Full-Time

Logistics Associate

Stanford Health Care

Stanford Health Care

10,001+ employees

Compensation Overview

$31.70 - $35.56/hr

Palo Alto, CA, USA

In Person

Evening shift (2:00pm–10:30pm); on-site at Palo Alto, CA Stanford Health Care.

Category
Operations & Logistics (2)
,
Required Skills
Inventory Management
Requirements
  • High school diploma or GED equivalent
  • Minimum one year of inventory management and/or materials handling and restocking experience
  • Excellent customer service skills
  • Ability to use email and minimal word processing skills
  • Ability to self-motivate
  • Ability to learn quickly and adhere to specific protocols
  • Ability to work in a fast-paced and physical environment
  • Ability to adapt and comprehend new computer systems
  • Consistent and reliable work habits
  • Ability to demonstrate leadership
  • Working knowledge of various computer systems, Microsoft Office
  • Ability to follow policies and procedures regarding all aspects of an assignment including basic arithmetic and inventory calculations
  • Ability to speak, read, write, understand, and communicate in English to hospital staff, physicians, and the public
  • Knowledge of computer systems and basic computer skills
  • Knowledge of medical and surgical supplies
  • Must abide by Joint Commission Requirements and SUMC safety guidelines (policy compliance)
  • Replenishes all Supply Chain managed stocking locations with 100% fill accuracy as verified by audits
  • Assists with training and orientation of new staff
  • Partner and coordinate with biomedical services for medical equipment storage and distribution
  • Receives and processes phone orders for supplies, linen, medical gas cylinders, and/or equipment via order entry process
  • Generates appropriate purchase requisitions and enters data into electronic database
  • Follows departmental guidelines for accepting returns of clean, unused, and unopened products
  • Performs breakout of products utilizing sound practices to protect packaging integrity
  • Maintains stocking locations inventories with aid of mobile handheld device
  • Maintains a professional work environment and adheres to attendance policy
  • Manages information using manual or electronic systems for shift work activity
Responsibilities
  • Assists with the training and orientation of new staff
  • Replenishes all Supply Chain managed stocking locations (e.g., PAR locations, asset inventory location, caddies, case carts, procedural carts, crash carts, and bedside carts) for basic bedside patient care and surgical procedures with a fill accuracy rate of 100% as verified by department audits and/or observation of a Lead/Supervisor
  • Conforms to standard procedures and methods used to store and distribute supplies within the applicable Federal, State, and other regulatory agencies including IPC, Joint Commission, AAMI, AORN in alignment with SUMC’s safety guidelines
  • Demonstrates the ability to assess, identify, and respond to urgent or stat requests in an efficient, effective, and appropriate manner
  • Stat request for items, carts, linen, caddies, boxes, crash carts, bedside carts, and case carts are all performed by staff and leads on all shifts by both teams
  • Inventories and restocks all Supply Chain managed locations including but not limited to surgical suites, surgical core supply rooms, clean utility rooms, and asset inventories with the aid of a mobile handheld device
  • Will participate in ongoing training and education needed to perform job related functions
  • Maintains a professional work environment; keeps work area clean and organized. Practices good time management. Maintains professional behavior and appearance. Promotes a positive environment by practicing good communication, diversity awareness, and teamwork
  • Maintains acceptable attendance and punctuality per department policy
  • Manages information utilizing appropriate manual or electronic systems for shift work activity
  • Reports any discrepancies or unusual activities to the Lead/Supervisor
  • Performs correct breakout of all products utilizing sound practices that protect the integrity of the product packaging
  • Ensures timely delivery and pick up of standing and any requested order for supplies, linen, and medical gas cylinders
  • Partner and coordinate with biomedical services to locate, store, maintain, and distribute medical equipment
  • Performs duties by following the policy and procedures of SUMC. Works collaboratively with peers to achieve departmental goals and fulfill the organization’s vision
  • Receives and processes phone orders for supplies, linen, medical gas cylinders, and/or equipment via order entry process. Generates the appropriate purchase requisitions for products needed and sends to appropriate department. Enters in appropriate data into electronic database
  • Performs restocking and/or redistribution of returned products. Follows departmental guidelines for accepting the return of clean, unused, and unopened products
  • Follows recommended practices and ensures proper stock rotation to prevent providing expired products for clinical/surgical use

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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Your Connections

People at Stanford Health Care who can refer or advise you

Benefits

Health Insurance

Paid Vacation

401(k) Retirement Plan

Flexible Work Hours

Remote Work Options

Wellness Program

Mental Health Support

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