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Remote Google Machine Learning Engineer Jobs in Pennsylvania

Approval of remote and hybrid work is not guaranteed regardless of work location.For additional ... Experience with software engineering practices for research-grade code, version control (Git ...

Approval of remote and hybrid work is not guaranteed regardless of work location.For additional ... Familiarity with machine learning workflows and how data is consumed for training, evaluation, and ...

Develop machine learning-based prototypes, tools, and systems for AI security applications ... Apply software engineering best practices to build scalable, maintainable systems, grounded design ...

Work closely with our Microsoft, Google, Salesforce, and other related platform teams to develop ... Professional AI Architect, Machine Learning Engineer) or equivalent are a plus * Advanced degree ...

Data Scientist

Conshohocken, PA · On-site +1

$175K/yr

Remote (Preference for Northeast/Mid-Atlantic; monthly travel to Plymouth Meeting, PA as needed ... Experience collaborating closely with Data Engineering teams or supporting machine learning ...

$14.75 - $19.75/hr

Approval of remote and hybrid work is not guaranteed regardless of work location.For additional ... Support machine learning model development using tools and technologies such as: PyTorch, Pandas ...

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Remote Google Machine Learning Engineer information

What is a Remote Google Machine Learning Engineer?

A Remote Google Machine Learning Engineer is a professional who designs, builds, and deploys machine learning models and artificial intelligence solutions, often using Google Cloud technologies, while working from a remote location. These engineers collaborate with cross-functional teams to solve complex business problems, optimize data pipelines, and improve model performance. Their responsibilities typically include data preprocessing, model selection, training, evaluation, and deployment, all while ensuring scalability and security. Working remotely allows them to contribute to projects from anywhere, leveraging cloud-based tools and collaboration platforms.

What are the key skills and qualifications needed to thrive as a Remote Google Machine Learning Engineer, and why are they important?

To thrive as a Remote Google Machine Learning Engineer, you need a strong background in computer science, mathematics, and machine learning algorithms, typically supported by a relevant degree and experience in building scalable models. Proficiency with tools such as TensorFlow, Python, Google Cloud Platform (GCP), and familiarity with distributed systems is essential. Excellent problem-solving, communication, and self-management skills are crucial for effective remote collaboration and innovation. These capabilities enable engineers to deliver impactful machine learning solutions while seamlessly integrating with global Google teams.

How do Remote Google Machine Learning Engineers typically collaborate with cross-functional teams while working from different locations?

Remote Google Machine Learning Engineers often use a combination of video conferencing, cloud-based collaboration tools, and shared code repositories to work closely with data scientists, product managers, and software engineers. Regular stand-up meetings, sprint planning sessions, and detailed documentation help ensure everyone is aligned and project milestones are met. Despite being remote, engineers are encouraged to proactively communicate progress, share insights, and participate in code reviews to maintain a strong team dynamic and drive successful project outcomes.
What are the most commonly searched types of Google Machine Learning Engineer jobs in Pennsylvania? The most popular types of Google Machine Learning Engineer jobs in Pennsylvania are:
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Machine Learning Staff Scientist at NSF-NCEMS

Machine Learning Staff Scientist at NSF-NCEMS

The Pennsylvania State University

On-site, Remote

Full-time

Medical, Dental, Vision, Retirement, PTO

Posted 4 days ago


Job description

APPLICATION INSTRUCTIONS:
  • CURRENT PENN STATE EMPLOYEE (faculty, staff, technical service, or student), please login to Workday to complete the internal application process. Please do not apply here, apply internally through Workday.
  • CURRENT PENN STATE STUDENT (not employed previously at the university) and seeking employment with Penn State, please login to Workday to complete the student application process. Please do not apply here, apply internally through Workday.
  • If you are NOT a current employee or student, please click "Apply" and complete the application process for external applicants.

Approval of remote and hybrid work is not guaranteed regardless of work location.For additional information on remote work at Penn State, seeNotice to Out of State Applicants.

This position is funded for 3 year(s); continuation past 3 year(s) will be based on university need, performance, and/or availability of funding.

POSITION SPECIFICS

TheU.S. National Science Foundation National Synthesis Center for Emergence in the Molecular and Cellular Sciences (NCEMS)and theInstitute for Computational and Data Sciences(ICDS)at Penn State seeks an outstanding scientist to fill a Machine Learning Staff Scientist (Research Data Scientist - Intermediate Professional or Advanced Professional level) position dedicated to advancing the collaborative research of the Center'sWorking Groups.

NCEMS is an interdisciplinary research Center positioned at the interface of data science with molecular and cellular biology. The Center provides leadership in the integration of diverse, publicly available datasets, enabling cross-disciplinary teams of scientists to synthesize knowledge and pursue fundamental questions at the forefront of the life sciences.

About the Position: Machine Learning Staff Scientists play a supporting role in enabling the research efforts of multidisciplinary scientific teams supported by NCEMS, typically contributing to 2-3 projects simultaneously.

Work Arrangement: This position has the potential to be a hybrid of remote and on-site work, with a minimum requirement of 3 days per week on-site at the Penn State University Park campus. This position does notpermitfully remote work.

Responsibilities:

  • Collaborate with NCEMS Working Groups to design, develop, and evaluate machine learning approaches for integrating, analyzing, and visualizing molecular and cellular biology data across the central dogma and regulatory processes.

  • Prepare ML-ready datasets by leading data wrangling, harmonization, standardization, quality control, and documentation to support robust training and reuse across biological modalities.

  • Develop end-to-end ML workflows (feature/representation learning, training, validation, benchmarking, and uncertainty quantification) for multi-omics and related data types.

