Data Engineer – Managed Data Service
Location
Poland
Posted
39 days ago
Salary
0
Seniority
Senior
Job Description
Data Engineer – Managed Data Service
Devoteam
• work as part of the Managed Data Service team, working with our customers to support their data-ops and data projects • be involved in designing, building, maintaining and troubleshooting data pipelines, models and transformations • help to build, maintain and troubleshoot data observability solutions to improve data quality • help turn data into valuable business insights, preparing custom solutions optimised for each client
Job Requirements
- BA/BS in Computer Science or Math, or related technical field / equivalent experience
- Experience in one or more development languages, with a strong preference for Python, Java
- Basic knowledge of GO
- Good DBT knowledge
- Proficient in SQL
- Good knowledge of Looker and/or Power BI
- Some experience with programming in Agile methodology
- Knowledge of database and data analysis technologies, including relational and NoSQL databases, data warehouse design, and ETL/ELT pipelines.
- Relevant experience with Azure/AWS/GCP data products and services
- Fluency in English
- Nice to have: Experience with job orchestration tools (e.g. Airflow, Dagster)
- Experience with data ingestion tools (e.g. Fivetran, Airbyte )
- Experience in Hadoop and using platforms such as Apache Spark, Pig, or Hive
- Some experience with Snowflake, Databrick or other similar products
Benefits
- B2B or Employment contract
- Hybrid working model
- Up to 26 days of vacation per year
- MultiSport card (70 % of costs covered by Devoteam)
- Cafeteria (200 points/month)
- Contribution for glasses
- Flexible working hours
- Career Management, training and certifications in the best breed of technologies - focused on technical skills, Project Management methodology etc., including Udemy for business accounts.
- Private medical healthcare including dental package
- Referral program
- Foreign business trips
- Above standard working equipment (possibility of purchasing equipment)
- Coffee, tea, snacks in the office
- Company events and team buildings
- Friendly and open culture
- Pet friendly office
- Transparent framework for career growth, reinforced by annual performance evaluations
- Trust and autonomy, with no micro-management
- Learning from senior colleagues and opportunities to collaborate with professionals from various industries
- Opportunities to attend conferences to keep skills up-to-date
- Working on a variety of international projects for a broader range of experience
- Adoption and utilization of evolving IT technologies
- Usage of AI tools and access to elaborate, tailored AI training
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
Senior Data Engineer – Analytics, BI Platforms
IntelliTechWith a dedication to innovation and excellence, we're here to make the impossible possible for your organization.
• Design, develop, and maintain scalable data pipelines to ingest, transform, validate, and operationalize data from a variety of enterprise sources • Build and support data integration workflows across structured and unstructured data sources, including APIs, files, cloud storage, databases, and enterprise platforms • Enable analytics and reporting use cases by preparing curated datasets and supporting integration with BI and analytics tools such as Tableau, Databricks, Palantir, Power BI, Qlik, or similar platforms • Support the development of data models, transformation logic, and reusable engineering patterns that improve data access, decision support, and operational visibility • Collaborate with analysts, engineers, and stakeholders to refine requirements and deliver data products aligned to mission needs • Support testing, debugging, validation, and performance tuning of data pipelines and analytics workflows • Leverage Git-based repositories and version control best practices to manage engineering efforts • Participate in Agile development activities, including sprint planning, backlog refinement, demos, and retrospectives • Document technical designs, data flows, transformation logic, and engineering processes to support maintainability and knowledge transfer • Contribute to secure, scalable, and repeatable delivery practices across cloud and DevSecOps environments.
Senior Data Engineer, Finance
InstacartInstacart invites the world to share love through food. This is how homemade is made.
• You will work closely with finance, accounting, billing, and revenue teams to understand their main pain points and translate them into self-serve, reliable, and scalable data solutions • You are expected to mentor other team members and be a champion of engineering excellence across the organization • You will be part of a small team with a large amount of ownership and autonomy, managing initiatives directly from design through execution • You will have the freedom to suggest and drive organization-wide initiatives that shape the financial data vision and roadmap • You will own critical data integration pipelines and models, ensuring uniform, reliable, timely, and accurate financial reporting
ML Engineer Position: Face Indexing Pipeline
hireforyou.proWe look forward to receiving your CV and learning more about your experience! Dear Candidates, due to a high volume of applications, only selected candidates will be contacted for interviews. We appreciate your understanding. Thank you for considering a career with us!
