Senior Data Integration Engineer

JOB DESCRIPTION

Work alongside highly talented & motivated team members passionate about solving hard, real-world problems with our unique and category-defining SaaS platform.
Work on latest Micro-services, Service Mesh, Big Data, AI/Machine Learning & IoT technologies.
Collaborate with other technology teams and architects to define and develop solutions.
Extract, transform and integrate large and small datasets.
Delight enterprise customers across multi-billion dollar industries in APAC.
Have a voice and make a tremendous impact on what you're building from the ground up.
Have a huge room to grow, not only on tech side but also on team management & client dealings.  

JOB REQUIREMENT

Broad background in Computer Science, especially with Data Structures & Algorithm. 
Have good experience with SaaS product product development
Have good programming experience with Python/Java 
Have experience with stream processing / batch processing
Experience in 3rd Party System Integrations/API Programming
Have experience ETL Development, Testing, Maintenance and Troubleshooting.
Experience in some ETL frameworks: Airflow, Apache spark, Dbt, Singer Tab …
Knowledge with multiple relational databases (RDBMS) platforms, particularly with developing data models and writing SQL queries.
Have experience with AWS IoT / Azure IoT is a huge plus.
Have experience with development and rollout a hardware/IoT product could be a plus
Good understanding of data lifecycle and architecture best practices
Nice to have plus experiences: security communicate and encrypted data
Fair English speaking, reading and writing. 
Basic understanding of Scrum and Agile.
Strong communication & possessing a “sales” mindset.

WHAT'S ON OFFER

Work with experienced & strong technical veterans (software architects with 10+ years of experience).
Start-up working environment with flexibilities to work & learn & enjoy outside-work life.
Work on various bleeding-edge technologies such as big data processing, video streaming, cloud computing.
Social and Health insurance under Vietnamese Labor Law.
Twice-yearly salary review based on actual ability and contribution.
Annual health check (premium healthcare), company trip, frequent team building activities.

CONTACT

PEGASI – IT Recruitment Consultancy | Email: recruit@pegasi.com.vn | Tel: +84 28 3622 8666
We are PEGASI – IT Recruitment Consultancy in Vietnam. If you are looking for new opportunity for your career path, kindly visit our website www.pegasi.com.vn for your reference. Thank you!

Job Summary

Company Type:

Product, IoT

Technical Skills:

Data Engineering, Java, Python, IoT

Location:

Ho Chi Minh - Viet Nam

Working Policy:

Job ID:

J00636

Status:

Close

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