Amazon.com Services LLC

FinTech

AppliedScientist,FinTelligence

$143–193k Bellevue, Washington, United States FULL TIME
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid+ candidates.

The Brief

“Applied Scientist, FinTelligence at Amazon.com Services LLC. Skills: Data Science, Machine Learning, Data Engineering. Design, develop, and deploy machine learning models. Build and maintain data pipelines”

Industry & Context.

FinTech
Problems you'll solve

Problem solving

What They're Looking For.

Must Have

4+ years of experience in data science, Master's degree in Computer Science, Statistics, Mathematics, or related quantitative field, Proficiency in SQL, Experience with Python or R

Nice to Have

PhD in a quantitative field, Experience with AWS, GCP, or Azure, Experience with ML frameworks like scikit-learn, TensorFlow, or PyTorch, Experience with data warehousing solutions like Snowflake, BigQuery, or Redshift, Experience with BI tools like Tableau or Power BI, Experience with distributed computing frameworks like Spark

What You'll Do.

and deploy machine learning models

Build and maintain data pipelines

Perform data analysis and generate insights

Develop and implement statistical models

Collaborate with engineering teams

Communicate findings to stakeholders

How You'll Work.

Team & Collaboration

Cross-functional teams; Engineering teams; Stakeholders

Communication Scope

Communicate findings

Full Job Description

At Amazon's FinTech organization, we are building AI systems that process hundreds of millions of financial transactions, turn complex documents into actionable intelligence, and power autonomous agents that learn from every customer interaction. We are looking for an Applied Scientist to lead the development of generative AI applications that change how finance teams work, tackling problems at the intersection of large language models, multi-agent systems, and real-world financial operations. Key job responsibilities - Building AI systems that finance teams trust enough to rely on without manual review, where precision isn't a nice-to-have, it's a compliance requirement. - Designing agents that learn from user corrections and get measurably better with every interaction, not just at the next model release. - Solving inference at massive scale using tiered model architectures, intelligent routing, and small language models that deliver production-grade accuracy at a fraction of frontier model cost. - Developing evaluation frameworks that catch quality regressions before customers do and gate every model change before it ships. Who Thrives Here - You're someone who cares as much about shipping as about research. - You've built models that run in production, not just in notebooks. - You're comfortable working across the full stack, from model architecture to deployment to measuring whether the customer's workflow actually changed. - You operate well in cross-functional settings where science, engineering, and business teams inform each other continuously. - You'd rather solve a hard real-world problem than optimize a benchmark. What Makes This Different - Your work ships to production and directly changes how thousands of finance professionals operate daily. - The problems are genuinely hard: financial data is messy, regulated, high-stakes, and operates at a scale where naive LLM approaches break down. - You'll work across multiple domains, from contract intelligence

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