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Samaya AI

Machine Learning Engineer

Reposted 18 Days Ago
Easy Apply
In-Office
Mountain View, CA
190K-275K Annually
Mid level
Easy Apply
In-Office
Mountain View, CA
190K-275K Annually
Mid level
The ML Engineer will design scalable ML training systems, productionize research prototypes, and enhance a question-answering platform while bridging research and engineering.
The summary above was generated by AI
Role

As an ML Engineer at Samaya, you will drive core production machine learning initiatives. This year we are set up for rapid growth to tens of thousands of expert users who rely on Samaya daily. You will play a critical role in keeping our users at the cutting edge of knowledge work.

Instant QA: Our custom-built Question Answer system uses state-of-the-art in-house models and retrieval systems, seamlessly trained to work together to deliver instant expert intelligence. You will help extend this system to remain at the forefront of the field and invest in building a platform that continuously improves with new data.

Agents: You will develop expert-level agentic workflows to automate comprehensive knowledge work, and enable AI tools that work with experts to gain new insights.

In this role, you will act as a bridge between research, engineering, and product - ensuring ideas see the light of day.

Responsibilities
  • Design our ML inference/training systems to be scalable to thousands of users
  • Define how we build, maintain, and automate ML model training, evaluation and inference pipelines at scale
  • Productionize cutting-edge research prototypes for knowledge work at scale
  • Take ambiguous business/product problems and develop evaluations/models/techniques to improve our core system to tackle those
Experience

Required

  • Bachelors in Computer Science, Engineering or related qualification
  • 3+ years experience in industry applied ML
  • Proactive and eager to take ownership
  • Fast iteration based on user engagement

Preferred

  • Experience in LLM model training, inference and eval
  • Experience in serving ML models (not necessarily LLMs) to a significant number of users
Compensation

The cash compensation range for this role is $190,000 - $275,000.

Final offer amounts are determined by multiple factors, including experience and expertise, and may vary from the amounts listed above.

In addition to the base salary, we may consider equity as part of our total compensation package.

Benefits

Health: Access comprehensive health insurance, including medical, dental, vision, flexible spending account (FSA), and short-term disability.

WealthSupport for your long-term financial wellbeing with a 401(k) and pre-tax benefits (e.g. commuting).

RestEnjoy flexibility to rest and recharge as needed, with unlimited PTO (Paid Time Off).

Flexibility: Work flexibly with a hybrid setup - typically team members spend a minimum of three days in the office per week.

Travel: Grow and connect with a travel budget that encourages conference attendance, customer visits, and team gatherings.

Equipment: Create your ideal workspace with an office Equipment allowance to set up what works best for you.

Inclusive Hiring

Interview Accommodations: We are committed to ensuring an equitable selection process for everyone and welcome applicants from varied backgrounds to enrich our team. If you require accommodations or adjustments during our recruitment process, please inform us.

Equal Opportunity Employer: We do not discriminate on the basis of race, color, religion, sex (including pregnancy and gender identity), national origin, political affiliation, sexual orientation, marital status, disability, genetic information, age, membership in an employee organization, retaliation, parental status, military service, or other non-merit factor.

Visa Sponsorship: We do sponsor visas! However, we aren't able to successfully sponsor visas for every role and every candidate. If we make you an offer, we will make every reasonable effort to get you a visa, and we retain an immigration lawyer to help with this.

About Samaya

Samaya is building the first AI agents designed specifically for expert knowledge work in financial services - one of the world’s largest and most information-intensive industries.

In today’s financial world, professionals face overwhelming volumes of fast-moving, complex information. Traditional tools, and even general-purpose AI, lack the accuracy, depth, and reliability needed for critical decisions. We believe AI should go beyond helpful suggestions, it should act as a true expert collaborator.

Our mission is to supercharge financial research and decision-making by empowering professionals to build their own teams of expert AI agents. These agents combine exceptional speed and precision: answering deep questions instantly, automating complex workflows, and delivering structured, predictive insights. Samaya’s platform combines cutting-edge domain-specialized AI models, a world-class engineering and ML team, and a simple, intuitive interface designed for financial professionals.

We’re growing quickly, our user base has scaled from hundreds to 10,000+, with partnerships spanning top financial institutions around the world, including Morgan Stanley, a top 5 hedge fund, a top 5 asset management firm, and more.

We’re backed by $43.5M in Series A funding led by NEA, with investors including Eric Schmidt, Yann LeCun, Jeff Dean, Marty Chavez, and Mark Cuban.

If you’re excited about building expert AI that transforms how knowledge work is done, and want to be part of a fast-moving, supportive, and ambitious team - we’d love to hear from you.

Our Operating Principles
  • Put Users first. Our users rely on us to do their jobs. We exist because our users trust us to help them achieve their goals. In return for this trust users place in us, we keep their needs as our top priority.
  • Win as a collective. We are high achievers with a drive to succeed. We build strong bonds over this shared drive. We dive in to help when one of us needs it. We’re kind to each other and boost each other to succeed and grow professionally and personally. We build trust with each other by making commitments and consistently delivering on them. This trust means we genuinely support each other, embracing feedback as a tool for growth and improvement. We win by operating this way, as one team.
  • Focus and iterate quickly. Bias for action makes us build and learn quickly. Iterating fast requires clarity on what outcomes we are targeting and why. Prioritizing the important things, taking full ownership and initiative, making fast initial progress, and rapid iterations lead to the best outcomes.
  • Innovate Relentlessly. We pursue novel insights, challenging the status quo and reimagining how things are done. We aren’t attached to the past when improving our product and how we work in the future. We actively invest time in innovation, thinking “outside the box” to consistently raise our standards.
  • Prioritize Outcomes over Egos. We are committed not to a person, an idea, or an opinion but to continuously making progress to our goals. Sometimes, our goals are ambiguous; in those moments, we iterate, learn, and move on to the next inquiry. We ask the tough questions with kindness, dropping our egos in our pursuit of evidence. For our business goals, we learn from our users. For our scientific goals, our understanding is built through rigorous experimentation, research, and observation. For our personal goals, we embrace candid feedback and collaborative learning to guide our progress.

Top Skills

Evaluation Pipelines
Inference Systems
Llm
Machine Learning
Ml Models

Samaya AI Mountain View, California, USA Office

Mountain View, California , United States, 94040

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