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Principal Machine Learning Engineer - AQMed

About SandboxAQ

SandboxAQ is a high-growth company delivering AI solutions that address some of the world's greatest challenges. The company’s Large Quantitative Models (LQMs) power advances in life sciences, financial services, navigation, cybersecurity, and other sectors.

We are a global team that is tech-focused and includes experts in AI, chemistry, cybersecurity, physics, mathematics, medicine, engineering, and other specialties. The company emerged from Alphabet Inc. as an independent, growth capital-backed company in 2022, funded by leading investors and supported by a braintrust of industry leaders. 

At SandboxAQ, we’ve cultivated an environment that encourages creativity, collaboration, and impact. By investing deeply in our people, we’re building a thriving, global workforce poised to tackle the world's epic challenges. Join us to advance your career in pursuit of an inspiring mission, in a community of like-minded people who value entrepreneurialism, ownership, and transformative impact. 

About the Role

The AQMed team is seeking a Principal Machine Learning Engineer (MLE) with deep expertise and industry experience to tackle complex challenges in advancing cardiac diagnostics. This role will add a critical perspective in identifying optimal approaches to working with data. The Principal MLE will not only be able to work with rich data sets (both synthetic and real clinical study data) but will also work at the cutting edge of architecting, training, and productizing Deep Learning (DL) and Machine Learning (ML) models. This is an opportunity to bring your expertise to a small but dynamic team that thrives on research, iteration, and collaboration. You will also work closely with external partners to refine and advance groundbreaking technology that has the potential to transform patient care. We’re always on a quest to improve and gain new insights as we continuously engage with external partners.

What You’ll Do

  • Hone your technical leadership by applying hard-won practical experience in deep learning to tackle challenging yet rewarding problems at the forefront of medical science, while collaborating with a world-class team.
  • Design, train, and fine-tune state-of-the-art deep learning architectures that seamlessly integrate multimodal data for robust and scalable solutions.
  • Harness cutting-edge AI techniques to uncover novel biomarkers, combining insights from the latest research, experimental data, and explainability frameworks to drive groundbreaking clinical applications.
  • Contribute to building and refining pipelines that power a sophisticated custom AI stack, delivering precise predictions, actionable insights, and user-friendly visualizations tailored for medical and scientific innovation.
  • Develop tools for explainable AI and integrate findings into production systems.
  • Build dashboards and tools to communicate progress and performance using AWS and other 3rd party tools.
  • Adeptly present insights to cross-functional teams as well as internal and external stakeholders, targeting your communication to the particular audience and anticipating the questions and proof points that speak best to their perspective.
  • Mentor junior team members, fostering a collaborative and innovative team environment with people management potential in the future.

About You

  • Experience: 10+ years as a data scientist or MLE, including experience working with time series data, biomedical models (especially cardiac), and training AI models on very large datasets. Masters or PhD in computer science, data science, mathematics, physics, AI or a related field.
  • Achievements: You’ve developed and deployed state-of-the-art deep learning models to production for real-world applications, especially in MedTech. You’ve shipped products, bringing practical, seasoned knowledge to navigate challenges and deliver results.
  • Deep Learning and Machine Learning Expertise: Proficient in advanced DL/ML frameworks, with a focus on self-supervised methods like contrastive learning, generative modeling, masked modeling, graph networks, and clustering. Skilled in hyperparameter tuning, explainability, and transfer learning. Bonus points for experience training large models on GPUs, working with LLMs, and using synthetic data to augment small real-world datasets.
  • Engineering capabilities: You’re proficient in Python and using versioning control systems (e.g., git), show high-quality code standards, and actively collaborate with other scientists and researchers reviewing PRs and writing scalable, maintainable code. 
  • Statistical Expertise: You have a strong foundation in statistics, probability, and data wrangling from varied sources.
  • Cloud Proficiency: Comfortable with AWS, docker, and scalable batching pipelines.
  • Cross-functional Collaboration: Skilled at bridging technical, clinical, and business perspectives by presenting insights tailored to diverse stakeholders. Builds intuitive dashboards and visualization tools to drive shared understanding, alignment, and actionable decisions across teams.
  • Mindset: You thrive in ambiguity, take ownership, balance competing priorities effectively, and excel at translating a compelling vision into technical reality.

The US base salary range for this full-time position is expected to be $225k-368k per year. Our salary ranges are determined by role and level. Within the range, individual pay is determined by factors including job-related skills, experience, and relevant education or training. This role may be eligible for annual discretionary bonuses and equity.

SandboxAQ welcomes all.

We are committed to creating an inclusive culture where we have zero tolerance for discrimination. We invest in our employees' personal and professional growth. Once you work with us, you can’t go back to normalcy because great breakthroughs come from great teams and we are the best in quantum technology.
 
We offer competitive salaries, stock options depending on employment type, generous learning opportunities, medical/dental/vision, family planning/fertility, PTO (summer and winter breaks), financial wellness resources, 401(k) plans, and more. 
 
Equal Employment Opportunity: All qualified applicants will receive consideration regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability, gender identity, or Veteran status.
 
Accommodations: We provide reasonable accommodations for individuals with disabilities in job application procedures for open roles. If you need such an accommodation, please let a member of our Recruiting team know.

Average salary estimate

$296500 / YEARLY (est.)
min
max
$225000K
$368000K

If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.

