Fully Remote Position
Preferred Locations: Midwest based: Indianapolis, IN or IL, Chicagoland Area preferred
Who We Are:
K1x is the leading data distribution platform for alternative investments. Simply put, our mission is to digitize the K-1 ecosystem. Our AI-powered K-1 extraction technologies surpass all other competition and we’re the first to produce a digital K-1. Learn more at www.k1x.io
About the role:
We are seeking a highly skilled and experienced Machine Learning Engineer to join our dynamic team. The ideal candidate will have a strong background in natural language processing (NLP) and extensive experience working with unstructured and semi-structured data such as financial statements and tax documents. As a Machine Learning Engineer, you will play a critical role in developing and implementing machine learning models that enhance our software’s ability to accurately and efficiently process partnership accounting and tax documents.
If you are an experienced Machine Learning Engineer or Data Scientist looking for an exciting opportunity to work on challenging problems and deliver machine learning products, we would love to hear from you. Join our team and help shape the future of alternative investments management and distribution!
Requirements
Qualifications:
Preferred experience:
Benefits
K1x is the leading data distribution platform for alternative investments. Our AI-powered SaaS solution digitizes and distributes data seamlessly–connecting investors, advisors, tax software, portals, accounting firms, IRS and state taxing authorities–simplifying complex processes, accelerating filings, reducing costs, and delivering greater control, transparency, and accessibility.
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