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AI/ML Intern, Computer Vision
Location
California + 3 moreAll locations: California | District Of Columbia | New Jersey | Pennsylvania
Posted
99 days ago
Salary
$23 - $51 / hour
Seniority
Entry Level
Job Description
AI/ML Intern, Computer Vision
Johnson & Johnson
• Design, implement, and evaluate scalable modular model architectures that allow specialization and efficient use of computation • Develop and test methods that learn richer contextual and temporal representations by predicting or aligning different views, frames, or modalities • Improve representation-learning pipelines by experimenting with data preparation strategies, augmentation approaches, training schedules, and hyperparameter settings to increase robustness across modalities • Build reproducible training and evaluation workflows and run experiments at scale; maintain clear experiment logs and analyses • Measure model effectiveness on clinically relevant downstream tasks (e.g., classification, detection, segmentation, retrieval, temporal reasoning) and produce comparison reports and ablation studies • Collaborate with data engineers, clinicians, and researchers to curate and prepare datasets while following privacy and governance requirements • Produce well-documented code, experiment artifacts, internal reports, and, where appropriate, contribute to technical write-ups or presentations
Job Requirements
- Currently pursuing or recently completed a Bachelor’s, Master’s, or PhD in Computer Science, Engineering, Applied Mathematics, or a related field
- Strong programming ability (Python) and experience with common machine learning libraries
- Solid understanding of machine learning and computer vision fundamentals and of how to train and evaluate models
- Experience running experiments, tracking results, and performing basic troubleshooting and analysis
- Strong written and verbal communication skills
Benefits
- Employee medical benefits
- Sick time benefits: up to 40 hours per calendar year (up to 56 hours for WA residents)
- Eligibility for consolidated retirement plan (pension)
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