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Cybersecurity Analyst
Location
United States
Posted
92 days ago
Salary
$80.2K - $133K / year
Seniority
Mid Level
No structured requirement data.
Job Description
Cybersecurity Analyst
Sentara Health
This position is fully remote! Responsible for day-to-day support and optimization of software applications, including builds, upgrades, and system enhancements. Analyzes business / clinical needs, evaluates software releases and/or new products, and gives recommendations to optimize processes and decrease expenses. Possesses in-depth business / clinical and application knowledge and experience. Performs and documents workflow assessments to determine functional requirements for optimal utilization of applications. Develops system test plans and performs testing of software upgrades and patches. Maintains a record of test progress and test results. Responsible for problem, incident, and change management and service requests. Provides daily on-call support to the customer base for application-related issues. Works within a cross-functional team and with end-users to achieve application integration to meet business / clinical needs. Responsible for the communication of software issues, requirements, upgrades, and enhancements. Oversees smaller-sized projects or components of projects. Coordinates implementation or project planning around software application releases. Possesses a key certification(s) or other credential(s) which is determined central to the systems or applications supported. Works independently with general supervision. Problems faced are difficult but typically not complex. May influence others within the job area through explanation of facts, policies, and practices.
Job Requirements
- Bachelor’s degree in Cybersecurity, Computer Science, IT, or a related field; or equivalent experience.
- 3+ years of experience in a SOC, incident response, or health IT cybersecurity role.
- Proven experience with EDR tools and SIEM solutions, with preference for healthcare environments.
- Familiarity with HIPAA and healthcare risk management practices.
- Strong communication, teamwork, and documentation skills; able to communicate effectively with technical and clinical stakeholders.
- Availability to participate in a 24/7 on-call rotation and respond to security incidents outside of standard business hours.
- 3 years of relevant experience with a degree (Required) or 5+ years of relevant experience without a degree (Required).
- Relevant certifications (CISSP, CEH) are preferred.
Benefits
- Medical, Dental, Vision plans
- Adoption, Fertility and Surrogacy Reimbursement up to $10,000
- Paid Time Off and Sick Leave
- Paid Parental & Family Caregiver Leave
- Emergency Backup Care
- Long-Term, Short-Term Disability, and Critical Illness plans
- Life Insurance
- 401k/403B with Employer Match
- Tuition Assistance – $5,250/year and discounted educational opportunities through Guild Education
- Student Debt Pay Down – $10,000
- Reimbursement for certifications and free access to complete CEUs and professional development
- Pet Insurance
- Legal Resources Plan
- Colleagues have the opportunity to earn an annual discretionary bonus if established system and employee eligibility criteria is met.
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