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Machine Learning Operations Engineer

ZipRecruiter

Santa Clara (CA)

On-site

USD 100,000 - 160,000

Full time

30+ days ago

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Job summary

Join a pioneering company at the forefront of brain-computer interface technology, where innovation meets compassion. As a Machine Learning Operations Engineer, you will play a critical role in bridging the gap between data science and operations, enabling groundbreaking advancements in neurological solutions. Your expertise will help create robust infrastructures for machine learning models, ensuring seamless deployment and monitoring in production environments. This is an exciting opportunity to contribute to life-changing technology that empowers individuals with paralysis to regain control over their digital lives. If you are passionate about making a difference through cutting-edge technology, this role is for you.

Qualifications

  • 5+ years of experience creating ML infrastructure for deep learning models.
  • Deep knowledge of AWS and the AWS suite including Sagemaker Studio.
  • Expertise with Python and related ML libraries.

Responsibilities

  • Build scalable infrastructures for training and inference of machine learning models.
  • Create CI/CD pipelines and automation tools for continuous deployment.
  • Research and adhere to software development process requirements.

Skills

Machine Learning Infrastructure
AWS (Sagemaker, Kinesis, S3, etc.)
Deep Learning Concepts
Data Engineering
MLOps Frameworks (Kubeflow, MLFlow)
Containerization (Docker, Kubernetes)
Python Programming
C++ Programming
Edge Computing
Regulatory Knowledge (HIPAA)

Tools

AWS
Docker
Kubernetes
PyQt

Job description

Job Description

Precision Neuroscience is pioneering a brain implant, known as a brain-computer interface (BCI), to restore communication and independence for people with neurological conditions. Our cutting-edge technology is designed to empower people with paralysis to control digital devices—such as computers and smartphones—with their thoughts alone, opening new possibilities for daily life.

Precision’s multidisciplinary team brings together leading experts in diverse fields such as neurosurgery, artificial intelligence, machine learning, microfabrication, electrical engineering, and more. We are committed to turning breakthrough scientific advancements into real-world solutions for people affected by conditions such as spinal cord injury, stroke, and ALS.

As a Precision employee, you will be joining one of the fastest moving and best-capitalized companies in the emerging field of BCI. Since our founding in 2021, Precision has secured over $155 million in funding, developed and validated our technology, and initiated human trials in collaboration with some of the nation’s top hospitals.

We are seeking a Machine Learning Operations Engineer. As a ML Ops Engineer, you will bridge the gap between data science and operations by building and maintaining highly automated, self-service infrastructure, pipelines, and processes needed to deploy and monitor machine learning models in production environments. You will also contribute heavily to creating data collection and labelling software.

This position is on-site at least 3 days a week at our Santa Clara, Chicago, New York or Indianapolis offices. We are unable to consider remote workers or people not currently based in the United States, and who do not have working rights.

Key Responsibilities
  1. Build a paved path for ML engineers to preprocess data, train models, and validate models. Start by leveraging AWS infrastructure and later swap out AWS components with third-party tools or home-grown modules as necessary. Also build infrastructure that can run training and inference at the edge and allow the seamless movement of ML training and inference code between the cloud and the edge.
  2. Design: Create architecture/design documents for components you own. Lead/participate in Threat Model Analysis (TMA) and risk management activities.
  3. Backend Programming: Optimize the efficiency of the ML team by creating dashboards, data pipelines, training, inference, and labelling infrastructure for the unique needs of our ML team and the product we need to build.
  4. Deployment: Build scalable infrastructures for training and inference of machine learning models. Create CI/CD pipelines and automation tools for continuous deployment and integration of machine learning models.
  5. Quality: Write automation frameworks, test plans, unit and integration tests. Work with the SW QA team on automated and manual system testing.
  6. Teamwork: Provide timely design and code reviews. Test the code written by your peers.
  7. Regulatory: Research and adhere to the software development process requirements mandated by various regulatory bodies.
Skills, Knowledge, and Expertise
  • 5+ years of experience creating ML infrastructure for deep learning models dealing with data at scale. 10+ years of software engineering experience.
  • Deep knowledge of AWS and the AWS suite including Sagemaker Studio, AWS Kinesis, S3, EC2, Lambda, Cloudwatch, EMR, Elastic Docker Container.
  • Solid understanding of ML concepts (e.g., model selection, deep learning architectures, hyperparameter tuning). Ability to understand ML code leveraging modern ML and data frameworks such as Pytorch, Tensorflow, numpy, and scikit-learn. Knowledge of AI/robotic frameworks like OpenCV, ROS2, Kaldi strongly.
  • Data engineering with distributed data processing and distributed training.
  • Experience with MLOps frameworks like Kubeflow, MLFlow, Airflow, etc.
  • Familiarity with containerization and orchestration tools such as Docker and Kubernetes.
  • Knowledge of A/B testing and benchmarking model performance in production.
  • Expertise with Python and related ML libraries. Working knowledge of C++.
  • PyQt user interface development experience or willingness to learn.
  • Experience with IoT, edge computing, and/or robotic systems strongly.
  • Knowledge of HIPAA, development of software/AI for medical devices is a plus.

Diverse workforces create the best culture, company, and products. We at Precision are committed to an inclusive culture that celebrates the uniqueness and contributions of everyone.

As an equal opportunity employer, Precision does not discriminate on the basis of age, gender, race, religion, sexual orientation, veteran status, or any other characteristic protected by law.

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