What You Should Know About Principal Machine Learning Engineer - AQMed, SandboxAQ

Are you ready to make a real impact in the world of healthcare? As a Principal Machine Learning Engineer at SandboxAQ, you’ll be at the forefront of innovation, working on transformative AI solutions that address significant challenges in cardiac diagnostics. If you're passionate about marrying advanced technology with medical science, this fully remote role could be perfect for you. You'll bring your expertise in deep learning to a dynamic AQMed team, actively collaborating with top-tier professionals from diverse fields. Your considerable experience of over 10 years will be invaluable as you design and refine cutting-edge AI models that can analyze complex datasets, enhancing our understanding of patient health. In this role, your technical leadership will shine as you train and productize deep learning models, ensuring they’re on the cutting edge of medical research. With a collaborative environment at SandboxAQ, you will mentor junior engineers, share insights with stakeholders, and help foster an inclusive space for innovative ideas. So, if you’re ready to be part of a mission that truly matters and work with a talented team committed to exceptional outcomes, apply today and let’s reshape the future of healthcare together!

Frequently Asked Questions (FAQs) for Principal Machine Learning Engineer - AQMed Role at SandboxAQ
What does a Principal Machine Learning Engineer do at SandboxAQ?

At SandboxAQ, a Principal Machine Learning Engineer focuses on tackling complex challenges, particularly in cardiac diagnostics. They design and refine advanced deep learning models, analyze large datasets, and collaborate with cross-functional teams to ensure the AI solutions developed are impactful and clinically relevant.

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What qualifications are needed for the Principal Machine Learning Engineer position at SandboxAQ?

The ideal candidate for the Principal Machine Learning Engineer position at SandboxAQ should have 10+ years of experience in data science or machine learning engineering, with a strong background in biomedical models. A Master’s or Ph.D. in computer science, data science, or a related field is essential, along with familiarity with deep learning frameworks.

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What skills are essential for a Principal Machine Learning Engineer at SandboxAQ?

A Principal Machine Learning Engineer at SandboxAQ should possess deep learning and machine learning expertise, proficiency in Python, strong statistical knowledge, and experience with cloud platforms like AWS. Skills in developing explainable AI and creating intuitive dashboards are also critical.

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What can I expect from the working environment at SandboxAQ?

SandboxAQ fosters a dynamic and inclusive working environment that promotes creativity and collaboration. As a remote-first company, you’ll enjoy the flexibility of working from anywhere while connecting with a global team dedicated to tackling significant challenges in AI and healthcare.

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What industries does SandboxAQ serve with its AI solutions?

SandboxAQ delivers AI solutions across various industries, including life sciences, cybersecurity, financial services, and navigation. The Principal Machine Learning Engineer will specifically focus on advancing innovations in cardiac diagnostics, making a direct impact on patients' lives.

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Does SandboxAQ offer opportunities for professional development?

Absolutely! SandboxAQ is committed to investing in the professional growth of its team. Employees can access generous learning opportunities, participate in innovative projects, and benefit from mentoring programs that foster career advancement.

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What is the salary range for the Principal Machine Learning Engineer role at SandboxAQ?

The expected base salary range for the Principal Machine Learning Engineer position at SandboxAQ is $225k-$368k annually, which varies based on experience, education, and other job-related skills. Additionally, the position may include bonuses and equity.

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Common Interview Questions for Principal Machine Learning Engineer - AQMed
Can you describe your experience with deep learning models?

When answering this question, focus on specific projects where you designed, developed, and deployed deep learning models. Include details about the challenges faced, the techniques used, and the impacts on the healthcare field, to show your practical understanding and outcome-oriented results.

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What strategies do you use for hyperparameter tuning?

Discuss your methodical approach to hyperparameter tuning, highlighting the techniques like grid search or random search. Emphasize how you evaluate model performance metrics to refine your choices, which demonstrates your analytical skills and attention to detail.

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How do you handle large, complex datasets?

Explain your strategies for managing large datasets, including your experience with data wrangling, cleaning processes, and leveraging tools for efficient data analysis. Highlight any specific libraries or frameworks you’ve used to showcase your technical expertise.

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What is your experience in mentoring junior team members?

Share examples of times you have mentored or trained junior engineers, discussing both the strategies you employed and the outcomes of your mentorship. This demonstrates your leadership abilities and commitment to building a collaborative team culture.

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Can you explain the difference between supervised and unsupervised learning?

Provide a concise explanation of supervised versus unsupervised learning, including examples of use cases for each. Additionally, reflect on your own experiences with both types of learning to establish credibility in your understanding.

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How do you approach cross-functional collaboration?

Describe your approach to cross-functional collaboration by citing past experiences where you successfully worked with teams from different disciplines. Emphasize your communication skills and ability to translate technical jargon into understandable insights for non-technical stakeholders.

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What recent advancements in machine learning excite you?

Provide insights into recent advancements in machine learning that you find particularly compelling. Discuss how these innovations could apply to your work at SandboxAQ and align with the company's direction in healthcare.

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What have been the most significant challenges you’ve faced in a past ML project?

Be prepared to discuss specific challenges you encountered in previous ML projects, focusing on your problem-solving strategies and the outcomes. This showcases your resilience and ability to think critically under pressure.

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What tools do you use for model deployment?

Talk about the tools and platforms you are familiar with for deploying ML models, such as Docker, AWS, or other CI/CD tools. Highlight your experience ensuring smooth transitions from development to production for model reliability.

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How do you ensure the explainability of your models?

Discuss techniques you employ to ensure the explainability of your ML models, such as LIME or SHAP. Explain why transparency is crucial in healthcare and how it affects patient care, displaying your understanding of ethical AI principles.

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Based in Palo Alto, CA, SandboxAQ is an artificial intelligence (AI) and quantum computing solutions software company.

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Full-time, remote
DATE POSTED
November 24, 2024

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