Senior Data Analyst, Customer Success

Deel
London
10 months ago
Applications closed

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Who we are is what we do.

Deel and our family of growing companies are made up of global teams dedicated to helping businesses hire anyone, anywhere, easily. 

The team comprises over three thousand self-driven individuals spanning over 100 countries, and our unified yet diverse culture keeps us continually learning and innovating the platform and products for customers.

Companies should be able to hire the best talent anywhere in the world, so we are building the best platform to make that a reality. Our market-leading technology, expertise, and global team are crucial to the platform’s success. We deliver the best products and features in our space, enabling millions of jobs worldwide and connecting the global workforce with the best companies and opportunities.

Why should you be part of our success story?

A 30-mile hiring radius should no longer dictate how companies hire because exceptional talent lives everywhere. Deel sees a world without hiring borders and endless talent that pairs perfect candidates with great companies.

We offer global teams all the tools they need to hire, onboard, manage, pay, and scale at full speed. We aim to foster a diverse global economy by building a generational platform that seamlessly connects companies with talent worldwide.

After our successful Series D in 2021, we raised another $50M in 2023, doubling our valuation to $12B. There’s never been a more exciting time to join Deel — the international payroll and compliance market leader.

About the role

Deel is one of the fastest SaaS companies ever to reach 100M revenue, and is very far along the way to become the fastest company to $1B revenue. Driven by an enormous market, and high speed of innovation, Deel has expanded their product suite and customer base by many orders of magnitude in the last few years. With over 20,000 global customers, customer success is a vital strategic pillar for Deel. As Senior Analyst for Customer Success, you’ll work closely with CS leadership and teams across the globe, helping them make the right decisions to drive higher customer engagement, lower churn and ultimately more profitability.
Duties:

As part of our data team, you’ll work closely with data engineers, analytics engineers and analysts across the business to develop our tool. 

You’ll work closely with the most senior CS stakeholders 

You will drive the direction of our churn & retention data models and reporting infrastructure, building dashboards in Looker 

You will own data enrichment of our customer success tooling, to ensure CS agents have the right insights at their disposal where they do their work.

You’ll own the definition, quality and reliability for key business metrics, like NRR and Churn 

You’ll own and drive the development of customer success performance and productivity metrics

Working closely with analytics engineering, you’ll develop customer centric dbt models like segmentation and time-perspectives 

You’ll collaborate closely with our data science team to refine models on churn-risk and customer sentiment

You’ll build reporting in Looker, from highly curated and formatted dashboards that will see 1000+ viewers per months, to highly customizable self-service frameworks for specific subteams 

Requirements:

You hold a Bachelor’s degree in Math, Economics, CS, or another STEM field

You have at least 5 years experience in an analytical role 

You’ve worked for a B2B SaaS company in the past 

You’re an excellent communicator, you know how to tell simple, but compelling stories with data

You work well with people across the spectrum 

Expert in SQL and Looker (or similar visualization tooling)

Some experience in data modeling and metrics design


We'd especially love to speak with you if:

You have a worked with dbt and LookML

You have experience using customer data platforms like Gainsight, or Vitally

Experience with version control tools (GitHub, GitLab)

You’ve worked for fast-growing B2B SaaS companies 

You have experience on customer analytics

Total Rewards

Our workforce deserves fair and competitive pay that meets them where they are. With scalable benefits, rewards, and perks, our total rewards programs reflect our commitment to inclusivity and access for all. 

Some things you’ll enjoy

Provided computer equipment tailored to your role

Stock grant opportunities dependent on your role, employment status and location

Additional perks and benefits based on your employment status and country

The flexibility of remote work, including WeWork access where available

At Deel, we’re an equal-opportunity employer that values diversity and positively encourage applications from suitably qualified and eligible candidates regardless of race, religion, sex, national origin, gender, sexual orientation, age, marital status, veteran status, disability status, pregnancy or maternity or other applicable legally protected characteristics.

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