Costa Rica
Posted 3 days ago
Location: Hybrid, Ultralag, Heredia
Education: Bachelor’s degree in Computer Science, Engineering, Information Systems, or related field (or equivalent experience)
Experience: 2+ years in data engineering, analytics engineering, or similar roles
No of Openings: 1
Summary:
- The Data Engineer – Customer Success Analytics is responsible for building and maintaining the data infrastructure that supports Customer Success operations and decision-making.
- This role focuses on developing scalable data pipelines, improving data models, and ensuring high-quality, reliable datasets for reporting and analytics.
- The ideal candidate is hands-on, detail-oriented, and passionate about transforming complex data into actionable insights that drive customer outcomes, operational efficiency, and future automation initiatives.
Roles and Responsibilities:
- Design, build, and maintain ETL/ELT pipelines from systems such as Salesforce and other operational platforms into data warehouses (e.g., Snowflake).
- Audit, normalize, and restructure existing data models, tables, and views to improve performance, consistency, and usability.
- Develop clean, scalable, and analytics-ready data models to support dashboards, reporting, and operational workflows.
- Translate business requirements (e.g., ARR, renewals, churn, consumption, customer health) into structured and well-documented data definitions.
- Investigate and resolve data discrepancies by identifying root causes and implementing long-term fixes.
- Optimize query performance, data processing, and overall data warehouse efficiency.
- Implement data validation frameworks, monitoring processes, and quality controls to ensure data accuracy and reliability.
- Document data lineage, transformations, and definitions to support governance and transparency.
- Collaborate with Data Analysts, Customer Success teams, and Operations to build scalable and reusable datasets.
- Prepare structured datasets to support automation initiatives, reporting improvements, and future AI-driven use cases.
Required Skills:
- 2+ years of experience working with data in roles such as Data Engineer, Data Analyst, Analytics Engineer, or similar.
- Strong SQL skills and experience with ETL/ELT processes and data modeling.
- Experience with at least one programming language (e.g., Python, Scala, C#, or similar).
- Hands-on experience with data warehouse technologies (e.g., Snowflake, BigQuery, Spark).
- Familiarity with data build tools such as DBT.
- Experience with version control tools (Git/GitHub) and development workflows.
- Strong understanding of data modeling principles (normalization, dimensional modeling, schema design).
- Proven ability to identify and improve data pipeline and reporting performance.
- Strong analytical and problem-solving skills, particularly in resolving data inconsistencies.
- Ability to work cross-functionally and communicate technical concepts clearly.
- English C1
Desired Skills:
- Experience working with Salesforce data models (Accounts, Opportunities, Contracts, Subscriptions).
- Familiarity with tools such as Tableau, Gainsight, or similar analytics platforms.
- Experience supporting SaaS or subscription-based business models (ARR, renewals, churn, consumption).
- Exposure to automation, predictive analytics, or AI-related data preparation.
- Experience with data governance, access control, and documentation standards.
- Knowledge of REST APIs and server-side technologies (e.g., Node.js, TypeScript, Python).
| Job Level | 1- 4+ Years |

