Data Engineer (Python/Node/AWS)

McLean, Virginia, United States

Kunai

Automate Real Work with Kun.AI

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Kunai is a fast-growing digital consultancy focused on banking, payments, and fintech powered by a global network that attracts the best and brightest people from all backgrounds and cultures, driven by innovation and experimentation, spread across almost every single continent. Over the past decade, we've shipped over 150 products for clients that include Visa, American Express, Capital One, WEX, Wells Fargo, Ernst & Young, and TOMS Shoes. Our founders built a previous agency (Monsoon) that was acquired by Capital One in 2015.

Join an existing team to help grow and unlock platform capabilities for financial client's consumer travel. The team is focused on the growth of travel, marketing, Salesforce Cloud initiatives. Opportunities to work on multiple technologies within AWS, Python, Node.js, and Typescript. 

Requirements:

- 4+ years of experience working in a Python/Typescript
- 3+ years of experience working within AWS, such as Fargate/Glue/MongoDB
- Experience working with Big Data/Data lakes etc. 

Nice to have:

- Experience working with AWS Lambda
- Experience with Next.js/Nest.js
- Experience with React or Angular

At Kunai, we have built deep relationships with our clients. Our bar is high, and our mission is to always exceed our client’s expectations. If you are fanatical about customer success and driven to work on and solve tough technical challenges, we would love to chat with you!

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Category: Engineering Jobs

Tags: Angular AWS Banking Big Data FinTech Lambda MongoDB Node.js Python React Salesforce TypeScript

Perks/benefits: Startup environment

Regions: Africa North America
Country: United States

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