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Neptune Database Jobs (NOW HIRING)

... drive Neptune's AI transformation initiatives. This role provides direct impact on utility ... scale databases (Redshift, PostgreSQL, MySQL). • Experience with PySpark and distributed ...

Senior Software Engineer C#

Duluth, GA · Remote

$112.80K - $148.60K/yr

Why Join Neptune? * Work on meaningful technology that directly impacts water conservation and ... Databases: MySQL, Redshift, SQL Server * DevOps: Terraform, Docker, ECS, Git Education: Bachelor ...

Neptune Technology Group Inc. is a technology company serving more than 4,000 water utilities ... Azure Certification (Database, AI/ML) * Any Cloud DB Certification Location: Tallassee, Alabama or ...

Infrastructure Database Senior Engineer

Dallas, TX · On-site

$107.80K - $146.50K/yr

... Neptune etc.). * Familiarity with Microsoft DevOps and PowerShell scripting. * Expertise in utilizing IaaS and PaaS services, including database services and Kubernetes. * Understanding of IP ...

Lead Java Developer

Newark, NJ · On-site

$60 - $68/hr

Architect and implement solutions leveraging AWS-native databases, including DocumentDB and Neptune (GraphDB). * Define and enforce best practices around security, performance, and coding standards.

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Neptune Database information

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How much do neptune database jobs pay per hour?

As of Jun 1, 2026, the average hourly pay for neptune database in the United States is $53.12, according to ZipRecruiter salary data. Most workers in this role earn between $43.51 and $60.10 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as an Amazon Neptune Database Engineer, and why are they important?

To excel as an Amazon Neptune Database Engineer, you need a strong background in database design, graph data modeling, and proficiency with query languages like Gremlin and SPARQL, as well as experience with AWS cloud services. Familiarity with tools such as AWS CLI, CloudWatch, and Neptune-specific SDKs or APIs, along with relevant certifications like AWS Certified Database – Specialty, is highly valuable. Strong problem-solving abilities, attention to detail, and effective communication skills are crucial for optimizing performance and collaborating with development teams. These qualifications ensure the effective management of complex graph databases, high system reliability, and seamless integration with enterprise applications.

What are some of the typical challenges faced by professionals working with Neptune Database, and how can they be addressed?

Professionals working with Neptune Database often encounter challenges such as optimizing complex graph queries for performance and managing large-scale data ingestion. To address these, it's important to become familiar with Neptune's indexing strategies and leverage query profiling tools to identify bottlenecks. Collaboration with DevOps and data engineering teams is also key to ensuring smooth deployment and maintenance. Staying updated with AWS documentation and community forums can further help troubleshoot issues efficiently.

What is Neptune Database?

Neptune Database, or Amazon Neptune, is a fully managed graph database service provided by AWS. It is designed to efficiently store and query highly connected data using popular graph models like property graph and RDF (Resource Description Framework). Neptune supports graph query languages such as Gremlin and SPARQL, making it suitable for use cases like knowledge graphs, fraud detection, and network analysis. Its managed nature means AWS handles hardware provisioning, patching, backup, and scaling, allowing users to focus on their applications.

What is the difference between Neptune Database vs Graph Database Developer?

AspectNeptune DatabaseGraph Database Developer
Required CredentialsDatabase certifications, AWS knowledgeDatabase and graph theory certifications
Work EnvironmentCloud-based, AWS platformOn-premises or cloud, various platforms
Employer & Industry UsageAmazon, cloud services, data analyticsTech companies, data-driven industries
Search & Comparison IntentUnderstanding AWS Neptune featuresDeveloping and optimizing graph databases

Neptune Database is a managed graph database service by AWS, focusing on cloud deployment and integration with AWS tools. A Graph Database Developer designs, develops, and maintains graph databases across various platforms. While Neptune is specific to AWS, Graph Database Developers work with multiple graph database technologies like Neo4j or JanusGraph. Both roles require knowledge of graph theory and database management, but Neptune emphasizes cloud skills, whereas Graph Database Developers have broader platform experience.

