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Cybersecurity Data Analyst Jobs in Raleigh, NC (NOW HIRING)

Carrier Disputes Analyst II

Raleigh, NC · Hybrid

$23.42 - $29.30/hr

This role requires strong analytical and communication skills to interpret usage data, contracts ... cybersecurity, voice, cloud and colocation solutions, all backed by industry-leading service and ...

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Cybersecurity Data Analyst information

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$33K

$80.3K

$132.2K

How much do cybersecurity data analyst jobs pay per year?

As of Jun 10, 2026, the average yearly pay for cybersecurity data analyst in Raleigh, NC is $80,328.00, according to ZipRecruiter salary data. Most workers in this role earn between $60,800.00 and $94,300.00 per year, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Cybersecurity Data Analyst, and why are they important?

To thrive as a Cybersecurity Data Analyst, you need a strong background in data analysis, cybersecurity principles, and a relevant degree such as computer science, information security, or data analytics. Familiarity with SIEM tools (like Splunk or QRadar), programming languages (Python, SQL), and industry certifications (such as CompTIA Security+ or CISSP) is highly valuable. Strong problem-solving, attention to detail, and effective communication skills help you interpret complex data and collaborate across teams. These competencies are crucial for identifying threats, mitigating risks, and ensuring an organization’s digital security.

Can you make $500,000 a year in cyber security?

Cybersecurity Data Analysts typically earn between $70,000 and $130,000 annually, depending on experience, certifications, and location. Reaching a $500,000 salary usually requires advanced roles such as cybersecurity executives or consultants with extensive expertise and leadership responsibilities, often supplemented by bonuses or profit sharing.

Can a data analyst get into cyber security?

A cybersecurity data analyst role involves analyzing security data to identify threats and vulnerabilities, often requiring knowledge of security tools, scripting, and data analysis skills. Transitioning from a data analyst position is common, especially with additional training in cybersecurity concepts, certifications like CompTIA Security+ or CISSP, and familiarity with security platforms and protocols.

What are Cybersecurity Data Analysts?

Cybersecurity Data Analysts are professionals who use data analytics techniques to identify, assess, and mitigate security threats within an organization’s information systems. They analyze large volumes of security data to detect anomalies, investigate incidents, and inform cybersecurity strategies. Their work helps organizations protect sensitive information, maintain compliance, and respond effectively to cyber attacks. Cybersecurity Data Analysts often collaborate with IT and security teams to ensure robust defense mechanisms are in place.

What is the difference between Cybersecurity Data Analyst vs Cybersecurity Analyst?

AspectCybersecurity Data AnalystCybersecurity Analyst
CertificationsCompTIA Security+, CISSP, CEHCompTIA Security+, CISSP, CEH
Work EnvironmentData-focused, analyzing security data and logsSecurity monitoring, incident response
Employer & IndustryTech firms, finance, healthcareIT departments, security firms
Search & Comparison IntentUnderstanding data analysis roles in securitySecurity operations and threat mitigation

While both roles require similar certifications and often work in related environments, the Cybersecurity Data Analyst primarily focuses on analyzing security data to identify trends and vulnerabilities. In contrast, the Cybersecurity Analyst handles real-time security monitoring and incident response. Both roles are vital in protecting organizations but differ in their core responsibilities and daily tasks.

Can I make $200 a year in cyber security?

A cybersecurity data analyst typically earns significantly more than $200 annually; entry-level salaries often start in the tens of thousands of dollars, depending on experience, location, and certifications. Earning potential increases with skills in data analysis, security tools, and relevant certifications like CompTIA Security+ or CISSP.

How does a Cybersecurity Data Analyst typically collaborate with other teams within an organization?

A Cybersecurity Data Analyst often works closely with IT, security operations, and risk management teams to detect, investigate, and respond to security threats. They regularly share insights from data analysis to help refine security policies, support incident response, and inform decision-making processes. Effective communication and collaboration are essential, as analysts must translate complex data findings into actionable recommendations for both technical and non-technical stakeholders. This cross-functional teamwork enhances the organization’s overall security posture.

What does a cybersecurity data analyst do?

