About Niche
Niche is the leader in school search. Our mission is to make researching and enrolling in schools easy, transparent, and free. With in-depth profiles on every school and college in America, 140 million reviews and ratings, and powerful search tools, we help millions of people find the right school for them. We also help thousands of schools recruit more best-fit students, by highlighting what makes them great and making it easier to visit and apply.
Niche is all about finding where you belong, and that mission inspires how we operate every day. We want Niche to be a place where people truly enjoy working and can thrive professionally.
About The Role
**We are currently recruiting for this role in Argentina and Brazil only. We will not be considering US based candidates at this time. All interviews are being held remotely. If there are preparations we can make to help ensure you have a comfortable and positive interview experience, please let us know.**
**Only applications/resumes written in English will be accepted.**
We are looking for a skilled Senior Data Engineer to join the Data Engineering team. You’ll build and support data pipelines that can handle the volume and complexity of data while ensuring scale, data accuracy, availability, observability, security, and optimum performance. You’ll be developing and maintaining data warehouse tables, views, and models, for consumption by analysts and downstream applications. As a Senior Data Engineer, you will also get to own and lead workstreams while driving results through self or through your team. This is an exciting opportunity to join our team as we’re building the next generation of our data platform, and engineering capabilities. You’ll be reporting to the Head of Data Engineering.
What You Will Do
During the First Month:
- Learn about Niche by meeting with various team members to learn more about our company through our Onboarding meetings
- Immerse yourself in the company culture, and get to know your team and key stakeholders
- Build relationships with data engineering team members, understand the day to day operating model, and stakeholders that we interact with on a daily basis
- Start to learn about our data platform infrastructure, data pipelines, source systems, and inter-dependencies
- Start participating in standups, planning, and retrospective meetings
Within 3 Months:
- Participate in periodic data engineering activities, e.g. monthly insights reporting, profile data updates, etc
- Start delivering on assigned data engineering tasks to support our day to day, and roadmap
- Start troubleshooting production issues, and participating in on-call activities
- Identify several areas for improving data engineering processes, and share with the team
Within 6 Months:
- Contribute consistently towards building our data platform, which includes data pipelines, and data warehouse layers
- Independently own and lead workstreams whether it is periodic data engineering activities, or work items in support of our roadmap
- Deepen your understanding, and build subject matter expertise of our data & ecosystem
Within 12 Months:
- Your contributions have led to us making significant progress in implementing the data platform strategy, and key data initiatives to support the company's growth
- You’ve established yourself as a key team member with subject matter expertise within data engineering
What We Are Looking For
- Bachelor’s degree in Computer Science, Data Science, Information Systems, or a related field
- 6+ years of experience in data engineering
- Demonstrated experience of building, and supporting large scale data pipelines - streaming and batch processing
- Software engineering mindset, leading with the principles of source control, infrastructure as code, testing, modularity, automation, CI/CD, and observability
- Proficiency in Python, SQL, Snowflake, Postgres, DBT, Airflow, Docker, Kubernetes, Kafka
- Experience of working with Google Analytics, Marketing, Ad & Social media platform, CRM/Salesforce, and JSON data; Government datasets, and geo-spatial data will be a plus
- Knowledge and understanding of the modern data platform, and its key components - ingestion, transformation, curation, quality, governance, and delivery
- Knowledge of data modeling techniques (3NF, Dimensional, Vault)
- Self-starter, analytical problem solver, highly attentive to detail, effective communicator, and obsessed with good documentation
- Familiarity with Agile product management principles will be a plus
Interview Process
Candidate experience is a top priority for our talent and hiring teams. We believe in providing a transparent, authentic and comprehensive interview process where you have the opportunity to learn about us while we get to know you and your experience. The interview process is outlined here:
Phone Screen with Talent Acquisition Partner - 30 Minutes
Video Interview with Hiring Manager - 30 Minutes
- Code Test - 1 Week
Team Interview - 45 Minutes
**We are currently recruiting for this role in Argentina and Brazil only. We will not be considering US based candidates at this time. All interviews are being held remotely. If there are preparations we can make to help ensure you have a comfortable and positive interview experience, please let us know.**
**Only applications/resumes written in English will be accepted.**
Similar Jobs
What you need to know about the Chicago Tech Scene
Key Facts About Chicago Tech
- Number of Tech Workers: 245,800; 5.2% of overall workforce (2024 CompTIA survey)
- Major Tech Employers: McDonald’s, John Deere, Boeing, Morningstar
- Key Industries: Artificial intelligence, biotechnology, fintech, software, logistics technology
- Funding Landscape: $2.5 billion in venture capital funding in 2024 (Pitchbook)
- Notable Investors: Pritzker Group Venture Capital, Arch Venture Partners, MATH Venture Partners, Jump Capital, Hyde Park Venture Partners
- Research Centers and Universities: Northwestern University, University of Chicago, University of Illinois Urbana-Champaign, Illinois Institute of Technology, Argonne National Laboratory, Fermi National Accelerator Laboratory



