MCPNew: Mokaru MCP server is live
Sioux

Sioux

Python Data Analyst/Data Scientist (Danang/HCM/Singapore)

Company

Sioux

Role

Python Data Analyst/Data Scientist (Danang/HCM/Singapore)

Job type

Full-time

Found on Mokaru

2 weeks ago

Share this job

Salary

Not disclosed by employer

Job description

ABOUT SIOUX

Sioux Group was founded in 1996 in the Netherlands. With over 1,400 engineers, Sioux supports or acts as the R&D partner of leading high-tech companies. We aim to add value to our clients by developing innovative and high-tech solutions that contribute to a smarter, safer, healthier, more enjoyable, and more sustainable society.

Sioux has been recognized as an employer of choice, including awards such as Best ICT Company to Work For and Great Place to Work. In addition to our strong presence in Europe, Sioux is rapidly expanding in Asia, with offices in Vietnam, China, Singapore, and India.

With a strong heritage and a diverse international team, Sioux is proud of our core values: Own it and make it happen, Grow and innovate together, and Surprise customers. If these values resonate with you, we would love to welcome you to our team.

WE ARE LOOKING FOR PYTHON DATA ANALYST/DATA SCIENTIST IN DANANG/HCM TO JOIN US!

Your job will comprise

Define and implement meaningful KPIs in our Diagnostic Center

Build and maintain analysis pipelines in Python for data ingestion, feature extraction, and statistical modeling

Visualize KPIs and findings in monitoring dashboards (Grafana)

Be part of a Kanban team delivering high-quality, maintainable software

Gather machine statistics over time and detect performance trends like drift and degradation

Produce evidence-based reports with prioritized improvement recommendations

Collaborate with engineers to translate domain knowledge into testable hypotheses

Hypothesize and statistically validate relationships between system variables and machine behavior

Document methodologies to ensure reproducibility and knowledge sharing

Resume ExampleCover Letter Example

Explore more