Inventory Data Analyst

Manpower UK Ltd
Bridgwater
11 months ago
Applications closed

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Role - Inventory Data AnalystLocation - BridgwaterPay rate - £145 per dayHours - Full- time 37 hours per week, working Monday - Friday.A career that will deliver change.The OpportunityWe are seeking an experienced and competent Catalogue Inventory Analyst to join a growing asset data management team. The individual will ideally come with extensive previous cataloguing and analytical experience, data entry and validation related knowledge and skills, and rapidly grow to become a key member of a small but dedicated Enterprise Asset Management (EAM) data management team.The RoleAccurate and timely population of the Inventory module of the Asset Suite 9 EAM Tool with requisite information relating to asset equipment and bulk materials, including unique asset identifiers and the associated set of pre-defined asset data attributes, to support their timely and accurate call off from the warehouse to HPC site. Complete the quality assurance of all Catalogued assets as a key enabler to both their fully auditable call off, installation and management of the plant's configuration reference.Maintain a predefined asset cataloguing schedule, working closely with the line manager to proactively identify and manage any data verification issues and anomalies, so maintaining responsibility for data integrity and load schedulesProducing weekly cataloguing performance reports into the line manager for review, approval and upward reporting. Work independently to achieve targets but in conjunction within the existing AS9 Work Management Team(WMT) to support broader team targets and the delivery of consistent and verified data and/or documented references across a number of integrated IS platforms. The SkillsThe ideal candidate will possess proven asset cataloguing, data analysis, verification and entry skills and a capacity to logically process data (and documentation), whilst both identifying data inconsistencies and managing their resolution independently, or where required, with a senior member of the team. The successful candidate will possess specific prerequisite skills and qualifications including: A solid track record of digital cataloguing and assured data entry, and/or using SAP and/or EDRM databases.Previous experience of working in a construction, supply chain, procurement and/or data management related industry.A proven track record of adept and precise data and documentation management skills.A proven ability to work without supervision is essential.Proficient use of Microsoft products including MS: Excel; Word,and Powerpoint.Knowledge of Asset Suite/Passport will be advantageous but is not essential

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