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Medical Coding Using Ai Jobs in Arizona (NOW HIRING)

From using AI coding assistants to accelerate runbook development, to applying ML-based anomaly detection across logs and metrics, you'll be expected to ask "how can AI help here?" as a first ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Our AI-powered Tutor Copilot enhances your sessions with real-time instructional support, lesson ... Adapts instruction using flashcard systems, body system organization, and medical document reading ...

Gen AI Engineer II

Phoenix, AZ · On-site

$97K - $133K/yr

... improve code quality. * Collaborate with development teams to identify areas where AI tools can enhance productivity and streamline processes. * Develop and maintain best practices for using AI ...

Medical Coder

Tucson, AZ · On-site

$18 - $24/hr

The work involves performing specialized medical record tasks and resolving problems using established processes, coding conventions, and guidelines. Performance of duties reflects directly on ...

AI Engineering Leader

Tempe, AZ · On-site

$98K - $129K/yr

Claude (Claude API / Claude Code) Cursor AI (AI-assisted development workflows) Build and optimize developer workflows using AI-assisted coding tools Required Qualifications 10+ years of overall ...

Senior Clinical Coder

Phoenix, AZ · On-site

$22.25 - $30.50/hr

... medical claims coding using current coding guidelines and support software. • Performs focused outpatient and/or inpatient claims reviews as requested by management and summarizes findings. • ...

Experience using AI tools to accelerate development (e.g., chat-based coding assistants, automation ... Medical, dental, vision, life, STD & LTD plans plus strong maternity, paternity, and adoption ...

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Showing results 1-20

Medical Coding Using Ai information

What is the difference between Medical Coding Using Ai vs Medical Coding Specialist?

AspectMedical Coding Using AiMedical Coding Specialist
CredentialsNone required; relies on AI softwareCertification (e.g., CPC, CCS)
Work EnvironmentPrimarily digital, often remoteOffice or remote, depending on employer
Industry UsageUsed by healthcare providers and tech companiesEmployed by hospitals, clinics, insurance companies
Job FocusAI-driven coding automation and oversightManual coding, review, and compliance

Medical Coding Using Ai involves leveraging artificial intelligence to automate and assist coding tasks, reducing manual effort. In contrast, a Medical Coding Specialist manually reviews and assigns codes based on medical records, requiring certification and expertise. While AI enhances efficiency, specialists ensure accuracy and compliance. Both roles are vital in healthcare billing and coding workflows, often working together to optimize processes.

How does working with AI tools change the daily workflow for medical coders?

Integrating AI tools into medical coding streamlines many routine tasks, such as extracting relevant information from clinical notes and suggesting appropriate codes. This allows medical coders to focus more on complex cases, code validation, and quality assurance. Collaboration with IT specialists and healthcare providers may increase as coders provide feedback on AI system performance and help refine its accuracy. Adapting to new technologies can be a challenge at first, but it often leads to improved productivity, fewer manual errors, and opportunities for professional development in health informatics.

What is medical coding using AI?

Medical coding using AI refers to the application of artificial intelligence technologies to automate the process of translating healthcare diagnoses, procedures, and services into standardized codes. AI-powered systems use natural language processing and machine learning to analyze clinical documentation and accurately assign the appropriate medical codes. This helps healthcare providers improve efficiency, reduce errors, and ensure proper billing and reimbursement. As AI continues to evolve, it is increasingly being integrated into healthcare revenue cycle management to streamline operations and support compliance.

What are the key skills and qualifications needed to thrive as a Medical Coding Using AI specialist, and why are they important?

To thrive as a Medical Coding Using AI specialist, you need a strong understanding of medical terminology, coding standards (like ICD-10 and CPT), and healthcare compliance, often supported by a certification such as CPC or CCS. Familiarity with AI-based coding platforms, electronic health records (EHR) systems, and healthcare data analytics tools is typically required. Analytical thinking, attention to detail, and adaptability are crucial soft skills for interpreting complex records and working with evolving technologies. These skills ensure accurate, efficient coding and compliance with regulations, enabling healthcare organizations to optimize billing and patient care.
What are popular job titles related to Medical Coding Using Ai jobs in Arizona? For Medical Coding Using Ai jobs in Arizona, the most frequently searched job titles are:
What cities in Arizona are hiring for Medical Coding Using Ai jobs? Cities in Arizona with the most Medical Coding Using Ai job openings:
Observability & Operations Engineer

Observability & Operations Engineer

Fullbay

Phoenix, AZ

$69K - $93K/yr

Full-time

Posted yesterday


Job description

Observability & Operations Engineer  

About Us:

Fullbay is a leading SaaS organization dedicated to providing exceptional products/services to our clients. We are passionate about growth, innovation, and delivering top-notch customer experiences. Join our dynamic team and be a part of shaping the future.

Position Overview:

The Observability & Operations Engineer is a key technical contributor who brings an AI-first mindset to maintaining, monitoring, and operating our AWS cloud environment and internal Developer Platform. In this role, you won’t just react to incidents — you’ll leverage AI-powered tooling, intelligent alerting, and automation to get ahead of problems before they impact users. You’ll work deeply across AWS and its PaaS ecosystem, building repeatable, code-first pipelines that treat infrastructure and observability configuration as first-class software. From using AI coding assistants to accelerate runbook development, to applying ML-based anomaly detection across logs and metrics, you’ll be expected to ask “how can AI help here?” as a first instinct. Working within a dedicated platform team, you’ll build the observability foundations that keep our systems fast, reliable, and self-healing.

