Data Analyst - Maritime

Bristol
1 day ago
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SRT Marine Systems plc (SRT) is a market leader in the domain of international marine surveillance technology and systems. We are a respected, established, and an ambitious multi-national company headquartered in the UK with a global customer base.

The company has a worldwide impact in the marine sector by leading the next generation of Maritime Domain Awareness technologies "MDA", products, and systems that significantly enhance security, safety, environmental protection, and sustainability. Our customers are global and range from the largest national coast guards to individual vessel owners.

SRT is an exciting company where high-quality results are rewarded. We are ambitious and constantly seek to innovate in order to deliver better products and services to our customers. We strive to make SRT a rewarding and challenging place to work, where talented, hard-working individuals have the opportunity to make a real impact across the marine industry.

We are seeking a diligent, dynamic and ambitious Data Analyst - Maritime to undertake detailed analysis of the maritime domain for our customers and translate that analysis into a proposal for operational configuration of our MDA Systems. In the role of Data Analyst - Maritime, this would include identifying and creating geofences, alerts, events and workflow based upon the ConOps (Concept of Operation) principles agreed with our customers.

SRT runs a hybrid working model, therefore, the role of Data Analyst - Maritime is commutable from such places as Bristol, Malvern, Tewkesbury, Newport, Filton, Gloucester, Cheltenham, Swindon, Reading, Stroud, Worcester, Cardiff, Swansea, Bridgend, Cwmbran, Bath, Hereford and the surrounding areas.

Key Responsibilities - Data Analyst - Maritime (not exhaustive):

Analyse public and proprietary information and data in the maritime domain to deliver proposals for system operational configuration including but not limited to:
Nautical charts
Port databases
Oli & Gas databases
AIS traffic data
Fishing databases
Environmental databases
Understand maritime security landscape, regional threats and local challenges and translate them into system configuration setting
Based upon the operational configuration, write operational documentation (standard operating procedures "SOP's", training resources & other supporting documentation) working closely with technical authors, to assist the customer in operationalisation of the SRT MDA system by SRT's customer
Work closely with the CTC (ConOps, Training & Coaching) team to ensure alignment between documentation, training and operational practices
Work with product teams to ensure alignment between operational configuration, documentation and our product

Requirements - Data Analyst - Maritime (not exhaustive):

ESSENTIAL - Experience in data analysis
Ability; or be willing to learn to transform maritime data and information into Maritime Domain Awareness "MDA" System configuration and operational workflow
Experience in the use of GIS systems such as ArcGIS or GSIS
Excellent written English; with experience in document writing would be highly advantageous
Experience; although not essential, of the maritime domain - ideally with a coastguard or fisheries background would be a distinct advantage

Benefits Package

Excellent salary and package
Private health care
Career Development opportunities

SRT Marine Systems plc are an equal opportunity employer. We are committed to creating an inclusive working environment for all employees and actively encourage applications fromall sectors of the community

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