1

Databricks Engineer Jobs in Baltimore, MD (NOW HIRING)

Overview We are seeking a highly skilled Databricks Engineer to design, build, and operate a modern Data & AI Platform leveraging the Medallion Architecture (Bronze, Silver, Gold). This role will ...

These solutions are powered by engineering for business advantage, transforming mission-critical ... Experience with Databricks MLOps or infrastructure setup * Experience coordinating delivery teams ...

Lead Data Engineer

Baltimore, MD · On-site

$101K - $134K/yr

Following the migration to Databricks, MIDAS is entering a critical platform hardening phase ... Define and enforce engineering standards across all Databricks development efforts. * Lead ...

Lead Data Engineer

Baltimore, MD · On-site

$101K - $134K/yr

Following the migration to Databricks, MIDAS is entering a critical platform hardening phase ... Define and enforce engineering standards across all Databricks development efforts. * Lead ...

Lead Data Engineer

Baltimore, MD · On-site +1

$140K - $170K/yr

Following the migration to Databricks, MIDAS is entering a critical platform hardening phase ... The Lead Data Engineer is responsible for defining how the work is executed - not just completing ...

Lead Data Engineer

Baltimore, MD · On-site +1

$140K - $170K/yr

Following the migration to Databricks, MIDAS is entering a critical platform hardening phase ... The Lead Data Engineer is responsible for defining how the work is executed - not just completing ...

next page

Showing results 1-20

Databricks Engineer information

See Baltimore, MD salary details

$59.1K

$110.9K

$201.7K

How much do databricks engineer jobs pay per year?

As of Jun 11, 2026, the average yearly pay for databricks engineer in Baltimore, MD is $110,922.00, according to ZipRecruiter salary data. Most workers in this role earn between $80,000.00 and $131,700.00 per year, depending on experience, location, and employer.

What engineers make $500,000?

Senior engineers in high-demand fields such as software engineering, data engineering, and specialized roles like Databricks Engineers can earn $500,000 or more annually, especially with extensive experience, advanced skills in cloud platforms, and leadership responsibilities. Compensation often includes base salary, bonuses, and stock options, particularly in large tech companies or startups with significant funding.

Is it hard to get hired at Databricks?

Getting hired as a Databricks Engineer can be competitive, as the role requires strong skills in big data technologies, cloud platforms, and programming languages like Python or Scala. Candidates often need relevant experience, certifications, and a solid understanding of data engineering concepts to succeed in the hiring process.

What is the salary of engineer in Databricks?

The salary of a Databricks Engineer typically ranges from $100,000 to $150,000 annually, depending on experience, location, and skill level. Senior roles or those with specialized skills in Spark, cloud platforms, or data engineering may earn higher compensation. Salaries can also vary based on company size and industry demand.

Is Databricks Data Engineer in demand?

Databricks Data Engineers are in high demand due to the increasing adoption of cloud-based data platforms and the need for expertise in big data processing, Spark, and cloud environments. Companies seek professionals skilled in data pipeline development, ETL processes, and cloud tools like AWS or Azure, making this a strong career choice with good job prospects.

What are some common challenges faced by Databricks Engineers when working with large-scale data pipelines?

Databricks Engineers often encounter challenges related to optimizing the performance and reliability of large-scale data pipelines. These can include efficiently managing cluster resources, handling data partitioning to prevent bottlenecks, and troubleshooting job failures due to resource constraints or data quality issues. Collaboration with data scientists, analysts, and DevOps teams is essential to ensure seamless integration and deployment of production workflows. Staying current with evolving Databricks features and best practices also plays a key role in overcoming these challenges.

What is a Databricks Engineer?

A Databricks Engineer is a data engineering professional who specializes in using the Databricks platform to build, manage, and optimize data pipelines and analytics solutions. They work with big data technologies like Apache Spark, Delta Lake, and cloud services to process and analyze large datasets efficiently. Their role often involves developing ETL (extract, transform, load) workflows, setting up data lakes, and ensuring data quality and performance for business intelligence and machine learning applications.

