Data Analyst

Milton Hill
1 day ago
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Data Analyst

Red Recruitment is hiring a Data Analyst for our client, a world class chemicals company dedicated to
groundbreaking chemicals through innovative research.

This is a hybrid role, with an office based in Oxfordshire with a competitive salary and superb business
benefits in a business that provides you an opportunity to learn and grow and is committed to long term
career building with its staff.

It's a fantastic opportunity for a Data Analyst to join a leading team to deliver high quality data to various
areas of the business with a focus being on accuracy and consistency.

Benefits and Package for a Data Analyst
Salary: Highly Competitive Salary
Hours: Office Hours Monday - Friday
Contract Type: Permanent
Location: Hybrid (3 Days in Oxfordshire Office Weekly)
Holiday: 25 days, plus bank holidays
Private Medical Insurance
Pension Scheme
Discounted Gym Membership
Wellbeing Support and EAP
Flexible Working Options
Progression Opportunities and a clear Development Plan

Key Responsibilities of a Data Analyst:

Data Administration of master data and other data sets ensuring accuracy and consistency is aligned with business expectation.
Supporting Data cleansing and enrichment tasks as well as contributing and collaborating to SAP teams.
Supporting metadata management whilst collaborating with the wider business on data ownership, stewardship and maintenance.
Ensuring data is structured and standardised with governance policies.
Conduct data profiling and data quality checks and assess root cause analysis and remediation of data quality issues.
Work with the business and technical teams to understand data requirements and present findings, data recommendations and business insights to key stakeholders.
Contribute to the development of Data governance, whilst identifying opportunities for streamlining processes and improving data stewardship.

Key Skills and Responsibilities of a Data Analyst:

SAP Data Administration:
Knowledge: SAP data structures, transactions, integration points.
Experience: Managing master data in SAP ECC.
Exposure: SAP S/4HANA, SAP Datasphere, SAP MDG.
Data Governance & Quality Tools:
Tools: Collibra, Talend, Snowflake, PowerBI.
Knowledge: Metadata management, data lineage, cataloguing.
Technical Skills:
Proficiency: SQL, data analysis tools.
Experience: Data integration, ETL processes.
Familiarity: Data visualization tools (Power BI, Tableau).
Awareness: Data governance, management practices, tools.
Bachelor's degree in Information Management, Data Science, Business, or a related field is desirable.
Prior experience with SAP environments (preferably in data analysis and administration)
Relevant certifications in data management (e.g., CDMP, DAMA) are a plus.
If you are interested in this position as a Data Analyst and have the relevant skills and experience required,
please apply now!

Red Recruitment (Agency)

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