Navigate Change
Senior Data Developer, Analytics Engineer
Location
Colombia
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Senior Data Developer, Analytics Engineer
CI&T
• Actively engage with business stakeholders to understand context, challenges, and underlying needs; translate complex requirements into clear, detailed technical specifications that enable effective use of AI and analytics platforms. • Take full responsibility for the data products you build — from ingestion through modeling, transformation, validation, to final delivery and ongoing monitoring. • Implement and maintain rigorous validation processes, automated testing, and quality checks; act as guardian of data accuracy and integrity, ensuring metrics and KPIs accurately reflect business reality. • Design and implement data transformation layers that pre-aggregate business information, apply consistent business rules, and deliver datasets ready for consumption in dashboards and AI applications. • Collaborate with AI teams to specify and prepare structured data, data dictionaries, and models that enable AI platforms and intelligent reporting capabilities. • Build and maintain data ingestion pipelines from multiple sources, implement transformations in SQL and Python, and ensure performance and scalability of solutions. • Go beyond fulfilling requirements — proactively identify improvement opportunities, anticipate internal customer needs, propose innovative solutions, and challenge approaches when necessary. • Deliver reliable data solutions with speed and precision, balancing the need for rapid iteration with the highest quality standards. • Articulate technical concepts clearly to non-technical audiences; facilitate alignments, present solution proposals, and document modeling and architecture decisions.
Job Requirements
- Proven experience in a Data Engineering or Analytics Engineering role at senior level
- Advanced proficiency in SQL and Python for data analysis, transformation, and validation
- Solid experience in data modeling and data warehouse design
- Hands-on experience working with BigQuery (or other cloud-based data warehouse platform)
- Demonstrated ability to understand complex business logic and validate results from a business perspective, not just technical
- Strong sense of ownership and proactive mindset — a professional who proposes improvements, challenges requirements when necessary, and doesn't wait to be asked to act
- Experience specifying and preparing data requirements for AI or machine learning applications
- Advanced/fluent English (reading, writing, and conversation) — constant communication with international stakeholders is required
- Track record of delivering high-impact projects quickly and with quality.
- Nice to Have: Experience with dbt (data build tool) for transformation and orchestration of analytical pipelines
- Familiarity with data ingestion tools such as Airbyte or Airflow
- Knowledge of automated testing best practices and CI/CD for data pipelines
- Prior experience in Supply Chain, Retail, or Consumer Goods industries
- Experience in projects involving data preparation for consumption via generative AI or conversational analytics platforms
- Experience building business-oriented analytical reports (web reporting, custom visualizations)
Benefits
- Premium Healthcare
- Meal voucher
- Maternity and Parental leaves
- Mobile services subsidy
- Sick pay-Life insurance
- CI&T University
- Colombian Holidays
- Paid Vacations
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