In addition to traditional data science responsibilities, you will collaborate with AI and engineering teams to:
Design and implement production-grade AI solutions leveraging LLMs, transformers, retrieval-augmented generation (RAG), agentic workflows, and generative AI agents.
Optimize prompt design, workflows, and pipelines for performance, accuracy, and cost-efficiency.
Build multi-step, stateful agentic systems that utilize external APIs/tools and support robust reasoning.
Deploy GenAI models and pipelines in production (API, batch, or streaming) with a focus on scalability and reliability.
Develop evaluation frameworks to monitor grounding, factuality, latency, and cost.
Implement safety and reliability measures such as prompt-injection protection, content moderation, loop prevention, and tool-call limits.
Work closely with Product, Engineering, and ML Ops to deliver robust, high-quality AI capabilities end-to-end.
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Develop and manage detailed project plans including milestones, risks, owners, and contingency plans.
Create and maintain efficient data pipelines using SQL, Spark, and cloud-based big data technologies within client architectures.
Collect, clean, and integrate large datasets from internal and external sources to support functional business requirements.
Build analytics tools that deliver insights across domains such as customer acquisition, operations, and performance metrics.
Perform exploratory data analysis, data mining, and statistical modeling to uncover insights and inform strategic decisions.
Train, validate, and tune predictive models using modern machine learning techniques and tools.
Document model results in a clear, client-ready format and support model deployment within client environments.