A cybersecurity data analyst examines security data to identify vulnerabilities, detect threats, and monitor network activity. They use tools like SIEM systems and perform data analysis to support security decisions, often requiring knowledge of cybersecurity principles and data analysis skills. Their work helps organizations prevent and respond to cyber attacks.
What are popular job titles related to Cybersecurity Data Analyst jobs in Raleigh, NC? For Cybersecurity Data Analyst jobs in Raleigh, NC, the most frequently searched job titles are:
What cities near Raleigh, NC are hiring for Cybersecurity Data Analyst jobs? Cities near Raleigh, NC with the most Cybersecurity Data Analyst job openings:
Infographic showing various Cybersecurity Data Analyst job openings in Raleigh, NC as of June 2026, with employment types broken down into 90% Full Time, 4% Part Time, and 6% Contract. Highlights an 82% Physical, 7% Hybrid, and 11% Remote job distribution, with an average salary of $80,328 per year, or $38.6 per hour.
Data Science / Applied AI Lead

Data Science / Applied AI Lead

First Citizens Bank

Raleigh, NC • On-site

Full-time

Posted yesterday


First Citizens Bank rating

7.6

Company rating: 7.6 out of 10

Based on 103 frontline employees who took The Breakroom Quiz

79th of 141 rated banks


Job description

Overview

Applied AI at First Citizens is not about fitting every problem to the nearest large language model, nor about chasing the latest foundation model release. It is about understanding a meaningful business problem well enough to know what kind of solution it actually calls for — which might be a predictive model, a decision tree, a classical statistical method, a natural language processing approach, a generative AI solution, or no AI at all. That last option is not a failure; it is good judgment.

Not every problem needs AI. Not every AI problem needs GenAI. Holding that standard — and being willing to say so — is central to how this team earns credibility and delivers durable value. Success here is measured by fit-for-purpose solutions, disciplined evaluation, responsible implementation, and outcomes that the bank can actually sustain and stand behind.

The Applied AI / Data Science Lead will provide hands-on execution capacity across data science and generative AI engineering. The role works closely with business product owners, data and technology teams, AI platform partners, and Responsible AI and risk stakeholders to shape use cases, build solutions, establish evaluation methods, and support the path from experimentation to production. This is a senior professional individual contributor role — someone who can independently lead complex technical work, make sound modeling and design decisions, and communicate trade-offs clearly to stakeholders at multiple levels.


Responsibilities

Business Problem Framing and Use Case Shaping

  • Work with business leaders and product owners to identify, assess, and shape high-value data science and AI opportunities across the General Bank, Commercial Bank, and Enterprise Functions.
  • Translate business questions into well-defined analytical problem statements, with clear success measures, data requirements, solution hypotheses, implementation considerations, and expected value outcomes.
  • Assess whether a problem is best addressed through conventional analytics, statistical modeling, machine learning, generative AI, workflow change, or no AI solution at all — and recommend a fit-for-purpose approach grounded in evidence and practicality, not novelty.
  • Support prioritization of AI use cases by evaluating business value, data readiness, implementation feasibility, risk and control implications, operating model requirements, and the ability to measure impact over time.

Solution Design and Hands-On Development

  • Design, build, validate, and refine analytical and AI solutions using appropriate methods: predictive modeling, supervised and unsupervised machine learning, natural language processing, generative AI, retrieval-augmented generation, optimization, or other advanced analytics techniques — selected on the basis of fit, not fashion.
  • Develop data pipelines, features, model prototypes, prompt or retrieval configurations, evaluation datasets, reusable code assets, and supporting documentation required for experimentation and responsible implementation.
  • Establish transparent baselines and, where warranted, challenger approaches so that solution complexity is justified by measurable performance improvement or business value — not technical preference alone.
  • Contribute technical judgment on model selection, vendor capabilities, enterprise platform services, solution architecture, integration needs, and production-readiness considerations.

