To a Future With More Cheers
Mid-Level Data Engineer
Location
Brazil
Posted
4 days ago
Salary
0
Seniority
Mid Level
Job Description
Mid-Level Data Engineer
AB InBev
• Support the development and maintenance of data pipelines, ingestion processes, and data transformations. • Create and maintain SQL queries, Python scripts, and Spark-based workloads used for data processing and analytics. • Assist in troubleshooting pipeline failures, data quality issues, and operational incidents. • Work with senior engineers to implement schema mappings, transformation logic, and data validation rules. • Ensure datasets meet expected schemas, data contracts, and quality standards. • Support metadata management, dataset documentation, and lineage activities. • Assist in maintaining data classification information according to company standards. • Help automate repetitive operational and data management tasks to improve efficiency and reliability. • Contribute to monitoring, alerting, and operational support for data pipelines and workflows. • Participate in testing activities, including unit tests, transformation validation, and data quality checks. • Follow established engineering standards, coding practices, and team development patterns. • Learn and apply security, privacy, and compliance requirements when handling sensitive or regulated data. • Collaborate with Data Governance, Security, and Compliance teams when required. • Contribute to continuous improvement initiatives focused on data trust, reliability, and operational excellence.
Job Requirements
- Bachelor's degree in Computer Science, Computer Engineering, Information Systems, Data Science, Software Engineering, or related fields.
- Basic to intermediate English.
- Up to 2 years of experience in Data Engineering, Software Engineering, Data Analytics, or related areas.
- Knowledge of SQL and Python.
- Understanding of ETL/ELT concepts and data transformation processes.
- Familiarity with relational databases and data warehousing concepts.
- Basic knowledge of Spark, Databricks, or distributed data processing frameworks.
- Familiarity with Git and version control workflows.
- Basic understanding of cloud platforms such as AWS, Azure, or Google Cloud.
- Knowledge of automation concepts and scripting for operational efficiency.
- Basic understanding of data quality concepts and validation practices.
- Familiarity with data governance principles, including metadata, ownership, stewardship, and documentation.
- Basic knowledge of data classification concepts (Public, Internal, Confidential, Restricted).
- Understanding of data lineage and traceability concepts.
- Awareness of security best practices, including access management, secrets management, and least-privilege principles.
- Strong analytical, problem-solving, and communication skills.
- Willingness to learn new technologies and collaborate across teams.
Benefits
- Health insurance
- Paid time off
- Professional development
- Home office setup
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Architect the Data Platform – Own the end-to-end design of our data infrastructure. • Make the foundational calls on pipeline architecture, data modeling patterns, and platform evolution across Snowflake, dbt, Airflow, and Terraform. • Define Engineering Standards – Establish and enforce practices around data quality, testing, observability, and deployment that the rest of the team builds on. • Enable Data-Driven Decisions at Scale – Design semantic layers and data models complex enough to support underwriting, finance, and executive strategy. • Drive Data Governance – Own the governance posture: data contracts, SLAs, lineage, and documentation. • Shape the ML and AI Foundation – Partner with data science and engineering leadership to ensure the platform supports advanced analytics, ML pipelines, and AI initiatives. • Elevate the Team – Mentor engineers, conduct rigorous code and design reviews, and actively close skill gaps. • Partner at the Leadership Level – Engage directly with actuarial, underwriting, finance, and product leaders to translate business complexity into technical roadmap.
Senior / Staff Data Engineer
NourishNourish is on a mission to improve people’s health by making it easy to eat well.
About UsHealth is the most important thing in life, and the American healthcare system is completely broken - poor outcomes, high cost, bad patient experience. We're building a new system from the ground up.Our mission is to improve people’s health by making it easy to live a healthy lifestyle. Nourish is the country's largest dietitian-led metabolic health clinic. We’re an AI-native digital health system matching patients with 10,000+ Registered Dietitians, physicians, medications, lab testing, and AI agents to deliver insurance-covered care across all 50 states. Founded four years ago, we've completed millions of appointments, tripled year-over-year, and partnered with health plans covering 200M+ Americans across 250+ health systems. In 2026 we raised a $100M Series C, bringing total funding to $215M. The round was led by Menlo Ventures, with participation from Thrive Capital, Index Ventures, J.P. Morgan Growth Equity Partners, Maverick Ventures, Y Combinator, BoxGroup, Atomico, Daybreak, and Operator Partners. Learn more about our Series C here: Nourish Blog, Bloomberg, Fierce Healthcare, Digital Native, The Pulse Podcast. This is not a job for everyone. We hold an extremely high bar because we believe talent density is our biggest competitive advantage. We're looking for people who actively choose hard, ambiguous problems, who run toward unglamorous work, give and receive candid feedback, and bring relentless resilience without the ego. Our work is important, but we are not self-important. We do this because we’re solving one of the hardest problems in the world, and the problem matters. If that's you, we disproportionately reward it. About the RoleWe are hiring a Senior or Staff Data Engineer to become the first dedicated data engineering hire on Nourish's Data team. This is a high-impact platform role where you'll build the foundation that makes our data faster, more reliable, easier to trust, and more cost efficient as we scale. Our stack includes RudderStack and Fivetran for ingestion, Snowflake as our warehouse, dbt for transformations, and Omni and Metabase for BI. As AI becomes a core way our teams interact with data, you'll also help build the infrastructure, governance, and semantic layer that enable both humans and AI agents to safely and efficiently access trusted data. You'll partner cross functionally to improve the entire data platform - from ingestion and modeling to observability, governance, and production data workflows. This is a full-time role and open to NYC-based candidates (2-3 days/week in office), with exceptional remote candidates considered. Our office is located in Gramercy. Key Responsibilities: - Own and improve data ingestion and orchestration across our modern data stack. - Build a scalable, reliable, and cost-efficient Snowflake platform. - Partner on dbt architecture, testing, CI/CD, and data modeling best practices. - Improve observability, monitoring, and platform reliability. - Build the governance, semantic layer, and self-service capabilities that power trusted analytics and AI. - Help establish production-ready infrastructure for AI and machine learning workloads. - Turn recurring operational pain points into automation, tooling, and reusable platform capabilities. We'd love to hear from you if: - You have 5+ years of experience building modern data platforms or infrastructure. - You've owned production data pipelines and cloud data warehouses. - You're highly proficient in SQL and have experience with Snowflake and dbt (or similar technologies). - You've improved platform reliability, performance, and cost through thoughtful architecture and automation. - You care about building trusted, well-governed data systems that enable self-service analytics. - You're excited about the role AI will play in the modern data platform. - You communicate technical tradeoffs clearly and enjoy enabling other engineers and business teams. More InformationThe Nourish Bar Our Values Why Nourish Exists How We Work Comp Philosophy Benefits Please note that you must be legally authorized to work in the U.S. for this position.
