Principal Scientist, Translational Medicine, Preclinical Safety
Location
California
Posted
2 days ago
Salary
$119.7K - $222.3K / year
Seniority
Lead
Job Description
Principal Scientist, Translational Medicine, Preclinical Safety
Kerr Dental
• Formulates and leads/co-leads novel projects with team or enables matrix collaboration on project/technology solutions • Generates innovative ideas within own team and/or project team/functional community • Establishes target dates and priorities to enable data-driven advancements in project teams • Responsible for overseeing the progress of the study • Ensures compliance with appropriate GLP regulations and all relevant international regulatory guidelines
Job Requirements
- PhD or MVSc/MS/M.Pharm with 7+ years of experiences in drug discovery and/or development
- In-depth knowledge of toxicology assays in early development, Safety pharmacology and genotoxicity
- Proficient with full range of techniques used in job and core areas
- Working knowledge of tools and processes used in drug design and development
- Registration and certification with one of the International Toxicology registries
Benefits
- Health, life and disability benefits
- 401(k) with company contribution and match
- Generous time off package including vacation, personal days, holidays and other leaves
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