If you’re a CTO, senior hiring manager, or tech leader at a U.S.-based company, chances are you’ve struggled to hire data engineers. You’re not alone. The U.S. Bureau of Labor Statistics predicts a 35% growth in data-related roles between 2022 and 2032. But here’s the challenge: supply is lagging behind demand, and salaries continue to climb.
In today’s economic climate—marked by inflationary pressures and tighter operating budgets—many companies are rethinking how and where they source talent. This has made nearshore hiring from Latin America a compelling and cost-effective strategy. It’s a way to maintain world-class quality while optimizing for budget and speed.
When you hire a core data engineer from LATAM, you benefit from:
Let’s explore how to hire core data engineers strategically in 2025—without sacrificing skill, security, or scalability.
At its core, a data engineer builds the pipelines and platforms that power modern analytics and AI. A senior data engineer does even more—ensuring performance, data integrity, and infrastructure scalability.
Google’s Data Engineering on Cloud guide emphasizes that data engineers are foundational to building automated, insight-driven platforms. Without them, even the best data scientists are left stranded. Additionally, according to a 2024 McKinsey article, companies that leverage advanced data infrastructure outperform their competitors by up to 25% in efficiency and innovation.
There’s no question: senior data engineers are the backbone of modern data teams. They architect the systems that fuel everything from AI models to real-time business dashboards. But not all data engineers wear the same hat. In fact, there are several distinct profiles—each suited to a different stage of your company’s growth. Let’s break them down.
Data engineers specialize depending on your company’s stage, infrastructure, and priorities.
Best for: Startups or small data teams
Focus: End-to-end pipeline development and analytics support
Tech Stack: Python, SQL, dbt, Looker, Metabase, PostgreSQL
Practical Example: A pre-seed ecommerce startup used a generalist engineer to ingest CSVs, set up a BigQuery data warehouse, and launch its first analytics dashboard in under 60 days.
Best for: Mid-sized teams needing efficient data flow
Focus: Building scalable and reliable data pipelines
Tech Stack: Airflow, Kafka, Spark, AWS Glue, GCP Dataflow
Best for: Large enterprises scaling infrastructure
Focus: Infrastructure, orchestration, compliance, and CI/CD for data
Tech Stack: Snowflake, Terraform, Kubernetes, Prometheus, CircleCI
Practical Example: A fintech firm transitioned its monolithic data environment to a multi-region Snowflake setup with automated testing and deployment pipelines.
While both are crucial, their focus areas differ:
Role | Data Engineer | Data Scientist |
---|---|---|
Focus | Infrastructure & pipelines | Analytics & modeling |
Output | Clean, usable data | Business insights, predictions |
Tools | Spark, Airflow, Redshift | Python, TensorFlow, Tableau |
Dependency | Enables downstream data use | Depends on pipeline accuracy |
Hiring from Latin America offers strategic advantages for U.S.-based tech teams, including:
Want to learn more? Use our Hire LATAM Developers Guide to ensure proper vetting and compliance.
Be specific about:
A mismatched hire can cost up to 30% of annual salary in replacement and downtime (SHRM).
Include:
Bonus Resource: Use GitHub project contributions to assess open-source familiarity.
Use Real Scenarios:
Sample Interview Questions:
Tip: Consider evaluating how candidates use tools like dbt, Great Expectations, and GitHub Copilot during technical assessments.
You’re under pressure to deliver. New product features, infrastructure upgrades, tighter deadlines—and you don’t have months to build the perfect in-house data team.
But if you don’t have a full HR department dedicated to scaling your IT function, or don’t want to spend time and a huge budget trying to source high-quality talent, you might be wondering:Is there a better way to hire data engineers?
There is—and it’s called IT staff augmentation.
IT staff augmentation has become a smart and efficient choice to meet this growing demand. Whether you’re building real-time pipelines, launching an AI-powered product, or modernizing your cloud architecture, IT staff augmentation gives you the speed and scalability you need—without sacrificing quality or control.
For instance, launching a new machine learning product but lacking internal data pipeline expertise? Instead of training or hiring full-time, a staff augmentation partner can deploy senior data engineers in under a week—helping you maintain momentum and meet deadlines without compromise.
IT staff augmentation is a strategic hiring approach that allows companies to bring in external data engineers on a temporary or long-term basis. Unlike traditional outsourcing, where control is handed off to a vendor, augmented data engineers work as fully integrated members of your team.
Work with a provider that specializes in sourcing elite data engineers, ideally from nearshore markets like LATAM for time zone and communication alignment.
At BEON.tech, we help U.S. companies hire top-tier software engineers and data engineers from Latin America—fast, compliantly, and without the typical hiring headaches.
Let’s build your elite data team. Schedule a consultation with us →
Damian is a passionate Computer Science Major who has worked on the development of state-of-the-art technology throughout his whole life. In 2018, Damian founded BEON.tech in partnership with Michel Cohen to provide elite Latin American talent to US businesses exclusively.
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