Business Intelligence Developer

Templeton & Partners - Innovative & Inclusive Hiring Solutions
Birmingham
1 year ago
Applications closed

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Data & Reporting – BI Developer!

Contract Role|Start: ASAP|6-Month Initially|Outside IR35Remote Mostly

Are you aData & Reporting – BI Developer with Snowflake and MS SQL expertwith a passion for designing and buildingend-to-end data solutions? Do you thrive on solving complex business problems, creating robust data models, and delivering impactful solutions? If so, we want to hear from you!


Why Join?

High-Impact Role:Be at the heart of designing a brand-newTechnicians Bonus solutionusingSnowflake.

Collaborative Environment:Work alongside a dynamicData & Reporting teamto drive meaningful results.

Flexibility:Enjoy the freedom of mostlyremote workwith potential in-office collaboration once a week.


Key Responsibilities

✔️Data Preparation:UseMS SQL ServerandSnowflaketo prepare and optimize data for reporting.

✔️Solution Design & Data Modelling:Translate complex business needs into effective, scalable solutions.

✔️Testing:ConductUnit Testingand leadUser Acceptance Testingwith stakeholders to ensure solutions meet requirements.

✔️Documentation:Maintain clear and comprehensive documentation, ensuring a smooth handover post-project.

Secondary Responsibilities

Requirements Gathering:Investigate existing data and reporting solutions to align with project goals.

Stakeholder Engagement:Communicate effectively to understand business rules and refine solution designs.


What You Bring

Snowflake & MS SQL Expertise:Proven experience in designing, data modelling, and building end-to-end solutions.

Proactive & Self-Starter:Ability to dive into complex business requirements and propose creative, effective solutions.

Effective Communicator:Strong collaboration skills with the ability to work with SMEs and project teams.


How Success is Measured

Timely Delivery:Key reporting deliveredon timeand to specification.

Robust Solutions:Ensure accuracy, fault tolerance, and scalability of all solutions.

Seamless Handover:Documentation and handover completed smoothly.


What Will You Get?

  • Flexibleremote-first working, with occasional office collaboration at North London.
  • Laptop providedto support your work.
  • Opportunity to work on ahigh-impact projectin a supportive team environment.

Location:Remote, with potential to work at the north London office 1 day/week.

Ready to take on this exciting challenge? Apply now to join a fast-paced project where your skills will truly make an impact!

✨ Let’s build something amazing together! ✨

Marina Economidou, Senior Recruitment

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