Machine Learning Engineer
Shepherdinsurance
What We Do Shepherd is an AI-native commercial insurance platform transforming how high-hazard industries get covered. Our mission is to make risk frictionless for the builders and operators shaping the physical world — protecting progress from concept through construction and into decades of operation. The infrastructure behind the AI boom — data centers, semiconductor fabs, renewable energy assets — has to be built and insured. But traditional carriers weren't built for this speed: Complex commercial construction projects routinely wait weeks for a single quote Legacy carriers rely on static applications and disconnected systems Brokers chase carriers through calls, emails, and resubmissions We built Shepherd to solve that. Our AI performs the same underwriting workflows in seconds, and integrates real-time data from construction technology partners — Procore, Autodesk, OpenSpace, DroneDeploy, and others — to see risk as it actually exists, not just as it was reported on a static form. We're pursuing the most ambitious technical vision in commercial insurance: fully autonomous underwriting. We're closing in on the first fully agentic submission in the industry — email in, price out, no human intervention until the last mile. With Shepherd, safety, speed, and quality no longer trade off against one another — they compound. We're building: Faster decisions Smarter, more accurate pricing Better risk outcomes for insureds who invest in safer practices We're not just modernizing insurance products. We're building the risk infrastructure for the next generation of financial services. Our Investors In March 2026, Shepherd raised a $42M Series B — bringing total funding to over $60M — led by Intact Private Capital, the investment arm of one of the largest insurers in the world. Intact is not only our lead investor but also a carrier partner, a testament to the confidence the incumbent industry has in what we're building. Our investors: Intact Private Capital Spark Capital Costanoa Ventures Y Combinator Susa Ventures And several others Our Team We're a team of technologists and insurance enthusiasts, bridging the two worlds together. Check out our About page to learn more. The Mission: Fully Autonomous Underwriting We think about underwriting autonomy the same way Waymo thinks about self-driving cars. Not as a binary switch, but as a graduated progression through defined capability levels. Today, Shepherd sits at the border of L1 for our first Operational Design Domain. You will build the ML systems that carry us from L1 to L3 and beyond. Every model you ship, every feedback loop you close, and every confidence threshold you calibrate is one more autonomous mile driven. The Role You will be Shepherd’s first Machine Learning Engineer, embedded in the Fully Autonomous Underwriting (FAU) team. This is a high-ownership, high-ambiguity role. There is no existing ML platform to inherit, no established model registry to maintain. You will build those things. You have the opportunity to define the ML function from the ground up at a company building something genuinely new in a large, underserved market. You will work directly with underwriters to deeply understand the domain, and translate that understanding into ML systems that get meaningfully better over time. You will own the full ML lifecycle – from data through to production – and be the connective tissue between the domain expertise that exists in the business and the systems we’re building to scale it. This is an end-to-end ML role. You will own the full lifecycle from raw data through to production systems, and work closely with underwriters, engineers, and product to advance FAU through its autonomy levels. Design, build, and ship ML systems that power autonomous underwriting decisions in production Build and close the feedback loops that turn human underwriter behavior into training signal and compounding model improvement Develop confidence scoring and evaluation frameworks that define when the system is ready to take on more autonomy and when to step back Work with large language models to build reliable, auditable, and improvable agentic workflows across the underwriting lifecycle Partner directly with underwriters to extract domain knowledge, validate outputs, and earn the trust required to expand the system’s operating domain Contribute to the observability, monitoring, and guardrail infrastructure that keeps AI underwriting safe as autonomy scales Who You Are Required 4+ years of industry experience building and shipping ML systems end-to-end, from raw data to production models 4+ years of industry experience building and shipping ML systems end-to-end, from raw data to production models, including experience with model deployment platforms (e.g., AWS Sagemaker) Experience finetuning SLMs/LLMs, with a preference for experience using techniques like RLHF, DPO, or LoRA. Deep proficiency in Python and modern ML frameworks (PyTorch, HuggingFace, Tensorflow, OpenAI Gym/Gymnasium or similar) Experience with LLMs in production: prompt engineering, structured outputs, tool use, evaluation, and cost/latency tradeoffs Experience building reliable models with limited labeled data, including synthetic data generation, data augmentation, or similar techniques Strong evaluation instincts: you know how to define what ‘better’ means before you build, not after Comfort with ambiguity, highly autonomous, and