👨🏻‍💻 postech.work

Analytics Engineer- Data Operations & Governance

Crypto.com • 🌐 In Person

In Person Posted 2 days, 10 hours ago

Job Description

Responsibilities:

Data Operations \& Governance:

Own the accuracy, reliability, and structure of product and user-event data through robust governance practices; Define and enforce standards for event tracking, data schemas, and documentation across teams; Conduct regular audits, validation checks, and coordinate instrumentation changes with engineering and product teams

Data Pipeline Development \& Maintenance:

Build and maintain scalable, observable data pipelines using tools like dbt, Airflow, or similar frameworks; Monitor pipeline health, implement alerting systems, and resolve data issues with root cause analysis; Optimize pipeline performance and ensure high availability of core datasets for analytics and reporting

Internal Tooling \& Automation:

Develop and maintain internal data tools, utilities, and dashboards using SQL, Python, and lightweight web technologies; Automate workflows to reduce manual reporting and improve operational efficiency for data stakeholders; Create reusable data models that support fast iteration and confident self-service analysis

Competitive Intelligence \& Data Collection:

Operate and enhance data scraping workflows to collect structured information on competitors, pricing, and market trends; Ensure scraping systems are stable, maintainable, and compliant with data privacy and ethical standards

Requirements:

Engineering Foundation:

Strong SQL and working proficiency in Python or JavaScript for building and maintaining data infrastructure; Experience with modern data engineering tools (e.g., dbt, Airflow, Fivetran, Dagster); Familiarity with version control (Git), code modularization, and documentation practices

Data Quality \& Governance Experience:

Track record designing or maintaining data governance practices in product analytics environments (e.g., Segment, GA4, Mixpanel); Comfortable building QA checks, anomaly detection, and data validation processes; Familiarity with data governance education and data governance related stakeholder management

Operational Mindset:

Comfortable being on point for data issues, debugging pipeline failures, and ensuring continuity in reporting and dashboards; Ability to set up alerting/logging mechanisms to proactively detect and respond to data problems

Collaboration \& Communication:

Strong written and verbal communication skills to align with product, engineering, and business teams; Able to translate business questions into engineering requirements and technical work into stakeholder-friendly language

Preferred Qualifications:

Prior experience / knowledge on data science / machine learning; Prior experience on hands-on data engineering; Understanding of data operation \& governance in analytics workflows; Experience supporting data for experimentation or A/B testing pipelines

Get job updates in your inbox

Subscribe to our newsletter and stay updated with the best job opportunities.