Principal Engineer -in Bayesian, Large Foundational Systems, and Distributional Reinforcement Learning

Airbnb Airbnb · Consumer · United States · Software Engineering

Lead advanced research and development of cutting-edge AI models integrating Bayesian frameworks with advanced architectures, including Mixture of Models, multi-pass sharded systems, multitask and multi-objective optimization, and external knowledge incorporation. Innovate ways to interoperate and integrate LLMs and LMMs with Reasoning, Planning, and Decisioning abilities into Bayesian frameworks to create a seamless foundational model fabric. Ensure these models perform efficiently at scale and integrate into live systems impacting product and user experience. The role aims to transform Airbnb's AI stack into probabilistic, adaptive, uncertainty-aware intelligence systems capable of reasoning under ambiguity and continuously learning.

What you'd actually do

  1. Lead groundbreaking applied research in Bayesian systems, distributional reinforcement learning, and multi-modal architectures to drive novel advances in AI and Foundational Intelligence (Ranking, Recommendations, Personalization) to fill out gaps in the Long Tail Curve of Discovery in order to grow the Business Offerings on both Guest and Host Long Tail Ends
  2. Define and drive the architecture of large-scale Bayesian Framework-based AI systems at Airbnb.
  3. Develop multi-pass sharded Bayesian + Discriminative/Generative single to multi agent systems for scale and efficiency.
  4. Incorporate Mixture of Models and Agents, multitask learning, multi-objective optimization, and external knowledge systems into model designs.
  5. Innovate methods to interoperate with LLMs, LRMs, LMMs, and transformer-based architectures, ensuring seamless integration and collaboration within the AI ecosystem using AI Multi-Agentic Frameworks.

Skills

Required

  • Deep expertise in Bayesian Learning
  • Deep expertise in Distributional Reinforcement Learning
  • Experience with LLMs and LMMs
  • Experience with Reasoning, Planning, and Decisioning abilities
  • Experience with Mixture of Models
  • Experience with multi-pass sharded systems
  • Experience with multitask and multi-objective optimization
  • Experience with external knowledge incorporation
  • Experience building production-level systems
  • Experience with large-scale AI/ML systems
  • Experience with AI Multi-Agentic Frameworks
  • Experience with Bayesian or Markovian Graph chains
  • Experience with uncertainty estimation
  • Experience with adaptive decision-making
  • Experience with probabilistic reasoning

Nice to have

  • Experience with foundational Bayesian frameworks
  • Experience with advanced architectures
  • Experience with transformer-based architectures
  • Experience with Ranking
  • Experience with Recommendations
  • Experience with Personalization
  • Experience with Long Tail Curve of Discovery

What the JD emphasized

  • Bayesian Learning
  • Distributional Reinforcement Learning
  • LLMs
  • LMMs
  • Reasoning
  • Planning
  • Decisioning
  • Bayesian Framework-based AI systems
  • multi-agent systems
  • Mixture of Models and Agents
  • multitask learning
  • multi-objective optimization
  • external knowledge systems
  • transformer-based architectures
  • AI Multi-Agentic Frameworks
  • probabilistic, adaptive, uncertainty-aware intelligence systems
  • reasoning under ambiguity
  • continuously learning from dynamic environments
  • personalization quality
  • ranking robustness
  • uncertainty estimation
  • exploration strategies
  • adaptive decision-making
  • probabilistic and policy-driven intelligence
  • sparse data
  • cold-start problems
  • long-tail discovery
  • evolving preferences
  • uncertain marketplace dynamics
  • adaptive learning ecosystem
  • foundational models
  • reinforcement learning systems
  • probabilistic reasoning frameworks
  • multi-agent intelligence
  • Bayesian intelligence fabrics
  • reinforcement-driven optimization systems
  • uncertainty-aware decisioning architectures
  • long-horizon optimization
  • adaptive probabilistic intelligence
  • continuously learning AI ecosystems
  • foundational intelligence substrate
  • unified adaptive architecture
  • intelligent probabilistic ecosystem
  • reasoning under uncertainty
  • adapting policies dynamically
  • learning from sparse and evolving signals
  • coordinating long-horizon optimization
  • adaptive intelligence platforms
  • Bayesian systems
  • distributional reinforcement learning
  • multi-modal architectures
  • Foundational Intelligence
  • Ranking
  • Recommendations
  • Personalization
  • Long Tail Curve of Discovery
  • Business Offerings
  • Guest and Host Long Tail Ends
  • theoretical AI/ML advancements
  • real-world production systems
  • effectively applied and scaled
  • practical needs
  • architecture of large-scale Bayesian Framework-based AI systems
  • multi-pass sharded Bayesian + Discriminative/Generative single to multi agent systems
  • scale and efficiency
  • Mixture of Models and Agents
  • multitask learning
  • multi-objective optimization
  • external knowledge systems
  • interoperate with LLMs, LRMs, LMMs, and transformer-based architectures
  • seamless integration and collaboration
  • AI ecosystem
  • AI Multi-Agentic Frameworks
  • Bayesian or Markovian Graph chains
  • uncertainty estimation
  • adaptive decision-making
  • probabilistic

Other signals

  • Bayesian Learning
  • Distributional Reinforcement Learning
  • LLM/LMM integration
  • production-level systems
  • personalization
  • decision-making