Manufacturing Data Scientist

Randstad Technologies
Liverpool
11 months ago
Applications closed

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Are you ready to be a key player in a groundbreaking transformation within the automotive industry? We are looking for a talentedData Scientistto join our dynamic team at a state-of-the-art manufacturing site undergoing a monumental transformation.

Role:Manufacturing Data Scientist

Location:Liverpool, UK - L24 9LE

Work Mode:Fully Onsite

Role Type:Permanent (No sponsorship will be provided for 4 years)

Experience:5+ years

Industry Experience:Automotive or Manufacturing

Role:

  • Drive plant efficiency using data science.
  • Analyze and visualize complex manufacturing data.
  • Develop dashboards and support various teams.
  • Build a digital/data science team and deliver training.

Tech Stack:

  • SQL, Python
  • Big Data tools (eg, Hadoop, Spark)
  • Cloud platforms (eg, AWS, Azure)
  • Data visualization (eg, Power BI, Tableau)
  • ETL tools (eg, Apache NiFi, Talend)

Requirements:

  • Degree in Data Analytics, Computer Science, Statistics, Mathematics, or related field.
  • Proven problem-solving and automation skills.
  • Strong leadership and teamwork abilities.

If you're ready to take your skills to the next level and make a difference in a dynamic environmen...

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