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Python Data Analysis Internship Jobs in Naperville, IL

Proficiency in Python, data analysis, visualization, and writing scalable, production-ready code using object-oriented design. * Demonstrated ability to take data science, ML, or causal inference ...

Data Analyst

Chicago, IL

$120K - $170K/yr

Build and maintain automated pipelines supporting Finance and Accounting (SQL, Python, dbt, or ... Experience supporting data-driven processes in Finance, FP&A, Accounting, or similar business ...

Required Qualifications: 3+ Years of experience in Data Analysis and/or Data Science Strong SQL skills Familiarity with DBT is a plus Familiarity with, or the desire to learn Python for data analysis ...

This internship provides hands-on experience across the full data lifecycle, from requirements ... Familiarity with Python, R, or another programming language used for data analysis * Strong ...

Senior Data Analyst - People Analytics

Chicago, IL · On-site

$88K - $111K/yr

... FP&A stakeholders using Qlik or similar BI tools (Tableau, Power BI) * Build and maintain Python ... Ensure data quality, consistency, and reliability across all pipelines and reporting assets * Build ...

Python or R for data transformation and exploratory analysis * Background in Finance, SaaS Operations, or Supply Chain reporting * Sigma Certified Professional credential * Experience embedding Sigma ...

New

Data Analyst

Chicago, IL · On-site

$120K - $170K/yr

Build and maintain automated pipelines supporting Finance and Accounting (SQL, Python, dbt, or ... Experience supporting data-driven processes in Finance, FP&A, Accounting, or similar business ...

Senior Data Analyst

Chicago, IL · On-site

$76K - $100K/yr

... analysis techniques and tools. • Proficiency in SQL and at least one programming language (e.g., Python, R). • Familiarity with data warehousing and ETL processes. • Strong analytical and ...

Senior Data Analyst

Chicago, IL · On-site

$88K - $111K/yr

TITLE: Senior Data Analyst Location: Chicago, IL (some travel to McLean, VA maybe required ... Python / PySpark : Skilled in data processing using Databricks or Jupyter Notebooks. * SQL

Senior Data Analyst

Chicago, IL · On-site

$88K - $111K/yr

... analysis techniques and tools. • Proficiency in SQL and at least one programming language (e.g., Python, R). • Familiarity with data warehousing and ETL processes. • Strong analytical and ...

Manager, Data & Analytics

Chicago, IL · Hybrid

$74K - $138K/yr

Use SQL and Python (or similar programming languages) to extract, analyze, and visualize data. * Build scalable analytical solutions and automate recurring processes. * Collaborate with the Sr. ...

Manager, Data & Analytics

Chicago, IL · On-site

$74K - $138K/yr

Use SQL and Python (or similar programming languages) to extract, analyze, and visualize data. * Build scalable analytical solutions and automate recurring processes. * Collaborate with the Sr. ...

Develop new processes with financial data including but not limited to forecasting, trend analysis ... Knowledge of an analytical language like Python, R, SAS, SPSS, etc. preferred EquipmentShare is ...

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Python Data Analysis Internship information

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How much do python data analysis internship jobs pay per hour?

As of Jun 6, 2026, the average hourly pay for python data analysis internship in Naperville, IL is $22.47, according to ZipRecruiter salary data. Most workers in this role earn between $17.26 and $24.47 per hour, depending on experience, location, and employer.

What is a Python Data Analysis Internship?

A Python Data Analysis Internship is a temporary position, often for students or recent graduates, that provides hands-on experience in analyzing data using the Python programming language. Interns typically assist with collecting, cleaning, and interpreting large datasets, using Python libraries such as pandas, NumPy, and matplotlib. The internship is designed to help participants develop practical skills in data manipulation, statistical analysis, and data visualization. It is a great way to gain real-world experience in data science and analytics while building a professional network.

What are the key skills and qualifications needed to thrive as a Python Data Analysis Intern, and why are they important?

To thrive as a Python Data Analysis Intern, you need a solid understanding of statistics, data manipulation, and Python programming, often supported by relevant coursework or projects. Familiarity with tools such as pandas, NumPy, Jupyter Notebook, and data visualization libraries like matplotlib or seaborn is typically required. Strong analytical thinking, attention to detail, and effective communication skills help interns interpret data and share insights clearly with team members. These skills enable interns to extract actionable insights from complex datasets and effectively contribute to data-driven decision making.

What is the difference between Python Data Analysis Internship vs Data Analyst?

