Overview
0.0
Contract - W2
Skills
Python
Amazon EC2
Kubernetes
Apache Spark
Data Analysis
SQL
Databricks
Amazon Web Services
Machine Learning (ML)
Fraud
Risk Assessment
Job Details
Role: Sr Data Engineer
Location: Hybrid (3 days a week onsite)- Mclean, VA or Chicago, IL
Duration: Long Term Contract
Job Description:
Tech Requirements/Must haves:
Python
AWS (Solutions Architect level knowledge - ECS, EC2, etc.)
Kubernetes
Machine Learning practices (databricks, etc)
Spark
Nice to haves (Not Required):
Data analysis experience (SQL)
ML tooling: mlplot; Databricks
AWS solution Architect Cert
Kubeflow
Responsibilities:
Supporting discover integration across all groups and enterprise
Build, train, and deploy machine learning models
Work closely with data scientists
Support models for:
o Credit card decisioning
o Fraud tracking
o Risk assessment
o Partner applications (Kohl's, BJs)
--
Thanks & Regards,
Pallavi Reddy| Technical Recruiter
Thoughtwave Software and Solutions
Desk: , EXTN:167
Email:
Location: Hybrid (3 days a week onsite)- Mclean, VA or Chicago, IL
Duration: Long Term Contract
Job Description:
Tech Requirements/Must haves:
Python
AWS (Solutions Architect level knowledge - ECS, EC2, etc.)
Kubernetes
Machine Learning practices (databricks, etc)
Spark
Nice to haves (Not Required):
Data analysis experience (SQL)
ML tooling: mlplot; Databricks
AWS solution Architect Cert
Kubeflow
Responsibilities:
Supporting discover integration across all groups and enterprise
Build, train, and deploy machine learning models
Work closely with data scientists
Support models for:
o Credit card decisioning
o Fraud tracking
o Risk assessment
o Partner applications (Kohl's, BJs)
--
Thanks & Regards,
Pallavi Reddy| Technical Recruiter
Thoughtwave Software and Solutions
Desk: , EXTN:167
Email:
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.