Overview
On Site
USD 126,810.00 - 151,461.00 per year
Full Time
Skills
Dynamics
Expect
Deep Learning
High Performance Computing
Collaboration
Artificial Intelligence
Neuroscience
Art
Research
Mentorship
Computer Science
Algorithms
Python
TensorFlow
PyTorch
Orchestration
Cloud Computing
Amazon Web Services
Google Cloud Platform
Google Cloud
Microsoft Azure
Machine Learning Operations (ML Ops)
Software Engineering
Version Control
Testing
Documentation
Training
Big Data
Apache Spark
Open Source
Machine Learning (ML)
NATURAL
Science
Project Management
System Integration Testing
Writing
HIS
Lasers
Database
Budget
Recruiting
Human Resources
Law
Job Details
The Enigma Project (enigmaproject.ai) is a research organization based in the Department of Ophthalmology at Stanford University School of Medicine, dedicated to understanding the computational principles of natural intelligence using the tools of artificial intelligence. Leveraging recent advances in neurotechnology and machine learning, this project aims to create a foundation model of the brain, capturing the relationship between perception, cognition, behavior, and the activity dynamics of the brain. This ambitious initiative promises to offer unprecedented insights into the algorithms of the brain while serving as a key resource for aligning artificial intelligence models with human-like neural representations.
As part of this project, we seek exceptional individuals with extensive experience building, using, and fine-tuning large-scale multimodal foundation models. The team will be responsible for training frontier models on large-scale data of neuronal recordings - multimodal models, i.e., digital twins of a primate brain, that can relate unprecedented amounts of sensory input to neuronal correlates of perception, action, cognition, and intelligence. We expect the candidate to have expertise in modern deep learning libraries (preferably PyTorch) and recent developments in multimodal foundation and frontier models. This position promises a vibrant atmosphere at Stanford University in a collaborative community renowned for expertise in computational neuroscience and deep learning.
Role & Responsibilities:
Implement and optimize the latest machine learning algorithms/models to train multimodal foundation models on neural data
Develop and maintain scalable, efficient, and reproducible machine-learning pipelines
Conduct large-scale ML experiments, using the latest MLOps platforms
Run large-scale distributed model training on high-performance computing clusters or cloud platforms
Collaborate with machine learning researchers, data scientists, and systems engineers to ensure seamless integration of models and infrastructure
Monitor and optimize model performance, resource utilization, and cost-effectiveness
Stay up-to-date with the latest advancements in machine learning tools, frameworks, and methodologies
* - Other duties may also be assigned
What we offer:
An environment in which to pursue fundamental research questions in AI and neuroscience
A vibrant team of engineers and scientists in a project dedicated to one mission, rooted in academia but inspired by science in industry.
Access to unique datasets spanning artificial and biological neural networks
State-of-the-art computing infrastructure
Competitive salary and benefits package
Collaborative environment at the intersection of multiple disciplines
Location at Stanford University with access to its world-class research community
Strong mentoring in career development.
Application:
In addition to applying to the position, please send your CV and one-page interest statement to:
DESIRED QUALIFICATIONS:
Key qualifications:
Master's degree in Computer Science or related field with 2+ years of relevant industry experience, OR Bachelor's degree with 4+ years of relevant industry experience
2+ years of practical experience in implementing and optimizing machine learning algorithms with distributed training using common libraries (e.g. Ray, DeepSpeed, HF Accelerate, FSDP)
Strong programming skills in Python, with expertise in machine learning frameworks like TensorFlow or PyTorch
Experience with orchestration platforms
Experience with cloud computing platforms (e.g., AWS, Google Cloud Platform, Azure) and their machine learning services
Familiarity with MLOps platforms (e.g. MLflow, Weights & Biases)
Strong understanding of software engineering best practices, including version control, testing, and documentation
Preferred qualifications:
Familiarity with training, fine tuning, and quantization of LLMs or multimodal models using common techniques and frameworks (LoRA, PEFT, AWQ, GPTQ, or similar)
Familiarity with modern big data tools and pipelines such as Apache Spark, Arrow, Airflow, Delta Lake, or similar
Experience with AutoML and Neural Architecture Search (NAS) techniques
Contributions to open-source machine learning projects or libraries
EDUCATION & EXPERIENCE (REQUIRED):
Bachelor's degree and three years of relevant experience, or combination of education and relevant experience.
