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Block's Support ML Modeling team is a central driver of innovation in customer support experiences across our entire ecosystem—including Cash App, Square, and other business units. We are dedicated to advancing the state of intelligent, automated support through machine learning and generative AI. From customer-facing chatbots to smart internal tools for agents, our team builds high-impact, scalable systems that improve support quality, efficiency, and accessibility. We're building the future of support at Block: one powered by AI, voice interfaces, and smart automation.
Job Responsibility:
Lead R&D efforts to explore and prototype next-generation chatbot architectures using LLMs, retrieval-augmented generation (RAG), fine-tuning, and real-time inference
Design and deploy ML models powering conversational agents, including the support chatbot used across Cash App, Square, and other Block products
Build generative AI systems that scale intelligently across multiple business units, adapting to diverse products, users, and use cases
Advance voice support automation, enabling natural, responsive, and accurate voice-based interactions
Develop systems to infer customer intent, enabling effective routing, triaging, and resolution of cases with minimal human involvement
Create ML-powered tooling and real-time recommendation systems to assist support agents and enhance customer outcomes
Engineer robust, reusable modeling pipelines capable of high throughput, rapid iteration, and easy deployment
Collaborate cross-functionally with product, engineering, design, and operations teams to ship impactful ML features at scale
Requirements:
6+ years of experience in machine learning, applied AI, or product ML roles
Demonstrated experience with language models, dialog systems, or generative AI in production
Strong knowledge of NLP, deep learning, and ML infrastructure best practices
Experience with speech processing or voice interfaces is a strong plus
Proven ability to ship end-to-end ML features—framing problems, prototyping, training, evaluation, and deployment
Experience designing scalable model pipelines and maintaining production ML services
Excellent communication skills and a collaborative mindset
Enthusiasm for R&D and pushing the boundaries of what AI can do for support
Nice to have:
Experience with speech processing or voice interfaces