In 2025, ML becomes an integral part of business operations, and the priority to hire machine learning engineer remains at the top for most organizations.
According to a World Economic Forum (WEF) report on Future of Jobs 2025, ML and AI specialists rank among the top three fastest-growing roles globally. Similarly, Gartner reports that 94% of Power and Utility CIOs plan to invest in AI and ML talent by the end of 2025.
LinkedIn data shows a 74% year-over-year growth in ML roles across the Americas. These stats suggest that organizations should prioritize machine learning talent and hire skilled ML engineers to stay ahead in the competition.
In this blog, I will guide you through the essentials to hire a machine learning engineer from Latin America in 2025.
I will also explore why LATAM is a strategic talent hub, what technical and soft skills to prioritize, how to evaluate candidates, and what to expect in terms of qualifications and real-world experience.
When you hire ML engineers from Latin America, technical depth should be non-negotiable. In addition, core programming skills, hands-on ML experience, and knowledge of deployment at scale are key areas that you should focus on.
Let me break down the must-have skills for an ML engineer from LATAM:
Python is the most widely used programming language globally for machine learning and data science. When LATAM engineers are fluent in Python, they can often manage both research and production environments.
It helps automate ML workflows, manage servers, and handle pipeline operations. Proficiency in Bash/Shell scripting means engineers can streamline repetitive tasks, integrate with DevOps tools, and maintain reproducible environments.
SQL is a key skill for querying structured data sources and integrating with enterprise data warehouses. Candidates with strong SQL skills can extract meaningful insights from large datasets, optimize queries for performance, and support data-driven model development.
Candidates with a strong grasp of scikit-learn open source libraries have a strong understanding of ML algorithms like SVMs, Regression, and Clustering, etc. Experience in applying scikit-learn to real-world problems is the key focus.
Powerful gradient boosting frameworks like Extreme Gradient Boosting and Light Gradient Boosting Machine are popularly used in Kaggle competitions and real-world tabular data challenges. As such, candidates should be familiar with optimizing models using LightGBM or XGBoost.
TensorFlow and PyTorch are considered the backbone tools for deep learning in the ML space. Proficiency in either one is a must for building neural networks, CNNs, RNNs, and custom models.
Fast.ai is a high-level deep learning library built on PyTorch that enables rapid prototyping and experimentation while simplifying model development. Experience in Fast.ai implies that the candidate can quickly build models.
Today, ML engineers are expected to have experience in fine-tuning and deploying LLMs. Familiarity with Hugging Face implies that they can efficiently implement text classification, summarization, translation, and chatbot models.
AWS, Azure, and GCP are the three most popular cloud platforms. ML Engineers should have hands-on experience in at least one major cloud platform for scaling models and deploying APIs in production.
MLOps tools like MLflow, Kubeflow, Docker, and CI/CD pipelines are critical for automating ML workflows, model versioning, and maintaining production-grade reliability. Look for candidates with experience in this area.
Pandas and NumPy are core libraries for data cleaning, analysis, and preparation. These tools are the foundation for any data workflow. Proficiency in Pandas or NumPy ensures that the candidate can handle messy real-world data and efficiently prepare it for modeling.
These tools are used to work with large datasets that don’t fit into memory. Experience with these tools indicates the candidate’s readiness to scale with enterprise-grade data volumes.
ML engineers should demonstrate knowledge in areas like linear algebra, probability, optimization, and statistical inference. These skills are the basic structure for most ML algorithms and are vital for model tuning and evaluation.
Before you hire machine learning engineer talent from LATAM, keep in mind that an ML engineer is not just another coder but a problem-solver with technical skills to build and maintain intelligent systems at scale.
In the past, most machine learning roles required a degree in Computer Science, Data Science, or a related STEM field. To hire a machine learning engineer from LATAM, most organizations look for a Bachelor’s or Master’s degree from LATAM institutions like Tecnológico de Monterrey or Universidade de São Paulo.
These degrees provide a strong foundation in programming, algorithms, and mathematics, which is crucial for ML. A survey by Stack Overflow in 2024 found that 66% of ML engineers globally hold at least a bachelor’s degree, with 30% having a master’s or higher.
While degrees are helpful, the focus of hiring managers is no longer on degrees alone, as they do necessarily showcase a candidate’s real abilities.
Today, employers prioritize hands-on experience to hire a machine learning engineer. Most hiring managers look for project portfolios, Kaggle competitions, GitHub contributions, open-source involvement, and real-world deployments.
This is because ML models are just 20% of the job for an ML engineer. The rest involves data wrangling, cloud deployment, monitoring, and iterative improvements, which are not properly taught in classrooms or textbooks.
