We empower dealmakers around the world with the tools they need to succeed across the entire M&A lifecycle.
Data Operations Engineer
Location
United States
Posted
40 days ago
Salary
$99K - $172.7K / year
Seniority
Mid Level
Job Description
Data Operations Engineer
Datasite
Role Description As a Data Operations Engineer at Datasite, you own the full lifecycle of partner data as it moves through our systems — ingestion, transformation, validation, and reconciliation — bringing the monitoring and SLA discipline that sophisticated partners expect. You balance partner trust, engineering velocity, and long-term data platform health while enabling intelligent, contract-driven data exchange across our partner ecosystem. You bring hands-on experience with modern data tooling (Snowflake, dbt, Airflow, schema registries) paired with practical, AI-augmented workflows that compress manual investigation into minutes. You will help ensure new partnerships are delivered on a foundation of trustworthy data, with the rigor and creative problem solving that lets the broader engineering team stop firefighting and start building. Qualifications - Strong experience designing and operating data pipelines with defined latency, freshness, and accuracy SLAs - Expert SQL skills and proven ability to work with large, complex datasets across diverse partner schemas - Hands-on experience with modern data tooling such as Snowflake, dbt, Airflow, and schema registries - Practical, in-the-workflow use of agentic tooling to accelerate schema mapping, anomaly detection, data profiling, and pipeline debugging - Track record of building monitoring, alerting, runbooks, and reconciliation processes for systems with external commitments - Ability to ramp quickly on new partner ecosystems, data formats, and domains - Proven success leading work in ambiguous, fast-moving environments - Excellent collaboration, communication, and cross-team influence Requirements - Guide data architecture decisions that incorporate AI-augmented capabilities into ingestion, transformation, and reconciliation workflows for partner integrations. - Partner with Product, Engineering, and partner teams to develop flexible data roadmaps aligned to Datasite strategy while adapting to fast-evolving partner data needs. - Drive pipeline improvements that scale across diverse partner data formats, reduce operational overhead, and improve reliability of SLA-bound data products. - Maintain adaptable data contracts and schema strategies, enabling rapid onboarding of new partners in uncertain, high-velocity environments. - Identify and drive cross-platform improvements (schema registries, validation tooling, data contracts, lineage tracking) that enhance partner and developer experiences. - Collaborate across Engineering, Product, and partner teams to deliver AI-first, integration-ready data solutions. - Communicate complex data concepts clearly, translating pipeline design trade-offs and SLA commitments for diverse stakeholders. - Provide technical guidance that ensures alignment, simplicity, and consistency across data flows and partner integrations. - Evaluate trade-offs across freshness, accuracy, latency, and cost, especially in partner-driven and AI-augmented data workflows. - Simplify pipelines and drive down data debt while supporting rapid experimentation and onboarding of new partners. - Own ambiguous data challenges — mismatched schemas, silent failures, partial loads, reconciliation gaps — and drive them to resolution. - Apply strong diagnostics to identify root causes of data discrepancies and deliver resilient, auditable solutions. - Mentor engineers and analytics contributors through coaching and feedback, including adoption of modern and AI-augmented data practices. - Support team growth by promoting continuous learning, experimentation, and adaptability in data engineering methods. - Foster a culture of psychological safety, collaboration, and shared ownership of data quality. - Help raise the bar in hiring, ensuring alignment with Datasite's technical and cultural expectations. - Own end-to-end design and delivery of ingestion pipelines, transformation layers, reconciliation processes, and partner-facing data products. - Build pipelines with strong observability, alerting, and self-healing characteristics — so issues are identified and, where possible, remediated before they become partner-visible. - Track progress, manage risk, and adapt plans while maintaining a bias for action and high-quality execution. - Ensure new partnerships are delivered with care, reliability, and ingenuity, balancing speed with long-term data integrity. Benefits - Health insurance (medical, dental, vision) - Retirement savings plan - Paid time off - Other employee benefits Company Description Our company is committed to fostering a diverse and inclusive workforce where all individuals are respected and valued. We are an equal opportunity employer and make all employment decisions without regard to race, color, religion, sex, gender identity, sexual orientation, age, national origin, disability, protected veteran status, or any other protected characteristic. We encourage applications from candidates of all backgrounds and are dedicated to building teams that reflect the diversity of our communities.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Senior Data Engineer
WriskWrisk provides digital insurance solutions, specializing in automotive solutions, to create personalized and accessible insurance options through innovative technology. Wrisk promo
Senior Data Engineer Remote Full time Edinburgh, Scotland, United Kingdom Description As a Senior Data Engineer with Atto, you will be part of our Data Science & Engineering team, helping our customers use transactional intelligence to drive smarter financial decisions and build impactful products. You’ll play a key role in designing and delivering scalable, production-ready analytical solutions that turn complex data into meaningful insights. You will own and improve the systems that ingest, transform, and serve large-scale transactional data sets. You will be responsible for designing resilient data pipelines, implementing robust data models, deploying real-time and batch processing systems, and introducing observability, testing and automation to keep our data trustworthy at scale. You will work closely with the data science and product teams to understand customer needs and the direction of internal strategy, producing measurable data engineering outcomes. We’re looking for someone who’s passionate about technology, curious about data infrastructure, and excited to solve real problems. You’ll need a strong foundation in data engineering, a creative mindset, and the ability to communicate clearly with both technical and non-technical stakeholders. You’ll be supported with training and development opportunities to deepen your expertise and stay ahead of industry trends. Responsibilities - Design, build, and operate data ingestion and ETL/ELT pipelines for our data systems that power Atto products and customer-facing applications. - Build and maintain our data platform architecture and infrastructure, including data pipelines, warehouses