SAS Engineer

City of London
3 weeks ago
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SAS SME

London Based - Hybrid Working (2 days on office 3 days WFH)

Contract: £350 to £450 Inside IR35 + 33 Days Holiday Entitlement

A well-established, pioneering IT consultancy is urgently seeking a SAS SME to support large-scale migration projects focused on SAS data and metadata.

As a SAS SME, you will be responsible for migrating SAS data and metadata (Base SAS, SPDS, DI Jobs, SAS Flows) from on-premises to Google Cloud Platform (GCP). You will play a crucial role in ensuring data integrity, performance optimization, and troubleshooting SAS-related issues, including data encoding challenges.

The successful candidate should have the following essential skills

Base SAS, SPDS, and SAS metadata (DI Jobs, SAS Flows)
Data warehousing principles
Strong SQL and SAS Proc SQL experience
Google Cloud Platform (GCP) knowledge
Good working knowledge of Unix/Linux operating systems

Soft Skills

Strong problem-solving ability
High attention to detail
Excellent written and verbal communication skills
Strong stakeholder engagement experience

Location: London (Hybrid - 2 days in office, 3 days WFH)

Contract: £350 to £450 Inside IR35 + 33 Days Holiday Entitlement

If you're a SAS SME looking for your next challenge, apply directly to this advert or send your CV to (url removed)

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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