Primary Duties & Responsibilities:

  • Design and implement a comprehensive observability strategy (logging, metrics, tracing, alerting) across all AWS environments, leveraging AI-powered tools to detect anomalies and surface insights automatically
  • Build and manage monitoring platforms such as Datadog, Grafana, Prometheus, and AWS CloudWatch — actively exploring AI-native features within these tools to reduce alert fatigue and improve signal quality
  • Use AI coding assistants (e.g. GitHub Copilot, Claude) to accelerate development of dashboards, runbooks, and automation scripts
  • Own the incident management lifecycle — on-call rotations, post-mortems, root cause analysis — and apply AI-assisted log analysis to speed up diagnosis and resolution
  • Instrument Java, Kotlin, and Node.js-based cloud-native applications to emit structured logs, distributed traces, and metrics; identify opportunities to use ML-based anomaly detection in place of static thresholds
  • Build repeatable, code-first observability pipelines that treat dashboards, alerts, and runbooks as first-class software — versioned, tested, and deployed through Harness
  • Leverage AWS PaaS services (Lambda, API Gateway, ECS, RDS, SQS, SNS, and others) to build scalable, automated operational tooling
  • Collaborate with development teams to embed observability and AI-assisted quality checks into CI/CD pipelines via Harness
  • Own the FinOps function for our AWS environment — tracking cloud spend, building cost dashboards, identifying waste, and using AI-powered cost analysis tools to surface optimization opportunities and drive accountability across engineering teams
  • Monitor AWS infrastructure for performance, availability, and cost — partnering with finance and engineering to enforce spend governance
  • Develop and maintain Infrastructure as Code using Terraform, using AI pair programming to improve quality and consistency
  • Contribute to architectural decisions with a focus on resilience, automation, and reducing toil through intelligent systems
  • Adheres to all confidentiality and compliance regulations
  • Performs other duties as assigned

Minimum Education & Work Experience:

  • 7–10 years of experience in Software Engineering, Cloud Operations, or Site Reliability Engineering
  • 5+ years of hands-on experience with AWS infrastructure and AWS PaaS services; certifications are a plus
  • Demonstrated experience building repeatable, code-first pipelines and treating operational configuration as first-class software
  • Experience working with polyglot environments including Java, Kotlin, and Node.js
  • Demonstrated experience using AI tools (coding assistants, AI-powered observability platforms, or similar) in a professional setting — we’re an AI-first company and expect this to be part of how you work, not something you’re just exploring

Key Skills and Qualifications:

  • Deep experience with enterprise observability platforms — including AWS-native tooling such as CloudWatch, X-Ray, and OpenTelemetry, or comparable platforms such as Datadog, Grafana, or Prometheus
  • Proficiency with distributed tracing frameworks and log management platforms (e.g. ELK Stack, Splunk, Fluent Bit); experience mapping these patterns to AWS-native tooling is a strong plus
  • Strong understanding of SRE principles including SLOs, SLAs, error budgets, and chaos engineering
  • Hands-on FinOps experience — cloud cost allocation, chargeback modeling, rightsizing, and savings plans optimization across AWS
  • Strong working knowledge of AWS PaaS services including Lambda, API Gateway, ECS, RDS, SQS, SNS, and IAM — and how to leverage them to build scalable operational tooling
  • Experience instrumenting polyglot applications (Java, Kotlin, Node.js) and cloud-native microservices for observability
  • Proven ability to build repeatable, code-first pipelines — treating dashboards, alerts, runbooks, and infrastructure configuration as versioned, testable software
  • Experience with CI/CD tooling, specifically Harness
  • Solid understanding of Infrastructure as Code using Terraform
  • Fluency with AI tools in day-to-day work — whether that’s AI coding assistants, AI-powered monitoring features, or using LLMs to accelerate problem solving; you default to asking “can AI help here?” before doing things the hard way
  • Ability to lead incident response, facilitate blameless post-mortems, and drive long-term reliability improvements
  • Strong collaboration skills for working across platform and product engineering teams
  • Knowledge of containerization technologies and microservices architecture

Physical Demands and Work Environment:

The physical demands described here are representative of those that must be met by an employee to successfully perform the essential functions of this job. Reasonable accommodations may be made to enable individuals with disabilities to perform the essential functions

  • Regularly required to sit at a desk in front of a computer and use hands to finger, handle, or feel objects, tools, or controls (including a computer keyboard and operating a telephone), lift and/or move up to 10 pounds. 
  • Frequently requires the use of hands and arms for reaching, as well as the ability to walk and communicate effectively through speaking and listening.
  • Specific vision abilities required by this position include close vision, color vision, and the ability to adjust focus.   
  • Noise level in the work environment is usually moderate.
  • Type on a computer keyboard and look at a computer monitor, and operate a cell phone or a computer-based phone



Location

Phoenix, Arizona (Remote)

Department

Software Engineering

Employment Type

Full-Time

Minimum Experience

Experienced

Compensation

$131,709.29 - $161,343.88