1

Bank Python Jobs in Illinois (NOW HIRING)

AI Red Team Lead Engineer

Chicago, IL · On-site

$105.60K - $139.10K/yr

... Python, PowerShell, Go, C/C++, Shell) * Ability to translate research into operational tooling * Exceptional written and verbal communication skills This role requires working from a U.S. Bank ...

Acknowledge ( Bank of America employees are required to meet all posting eligibility requirements ... Contribute to automation and integrations using Qualys APIs and scripting (Python, PowerShell, Bash)

Senior Software Engineer

Chicago, IL · On-site

$126.30K - $166.50K/yr

Bank, we're on a journey to do our best. Helping the customers and businesses we serve to make ... Strong proficiency in Python, PySpark, and SQL for large-scale data processing and performance ...

Deposit Growth Studio Analyst

Chicago, IL · Hybrid

$86.36K - $101.60K/yr

Bank, we're on a journey to do our best. Helping the customers and businesses we serve to make ... and Python * Experience with visualization tools such as Power BI and Tableau * Exposure to the ...

Bank, we're on a journey to do our best. Helping the customers and businesses we serve to make ... PYTHON, SNOWFLAKE, SNOWPIPE / SNOWSQL, SNOWPARK, DATA MODELLING, DATA MANAGEMENT, ETL TOOLS (SPARK ...

Scrum Master

Chicago, IL · On-site

$53 - $70.75/hr

Hybrid Somebody with a strong technical project/Program manager with scrum master experince and python is mandatory to have with banking client. Looking for senior Candidates. Minimum Bachelor degree ...

next page

Showing results 1-20

Bank Python information

See Illinois salary details

$12

$56

$83

How much do bank python jobs pay per hour?

As of May 28, 2026, the average hourly pay for bank python in Illinois is $56.81, according to ZipRecruiter salary data. Most workers in this role earn between $46.83 and $64.52 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Bank Python Developer, and why are they important?

To thrive as a Bank Python Developer, you need strong programming skills in Python, expertise in financial data analysis, and a relevant degree in computer science or a related field. Familiarity with SQL databases, version control systems like Git, and experience with financial software or regulatory compliance tools are typically required. Attention to detail, problem-solving abilities, and effective communication are important soft skills that help in collaborating with cross-functional teams and ensuring accuracy. These skills and qualities are crucial to efficiently develop reliable banking applications, maintain system integrity, and adapt to the fast-evolving financial technology landscape.

How do Python developers in banking typically collaborate with other teams, such as risk management or data analysis?

Python developers in banking frequently work in cross-functional teams, collaborating closely with professionals from risk management, data analysis, and operations. They often translate complex business requirements into efficient, automated solutions, such as risk assessment models or data pipelines. Regular meetings, code reviews, and joint project planning are common practices to ensure alignment and compliance with regulatory standards. This collaborative environment not only enhances the quality of deliverables but also provides developers with a broader understanding of banking operations.

What is a Bank Python?

A Bank Python is not a recognized job title within the banking or technology industries. It may refer to a Python developer working in a bank, responsible for building, maintaining, or automating financial applications using the Python programming language. These professionals help streamline banking operations, develop algorithms for financial analysis, and ensure secure data processing. Their work is crucial for enhancing efficiency and accuracy in banking systems.

What is the difference between Bank Python vs Bank Data Analyst?

AspectBank PythonBank Data Analyst
Required CredentialsPython programming skills, possibly certifications in data analysis or programmingDegree in finance, economics, or data analysis; certifications like CFA or data analytics certifications
Work EnvironmentTech-focused teams within banks, working on automation, data processing, and software developmentFinancial institutions, analyzing data to inform business decisions, reporting, and risk assessment
Industry UsageUsed for automating banking processes, developing financial models, and data managementUsed for interpreting financial data, creating reports, and supporting strategic decisions

Bank Python professionals focus on programming and automation within banking systems, while Bank Data Analysts interpret financial data to guide business strategies. Both roles are vital in modern banking but differ in skill sets and daily tasks.

What cities in Illinois are hiring for Bank Python jobs? Cities in Illinois with the most Bank Python job openings:
Lead Software and Data Engineer

Lead Software and Data Engineer

William Blair

Chicago, IL

Other

Posted 11 days ago


Job description

The Investment Banking division has built a differentiated AI foundation: proprietary ML models integrated into CRM workflows, an Azure-based analytics stack, and generative AI solutions deployed across 650+ bankers globally. We are now scaling our Investment Banking AI & Technology team to accelerate the integration of next-generation AI capabilities-anchored by frontier LLMs as the central reasoning engine, augmented by best-in-class point solutions for research and deal execution-into every stage of the banking workflow.

