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Research Assistant Deep Learning Jobs in Oregon (NOW HIRING)

OR · On-site

... of deep learning foundation models, computational biology, and molecular diagnostics. This ... Working within a builder framework, you will align across AI Research, Bioinformatics, and Clinical ...

Must-Have Skills 3+ years of ML engineering experience -- model training, fine-tuning, or post-training pipelines in research or production Strong Python and deep learning proficiency (PyTorch ...

Must-Have Skills 3+ years of ML engineering experience -- model training, fine-tuning, or post-training pipelines in research or production Strong Python and deep learning proficiency (PyTorch ...

Must-Have Skills 3+ years of ML engineering experience -- model training, fine-tuning, or post-training pipelines in research or production Strong Python and deep learning proficiency (PyTorch ...

Must-Have Skills 3+ years of ML engineering experience -- model training, fine-tuning, or post-training pipelines in research or production Strong Python and deep learning proficiency (PyTorch ...

OR · On-site

We are seeking a Senior Manager to lead a group of Research Scientists, ML Engineers, Data ... Bring deep, handson expertise in MLLMs and agentic systems to guide technical direction and ...

OR · On-site

You will work with the latest accelerated computing and Deep Learning software and hardware platforms, and with many scientific researchers, developers, and customers to craft improved workflows and ...

$32 - $40/hr

... * Assist in designing, developing, and testing autonomous AI agents and generative AI systems ... Hands-on experience with working with Machine Learning and Deep Learning models. Experience with ...

$32 - $40/hr

... * Assist in designing, developing, and testing autonomous AI agents and generative AI systems ... Hands-on experience with working with Machine Learning and Deep Learning models. Experience with ...

Senior Staff Machine Learning Scientist, Assets

OR · On-site +1

$91K - $124K/yr

Proficiency in modern deep learning frameworks such as PyTorch and TensorFlow. * Demonstrated technical leadership, including mentoring scientists or engineers and influencing research direction ...

Vectara provides a scalable platform to deploy your Enterprise AI Agents and AI Assistants with ... Design, prototype, research and build AI systems for Vectara. * Train, evaluate and deploy ML ...

OR · On-site

$91K - $124K/yr

Overview As a Senior Machine Learning Engineer II on the Ads Response Prediction team, you will ... research) applying ML to ranking, recommendation, or prediction problems at scale. * Deep ...

OR · On-site

$122K - $161K/yr

NVIDIA GPUs are at the center of the deep learning revolution and continue to enable breakthroughs ... or research experience in compiler optimization, performance analysis and IR design. * Ability to ...

Part of Amgen's R&D Strategy & Operations organization, the R&D Knowledge & Learning team serves ... You will embed yourself alongside your stakeholders to form a deep understanding their business as ...

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Research Assistant Deep Learning information

What is the difference between Research Assistant Deep Learning vs Research Assistant Machine Learning?

AspectResearch Assistant Deep LearningResearch Assistant Machine Learning
Required CredentialsBachelor's or Master's in Computer Science, Data Science, or related fields; knowledge of neural networksBachelor's or Master's in Computer Science, Data Science, or related fields; foundational ML knowledge
Work EnvironmentResearch labs, universities, tech companies focusing on AI and neural networksResearch labs, universities, tech companies working on various ML algorithms
Employer & Industry UsageAI research, deep learning projects, neural network developmentGeneral machine learning applications, data analysis, predictive modeling

Research Assistant Deep Learning specializes in neural networks and AI-focused projects, while Research Assistant Machine Learning covers a broader range of algorithms and data analysis tasks. Both roles require similar educational backgrounds but differ in technical focus and application areas.

What are Research Assistant Deep Learning jobs?

Research Assistant Deep Learning jobs involve supporting research projects focused on artificial intelligence, specifically within the field of deep learning. These roles typically require assisting with data collection, preprocessing, running machine learning experiments, and analyzing results. Research assistants may also help with literature reviews, code development, and documentation. The position is often found in academic, industry, or research lab settings, and usually requires a solid foundation in programming, mathematics, and neural network concepts.

What are the key skills and qualifications needed to thrive as a Research Assistant in Deep Learning, and why are they important?

To thrive as a Research Assistant in Deep Learning, you need a strong background in machine learning, programming (especially Python), and a relevant degree in computer science or a related field. Familiarity with deep learning frameworks such as TensorFlow or PyTorch, as well as experience with data preprocessing and GPU computing, are typically required. Strong analytical thinking, attention to detail, and effective communication skills help you excel in collaborative research environments. These skills and qualities are essential for efficiently developing, testing, and improving advanced machine learning models in a fast-evolving field.

What types of projects and daily tasks can a Research Assistant in Deep Learning expect to work on?

As a Research Assistant in Deep Learning, you can expect to work closely with research scientists and engineers to design, implement, and evaluate novel deep learning models. Typical daily tasks include data preprocessing, running experiments, analyzing results, and contributing to academic papers or presentations. You may also assist in developing codebases, conducting literature reviews, and collaborating with team members to solve technical challenges. The work environment is often collaborative and fast-paced, with opportunities to learn from experts and contribute to cutting-edge research projects.
What are popular job titles related to Research Assistant Deep Learning jobs in Oregon? For Research Assistant Deep Learning jobs in Oregon, the most frequently searched job titles are:
What job categories do people searching Research Assistant Deep Learning jobs in Oregon look for? The top searched job categories for Research Assistant Deep Learning jobs in Oregon are:
What cities in Oregon are hiring for Research Assistant Deep Learning jobs? Cities in Oregon with the most Research Assistant Deep Learning job openings:
Infographic showing various Research Assistant Deep Learning job openings in Oregon as of July 2026, with employment types broken down into 1% As Needed, 76% Full Time, 19% Part Time, 1% Temporary, 2% Contract, and 1% Nights. Highlights an 99% Physical, and 1% Remote job distribution.
Staff Machine Learning Scientist, Translational AI

