Analytics Engineer / Senior Analytics Engineer
Indexed description
Level
- Mid-Level or Senior (Open based on depth of experience)
- Kuala Lumpur, Malaysia (Hybrid) 50% office
- 100% Individual Contributor (IC)
- Data-First Tech Product / Commercial SaaS Company
Core Responsibilities
- Transform ambiguity into architecture by independently structuring, validating, and breaking down vague commercial goals or unorganized datasets.
- Develop, test, and iterate on custom analytical logic and business-critical algorithms (e.g., anomaly detection, data cleansing, tracking patterns), stress-testing and verifying assumptions.
- Design end-to-end data models, including schema design (such as Star Schemas), building robust data pipelines, and establishing data quality boundaries.
- Extract commercial value by interpreting data in the context of enterprise client operations, ensuring outputs provide actionable business insights.
- Act as a technical bridge between Product Management, backend engineering, and data platform operations to scale commercial data tracking and forecasting products.
- Advanced proficiency in Python (programming and scripting).
- Exposure to Databricks and PySpark is highly preferred (can be learned on the job with strong Python skills).
- Advanced SQL, database normalization, schema architecture, and familiarity with version control systems (Git).
Mindset & Behavior
- Analytical thinker with a natural curiosity and a drive to validate algorithms and cross-check assumptions.
- Comfortable with ambiguity and chaos, taking ownership of vague prompts and independently structuring solutions.
- Experience in a data-driven Product company, technology scale-up, or commercial SaaS enterprise, understanding how data transformations impact user-facing applications.
- Flexible professional titles: Analytics Engineer, Data Engineer, Data Scientist, or Senior Data Analyst, with a strong background in hands-on data analysis, pipeline manipulation, and programmatic problem-solving.
- Elite quantitative mindset, likely supported by a formal degree in Mathematics, Statistics, Actuarial Science, Computer Science, or Software Engineering.
- Comfortable working with dense, multi-dimensional numerical frameworks.
- Pure Business Intelligence / Dashboard Builders: If your experience is limited to building executive charts in PowerBI, Tableau, or Looker Studio, this role is too engineering-heavy.
- Pure Data Engineers: If you focus solely on infrastructure, database administration, or basic data orchestration without interest in commercial context or business logic, this role is too analytical.
- Pure Data Scientists: If you are focused on theoretical models or academic research without a desire to build production-grade, repeatable pipelines, this environment is too execution-focused.
- Career IT / Management Consultants: If your experience is limited to short-term consulting projects without long-term product ownership or scaling challenges, this team is not a match.
You will have true product ownership, working alongside a premier international engineering hub in Kuala Lumpur and collaborating directly with senior data leaders. The systems you build will power high-stakes commercial platforms, influencing multi-million-dollar operational decisions for major enterprise clients. Bureaucracy is minimized, and talented developers are empowered to make a direct impact.
Create a free Caio profile to unlock more results and save your role and location preferences.
Unlock free search