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Databricks AWS Lead Software Engineer

JPMorgan Chase

Databricks AWS Lead Software Engineer

JPMorgan Chase

Wilmington, DE, United States, US

·

On-site

·

Full-time

·

1w ago

We are seeking a highly skilled Lead Data Engineer with proven experience in Databricks and AWS to join our data engineering team.

As a Lead Software Engineer at JPMorgan Chase within the Corporate Technology Finance team, you are an integral part of an agile team that works to enhance, build, and deliver trusted market-leading technology products in a secure, stable, and scalable way. As a core technical contributor, you are responsible for conducting critical technology solutions across multiple technical areas within various business functions in support of the firm’s business objectives.

Job responsibilities

  • Architect, develop, and optimize large-scale data pipelines and analytics platforms, leveraging Databricks (Spark, Delta Lake) and AWS cloud services
  • Lead a team of data engineers, collaborate with data scientists and business stakeholders, and ensure best practices in data engineering, security, and cloud architecture
  • Design, build, and maintain scalable ETL/ELT data pipelines using Databricks (Spark, Delta Lake) on AWS
  • Architect and implement data lake and data warehouse solutions leveraging AWS services (S3, Glue, Redshift, Lambda, EMR, etc.)
  • Lead and mentor a team of data engineers, providing technical guidance and code reviews
  • Optimize data workflows for performance, reliability, and cost efficiency
  • Collaborate with data scientists, analysts, and business teams to deliver high-quality data products
  • Ensure data quality, security, and compliance with organizational and regulatory standards
  • Drive adoption of best practices in data modeling, version control, CI/CD, and infrastructure-as-code (e.g., Terraform, CloudFormation)
  • Troubleshoot and resolve issues in production data pipelines and analytics platforms

Required qualifications, capabilities, and skills

  • Formal training or certification on software engineering concepts and 5+ years applied experience
  • 10+ years of experience in data engineering
  • Deep hands-on experience with Databricks (Spark, Delta Lake, notebooks, job orchestration)
  • Strong expertise in AWS data ecosystem (S3, Glue, Lambda, IAM, etc.)
  • Proficient in Python and/or Scala for data engineering
  • Experience with SQL, data modeling, and performance tuning
  • Familiarity with CI/CD, DevOps, and infrastructure-as-code in cloud environments
  • Excellent communication and leadership skills
  • Proven leadership experience in leading and mentoring varying levels of software engineers
    Preferred qualifications, capabilities, and skills- Experience with data governance, security, and compliance frameworks
  • Experience with Immuta and Data quality control systems

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About JPMorgan Chase

JPMorgan Chase

JPMorgan Chase is a multinational investment bank and financial services company that provides banking, investment, and asset management services globally. It is one of the largest banks in the United States by assets and market capitalization.

300,000+

Employees

New York City

Headquarters

Reviews

4.2

10 reviews

Work Life Balance

4.2

Compensation

4.3

Culture

4.5

Career

4.4

Management

4.1

75%

Recommend to a Friend

Pros

Good pay and benefits

Work-life balance

Career advancement opportunities

Cons

Heavy workload at times

Career advancement takes time

Pay could be better in some roles

Salary Ranges

47 data points

Junior/L3

Mid/L4

Senior/L5

Junior/L3 · Analyst

21 reports

$126,500

total / year

Base

$110,000

Stock

-

Bonus

-

$95,450

$155,250

Interview Experience

4 interviews

Difficulty

2.8

/ 5

Duration

14-28 weeks

Interview Process

1

Application Review

2

HireVue Video Interview

3

Technical/Behavioral Assessment

4

Final Interview Round

5

Offer Decision

Common Questions

Behavioral/STAR

Technical Knowledge

Past Experience

Culture Fit

Case Study