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GCP Data Engineer - Telecom

Response Informatics
London
1 week ago
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What you’ll be doing


• Managing data into and out of our data warehouse and reporting platforms

to ensure accuracy and efficiency.

• Definition and quality of KPIs that support effective contact centre

operations.

• Delivering data development roadmaps aligned to either our Consumer or

Enterprise business strategies.

• Empowering end users with access to reliable, well-governed data sets in

a secure environment.

• Troubleshooting complex data issues across multiple source systems and

ensuring smooth data operations.

• Leading strategic, cross-functional projects to deliver impactful,

data-driven solutions, while documenting processes for team-wide support.


What skills you’ll need


• Certified Google Cloud (GCP) Data Engineer with strong expertise in data

acquisition, modelling, ETL, and data warehousing.

• Proficient in Terraform, YAML, and GitLab for environment management.

• Skilled in MS SQL, GCP SQL, and Oracle DB design, with a focus on data

quality and governance.

• Strong understanding of contact centre metrics and systems (e.g. WFM,

IVR, Call Routing).

• Proven ability to lead technical teams and deliver end-to-end technology

solutions in operational environments.

• Experienced in using JIRA and Confluence for agile project tracking and

documentation.

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