Data Architect

Basildon
1 month ago
Applications closed

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Data Architect

Data Architect

Data Architect

Data Architect

Data Architect

Data Architect

We at Coforge are looking for Sr. Data Architect in Basildon, UK.

Role: Senior Cloud and Data Architect

Location: Basildon, UK (3 days/week from office)

Type: Permanent

Responsibilities:

  • 15-20 years of total experience in DWBI, Big Data, Cloud Technologies

  • Implementation experience and hands on experience in either of the 2 Cloud technologies – Azure, AWS, GCP, Snowflake, Databricks

  • Must Have Hands on experience on at least 2 Hyperscalers (GCP/AWS/Azure platforms) and specifically in Big Data processing services (Apache Spark, Beam or equivalent).

  • In-depth knowledge on key technologies like Big Query/Redshift/Synapse/Pub Sub/Kinesis/MQ/Event Hubs, Kafka Dataflow/Airflow/ADF etc.

  • Excellent consulting experience and ability to design and build solutions, actively contribute to RfP response.

  • Ability to be a SPOC for all technical discussions across industry groups.

  • Excellent design experience, with entrepreneurship skills to own and lead solutions for clients

  • Excellent ETL skills, Data Modeling Skills.

  • Ability to define the monitoring, alerting, deployment strategies for various services.

  • Experience providing solution for resiliency, fail over, monitoring etc.

  • Good to have working knowledge of Jenkins, Terraform, StackDriver or any other DevOps tools.

    Requirements:

  • Strong knowledge of database structure systems and data mining.

  • Knowledge of systems development, including system development life cycle, project management approaches and requirements, design and testing techniques

  • Proficiency in data modeling and design, including SQL development and database administration

  • Ability to implement common data management and reporting technologies, as well as the Columnar and NoSQL databases, data visualization, unstructured data, and predictive analytics.

  • A minimum of 5 years’ experience in a similar role.

  • Ability to lead and mentor the architects.

  • Mandatory Skills [at least 2 Hyperscalers]

  • GCP, AWS, Azure, Big data, Apache spark, beam on BigQuery/Redshift/Synapse, Pub Sub/Kinesis/MQ/Event Hubs, Kafka Dataflow/Airflow/ADF

  • Desirable Skills

  • Designing Databricks based solutions for Azure/AWS, Jenkins, Terraform, StackDriver or any other DevOps tools

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