Forward Deployed Product Manager Lead
This is a Senior Forward Deployed Product Manager role focused on AI solutions, requiring a remote US-based candidate. The PM owns the end-to-end product lifecycle, translating complex client challenges into scalable AI solutions and defining product vision. This role requires deep client engagement (80%) and involves leading technical discovery, solution design, and influencing C-suite stakeholders.
Seniority
Product Area
ai/ml
Work Style
Remote
Location
US
Type
Full_time
Role type
Skills
Required
- AI/ML technologies
- enterprise settings
- consulting or professional services environments
- agile methodologies
- product development frameworks
Full job description
About Tribe AI
See all roles →Tribe AI is an AI delivery firm that takes Fortune 1000 companies from idea to shipped AI product, drawing on a curated network of machine-learning practitioners rather than traditional consultants. Customers include Cleveland Clinic, Two Sigma, Koch Industries, Vista Equity, AAA, and Recursion, with engagements often tied to CEO- or board-level bets worth $100M+ in enterprise value. Founded in 2019 by Jaclyn Rice Nelson and Noah Gale, the company bootstrapped for six years before raising a $3.25M seed in 2024 led by Bryce Roberts at Indie. Core team is roughly 50-100 with a much larger expert network; offices in NY and SF and remote-friendly in the US, with equity for all core hires.
Similar Roles
Sr. Product Manager - AI Applications
This is a Senior Product Manager role focused on AI applications, working remotely within the United States. The PM will own the product roadmap for agentic and AI-driven internal tools, specifically supporting Marketing, Pricing, Merchandising, and Product Management. The role requires deep technical expertise in AI workflow management, LLM-based development, and includes an anticipated pay scale of $205k–$235k per year.
Senior Product Manager, Modeling & Machine Learning Operations
This is a Senior Product Manager role focused on Machine Learning Operations and AI, offered remotely within the United States. The PM will own the development of ML Ops processes, a Model Workbench platform, and retail-specific machine learning models. The role requires technical depth, integrating traditional ML with generative models, and has a stated compensation range of $150k–$190k per year.
Senior Product Manager, ML Signals
This is a Senior Product Manager role focused on Machine Learning Signals, offered remotely to US-based candidates. The PM will define the roadmap and drive adoption of foundational content understanding signals across all modalities, including text, image, and video. Key responsibilities include leading signal strategy, managing platform adoption for Feed, Ads, and Search, and establishing data labeling workflows using LLMs. The base salary range is $190,800–$267,100 per year.
Senior Technical Product Manager, Token Factory
This is a Senior Technical Product Manager role focused on AI inference and cloud infrastructure, offering remote work in the UK or hybrid in Amsterdam. The PM will own the product roadmap and developer experience for the Token Factory, specifically focusing on Dedicated Endpoints for AI Models Inference. The role requires deep technical ownership, managing complex workloads, and driving product-market fit within the AI cloud platform.
Sr. Product Manager - AI & Data Services
This is a remote, US-based Senior Product Manager role focused on AI and Data Services. The PM will own the development of AI-powered capabilities, including building agents and evolving the public API and first-party connectors. This technical role requires hands-on experience building prototypes using LLMs and RAG architectures, with a stated salary range of $122k–$204k per year.
Senior Technical Product Manager - AI Platform, Remote
This is a Senior Technical Product Manager role focused on AI Platform and healthcare, available remotely within the United States. The PM will own the full lifecycle of the AI Platform, including ML/LLM workstreams from data ingestion and training to production-grade inference pipelines. This role requires deep technical expertise in MLOps, generative AI, and scaling AI infrastructure.
