Data Analyst Graduate

LIBRA RECRUITMENT
London
3 weeks ago
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Our client based in London is looking for a recent Graduate to join their team as a Campaign Executive.
To be successful your must enjoy working with Data, be analytical by nature, able to learn new software quickly and you must enjoy working to targets.

Responsibility of the Graduate role are:
· Reporting to our Campaign Management team, you will be an imperative cog in the
lead generation wheel, ensuring all data generated is verified, accurate and up to date.
· Your initial responsibility will be quality assessment of our lead data. This will
include checking our data against a range of data sources.
· Be responsible for setting up and launching new campaigns. This will include creating
automated data checking rules via our data validation systems and handling API
integrations with client systems where necessary (appropriate training will be given).
· Respond to ad hoc tasks as directed by company directors or the campaign
management team.
· Be tasked with maintaining the smooth sailing of all campaigns, ensuring an excellent level of service for all clients without fail.
· Communicate the responsiveness of campaigns effectively and concisely so we can
accurately predict campaign trajectories.
· Be comfortable running operational and analytic tasks, including segmenting data and
analysing response rates on various technology platforms which we employ
(appropriate training will be given).
· Double check data validity and communicate any shortcomings where necessary.

Skills required for the Graduate role:
You must have a degree in the following: Economics,Finance, Mathematics, Science or Engineering.

Strong communications skills

The Graduate role is fully remote however candidates must be London based and inside the M25 circle as the role requires regular trips into London for client meetings.

Our client is paying a basic salary of £25 000 with commission. Typical OTE is £35 000 for this role.

Our vision here at Libra Recruitment is to be the recruiter of choice for both our clients and our candidates. We are forward thinking, passionate and consultative in our approach to recruitment. We have the skills and experience to deliver a professional, tailored and friendly service.

Libra Recruitment is an independent agency that focuses on permanent and fixed term recruitment specialising in HR, Sales, Marketing, Office support & Finance.

We receive a high volume of applications and are not able to respond to every application we receive. If you haven’t heard from us within 7 days, please note your application hasn’t been successful on this occasion

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