Job Title: Azure Data Engineer

Location: Raleigh, NC

Duration: 12 Months with possible extensions


*Looking for H4(E.A.D)*

*Send me the resume to [email protected]*



*Main skill:* Data Software Engineering

*Skill Specification:* DSE Python Azure Databricks



*Must have skills:  *Apache Spark, Azure Data Factory, Azure SQL Microsoft,
Azure Synapse Analytics, ETL/ELT Solutions



*Nice to have skills: *Apache Kafka, CI/CD, Python



*Job Description:*

Do you want to design and build next generation business applications using
the latest technologies? Are you confident at iteratively refining user
requirements and removing any ambiguity? Do you like to be challenged and
encouraged to learn and grow professionally?



*Your Expertise:*

   - Expert level skills writing and optimizing complex SQL.
   - Experience with complex data modeling, ETL design, and using large
   databases in a business environment.
   - Experience with building data pipelines and applications to stream and
   process datasets at low latencies.
   - Fluent with Big Data technologies like Spark, Kafka and Hive.
   - Expert level understanding of Azure Data Factory, Azure Synapse, Azure
   SQL, Azure Data Lake, and Azure App Service.
   - Designing and building data pipelines using API ingestion and
   Streaming ingestion methods.
   - Knowledge of Dev-Ops processes (including CI/CD) and Infrastructure as
   code.
   - Experience in developing NoSQL solutions using Azure Cosmos DB.
   - Thorough understanding of Azure and AWS Cloud Infrastructure offerings.
   - Working knowledge of Python is desirable.



*Key Responsibilities:*

   - Design and implement scalable and secure data processing pipelines
   using Azure Data Factory, Azure Databricks, and other Azure services.
   - Manage and optimize data storage using Azure Data Lake Storage, Azure
   SQL Data Warehouse, and Azure Cosmos DB.
   - Monitor and troubleshoot data-related issues within the Azure
   environment to maintain high availability and performance.
   - Implement data security measures, including encryption, access
   controls, and auditing, to protect sensitive information.
   - Automate data pipelines and workflows to streamline data ingestion,
   processing, and distribution tasks.
   - Utilize Azure's analytics services, such as Azure Synapse Analytics,
   to provide insights and support data-driven decision-making.
   - Document data procedures, systems, and architectures to maintain
   clarity and ensure compliance with regulatory standards.
   - Provide guidance and support for data governance, including metadata
   management, data lineage, and data cataloguing.

-- 
You received this message because you are subscribed to the Google Groups 
"Powerbuilder Assignments" group.
To unsubscribe from this group and stop receiving emails from it, send an email 
to [email protected].
To view this discussion visit 
https://groups.google.com/d/msgid/powerbuilder-assignments/CALBV6XwzVkFwr9cm26%3D_rKbushfmSntH6YKA7QMNqNhvdVtVVQ%40mail.gmail.com.

Reply via email to