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Devops Engineer Jobs in Boca Raton, FL (NOW HIRING)

DevOps Architect

Miramar, FL · On-site

$61.50 - $80.75/hr

MUST HAVE: * 3-5 years design and implementation of Continuous Delivery and/or DevOps solutions or architecture patterns. * Hands on Technical experience with: * AWS (Amazon Web Services)

Lead DevOps Architect

Miramar, FL

$61.50 - $80.75/hr

Lead DevOps Architect Location: Miramar, FL Local Required: LOCAL ONLY (already w/in commuting distance) Client: Entertainment/ Lodging Duration: long term contract Interview Type: phone + F2F ...

Lead DevOps Architect

Miramar, FL

$61.50 - $80.75/hr

We are emerging as one of the largest private talent sourcing and management firms in the US Lead DevOps Architect Location: Miramar, FL Duration: - 9+ months (Strong possibility to go more than that ...

... and DevOps teams to establish best practices and enhance test automation frameworks. The ideal candidate has a deep understanding of test automation, API testing, performance testing, and CI/CD ...

Azure Cloud Engineer

Miramar, FL · On-site

$51.75 - $69/hr

Azure certifications (e.g., Azure Solutions Architect, Azure DevOps Engineer) are a plus. EEO Employer Apex Systems is an equal opportunity employer. We do not discriminate or allow discrimination on ...

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Devops Engineer information

See Boca Raton, FL salary details

$15

$57

$81

How much do devops engineer jobs pay per hour?

As of Jul 15, 2026, the average hourly pay for devops engineer in Boca Raton, FL is $57.44, according to ZipRecruiter salary data. Most workers in this role earn between $48.12 and $65.91 per hour, depending on experience, location, and employer.

How do DevOps Engineers typically collaborate with development and operations teams on a daily basis?

DevOps Engineers act as a bridge between development and operations teams by automating workflows, facilitating communication, and ensuring smooth software deployments. On a daily basis, they work closely with developers to integrate code changes, manage CI/CD pipelines, and troubleshoot build or deployment issues. They also collaborate with IT operations to monitor system performance, address infrastructure concerns, and implement security best practices. This collaborative approach helps ensure rapid delivery of reliable software while minimizing downtime.

What are the key skills and qualifications needed to thrive as a DevOps Engineer, and why are they important?

To thrive as a DevOps Engineer, you need a solid understanding of software development, IT operations, automation, and CI/CD practices, often supported by a degree in computer science or related fields. Familiarity with tools such as Jenkins, Docker, Kubernetes, AWS/Azure, and configuration management systems like Ansible or Chef is highly valued, along with relevant certifications (e.g., AWS Certified DevOps Engineer). Strong problem-solving abilities, collaboration, and effective communication are crucial soft skills for bridging development and operations teams. These skills and qualities are important for ensuring efficient software delivery, system reliability, and seamless collaboration across the software development lifecycle.

What Is a DevOps Engineer?

As a DevOps engineer, you collaborate with the IT development and operations teams to oversee the continuous integration of software applications throughout development, deployment, and infrastructure management. Your job duties include coding, scripting, testing, managing hardware and network configurations, logging, and performing health checks. You may be responsible for managing the automation processes between development and operations, and ensuring they work together for code releases. You may use a variety of DevOps tools like Nagios, Docker, and Git.

What are DevOps Engineers?

DevOps Engineers are IT professionals who bridge the gap between software development and operations. They work to automate and streamline the software delivery process by using tools and practices that enable continuous integration, continuous delivery, and quick deployment. Their responsibilities include configuring infrastructure, monitoring systems, managing CI/CD pipelines, and ensuring reliable releases. DevOps Engineers often collaborate with developers, QA, and IT staff to ensure consistent and efficient workflows. Their goal is to improve collaboration, increase deployment speed, and maintain system reliability.
What are the most commonly searched types of Devops Engineer jobs in Boca Raton, FL? The most popular types of Devops Engineer jobs in Boca Raton, FL are:
What are popular job titles related to Devops Engineer jobs in Boca Raton, FL? For Devops Engineer jobs in Boca Raton, FL, the most frequently searched job titles are:
What job categories do people searching Devops Engineer jobs in Boca Raton, FL look for? The top searched job categories for Devops Engineer jobs in Boca Raton, FL are:
What cities near Boca Raton, FL are hiring for Devops Engineer jobs? Cities near Boca Raton, FL with the most Devops Engineer job openings:
Infographic showing various Devops Engineer job openings in Boca Raton, FL as of July 2026, with employment types broken down into 95% Full Time, and 5% Contract. Highlights an 90% In-person, and 10% Remote job distribution, with an average salary of $119,483 per year, or $57.4 per hour.
Machine Learning Operations Engineer

Machine Learning Operations Engineer

Health Business Solutions LLC

Cooper City, FL • On-site

$48.25 - $66.25/hr

Full-time

Re-posted 13 days ago


Job description

We are looking for an MLOps Engineer with deep Databricks experience to build, automate, and scale our machine learning delivery pipelines on the Lakehouse. You’ll own the model lifecycle end‑to‑end—from data ingestion and feature engineering to CI/CD, deployment, monitoring, and governance—ensuring our ML systems are reliable, auditable, secure, and cost‑efficient.

You will partner closely with Leadership, Data Engineers, and subject matter experts to productionize models using Databricks (Delta Lake, Unity Catalog, MLflow, Feature Store, Workflows) and modern DevOps practices across our cloud environments.

