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Data Engineer - AI/ML

Jupiter IT Solutions LLCTampa, FL🇺🇸United StatesPosted 13 Jul 2026

Why This Role Stands Out

This hybrid Data Engineer role offers a fantastic opportunity to build and scale cutting-edge BI capabilities, leveraging Databricks and AI/ML to drive organizational decisions. You'll thrive here if you have a passion for data engineering best practices combined with applied machine learning and MLOps. Apply now to join a dynamic team and make a significant impact!

Quick Overview

Work Type
Hybrid
Level
Mid Senior

Job Description

 

We have an immediate Fulltime requirement with one of our direct clients, please review the job description and let me know if you are interested.

 

Role: Data Engineer w/Databricks

Location: Tampa, FL

Full Time

 

Job Description:

We are seeking a Data Engineer with strong Databricks expertise to modernize and scale our Business Intelligence (BI) capabilities. This role will design and build data pipelines, deploy machine learning solutions, and operationalize intelligent analytics to drive decision-making across the organization. The ideal candidate blends data engineering best practices with applied machine learning, MLOps, and AI.

 

Key Responsibilities

 

Project Responsibility: End-to-end data pipelines and integrations

 

Technical Competencies:

·       Advanced SQL optimization and complex query design

·       Kafka streaming applications and connector development

·       Databricks workflow development with medallion architecture

·       Data governance implementation and compliance

·       Performance tuning for large-scale data processing

·       Data security and privacy best practices

·       Apache NiFi pipeline development for invoice and PO processing

·       Integration with purpose-built data stores (Druid, MongoDB, OpenSearch, Postgres)

·       Build and maintain end-to-end ML pipelines for training, deployment, and monitoring of models.

·       Design and optimize data architectures for large-scale ML workloads

·       Explore and implement LLM-based solutions, RAG architectures, and generative AI for business use cases.

 

Soft Skills:

·       Cross-functional collaboration with product and engineering teams

·       Technical mentoring for junior data engineers

·       Analytical thinking for complex data problems

·       Stakeholder communication for data requirements

·       Process improvement and efficiency focus

·       Quality mindset for data accuracy and reliability Vendor Management:

·       Direct communication with data platform vendors

·       Evaluates vendor tools for specific data use cases

·       Provides technical feedback on vendor product roadmaps

·       Coordinates with vendors for data integration projects

 

Qualifications:

·       Bachelor’s/Master’s in Computer Science, Data Engineering, Statistics, or related field.

·       5+ years in data engineering; 2+ years applying ML in production.

 

+Benefits

Skills

MongoDB
SQL
MLOps
Machine Learning
Apache
Databricks
Generative AI
Kafka
LLM

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