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E Learning Developer Jobs in Hialeah, FL (NOW HIRING)

Corporate AI Facilitator

Miami, FL · On-site

$120K - $162K/yr

... engineering). * Demonstrated ability to teach technical or digital tools to non-technical audiences. * Experience designing blended learning experiences (ILT, VILT, e-learning, microlearning)

Moss is ranked by Engineering News-Record as one of the nation's top 65 general contractors, and ... Partner with Learning Experience Design Team to get eLearning modules developed for Oracle-related ...

Moss is ranked by Engineering News-Record as one of the nation's top 65 general contractors, and ... Partner with Learning Experience Design Team to get eLearning modules developed for Oracle-related ...

Experience - 6 to 8 Years We are seeking a Machine Learning Engineer to design, build, and deploy ... Required Qualifications Strong experience with LLMs (e.g., OpenAI, Anthropic, Llama, Mistral)

For example, we're not looking for career SAP training developers. They need to have worked with ... Not solely e-learning and videos. The Senior Training Specialist's role is to create documentation ...

IT/DevOps Engineer

Fort Lauderdale, FL · On-site

$50.50 - $69/hr

Iterative/agile (e.g. SCRUM, XP) methodologies (1+ years) Technical Requirements / Skills ... SQL Databases, App Insights, Stream Analytics and Machine Learning * Networking / Infrastructure ...

C++ Developer

Miami, FL · On-site

$150K - $250K/yr

Knowledge of third-party libraries (i.e. STL and Boost), linux environments, git * Exceptional ... learning and development perks. Our casual dress code, weekly lunches, and team events foster a ...

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E Learning Developer information

See Hialeah, FL salary details

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$34

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How much do e learning developer jobs pay per hour?

As of Jul 2, 2026, the average hourly pay for e learning developer in Hialeah, FL is $34.81, according to ZipRecruiter salary data. Most workers in this role earn between $29.62 and $38.75 per hour, depending on experience, location, and employer.

What is an E-Learning Developer job?

An E-Learning Developer is responsible for designing, developing, and implementing online learning materials and courses. They use instructional design principles, multimedia tools, and e-learning software to create engaging and interactive content. Their role often involves collaborating with subject matter experts, graphic designers, and other stakeholders to ensure effective learning experiences. Additionally, they may be responsible for maintaining and updating e-learning content to keep it relevant and accessible.

What Does an eLearning Developer Do?

As an eLearning developer, you design and implement the structure of online courses using eLearning tools, such as instructional software and applications. You take the blueprint for the course, including content that has been created by an instructional developer, and design and code the lessons. Your duties and responsibilities are to make the lessons visually appealing and engaging while effectively conveying the lessons to students or users. As an eLearning developer, you may work for an education company or a company that designs instructional tools and solutions for employee training.

What are the key skills and qualifications needed to thrive in the E Learning Developer position, and why are they important?

To thrive as an E Learning Developer, you need expertise in instructional design, multimedia creation, and a solid understanding of adult learning principles, typically supported by a relevant degree like instructional technology or education. Familiarity with Learning Management Systems (LMS) such as Moodle or Canvas, authoring tools like Articulate Storyline or Adobe Captivate, and experience with SCORM or xAPI standards are highly valuable. Strong project management, creative problem-solving, and effective communication skills help you collaborate and translate complex subjects into engaging online content. These competencies are critical for creating high-quality, impactful learning experiences that meet organizational and learner goals.

What are some common challenges E Learning Developers face in this role?

E Learning Developers often encounter challenges such as adapting content to suit diverse learners, ensuring accessibility compliance, and keeping up with rapidly evolving educational technologies. They may need to collaborate closely with subject matter experts who have varying levels of familiarity with digital tools, making clear communication essential. Managing tight project deadlines while maintaining high engagement and interactivity standards can also be demanding. However, overcoming these common challenges can be highly rewarding, as it directly contributes to the effectiveness and reach of educational programs.

What cities near Hialeah, FL are hiring for E Learning Developer jobs? Cities near Hialeah, FL with the most E Learning Developer job openings:
Machine Learning Operations Engineer

Machine Learning Operations Engineer

Health Business Solutions LLC

Cooper City, FL • On-site

$48.25 - $66.25/hr

Full-time

Posted 5 hours 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.