Key Responsibilities

Lakehouse & Databricks Platform

  • Design and maintain Databricks workspaces, clusters, SQL Warehouses, cluster policies, and workspace governance (RBAC, SCIM, SSO, secret scopes).
  • Implement robust data pipelines with Delta Lake (ACID tables, Z‑ordering, OPTIMIZE/VACUUM), Delta Live Tables (DAGs, expectations), and Workflows (jobs, task orchestration).
  • Set up Unity Catalog for cross-workspace governance: data & model lineage, permissions, catalogs/schemas, data tags, and auditability.
  • Operationalize ML models using MLflow (tracking, artifacts, metrics, model registry, approvals, stages: Staging/Production).
  • Build/maintain Feature Store entities and feature pipelines; enforce reproducibility and feature governance.
  • Establish model deployment patterns (batch scoring, streaming, microservices) using Model Serving.
  • Create scalable CI/CD for notebooks, repos, and jobs using Azure DevOps, including unit/integration tests, data/feature validation, and registry promotions.
  • Implement data quality and ML quality controls (e.g., Great Expectations/Delta expectations, statistical tests, drift detection, canary releases).
  • Build robust monitoring & alerting for data freshness, pipeline SLAs, model performance, drift, and operational metrics.
  • Optimize performance and cost (autoscaling, spot instances, DBR runtimes, caching, storage tiers).
  • Enforce compliance and security best practices (PII handling, encryption at rest/in transit, network controls, secret management).
  • Partner with data engineers and subject matter experts to standardize templates for experiments, pipelines, model packaging, and deployment.
  • Document patterns and build internal tooling (CLI utilities, Python packages) to streamline model release and observability.
  • Contribute to incident response, post‑mortems, and continuous improvements.

ML Lifecycle & MLOps

  • Operationalize ML models using MLflow (tracking, artifacts, metrics, model registry, approvals, stages: Staging/Production).
  • Build/maintain Feature Store entities and feature pipelines; enforce reproducibility and feature governance.
  • Establish model deployment patterns (batch scoring, streaming, microservices) using Model Serving.
  • Create scalable CI/CD for notebooks, repos, and jobs using Azure DevOps, including unit/integration tests, data/feature validation, and registry promotions.
  • Implement data quality and ML quality controls (e.g., Great Expectations/Delta expectations, statistical tests, drift detection, canary releases).
  • Build robust monitoring & alerting for data freshness, pipeline SLAs, model performance, drift, and operational metrics.
  • Operationalize ML models using MLflow (tracking, artifacts, metrics, model registry, approvals, stages: Staging/Production).
  • Build/maintain Feature Store entities and feature pipelines; enforce reproducibility and feature governance.
  • Establish model deployment patterns (batch scoring, streaming, microservices) using Model Serving.
  • Create scalable CI/CD for notebooks, repos, and jobs using Azure DevOps, including unit/integration tests, data/feature validation, and registry promotions.
  • Implement data quality and ML quality controls (e.g., Great Expectations/Delta expectations, statistical tests, drift detection, canary releases).
  • Build robust monitoring & alerting for data freshness, pipeline SLAs, model performance, drift, and operational metrics.

Infrastructure & Security

  • Optimize performance and cost (autoscaling, spot instances, DBR runtimes, caching, storage tiers).
  • Enforce compliance and security best practices (PII handling, encryption at rest/in transit, network controls, secret management).

Collaboration & Process

  • Partner with data engineers and subject matter experts to standardize templates for experiments, pipelines, model packaging, and deployment.
  • Document patterns and build internal tooling (CLI utilities, Python packages) to streamline model release and observability.
  • Contribute to incident response, post‑mortems, and continuous improvements.


Qualifications

Required

  • BS/MS in Computer Science, Engineering, Data Science, or equivalent practical experience.
  • 3+ years of MLOps/ML Engineering/Platform Engineering experience in Databricks.
  • Hands‑on expertise with Databricks: Delta Lake, Unity Catalog, MLflow (Tracking/Registry), Feature Store, Workflows/Jobs, Repos, and Model Serving.
  • Strong Python engineering skills (packaging, testing, virtual environments); familiarity with Spark (PySpark) and SQL.
  • Experience with CI/CD (GitHub Actions/Azure DevOps/GitLab), artifact registries, and environment management.
  • Solid understanding of data/machine learning pipeline design (batch/streaming), data quality checks, and ML evaluation/monitoring.

Soft Skills

  • Excellent communication and organizational abilities.
  • Ability to work independently and as a part of cross-functional teams.
  • Comfortable operating in a fast-paced, changing environment.
  • Strong analytical and problem-solving skills, with the ability to interpret data and drive recommendations.

HBiz Approval & Disclaimer

This job description is intended to describe the general nature and level of work performed by individuals assigned to this position. It is not intended to be an exhaustive list of all duties, responsibilities, or qualifications required. Responsibilities may change based on business needs, client requirements, or operational priorities.

HBiz reserves the right to modify this job description at any time, with or without notice.

Employment with HBiz is at-will, meaning either the employee or the company may terminate employment at any time, with or without cause or notice, subject to applicable law.

HBiz is an Equal Opportunity Employer and is committed to providing a workplace free from discrimination and harassment. We celebrate diversity and are committed to creating an inclusive environment for all employees.