Subscriptions Sales Manager - Business Intelligence (Gaming Sector)

Media IQ Recruitment Ltd
City of London
1 month ago
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Subscriptions Sales Manager - Business Intelligence (Gaming Sector)

Job Sector

BI / SaaS / Research / IT

Contract Type

Permanent

Location

London (3 days a week) + Working from Home

Job Reference

Media IQ - SubsMG493

Do you have Subscriptions, Media or Sponsorship sales experience?

Like the idea of joining a brand new department of a high respected organisation?

Excited at the prospect of selling newly launched business intelligence products to C Suite professionals within the Gaming industry?

If yes, please read on

The Company

Global media and events business with established brands across a variety of different industry sectors. They have a friendly, supportive and collaborative working culture with plenty of staff benefits and training.

The Role of Subscriptions Sales Manager

The organisation already has highly respected events and media products within the wider gaming industry and now they are pulling all of their industry data, insights and expertise into specialist reports and a business intelligence platform which is designed to help C Suite professionals within that market to make more informed decisions.

The purpose of your role will be to engage with these C suite professionals and sell them specialist reports and subscriptions to this new business intelligence platform. The offering is new but the company and their brands are well known and highly respected, which will open a lot of doors. There is a clear strategy to continue to develop more products next year so that by the end of 2024 you will have a suite of different business intelligence solutions to talk to new and existing clients about.

Since this is a new offering, you will be new business focused to begin with, although you will often be engaging with clients who know the company and brands. Furthermore, you will continue to manage and grow those accounts that you get on board.

Requirements for this Subscriptions Sales Manager position

2+ years consultative sales experience within subscriptions, media or sponsorship

Mature, confident and highly articulate

Experience of engaging with C suite professionals

Stable career history

Adaptable and happy to work in a fast evolving environment

Able to travel to West London office 3 times a week

If you think that you tick the requirements and the role is of interest, please apply.


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