Environmental, Health & Safety Data Analyst

Adecco
Bristol City
1 year ago
Applications closed

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Job : Environmental, Health & Safety Data Analyst
Duration : 12 + months
This role is inside IR35 and will be paid via umbrella.


Please note that this role is hybrid

If you are a Environmental, Health & Safety Data Analyst and seeking the opportunity to work with one of the worlds biggest and most reputable aviation companies, then this may be the role for you. Our client is looking for an Environmental, Health & Safety Data Analyst to join them on a 12+ month basis. You will be joining a team where you will be able to bring your experience and knowledge to keep the current project moving. Although this role is Hybrid, you will be expected to attend the Bristol office on occasion.



About the role:


A key part of the role is to advance the use of software to improve data recording and analytics as well as developing robust reporting procedures, audit protocols and conducting compliance audits. The role communicates with a wide range of stakeholders to identify and collect data in line with requirements. The role works alongside side a team of experienced Environmental, Health and Safety practitioners and will provide general support to the team particularly in collation and generation of Environmental, Health and Safety Performance Metrics. As a global company the individual will collaborate with the Enterprise colleagues to progress the global strategy and approach. This is a key role providing metrics reporting to both internal and external stakeholders.



Position responsibilities :



Scope 1, 2 & 3 carbon and energy reporting to meet UK and Enterprise reporting requirements (SECR, ESOS, CRP, UK & EU ETS).
Developing and improving data recording processes and data analytics.
Implementing robust reporting procedures, audit protocols.
Collecting and managing environmental data with the ability to dive deep and create reportable program metrics.
Utilizing communication skills to facilitate and lead cross functional meetings; and communicates with the UK leadership team and wider stakeholders.
Generating and approving in country and EU regulatory reports, and permit applications.
Maintaining Environmental, Health and Safety Reporting Metrics.
Supporting UK and Global sustainability strategies and UK sustainability council.
Supporting wider Environment, Health and Safety team ISO and activities such environmental aspects and impacts, audits, legal register, incident response & investigation, policies, procedures and regulatory compliance.
Managing environmental compliance requirements and identifies risks to ensure regulatory compliance.
Managing the United Kingdom / EU regulatory compliance calendar.
Ensuring that regulatory tasks are completed per schedule.
Interfacing with site programs and organizations.


Preferred qualifications:



A relevant H&S, environmental or data related level 3 qualification or other relevant qualifications that demonstrate a high level of learning.
Proficient in the use of Excel and data analytic software.
Experience in carbon reporting and/or data analytics.
Ability to translate regulatory requirements into written procedures.
Excellent communication and presentation skills.


To speak to a recruitment expert please contact

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