Founding Machine Learning Engineer (MLE) - Agent Development & Time-Series Modeling

Stealth Startup San Francisco Bay Area
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AI Summary

Design, train, and deploy production ML systems combining LLM-powered agents with time-series foundation models. Build and scale autonomous agents with multi-step reasoning, tool integration, and memory management. Partner with researchers and customers to validate solutions and drive rapid iteration.

Key Highlights
Foundational role in building production-grade ML systems
Expertise in LLM-powered agents and time-series modeling
End-to-end ownership from prototype to production
Fast-paced startup environment with ambiguity
Visa sponsorship available (H1-B, O1)
Key Responsibilities
Design, train, and deploy production ML systems combining LLM-powered agents with time-series foundation models
Build and scale LLM-powered agents with advanced capabilities including multi-step reasoning, tool integration, autonomous workflows, memory/context management, and adaptive strategies
Develop and refine evaluation frameworks for agents ensuring reliability, safety, and measurable performance
Apply and extend time-series modeling techniques (forecasting, anomaly detection, multimodal fusion) in real-world customer scenarios
Operate end-to-end from data ingestion and preprocessing to deployment, monitoring, and continuous improvement
Stay ahead of the curve on latest innovations in AI agents, orchestration frameworks, and infrastructure
Partner directly with researchers, engineers, and lighthouse customers to validate solutions and drive rapid iteration
Technical Skills Required
LLM-powered agents multi-step reasoning tool integration autonomous workflows memory/context management adaptive strategies time-series modeling forecasting anomaly detection multimodal fusion MCP A2A ML engineering best practices reproducibility monitoring scaling CI/CD observability
Benefits & Perks
H1-B visa sponsorship
O1 visa sponsorship
Nice to Have
Experience training custom neural networks beyond pre-trained LLMs (e.g., transformers for time-series or multimodal data)
Background in time-series modeling (forecasting, anomaly detection, classical + deep learning approaches)
Published research or open-source contributions in ML/AI

Job Description


We're hiring our Founding Machine Learning Engineer (MLE) with expertise in Agent Development and Time-Series Modeling. You'll play a foundational role in building production-grade systems that combine the power of LLM-powered agents with time-series foundation models.

The Role

This is not a narrow research role — you'll design, train, deploy, and monitor ML systems end-to-end, moving from prototype to production with speed and autonomy. You'll also be a core contributor to defining how agents interact with multimodal numerical data, a problem space where the playbook does not yet exist.

Job Description:

  • Design, train, and deploy production ML systems (LLM-powered agents + time-series models)
  • Build and scale LLM-powered agents with advanced capabilities: multi-step reasoning, tool integration, autonomous workflows, memory/context management, and adaptive strategies
  • Develop and refine evaluation frameworks for agents, ensuring reliability, safety, and measurable performance
  • Apply and extend time-series modeling techniques (forecasting, anomaly detection, multimodal fusion) in real-world customer scenarios
  • Operate end-to-end: from data ingestion and preprocessing to deployment, monitoring, and continuous improvement
  • Stay ahead of the curve on the latest innovations in AI agents, orchestration frameworks, and infrastructure (MCP, A2A, etc.)
  • Partner directly with researchers, engineers, and lighthouse customers to validate solutions and drive rapid iteration

What we're looking for:

  • Proven industry experience (4-10 years) as an ML Engineer, Research Engineer, or Applied Scientist, with a track record of shipping production ML systems
  • Hands-on expertise in LLM-powered agents: multi-step reasoning, tool use, context windows, autonomous workflows, agent memory
  • Deep understanding of agent evaluation techniques (reliability, safety, success metrics)
  • Up-to-date with modern agent infrastructure and frameworks (MCP, A2A, etc.)
  • Fluency with ML engineering best practices: reproducibility, monitoring, scaling, CI/CD, observability
  • Comfort operating in a fast-paced startup: shipping quickly, making tradeoffs, and thriving in ambiguity

Nice to have:

  • Experience training custom neural networks beyond pre-trained LLMs (e.g., transformers for time-series or multimodal data)
  • A background in time-series modeling (forecasting, anomaly detection, classical + deep learning approaches)
  • Published research or open-source contributions in ML/AI

Location & Sponsorship

  • Location: San Francisco Bay Area, CA (in-person)
  • Visa Sponsorship: H1-B, O1


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