Senior Data Scientist / Applied AI Engineer
Hybrid (3 days onsite per week)
120-177K base salary + bonus
We’re partnering with a major enterprise organization undergoing significant investment in AI and data capabilities. This role sits within a central AI function focused on building production-grade machine learning and generative AI solutions that improve customer experience, operational efficiency, and decision intelligence across the business.
You’ll work on real, deployed AI systems - collaborating closely with product, engineering, and business stakeholders to design, build, and scale intelligent applications.
What You’ll Be Doing
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Deliver AI and machine learning solutions that solve real operational and customer-facing challenges
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Contribute across the full model lifecycle — from data exploration and feature engineering through to deployment, monitoring, and iteration
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Build and productionize ML and GenAI solutions using modern cloud and data platforms
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Design and evaluate intelligent automation solutions using LLMs, retrieval systems, and agent-style architectures
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Implement and optimize RAG pipelines, including embeddings, vector search, retrieval tuning, and prompt orchestration
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Expose AI capabilities through APIs, internal tools, and workflow applications used by business teams
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Build rapid prototypes and lightweight interfaces to support validation and adoption
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Follow best practices around model governance, testing, monitoring, and CI/CD in collaboration with platform and MLOps teams
What We’re Looking For
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Advanced degree in Computer Science, Engineering, Mathematics, Statistics, or similar quantitative field
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7+ years applying data science, machine learning, or applied AI in production environments
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Strong Python and SQL skills
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Solid understanding of software engineering fundamentals (version control, testing, logging, deployment workflows)
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Experience working with modern cloud and data platforms (e.g. AWS-based ML tooling, enterprise data warehouses, distributed compute platforms)
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Practical exposure to LLMs, RAG architectures, or agent-based systems
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Strong grounding in core ML concepts including feature engineering, model evaluation, and classical ML approaches (e.g. tree-based models, supervised/unsupervised learning)
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Ability to communicate technical work clearly to non-technical stakeholders and influence decision making
If you're interested, please apply now!