Data Analyst

Mojo Mortgages
UK
1 year ago
Applications closed

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Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Data Analyst

Who are we? At Mojo Mortgages we are on a mission to become the largest and most disruptive mortgage broker in the UK. With the support from our family of brands, including Uswitch, Money, Confused, and Zoopla, we're scaling fast and taking the industry by storm. We're not just growing quickly, we're growing exponentially. We're all about pushing the boundaries, doing mortgages differently, and delivering outstanding service that makes a real difference in people's lives. We are looking for a Content Manager to join our marketing team, and supercharge our efforts to become the biggest mortgage broker in the UK. What will you be doing? You'll join our team of Data Analysts, Taking lead on data for our Protection/Mortgage departments. At Mojo, we understand the importance of data in making informed decisions and having meaningful discussions. With data at the heart of everything we do, this is a fantastic opportunity to help shape our future and make a real impact. You'll be Leading Data Projects Varied work across departments (Marketing, Sales/Ops, Product) and data disciplines (Dashboarding/Deep Dives/Applying ML techniques/DBT/etc.) depending on where the candidate excels We're focused on self-service to embolden stakeholders to ask and answer their questions based on numbers and not just gut. The projects we prioritise enable this and/or have a clear business impact Design and deliver analysis to support decision making Building data relationships across the business Close analyst-stakeholder relationships are arguably the most important piece of a well-functioning data team, something we hold a lot of weight against Requirements What you will bring to the role: At least 2 years experience in a Data Analyst role. Strong SQL skills Tableau/Visualisation tool experience Financial services and specifically Mortgage experience is preferred. Curiosity and a pro-active approach to data. Adept at turning business problems into data problems and presenting actions that will make an impact Great communication skills High levels of organisation and a passion for data driven improvements It'd also be great if you have: DBT experience Data Modeling Experience Background in statistics and/or programming Experience with ML/AI in python/R/another programming language GCP/AWS experience, ideally with their respective ML/AI services Our company behaviours At Mojo, we opt to stand by behaviours as opposed to values. Behaviours are more useful than values because they’re concrete and actionable, not abstract. Our core behaviours below provide the blueprint of how to thrive at Mojo. Keep Exploring Put People First Love What You Do Always Accountable Care Personally, Challenge Directly Benefits What you’ll get in return… We're proud of our high Glassdoor Score, British Bank Awards, and fantastic customer reviews, but we're always striving to do better so we’ve taken a lot of time to put together a benefits package we think you’ll love. Competitive salary between £50-55k depending on experience, 25 days holiday plus bank holidays and because that isn't enough, you will also get an extra half day off for your birthday, full day off if you move house and 2 companywide close down days per year. You’ll also benefit from: Work from anywhere in the world for up to 30 days per year Sick pay and sick pay insurance Wellness programme from Able Futures Subsidised private medical insurance Critical Illness cover & Death in service Enhanced parental & adoption pay Compassionate leave Long service awards up to £3000 Casual dress And more Mojo

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