Capgemini

Analytics Engineer, Service Ops Analytics & AI

Capgemini$90K — $130K *
Enterprise Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • Hands-on experience with SQL, Python, dbt, and Snowflake.
  • Experience in version control systems like Git and workflow management tools such as Airflow.
  • Proven track record in designing and building scalable data pipelines and architectures.
  • Strong grasp of data governance, quality assurance, and performance optimization.
  • Expertise in ETL/ELT processes and data modeling for integrating multiple data sources.
  • Experience with CI/CD workflows and data engineering tools.
  • Strong analytical and problem-solving skills, and the ability to work collaboratively.

Responsibilities

  • Lead the design, development, and deployment of scalable data pipelines for seamless integration and processing.
  • Establish and maintain best practices for data engineering, including coding standards and data governance.
  • Participate in code reviews and contribute to continuous improvement in coding practices and methodologies.
  • Design, build, and maintain ETL/ELT pipelines and libraries for data processing and transformation.
  • Proactively monitor and troubleshoot data pipelines for high availability, reliability, and performance.
  • Implement CI/CD pipelines for streamlined deployment and maintenance of analytics processes.
  • Collaborate with cross-functional teams to translate requirements into actionable data solutions.

Benefits

  • Opportunity to work on innovative AI-driven solutions that enhance customer experience.
  • Exposure to a diverse range of enterprise data sources and advanced analytics tools.
  • Collaboration with a skilled team of data scientists, engineers, and product managers.
  • Chance to establish best practices in a fast-paced data engineering environment.
  • Role contributes significantly to business growth in the Insurance Service industry.
Full Job Description
The goal of analytics engineering team within the Service Analytics and AI organization is to build curated data products leveraging data from structured and unstructured enterprise data sources to enable business intelligence, data science, and advanced analytics.

Seeking a highly skilled and motivated data engineer to join Analytics Engineering team within the Service Analytics and AI organization. This role is pivotal in designing, building, and maintaining scalable data pipelines and analytics solutions that empower Advanced Analytics, Business Intelligence, and Data Science initiatives. You will play a crucial role in building a semantic data layer, defining and implementing cutting-edge data products, and delivering innovative AI-driven solutions that fuel business growth and enhance customer experience.

Requirements

Key Responsibilities
  • Data Pipeline Development: Lead the design, development, and deployment of scalable and robust data pipelines, ensuring seamless data integration and processing across diverse systems.
  • AnalyticsEngineering Best Practices: Establish and uphold best practices for data engineering, including coding standards, data governance, performance optimization, and automation strategies.
  • Code Quality and Review: Participate in code reviews, provide constructive feedback, and contribute to the team's continuous improvement in coding practices and methodologies.
  • ETL/ELT Development: Design, build, and maintain robust ETL/ELT pipelines, reusable frameworks, and libraries to process and transform data from diverse sources, ensuring accuracy, quality, and consistency.
  • System Monitoring: Proactively monitor and troubleshoot data pipelines, ensuring high availability, reliability, and performance across all data engineering workflows.
  • Automation and CI/CD: Implement CI/CD pipelines to streamline the deployment, testing, and maintenance of analytics engineering processes.
  • Cross-functional Collaboration: Partner with data scientists, engineers, analysts, product managers, and business stakeholders to understand requirements, translate them into actionable technical specifications, and deliver impactful data solutions.
  • Stakeholder Communication: Articulate complex technical concepts to non-technical stakeholders, fostering alignment and ensuring a shared understanding of data initiatives across teams.


Qualifications
  • Hands-on experience with SQL, Python, dbt, and Snowflake.
  • Experience in version control systems such as Git, and workflow management tools such as Airflow
  • Proven experience in designing and building scalable data pipelines, and architectures.
  • Strong understanding of data governance, quality assurance, and performance optimization in a data engineering context.
  • Expertise in ETL/ELT processes, data modeling, and integration of data from multiple sources into a data warehouse.
  • Experience with CI/CD workflows and tools for data engineering.
  • Strong problem-solving and analytical skills, with the ability to work effectively in a collaborative environment.


If you are passionate about data engineering and ready to take on a challenging, impactful role, we encourage you to apply. Join us in building the next-gen data ecosystem that powers the future of Insurance Service and Customer Analytics!

About Capgemini

Capgemini is a global leader in consulting, digital transformation, technology and engineering services. The company is headquartered in Paris, France and operates in over 50 countries. Capgemini provides a range of services including strategy and transformation, application services, technology services, and engineering services. The company serves clients in a variety of industries including automotive, consumer products, financial services, healthcare, and retail.
Learn more about Capgemini
Industry
Founded
1967
NASDAQ

Similar Jobs

More Jobs at Capgemini

More Enterprise Technology Jobs

Find similar Analytics Engineer, Service Ops Analytics & AI jobs: