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ML Features Solutions Engineer

Sambanovasystems · Austin, Texas, United States; San Jose, California, United States · Posted Jul 8, 2026

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The era of pervasive AI has arrived. In this era, organizations will use generative AI to unlock hidden value in their data, accelerate processes, reduce costs, drive efficiency and innovation to fundamentally transform their businesses and operations at scale.

SambaNova Suite™ is the first full-stack, generative AI platform, from chip to model, optimized for enterprise and government organizations. Powered by the intelligent SN40L chip, the SambaNova Suite is a fully integrated platform, delivered on-premises or in the cloud, combined with state-of-the-art open-source models that can be easily and securely fine-tuned using customer data for greater accuracy. Once adapted with customer data, customers retain model ownership in perpetuity, so they can turn generative AI into one of their most valuable assets.

About the Role

We are seeking an ML Features Solutions Engineer to join our Product and Solution Engineering team, driving the development and optimization of core ML features for enterprise deployment. This role combines deep ML expertise with hands-on engineering, working at the intersection of ML research and product development to deliver production-grade capabilities to our customers.

This role is critical for accelerating ML feature development and bridging the gap between ML research and product engineering and will be driving the following:

Core ML Feature Development: Drive improvements to ML features including model optimization, inference performance, and feature enhancements.

Production-Ready Solutions: Build and deploy production-ready ML solutions for enterprise customers with focus on reliability and scale.

Research to Product Bridge: Translate ML research innovations into practical product features and customer-facing capabilities.

Cross-Team Collaboration: Work closely with SDK, testing, and customer teams to ensure ML features meet enterprise requirements.

Impact: Accelerates ML feature development and optimization, enabling faster time-to-market for new capabilities while ensuring enterprise-grade quality and performance.

Responsibilities

Design and implement core ML features including model optimization, quantization, and inference enhancements

Optimize model performance for latency, throughput, and memory efficiency on SambaNova hardware

Develop and improve features such as Function Calling, Structured Output, and JSON mode conformance

Create end-to-end ML solutions that showcase platform capabilities and accelerate customer adoption

Convert cutting-edge ML research into practical, deployable product features

Establish benchmarks and quality standards for ML features in production environments

Work with SDK team to ensure ML features are properly exposed and documented for developers

Support enterprise customers implementing advanced ML features in their workflows

Partner with ML research, platform engineering, and customer teams

Required Qualifications

Master’s degree or higher in Computer Science, Machine Learning, Electrical Engineering, or related field

5+ years of industry experience in ML engineering or applied ML research

3+ years of hands-on experience with large language models and transformer architectures

Expert proficiency in Python and deep learning frameworks: PyTorch (required), TensorFlow, or JAX

Experience with model optimization techniques: quantization, pruning, distillation, efficient inference

Strong understanding of LLM inference optimization: KV cache, batching strategies, memory management

Experience deploying ML models to production at scale

Track record of translating research concepts into production features

Preferred Qualifications

PhD in Machine Learning, NLP, or related field

Experience with custom hardware acceleration (TPUs, custom ASICs)

Hands-on experience with inference frameworks: vLLM, TensorRT-LLM, or similar

Experience with function calling and tool use in LLMs

Knowledge of structured generation and constrained decoding

Experience with ML feature development in enterprise contexts

Contributions to open-source ML projects

What We Offer

Work on cutting-edge ML features powering the fastest AI inference platform

Direct impact on product capabilities used by enterprise customers globally

Collaborate with world-class ML researchers and engineers

Bay Area location enabling close collaboration with core ML teams

Competitive compensation and benefits

Opportunity to shape the future of enterprise AI

Base Salary Range:

Base Pay Range

$200,000 $270,000 USD

Submission Guidelines

Please note that in order to be considered an applicant for any position at SambaNova Systems, you must submit an application form for each position for which you believe you are qualified.

EEO Policy

SambaNova Systems is an Equal Opportunity/Affirmative Action Employer. All qualified applicants will receive consideration for employment without regard basis of age (40 and over), color, disability, gender identity, genetic information…

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