  • Build andoptimizepredictive and generative models (e.g., deep learning, probabilistic models, foundation-model adaptation, graph/neural sequence models) to support synthesis research questions.

  • Implement scalable training and inference pipelines using modern ML tooling (e.g.,PyTorch/TensorFlow/JAX), version control, containers, and HPC/GPU resources.

  • Support the publication of intermediate data products, models, code, and documentation.

  • Stayup-to-datewith the latest advancements in machine learning, AI for biology, and the rapidly evolving landscape of public molecular and cellular datasets.

Education and Experience:

  • M.S. or PhD in Machine Learning, Computational Biology, Bioinformatics, Computer Science, Statistics, Data Science, or a related fieldis preferred.

  • Strongproficiencyin Python for scientific computing and machine learning, including experience with common ML libraries/frameworks (e.g.,PyTorch, TensorFlow, JAX, scikit-learn).

  • Demonstrated experience and understanding of core machine learning, deep learning and statistical methods such as: regression and generalized linear models; classification and clustering; dimensionality reduction; sequence and time-series modeling; deep learning architectures including CNNs, RNNs, GNNs, and transformers; generative modeling (e.g., diffusion and variational/auto-regressive approaches), representation learning and self-/weakly-supervised learning, natural language processing, computer vision, and causal inference.

  • Experience working with high-dimensional, large-scale molecular and cellular datasets (e.g., genomic, transcriptomic, epigenomic, proteomic, metabolomic/lipidomic, imaging-derived, single-cell, or multi-omics data), includingappropriate preprocessingand normalization strategies for ML.

  • Solid understanding of molecular and cellular biology concepts sufficient to frame ML problems across the central dogma (sequence, expression, regulation, and protein function/structure) and to collaborate effectively with domain scientists.

  • Experience with software engineering practices for research-grade code, version control (Git), reproducible environments (containers/conda), HPC/GPU computing.

  • Publications in peer-reviewed journalsdemonstratingcontributions to the field.

  • Experience supporting/contributing to multi-PI projects.

Candidates must alsodemonstratea commitment to ethical conduct and research integrity, strong work ethic, strong interpersonal and written communication skills, and the ability to work well in a team environment.

Applicaiton materials: Required documents include the following:

  • A current Curriculum Vitae (CV) or Resume

  • A cover letter detailing the candidate's interest in the role

Benefits:

Penn State provides a competitive benefits package for full-time employees designed to support both personal and professional well-being. For more detailed information, please visitourBenefits Page.

MINIMUM EDUCATION, WORK EXPERIENCE & REQUIRED CERTIFICATIONS

If filled as Research Data Scientist - Intermediate Professional, this position requires: Bachelor's Degree 1+ years of relevant experience; or an equivalent combination of education and experience accepted Required Certifications: None If filled as Research Data Scientist - Advanced Professional, this position requires: Bachelor's Degree 3+ years of relevant experience; or an equivalent combination of education and experience accepted Required Certifications: None

BACKGROUND CHECKS/CLEARANCES

Employment with the University will require successful completion of background check(s) in accordance with University policies.Penn State does not sponsor or take over sponsorship of a staff employment Visa. Applicants must be authorized to work in the U.S.

SALARY & BENEFITS

The salary range for this position, including all possible grades, is $65,508.00 - $122,016.00.

Salary Structure - Information on Penn State's salary structure

Penn State provides a competitive benefits package for full-time employees designed to support both personal and professional well-being. In addition to comprehensive medical, dental, and vision coverage, employees enjoy robust retirement plans and substantial paid time off which includes holidays, vacation and sick time. One of the standout benefits is the generous 75% tuition discount, available to employees as well as eligible spouses and children. For more detailed information, please visit our Benefits Page.

CAMPUS SECURITY CRIME STATISTICS

Pursuant to the Jeanne Clery Disclosure of Campus Security Policy and Campus Crime Statistics Act and the Pennsylvania Act of 1988, Penn State publishes a combined Annual Security and Annual Fire Safety Report (ASR). The ASR includes crime statistics and institutional policies concerning campus security, such as those concerning alcohol and drug use, crime prevention, the reporting of crimes, sexual assault, and other matters. The ASR is available for review here.

EEO IS THE LAW

Penn State is an equal opportunity employer and is committed to providing employment opportunities to all qualified applicants without regard to race, color, religion, age, sex, sexual orientation, gender identity, national origin, disability or protected veteran status. If you are unable to use our online application process due to an impairment or disability, please contact 814-865-1473.

Penn State is committed to and accountable for advancing equity, respect, and belonging. We embrace individual uniqueness, as well as a culture of belonging that supports equity initiatives, leverages the educational and institutional benefits of inclusion in society, and provides opportunities for engagement intended to help all members of the community thrive. We value belonging as a core strength and an essential element of the university's teaching, research, and service mission.

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About Pennsylvania State University

Sourced by ZipRecruiter

Pennsylvania State University, often referred to as Penn State, is a major, public, research-intensive university located in University Park, PA, US. This esteemed institution serves as an important player within the education industry, offering a plethora of academic programs across various disciplines. The university was founded in 1855 with the mission to provide quality education, advanced research, and service to society. Penn State holds firmly to values of integrity, respect, and excellence, fostering a diverse and inclusive community. The university is renowned for its research productivity and its high-ranking programs in areas like engineering, business, and education. One notable achievement of the institution is its designation as a "R1: Doctoral Universities – Very high research activity," demonstrating its commitment to scholarship and discovery.

Industry

Education

Company size

11 - 50 Employees

Headquarters location

University Park, PA, US

Year founded

1855

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