At a Glance
- Tasks: Develop data solutions and collaborate with teams to enhance analytics capabilities.
- Company: Join Ford Credit Europe's innovative Data and Analytics Solutions team.
- Benefits: Competitive salary, diverse work environment, and opportunities for professional growth.
- Why this job: Make a real impact by transforming complex data into actionable insights.
- Qualifications: Experience in SQL, Python, and data modelling; degree in a related field preferred.
- Other info: Flexible working arrangements and a commitment to diversity and equality.
The predicted salary is between 30000 - 50000 £ per year.
Ford Credit Europe's (FCE) Data and Analytics Solutions (DAS) team provides comprehensive data services to the organisation, including Data Governance & Lineage, Data Quality, Master Data Management, and the delivery of the FCE Data Strategy enabling self-service and analytics. This is a dynamic and evolving area of the FCE Business, leveraging new tools, processes, and technology to enable faster business access to greater insights required for European growth and regulatory compliance.
We're seeking a Data Specialist to join our team to develop robust data solutions for FCE and Ford Bank Germany (FBG). This role focuses on collaborating with customers to identify, document, and solve data needs, implementing semantic models within our data platforms, and creating data solutions that enable advanced analytics and future AI-powered tools for our business customers. As part of our DAS transformation, you'll work closely with Data Engineering and Data Architecture teams to implement semantic models that translate complex banking data into accessible business insights while ensuring full regulatory compliance.
Responsibilities
- Semantic Layer Implementation
- Support data lake ingestion from source systems in preparation for developing semantic layers
- Implement data models using various tools that provide consistent business definitions across FCE and FBG
- Create reusable data abstractions and metrics that enable self-service analytics for business teams
- Build logical data models, in collaboration with Data Architecture, that support both current reporting needs and future AI tool development
- Ensure semantic layer implementations comply with banking regulations and data governance standards
- Data Management & Analysis
- Develop and maintain SQL queries and Python scripts to support data flows
- Source, prepare, and validate data working closely with Data Owners, Data Stewards and Data Engineering teams
- Collaborate with Data Governance, Data Owners, and Data Stewards to ensure data quality and compliance
- Create and maintain documentation for semantic layer components and business definitions
- Business Partnership & Requirements
- Work with business teams across FCE to understand their data and analytics needs
- Translate business requirements into specification documents working with Data Engineering and Architecture
- Build business cases for semantic layer investments that enable future customer AI tools
- Facilitate discussions between business stakeholders and technical teams on data solutions
- Data Governance & Compliance
- Partner with Data Governance teams to implement data quality standards and controls
- Work with Data Stewards to maintain accurate business definitions and data lineage
- Support Data Owners in ensuring semantic layer solutions meet regulatory requirements
- Maintain audit trails and compliance documentation for regulated banking environments
- Customer-Facing Analytics Enablement
- Design semantic layer solutions that can support future AI-powered customer tools
- Collaborate with product teams exploring analytics applications for business customers
- Ensure semantic models provide clean, reliable data foundations for potential machine learning applications
- Stay informed about AI developments relevant to banking and customer data applications
- Support diverse innovation initiatives to enhance customer data experience
Qualifications
- SQL: Advanced querying, transformation, and performance optimisation
- Python: Strong capability for data manipulation, analysis, and automation
- Looker / LookML: Hands-on experience building LookML models and dashboards
- Power BI: Proficient in developing BI reports and analytics solutions
- GCP: Experience with BigQuery and familiarity with wider GCP data tooling
- Cloud Data Warehousing: Knowledge of cloud-based storage and warehousing concepts
- AI/ML Exposure: Basic understanding of machine learning concepts; willingness to learn BigQuery ML, AutoML, etc.
- Git / GitHub: Proficient in version control for code and documentation
- Semantic Modelling: Understanding of semantic layers, business definitions, and logical data structures
- Data Quality: Knowledge of data validation, cleansing techniques, and QA processes
- Business Intelligence: Ability to build self-service analytics and reporting layers
- Data Analysis: Capable of interpreting complex datasets to produce meaningful insights
- Education: Degree – Bachelor’s degree in a data-related discipline (preferred)
The Company is committed to diversity and equality of opportunity for all and is opposed to any form of less favourable treatment or harassment on the grounds of race, religion or belief, sex, marriage and civil partnership, pregnancy and maternity, age, sexual orientation, gender reassignment or disability. This position is based in Dunton, and it is expected the successful candidate will be able to attend the Dunton Campus for typically 4 days a week and remain flexible on the days they are required to attend the office according to business requirements. As part of our pre-employment checks process, successful candidates will be required to undergo a criminal record check. This will be conducted in line with the Rehabilitation of Offenders Act 1974 and applied only to unspent convictions.
Data Business Analyst in England employer: Ford Motor
Contact Detail:
Ford Motor Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land Data Business Analyst in England
✨Tip Number 1
Network like a pro! Reach out to folks in the industry, attend meetups, and connect with people on LinkedIn. You never know who might have the inside scoop on job openings or can refer you directly.
✨Tip Number 2
Prepare for interviews by practising common questions and scenarios related to data analytics. Think about how your skills in SQL, Python, and data modelling can solve real business problems at Ford Credit Europe.
✨Tip Number 3
Showcase your projects! Whether it's a personal project or something from your studies, having tangible examples of your work with data solutions can really impress potential employers.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people. Plus, it shows you’re genuinely interested in joining our team.
We think you need these skills to ace Data Business Analyst in England
Some tips for your application 🫡
Tailor Your CV: Make sure your CV speaks directly to the Data Business Analyst role. Highlight your SQL, Python, and data modelling skills, and don’t forget to mention any experience with Looker or Power BI. We want to see how you can bring value to our team!
Craft a Compelling Cover Letter: Your cover letter is your chance to shine! Use it to explain why you're passionate about data and how your background aligns with our needs at Ford Credit Europe. Show us your enthusiasm for the role and the company!
Showcase Relevant Projects: If you've worked on projects that involved data analysis, semantic modelling, or AI tools, make sure to include them in your application. We love seeing real-world examples of your skills in action, so don’t hold back!
Apply Through Our Website: We encourage you to apply through our website for a smoother process. It helps us keep track of your application and ensures you’re considered for the role. Plus, it’s super easy to do!
How to prepare for a job interview at Ford Motor
✨Know Your Data Tools
Make sure you brush up on your SQL and Python skills before the interview. Be ready to discuss how you've used these tools in past projects, especially in relation to data manipulation and analysis. Familiarity with Looker, Power BI, and GCP will definitely give you an edge!
✨Understand Semantic Modelling
Since this role involves implementing semantic layers, it’s crucial to understand what that means. Prepare to explain how you would create reusable data abstractions and metrics. Think about examples where you've translated complex data into accessible insights.
✨Show Your Collaborative Spirit
This position requires working closely with various teams, so be ready to share experiences where you’ve successfully collaborated with others. Highlight any instances where you facilitated discussions between technical and business stakeholders to meet data needs.
✨Stay Updated on AI Trends
As the role involves future AI-powered tools, demonstrate your knowledge of current AI developments relevant to banking. Discuss any personal projects or learning experiences related to machine learning that show your willingness to grow in this area.