a bias toward building something real over architecting something perfect Excellent collaboration skills. You will spend significant time with non-technical underwriters and need to earn their trust Nice to Have Familiarity with document parsing, information extraction, or NLP on unstructured business documents Background in insurance, finance, or other high-stakes structured domains where model errors have real consequences Experience with agentic frameworks or multi-step LLM orchestration (LangChain, LangGraph, or custom) Confidence calibration experience: isotonic regression, Platt scaling, or similar techniques TypeScript proficiency. Our platform is TypeScript-heavy and cross-functional contribution is valued Familiarity with data pipelines: SQL, dbt, Spark, or equivalent MS or PhD in a quantitative field (ML/AI, Statistics, Math, Physics) Benefits Premium Healthcare 100% contribution to top-tier health, dental, and vision Fertility benefits and family building support ️ Unlimited PTO Flexibility to take the time off, recharge, and perform Daily lunches, dinners, and snacks We work together, and enjoy meals together too ️ SF, NYC, Dallas-Fort Worth, Chicago and LA Offices Professional Development Access to premium coaching, including leadership development Competitive 401(k) Plan Dog-friendly office Plenty of dogs to play with and make friends with in the SF office #J-18808-Ljbffr Shepherdinsurance
- ...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....SuggestedVisa sponsorship
- ...Title: Machine Learning Engineer Job Type: Contract Contract Length: 6 months Target Start Date: ASAP Work Location/Structure: Remote About the Opportunity Our client, a leader in Social Media and Content Platforms, is looking for a skilled Machine...SuggestedContract workImmediate startRemote work
- ...Remote (or Hybrid in Houston TX) | Full-time | Startup Environment The Machine Learning Engineer partners with the Solutions Architect to bring Geminus AI solutions to life. The ML engineer focuses on developing, optimizing, and deploying ML models and numerical optimizers...SuggestedFull timeWork at officeRemote work
$200k - $265k
...potential AI has to shape human creativity and social interactions, join us in building the future! About the Role As a Senior Machine Learning Engineer on the AI Image Generation (Imagine) team, you’ll design, implement, fine‑tune, improve and debug the image AI models that...SuggestedWork at office$200k - $300k
...based on your skills and experience — talk with your recruiter to learn more. Base pay range $200,000.00/yr - $300,000.00/yr Direct message the job poster from Willing Tech Machine Learning Engineer – Scientific Visualisation Platform Location: Remote (US/...SuggestedFull timeRemote work- ...generation information extraction product powered by state-of-the-art AI and Deep Learning techniques. Work with an international top-notch engineering team with full commitment on Machine Learning development. Required Candidate Profile Skills Required:...H1bImmediate start
- ...Machine Learning Engineer At Krea, we are building next-generation AI creative tools. We are dedicated to making AI intuitive and controllable for creatives. Our mission is to build tools that empower human creativity, not replace it. We believe AI is a new medium...
- ...valued at $10 billion. We work in-person five days a week in our San Francisco, NYC, or London offices. About the Role As a Machine Learning Engineer on the Marketplace team, you will build the models and decision systems that power Mercor’s hiring engine. This includes...Work at officeRelocation package
$175k - $215k
...Machine Learning Engineer, Perception Waymo is an autonomous driving technology company with the mission to be the world's most trusted driver. Since its start as the Google Self-Driving Car Project in 2009, Waymo has focused on building the Waymo Driver—The World's...Full timeTemporary workRemote work- ...Machine Learning Engineer Title of Role: Machine Learning Engineer Location: San Francisco, CA, onsite Company Stage of Funding: Series C - Software Development Office Type: Onsite Salary: [To be confirmed with final candidates] Company Description...InternshipWork at officeVisa sponsorship
- ...Machine Learning Engineer We are looking for a Machine Learning Engineer to join the growing AI and Machine Learning team at Strava. This team is responsible for sophisticated machine learning models and systems which provide value to Strava athletes including personalization...Work at officeWorldwideFlexible hours3 days per week
$150k - $220k
...Founding Machine Learning Engineer San Francisco Compensation ~ Estimated base salary $150K – $220K • Offers Equity • Offers Bonus We invest in our team's success with comprehensive benefits Generous Compensation Above-market salary and equity package...H1bWork at officeVisa sponsorshipSleeping nights$160k - $220k
...About the Role Together AI is looking for an ML Engineer who will develop systems and APIs that enable our customers to perform inference and fine tune LLMs. Relevant experience includes implementing runtime systems that perform inference at scale using AI/ML models...Full time- ...NLP Machine Learning Engineer Work on a dataset with millions of customer searches, labeled fashion products, and years of transaction and clickstream data. Work with Client's numerous in-house systems experts for data manipulation, model construction, training, and...