Staff Machine Learning Scientist, Translational AI

Natera

OR • On-site

Other

Posted 27 days ago


Natera rating

7.7

Company rating: 7.7 out of 10

Based on 35 frontline employees who took The Breakroom Quiz

51st of 105 rated laboratories


Job description

POSITION SUMMARY:

We are seeking a Staff Machine Learning Scientist - Translational AI to provide technical leadership at the intersection of deep learning foundation models, computational biology, and molecular diagnostics. This ownership role drives the architecture and validation of genomic, transcriptomic, and multimodal sequence models to accelerate patient stratification, target identification, and therapeutic monitoring across our cell-free DNA (cfDNA) and multi-omic platforms. This Staff-level position operates with broad technical autonomy, driving modeling strategy across multiple concurrent portfolios while maintaining direct execution responsibilities in model compilation, scaling, and testing. Working within a builder framework, you will align across AI Research, Bioinformatics, and Clinical Science divisions to transition advanced representation learning models into reproducible, clinically valid diagnostic assets.

PRIMARY RESPONSIBILITIES:

Scientific Leadership in Translational AI

  • Serve as the principal technical authority on the deployment of molecular, genomic, and pathology foundation models applied to oncology and translational medicine questions
  • Engineer rigorous alignment and post-training workflows that ground pre-trained foundation models in empirical clinical trial and molecular diagnostic data, eliminating speculative modeling assumptions
  • Formulate objective peer-review frameworks and deliver technical feedback to elevate the modeling code, experimental standards, and scientific designs of the broader AI research group

Foundation Models to Biological and Clinical Translation

  • Lead the post-training, parameter-efficient fine-tuning (PEFT), and evaluation of deep sequence, multimodal, and representation learning models for biomarker discovery, molecular recurrence monitoring, and therapeutic response forecasting
  • Design robust fine-tuning, probing, and latent space representation analysis workflows that extract interpretable, biologically grounded patterns from high-dimensional transformer architectures
  • Validate model outputs against multi-omic benchmarks and real-world outcomes, ensuring model predictions deliver the exact deterministic accuracy required for patient tracking and clinical interventions

Modeling, Experimentation, and Evaluation

  • Build, train, and optimize advanced machine learning models utilizing next-generation sequencing (NGS), ctDNA assays, digital pathology imaging, and longitudinal clinical metadata
  • Design rigorous clinical investigation and evaluation frameworks that connect model performance metrics (e.g., loss curves, precision-recall) directly to translational utility and real-world distribution shifts
  • Systematically identify algorithmic failure modes, sources of dataset bias, and covariate shift, implementing robust mitigation strategies suitable for regulated, clinical-facing pipelines

Cross-Functional Collaboration and Influence

  • Partner with Computational Biology, Translational Science, and Medical Affairs teams to translate complex clinical requirements into clear, quantitative machine learning problem statements
  • Act as a systems-level technical bridge between AI Research and ML Engineering teams to ensure that validation models convert seamlessly into scalable, reproducible production workflows
  • Provide technical leadership and data execution support for strategic external collaborations, pharmaceutical partnerships, and foundation model research consortiums

Scientific Communication and External Presence

  • Translate complex multimodal model architectures and performance metrics into transparent, high-integrity data packages for clinical governance, leadership updates, and external collaborators
  • Lead the authoring of technical manuscripts for peer-reviewed machine learning venues (e.g., NeurIPS, ICML, ICLR) and major computational biology journals
  • Act as a technical representative for the company's translational AI capabilities at international medical, oncology, and machine learning conferences

QUALIFICATIONS:

  • PhD in Computer Science, Computational Biology, Bioinformatics, Biomedical Engineering, or a highly quantitative structural field
  • 5+ years of industry or post-doctoral experience applying deep learning frameworks to complex biological, genomic, or clinical datasets, with a documented focus on oncology or immunology portfolios
  • Deep technical competency with transformer architectures, representation learning, self-supervised learning (SSL), or deep sequence modeling
  • Proven track record of translating machine learning outputs into verifiable biological variables or clinical performance indicators, rather than optimizing solely for isolated cross-validation metrics
  • Expert proficiency in PyTorch and modern machine learning infrastructure (e.g., HuggingFace ecosystem, PEFT, Captum, MLflow, and distributed GPU computing setups)
  • Documented technical leadership through end-to-end project ownership, architectural design authority, or cross-functional team direction

Preferred Qualifications:

  • Experience constructing or fine-tuning multimodal foundation models that combine high-depth genomic sequencing data with digital pathology images or longitudinal electronic health records (EHR)
  • Direct experience handling clinical trial datasets, real-world data (RWD/RWE), or developing models within health-authority/regulatory-facing frameworks
  • Strong record of publications as primary author in high-impact machine learning venues

KNOWLEDGE, SKILLS, AND ABILITIES:

  • Advanced mathematical and algorithmic fluency across deep learning methodologies, optimization strategies, and probabilistic modeling
  • Fast learner with the capability to master complex cfDNA platforms, biochemistry workflows, and multi-omic data generation pipelines rapidly
  • Precise written and verbal communication styles with strict attention to algorithmic detail and statistical validation boundaries
  • Proven capability to drive independent portfolios while executing cross-functional objectives within matrixed technology and scientific teams
  • High-growth builder mindset with the capability to balance scientific rigor, operational execution speed, and computational resource constraints under tight timelines
  • Utilize cloud-based productivity and high-performance computing infrastructure to maintain high operational momentum in a fast-evolving artificial intelligence environment



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