AI Machine Learning Specialist

Machine Learning EngineerMachine Learning EngineerFull TimeRemoteSeniorTeam 1-10Since 2020H1B No SponsorCompany SiteLinkedIn

Location

Netherlands

Posted

67 days ago

Salary

0

Seniority

Senior

Postgraduate Degree5 yrs expEnglish

Job Description

AI Machine Learning Specialist

PEOPLED.

• Work as an AI Machine Learning Specialist with a software consulting company • Apply machine learning algorithms, deep learning, and natural language processing • Perform project management and work with cross-functional teams • Collaborate and communicate with various stakeholders • Execute creative problem-solving and innovation practices • Stay updated on sustainability practices in the petrochemical industry

Job Requirements

  • Over 5 years of experience in innovation, digital transformation, or related roles within the petrochemical industry
  • In-depth knowledge of large language models, machine learning algorithms, deep learning, natural language processing, and computer vision
  • Project management experience including working with cross-functional teams
  • Collaboration and communication skills with various stakeholders
  • Creative problem-solving abilities and a passion for innovation
  • Stay up to date on sustainability practices in the petrochemical industry
  • Master's degree in AI, Machine Learning, Computer Science, or a related field (ideally)
  • Proficiency in programming languages used in LLM, ML, DL, and NLP
  • Proven experience (5+ years) in the petrochemical industry
  • Strong understanding of petrochemical manufacturing processes and challenges
  • Experience with innovation frameworks and methodologies (e.g., Design Thinking, Lean Startup) in manufacturing, technology & research
  • Experience in open innovation, partnerships, or collaboration with startups
  • Proven record of accomplishment of successfully bringing innovative products or processes to market in manufacturing and technology & research
  • Certifications in project management or innovation

Benefits

  • A competitive salary and benefits package
  • A fully remote and flexible work environment
  • A chance to work on diverse and innovative projects
  • A supportive and collaborative team
  • An opportunity to grow your skills and career

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