AspectPython Data Analysis InternshipData Analyst
Required SkillsPython, data analysis, basic statisticsData analysis, SQL, Excel, Python (optional)
Work EnvironmentInternship setting, learning-focusedFull-time or part-time professional role
Experience LevelEntry-level, internshipEntry to mid-level professional
Industry UsageInternship programs, entry rolesBusiness, finance, tech, healthcare

While a Python Data Analysis Internship focuses on gaining hands-on experience with Python and data analysis tools in an internship setting, a Data Analyst role involves applying these skills professionally to analyze data, generate reports, and support decision-making in various industries.

What types of projects and tasks can I expect to work on during a Python Data Analysis Internship?

As a Python Data Analysis intern, you can typically expect to work on projects involving data collection, cleaning, and exploration using Python libraries such as Pandas and NumPy. Your daily tasks may include writing scripts to automate data processing, creating visualizations with tools like Matplotlib or Seaborn, and assisting in preparing reports or presentations based on your findings. Interns often collaborate with data scientists, analysts, and sometimes other departments to support ongoing projects and gain exposure to real-world data challenges. This hands-on experience is valuable for building both technical skills and an understanding of how data-driven decisions are made in a professional environment.
What are the most commonly searched types of Python Data Analysis jobs in Naperville, IL? The most popular types of Python Data Analysis jobs in Naperville, IL are:
What are popular job titles related to Python Data Analysis Internship jobs in Naperville, IL? For Python Data Analysis Internship jobs in Naperville, IL, the most frequently searched job titles are:
What job categories do people searching Python Data Analysis Internship jobs in Naperville, IL look for? The top searched job categories for Python Data Analysis Internship jobs in Naperville, IL are:
What cities near Naperville, IL are hiring for Python Data Analysis Internship jobs? Cities near Naperville, IL with the most Python Data Analysis Internship job openings:
Infographic showing various Python Data Analysis Internship job openings in Naperville, IL as of May 2026, with employment types broken down into 99% Full Time, and 1% Part Time. Highlights an 70% Physical, 2% Hybrid, and 28% Remote job distribution, with an average salary of $46,739 per year, or $22.5 per hour.
Senior Staff Data Scientist

Senior Staff Data Scientist

Grubhub

Chicago, IL

Full-time

Medical, Dental, Vision, Retirement

Posted 3 days ago


Grubhub rating

6.7

Company rating: 6.7 out of 10

Based on 11 frontline employees who took The Breakroom Quiz

9th of 22 rated food delivery companies


Job description

About Grubhub

At Grubhub, we believe food is more than just a meal: It's a source of discovery, connection, and pure enjoyment. There's a time and place for every type of dish, from hidden neighborhood gems to tried-and-true favorites, and we exist to connect people with the food they love in all the ways they like to dig in. We've been at it since 2004, but now, as part of Wonder, Grubhub is operating with a renewed sense of momentum and the high-velocity energy of a powerhouse startup.

As a leading U.S. ordering and delivery marketplace, we feature over 415,000 merchants in more than 4,000 cities, creating the ultimate food experience by elevating online ordering through innovative restaurant technology, easy-to-use platforms, and an improved delivery experience. We are constantly finding new ways to innovate-from integrated grocery delivery with groceries powered by Instacart to exclusive loyalty programs. Join our team, based out of New York City, Chicago and Denver, and help us give our diners the exceptional value they deserve.

About the Opportunity

At Wonder Data Science, our mission is to build data science and machine learning systems that improve how our marketplace operates, how customers experience the platform, and how the business makes high-quality decisions. As a Senior Staff Data Scientist, you will go beyond individual problem solving - you will help shape the strategic direction of applied data science, mentor senior and junior scientists, and collaborate closely with engineering, product, operations, and business leaders to move our ML and analytics capabilities toward scalable, production-grade systems.

You will identify high-leverage opportunities across the business, including marketplace efficiency, customer experience, ETA accuracy, fulfillment reliability, pricing strategy, supply planning, demand forecasting, and operational performance. You will design statistically rigorous frameworks to understand causal impact, separate signal from noise, and guide business strategy through experimentation, measurement, and principled inference.

You will help define how we structure trade-offs like customer experience vs. operational efficiency, speed vs. cost, prediction accuracy vs. business impact, short-term metric movement vs. long-term marketplace health, and automation vs. human judgment. You'll prototype, experiment, influence architecture, and ensure we operationalize models and insights that actually move business metrics - not just analyses that look good offline.

The Impact You Will Make

  • Serve as a technical thought leader in Data Science - defining principles, frameworks, and best practices for how Wonder uses data, experimentation, and machine learning to improve customer, marketplace, and business outcomes.

  • Mentor and coach a growing team of Data Scientists and contribute to career development and technical excellence across the group.

  • Lead the exploration of interconnected marketplace systems, recognizing feedback loops between customer behavior, fulfillment reliability, ETA accuracy, pricing, supply planning, product experience, and business performance.

  • Develop causal inference and experimentation frameworks that help Wonder understand which product, operational, and marketplace changes truly drive business impact.