For instance, fine-tuning an LLM using Hugging Face or building a recommendation system using scikit-learn reveals the hands-on skills of a candidate.
A strong portfolio of real-world ML projects is often the best indicator of success in a 2025 hiring environment. Ask a best practice, ask the candidate to walk through a past ML project, explaining what problem they solved, what model they used, and how they evaluated success.
ML engineers often come from bootcamps, research internships, or online certifications from organizations like fast.ai, Coursera, or DeepLearning.AI rather than traditional degrees. What matters the most today is their ability to build, iterate, and deploy but not just memorize algorithms.
To hire machine learning engineer profiles from LATAM, you should adopt a strategic approach of evaluating both technical skills and soft skills. We should ensure that the candidates can deliver results and also work well in a team.
Here are some of the common questions to ask when you hire ML engineers from LATAM:
When it comes to technical skills, ask questions that will ensure that the candidate can not just build a model but explain it, tune it, and deploy it.
Here are a few sample interview questions for technical evaluation:
Core Programming
Machine Learning Frameworks
Natural Language and LLM Experience
Cloud and MLOps Tools
Data Manipulation and Big Data Tools
Foundational Knowledge
ML engineers must collaborate across teams and communicate effectively with non-technical stakeholders. Especially in remote Latin American roles, strong communication is crucial.
So, look for candidates who are proactive and responsive, understand the business context, and speak clear English.
Here are a few sample questions to assess soft skills:
Nearshore alignment is a big advantage when you hire machine learning engineer from LATAM. However, check out the availability and experience working with international teams.
Here are a few questions to pose:
The goal is to hire ML Engineers from LATAM who can demonstrate strong coding and modeling skills in addition to communicating clearly, thinking critically, and collaborating easily across remote teams.
Companies that hire ML engineers from Latin America gain unique advantages with regard to quality, cost, and collaboration. Here’s why LATAM stands out:
One of the biggest advantages of hiring machine learning engineers from Latin America (LATAM) is the timezone alignment. Especially countries like Mexico, Argentina, and Colombia operate in time zones that are almost close to US business hours, typically within a 1-3 hour difference.
This advantage of real-time collaboration, agile development cycles, and quick resolution gives a major edge for LATAM countries over offshore teams from Europe or Asia. Especially for teams using Scrum or continuous integration workflows, closer time zones reduce communication delays and increase productivity.
Organizations that hire machine learning engineer expertise from LATAM can reduce costs by up to 30%–50% compared to US talent while still maintaining high technical standards.
Accelerance reports that the average hourly rate for senior software engineers in Mexico is $50–$70, compared to $100–$140 in the US. Multiple salary benchmarks show that hiring ML or AI engineers from Latin America offers 30–50% savings, compared to US compensation without compromising on skill or delivery.
The average annual salaries in LATAM range from $40,000 to $80,000, while the same talent attracts a cost of $120,000 to $200,000 in the US. It means you get top-tier engineers while saving on costs.
Mexico is emerging as the top destination for machine learning talent for multiple reasons. A strong educational system, vibrant tech hubs, and growing English proficiency are to name a few.
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These advantages make Mexico a top choice for building high-performing ML teams.
When you hire machine learning engineer from LATAM in 2025, you are not just filling up a job role. It is about gaining the extra edge, as LATAM engineers, especially those from Mexico, offer a unique blend of strong technical education, time zone alignment, and cost efficiency.
As the global demand for AI technologies rises, companies that look beyond traditional hiring places and acquire nearshore talent will excel faster, spend smarter, and build better. Be it expertise in NLP, cloud-based deployment, or building scalable ML systems, LATAM engineers are equipped with the right expertise to deliver production-ready solutions.
Regardless of the location of your company, focus on real-world experience, core technical competencies, and clear communication skills to build high-performing ML teams.
Yes, it is safe and legal to hire ML engineers from LATAM. Most LATAM countries have well-established frameworks for remote contracting.
Moreover, many US companies utilize Employer of Record (EOR) services or global payroll platforms, such as Deel or Remote, to remain compliant. Additionally, trade agreements like the USMCA facilitate even smoother cross-border collaboration with Mexico.
Use trusted platforms like Turing, Toptal, Revelo, or Wellfound (formerly AngelList) to source LATAM talent for ML projects.
You can also tap into university networks, AI hackathons, or hire through specialized recruiters focused on LATAM tech hiring. Local job boards like Computrabajo (Mexico) or BairesDev also connect you with skilled engineers in the region.
Most LATAM engineers, especially in Mexico, possess good conversational English skills. As a best practice, conduct interviews in English and include tasks like explaining technical concepts or presenting a project to assess their communication skills.
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