CrawlJobs Logo

Filters

Location
Salary

Data Analytics Engineer Malaysia Jobs

1 Job Offers

Staff Engineer, Data Analytics Engineering
Save Icon
Join our team in Batu Kawan as a Staff Engineer in Data Analytics. You will design automation solutions, develop analytical dashboards, and maintain digital platforms using Power BI, Tableau, and SQL. This role requires 5+ years of BI experience and offers a chance to drive digital transformation...
Location Icon
Location
Malaysia , Batu Kawan, Penang
Salary Icon
Salary
Not provided
sandisk.com Logo
Sandisk
Expiration Date
Until further notice

About the Data Analytics Engineer role

Explore the dynamic and in-demand field of Data & Analytics Engineering, where technical expertise meets business insight to power data-driven decision-making. Data & Analytics Engineer jobs are central to modern organizations, focusing on building the robust, scalable infrastructure that transforms raw data into accessible, reliable, and actionable information. These professionals are the architects and builders of the data ecosystem, ensuring that data scientists, analysts, and business stakeholders have high-quality data at their fingertips.

In this pivotal role, individuals are typically responsible for designing, constructing, and maintaining data pipelines and platforms. This involves a wide range of tasks, from ingesting data from various source systems (ETL/ELT processes) to modeling data for optimal performance and usability. A core duty is to ensure data reliability and quality by implementing testing frameworks, monitoring solutions, and comprehensive data governance practices. These engineers collaborate closely with cross-functional teams to understand analytical needs, then build the foundational datasets, APIs, and tools that enable advanced analytics, business intelligence dashboards, and machine learning applications.

The typical skill set for these jobs is a powerful blend of software engineering and data management. Proficiency in SQL is fundamental, alongside strong programming skills, often in Python or Scala. Expertise with cloud data platforms (like Snowflake, BigQuery, or Databricks) and big data processing frameworks (such as Apache Spark) is highly valued. Knowledge of data modeling techniques (e.g., dimensional modeling, Data Vault) and workflow orchestration tools (like Apache Airflow) is standard. Furthermore, experience with modern data stack tools for transformation (e.g., dbt), version control (Git), and containerization (Docker) is increasingly common. Beyond technical prowess, successful professionals possess strong problem-solving abilities, a keen attention to detail for data quality, and excellent communication skills to bridge the gap between technical and non-technical stakeholders.

Typical requirements for Data & Analytics Engineer jobs often include a degree in computer science, engineering, mathematics, or a related quantitative field, coupled with hands-on experience in building data pipelines. A deep understanding of database principles, software engineering best practices, and system design is essential. As organizations increasingly rely on data, the demand for skilled engineers in this space continues to grow, offering a career path that is both technically challenging and critically impactful. For those passionate about building the platforms that turn data into a strategic asset, pursuing Data & Analytics Engineer jobs represents a rewarding opportunity at the heart of digital transformation.