Data Engineer

NEEV LIMITED
London
3 days ago
Create job alert

Role: Data Engineer
Location:?Bournemouth, UK (?5 days per week in the office)
Type: Permanent
Note: VISA Sponsorship is not available
Requirement:
We are seeking a

skilled Data Engineer to join our dynamic team. You will be responsible for designing, building, and maintaining robust data pipelines that power predictive algorithms and business insights. Your work will directly impact the banks ability to manage cash efficiently and make data-driven decisions.
Key Responsibilities
End-to-End Data Pipeline Development
Design, implement, and maintain scalable

ETL/ELT pipelines for collecting, transforming, and delivering data across systems.
Ensure

data quality, reliability, and timeliness throughout the pipeline.
Data Integration & Movement
Develop secure and efficient solutions for

data movement between internal and external systems.
Work with both

structured and unstructured data sources .
Analytical Insights
Analyze large datasets to extract

actionable insights and present findings in a business-friendly format.
Collaborate with

data scientists and business stakeholders to identify opportunities for impactful analysis.
Algorithm Support
Provide clean, well-structured data to support

predictive models and algorithms for cash forecasting and fund movement.
Collaboration & Communication
Work closely with product, engineering, and business teams to understand requirements and deliver solutions.
Document processes and share knowledge with team members.
Required Qualifications
Proven experience in designing and building

data pipelines (ETL/ELT) using modern technologies (Python, SQL, Spark, Airflow, etc.).
Strong analytical skills with the ability to interpret complex data and deliver business value.
Experience integrating data from multiple sources and systems.
Familiarity with

cloud data platforms (AWS, Azure, GCP) and big data technologies.
Ability to work independently and collaboratively in a fast-paced environment.
Excellent communication and documentation skills.
Preferred Qualifications
Awareness or experience with

financial concepts , especially in banking or cash management.
Experience supporting

predictive analytics or machine learning workflows .
Knowledge of

data governance, security, and compliance in financial services.

TPBN1_UKTJ

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