Evaluation, Measurement, and Responsible Delivery

  • Define and execute fit-for-purpose evaluation plans covering model performance, stability, interpretability, robustness, data quality, user acceptance, operational feasibility, monitoring, and business outcome measurement as appropriate to each use case.
  • For generative AI solutions, develop evaluation approaches for task accuracy, groundedness and faithfulness, retrieval quality, human review effectiveness, harmful output risk, prompt handling, and other use-case-specific performance and control requirements.
  • Partner with Responsible AI, model risk, business risk, compliance, legal, cybersecurity, privacy, and other stakeholders to ensure solutions are developed with appropriate documentation, testing evidence, controls, and ongoing monitoring plans from the start — not retrofitted at the end.
  • Clearly communicate model assumptions, limitations, trade-offs, risks, recommended controls, and decision implications to business and technical stakeholders in language that is accessible, not just technically accurate.

Enterprise AI Platform and Reusable Capabilities

  • Work alongside AI platform and technology partners as the bank's enterprise AI capabilities mature — providing practical requirements from data science delivery and positioning solutions to leverage approved platform services when ready.
  • Develop reusable design patterns, evaluation methods, templates, code assets, and delivery best practices that help the bank build AI solutions more consistently, securely, and efficiently over time.
  • Support technical evaluation of AI tools, technologies, and vendors through objective testing and structured assessment of their relevance to business needs, enterprise architecture, and responsible adoption requirements.
  • Contribute to experimentation and implementation pathways that connect enterprise data, AI models, monitoring, governance evidence, and operational workflows — building the infrastructure for AI at scale, not just one-off solutions.

Stakeholder Partnership and Technical Leadership

  • Collaborate across business, data, technology, architecture, platform, and risk teams to move use cases from early ideas to disciplined experimentation and appropriate implementation — navigating complexity without losing momentum.
  • Present analytical findings, solution alternatives, technical recommendations, risks, and outcomes in clear language for senior partners and decision makers who may not have a technical background.
  • Share knowledge, mentor less experienced analysts through project delivery, and contribute to a team culture built on curiosity, craft, rigor, and honest evaluation of what is working and what is not.
  • Stay current with meaningful developments in AI, ML, GenAI, and advanced analytics while maintaining a pragmatic focus: understanding what is actually ready for enterprise adoption versus what is still better suited to a research paper.

WHAT SUCCESS LOOKS LIKE

  • High-value business problems are translated into sound analytical or AI use cases with clear success measures and realistic implementation paths — including a clear view of what "good enough" looks like and when more complexity is not warranted.
  • Solutions use the right technique for the problem. Model complexity and generative AI are justified by evidence of better outcomes, not by the availability of new technology.
  • Experiments are designed rigorously, documented clearly, and positioned for responsible implementation through genuine partnership with platform, technology, and risk teams.
  • Reusable analytical patterns, evaluation methods, and delivery assets help First Citizens increase speed, consistency, and trust as the bank builds its AI capability over time.

Qualifications

Bachelor's Degree and 6 years of experience in Data management, information technology, financial services, enterprise risk management, or related disciplines with leadership in AI/advanced analytics delivery. OR High School Diploma or GED and 10 years of experience in Data management, information technology, financial services, enterprise risk management, or related disciplines with leadership in AI/advanced analytics delivery.

