HE Data Analyst

Parity Network
Warwickshire
7 months ago
Applications closed

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Data Analyst Parity Group are delighted to partner with our client, who are within the Higher Education sector and looking for Data Analyst. Initially a 4-month contract with the possibility of extension. Hybrid working and located in Warwick. You will receive a daily rate of up to £230, INSIDE IR35. As an HE Data Analyst, you will play a critical role in supporting institutional decision-making and performance by analysing, manipulating, and interpreting complex datasets and providing outputs and recommendations for internal and external stakeholders. This position ideally requires a good understanding of higher education data, strong statistical skills, and the ability to communicate findings clearly to stakeholders. Experience of SITS and of the processes involved in submitting data to HESA, League Table compilers and other HE data bodies is preferred but not essential. What will you be doing; Analyse data from various internal and external sources to support institutional accreditation, KPIs, League Table performance and strategic planning. Develop and maintain data outputs for internal stakeholders, HESA, League Table compilers and other HE data bodies. Work closely with internal stakeholders to understand their data needs and provide customised data outputs and data analysis. Understand the needs of external stakeholders and provide relevant data outputs according to specified requirements. Work with internal stakeholders to align to new technology implementation projects, specifically a new data platform and associated technologies. Knowledge, Skills and Experience required for role; Degree in a relevant field (Data Science, Statistics, Mathematics, Economics, Higher Education Administration, or a related field) or equivalent experience 2- 5 years' experience in data analysis, preferably in a higher education setting Experience in statistical software (e.g. SPSS, SAS, R, Snowflake, DBT) Hands-on experience with data visualisation tools Strong analytical and problem-solving skills with a keen attention to detail. Proficiency in SQL and other database query languages essential. Advanced MS Excel skills essential Excellent written and verbal communication skills, with the ability to present complex data in a clear and actionable manner. Ability to work collaboratively across departments and manage multiple projects simultaneously. High degree of integrity and commitment to data accuracy and confidentiality Self-motivated with the ability to work independently and as part of a team. Strong organisational skills and ability to meet deadlines in a fast-paced environment. Familiarity with higher education data systems (preference for SITS, but other HE data systems experience considered) Familiarity with HE data collections and submissions to HESA, League Table compilers and other relevant HE data bodiesIf this sounds like the role for you then do not hesitate to get in touch with me, Lynne Strang, for more information or simply click on the apply button. Parity - Better Decisions: Better People Parity Group plc acts in the capacity of an Employment Agency when providing contract recruitment services. We welcome applications from all sections of society and applicants will be considered on the basis of their suitability for the position At Parity, we are committed to protecting your privacy, we will process and hold your CV and use the information you have provided lawfully and in accordance with our Terms and Conditions and our Privacy Policy which can be found at (url removed)

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