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

To thrive as a Databricks Engineer, you need strong expertise in big data processing, cloud platforms (like AWS or Azure), and proficiency with languages such as Python, SQL, and Scala, often supported by a degree in computer science or a related field. Familiarity with Apache Spark, Databricks Workspace, version control systems like Git, and relevant Databricks certifications are typically required. Strong analytical thinking, collaboration, and effective communication skills help you understand business needs and work seamlessly with data teams. These skills ensure efficient data pipeline development, scalable analytics solutions, and successful integration of Databricks into organizational workflows.
What are popular job titles related to Databricks Engineer jobs in Baltimore, MD? For Databricks Engineer jobs in Baltimore, MD, the most frequently searched job titles are:
What job categories do people searching Databricks Engineer jobs in Baltimore, MD look for? The top searched job categories for Databricks Engineer jobs in Baltimore, MD are:
What cities near Baltimore, MD are hiring for Databricks Engineer jobs? Cities near Baltimore, MD with the most Databricks Engineer job openings:
Infographic showing various Databricks Engineer job openings in Baltimore, MD as of June 2026, with employment types broken down into 94% Full Time, and 6% Contract. Highlights an 74% In-person, 13% Hybrid, and 13% Remote job distribution, with an average salary of $110,922 per year, or $53.3 per hour.
Databricks Engineer

Databricks Engineer

Noblesoft Technologies

Baltimore, MD • On-site

Contractor

Posted 26 days ago


Job description

Role: Databricks Engineer

Location: Baltimore, Maryland

Responsibilities:

1. Data & AI Platform Engineering (Databricks-Centric):

• Design, implement, and optimize end-to-end data pipelines on Databricks, following the Medallion Architecture principles.

• Build robust and scalable ETL/ELT pipelines using Apache Spark and Delta Lake to transform raw (bronze) data into trusted curated (silver) and analytics-ready (gold) data layers.

• Operationalize Databricks Workflows for orchestration, dependency management, and pipeline automation.

• Apply schema evolution and data versioning to support agile data development.

2. Platform Integration & Data Ingestion:

• Connect and ingest data from enterprise systems such as PeopleSoft, D2L, and Salesforce using APIs, JDBC, or other integration frameworks.

• Implement connectors and ingestion frameworks that accommodate structured, semi-structured, and unstructured data.

• Design standardized data ingestion processes with automated error handling, retries, and alerting.

3. Data Quality, Monitoring, and Governance:

• Develop data quality checks, validation rules, and anomaly detection mechanisms to ensure data integrity across all layers.

• Integrate monitoring and observability tools (e.g., Databricks metrics, Grafana) to track ETL performance, latency, and failures.

• Implement Unity Catalog or equivalent tools for centralized metadata management, data lineage, and governance policy enforcement.

4. Security, Privacy, and Compliance:

• Enforce data security best practices including row-level security, encryption at rest/in transit, and fine-grained access control via Unity Catalog.

• Design and implement data masking, tokenization, and anonymization for compliance with privacy regulations (e.g., GDPR, FERPA).

• Work with security teams to audit and certify compliance controls.

5. AI/ML-Ready Data Foundation:

• Enable data scientists by delivering high-quality, feature-rich data sets for model training and inference.

• Support AIOps/MLOps lifecycle workflows using MLflow for experiment tracking, model registry, and deployment within Databricks.

• Collaborate with AI/ML teams to create reusable feature stores and training pipelines.

6. Cloud Data Architecture and Storage:

• Architect and manage data lakes on Azure Data Lake Storage (ADLS) or Amazon S3, and design ingestion pipelines to feed the bronze layer.

• Build data marts and warehousing solutions using platforms like Databricks.

• Optimize data storage and access patterns for performance and cost-efficiency.

7. Documentation & Enablement:

• Maintain technical documentation, architecture diagrams, data dictionaries, and runbooks for all pipelines and components.

• Provide training and enablement sessions to internal stakeholders on the Databricks platform, Medallion Architecture, and data governance practices.

• Conduct code reviews and promote reusable patterns and frameworks across teams.

8. Reporting and Accountability:

• Submit a weekly schedule of hours worked and progress reports outlining completed tasks, upcoming plans, and blockers.

• Track deliverables against roadmap milestones and communicate risks or dependencies.

 

Required Qualifications:

• Hands-on experience with Databricks, Delta Lake, and Apache Spark for large-scale data engineering.

• Deep understanding of ELT pipeline development, orchestration, and monitoring in cloud-native environments.

• Experience implementing Medallion Architecture (Bronze/Silver/Gold) and working with data versioning and schema enforcement in enterprise grade environments.

• Strong proficiency in SQL, Python, or Scala for data transformations and workflow logic.

• Proven experience integrating enterprise platforms (e.g., PeopleSoft, Salesforce, D2L) into centralized data platforms.

• Familiarity with data governance, lineage tracking, and metadata management tools.

Preferred Qualifications:

• Experience with Databricks Unity Catalog for metadata management and access control.

• Experience deploying ML models at scale using MLFlow or similar MLOps tools.

• Familiarity with cloud platforms like Azure or AWS, including storage, security, and networking aspects.

• Knowledge of data warehouse design and star/snowflake schema modeling.