KNOWLEDGE, SKILLS AND ABILITIES (REQUIRED):
Thorough knowledge of the principles of engineering and related natural sciences.
Demonstrated project management experience.
CERTIFICATIONS & LICENSES:
None
PHYSICAL REQUIREMENTS*:
Frequently grasp lightly/fine manipulation, perform desk-based computer tasks, lift/carry/push/pull objects that weigh up to 10 pounds.
Occasionally stand/walk, sit, twist/bend/stoop/squat, grasp forcefully.
Rarely kneel/crawl, climb (ladders, scaffolds, or other), reach/work above shoulders, use a telephone, writing by hand, sort/file paperwork or parts, operate foot and/or hand controls, lift/carry/push/pull objects that weigh >40 pounds.
* - Consistent with its obligations under the law, the University will provide reasonable accommodation to any employee with a disability who requires accommodation to perform the essential functions of his or her job.
WORKING CONDITIONS:
May be exposed to high voltage electricity, radiation or electromagnetic fields, lasers, noise > 80dB TWA, Allergens/Biohazards/Chemicals /Asbestos, confined spaces, working at heights ?10 feet, temperature extremes, heavy metals, unusual work hours or routine overtime and/or inclement weather.
May require travel.
The expected pay range for this position is $126,810 to $151,461 annually.
Stanford University provides pay ranges representing its good faith estimate of what the university reasonably expects to pay for a position. The pay offered to a selected candidate will be determined based on factors such as (but not limited to) the scope and responsibilities of the position, the qualifications of the selected candidate, departmental budget availability, internal equity, geographic location and external market pay for comparable jobs.
At Stanford University, base pay represents only one aspect of the comprehensive rewards package. The Cardinal at Work website (;/b>) provides detailed information on Stanford's extensive range of benefits and rewards offered to employees. Specifics about the rewards package for this position may be discussed during the hiring process.
Consistent with its obligations under the law, the University will provide reasonable accommodations to applicants and employees with disabilities. Applicants requiring reasonable accommodation for any part of the application or hiring process should contact Stanford University Human Resources by submitting a contact form.
Stanford is an equal employment opportunity and affirmative action employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, protected veteran status, or any other characteristic protected by law.
As part of this project, we seek exceptional individuals with extensive experience building, using, and fine-tuning large-scale multimodal foundation models. The team will be responsible for training frontier models on large-scale data of neuronal recordings - multimodal models, i.e., digital twins of a primate brain, that can relate unprecedented amounts of sensory input to neuronal correlates of perception, action, cognition, and intelligence. We expect the candidate to have expertise in modern deep learning libraries (preferably PyTorch) and recent developments in multimodal foundation and frontier models. This position promises a vibrant atmosphere at Stanford University in a collaborative community renowned for expertise in computational neuroscience and deep learning.
Role & Responsibilities:
Implement and optimize the latest machine learning algorithms/models to train multimodal foundation models on neural data
Develop and maintain scalable, efficient, and reproducible machine-learning pipelines
Conduct large-scale ML experiments, using the latest MLOps platforms
Run large-scale distributed model training on high-performance computing clusters or cloud platforms
Collaborate with machine learning researchers, data scientists, and systems engineers to ensure seamless integration of models and infrastructure
Monitor and optimize model performance, resource utilization, and cost-effectiveness
Stay up-to-date with the latest advancements in machine learning tools, frameworks, and methodologies
* - Other duties may also be assigned
What we offer:
An environment in which to pursue fundamental research questions in AI and neuroscience
A vibrant team of engineers and scientists in a project dedicated to one mission, rooted in academia but inspired by science in industry.