that power analytics and product features and reporting. - Implement data modelling, schema design, and data contracts to make datasets easy to consume. - Introduce and maintain observability, data quality checks, and automated testing for our production data flows. - Driving impact at scale by improving data workflows, service reliability, and making Atto’s capabilities faster, more reliable and widely accessible. - Collaborate with product managers and cross-functional teams to translate market signals and customers’ needs into innovative data-driven solutions. - Create new systems and approaches, while continuously improving and scaling existing ones for performance, reliability, and efficiency. - Conduct deep analysis of transactional datasets to validate data models, surface data quality issues, and propose engineering fixes. - Optimise performance and cost of data processing and storage across cloud services. - Communicate technical findings and recommendations clearly to both technical and non-technical stakeholders across the business. - Stay current with industry developments, emerging technologies, and best practices in data engineering. Requirements - A Bachelor's degree in Computer Science, Data/Software Engineering, or a related discipline. - 5+ years of hands-on experience in data engineering with a proven track record of delivering scalable, production-grade data platforms and data models. - Strong SQL skills and proven experience designing, building and optimising data pipelines and data warehouse schemas. - Strong proficiency in Python for production data engineering with a focus on building maintainable, testable and clean code. - Track record of implementing data quality, observability, monitoring and testing practices. - Solid experience with at least one cloud provider (Azure, AWS or GCP), and their managed data services. - Experience with CI/CD, infrastructure-as-code and working in containerised environments. - Familiarity with modern data stack tools: Databricks, Snowflake or RedShift, etc. - Experience working with reporting and modelling tools such as Power BI, including designing performant data models and supporting self-serve analytics. - Advanced experience in pattern recognition with the ability to translate complex data into actionable insights. - A results-oriented mindset, able to take concepts from ideation through to tangible outputs. - Comfortable working in a fast-paced, delivery-focused environment, balancing multiple priorities with agility. - A proactive and collaborative approach, with a willingness to iterate, share knowledge, and challenge assumptions constructively Bonus Points (We’re getting greedy) - Experience building or scaling data platforms in large-scale, regulated data environments. - Experience with DevOps for data, platform engineering, or building large data pipelines and real-time data streaming systems. - Exposure to working in a high-growth, evolving environment where the customer is at the heart of product and engineering decisions. . Benefits - A team of passionate, interesting people committed to your development and success - £70-£80k gross/pension - Personal training and Continuous Professional Development budget (CPD) - Uncapped bike to work scheme - Half-day Fridays every last week of the month to recharge - Wellness partnerships - In-person and virtual team events and workshops - Volunteering (Social Good Connect partnership) - 33 days holiday allowance to take when you want - £200 home working contribution to make sure you have everything you need to do your best work (get comfy - we want you to stay) - Ask us about our remote-first, flexible culture - this is core to who we are, and we're rated one of Scotland's most flexible employers Creating a more predictable future for lenders We are on a mission to enable our customers across the globe to effortlessly make use of real-time transaction data to better understand their customers, grow their business, revolutionise their offerings and delight with customer service. At Atto, you will be working for a business that is creating a more predictable future for lenders through our real-time transaction data platform. We use today's data to better predict tomorrow. This is an exciting stage in our growth, and we'd love you to be part of the story. Don’t speculate. Calculate.
• Migrar y ordenar código suelto: Tomar las queries SQL y scripts informales creados por los equipos de análisis y traducirlos a modelos limpios, estructurados y automatizados dentro de Dataform. • Armar y automatizar los "Bundles": Empaquetar el código de los pipelines junto con sus configuraciones para que se desplieguen de forma automática a producción usando GitLab CI/CD y Terraform, eliminando los pasos manuales. • Validar los datos codo a codo con el negocio: Trabajar directamente con los usuarios que usan los datos para entender sus necesidades, resolver dudas y asegurar juntos que las nuevas tablas reflejen la lógica real del negocio. • Acelerar el desarrollo usando IA (Claude/GPT): Utilizar asistentes de Inteligencia Artificial mediante Prompt Engineering para optimizar queries lentas, documentar el código de forma rápida y generar pruebas de calidad automáticas. • Optimizar el rendimiento en BigQuery: Aplicar técnicas de particionado y clustering en las tablas para asegurar que las consultas de los usuarios sean rápidas, eficientes y no generen costos innecesarios en la nube.
Data Engineer – Analytics, Modeling
In All MediaImagine the future of business. Ideas for a Digital Renaissance.
• Provide critical technical execution and analytical leadership, acting as a driving force in translating raw data into robust, production-ready data models. • Ensure cross-functional teams have seamless access to un-compromised, highly performant, and real-time datasets. • Responsible for dismantling legacy data workflows, engineering scalable data pipelines, and establishing rigorous validation standards to guarantee data reliability and pipeline health.
• Create and maintain complex, enterprise-scale data pipelines and foundational datasets while defining technical strategy and architectural direction for advertising products • Design and build sophisticated ETL processes, data models, and analytical frameworks using SQL, Python, and modern data stack technologies • Build and maintain the data infrastructure that powers Ads ML - feature pipelines, label generation workflows, and training data systems that enable our ranking and delivery models • Develop data quality frameworks, monitoring systems, automated anomaly detection, and alerting infrastructure that operates at massive scale • Collaborate with data scientists, ML engineers, and product teams to identify high-impact data infrastructure opportunities, owning design through implementation • Drive cross-functional technical initiatives solving sophisticated data engineering challenges • Build scalable rubrics that help lead and mentor engineers through projects that accelerate launch velocity and harden data systems • Navigate ambiguity and make sound technical decisions with incomplete information, balancing short-term delivery with long-term infrastructure investment



