Dieses Stellenangebot ist nicht mehr verfügbar
Über
Company Profile NPS Prism is a market‑leading, cloud‑based CX benchmarking and operational improvement platform owned by Bain & Company. It provides customers with actionable insights and analysis that guide the creation of game‑changing customer experiences. Based on rock‑solid sampling, research, and analytic methodology, it lets customers see how they compare to their competitors on overall NPS® and on every step of the customer journey.
Launched in 2019, NPS Prism has rapidly grown to a team of over 200, serving dozens of clients around the world. It is 100% owned by Bain & Company, one of the world's best places to work. We believe that diversity, inclusion, and collaboration are key to building extraordinary teams.
Position Summary We are seeking a highly skilled and experienced Data Engineer to join our team. The ideal candidate will have strong expertise in Python, SQL and PySpark, with proven experience working on Databricks and cloud platforms such as Azure and AWS. A solid understanding of ETL tools and basic knowledge of DevOps practices and CI/CD pipelines will be advantageous. This is a unique opportunity to work in a dynamic and fast‑paced environment to design and implement robust data solutions for scalable business needs.
Key Responsibilities
Design, build, and optimize ETL/ELT workflows using Databricks, SQL, Python/ PySpark, and Alteryx (good to have).
Develop and maintain robust, scalable, and efficient data pipelines for processing large datasets from source to emerging data.
Work on cloud platforms (Azure, AWS) to build and manage data lakes, data warehouses, and scalable data architectures.
Utilize cloud services like Azure Data Factory, AWS Glue for data processing and orchestration.
Use Databricks for big data processing, analytics, and real‑time data processing.
Leverage Apache Spark for distributed computing and handling complex data transformations.
Create and manage SQL‑based data solutions, ensuring high availability, scalability, and performance.
Develop and enforce data quality checks and validation mechanisms.
Collaborate with cross‑functional teams—including data scientists, analysts, and business stakeholders—to deliver impactful data solutions.
Understand business requirements and translate them into technical solutions.
Leverage CI/CD pipelines to streamline development, testing, and deployment of data engineering workflows.
Work with DevOps tools like Git, Jenkins, or Azure DevOps for version control and automation.
Maintain clear documentation for data workflows, pipelines, and processes.
Optimize data systems for performance, scalability, and cost‑efficiency.
Required Qualifications, Experience and Skills Educational Qualifications: Bachelor’s or Master’s degree in Computer Science, Information Technology, Engineering, or a related field.
Experience: 3–6 years of experience in Data Engineering or related roles. Hands‑on experience with big data processing frameworks, data lakes, and cloud‑native services.
Core Skills
Proficiency in Python, SQL, and PySpark for data processing and manipulation.
Proven experience in Databricks and Apache Spark.
Expertise in working with cloud platforms like Azure and AWS.
Sound knowledge of ETL processes and tools like Alteryx (good to have).
Knowledge of data lakes, data warehouses, and data pipelines.
DevOps and CI/CD
Basic understanding of DevOps principles and familiarity with CI/CD pipelines.
Hands‑on experience with tools like Git, Jenkins, or Azure DevOps.
Additional Skills
Familiarity with data visualization tools like Power BI, Tableau, or similar is a plus.
Knowledge of streaming technologies such as Kafka or Event Hubs is desirable.
Strong problem‑solving skills and a knack for optimizing data solutions.
Excellent communication (oral and written) skills.
#J-18808-Ljbffr
Sprachkenntnisse
- English
Hinweis für Nutzer
Dieses Stellenangebot wurde von einem unserer Partner veröffentlicht. Sie können das Originalangebot einsehen hier.