AI Engineer

Job not on LinkedIn

September 13

Apply Now
Logo of Underdog Fantasy

Underdog Fantasy

Gaming • Sports • B2C

Underdog Fantasy is a company specializing in fantasy sports and sports betting. Despite the technical issue mentioned in the text, it provides a platform where users can engage in fantasy sports contests, draft teams, and potentially win prizes based on the performance of real-world athletes. The company's focus is on providing a fun and competitive experience for sports fans who want to test their skills and luck in fantasy leagues and sports-related betting.

📋 Description

• Rapidly prototype, validate, and deploy production-ready AI solutions that drive measurable ROI. • Partner cross-functionally to shape GenAI, agentic frameworks, and LLM-driven tooling strategy and execution. • Own integration and scaling of in-house and third-party AI with unified, secure architectures. • Serve as technical partner and evangelist to accelerate time-to-value, close bandwidth gaps, and upskill teams. • Ensure AI-first adoption and enable scalable workflows across the company.

🎯 Requirements

• Experience architecting, prototyping, and shipping end-to-end AI-powered solutions including agents, automations, copilots, and AI workflows for business and product use cases • Experience evaluating, selecting, and integrating best-of-breed AI products—balance in-house development with secure, compliant adoption of third-party solutions • Being hands on, leading technical initiatives, evangelizing best practices in prompt engineering, edge deployment, MLOps, and continuous improvement of our AI platform. • Experience researching, prototyping, and implementing the latest advances in generative AI, including prompt orchestration, vector DBs, RAG, and agentic workflows. • Experience with MCP servers and client interactions, message schemas, and ensuring context can be shared between AI models and external systems. • Experience with model lifecycle management, prompt engineering, serving, and optimizing deep learning or generative AI systems. • Experience working with cross functional collaboration with Security and IT to identify high-leverage AI data integrations, interfaces, and features, advocate for their enablement, and work to securely deploy them for safe adoption • Hands-on experience with OpenAI, Anthropic, Mistral APIs; RAG pipelines using LangChain, LlamaIndex, DSPy • Experience integrating modern LLMs, agentic frameworks, and generative AI models into Underdog’s tech stack—drive platform enhancements, orchestration, and security • Experience designing, shipping, and scaling prototypes or production-ready AI applications (internal workflow agents, copilots, automation, customer-facing AI features) • Knowledge of data security, privacy, compliance issues and responsible AI deployment; familiarity with regulated industries a plus • Experience leading AI initiatives, automation adoption, or agentic workflow pilots at scale in a rapidly changing environment • Contributed to the open-source AI community.

🏖️ Benefits

• Unlimited PTO (we're extremely flexible with the exception of the first few weeks before & into the NFL season) • 16 weeks of fully paid parental leave • A $500 home office allowance • A connected virtual first culture with a highly engaged distributed workforce • 5% 401k match, FSA, company paid health, dental, vision plan options for employees and dependents

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