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Data Scientist

Airtm
Full-time
On-site
LATAM

About us:


Airtm is a financial-infrastructure company building the future of the online-work economy. We are on a mission to empower the world's growing number of Digital Entrepreneurs in the Global South, giving them the financial freedom to thrive.

The problem is clear: in emerging markets, accessing the dollar economy is difficult. Cross-border payments are slow, expensive, and often lose value to inflation. This limits the potential of millions of talented individuals.


Airtm’s solution is a swift and comprehensive financial platform that facilitates low-value cross-border payments and local cash-outs. As pioneers in stablecoin-payment infrastructure, Airtm has built the most advanced cross-border payment system available on the market.


As a company married to the world of online work, Airtm will go beyond payments to build the necessary infrastructure the online-work economy needs to thrive. We are fostering an entirely new economy, giving individuals, communities, and countries the tools to take control of their financial destinies. 


About the role:


We're looking for a data-driven, curious, and collaborative Data Scientist to support product and business decision-making through analytics, experimentation, and applied data science.

In this role, you'll work closely with Product, Marketing, and cross-functional stakeholders to define metrics, analyze performance, design experiments, and deliver insights that drive impact across the organization.


Key Responsibilities


- Collaborate with product and business teams to define analytical questions, success metrics, and KPIs.

- Build and maintain analytics foundation using SQL and dbt, enabling reliable reporting and self-serve analytics.

- Design, build, and maintain Tableau dashboards that bring metrics to life and support day-to-day decision-making.

- Perform A/B testing and experimentation, including experiment design, statistical inference, significance testing, and result interpretation.

- Perform ad-hoc, exploratory, and statistical analyses to uncover insights and validate hypotheses.

- Communicate findings clearly to both technical and non-technical stakeholders, translating data into actionable recommendations.

- Partner with stakeholders to iterate on metrics, dashboards, and analyses as business needs evolve.


Qualifications


- Strong SQL and Python skills for data analysis and modeling.

- Experience with dbt for analytics engineering workflows.

- Experience building dashboards in Tableau (or similar BI tools).

- Solid foundation in statistics, experimentation, and hypothesis testing.

- Ability to work cross-functionally and communicate insights effectively.


Nice to Have


- Experience building or prototyping machine learning models.

- Exposure to cloud platforms (AWS) for data storage or analytics workloads.

- Experience working with data pipelines or collaborating closely with data engineering teams.

- Knowledge of feature engineering and model evaluation concepts.

- Experience with version control (Git).


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