Business Data Analyst

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4 days ago
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Are you ready to take your career to the next level? This exciting opportunity as a Business Data Analyst offers the chance to make a real impact in a dynamic and fast-paced environment. With a focus on driving scalable lead acquisition, qualification, and conversion, this role is perfect for someone looking to work on innovative projects that shape the future of business strategies. As a part of this position, you will collaborate with cross-functional teams, dive into data analysis, and optimise processes to deliver tangible results. If you're passionate about data, insights, and making a difference, this could be the perfect role for you.

What You Will Do:

  • Own the end-to-end lead journey through robust API integrations, ensuring seamless lead attribution, minimal leakage, and improved online booking conversion rates. - Analyse dashboards to track lead quality, source effectiveness, drop-offs, and conversion trends, delivering actionable insights that enhance lead velocity and ROI. - Drive scalable strategies for lead acquisition, qualification, and nurturing at various stages, ensuring smooth collaboration across stakeholders. - Provide structured reporting on lead flow and SLA adherence, enabling refinement of lead management tactics. - Collaborate with stakeholders to maintain accuracy, optimise efficiencies, and identify roadmaps for improvement in lead flow and management.

    What You Will Bring:

  • Strong analytical skills and a proven ability to interpret data into actionable strategies. - Experience with API integrations and lead management processes. - Ability to work collaboratively with cross-functional teams and external stakeholders. - Proficiency in using dashboards to track and optimise performance metrics. - A results-driven mindset with a focus on improving lead velocity and ROI. - Experience / knowledge of Zapier, Bemycar, MSD software or similar packages advantageous. - Degree qualified in a relevant field such as data science, statistics, computer science, mathematics or digital marketing essential. 

    This role is a vital part of the company's mission to enhance operational efficiency and maximise growth opportunities. By leveraging your skills and expertise, you will contribute to the optimisation of lead acquisition and conversion processes, aligning with the company's commitment to innovation and excellence.

    Location:

    This position is hybrid with office location in Camden, offering a vibrant and inspiring work environment in the heart of the city.

    Interested?:

    If you're ready to step into a role that challenges and rewards, apply today. Don't miss the chance to be part of a forward-thinking company where your contributions will drive success and innovation. Apply now to start your journey as a Business Data Analyst!

    Your CV will be forwarded to Jonathan Lee Recruitment, a leading engineering and manufacturing recruitment consultancy established in 1978. The services advertised by Jonathan Lee Recruitment are those of an Employment Agency.

    In order for your CV to be processed effectively, please ensure your name, email address, phone number and location (post code OR town OR county, as a minimum) are included

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