Airwallex is the only unified payments and financial platform for global businesses. Powered by our unique combination of proprietary infrastructure and software, we empower over 200,000 businesses worldwide – including Brex, Rippling, Navan, Qantas, SHEIN and many more – with fully integrated solutions to manage everything from business accounts, payments, spend management and treasury, to embedded finance at a global scale.
Proudly founded in Melbourne, we have a team of over 2,200 of the brightest and most innovative people in tech across 26 offices around the globe. Valued at US$8 billion and backed by world-leading investors including T. Rowe Price, Visa, Mastercard, Robinhood Ventures, Sequoia, Salesforce Ventures, DST Global, and Lone Pine Capital, Airwallex is leading the charge in building the global payments and financial platform of the future. If you’re ready to do the most ambitious work of your career, join us.
Attributes We ValueWe hire successful builders with founder-like energy who want real impact, accelerated learning, and true ownership. You bring strong role-related expertise and sharp thinking, and you’re motivated by our mission and operating principles. You move fast with good judgment, dig deep with curiosity, and make decisions from first principles, balancing speed and rigor.
You're humble and collaborative; turn zero‑to‑one ideas into real products, and you “get stuff done” end-to-end. You use AI to work smarter and solve problems faster. Here, you’ll tackle complex, high‑visibility problems with exceptional teammates and grow your career as we build the future of global banking. If that sounds like you, let’s build what’s next.
About the team
The GTM Data Science team at Airwallex is a collaborative group of analytics and data science professionals passionate about driving commercial success with cutting-edge solutions. We work closely with Product, Growth, and Commercial teams to accelerate revenue growth, optimize efficiency, and build the data foundations supporting Airwallex’s next phase. Our mandate is to use data-driven methods—not only to understand what changed, but to uncover why, and transform those insights into scalable impact.
What you’ll do
As a Senior Data Scientist, GTM, you will play a pivotal role within the GTM Data Science team, partnering cross-functionally to develop innovative solutions to GTM challenges. Your work will encompass revenue forecasting, deep causal inference, and deploying AI-driven insights across the commercial lifecycle. You’ll drive proactive, exploratory analysis, translate complex results into actionable business strategies, and help build Airwallex’s next-generation data science foundation.
Responsibilities:
Serve as a technical partner to Product, Growth, and Commercial teams to design and implement scalable data science solutions that accelerate revenue and improve commercial outcomes.
Lead exploratory, data-driven analyses to identify and scale revenue opportunities, uncover trends, and operationalize insights into automated, repeatable workflows.
Develop and maintain revenue forecasting models and performance analytics (e.g., pipeline health, conversion, retention drivers, scenario planning) as trusted sources of truth for commercial decision-making.
Apply advanced causal inference techniques (such as DiD, synthetic control, DoubleML) to estimate business impact and guide strategic choices where RCTs are not practical.
Design and implement AI-enabled solutions across the sales and customer lifecycle, including boosting sales effectiveness, retention, and expansion.
Communicate technical findings and recommendations lucidly to technical and non-technical stakeholders, including executive teams.
Who you are
We’re looking for people who meet the minimum requirements for this role. The preferred qualifications are a plus, but not required.
Minimum qualifications:
At least 5 years of industry experience and an advanced degree (MS or PhD) in a quantitative field (e.g., Statistics, Computer Science, Engineering, Economics, or related discipline).
Demonstrated analytical intuition and structured problem-solving; skilled at translating commercial questions into focused analytics projects.
Excellent communicator, adept at presenting complex technical concepts as actionable recommendations to diverse audiences.
Strong hands-on experience with SQL, Python and/or R, including causal inference and revenue forecasting.
Deep curiosity about GTM performance and customer behavior—focused on uncovering not just what changed, but why it changed.
Preferred qualifications:
Experience with Databricks or similar cloud data platforms/warehouses.
Familiarity with Hex or other notebook-based analysis tools.
Experience in a high-growth startup and/or B2B business models, including CRM, sales pipeline, or RevOps data.
To protect you from recruitment scams, please be aware that Airwallex will not ask for bank details, sensitive ID numbers (i.e. passport), or any form of payment during the application or interview process. All official communication will come from an @airwallex.com email address. Please apply only through careers.airwallex.com or our official LinkedIn page.
Airwallex does not accept unsolicited resumes from search firms/recruiters. Airwallex will not pay any fees to search firms/recruiters if a candidate is submitted by a search firm/recruiter unless an agreement has been entered into with respect to specific open position(s). Search firms/recruiters submitting resumes to Airwallex on an unsolicited basis shall be deemed to accept this condition, regardless of any other provision to the contrary.
Equal opportunityAirwallex is proud to be an equal opportunity employer. We value diversity and anyone seeking employment at Airwallex is considered based on merit, qualifications, competence and talent. We don’t regard color, religion, race, national origin, sexual orientation, ancestry, citizenship, sex, marital or family status, disability, gender, or any other legally protected status when making our hiring decisions. If you have a disability or special need that requires accommodation, please let us know.
Airwallex San Francisco, California, USA Office
Airwallex San Francisco, US Office
188 Spear Street’s superior location is two blocks from the Embarcadero, the promenade running along the SF waterfront, and offers exceptional views and convenience through its easy access to BART, Muni, ferries, the Transbay Terminal, the Bay Bridge and all major freeways.
Sales





This isn’t just another sales role. This is your chance to build the future of global banking with a team that’s built to win. We give top performers the autonomy, the product, and the support to achieve uncapped success.
AI Engineering



Our SF AI Engineering team at Airwallex is building production-grade AI that automates the hardest parts of global finance — from payments and onboarding to reconciliation, bookkeeping, and tax. Sitting on top of our proprietary global payments infrastructure and massive real-time transaction datasets, we design and ship vertical AI systems — from LLM-powered copilots and agentic workflows to fine-tuned models — that reach customers quickly and at scale. We’re a small, senior, zero-ego group with high ownership: engineers work end to end from problem framing and experimentation through to deployment and evals, using the right tool for the job to turn deep AI work into visible, shipped impact.
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