MSDS Alumni Profile: Arnav Boppudi

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Arnav Boppudi MSDSR Student Ambassador

Arnav Boppudi  

Employment
Guidehouse, Data Science Consultant (Tysons, VA)

Education
M.S. in Data Science 2024, University of Virginia
B.A. in Sociology/Drama 2022, University of Virginia

Arnav Boppudi’s path to becoming a Data Science Consultant at Guidehouse highlights the versatility and impact of a data science education. With both undergraduate and graduate degrees from UVA, he has leveraged his skills in data wrangling, statistical analysis, and automation to support federal clients. 

In this Q&A, Boppudi shares insights into his daily work, the lessons from the M.S. in Data Science (MSDS) program that have been most valuable in his career, and how UVA’s collaborative environment helped shape his approach to data science. 

Q: Walk us through what you did at work today.

Today I spent most of my time refining automated workflows that help organize and analyze data for a federal client. We’re using Python to develop scripts that ingest incoming information—making sure it gets routed to the right teams. 

After that, I worked on a data integrity project, comparing records across different systems to identify discrepancies. It’s a great mix of coding, problem-solving, and collaborating with others to decide on the best data strategies.

Q: What did you learn in the MSDS program that you have found most useful in your career so far? And what do you wish you had learned?

The most useful skills have been the fundamentals of data wrangling and statistical analysis (Don Brown’s Bayesian Statistics)—knowing how to explore messy datasets, transform them, and derive insights. The MSDS program’s focus on reproducible research and coding best practices also helps me handle projects efficiently and systematically.

Q: How did the MSDS Capstone project prepare you for your current work?

My Capstone project gave me a strong sense of how to plan and execute a data science initiative from start to finish. We learned to define project goals, gather and clean data, develop models, and finally deploy and present our findings. Those experiences translate directly into my current role, where I need to scope data pipelines, anticipate roadblocks, and collaborate with stakeholders to deliver meaningful results.

Q: Were there specific classes, projects, or professors that you found particularly influential in preparing you for your career?

Big Data Systems with Yue Cheng was extremely influential. It introduced me to cloud computing concepts and large-scale data processing, giving me an early taste of deploying data pipelines in real-world environments. Building on that, my Capstone project offered deeper insights into end-to-end workflows. 

Throughout the program, my classmates were invaluable. Working side-by-side with peers from different academic and professional backgrounds helped me think more holistically—like a true data scientist who can blend technical rigor with creative problem-solving.

Q: What networking opportunities or alumni resources played a role in securing your current position or aiding your professional development?

The UVA network, especially among MSDS alumni, was very supportive. I was eager to land a role and many alumni were open to sharing insights on how to navigate the data science space. I was applying to a lot of government-focused consulting roles, which ultimately guided me toward my current position at Guidehouse.

Q: How do you perceive the impact of your MSDS degree on your career advancement and opportunities?

The MSDS degree has definitely opened doors. It not only equipped me with core technical skills but also signaled to employers that I could handle complex data-related challenges. Within my organization, I’ve been given the flexibility to shape data strategies and implement new technologies, partly because they trust the foundation I gained in the program.

Q: Was there a student experience or classmate/cohort interaction during your time at the School of Data Science that stands out as particularly memorable or transformative for you?

Absolutely. I formed lifelong friendships with people from vastly different backgrounds—computer science, statistics, and non-technical fields—and we collaborated on challenging group projects that exposed me to new ways of thinking. We spent a lot of time together both in and out of the classroom, which made the learning process more engaging and fun. It was transformative to see how our diverse perspectives blended to create stronger, more creative solutions. Those relationships are something I’ll carry with me forever.

Q: As you look ahead, where do you envision yourself professionally in the next 5-10 years? Are there specific career goals, projects, or milestones you aspire to achieve in the coming years?

I see myself continuing to bridge data science and data engineering—leading more strategic initiatives around data infrastructure, automation, and process optimization. I ultimately want to deepen my expertise in machine learning, developing end-to-end solutions that not only harness scalable pipelines but also drive meaningful predictive insights. 

My goal is to incorporate advanced ML techniques and MLOps best practices to help organizations tackle evolving challenges and optimize decision-making processes. I aim to grow as a leader, helping shape data-driven decisions that have tangible impacts in wherever my career takes me. Ultimately, I want to stay on the cutting edge of data innovations, mentoring others along the way and contributing to projects that genuinely make a difference. 

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