Dieses Stellenangebot ist nicht mehr verfügbar
Über
Data Engineer is responsible for designing, developing, and maintaining the infrastructure and systems required for data storage, processing, and analysis. They build and manage the data pipelines that enable data integration, transformation, and delivery for data users across the enterprise. The data engineer also creates BI solutions to gain insights, monitor key organizational and operational measures, and provide visibility of system performance to the organization and customers. Responsibilities
Designs and develops data pipelines that extract data from various sources, transform it into the desired format, and load it into the appropriate data storage systems. Integrates data from different sources, including databases, data warehouses, APIs, and external systems. Analyzes, designs, develops, and documents BI solutions based on Information Services standards and best practices. Coordinates with the team to build and share knowledge, ensuring consistent delivery of information. Analyzes, diagnoses, and resolves reporting, ETL, and data issues. Ensures data consistency and integrity during the integration process, performing data validation and cleaning as needed. Transforms raw data into a usable format by applying data cleansing, aggregation, filtering, and enrichment techniques. Optimizes data pipelines and data processing workflows for performance, scalability, and efficiency. Monitors and tunes data systems, identifies and resolves performance bottlenecks, and implements caching and indexing strategies to enhance query performance. Implements data quality checks and validations within data pipelines to ensure the accuracy, consistency, and completeness of data. Qualifications
Required
Bachelor's degree in Computer Science, Information Systems, Mathematics or similar field or equivalent experience. At least six years of work experience in data management disciplines, including data integration, modeling, optimization and data quality, or other areas directly relevant to data engineering responsibilities and tasks. Proven project experience developing and maintaining data warehouses in big data solutions (e.g. Snowflake). Ability to design, build, and deploy data solutions that capture, explore, transform, and utilize data to support AI, ML, and BI. Experience in data science languages/tools such as SQL, Python, R, SAS, or Excel. Proficiency in the design and implementation of modern data architectures and concepts such as cloud services (AWS, Azure, GCP) and modern data warehouse tools (Snowflake, Databricks). Experience with database technologies such as SQL, NoSQL, Oracle, Hadoop, or Teradata. Ability to collaborate within and across teams of different technical knowledge to support delivery and educate end users on data products. Expert problem-solving skills, including debugging skills, allowing the determination of sources of issues in unfamiliar code or systems, and the ability to recognize and solve repetitive problems. Excellent business acumen and interpersonal skills; able to work across business lines at a senior level to influence and effect change to achieve common goals. Ability to describe business use cases/outcomes, data sources and management concepts, and analytical approaches/options. Ability to translate among the languages used by executive, business, IT, and quant stakeholders. Preferred
Knowledge of Apache technologies such as Kafka, Airflow, and Spark to build scalable and efficient data pipelines. Experience in programming languages such as Java, Python, and C/C++. Epic Caboodle Developer Certification.
#J-18808-Ljbffr
Sprachkenntnisse
- English
Hinweis für Nutzer
Dieses Stellenangebot wurde von einem unserer Partner veröffentlicht. Sie können das Originalangebot einsehen hier.