Senior Data Engineer
United States
Stash
Invest and build wealth with Stash, the investing app helping over 6M Americans invest and save for the future. Start investing in stocks, ETFs and more today.Want to help everyday Americans build wealth? Financial inequality is increasing and too many people are getting left behind. At Stash, we believe in the power of simplifying investing, making it easy and affordable for everyday Americans to build wealth and achieve their financial goals.
We’re one of the fastest growing fintechs in the U.S. and have had another record-breaking year. In 2021 we almost doubled our headcount and valuation. Our personal finance app makes investing easy and affordable; this year 6 million customers set aside more than $3 billion with Stash.
Prioritizing People is one of our core values and has been key to a healthy work-life balance and a great sense of fulfillment and inclusion. We employ a true people first - hybrid model. Live and work where you feel the most productive, whether that is in our home, in an office, or a combination of both. Anywhere in the US or UK.
Let’s solve complex problems and tackle wealth inequality.
We look for people who will help raise the bar for our entire engineering organization in terms of tech prowess, passion for collaboration and desire to mentor and educate fellow team members. We look for strategic thinkers and creative problem solvers with a bias for execution and we’ll expect you to contribute code as well as product/feature ideas from the get-go.
Our team has built an amazing modern data platform and we would like to add many advancements such as real time streaming, many tools around data governance. As a Data Engineer, you will be responsible for enhancing our data infrastructure to take it to the next level, in collaboration with the team members. You will also be an active contributor in the ongoing maintenance of the existing pipelines. Stash is a data-driven organization and data infrastructure is a critical part of our overall infrastructure. You will have the opportunity to make an impact in the companies’ OKRs by coordinating with data science, marketing teams and backend teams by aligning with their data needs. We work with the latest technologies in the big data space and are seeking folks who would like to do the same.
Tech stack (evolving):
Spark, Scala, Python, Kafka, AWS EMR, Hive, Redshift, Lambda, SNS, SQS, S3, Looker, DynamoDB, CircleCI, Terraform.
What you'll do:
- Contribute to the design/architecture new initiatives such as real time streaming pipelines, tooling around data governance, build job orchestration abstractions to manage resources on AWS
- Collaborate with the team to build tools for data science/marketing teams
- Design integration pipelines for new data sources and improve existing pipelines to perform efficiently at scale
- Provide technical guidance to the team
- Leverage best practices in continuous integration and deployment to our cloud-based infrastructure
- Optimize data access and consumption for our business and product colleagues
Who you are:
- 4+ years of professional experience working in data warehousing, data architecture, and/or data engineering environments, especially using spark, hadoop, hive etc with solid understanding of streaming pipelines.
- At least 1+ years of experience in streaming pipeline development
- Proficiency in at least one high-level programming language Scala
- Good understanding of databases
- You have built large-scale data products and understand the tradeoffs made when building these features
- You have a deep understanding of system design, data structures, and algorithms
- You have an excellent knowledge of distributed computing frameworks such as Hadoop MapReduce, Spark.
- You have a strong knowledge of following AWS infrastructure - EMR, S3, Redshift
- You have strong understanding of data quality, governance
- You are a team player, self-driven, highly motivated individual who loves to learn new things
Gold stars:
- Experience in Machine Learning infrastructure
- Experience in Search Engines
#LI-JB1
#LI-REMOTE
At Stash it is our mission to help everyday Americans invest and build wealth. That includes people of all races, genders, and abilities, so it is important to us to acknowledge and address the issues of inequality in financial services head on.
Diversity and inclusion are essential to living our values, promoting innovation, and building the best products. Our success is directly related to our employees and we believe that our team should reflect the diversity of the customers that we serve. As an Equal Opportunity Employer, Stash is committed to building an inclusive environment for people of all backgrounds.
If you require any reasonable accommodations to make your application process more accessible please reach out to recruiting@stash.com.
Invest in Yourself:
- Equity & Stash Accounts [Invest, Retire, Custodial, Bank]
- Flexible PTO
- Learning & Development Fund
- Work from Home Space Stipends
- Parental Leave [Primary & Secondary]
Recognition:
- BuiltIn’s Best Places to Work (2019, 2020, 2021)
- Forbes Fintech 50 (2019, 2020, 2021)
- Best Digital Bank, Finovate Awards (2020)
- Tearsheet Challenge Awards, Best Banking Card Product - Stock-Back® Card, 2020
- LendIt Fintech Innovator of the Year (2019 & 2020)
**No recruiters, please**
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: Architecture AWS Banking Big Data Data governance Data quality Data Warehousing DynamoDB Engineering Finance FinTech Hadoop Kafka Lambda Looker Machine Learning ML infrastructure OKR Pipelines Python Redshift Scala Spark Streaming Terraform
Perks/benefits: Career development Equity Flex hours Flex vacation Home office stipend Parental leave
More jobs like this
Explore more AI, ML, Data Science career opportunities
Find even more open roles in Artificial Intelligence (AI), Machine Learning (ML), Natural Language Processing (NLP), Computer Vision (CV), Data Engineering, Data Analytics, Big Data, and Data Science in general - ordered by popularity of job title or skills, toolset and products used - below.
- Open AI Engineer jobs
- Open Data Science Manager jobs
- Open MLOps Engineer jobs
- Open Data Manager jobs
- Open Senior Business Intelligence Analyst jobs
- Open Data Engineer II jobs
- Open Power BI Developer jobs
- Open Sr Data Engineer jobs
- Open Principal Data Engineer jobs
- Open Data Analytics Engineer jobs
- Open Business Intelligence Developer jobs
- Open Data Scientist II jobs
- Open Junior Data Scientist jobs
- Open Product Data Analyst jobs
- Open Senior Data Architect jobs
- Open Business Data Analyst jobs
- Open Big Data Engineer jobs
- Open Sr. Data Scientist jobs
- Open Data Analyst Intern jobs
- Open Manager, Data Engineering jobs
- Open Junior Data Engineer jobs
- Open Azure Data Engineer jobs
- Open Data Product Manager jobs
- Open Data Quality Analyst jobs
- Open ETL Developer jobs
- Open Data quality-related jobs
- Open Business Intelligence-related jobs
- Open ML models-related jobs
- Open Data management-related jobs
- Open GCP-related jobs
- Open Java-related jobs
- Open Privacy-related jobs
- Open Finance-related jobs
- Open Data visualization-related jobs
- Open APIs-related jobs
- Open Deep Learning-related jobs
- Open PyTorch-related jobs
- Open Snowflake-related jobs
- Open Consulting-related jobs
- Open TensorFlow-related jobs
- Open PhD-related jobs
- Open CI/CD-related jobs
- Open Kubernetes-related jobs
- Open NLP-related jobs
- Open Data governance-related jobs
- Open LLMs-related jobs
- Open Airflow-related jobs
- Open Data warehouse-related jobs
- Open Databricks-related jobs
- Open Hadoop-related jobs