We are an eVerify employer.
SQL/ETL Developer
Location
UTC-5 to UTC-3
Posted
68 days ago
Salary
0
Seniority
Mid Level
Job Description
SQL/ETL Developer
FULLTHROTTLE
Role Description Join Fullthrottle.ai, a cutting-edge Marketing Technology SaaS company, where our global software team operates seamlessly across 5 time zones and 6 countries, working collaboratively in a location-independent environment. We are currently seeking a dynamic and self-directed, mid-level Data Engineer (ETL/SQL) with a minimum of 3 years of ETL development experience to contribute to our innovative projects. The ideal candidate should possess strong communication skills, a solution-oriented mindset, and the ability to excel in a fast-paced Continuous Development Agile Environment. Responsibilities - ETL Responsibilities (80% of role) - Manage ETL process, translate complex business requirements into scalable and efficient data solutions. - Investigate and troubleshoot data and user-related system errors to ensure data integrity. - Implement ETL processes to extract, transform, and load data from multiple sources into a data warehouse. - AI Data Preparation / Insights (20% of role) - AI Data Wrangling and Preparation - Cleaning, transform, and prepare large and complex datasets. - Handling missing values, outliers, inconsistencies, and data quality issues. - Data scaling, normalization, encoding, and feature engineering techniques. - AI Data Planning to achieve FT’s AI Strategy - Applying ML models to our prepared Data to gain insight. - Augmenting Models with our data to enable achievement of AI strategies. - Designing, training, evaluating, and deploying ML models, integrating AI solutions into applications, and working with large datasets. Qualifications - Strong proficiency in Python, familiarity with libraries like Pandas, NumPy, Scikit-learn, TensorFlow, Keras, PyTorch. - Excellent skills in writing and optimizing complex SQL queries for data extraction, manipulation, and analysis from relational databases. - Experience with R is a plus, though not a requirement. - Hands-on experience with various AWS Database & ETL services, particularly: S3, Python code, Lambda, Cloud Formation, and other AWS serverless resources. - Active participation in Agile teams, collaborating with team members to review user stories, estimate effort, and contribute to sprint reviews. - Solid understanding of various ML algorithms (supervised, unsupervised, reinforcement learning). - Experience in training, evaluating, and deploying ML models is a plus. - Knowledge of model selection, hyperparameter tuning, and cross-validation techniques. - Familiarity with ML frameworks and libraries mentioned above. - 2+ years of experience in a similar ETL role is essential. Exposure to AI ML models and AI data solutions delivery is a major plus. - Remote Team Experience: 1+ years of experience working in a distributed remote technology team is a plus. Personal Profile - Self-directed and self-motivated with a proven ability to deliver results. - Strong communicators, capable of summarizing key deliverables and meeting daily deadlines. - Experienced in a fast-paced Agile/Scrum development environment. - Comfortable working in a distributed development environment with remote colleagues. - Proven team players. Remote Minimum Requirements - Reliable high-speed internet connection. - Fluent written/spoken English. - Located within +/- 6 hours of US Eastern Standard Time.
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
• Diseñar y mantener modelos de datos analíticos en DBT, asegurando la trazabilidad, eficiencia y calidad de los datasets. • Construir y optimizar consultas SQL avanzadas en BigQuery, incluyendo la creación de tablas, vistas, rutinas y queries programadas (scheduled queries). • Definir, estandarizar y documentar métricas y KPIs para garantizar su consistencia en toda la organización. • Colaborar con los equipos de negocio para entender necesidades analíticas y traducirlas en modelos de datos escalables y reutilizables. • Desarrollar y mantener dashboards y visualizaciones en Metabase y Tableau, asegurando su alineación con los modelos analíticos. • Implementar procesos de testing y validación de datos (data quality) dentro de DBT. • Contribuir a la mejora continua de la arquitectura de datos junto al Senior Data Engineer. • Participar en la definición de buenas prácticas de versionado, testing y documentación en Git.
Analytics Engineer
i6 GroupIndustry-leading fuel management technology for smarter and greener operations.
• Own the Transformation Layer: Design, build, and maintain complex dbt models to power internal BI and external customer analytics • Pipeline Management: Manage and monitor data ingestion pipelines to ensure high availability and low latency • Performance Tuning: Optimise cloud data warehouse costs and query performance (clustering, partitioning) for sub-second response times • Data Quality & Testing: Build and maintain automated testing frameworks (dbt test, Great Expectations) to proactively catch data issues • DataOps: Maintain CI/CD pipelines (GitHub Actions) for data deployment, applying software engineering principles to data workflows • Collaboration: Partner with Data Analysts to provide clean models and work with the Data Engineering Lead on architectural infrastructure decisions • Technical Documentation: Document data models, macros, and transformation logic clearly to ensure team scalability
Senior Analytics Engineer
SpaceBound, Parent Company of SpaceBound SolutionsSpaceBound Solutions' Managed IT services allow you to outsource all of your IT Services and Solutions needs.
• Build, maintain, refactor and optimize data models in our dbt project • Serve as the architect for our dbt project as a whole • Create a consistent user experience across our warehouse and BI tools • Mentor and uplevel analysts and data engineers in data modeling and dbt best practices • Partner with the Data Engineering team to manage our data stack • Be a champion of data privacy and quality
• Analyze data access needs in collaboration with business users, data analysts and dataviz engineers • Implement data pipelines and data models using modern data stacks (SQL, dbt, ELT tools, GCP/Azure/AWS/Snowflake, …) • Expose data in BI and visualization tools • Maintain pipelines and implement alerts & data quality tests • Build a Customer Data Platform for a major retailer (8 brands / 30+ countries) • Migrate a large dashboard infrastructure from a Supermetrics-based stack to an Adverity + BigQuery stack • Implement end-to-end operational reporting tools for several high-growth startups • Package internal tools for custom attribution