DBA & Bulk Data Management Engineer
Webbing USA Inc.Webbing USA Inc. is a global leader in data connectivity solutions, founded with a mission to streamline and optimize worldwide mobile communication. The compan
Role Description We are building a multi-site platform that orchestrates telecoms services for mobile operators across different regions, with additional network nodes in other regions. As our DBA & Bulk Data Management Engineer you will own every database that underpins this platform from the core BSS/OSS/NOC modules through to the PostgreSQL stores that sit behind our different applications. You will also extend your ownership into the network control layer, maintaining interfaces to vendor-managed databases inside HSS, OCS, PCRF, and SMSC nodes, and ensuring the mediation pipelines that bring network data into the other required system are reliable, complete, and governed by clear data-handling policies. This role spans three disciplines: - Hands-on database engineering (installation, tuning, backup/restore, high availability) - Bulk data management (large-scale loads, migrations, exports, purges) - Data governance (designing and enforcing retention, archival, and compliance policies) You will be a senior individual contributor and the go-to expert for all database topics across the entire BSS and NOC stack. Qualifications - Strong hands-on PostgreSQL administration: installation, configuration, replication (logical/streaming), upgrade, and vacuum tuning - Proven backup and restore experience: pg_dump, pg_basebackup, WAL archiving, point-in-time recovery, and DR testing - Query performance analysis: EXPLAIN/ANALYZE, index design (B-Tree, partial, composite), and schema-level optimisation - Bulk data operations: large COPY/INSERT loads, logical replication for live migrations, and automated purge/archival pipelines - Data governance: designing and documenting retention, archival, masking, and access-control policies - Scripting in Python or Bash for automation of backup jobs, health-check scripts, and bulk-load utilities - Experience with containerized database deployments (Docker / Kubernetes) - Monitoring: setting up Prometheus postgres_exporter, building Grafana dashboards for database KPIs - High-availability patterns: replication failover, connection pooling (PgBouncer / Pgpool), read-replica routing - Ability to work independently across multiple concurrent projects in a distributed, async-first team - Multi-datacenter replication and active-passive failover between geographically distributed clusters Requirements - Experience with telecoms BSS/OSS platforms (billing, subscription management, or mediation systems) - Familiarity with network-element databases: HSS (HLR), OCS, PCRF, SMSC, or PGW data models - Data compliance experience (GDPR subscriber data, CDR retention regulations in EU jurisdictions) Benefits - Fully remote - An exciting and challenging greenfield platform with great skill and knowledge development opportunities - The opportunity to join a team of highly professional specialists in an international environment - The opportunity for professional development within a reputable international innovative and growing company
Senior Data Engineer
WixWix is the comprehensive platform that gives you total creative freedom online.
• Assist TSD with data products by providing highly skilled and authoritative expertise on data engineering methods and best practices, including code-first development approaches and modern pipeline design patterns. • Design, implement, and maintain an efficient, secure, stable, and flexible data architecture that supports products and end-users, with all assets managed via source control. • Design, implement, and maintain ELT/ETL pipelines for efficient processing of source data in Azure Synapse and Azure Machine Learning (using SDK V1 and SDK V2) • Review, maintain, and improve existing architecture and pipelines, including periodic audits to address bottlenecks, deprecated dependencies, and architecture drift. • Establish quality controls for maintaining all pipelines, and introduce error handling, logging mechanisms, and validation checks. • Incorporate source control for all pipelines and data analytics codebases to enable iterative code development while ensuring data architecture stability. • Optimize the ingestion, processing, and storage of a wide variety of datasets and data types, including modern columnar formats such as Parquet. • Develop self-service capabilities for SBA OIG analysts to query and export data for investigations and audits. • Coordinate with data scientists to ensure the architecture efficiently supports machine learning algorithms and data pipelines in Azure Machine Learning. • Develop robust standard operating protocols (SOPs) dictating the authoring, development, validation, publishing, execution, and monitoring of all data pipelines and assets in Azure environment. • Provide detailed documentation of the data architecture, including data dictionaries, ER diagrams, and pipeline process maps. • Maintain and expand the environment with additional datasets and services upon request, following a defined intake and testing process prior to production deployment. • Stay current with emerging AI tools relevant to data engineering and contribute to exploratory efforts evaluating automation and LLM-assisted capabilities.



