+$15,000 Are you looking for your next job? Let our headhunters help you Go >

DataOps Engineer

Closed

Enginering Data Analyst

Icon Location Location
Ho Chi Minh
Icon Vacancies Vacancies
1 person(s)

Benefit

13th month salary 13th month salary
Flexible working time Flexible working time
Full social insurance Full social insurance
Others Others
Chance to travel onsite (in 49 countries).
Salary review Salary review
Travel/company trips Travel/company trips
once a year
Laptop/desktop for works Laptop/desktop for works
Laptop/MacBook with high specs
Performance bonus Performance bonus
Extra health insurance Extra health insurance
Work-from-home policy Work-from-home policy

Job Overview And Responsibility

Be a part of building the ideal data ecosystem from scratch. Ensuring the right data is generated from all applications and sourced at the right velocity with the complete depth and breadth to ensure complete coverage and reuse. This is your opportunity to build new, not fix old. - Build and run the data processing pipeline on Google Cloud Platform (GCP). - Work with implementation teams from concept to operations to provide deep technical expertise for successfully deploying large-scale data solutions in the enterprise and use modern data/analytics technologies on GCP. - Design pipelines and architectures for data processing. - Implement methods for DevOps automation of all parts of the built data pipelines to deploy from development to production. - Formulate business problems as technical data problems while ensuring that key business drivers are captured in collaboration with product management. - Extract, load, transform, clean, and validate data. - Support and debug data pipelines.

Required Skills and Experience

- 3 - 7 years of experience in total at Data Engineering or a similar role. - Strong cloud-based Data Engineering experience in one of the following Clouds (AWS/Azure/GCP); we mainly use GCP but we are open to your Cloud experience (with at least 1 years of working on Cloud). - As GCP Cloud Data Engineer: You must be strong at General Infrastructure and Services and particular data services such as BigQuery, Dataflow, Airflow, Cloud Function, etc. - As AWS Cloud Data Engineer: You must be strong at AWS technologies such as data pipeline (Lake Formation, MWAA, EMR, S3, Glue, and Athena); Data Warehousing technologies (AWS Redshift). - As Azure Cloud Data Engineer: You must be strong at Azure Data Lake Storage, Azure Databricks, Azure Data Factory, Synapse, etc. - Proven successful design and implementation of large and complex data solutions (Data Warehouse, Data Lake) using various architectural patterns such as Microservices. - Experience with Advanced SQL and Python skills. - Experience with DataOps. - Experience in using DevOps while working on Cloud data platforms like using Terraform for Infrastructure as Code (IaC), GitOps, or using Docker, Kubernetes. - Good educational background in Information Technology (IT) and Information and Communication Technology (ICT). - Ability to influence both technical and business peers and stakeholders. - Good command of English verbal communication. We are trying to reimagine the way we help and interact with our customers, so we are looking for candidates with creativity, an open mind, and positive energy.

Why Candidate should apply this position

- Hybrid working mode (3 working days at the office, flexible time). - Salary: Please completely feel free to tell us your expected number!!! - 18 paid leaves/year (12 annual leaves and 6 personal leaves). - Insurance plan based on full salary + 13th month salary + Performance bonus. - Meal allowance of 730,000 VND/month. - 100% full salary and benefits as an official employee from the 1st day of working. - Medical benefit for employee and family. - Working in a fast-paced, flexible, and multinational working environment. Chance to travel onsite (in 49 countries). - Free snacks, refreshments, and parking. - Internal training (Technical & Functional & English). - Working time: 08:30 AM - 06:00 PM from Mondays to Fridays (meal breaks included).

Similar jobs