Data Analyst Apprentice

QA
Milton Keynes
1 year ago
Applications closed

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Data Analyst Apprenticeship

Data Analyst Apprenticeship

Data Analyst Apprenticeship...

Junior Data Analyst Apprenticeship

Lead Management, CX and Digital Communications Data Analyst Apprentice

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Employer description: Helping nurses secure shifts where they want, when they want. Through our flexible working arrangements, we enable our nurses to achieve a balanced lifestyle while delivering quality care. Overview: As a Data Analyst Apprentice at Enferm, you will have the opportunity to work with a talented team of data professionals to analyse, interpret, and visualise data that drives business decisions. This apprenticeship is ideal for someone with a passion for data and analytics who is eager to develop their skills in a real-world setting. You will be involved in gathering and analysing data, building predictive models, and helping to create data-driven strategies that support Enferm’s mission of revolutionising healthcare staffing. Location: UK, Milton Keynes, MK9 1LR Department: Data Analytics, Levek 4 Salary: £17,000 - £20,000 per annum. Key Responsibilities: Data Collection and Cleaning: Assist in gathering, cleaning, and organising data from various sources to ensure accuracy and consistency. Data Analysis: Analyse data to identify trends, patterns, and insights that can inform business strategies. Model Building: Support the development of predictive models and algorithms to forecast staffing needs, optimise scheduling, and improve operational efficiency. Data Visualisation: Create clear and compelling data visualisations and dashboards using tools like Google Data Studio, Power BI, or Tableau. Collaboration: Work closely with the management team and other departments to understand business needs and translate them into data-driven solutions. Reporting: Assist in preparing regular reports and presentations to communicate findings and recommendations to stakeholders. What we are looking for: Key skills and attributes: Passion for Data: A strong interest in data analysis, statistics, and data-driven decision-making. Analytical thinking: Ability to think critically and solve problems using data. Technical skills: Basic knowledge of programming languages such as Python or R, and familiarity with data analysis tools. Attention to detail: Strong focus on accuracy and detail, particularly in data processing and analysis. Communication skills: Ability to convey complex data insights in a clear and understandable manner. Teamwork: Willingness to collaborate with team members and contribute to a positive team environment. Tech-savvy: Familiarity with Google Workspace (Docs, Sheets, Slides) and an eagerness to learn new data tools and technologies. Enthusiasm: For learning and developing a career in data science. Entry requirements Standard entry: Level 3 qualification (apprenticeship/A-levels/BTEC, etc) OR equivalent work experience (typically two years in a relevant role) Plus: 5 GCSE's, including English and Maths at Grade 4 (C) or above Experience with using Excel (in particular pivot tables and XLookup) and Microsoft products (or similar) Working week: 8:30am - 5:30pm from Monday - Thursday and from 8:30am - 4:30pm on Friday's. Benefits: Training and Development : Gain hands-on experience in data science and analytics, with ongoing mentorship and support. Flexible working: Hybrid working options are available, combining office and remote work. Company perks: Access to company events, training sessions, and wellness programs. Career progression: Opportunity to gain enough experience upon successful completion of the apprenticeship to further your career. Future prospects: 90% of QA Apprentices secure permanent employment after finishing their apprenticeship. Additionally, there may be opportunities to undertake further apprenticeship training as many of our programs offer on-going development tracks. Important information: Our apprenticeships are the perfect way to gain new skills, earn while you learn, and launch yourself into an exciting future. With over 30,000 successful apprenticeship graduates, we're a top 50 training provider, dedicated to helping you succeed. Apply now

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