Role Description As an ML Engineer, you will join a project to build a face search pipeline for an iOS app that helps people find where their photos appear online. You will play a role in building a leading cybersecurity product that protects users' photos online. The engagement is fully remote, with a weekly demo to the core team. What you will build: - A web crawler that continuously indexes publicly available photos from the open web. - A face inference layer – detection, alignment, embedding – using a model of your choice. - A vector index for fast face-match search across hundreds of millions of embeddings. - A search API that returns matches by uploaded photo, with source URLs. - A re-crawl and monitoring loop that alerts users when new photos of them appear online. You choose the architecture – which face model, which vector database, which crawler framework – and own those choices. Qualifications - Strong experience with Python and modern ML inference stacks (PyTorch, ONNX, TensorRT, or similar). - Strong AI proficiency: you keep up with modern techniques and tools, and you work fast with AI-assisted workflows (LLM coding/debugging, rapid prototyping) while still writing production-quality systems. - Proven experience shipping a face recognition or image similarity system in production. - Experience operating a non-trivial web crawler – you know the difference between one million and one hundred million URLs. - Experience with vector databases and approximate nearest neighbour search (FAISS, Milvus, Qdrant, pgvector, etc.). - Awareness of the legal landscape around open-web face indexing in 2026 (GDPR, BIPA, EU AI Act, takedown obligations). - Comfort working asynchronously and achieving results. Requirements - Experience with GPU serving infrastructure (Triton, BentoML, Ray Serve, Modal, RunPod, etc.). - Experience with distributed crawling frameworks (Scrapy, Playwright, Crawlee) and proxy/residential rotation. - Experience with cost optimisation for GPU and storage at scale. - A portfolio link, a public write-up, or an open-source project we can look at. Benefits - The ability to contribute to making the world’s best technology for protecting people’s photos from deepfakes and identity theft online. - A clearly scoped project with direct access to the founders. - Full ownership of the technical decisions in this domain for the duration of the contract. - Compensation was discussed directly with you. - A clean handoff at the end, with the option to extend the engagement if it works for both sides. We look forward to receiving your CV and learning more about your experience! Dear Candidates, due to a high volume of applications, only selected candidates will be contacted for interviews. We appreciate your understanding. Thank you for considering a career with us.
Role Description As a Senior Data Engineer, you will design, build, and tune the data layer that powers our clients' mission-critical applications on Azure and SQL Server. You will own complex query performance, indexing strategy, and concurrency design, and you will architect the data access patterns that connect application code to the database through linq2db, LINQ-to-SQL, Entity Framework, and ADO.NET. You will partner with application engineers, architects, and product teams to deliver high-throughput, low-latency data solutions, and you will mentor others on database design, query optimization, and modern data engineering practices. Qualifications - A database craftsperson who treats query performance, indexing, and concurrency as first-class engineering concerns rather than afterthoughts. - A clear communicator who can explain execution plans, locking behavior, and data access trade-offs to engineers, architects, and product stakeholders. - Comfortable operating with ambiguity, capable of profiling production workloads and proposing concrete solutions backed by evidence. - A mentor who raises the bar for the team through code review, query review, and pattern guidance. - Customer-obsessed and outcome-focused, balancing delivery speed with the long-term health and scalability of the data platform. Requirements - Bachelor's Degree in Computer Science or a related discipline, or equivalent experience; MUST be proficient in written and spoken English (85%). - 5 to 8 years of professional data engineering or back-end engineering experience with a strong database focus. - Expert-level proficiency in SQL on SQL Server 2019+, including complex queries, window functions, set-based operations, query plan analysis, indexing strategy, statistics, RCSI, isolation levels, and Change Data Capture. - Expert-level proficiency in database performance tuning, including bottleneck identification, index design, query rewrites, and concurrency design under production load. - Strong proficiency in C# data access using linq2db, LINQ-to-SQL (DBML), Entity Framework, and ADO.NET; ability to choose the appropriate tool for each scenario and avoid ORM performance pitfalls. - Strong proficiency in Python for data engineering tasks, scripting, and automation. - Hands-on experience with Azure data services (Azure SQL, storage, networking, security) and deploying production data workloads in Azure. - Experience with database CI/CD, schema versioning, and migration tooling. - Solid Git, code review discipline, and familiarity with modern engineering practices including testing and observability. - Experience with Azure Data Factory, Synapse, or other Azure analytics services is a plus. - Experience designing event-driven or streaming data architectures is a plus. - Excellent analytical and problem-solving skills; strong communication, collaboration, customer orientation, innovation mindset, and adaptability under ambiguity. Responsibilities - Design and maintain SQL Server 2019+ schemas, indexes, and query patterns that meet performance, scalability, and concurrency requirements. - Analyze execution plans, identify bottlenecks, and tune queries, indexes, and statistics; advise on RCSI and isolation level choices. - Design and operate Change Data Capture (CDC) pipelines and other change-tracking patterns to support downstream consumers. - Implement and review data access using linq2db, LINQ-to-SQL (DBML), Entity Framework, and ADO.NET; choose the right tool for each scenario. - Translate business and application requirements into efficient SQL and C# data access code that is performant, testable, and maintainable. - Partner with application engineers to align ORM usage with database performance characteristics and avoid common anti-patterns. - Design and operate data solutions on Azure, including Azure SQL, storage, networking, and security configurations. - Contribute to CI/CD for database changes through migration scripts, schema versioning, and automated deployments. - Mentor engineers on database design, query optimization, and data access patterns; set standards for the team.



