Machine Learning Engineer
Poesis · San Jose, US
Job description
About Poesis
Whoever builds the leading intelligence for finance will create far more than returns. Poesis is the AI-native investment firm running autonomous agents that predict markets, construct portfolios, and manage risk. Our founders managed institutional capital at Capital Group ($3T AUM) and led enterprise ML at Goldman Sachs and Amazon. We're building a new type of firm, where live capital is the training ground for an intelligence that compounds with every signal.
About the Role
At Poesis, machine learning and artificial intelligence open the door to improved alpha discovery, higher quality decision-making and intelligent risk management. We're looking for an exceptional Machine Learning Engineer to help build the systems that make this possible. In this role, you'll develop models, signals and evaluation frameworks that power investment decision-making across the platform. You'll work across the full machine learning lifecycle, from experimentation and model and agent development to deployment and iteration, with significant ownership over both research and production outcomes.
Responsibilities
- Rapidly implement and iterate on machine learning models, signals and research ideas
- Design and run experiments to evaluate and improve model and agent performance and investment impact
- Build reproducible workflows for feature generation, training, validation and evaluation
- Work with large-scale financial, fundamental and alternative datasets to identify predictive signals and improve model performance
Required Competencies
- 5+ years experience as a Machine Learning Engineer, or related role
- Prior experience at a frontier AI lab, agentic startup, leading hedge fund, big tech company, or similar
- Strong Python and SQL skills, with experience working with large-scale datasets
- Experience developing, evaluating and deploying machine learning models in production environments
- Success building reproducible research workflows and experimentation frameworks
- Familiarity with modern AI systems, including LLMs, evaluation frameworks, and agent workflows
- Skill leveraging Claude Code, Codex, or other coding agents
- BS/MS/PhD in Computer Science or a related field, or equivalent practical experience
Preferred Competencies
- Experience developing ML and AI systems using financial, fundamental, alternative, or time-series datasets
- Familiarity with quantitative investing, portfolio construction, or risk management
- Experience with PyTorch or TensorFlow, and AI workflows for parsing financial documents (filings, transcripts)
Location
Hybrid: 3 days per week on-site at our office in Menlo Park, CA. Relocation allowance available.
Benefits
We offer excellent medical, dental, and vision coverage, alongside a strong benefits package that includes catered lunches in our Menlo Park office, commuter benefits, and more.
Current legal authorization to work in the US required; continuing work visa sponsorship available for full-time employees.
Working at Poesis
As an early team member, you’ll help shape not just the product, but how the company operates. Your decisions will have lasting impact across the business. You’ll build from first principles, with no legacy systems, or entrenched processes slowing you down. Our team is made up of people from elite companies and universities who are low ego, collaborative, and excited to build together.
Compensation Range: $200K - $280K
ML/AI Work links you to the employer's original posting — always verify the details there before applying.
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