Data Science Engineer Intern
Dropbox
Job Overview
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Job Description
Data Science Engineer Intern at Dropbox
Dropbox isn’t just a workplace—it’s a living lab for more enlightened ways of working. We're a global community of bold visionaries and resourceful doers who are shaping the future of Dropbox—and with it the future of work. Our Virtual First model combines the autonomy of a distributed workplace with the power of human connection, making space for both meaningful work and meaningful relationships. With our start-up mindset and enterprise-level opportunities, you can be who you are and grow into who you’re meant to be. Here, you can own your impact to make work more intuitive, joyful, and human—for you as a Dropboxer and for hundreds of millions of people worldwide. If you're ready to push boundaries—and yourself— Dropbox is ready for you.
The Dropbox Emerging Talent program shapes the future of work by empowering the next generation of innovators. We transform potential into impact by connecting exceptional early-career professionals with meaningful challenges that can touch hundreds of millions of lives. Our program allows interns and apprentices to work alongside industry experts, bringing fresh perspectives while solving interesting problems. We foster growth through hands-on learning, dedicated mentorship, and a vibrant community that supports your journey from day one. If you're ready to launch your career in an environment that combines real-world impact with genuine connection, join our Emerging Talent program. We will be hiring for these departments in 2025: Engineering, Customer Experience, Sales, Legal, Office of the CEO
As a Dropbox Data Science Engineer Intern in the Customer Strategy Organization (CSO), you’ll be part of a top-notch learning experience working alongside experienced individuals from diverse backgrounds. You’ll have a dedicated Dropboxer mentoring you every step of the way as you build foundational and practical data engineering skills.
Our goal is to create a robust and impactful learning experience. You can expect to learn how modern data platforms and pipelines are designed, built, and operated to support analytics, data science, and business decision-making across our revenue, marketing, and product teams. We're all about feedback, so anticipate continual guidance refining your approach. And while you're forging your path, we're here to ensure you bond with like-minded interns, discover mentors, and lay the bricks for an expansive professional network.
We will work with you to accommodate your school end and start dates, culminating in a minimum of a 12-week long internship.
In this role, you will work with a wide range of data sources—including customer surveys, support tickets, call transcripts, and product usage data—to help design, build, and maintain reliable data pipelines and datasets. You will gain hands-on experience with data ingestion, transformation, and quality validation.
You are a self-starter with a strong affinity for problem-solving, a solid foundation in programming and data concepts, and an eagerness to learn scalable, production-ready data systems. You bring a curious, detail-oriented mindset and are excited to experiment with new tools, technologies, and engineering patterns.
Responsibilities
- Design, build, and maintain data pipelines that ingest and process structured and unstructured data sources such as surveys, support tickets, call transcripts, and product usage data.
- Develop and experiment with scalable data processing workflows that support downstream analytics, machine learning, and large language model (LLM) use cases.
- Transform, validate, and model large, multi-dimensional customer behavior and usage datasets to ensure they are reliable, well-structured, and analytics-ready.
- Partner with data scientists, analysts, and business stakeholders to enable clear understanding and effective use of data through well-defined datasets, documentation, and data quality standards.
- Document data pipelines, schemas, and engineering best practices, and share learnings within the team to help promote a strong, data-driven culture at Dropbox.
- Collaborate proactively with stakeholders across Customer Experience and Success to understand business needs, translate requirements into technical data solutions, and support accurate and timely data delivery.
Requirements
- Currently enrolled as an undergraduate (sophomore or above) or graduate student, with an expected graduation date of 2027 or later, majoring in Computer Science, Engineering, Information Systems, Data Engineering, or a related technical field.
- Strong written and verbal communication skills, with the ability to explain technical concepts clearly and collaborate effectively with both technical and non-technical partners.
- Familiarity with core data engineering concepts, including data ingestion, transformation, and storage workflows.
- Good programming skills in Python, with experience using libraries commonly used for data processing and pipeline development (e.g., pandas, PySpark, or similar).
Preferred Qualifications
- Experience working with SQL and querying large datasets in relational or cloud-based data warehouses.
- Basic familiarity with data modeling concepts (e.g., dimensional models, schemas) and data quality or validation practices.
Key skills/competency
- Data Pipelines
- ETL
- Data Modeling
- Data Quality
- Analytics
- Machine Learning (ML)
- Large Language Models (LLM)
- Python Programming
- SQL Querying
- Cloud Data Warehouses
How to Get Hired at Dropbox
- Research Dropbox's culture: Study their mission, values, recent news, and employee testimonials on LinkedIn and Glassdoor. Focus on their 'Virtual First' model and commitment to innovation.
- Customize your resume: Highlight relevant projects or coursework in Python, SQL, data structures, and algorithms. Emphasize experience with data ingestion, transformation, or pipeline development to align with Data Science Engineer Intern requirements.
- Showcase data projects: Prepare a portfolio demonstrating your practical skills in data manipulation, analysis, and possibly machine learning. Use platforms like GitHub to display your code and project outcomes.
- Prepare for technical interviews: Expect questions on data engineering fundamentals, SQL querying, Python programming (especially with data libraries), and problem-solving scenarios related to data pipelines and data quality.
- Demonstrate collaboration and communication: Dropbox values teamwork. Be ready to discuss experiences where you collaborated with others, translated technical concepts for non-technical audiences, or contributed to a data-driven culture.
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