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Laboratory Technician

Wilford
9 months ago
Applications closed

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Data Engineer

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We are looking for a Laboratory Technician with expertise in fluid analysis and a passion for data science. This role combines hands-on laboratory work with advanced data analysis and visualisation using Power BI. You will be working with ICP-AES, HPLC, and other analytical techniques to assess the composition of fluids such as oil, grease, and coolant while ensuring compliance with Good Laboratory Practice (GLP) standards.

Key Responsibilities:

Conduct chemical and biochemical analyses using techniques like ICP-AES and HPLC.

Apply Good Laboratory Practice (GLP) to ensure accuracy and reliability of results.

Analyse fluid samples (oil, grease, coolant) to assess their chemical composition.

Use Power BI to create data visualisations and generate insights from laboratory results.

Develop expertise in health data science, business intelligence, and advanced analytics.

Key Skills:

Laboratory skills and experience in analytical chemistry.

Understanding of fluid chemistry and its industrial applications.

Critical thinking and problem-solving abilities.

Interest in data science

Knowledge of Power BI (or willingness to learn)

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