Machine Learning Engineer
Philosophy
You are your own worst critic. You have a high bar for quality and don’t rest until the job is done right—no settling for 90%. We want someone who ships fast, with high agency, and who doesn't just voice problems but actively jumps in to fix them.
Experience
- 2+ years of experience with training, fine tuning, and evaluating ML models used in production systems
Language/Skills
- Exceptional at Python or similar
- Well versed with both traditional computer vision and VLMs
Approach
- A quantitative approach to building products
- Ability to debug, experiment, and iterate fast
- Comfortable getting hands-on with the full development lifecycle, from ideation to shipping to users
The Core Work Will Include
- Training and deploying new state of the art models for parsing and interpreting unstructured data
- Experimenting with novel techniques to improve LLM accuracy
- Building data pipelines, evaluating model performance, and integrating models into the product
- Working directly with the founders and customers to shape the product direction and engineering strategy
Bonus Points
- Prior experience founding a company or building products at early stages
- Ambitious and driven, and care a lot about doing great work with great people
- Keep up with the latest developments in ML/AI
About Reducto
Nearly 80% of enterprise data is in unstructured formats like PDFs. PDFs are the status quo for enterprise knowledge in nearly every industry. Insurance claims, financial statements, invoices, and health records are all stored in a structure that’s simply impractical for use in digital workflows. This isn’t an inconvenience—it’s a critical bottleneck that leads to dozens of wasted hours every week. Traditional approaches fail at reliably extracting information in complex PDFs. OCR and even more sophisticated ML approaches work for simple text documents but are unreliable for anything more complex. Text from different columns are jumbled together, figures are ignored, and tables are a nightmare to get right. Overcoming this usually requires a large engineering effort dedicated to building specialized pipelines for every document type you work with. Reducto breaks document layouts into subsections and then contextually parses each depending on the type of content. This is made possible by a combination of vision models, LLMs, and a suite of heuristics we built over time. Put simply, we can help you: accurately extract text and tables even with nonstandard layouts, automatically convert graphs to tabular data and summarize images in documents, extract important fields from complex forms with simple, natural language instructions, build powerful retrieval pipelines using Reducto’s document metadata, intelligently chunk information using the document’s layout data.
Benefits at Reducto
- Unlimited PTO: We believe great work requires recharging.
- Lunch: Receive a free lunch to eat with your teammates daily at the office
- Reimbursed Transportation: Provide us with your receipts and we’ll take care of the costs
- Health Insurance: Generous health insurance covering medical, dental, and vision
- Health and Wellness Budget: We provide up to $150/mo reimbursement for health and wellness spending, such as gym memberships, fitness classes, or similar
- Parental Leave: Work with us to build a leave schedule that works for you and your family
About Reducto Reducto
We provide a comprehensive toolkit for working with documents the way a human would, combining custom in-house and leading frontier models to power efficient and accurate document workflows. We’ve grown rapidly, increasing revenue 8x year over year and partnering with hundreds of companies, from leading AI teams like Harvey, Vanta, and Scale, to enterprise customers across FAANG and top trading firms. Reducto has raised over $100M from world-class investors including a16z, Benchmark, and First Round Capital.