Data Engineer
Basil Technologies · Singapore
Job Description:-Design, develop and deploy data tables, views and marts in data warehouses,operational data store, data lake and data virtualization.-Perform data extraction, cleaning, transformation, and flow. Web scraping maybe also a part of the work scope in data extraction.-Design, build, launch and maintain efficient and reliable large-scale batch andreal-time data pipelines with data processing frameworks.-Integrate and collate data silos in a manner which is both scalable andcompliant.-Collaborate with Project Manager, Data Architect, Business Analysts, FrontendDevelopers, Designers and Data Analyst to build scalable data driven products.- Beresponsible for developing backend APIs & working on databases to supportthe applications.- Workin an Agile Environment that practices Continuous Integration and Delivery.- Workclosely with fellow developers through pair programming and code reviewprocess. The teamis expected to perform Data Warehousing tasks, mainly in AWS GCC, and manageAPIsQualifications-Proficient in general data cleaning and transformation (e.g. SQL, pandas, R,etc) to ensure data accuracy and consistency.-Proficient in building ETL pipeline (e.g. SQL Server Integration Services-(SSIS), AWS Database Migration Services (DMS), Python, AWS Lambda, ECSContainer task, Eventbridge, AWS Glue, Spring).-Proficient in database design and various databases (e.g. SQL, PostgreSQL, AWSS3, Athena, MongoDB, postgres/gis, MySQL, SQLite, voltdb, Cassandra, etc).-Experience in cloud technologies such as GPC, GCC (i.e. AWS, Azure, GoogleCloud).-Experience and passion for data engineering in a big data environment usingCloud platforms such as GPC, GCC (i.e. AWS, Azure, Google Cloud).-Experience with building production-grade data pipelines, ETL/ELT dataintegration.-Knowledge about system design, data structure and algorithms.-Familiar with data modelling, data access, and data storage infrastructure likeData Mart, Data Lake, Data Virtualisation and Data Warehouse for efficientstorage and retrieval.-Familiar with rest api and web requests/protocols in general.-Familiar with big data frameworks and tools (eg. Hadoop, Spark, Kafka, RabbitMQ).-Familiar with W3C Document Object Model and customized web scraping (e.g.BeautifulSoup, CasperJS, PhantomJS, Selenium, Nodejs, etc).-Familiar with data governance policies, access control and security bestpractices.-Comfortable in at least one scripting language (eg. SQL, Python).-Comfortable in both windows and Linux development environments.-Interest in being the bridge between engineering and analytics