with time series and unsupervised machine learning algorithms Experience with data transformation (DBT) and orchestration (Airflow) platforms Experience in financial services and health services verticals Location & Travel: Planned travel once per quarter to our company on-sites to spend time with the team (required). Remote - EMEA based - Ability to support global customers Salary Range: The estimated annual salary range for this role is €160,000 - €195,000 plus meaningful equity Benefits: A best in class benefits package including: unlimited time off, comprehensive medical, dental, and vision, fertility and family planning coverage, mental health and wellness coverage, quarterly offsites in exciting destinations to spend time with your colleagues. Perks of working with us: Make An Impact: Join a growing company that delights our customers. Our modern UI and rich visualizations help our customers solve unknowns and anticipate data issues before they happen. A values-driven, open and transparent culture that supports autonomy and growth. Fully Remote: We were fully remote before it was a thing, and we believe your best work happens on your schedule. We offer a generous $2,000 stipend to ensure your remote office is comfortable. ✈ Quarterly Offsites: While we love the flexibility of being remote-first, we also recognize the value of spending time together in person. We make time to get together (in a new destination) for a company-wide offsite each quarter. Generous Time Off: Enjoy 17 company holidays and unlimited vacation time that we encourage you to take. We also have a company-wide winter break the last week of the year. Health Benefits: Comprehensive family-friendly medical, dental, and vision insurance plans. Anomalo covers 90% of your premiums. We provide access to family planning and reproductive care for our employees and their families by partnering with Carrot Fertility. We provide mental health and wellness benefits for all employees, covered at 100%. Family Comes First: We offer 16 weeks of parental leave, during which you will receive your full pay. Investment in the company & your future: Every employee is granted a meaningful equity package. We also offer life insurance and a 401(k) plan. Most of our benefits and perks are available to full-time employees only. What we value: Rational Optimism - We rely on each other to make principled decisions backed by data and logic For & By All - Diverse, inclusive teams build better products that represent the needs of our customers Own It - We champion ownership, and we take accountability for our work Opacity Zero - Transparency enables our autonomous and fact-driven culture Outcomes > Hours - People should work when and where they will be most productive YOLO - Life's too short not to have fun at work If you have a disability or special need that requires accommodation, please confidentially let us know at accommodationsanomalo.com .

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