Doosan

Applied Data Scientist

Doosan

full-time

Posted on:

Location Type: Hybrid

Location: DobrisCzech

Visit company website

Explore more

AI Apply
Apply

Tech Stack

About the role

  • Focuses on building relationships with stakeholders, identifying business opportunities for growth and cost-saving.
  • Promotes the adoption of innovative solutions.
  • Champions the use of automation tools and advanced technologies to streamline tasks and improve process scalability.
  • Leverages GenAI and machine learning to maximize financial impact, automate decisions, and enhance efficiency.
  • Collaborates with academic and industry partners, utilizing advanced analytics to solve business problems, and generating insights from data to drive strategic decisions.

Requirements

  • Bachelor’s Degree in a quantitative discipline, such as Data Science, Mathematics, Computer Science, Engineering, or a related field.
  • Master’s Degree preferred.
  • 5-7 years of related work experience.
  • Programming and scripting background, such as Python.
  • Demonstrated ability to lead projects that challenge the status quo.
  • Strong written, verbal, and presentation skills.
  • Demonstrated ability to manage multiple tasks with short deadlines.
  • Proficiency in Strategic Documentation and Data Storytelling.
Benefits
  • Motivating salary and benefits – a contribution to pension insurance of 3% of gross salary
  • meal vouchers
  • Hybrid work – enjoy working from home for two days a week.
  • Dynamic and innovative working environment – modern offices with fully equipped facilities.
  • Opportunity to become part of a global market leader.
  • Personal and professional growth – career development, training, and education.
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
Pythonmachine learningadvanced analyticsdata storytellingautomation toolsprocess scalability
Soft Skills
relationship buildingstakeholder engagementproject leadershipcommunicationtime management