Data Analyst

Jobwise Ltd
Manchester
1 day ago
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Are you a Data Analyst ready to make your mark in a major data transformation project?

Join a leading telecommunications service provider based in Manchester as a Data Analyst and play a key role in building, managing, and maintaining a brand-new data warehouse. This full-time hybrid role (2 days in the office) offers you the opportunity to work across both back-end data processing and front-end analytics - helping shape the company's data future from the ground up.

What will you be doing as a Data Analyst?
You'll be at the heart of our data operations, turning raw information into valuable insights. From compiling and cleaning complex data sets to designing engaging dashboards, you'll ensure our data tells a meaningful story. You'll also be part of a major project to build a new data warehouse - bringing multiple data systems together - and will take responsibility for it's upkeep once launched.

Key responsibilities include:

Compiling, cleaning, and processing raw data from various sources
Analysing and interpreting data trends to support business decisions
Building interactive dashboards and reports using Power BI
Liaising with clients, customers, and internal stakeholders
Supporting the integration of multiple data systems into a central data warehouse
Maintaining and optimising the data warehouse post-implementation
We would LOVE to hear from you if you have the following skills and experience:

If you're a Data Analyst, Business Intelligence Analyst, Reporting Analyst, or Data Scientist, wed love to hear from you!

You'll bring:

A few years of experience in a data-driven role
Strong knowledge of Power BI and Python (or C programming)
Proven ability to work independently and manage your own workload
Excellent analytical and problem-solving skills
Desirable: academic background in Mathematics, Statistics, Data Analytics, Data Science, or Marketing Analytics
What will you get in return for your work as a Data Analyst?

Salary up to £40,000 per annum
Hybrid working - 2 days in the Manchester office, 3 days from home
Opportunity to shape a major data warehouse project
A collaborative team environment within an innovative telecom provider
Ongoing career development and training opportunitiesApply now by sending your CV. We aim to respond to all successful applications within 2 days. If you haven't been contacted within 2 days your application has been unsuccessful. Please check our website and apply directly for any other suitable positions you see. We apologise that we are unable to contact everyone in person and thank you for your interest. Jobwise Ltd is an employment agency and the details sent in your application may be stored on our secure database

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