$155.52k - $194.4k
...said, every hiring decision is made by real Twilions! . See yourself at Twilio Join the team as Twilio's next Machine Learning Engineer. About the job This position is neededto drive innovation and the development of cutting-edge products that serve...Local areaRemote workWorldwide- ...You'll collaborate with construction veterans and world-class engineers to solve physical-world problems that simulations can't... ...alongside a talented team-we'd love to have you join us. Machine Learning Engineer: Perception Bedrock is bringing autonomy to the...Work at officeFlexible hours
- ...raised over $100M from world-class investors including a16z, Benchmark, and First Round Capital. The Opportunity As an ML Eval Engineer, you'll play a key role in building the evaluation systems and benchmarks that make Reducto's models better over time. You'll...Work at officeLocal area
- ...Company Overview We're a team of engineers, neuroscientists, and designers solving the most... ...of autonomy and demand intense, fast-paced learning. Responsibilities Critically evaluate and implement the best machine learning approaches for our unique design problems...
- ...across our platform, including code generation, reinforcement learning, layout optimization etc. You'll lead a growing ML team and work... ...to turn cutting-edge research into usable tools for chip engineers. You should bring deep expertise in ML for chip design, as well...
- ...Machine Learning Engineer We're assisting a well-funded startup with their search for Machine Learning Engineers. Their product helps AI teams turn complex documents into LLM-ready inputs with exceptional accuracy. This role will work onsite in the SF office. What...Work at office
- ...The Role You will be Shepherd's first Machine Learning Engineer, embedded in the Fully Autonomous Underwriting (FAU) team. This is a high-ownership, high-ambiguity role. There is no existing ML platform to inherit, no established model registry to maintain. You will...
$147.6k - $274k
...Job Description: Machine Learning Engineer - Infra San Francisco, CA The Opportunity We are revolutionizing drug discovery with cutting-edge machine learning techniques. We are seeking a highly motivated and skilled ML Engineer to join our growing team...Relocation package$168k - $198k
...Machine Learning Engineer San Francisco, California, United States Checkr is building the data platform to power safe and fair decisions. Over 140,000 companies and millions of people rely on Checkr for AI verification in the moments that matter most: getting a new...Work at officeLocal areaRemote workRelocationFlexible hours3 days per week$163k - $245k
...innovation and creating the best experience for job seekers. (*Comscore, Total Visits, March 2025) Day to Day As a Machine Learning Engineer III, you will be a team lead. You will own one of the team's major workstreams, help drive technical direction for the team...Work experience placementLocal area$120k - $180k
...Machine Learning Role In order to execute our vision, we need to grow our team of best-in-class machine learning engineers. We are looking for developers who are excited about staying at the forefront of deep learning technology, prototyping state-of-the-art neural...- ...Working on users’ experience with the platform through features like learn from feedback, search personalization, SME suggestion, etc.... ...the direction of the product and contribute to the AI/ML engineering strategy You’ll be successful if you… Have 3+ years of AI/ML...
$200k - $300k
...Machine Learning Engineer - On-Device Speech Recognition $200,000 - $300,000 San Francisco, hybrid (3x per week) Full time / Permanent This company builds AI-powered tools that help professionals capture and use what's said in the real world of work -...Permanent employmentFull time$200k - $300k
...Machine Learning Engineer, Enterprise Brain Mountain View, CA Glean is the Work AI platform that helps everyone work smarter with AI. What began as the industry's most advanced enterprise search has evolved into a full-scale Work AI ecosystem, powering intelligent...Work at officeHome officeFlexible hours- ...tools consistently fail. We are a small, fast-growing team of engineers in San Francisco powering Fortune 100 enterprises, YC startups... ...models Build evaluation, data curation, and active learning pipelines Optimize inference, batching, and quantization on...Visa sponsorshipRelocation package
$130k - $200k
...Machine Learning Engineer Location: San Francisco, CA Salary Range: $130,000 - $200,000 About Us: Join our innovative AI company in San Francisco, where we're redefining how knowledge is accessed and understood. We're looking for a passionate Machine...Work at office
Do you want to receive more vacancies?
Subscribe and receive similar vacancies to Machine Learning Engineer. Be the first to apply!
- entry level machine learning engineer San Francisco, CA
- senior ml engineer San Francisco, CA
- data scientist machine learning engineer San Francisco, CA
- machine learning ai engineer San Francisco, CA
- junior machine learning research engineer San Francisco, CA
- computer vision machine learning engineer San Francisco, CA
- graduate machine learning engineer San Francisco, CA
- machine learning software engineer San Francisco, CA
- ai ml engineer San Francisco, CA
- machine learning engineer San Francisco, CA