Access to unique datasets spanning artificial and biological neural networks
State-of-the-art computing infrastructure
Competitive salary and benefits package
Collaborative environment at the intersection of multiple disciplines
Location at Stanford University with access to its world-class research community
Strong mentoring in career development.
Application:
In addition to applying to the position, please send your CV and one-page interest statement to:
DESIRED QUALIFICATIONS:
Key qualifications:
Master's degree in Computer Science or related field with 2+ years of relevant industry experience, OR Bachelor's degree with 4+ years of relevant industry experience
2+ years of practical experience in implementing and optimizing machine learning algorithms with distributed training using common libraries (e.g. Ray, DeepSpeed, HF Accelerate, FSDP)
Strong programming skills in Python, with expertise in machine learning frameworks like TensorFlow or PyTorch
Experience with orchestration platforms
Experience with cloud computing platforms (e.g., AWS, Google Cloud Platform, Azure) and their machine learning services
Familiarity with MLOps platforms (e.g. MLflow, Weights & Biases)
Strong understanding of software engineering best practices, including version control, testing, and documentation
Preferred qualifications:
Familiarity with training, fine tuning, and quantization of LLMs or multimodal models using common techniques and frameworks (LoRA, PEFT, AWQ, GPTQ, or similar)
Familiarity with modern big data tools and pipelines such as Apache Spark, Arrow, Airflow, Delta Lake, or similar
Experience with AutoML and Neural Architecture Search (NAS) techniques
Contributions to open-source machine learning projects or libraries
EDUCATION & EXPERIENCE (REQUIRED):
Bachelor's degree and three years of relevant experience, or combination of education and relevant experience.
KNOWLEDGE, SKILLS AND ABILITIES (REQUIRED):
Thorough knowledge of the principles of engineering and related natural sciences.
Demonstrated project management experience.
CERTIFICATIONS & LICENSES:
None
PHYSICAL REQUIREMENTS*:
Frequently grasp lightly/fine manipulation, perform desk-based computer tasks, lift/carry/push/pull objects that weigh up to 10 pounds.
Occasionally stand/walk, sit, twist/bend/stoop/squat, grasp forcefully.
Rarely kneel/crawl, climb (ladders, scaffolds, or other), reach/work above shoulders, use a telephone, writing by hand, sort/file paperwork or parts, operate foot and/or hand controls, lift/carry/push/pull objects that weigh >40 pounds.
* - Consistent with its obligations under the law, the University will provide reasonable accommodation to any employee with a disability who requires accommodation to perform the essential functions of his or her job.
WORKING CONDITIONS:
May be exposed to high voltage electricity, radiation or electromagnetic fields, lasers, noise > 80dB TWA, Allergens/Biohazards/Chemicals /Asbestos, confined spaces, working at heights ?10 feet, temperature extremes, heavy metals, unusual work hours or routine overtime and/or inclement weather.
May require travel.
The expected pay range for this position is $126,810 to $151,461 annually.
Stanford University provides pay ranges representing its good faith estimate of what the university reasonably expects to pay for a position. The pay offered to a selected candidate will be determined based on factors such as (but not limited to) the scope and responsibilities of the position, the qualifications of the selected candidate, departmental budget availability, internal equity, geographic location and external market pay for comparable jobs.
At Stanford University, base pay represents only one aspect of the comprehensive rewards package. The Cardinal at Work website (;/b>) provides detailed information on Stanford's extensive range of benefits and rewards offered to employees. Specifics about the rewards package for this position may be discussed during the hiring process.
Consistent with its obligations under the law, the University will provide reasonable accommodations to applicants and employees with disabilities. Applicants requiring reasonable accommodation for any part of the application or hiring process should contact Stanford University Human Resources by submitting a contact form.
Stanford is an equal employment opportunity and affirmative action employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, protected veteran status, or any other characteristic protected by law.
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.