PREFERRED QUALIFICATIONS AND SKILLS

  • Experience developing, evaluating, and productionizing data science, machine learning, advanced analytics, and/or generative AI solutions that address real business problems in financial services or another regulated enterprise environment.
  • Strong applied knowledge of statistical modeling, supervised and unsupervised machine learning, natural language processing, experimental design, model evaluation, performance monitoring, and production model lifecycle practices.
  • Hands-on experience with Python, SQL, and common data science / ML libraries and frameworks, with the ability to build reusable, maintainable code assets for experimentation, evaluation, deployment support, and monitoring.
  • Practical experience building or supporting AI/ML solutions on cloud and enterprise data platforms, including AWS and Snowflake. Experience with AWS Bedrock for foundation-model application development and Amazon SageMaker for custom ML model development, deployment, monitoring, and lifecycle management is strongly preferred.
  • Experience designing or implementing generative AI solutions using retrieval-augmented generation, vector databases, GraphRAG or knowledge-graph-enhanced retrieval, model orchestration, prompt and context management, and structured output generation.
  • Experience with Snowflake Cortex AI, Snowflake-native AI capabilities, or comparable enterprise AI services is strongly preferred, especially in use cases involving document analysis, text classification, summarization, semantic search, or business workflow enablement.
  • Experience with agentic AI or tool-using LLM patterns, including multi-step workflows, conditional routing, tool/function calling, human-in-the-loop escalation, and observability. Familiarity with frameworks such as LangGraph, LangChain, LlamaIndex, or comparable orchestration tools is valuable.
  • Experience defining and executing evaluation strategies for GenAI and ML solutions, including task accuracy, retrieval quality, groundedness, faithfulness, hallucination risk, robustness, latency, cost, safety, human review effectiveness, and post-production monitoring.
  • Experience with monitoring, observability, and production support practices for AI/ML or GenAI systems, including model performance monitoring, drift detection, logging, tracing, alerting, error analysis, and operational feedback loops. Experience with tools such as SageMaker Model Monitor, Clarify, Langfuse, or comparable monitoring / observability platforms is valuable.
  • Ability to partner effectively with platform engineering, enterprise architecture, data management, cybersecurity, model risk, Responsible AI, technology risk, and business teams to deliver technically sound, scalable, secure, and well-controlled AI solutions.
  • Strong communication, documentation, stakeholder engagement, and problem-framing skills, with the judgment to recommend the right solution for the business problem — whether that is traditional analytics, machine learning, generative AI, workflow automation, or no AI solution at all.

#LI-XG1

Benefits are an integral part of total rewards and First Citizens Bank is committed to providing a competitive, thoughtfully designed and quality benefits program to meet the needs of our associates. More information can be found at https://jobs.firstcitizens.com/benefits.

Qualifications:

Bachelor's Degree and 6 years of experience in Data management, information technology, financial services, enterprise risk management, or related disciplines with leadership in AI/advanced analytics delivery. OR High School Diploma or GED and 10 years of experience in Data management, information technology, financial services, enterprise risk management, or related disciplines with leadership in AI/advanced analytics delivery.

PREFERRED QUALIFICATIONS AND SKILLS

  • Experience developing, evaluating, and productionizing data science, machine learning, advanced analytics, and/or generative AI solutions that address real business problems in financial services or another regulated enterprise environment.
  • Strong applied knowledge of statistical modeling, supervised and unsupervised machine learning, natural language processing, experimental design, model evaluation, performance monitoring, and production model lifecycle practices.
  • Hands-on experience with Python, SQL, and common data science / ML libraries and frameworks, with the ability to build reusable, maintainable code assets for experimentation, evaluation, deployment support, and monitoring.
  • Practical experience building or supporting AI/ML solutions on cloud and enterprise data platforms, including AWS and Snowflake. Experience with AWS Bedrock for foundation-model application development and Amazon SageMaker for custom ML model development, deployment, monitoring, and lifecycle management is strongly preferred.
  • Experience designing or implementing generative AI solutions using retrieval-augmented generation, vector databases, GraphRAG or knowledge-graph-enhanced retrieval, model orchestration, prompt and context management, and structured output generation.
  • Experience with Snowflake Cortex AI, Snowflake-native AI capabilities, or comparable enterprise AI services is strongly preferred, especially in use cases involving document analysis, text classification, summarization, semantic search, or business workflow enablement.
  • Experience with agentic AI or tool-using LLM patterns, including multi-step workflows, conditional routing, tool/function calling, human-in-the-loop escalation, and observability. Familiarity with frameworks such as LangGraph, LangChain, LlamaIndex, or comparable orchestration tools is valuable.
  • Experience defining and executing evaluation strategies for GenAI and ML solutions, including task accuracy, retrieval quality, groundedness, faithfulness, hallucination risk, robustness, latency, cost, safety, human review effectiveness, and post-production monitoring.
  • Experience with monitoring, observability, and production support practices for AI/ML or GenAI systems, including model performance monitoring, drift detection, logging, tracing, alerting, error analysis, and operational feedback loops. Experience with tools such as SageMaker Model Monitor, Clarify, Langfuse, or comparable monitoring / observability platforms is valuable.
  • Ability to partner effectively with platform engineering, enterprise architecture, data management, cybersecurity, model risk, Responsible AI, technology risk, and business teams to deliver technically sound, scalable, secure, and well-controlled AI solutions.
  • Strong communication, documentation, stakeholder engagement, and pro...

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