
B2B • Recruitment • HR Tech
Closing Gap is a growth partner and business services firm that helps companies close execution gaps across talent, technology, marketing, and operations. They provide global outsourcing and managed teams, hiring and staffing (including AI-driven screening and hire-train-deploy programs), digital marketing, business automation, development and testing, technology integrations (Zoho, Power Platform), training/upskilling, and business consulting for startups and SMBs. Closing Gap focuses on connecting organizations with top 1% global talent and delivering data‑driven, scalable solutions to boost efficiency, growth, and competitive advantage.
July 9

B2B • Recruitment • HR Tech
Closing Gap is a growth partner and business services firm that helps companies close execution gaps across talent, technology, marketing, and operations. They provide global outsourcing and managed teams, hiring and staffing (including AI-driven screening and hire-train-deploy programs), digital marketing, business automation, development and testing, technology integrations (Zoho, Power Platform), training/upskilling, and business consulting for startups and SMBs. Closing Gap focuses on connecting organizations with top 1% global talent and delivering data‑driven, scalable solutions to boost efficiency, growth, and competitive advantage.
• Architect, build, and maintain large-scale real-time data pipelines using tools like Kafka, Spark, or Flink for streaming and batch data. • Apply machine learning and statistical modeling to identify anomalies indicative of fraud or financial crime. • Develop robust, scalable features for ML models using structured and unstructured data sources (transactions, logs, behavioral datasets). • Collaborate with Data Scientists to productionize models, monitor performance, and ensure accuracy. • Integrate and optimize fraud detection tools such as DataVisor, FICO, Actimize, or IBM Safer Payments. • Ensure compliance with data security, AML/KYC regulations, and internal governance standards. • Work with product, risk, and engineering teams to translate fraud analytics insights into operational strategies.
• 7+ years in Data Engineering or Data Science, preferably in BFSI. • Strong proficiency in Python and SQL for ETL, data processing, and model support. • Hands-on experience with Kafka, Spark, or Flink for real-time data streaming. • Deep understanding of Fraud Risk Management and Financial Crime Prevention frameworks. • Exposure to fraud tools: DataVisor, FICO, Actimize, IBM Safer Payments, or similar. • Experience in Machine Learning for anomaly detection and predictive modeling. • Strong data architecture skills across data lakes, warehouses, and ETL orchestration. • Familiarity with cloud data ecosystems: AWS, GCP, or Azure. • Experience with statistical analysis, graph models, or unsupervised learning for behavioral insights. • Excellent analytical, problem-solving, and stakeholder communication skills.
• Flexible work arrangements • Professional development opportunities
Apply NowJuly 4
Join e.l.f. Beauty as a Senior Data Architect to lead data architecture initiatives in a high-growth team.
AWS
Azure
Cloud
Distributed Systems
ETL
Google Cloud Platform
Java
Kafka
Python
Scala
SQL
July 4
Join e.l.f. Beauty as a Data Engineer to design and maintain data pipelines and infrastructure.
🇮🇳 India – Remote
💵 ₹3.5M - ₹4.5M / year
💰 $225.2M Post-IPO Secondary on 2017-03
⏰ Full Time
🟠 Senior
🔴 Lead
🚰 Data Engineer
AWS
Azure
Cloud
ETL
Google Cloud Platform
Informatica
Java
Python
SQL
June 19
Senior Data Engineer developing AWS data lakes and ETL pipelines. Collaborating with cross-functional teams on data architecture and AI initiatives.
Airflow
Amazon Redshift
AWS
Cloud
ETL
Python
Spark
SQL
June 18
Lead Data Engineer for a growing team at Forbes Advisor, focusing on data engineering best practices.
Airflow
BigQuery
ETL
Google Cloud Platform
Kafka
Python
Spark
SQL
Tableau
June 11
Inorg Global seeks a Data Engineer to build Databricks pipelines for analytics and ML.
Airflow
Apache
AWS
Azure
Cloud
ETL
Google Cloud Platform
Prometheus
Python
Scala
Spark
SQL