[Job - 29349] Senior Data Developer (AWS), Brazil
ciandtยท Prod_Nova
About this role
At CI&T, we help large enterprises transform the potential of AI into real business impact with AI Deployment, AI-native execution, and tech-integrated business solutions.
With 30 years of experience in technological transformation, we accelerate innovation with expertise in Agentic SDLC, Application modernization, Data & AI, Martech and Business strategy.
We are 8,000 CI&Ters across more than 25 countries, collaborating to build solutions with real impact. AI is already part of how we work, evolve, and innovate every day.
CI&T is expanding its data development capabilities to support a greenfield platform initiative for a leading client in the agribusiness industry. This new product is being built from the ground up to deliver AI-powered agronomic analysis with georeferenced map visualizations โ and the quality of its data foundation will determine everything that follows.
This role sits at the core of that foundation. As a Senior Data Developer, you will work alongside the client's technical leadership to architect and build the data ecosystem that will power intelligent agronomic insights. Your work will directly enable AI applications and geospatial visualizations to function on reliable, well-structured data โ making this position both technically demanding and strategically critical. If you thrive in ambiguous, high-ownership environments where you shape the data architecture rather than inherit it, this is your role.
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Responsibilities
Design and build end-to-end data pipelines across the RAW, Silver, and Gold layers of the Medallion Architecture, ensuring reliability, performance, and maintainability at each stage
Architect data ingestion, transformation, standardization, and serving processes, structuring data flows from diverse and heterogeneous sources into a coherent analytical foundation
Model data for analytical consumption following Data Warehouse best practices, including Star Schema design and dimensional modeling suited for business intelligence and AI-readiness
Identify, evaluate, and consolidate new data sources relevant to agronomic business objectives, proactively engaging stakeholders to understand, obtain, and validate data availability and quality
Interact with business stakeholders and client leadership to translate domain requirements into data architecture decisions, challenging assumptions and proposing solutions grounded in technical evidence
Manipulate, optimize, and serve data in multiple formats โ including Parquet, CSV, and geospatial datasets โ tailored to the consumption needs of downstream AI applications and map-based visualizations
Manage and configure cloud infrastructure end-to-end, including storage, compute, access control, serverless functions, data cataloging, and event-driven processing on AWS
Own deployment and CI/CD practices for data pipelines โ including repository management, branching strategy, test gates, and automated deploy workflows via GitLab
Support the creation of the data layer that will feed AI/ML applications, ensuring data quality, structure, and availability meet the requirements of machine learning workflows โ without directly developing the models themselves
Operate as a proactive technical partner in a greenfield environment: question, propose, experiment, and iterate with the team rather than execute in isolation
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Requirements
English proficiency at B2 level or above โ ability to explain technical flows, engage in discussions, ask clarifying questions, and collaborate effectively with international stakeholders (accent is not a barrier; communication clarity is)
Solid hands-on experience with AWS, covering the full infrastructure spectrum: S3, IAM (permissions and security configuration), Redshift, Lambda (serverless use cases), and Glue (including Glue Catalog for metadata management); ability to evaluate trade-offs between services for different pipeline scenarios
Experience with Terraform or equivalent Infrastructure-as-Code (IaC) tooling, applied recurrently in real data engineering projects โ not just theoretical knowledge
Proficiency with GitLab for source control, CI/CD pipeline configuration, deployment workflows, and test gate management โ specifically GitLab, not just generic Git experience
Strong proficiency in SQL, including complex query writing, analytical transformations, and performance tuning for data warehouse environments
Strong proficiency in PySpark, applied to large-scale distributed data processing โ including partitioning strategies (e.g., by day/month/year), volume handling (tens to hundreds of GB), and performance optimization
Experience with Databricks, used in the context of data engineering pipelines and lakehouse architectures, including migration and deployment scenarios
Analytical data modeling expertise, with solid knowledge of Star Schema and dimensional modeling applied to data warehousing and business intelligence environments
Hands-on experience with the Medallion Architecture (RAW / Silver / Gold layers), including manipulation and optimization of Parquet and CSV files
Experience integrating and consolidating data from multiple heterogeneous sources, ensuring consistency, traceability, and analytical readiness
Mindset suited for greenfield projects: proactive, solution-oriented, comfortable with ambiguity, and able to contribute to architectural decisions โ not just execute predefined tasks
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Nice to Have
Familiarity with SnapLogic or equivalent low-code/no-code ETL orchestration platforms (e.g., Pentaho, Airflow, Alteryx) โ SnapLogic is the current standard at the client, with migration underway; hands-on experience with block/flow-based ETL logic is a differentiator
Experience with geospatial data processing and analytical environments focused on map-based and geographic visualization
Knowledge of DuckDB for in-process analytical queries
Background in data projects applied to agribusiness or precision agriculture
Exposure to predictive modeling workflows (e.g., gradient boosting, ensemble methods, or similar) โ as a data provider to ML pipelines, not as a model developer
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Frequently Asked Questions
Is the salary disclosed for the [Job - 29349] Senior Data Developer (AWS), Brazil position at ciandt?
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This [Job - 29349] Senior Data Developer (AWS), Brazil role at ciandt is based in Brazil. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the [Job - 29349] Senior Data Developer (AWS), Brazil role at ciandt full-time or part-time?
This is listed as a Homeoffice position. It is posted as a [Job - 29349] Senior Data Developer (AWS), Brazil role in the Prod_Nova department at ciandt.
Which team or department does the [Job - 29349] Senior Data Developer (AWS), Brazil at ciandt belong to?
This [Job - 29349] Senior Data Developer (AWS), Brazil position is part of the Prod_Nova department at ciandt. See the full job description for more information about the team structure and responsibilities.
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When was the [Job - 29349] Senior Data Developer (AWS), Brazil job at ciandt posted?
This [Job - 29349] Senior Data Developer (AWS), Brazil position at ciandt was posted on May 15, 2026. Apply as soon as possible โ early applications are often reviewed first.
[Job - 29349] Senior Data Developer (AWS), Brazil
ciandt
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