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Data Analyst – Technical/Engineering

Camlin Group
Lisburn
1 week ago
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About Camlin

Camlin is a global technology leader that operates with the vision of bringing revolutionary products to life for a wide range of industries, including power and rail, and also has interests in a number of R&D projects in a variety of scientific sectors.


At Camlin we believe in high quality engineering and design, allowing us to develop market leading products and services. In short, we love creating value for our customers by solving difficult problems. As of now, Camlin operates in over 20 countries worldwide.🌐



Job Title: Data Analyst – Technical/Engineering Focus
Department:Engineering / Data & Analytics
Reports To:Head of Data or Engineering Manager
Job Type:Full-time

About Camlin Group

AtCamlin Group, we design and deliver innovative solutions that help monitor, manage, and protect the world's railways. Our technologies generate large volumes of data—from our advanced monitoring systems—andmonitoring/analysing this data to ensure high levels of performance is maintained is essential

We're looking for aTechnical Data Analystwho understands both data and engineering, and can support the development and optimization of our products and services through deep data analysis.

Key Responsibilities

  • Analyse and interpretlarge volumes of engineering and operational data
  • Collaborate withdevelopment teamto understand how systems generate work and understand the context of the data.
  • Develop and maintaindashboards, reports, and visualizationsthat support product development, field performance, and customer insights.
  • Work closely with R&D teams to support thetesting and verificationof new products using historical and real-time data.
  • Identify patterns, anomalies, and failure modes in datasets to improve system reliability and performance.
  • Supportdata pipeline developmentin collaboration with data engineers.

Required Skills & Experience

  • Bachelor's or Master's degree inData Science, Engineering, Physics, Computer Science, or a related technical field.
  • 2+ years of experience as a Data Analyst in a technical, engineering, or industrial environment.
  • Proficiency inSQLandPythonfor data analysis and manipulation.
  • Strong understanding ofdata modeling,ETL processes, anddata quality assurance.
  • Experience withdata visualization tools(e.g., Power BI, Tableau, or similar).
  • Ability to work with time-series and sensor data fromembedded or industrial systems.
  • Excellent problem-solving, communication, and documentation skills.

Preferred Qualifications

  • Experience working withIoT data, orindustrial analytics.
  • Knowledge ofdata lakes, cloud platforms (AWS, Azure), or big data tools (e.g., Spark, Kafka).
  • Familiarity withmachine learning basicsand predictive maintenance concepts.

OUR VALUES

  • We work together
  • We believe in people
  • We won't accept the ‘way it has always been done'
  • We listen to learn
  • We're trying to do the right thing


Equal Employment Opportunity Statement

Individuals seeking employment at Camlin are considered without regards to race, colour, religion, national origin, age, sex, marital states, ancestry, physical or mental disability, gender identity or sexual orientation.



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