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Initially built to take the pain out of peer-to-peer payments, Cash App has gone from a simple product with a single purpose to a dynamic app, bringing a better way to send, spend, invest, borrow and save to our millions of monthly active users. With a mission to redefine the world's relationship with money by making it more relatable, instantly available and universally accessible.
Machine Learning Engineer (Modeling), Families Risk
Location
California
Posted
111 days ago
Salary
$0
Seniority
Mid Level
Job Description
Machine Learning Engineer (Modeling), Families Risk
Cash App
It all started with an idea at Block in 2013. Initially built to take the pain out of peer-to-peer payments, Cash App has gone from a simple product with a single purpose to a dynamic ecosystem, developing unique financial products, including Afterpay/Clearpay, to provide a better way to send, spend, invest, borrow and save to our 50+ million monthly active customers. We want to redefine the world's relationship with money to make it more relatable, instantly available, and universally accessible. Today, Cash App has thousands of employees working globally across office and remote locations, with a culture geared toward innovation, collaboration and impact. We've been a distributed team since day one, and many of our roles can be done remotely from the countries where Cash App operates. No matter the location, we tailor our experience to ensure our employees are creative, productive, and happy. The Role Machine Learning is an integral part of how we at Cash App design products, operate, and pursue our mission to serve the unbanked as well as disrupt traditional financial institutions. Our massive scale and deep trove of transaction data create an endless number of opportunities to use ML and AI methods to better understand our customers and offer new products and experiences that can improve their lives. We are a highly creative group that prefers to solve problems from first principles; we move quickly, make incremental changes, and deploy to production every day. As part of the Risk ML team, you will help shape the future of teen banking by developing models that enable safe and trustworthy financial experiences for teens and their parents. Your work will focus on building machine learning systems that detect and prevent risky or abusive activity, strengthen account integrity, and ensure a secure ecosystem for families on Cash App. You'll experiment with state-of-the-art algorithms to identify emerging risk behaviors, detect potential abuse in real time, and help ensure that millions of customers can use Cash App safely and confidently. You Will Build machine learning models to detect and act against risky or abusive activity across the Cash Families product Collaborate cross-functionally with engineering, product, and operations teams to design systems and features to protect and maintain trust with our customers Work closely with the ML Engineering teams who build the systems that allow our models to operate at scale and in real time Research emerging risks and behavioral patterns in financial activity to proactively shape safeguards and policy Contribute to the growth of our modelling capabilities through mentoring and supporting fellow modellers Exercise a high level of autonomy and responsibility, owning your solutions from design through to operation You Have Bachelor's degree in a quantitative field such as Mathematics/Statistics/Physics or Machine Learning. Masters or PhD preferred 5+ years of experience in machine learning, artificial intelligence, or a related field Strong knowledge of machine learning algorithms and data analysis techniques Excellent problem-solving skills and attention to detail Strong communication skills, with the ability to explain complex concepts to non-technical stakeholders Technologies We Use and Teach Python (NumPy, Pandas, sklearn, xgboost, TensorFlow, keras, etc.) MySQL, Snowflake, Tableau, Mode GCP/AWS We're working to build a more inclusive economy where our customers have equal access to opportunity, and we strive to live by these same values in building our workplace. Block is an equal opportunity employer evaluating all employees and job applicants without regard to identity or any legally protected class. We will consider qualified applicants with arrest or conviction records for employment in accordance with state and local laws and "fair chance" ordinances. We believe in being fair, and are committed to an inclusive interview experience, including providing reasonable accommodations to disabled applicants throughout the recruitment process. We encourage applicants to share any needed accommodations with their recruiter, who will treat these requests as confidentially as possible. Want to learn more about what we're doing to build a workplace that is fair and square? Check out our I+D page . While there is no specific deadline to apply for this role, U.S. roles are typically open for an average of 55 days before being filled by a successful candidate. Please refer to the date listed at the top of this job page for when this role was first posted. Block takes a market-based approach to pay, and pay may vary depending on your location. U.S. locations are categorized into one of four zones based on a cost of labor index for that geographic area. The successful candidate's starting pay will be determined based on job-related skills, experience, qualifications, work location, and market conditions. These ranges may be modified in the future.
Job Requirements
- To find a location's zone designation, please refer to this resource . If a location of interest is not listed, please speak with a recruiter for additional information.
- Zone A:
- $228,700 - $343,100 USD
- Zone B:
- $217,300 - $325,900 USD
- Zone C:
- $205,900 - $308,900 USD
- Zone D:
- $194,500 - $291,700 USD
- Application Guidelines
- Candidates may submit up to 9 active applications within a 60-day period. Reapplications to the same role are accepted 90 days after a previous application has been reviewed.
- Use of AI in Our Hiring Process
- We may use automated AI tools to evaluate job applications for efficiency and consistency. These tools comply with local regulations, including bias audits, and we handle all personal data in accordance with state and local privacy laws.
- Contact us here with hiring practice or data usage questions.
- Every benefit we offer is designed with one goal: empowering you to do the best work of your career while building the life you want. Remote work, medical insurance, flexible time off, retirement savings plans, and modern family planning are just some of our offering. Check out our other benefits at Block.
- Block, Inc. (NYSE: XYZ) builds technology to increase access to the global economy. Each of our brands unlocks different aspects of the economy for more people.
- Square
- makes commerce and financial services accessible to sellers.
- Cash App
- is the easy way to spend, send, and store money.
- Afterpay
- is transforming the way customers manage their spending over time.
- TIDAL
- is a music platform that empowers artists to thrive as entrepreneurs.
- Bitkey
- is a simple self-custody wallet built for bitcoin.
- Proto
- is a suite of bitcoin mining products and services. Together, we're helping build a financial system that is open to everyone.
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