Data Engineer with SQL, python, and finance (investment/capital markets) experience || H1B and USC || H4 || TN
Location: New York, NY – 5 days onsite
Duration: 6 months
Contract To Hire
Job Description
Role: Data Engineer Location- New York, NY
JD- Must have finance (investment/capital markets) experience
Job Description :
· We are looking for an experienced Data Engineer with expertise in SQL, python, and strong data modeling skills.
· In this role, you will be at the heart of our data ecosystem, designing and maintaining data pipelines and models that drive decision-making across the organization.
· You will play a key role in ensuring data quality, building scalable systems, and supporting cross-functional teams with clean, accurate, and actionable data. Key Skills: Python, SQL, Snowflake, Pandas, Azure ADF ETL, Data pipelines Behavioral Competencies: Good communication (verbal and written) Experience in managing client stakeholders
Qualifications :
· Bachelor's or master’s degree in computer science, Engineering, or a related field.
· 3+ years of experience in data engineering, with a strong background in building and maintaining data pipelines and ETL processes.
· Strong proficiency in SQL and experience with relational databases. Proficiency with Python. In-depth knowledge of data modeling, ETL processes, and data integration techniques.
· Experience with data warehousing solutions.
· Experience with web-scraping.
· Strong problem-solving skills and the ability to work independently and as part of a team.
· Excellent communication skills, with the ability to collaborate effectively with cross-functional teams.
Responsibilities:
· Design, develop, and maintain scalable and efficient data pipelines and ETL processes.
· Experience with python, SSIS, PDI, Azure Data Factory or other ETL tools.
· Improve data ETL pipeline and build tools to analyze new data efficiently.
· Build technologies to bolster research & trading efficiency.
· Implement best practices for data quality, consistency, and governance across various data sources and systems.
· Implement best practices in Data Engineering to drive innovation and enhance our platform as we scale.
· Manage day-to-day operations in a fast-paced environment.
—
—