We are looking for a Lead Software & Data Engineer to join the Investment Banking AI & Technology team. You will own the reliability and evolution of our microservices architecture, data pipelines, and data models-ensuring the systems that underpin investment banking workflows are robust, scalable, and fit for purpose. Data engineering and data modeling are central to this role. You will design and maintain the pipelines, schemas, and orchestration patterns that move and shape data across the platform-working closely with stakeholders to ensure data is accurate, accessible, and structured to support downstream analytics and reporting. You will bring rigorous engineering standards to everything you ship: clean code, tested pipelines, and systems built for longevity, not just the immediate need.

Responsibilities may include but are not limited to:

  • Design, build, and maintain production-grade data pipelines in Python-writing clean, modular, well-tested pipeline code that can be owned and extended by the broader team.
  • Lead the migration of existing data processes from Azure Synapse to Dagster, including Synapse Pipelines, Notebooks, Linked Services, and Integration Runtimes, ensuring continuity of data flows throughout the transition.
  • Own and evolve Dagster-based orchestration: asset-based pipelines, sensors, schedules, and Dagster+ Cloud deployments as the primary orchestration standard going forward.
  • Architect and maintain a scalable data lake on ADLS Gen2, including data modeling, ETL/ELT design, and schema governance appropriate for confidential deal information.
  • Support PySpark workloads where required-DataFrames, Spark SQL, and performance tuning-with the majority of pipeline development delivered in Python.
  • Develop Kubernetes-based microservices for data and API workloads, ensuring reliable, scalable deployment of pipeline and application components.
  • Set engineering standards for the Innovation Team: code review practices, CI/CD pipelines, testing frameworks, and documentation norms that enable speed without sacrificing reliability.
  • Leverage AI-assisted development tools-including agentic coding environments such as Claude Code-to accelerate prototyping, code generation, and pipeline development; champion their effective adoption across the team.
  • Work directly with deal teams and industry/sector groups to understand workflows, identify automation opportunities, and iterate on deployed tools based on real-world banker feedback.
  • Perform rapid analysis and prototyping-translate a banker's pain point into a working proof of concept within days, not weeks.
  • Implement security and data governance protocols appropriate for confidential deal information.

Qualifications:

  • Bachelor's degree in Computer Science, Software Engineering, or a related field.
  • 5+ years of software and data engineering experience with a strong foundation in production systems that serve demanding end users.
  • Strong Python proficiency for data engineering: writing clean, production-grade pipeline code, scripting, and package management-Python is the primary development language for this role.
  • Hands-on experience with Dagster for pipeline orchestration: asset-based pipelines, sensors, schedules, and ideally Dagster+ Cloud deployments.
  • Hands-on Azure Synapse experience: Synapse Pipelines, Notebooks, Linked Services, and Integration Runtimes-migration experience strongly preferred.
  • Solid general data engineering fundamentals: data modeling, ETL/ELT design, pipeline orchestration, data lake architecture (ADLS Gen2), and SQL.
  • Working knowledge of PySpark-DataFrames, Spark SQL-sufficient to support and maintain existing distributed workloads.
  • Experience deploying and managing containerized services on Kubernetes, including API microservice development patterns.
  • Comfort working with AI-assisted development tools (e.g. Claude Code, GitHub Copilot) and a track record of using them to ship higher-quality work faster.
  • Rigorous engineering practices: you write tested, reviewed, well-documented code and build systems designed for maintainability, not just demos.
  • Familiarity with capital markets, and preferably direct experience in or adjacent to investment banking, private equity, venture capital, or hedge funds.
  • Experience with Azure cloud infrastructure and Databricks/Spark platform.
  • Outcome orientation-you measure success by business impact delivered, not features shipped.

Preferred Qualifications:

  • Familiarity with Dagster asset-based orchestration, sensors, schedules, and ideally Dagster+ Cloud deployments.
  • Prior work with Salesforce APIs, SOQL, or CRM integration patterns.
  • Contributions to engineering culture: mentoring, establishing best practices, or leading technical design reviews in a small-team environment.

#LI-CH

#LI-HYBRID