Lead Consultant

N Consulting Ltd
Edinburgh
1 year ago
Applications closed

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JOB DETAILS
Role Title:Lead Consultant 
Possibility of remote work: Hybrid
Contract duration: 6 months
Location: Edinburgh


Required Core Skills:
• Oracle as primary skill and SnowflakeOther Data Engineering as secondary
• Strong handson Oracle PLSQL development and Performance tuning skills
• Should ideally have some solution design experience
• Agile methodologies
• CI CD pipelines

Minimum years of experience: 10 years

Areas of responsibility:
Strong knowledge of security frameworks, including OAuth, IAM, and OpenID Connect.
candidate is expected to have some experience working in a Software Development
Banking and lending experience preferred.

Detailed Job Description:
Oracle as primary skill and SnowflakeOther Data Engineering as secondaryStrong handson Oracle PLSQL development and Performance tuning skills. 
This person should ideally have some solution design experience or be able to design based on the requirementsdiscussions with crossfunctional teams ifwherever needed. 
The candidate is expected to have some experience working in a Software DevelopmentWeb applicationbased Agile project.
UK experience is a must .

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