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Remote Databricks Data Engineer Jobs in Atlanta, GA

Senior Data Engineer

Atlanta, GA ยท Remote

$101K - $138K/yr

The Senior Data Engineer is responsible for analyzing, validating, cleansing, and performing ETL of ... Prior law firm or professional services experience beneficial. #LI-Remote The Firm will comply with ...

Data Quality Engineer

Alpharetta, GA ยท Remote

$111K - $134K/yr

... Remote-OH, Remote-PA, Remote-RI, Remote-VA Details Kemper is one of the nation's leading ... Kemper is seeking a Data Quality Engineer specializing in Data Testing and Quality Engineering to ...

Senior Applied AI Engineer

Atlanta, GA ยท On-site +1

$100K - $138K/yr

The hiring team owns a large data store in Databricks Unity Catalog containing all ITSM data that ... This position's work style is remote from any of the locations listed below. You must reside in ...

Senior Applied AI Engineer

Atlanta, GA ยท On-site +1

$100K - $138K/yr

The hiring team owns a large data store in Databricks Unity Catalog containing all ITSM data that ... This position's work style is remote from any of the locations listed below. You must reside in ...

Senior Applied AI Engineer

Atlanta, GA ยท On-site +1

$100K - $138K/yr

The hiring team owns a large data store in Databricks Unity Catalog containing all ITSM data that ... This position's work style is remote from any of the locations listed below. You must reside in ...

New

Data Platform Engineer

Atlanta, GA ยท On-site +1

$110K - $132K/yr

... BigQuery, Databricks) * Familiarity with DevOps practices: CI/CD, containerization (Docker ... All Remote Hires - will be required to travel to Orlando, Florida at least twice per year for Town ...

Data Platform Engineer

Atlanta, GA ยท Remote

$117K - $140K/yr

... BigQuery, Databricks) * Familiarity with DevOps practices: CI/CD, containerization (Docker ... All Remote Hires - will be required to travel to Orlando, Florida at least twice per year for Town ...

Design and evolve data architecture across a Databricks-first lakehouse in a broader Azure ecosystem, understanding both target state and appropriate trade-offs * Partner with engineering teams to ...

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Showing results 1-20

Remote Databricks Data Engineer information

See Atlanta, GA salary details

$42.8K

$124.7K

$170.7K

How much do remote databricks data engineer jobs pay per year?

As of Jul 13, 2026, the average yearly pay for remote databricks data engineer in Atlanta, GA is $124,743.00, according to ZipRecruiter salary data. Most workers in this role earn between $110,100.00 and $132,200.00 per year, depending on experience, location, and employer.

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

To thrive as a Remote Databricks Data Engineer, you need a solid background in data engineering, strong programming skills in Python or Scala, and experience with big data frameworks, often supported by a degree in computer science or a related field. Proficiency with Databricks, Apache Spark, cloud platforms (such as AWS or Azure), and relevant certifications like Databricks Certified Data Engineer are highly valuable. Strong problem-solving abilities, effective remote communication, and collaboration skills set top performers apart in distributed teams. These skills and qualities ensure efficient data pipeline development, seamless integration, and successful project delivery in remote environments.

What is a Remote Databricks Data Engineer?

A Remote Databricks Data Engineer is a professional who designs, develops, and manages large-scale data processing systems using the Databricks platform, often working from a remote location. They focus on building data pipelines, integrating data sources, and optimizing workflows for analytics and machine learning, leveraging tools like Apache Spark within Databricks. These engineers collaborate with data scientists, analysts, and other stakeholders to ensure data is accessible, reliable, and scalable for business needs. Remote roles offer flexibility in work location while still requiring strong communication and technical skills.

What are some common challenges faced by remote Databricks Data Engineers and how can they be addressed?