  • Partner with engineering to drive architecture decisions for shared data layers, feature pipelines, modeling APIs, experimentation infrastructure, and production ML services.

  • Define and implement robust experimentation strategies for changes that move business metrics in high-noise environments.

  • Champion business-impact-driven data science, integrating causal inference, experimentation, risk-aware modeling, and scalable production ML systems that learn and adapt.

What You Bring to the Table

  • 8+ years of industry experience with MS or 6+ years with PhD in Statistics, Economics, Applied Mathematics, Computer Science, Data Science, Machine Learning, or a related quantitative field.

  • Proven experience applying data science and machine learning to complex business problems, such as marketplace optimization, customer experience, forecasting, personalization, pricing, supply/demand balancing, operational policy changes, or product experimentation.

  • Deep expertise in causal inference, experimentation, and statistical modeling, including methods such as A/B testing, difference-in-differences, regression discontinuity, instrumental variables, synthetic controls, uplift modeling, or causal impact analysis.

  • Strong intuition for business and product trade-offs - customer experience vs. efficiency, ETA confidence vs. conversion risk, fulfillment reliability vs. cost, marketplace growth vs. quality, and short-term optimization vs. long-term health.

  • Proficiency in Python, data analysis, visualization, and writing scalable, production-ready code using object-oriented design.

  • Demonstrated ability to take data science, ML, or causal inference systems into production, partnering with engineering on architecture, deployment, and monitoring best practices.

  • Fluency in SQL or similar tools for directly interrogating production-scale datasets.

  • Experience mentoring and providing technical direction to other scientists, analysts, or engineers.

Got These? Even Better
  • Experience leading end-to-end design of data science, machine learning, measurement, or experimentation frameworks within marketplace, consumer product, fulfillment, logistics, pricing, forecasting, or operations systems.

  • Experience designing causal measurement strategies for complex systems where product, marketplace, and operational decisions interact across multiple layers.

  • Background in causal inference, econometrics, Bayesian modeling, experimental design, or observational measurement in high-noise environments.

  • Experience with applied experimentation frameworks, including A/B testing, power analysis, heterogeneous treatment effects, guardrail metrics, interference effects, and long-term impact measurement.

  • Experience building or influencing production ML systems that combine predictive modeling, causal measurement, experimentation, and business rules

  • Influence across disciplines - able to align product, engineering, operations, business, and data science around a cohesive ML, experimentation, and measurement strategy.

  • Experience defining strategy and technical roadmaps for data science, machine learning, experimentation, or causal inference platforms.

Our hybrid model requires 3 days a week in the office. That said, many team members choose to come in more often to take advantage of in-person collaboration and connection. You're welcome-and encouraged-to be in the office up to 5 days a week if it works for you.

#LI-Hybrid

New York: $240,000 - $249,500 per year.

Illinois: $216,000 - $224,500 per year.

Wonder uses geographic-specific salary structures, which means the salary offered may vary depending on where the job is located. The final salary offer will take into account various factors, such as the candidate's skills, education, training, credentials, and experience.

Benefits

We offer a competitive salary package including equity and 401K. Additionally, we provide multiple medical, dental, and vision plans to meet all of our employees' needs as well as many benefits and perks that are not listed.

A Final Note

At Wonder, we build the best teams by hiring with an objective lens - evaluating people for their potential while championing diversity, equity, and inclusion. We do not discriminate based on race, color, religion, gender identity or expression, sexual orientation, national origin, age, military service eligibility, veteran status, marital status, disability, or any other protected class. As part of our commitment to fair and compliant hiring practices, Wonder participates in the federal government's E-Verify program to confirm employment eligibility. If you need an accommodation during the interview process, please let your recruiter know.

We look forward to hearing from you! We'll contact you via email or text to schedule interviews and share information about your candidacy.


What Grubhub employees say

Pay

Hours and flexibility

Workplace

Get the full story on Breakroom


Grubhub logo

About Grubhub

Sourced by ZipRecruiter

Grubhub is a leader in the online food delivery industry, primarily functioning in the United States. Headquartered in Chicago, Illinois, it operates in approximately 4,000 U.S. cities. The company provides an online and mobile platform for restaurant pick-up and delivery orders. It was established in 2004 by Matt Maloney and Mike Evans, with the mission of connecting diners with local restaurants. Over the years, Grubhub has been instrumental in streamlining the food order and delivery process. This has enabled it to serve millions of users who can order from their favorite local restaurants through Grubhub's platform. Additionally, Grubhub has increased restaurant reach by providing them with dedicated delivery drivers.

Industry

Internet and it

Company size

1,001 - 5,000 Employees

Headquarters location

Chicago, IL, US

Year founded

2004