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Informatica Cloud Specialist

Change Digital
Edinburgh
9 months ago
Applications closed

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Are you an experienced Informatica Cloud specialist with Data Engineering skills ?Would you like to work for a fast growing business that specialises in Business Intelligence & Data Analytics ?Its a hybrid working role and you will be based from either their London, Leeds, Manchester or Edinburgh office, typically 3 days a week from home and 2 day in office / on client site.Required skills: * Informatica Cloud: Extensive hands-on experience with Informatica Cloud, including building and managing ETL pipelines. * Cloud Integration: Experience with cloud integration platforms, including AWS, Azure, or Google Cloud. * ETL Processes: Proven ability in developing optimal and reliable ETL processes ingested from a wide variety of data sources, both structured and unstructured. * Data Transformation: Strong skills in data transformation, data cleansing, and data mapping using Informatica Cloud tools. * SQL: Advanced working knowledge in SQL and relational databases (e.g., Microsoft SQL Server, Oracle). * Big Data Technologies: Familiarity with big data technologies such as Hadoop, Spark, or Kafka is a plus. * Data Warehousing: Experience in data warehousing, including data modeling and implementing data pipelines. * Data Management: Multi-skilled experience in Data Management, Data Integration, Data Quality, and Data Analytics. * Agile Methodologies: Experience working within Agile, Scrum, or DevOps environments. * Technical Business Analysis: Ability to translate business requirements into technical solutions.Desirable skills: * Experience deploying/provisioning cloud solutions in AWS, Azure, or Google Cloud Platform. * Experience with CI/CD integration. * Familiarity with NoSQL databases or cloud-based data platforms such as Snowflake. * Experience with message queueing and stream processing systems such as Spark-Streaming and Kafka. * Working knowledge of data visualization tools such as Power BI or Tableau. * Capability to articulate and document architectural solutions and processes. * Cross and multi-platform experience. * Financial services sector experience. * Line management and mentoring experience.For more information get in touch asap

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