Full-Time

Operating Room Nurse

Posted on 5/9/2026

Stanford Health Care

Stanford Health Care

10,001+ employees

Compensation Overview

$77.69 - $95.52/hr

Pleasanton, CA, USA

In Person

Category
Medical, Clinical & Veterinary (1)
Requirements
  • Graduate of an accredited School of Nursing Required
  • 1+ year to 2 years prior acute care Registered Nurse experience Required
  • Nursing\RN - Registered Nurse - State Licensure And/Or Compact State Licensure required .
  • Current American Heart Association Certification for Basic Life Support for Healthcare Providers required .
  • Strong communication skills - Ability to read, write and understand the English language.
  • Strong attention to detail
  • Ability to problem solve and adapt to a changing environment
  • Ability to use information and keep abreast of developments in technology to communicate, manage knowledge, mitigate error, and support decision-making in patient care
  • Ability to work as a valued team member, but also autonomously
  • Ability positively influence others to meet patient needs and achieve shared goals
  • Ability to effectively prioritize to provide quality and valued patient care
  • Knowledge of principles, practices and current trends in health care and hospital system organization and administration sufficient to provide clinical management, leadership, coordination, and operational direction for assigned areas of responsibility
Responsibilities
  • Assesses patients by collecting and documenting data about patients through interviewing, history taking, personal needs and physical assessment findings.
  • Obtains accurate and relevant assessment screening data and interprets the data as normal v. abnormal.
  • Determines nursing diagnosis. Monitors and evaluates data as frequently as needed based on stability.
  • Safely performs and documents care plan using the nursing procedures required for the patient assignment consistent with the standards of care.
  • Evaluates effectiveness of interventions and monitors patient for adverse responses and side effects.
  • Assesses patient/family level of understanding and documents information on clinical records.
  • Creates and maintains a climate conducive to healing through being present to patient & family, identifying and managing discomforts and providing emotional support and education.
  • Teaches needed information for self-care and illness prevention to patient and family members.
  • Recognizes and communicates to proper authority ethical and legal issues relative to patient care; completes incident report.
  • Safety performs all provision of care for any age-related needs of the patients served on the unit, including growth and development principles.
  • Attends meetings and serves on departmental and/or hospital committees as assigned.
  • Works to support the achievement of department strategic and organizational goals.
  • Employee must perform all duties and responsibilities in accordance with the C-I-CARE Standards of the Hospital. C-I-CARE is the foundation of Stanford Healthcare Tri-Valley's patient-experience and represents a framework for patient-centered interactions.

Company Size

10,001+

Company Stage

N/A

Total Funding

N/A

Headquarters

Palo Alto, California

Founded

2012

Simplify Jobs

Simplify's Take

What believers are saying

  • Alameda Health System partnership expands specialized care access for 400,000 Alameda residents.
  • Retrieval Augmented Generation ensures accurate, hallucination-free clinical responses.
  • EHR training modernization cuts onboarding time 50% and boosts clinician retention.

What critics are saying

  • Epic's AI-native EHR upgrades outperform ChatEHR, eroding Stanford's advantage in 12-18 months.
  • St. Rose Hospital collaboration taints Stanford's brand with safety-net operational liabilities.
  • California Public Health halts ChatEHR expansion after FURM bias audit failures in 18-24 months.

What makes Stanford Health Care unique

  • ChatEHR embeds generative AI directly into Epic EHR for 40-70% faster workflows.
  • MedHELM provides continuous real-time evaluation of AI model safety and accuracy.
  • DAX Copilot AI scribe automates notes, enabling clinician eye contact with patients.

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Benefits

Health Insurance

Paid Vacation

401(k) Retirement Plan

Flexible Work Hours

Remote Work Options

Wellness Program

Mental Health Support

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