Data Engineer - Informatica & Snowflake

Derisk360 Ltd
London
8 months ago
Applications closed

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Job Title: Data Engineer - Informatica & Snowflake (Fixed-Term Contract | Onshore)

Job Type: Fixed-Term Contract (6/12 Months - Extendable)
Experience: 5+ Years
Industry: IT / Data & Analytics / BFSI Domain

About the Role:

We are looking for a skilled Data Engineer with proven expertise in Informatica and Snowflake to join a high-impact project in the banking and financial services domain. This fixed-term onshore opportunity is ideal for professionals with strong data integration, ETL development, and cloud data warehousing experience.

Key Responsibilities:

  • Design, build, and maintain robust ETL pipelines using Informatica PowerCenter.
  • Implement and manage data solutions using Snowflake for cloud data warehousing.
  • Collaborate with business and technical teams to gather data requirements and translate them into scalable solutions.
  • Ensure data integrity, consistency, and performance through effective pipeline design and tuning.
  • Participate in code reviews, troubleshooting, and production support activities.
  • Follow best practices for data governance, security, and compliance.

Key Skills & Qualifications:

  • Minimum 5 years of hands-on experience in data engineering roles.
  • Expertise in Informatica PowerCenter (ETL development and deployment).
  • Strong working knowledge of Snowflake (data modeling, performance tuning, SQL).
  • Solid understanding of data architecture, pipelines, and warehousing concepts.
  • Experience in large-scale data environments, preferably within BFSI or enterprise domains.
  • Excellent communication, analytical, and problem-solving skills.

Good to Have:

  • Exposure to cloud platforms (AWS, Azure, GCP).
  • Scripting knowledge (e.g., Python, Shell) for automation.
  • Understanding of data security and compliance frameworks.


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