Manufacturing Data Scientist

Liverpool
2 months ago
Applications closed

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Director of Data Science & AI – Global Manufacturing Transformation

Are you ready to be a key player in a groundbreaking transformation within the automotive industry? We are looking for a talented Data Scientist to 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 (e.g., Hadoop, Spark)
Cloud platforms (e.g., AWS, Azure)
Data visualization (e.g., Power BI, Tableau)
ETL tools (e.g., 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 environment, we want to hear from you! Apply now or send your CV to sharmistha. ghosal @ randstad .co .uk

Randstad Technologies Ltd is a leading specialist recruitment business for the IT & Engineering industries. Please note that due to a high level of applications, we can only respond to applicants whose skills & qualifications are suitable for this position. No terminology in this advert is intended to discriminate against any of the protected characteristics that fall under the Equality Act 2010. For the purposes of the Conduct Regulations 2003, when advertising permanent vacancies we are acting as an Employment Agency, and when advertising temporary/contract vacancies we are acting as an Employment Business

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