Senior Commercial Analyst Commercial Supply · London · Hybrid Remote

loveholidays
London
2 months ago
Applications closed

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Why loveholidays?

At loveholidays, we’re on a mission to open the world to everyone, giving our customers’ unlimited choice, unmatched ease and unmissable value for their next getaway. Our team is the driving force behind our role as our customers’ personal holiday expert -

The smart way to get away.

The impact you’ll have

This is a new role, reporting directly to the VP Commercial. The Senior Commercial Analyst will support the delivery of the Supply strategy and deliverables through insightful, impactful analysis to improve our commercial position with our supplier partners. Supporting strategy, platform prioritisation, decision-making & negotiations.

Your day-to-day:

This a varied role, with flexibility required:

  • Support the implementation and refinement of the Supply strategy through insightful analysis, business cases and recommendations, including new product and inventory launches

  • Produce analysis and recommendations which guide our decision-making and negotiations with current and future supplier partners

  • Actively seek out opportunities to improve our commercial position

  • Prepare material to convey key decisions, messages and achievements to the team and the wider business

  • Improve our levels of reporting and visualisation of analysis, with some day-to-day reporting responsibilities required

  • Monitor and improve team processes (from data to decisions to action)

  • Comfortable working with data analysts and finance teams (and associated data)

  • Facilitate the team through quarterly planning and OKRs

Your skillset:

  • Strong analytical skills, with ability to conduct and create complex analyses and business cases

  • Ability to distil complex analyses down to easy-to-understand summaries and recommendations, telling a story using data and insight

  • Strong reporting and data visualisation skills; highly proficient in Looker (or a similar tool, with wilingness to adopt Looker)

  • Able to evaluate data and metrics to spot red flags and opportunities

  • Good commercial acumen

  • Proactive, inquisitive, with drive, flexibility, tact and perseverance

Desirable

  • Knowledge and understanding of the travel sector

  • Experience in a strategy role

The interview journey:

  • Talent Acquisition Partner screening - 30 mins

  • 1st stage with Hiring Manager - 45 mins

  • Final stage with key stakeholders including a task to present, followed by team chemistry meetings - 2 hours

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