Infographic showing various Neptune Database job openings in the United States as of May 2026, with employment types broken down into 95% Full Time, 1% Part Time, 1% Temporary, and 3% Contract. Highlights an 96% Physical, 1% Hybrid, and 3% Remote job distribution, with an average salary of $110,489 per year, or $53.1 per hour.
Senior Data Scientist

Senior Data Scientist

neptune technologies

Duluth, GA • On-site

Full-time

Posted 13 days ago


Job description

Position Summary
As a Senior Data Scientist, you will be responsible for designing and implementing machine learning models and data-driven solutions that enhance our water utility intelligence platform and create value for our customers. This position involves working with large-scale IoT data from millions of water meters, developing predictive analytics capabilities, and deploying AI solutions into production environments. You will collaborate with Product Management and Engineering teams to translate business requirements into data science solutions, mentor junior data scientists, and drive Neptune's AI transformation initiatives. This role provides direct impact on utility operations, water conservation efforts, and customer service improvements.

Responsibilities

• Effectively communicate and articulate decisions, designs, and outcomes to stakeholders at all levels of the organization.
• Work with cross-functional teams to deliver high-quality machine learning models and data science solutions.
• Understand and enhance requirements defined by Product Management for AI-powered features.
• Design and implement machine learning models for water consumption forecasting, anomaly detection, leak detection, and predictive maintenance.
• Develop and deploy production-ready machine learning pipelines on cloud infrastructure (AWS).
• Analyze large-scale time-series data from IoT devices and water utility operations.
• Build and optimize data processing workflows using PySpark and distributed computing frameworks.
• Create data visualizations and analytics dashboards to communicate insights to stakeholders.
• Conduct exploratory data analysis to identify patterns, trends, and opportunities in metering data.
• Perform feature engineering and model selection to optimize predictive performance.
• Evaluate model performance and implement monitoring solutions for production ML systems.
• Collaborate with software engineers to integrate ML models into the Neptune 360 platform.
• Provide technical guidance to Product Management on data science capabilities and feasibility.
• Document data science methodologies, model architectures, and analytical findings.
• Stay current with latest developments in machine learning, AI, and data science best practices.
• Mentor junior data scientists and disseminate technical knowledge within the organization.
• Review code and model implementations of other team members.
• Participate in sprint planning and demonstrate completed work at the end of every iteration.
• Work with Python, SQL, PySpark, AWS services (SageMaker, Bedrock, Lambda, Redshift), and ML frameworks.
• Contribute to Neptune's AI strategy and identify new opportunities for data-driven innovation.

Experience
• 5+ years of experience in data science, machine learning, or related analytical roles.
• 5+ years of experience with Python and data science libraries (pandas, NumPy, scikit-learn, TensorFlow/PyTorch).
• Strong experience with SQL and working with large-scale databases (Redshift, PostgreSQL, MySQL).
• Experience with PySpark and distributed computing frameworks for large-scale data processing, including working with common data formats such as JSON and Parquet.
• Proven track record of deploying machine learning models to production environments.
• Experience with cloud platforms, preferably AWS (SageMaker, Bedrock, Lambda, S3, Redshift).
• Experience with time-series analysis and forecasting methods.
• Understanding of MLOps practices and model lifecycle management.
• Experience building RESTful APIs for model serving.
• Strong statistical analysis and experimental design skills.
• Experience with data visualization tools and techniques.
• Experience working in Agile/iterative development environments.
• Ability to communicate complex technical concepts to non-technical stakeholders.
• Experience with version control systems (Git) and CI/CD pipelines.
• Continued professional self-improvement through courses, certifications, or research.
• Preferred: Experience with AWS big data services (Glue, EMR, Athena).
• Preferred: Experience with IoT data, utility operations, or water management systems.
• Preferred: Experience with generative AI and large language models.

Education
Master's or Ph.D. degree in Data Science, Computer Science, Statistics, Mathematics, or related
quantitative field, or combination of Bachelor's degree with equivalent experience.

Location: Duluth, GA

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