We are looking for a skilled
AI Data Engineer
to join our team and play a key role in building and maintaining
scalable data platforms and AI-ready pipelines
within
banking and payments systems
.
⚙️
Key Responsibilities
-
Build and maintain
data pipelines
(batch, micro-batch, real-time) for banking and payments data
-
Develop
AI-ready datasets
for ML use cases (fraud detection, credit scoring, AML/KYC)
-
Implement
data ingestion frameworks
from multiple sources (core banking, APIs, payment gateways)
-
Design and manage
data storage solutions
(Data Lake / Lakehouse / SQL & NoSQL)
-
Ensure
data quality, consistency, and validation
across workflows
-
Support
feature engineering and ML pipelines
-
Implement
streaming solutions
(Kafka / Event Hub) for real-time processing
-
Optimize performance for handling
large-scale transactional datasets
-
Ensure compliance with
data security and regulations
(PCI DSS, GDPR)
-
Contribute to
CI/CD pipelines and DevOps practices
🛠️
Required Skills
✅ Core:
-
Strong experience in
Python & SQL
-
Hands-on experience with
Spark / Databricks
✅ Data Engineering Tools:
-
Azure Data Factory (ADF)
-
Airflow / DBT / SSIS
✅ Streaming:
✅ Cloud:
-
Azure (preferred)
-
AWS / GCP
✅ Knowledge:
-
Data modeling (OLTP / OLAP)
-
AI/ML data preparation pipelines
-
Handling structured & unstructured data
🏦
Domain Expertise (Must Have)
-
Experience in
Banking / Fintech / Financial Services
-
Strong understanding of:
-
Payment flows
-
Transaction processing
-
ISO 20022 / SWIFT / Card systems
-
Exposure to:
-
Fraud Detection
-
AML / KYC datasets
🎓
Qualifications
-
Bachelor’s in Computer Science / Data Engineering or related field
-
3–5 years of experience
in Data Engineering
-
Banking experience is
highly preferred
⭐
Nice to Have
-
Delta Lake / Lakehouse architecture
-
Real-time analytics / event-driven systems
-
Docker / Kubernetes / DevOps
-
Data governance tools