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Chime

Chime

Fintech · Neobank

Website
chimegame.com

Frequently asked questions

  • What AI roles is Chime hiring for?

    Chime currently has 6 active AI-related roles in our index. The most common open titles are: AI/ML Engineer, Data Governance Engineer, Engineering Manager, Mobile Client Foundation, Product Manager, AI & App Experience, Senior AI/ML Engineer. Most positions are in Engineering and Product.

  • What stage of AI development does Chime focus on?

    Chime's active AI hiring is concentrated in: post-training (33%), application (17%), evaluation (17%). These categories follow a seven-stage AI lifecycle: data, pre-training, post-training, serving infrastructure, agents, evaluation, and application.

  • Where is Chime hiring AI talent?

    Chime is hiring AI talent in: United States (6 roles).

  • What technologies does Chime's AI team work with?

    Job postings at Chime most frequently reference: model serving, recommender systems, inference infra, fine tuning, evals.

  • How many AI roles has Chime posted recently?

    In the past 30 days, Chime has posted 5 new AI-related roles.

Jobs (1)

2 AI · 68 total active
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AllPost-train · 2Serve · 1Agent · 1Eval Gate · 1Ship · 1
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Software Engineer, Machine Learning Platform
Chime's Machine Learning Platform (MLP) team builds and operates the infrastructure, tooling, and developer experience that powers machine learning across the company. This role focuses on building robust foundations that allow ML teams to move quickly while maintaining reliability, governance, and cost efficiency. The engineer will design and build scalable systems that support model training, feature computation, real-time inference, and experimentation, working at the intersection of distributed systems, cloud infrastructure, and applied machine learning.
ServeEngineeringSan Francisco, CA4w ago5