Remote Databricks Data Engineers often encounter challenges such as coordinating efficiently with distributed teams, managing access to secure data environments, and ensuring smooth pipeline deployments across different cloud platforms. To overcome these, it's important to leverage communication tools for regular check-ins, follow strict data governance protocols, and utilize collaborative features in Databricks such as shared notebooks and version control. Proactively documenting your work and staying updated with platform updates can also help streamline remote collaboration and problem-solving.
What are the most commonly searched types of Databricks Data Engineer jobs in Atlanta, GA? The most popular types of Databricks Data Engineer jobs in Atlanta, GA are:
What are popular job titles related to Remote Databricks Data Engineer jobs in Atlanta, GA? For Remote Databricks Data Engineer jobs in Atlanta, GA, the most frequently searched job titles are:
What job categories do people searching Remote Databricks Data Engineer jobs in Atlanta, GA look for? The top searched job categories for Remote Databricks Data Engineer jobs in Atlanta, GA are:
What cities near Atlanta, GA are hiring for Remote Databricks Data Engineer jobs? Cities near Atlanta, GA with the most Remote Databricks Data Engineer job openings:
Principal Observability Architect (Splunk & Databricks)

Principal Observability Architect (Splunk & Databricks)

Scicom Infrastructure Services

Atlanta, GA โ€ข Remote

Other

Re-posted 7 days ago


Job description

Salary:

Position Summary


We are seeking a highly experienced Principal Observability Architect to lead the design, implementation, modernization, and optimization of enterprise-scale observability and analytics platforms. This role will serve as the technical authority for log management, observability engineering, telemetry pipelines, AIOps, security analytics, and data lakehouse architectures leveraging Splunk, Databricks, Cribl, OpenTelemetry, and cloud-native technologies.

The ideal candidate possesses deep expertise in traditional observability platforms (Splunk, Dynatrace, AppDynamics, ServiceNow ITOM) and modern data lakehouse architectures utilizing Databricks, Delta Lake, Unity Catalog, and AI/ML-driven analytics. This individual will drive the strategic transformation from legacy SIEM and observability platforms toward scalable, cloud-native observability data lakes.


Key Responsibilities


Enterprise Architecture & Strategy

  • Define enterprise observability architecture standards, patterns, and roadmaps.
  • Lead observability transformation initiatives involving Splunk modernization and Databricks adoption.
  • Develop reference architectures for telemetry ingestion, storage, analytics, security, and AI-driven operations.
  • Align observability strategies with business, security, compliance, and operational objectives.
  • Create executive-level architecture presentations, business cases, and technology roadmaps.


Splunk Platform Leadership

  • Architect large-scale Splunk Enterprise and Splunk Cloud environments.
  • Design and optimize:
    • Indexer clusters
    • Search head clusters
    • Forwarder architectures
    • Deployment servers
    • Data models
    • ITSI implementations
  • Define ingestion, retention, indexing, and data lifecycle strategies.
  • Lead migration initiatives involving:
    • Splunk to Databricks
    • Heavy Forwarders to Cribl
    • SIEM modernization programs
  • Optimize SPL searches, data models, summary indexing, and dashboard performance.


Databricks & Lakehouse Architecture

  • Architect enterprise observability data lake solutions using:
    • Databricks Lakehouse
    • Delta Lake
    • Unity Catalog
    • Delta Live Tables
    • Structured Streaming
    • Mosaic AI
    • Genie
  • Design Medallion Architectures:
    • Bronze
    • Silver
    • Gold
  • Develop governance strategies including:
    • RBAC
    • Data masking
    • Data lineage
    • Audit controls
  • Create high-performance log analytics solutions capable of supporting petabyte-scale telemetry environments.
  • Enable self-service analytics and AI-powered observability use cases.


Telemetry & Data Engineering

  • Design ingestion architectures supporting:
    • OpenTelemetry
    • OCSF
    • Syslog
    • Kafka
    • Azure Event Hubs
    • AWS Kinesis
    • GCP Pub/Sub
    • Cribl
  • Define normalization and enrichment frameworks.
  • Establish data quality and schema management processes.
  • Design real-time and batch processing pipelines.


