Company
Engineering
DataEngineer–DataPipelines&Modeling
Neural analysis suggests this role is
optimal for Mid+ candidates.
“Data Engineer – Data Pipelines & Modeling. Skills: dbt, Snowflake, Airflow, data modeling, SQL. enhance and scale the data transformation and modeling layer. building robust, maintainable pipelines using dbt, Snowflake, and Airflow”
What You'll Achieve.
support analytics and downstream applications; serve business reporting, lifecycle marketing, and experimentation use cases; ensure reliability, visibility, and efficient dependency management; support analytics and operational use cases
Industry & Context.
professionals based in Latam
What They're Looking For.
Must Have
dbt, Snowflake, SQL skills, dimensional modeling
Nice to Have
Astronomer, Oracle, AWS services such as DMS, Kinesis, and Firehose, Segment
What You'll Do.
enhance and scale the data transformation and modeling layer
maintainable pipelines using dbt
create scalable data models
improve pipeline orchestration
high-quality data delivery
and optimize data pipelines that extract
and load data into Snowflake from multiple sources using Airflow and AWS services
well-documented dbt models with test coverage to serve business reporting
and experimentation use cases
Partner with analytics and business stakeholders to define source-to-target transformations and implement them in dbt
Maintain and improve our orchestration layer (Airflow/Astronomer) to ensure reliability
and efficient dependency management
Collaborate on data model design best practices
including dimensional modeling
and versioning strategies
How You'll Work.
Team & Collaboration
work closely with the data, analytics, and software engineering teams; Partner with analytics and business stakeholders; Collaborate on data model design best practices
Full Job Description
## Description This position is only for professionals based in Latam We're looking for a data engineer for one of our clients' team. You will help enhance and scale the data transformation and modeling layer. This role will focus on building robust, maintainable pipelines using dbt, Snowflake, and Airflow to support analytics and downstream applications. You’ll work closely with the data, analytics, and software engineering teams to create scalable data models, improve pipeline orchestration, and ensure trusted, high-quality data delivery. Key Responsibilities: - Design, implement, and optimize data pipelines that extract, transform, and load data into Snowflake from multiple sources using Airflow and AWS services - Build modular, well-documented dbt models with strong test coverage to serve business reporting, lifecycle marketing, and experimentation use cases - Partner with analytics and business stakeholders to define source-to-target transformations and implement them in dbt - Maintain and improve our orchestration layer (Airflow/Astronomer) to ensure reliability, visibility, and efficient dependency management - Collaborate on data model design best practices, including dimensional modeling, naming conventions, and versioning strategies Core Skills & Experience: - dbt: Hands-on experience developing dbt models at scale, including use of macros, snapshots, testing frameworks, and documentation. Familiarity with dbt Cloud or CLI workflows - Snowflake: Strong SQL skills and understanding of Snowflake architecture, including query performance tuning, cost optimization, and use of semi-structured data - Airflow: Solid experience managing Airflow DAGs, scheduling jobs, and implementing retry logic and failure handling; familiarity with Astronomer is a plus - Data Modeling: Proficient in dimensional modeling and building reusable data marts that support analytics and operational use cases Nice to Have: - Experience with Oracle -Familiarity with AWS services such as D
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