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Senior Machine Learning Engineer – Client Insights
Company | Alloy |
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Location | New York, NY, USA |
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Salary | $180000 – $250000 |
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Type | Full-Time |
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Degrees | Bachelor’s |
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Experience Level | Senior |
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Requirements
- 6 years of relevant experience doing modeling and data science work, conducting advanced analytics and building/iterating on real-world production end-to-end models.
- 2 years experience as a tech lead
- Advanced proficiency in scripting languages like Python and querying languages like SQL
- Experience with classification, clustering, regression, and time series models.
- Experience working with unbalanced data sets and regularization methods.
- Experience building models from scratch, iterating, and owning projects end to end.
- A BA in a quantitative field, or equivalent experience
- You have experience in a highly analytical role in fast-paced environments
- You have a knack for details, and making sure things are correct/accurate
Responsibilities
- Apply statistical and machine learning methods to build customer-facing models.
- Work closely with application engineers to operationalize models you’ve built, ensuring they meet rigors for customer usage, including model performance tracking and having mechanisms to retrain models.
- Take the initiative to innovate on our current models and apply new methodologies to new and existing problems/projects/products.
- Thought leadership around data governance and standardization
- Set standards for feature/variable definitions
- Produce documents that give visibility into the data pipelines you’ve built.
- Partner with engineering and product leads to provide guidance and leadership in roadmap planning.
- Anticipate future support and maintenance overhead for the data-driven features and models you’ve built.
- Analyze our data sets to help inform product roadmaps.
- Devise optimization models to recommend ways to improve fraud and compliance workflows.
- Use heuristics, anomaly detection methods, and unsupervised machine learning methods to detect and predict fraud.
- Leverage a deep, data-driven understanding of the key drivers and metrics underpinning Alloy’s products and business lines to draw insights and make recommendations that will help the company grow and scale effectively
- Conduct bespoke analyses and research for new customer use cases that support future development of data science products.
Preferred Qualifications
- Professional experience in fraud detection
- Experience maintaining production machine learning models
- Experience with AWS SageMaker
- Prior startup experience
- Airflow
- Spark
- Dbt
- Git
- Hex