AIOps & Advanced Analytics

  • Lead implementation of:
    • AIOps
    • Predictive analytics
    • Root cause analysis
    • Anomaly detection
    • Event correlation
  • Integrate observability datasets with AI/ML platforms.
  • Develop observability use cases leveraging:
    • Mosaic AI
    • Agentic AI
    • LLMs
    • Generative AI
  • Build operational intelligence and executive KPI dashboards.


Security & Compliance

  • Architect observability solutions supporting:
    • SOC operations
    • Threat hunting
    • Security analytics
    • Compliance reporting
  • Design frameworks aligned with:
    • HIPAA
    • PCI-DSS
    • SOX
    • NIST
    • ISO 27001
  • Implement data governance and security controls across observability platforms.


Leadership & Governance

  • Provide technical leadership to engineering teams.
  • Mentor architects, engineers, and developers.
  • Conduct architecture reviews and design governance.
  • Define platform standards, best practices, and operational procedures.
  • Engage directly with executive stakeholders and business leaders.


Required Qualifications


Experience

  • 10+ years of experience in Enterprise Observability, Monitoring, or Security Analytics.
  • 5+ years architecting large-scale Splunk environments.
  • 3+ years designing Databricks Lakehouse architectures.
  • Experience managing environments exceeding:
    • 50 TB/day preferred
    • 100+ TB/day strongly preferred
  • Experience leading enterprise transformation programs.


Splunk Expertise

Deep expertise in:

  • Splunk Enterprise
  • Splunk Cloud
  • Splunk ITSI
  • Enterprise Security
  • SPL Development
  • Data Models
  • Indexer Clustering
  • Search Head Clustering
  • SmartStore
  • Heavy Forwarders
  • Universal Forwarders

Databricks Expertise

Strong experience with:

  • Databricks Lakehouse
  • Delta Lake
  • Unity Catalog
  • Delta Live Tables
  • Structured Streaming
  • Databricks SQL
  • Genie
  • Mosaic AI
  • Lakehouse Federation

Cloud Platforms

Experience with one or more:

  • Microsoft Azure
  • Amazon Web Services
  • Google Cloud

Data Technologies

Strong knowledge of:

  • Kafka
  • OpenTelemetry
  • OCSF
  • Iceberg
  • Spark
  • SQL
  • Python
  • REST APIs
  • Event Streaming Architectures


Preferred Qualifications

  • Experience with Cribl Stream and Cribl Edge
  • Experience with Dynatrace, AppDynamics, Datadog, or New Relic
  • Experience with ServiceNow ITOM/Event Management
  • Experience designing AI/ML operational analytics solutions
  • Experience with Security Data Lakes and SIEM modernization initiatives
  • Experience with FinOps and cloud cost optimization
  • Experience building observability platforms for healthcare, financial services, retail, or large enterprise organizations


Certifications (Preferred)

Splunk

  • Splunk Enterprise Certified Architect
  • Splunk Core Certified Consultant

Databricks

  • Databricks Certified Data Engineer Professional
  • Databricks Certified Solutions Architect

Cloud

  • Azure Solutions Architect Expert
  • AWS Solutions Architect Professional
  • Google Professional Cloud Architect


Success Metrics

Within the first 12 months, the architect will:

  • Deliver enterprise observability architecture roadmap.
  • Reduce observability platform costs through modernization initiatives.
  • Design and implement a scalable observability data lake architecture.
  • Improve telemetry ingestion performance and reliability.
  • Enable AI-powered analytics and operational intelligence capabilities.
  • Establish enterprise governance standards for observability and security telemetry.
  • Support petabyte-scale observability and security analytics workloads.


Ideal Background

Candidates from organizations utilizing large-scale observability environments such as healthcare, banking, retail, telecommunications, logistics, cloud providers, or managed services organizations are highly desirable. Experience supporting environments generating 100TB+ of telemetry per day and integrating Splunk, Databricks, Cribl, OpenTelemetry, and cloud-native data platforms is strongly preferred.