Contact Us

We're Humble. Hungry. Honest.


Home/Services/Information Technology/Machine Learning Engineer

Machine Learning Engineer

Quality Dedicated Remote Machine Learning Engineer Staffing


Everything you need to know about hiring and managing offshore Machine Learning Engineer professionals for your team.

  • ML engineers bridge AI concepts to production-ready systems
  • Philippines talent costs 60-70% less than $180,000 US salaries2
  • Engineers master TensorFlow, PyTorch, scikit-learn, and MLOps tools
  • Dedicated teams improve click-through rates by 2% for revenue gains1
  • Time zones enable overnight model training and experiment running
  • Engineers handle SOC 2 compliance and GDPR model explainability

Looking to hire a Machine Learning Engineer? Let's talk!

When Your AI Projects Need Real ML Engineering Muscle

Look, we’ve all watched the AI revolution unfold, and here’s what’s becoming crystal clear: having brilliant AI ideas isn’t enough anymore. You need Machine Learning Engineers who can actually build the systems that turn those ideas into working solutions. The gap between “wouldn’t it be cool if we could predict customer churn” and actually having a model running in production? That’s where dedicated ML engineers make all the difference. And if you’re thinking the talent pool feels impossibly tight (and expensive) in your local market, you’re not imagining things.

The Philippines has quietly become this incredible hub for ML engineering talent, and honestly, it makes perfect sense when you think about it. You’ve got engineers there who are trained on the exact same frameworks your local team uses. TensorFlow, PyTorch, scikit-learn, they’re working with these tools every single day. Plus, they’re used to collaborating with teams in the US, UK, Australia, and Canada, so they get how Western tech companies operate. They understand your documentation standards, your deployment pipelines, and most importantly, they speak fluent tech English. No translation needed when you’re discussing model architectures or debugging production issues. The time zone actually works in your favor too. While you’re sleeping, they’re pushing code, running experiments, and having models ready for review when you wake up.

What Actually Matters in ML Engineering

Here’s the thing about Machine Learning Engineers that sets them apart from data scientists or regular software developers: they live in this sweet spot between cutting-edge algorithms and production-ready code. Your dedicated ML engineer from KamelBPO isn’t just someone who can build a model in a Jupyter notebook (though they absolutely can). They’re the ones who know how to take that model and turn it into something that can handle millions of requests without breaking a sweat. We’re talking about engineers who understand model versioning, A/B testing frameworks, and how to monitor model drift in production. They know when to use a simple logistic regression versus when you actually need that fancy neural network.

The real value shows up in how they approach your specific business problems. Say you’re in e-commerce and need better recommendation systems. Your dedicated ML engineer will dig into collaborative filtering, content-based approaches, and hybrid models. But more importantly, they’ll understand your business metrics.According to a 2025 AI marketing performance benchmark, companies using AI-driven marketing methods report an average of 47% better click‑through rates compared to traditional campaigns.1. Or if you’re in fintech dealing with fraud detection, they’re familiar with handling imbalanced datasets, implementing SMOTE, and building models that minimize false positives without letting the bad guys through. These engineers come with experience working on projects that need to meet SOC 2 compliance and understand GDPR requirements for model explainability.

The Tech Stack That Actually Gets Used

Let’s get specific about what your dedicated ML engineer will actually work with, because this matters when you’re trying to integrate them into your existing workflow:

  • Core ML frameworks: Deep experience with TensorFlow and PyTorch for neural networks, XGBoost for those killer gradient boosting models, and good old scikit-learn for when simpler is better
  • MLOps and deployment: They’re comfortable with MLflow for experiment tracking, Kubeflow for orchestration, and Docker containers because everything runs in containers these days
  • Cloud platforms: Whether you’re on AWS SageMaker, Google Cloud AI Platform, or Azure ML, they’ve deployed models across these environments
  • Data engineering: They know Apache Spark for big data processing, can write efficient SQL queries, and understand how to build feature stores that don’t become technical debt
  • Monitoring and maintenance: Experience with tools like Evidently AI for drift detection and Prometheus for keeping tabs on model performance in production

Making the Economics Work Without Sacrificing Quality

The cost conversation around ML talent is pretty eye-opening. In major tech hubs, ML engineers command salaries that can make CFOs nervous, often north of $180,000 annually. But here’s where outsourcing to the Philippines changes the game completely. You’re looking at accessing the same skill level for typically 60-70% less, which means you can actually afford to have dedicated ML engineers working on your projects full-time. Not contractors who disappear after the model is built, but actual team members who stick around to iterate, improve, and maintain what they create.

What really makes this work is the dedication model KamelBPO uses. Your ML engineer becomes part of your team, learns your business domain, and builds institutional knowledge over time. They’re not juggling five different clients or working on random projects. They’re yours, full-time, getting better at solving your specific problems every single day. They attend your standups (virtually), participate in your code reviews, and contribute to architectural decisions. The quality of work you get from someone who deeply understands your data, your customers, and your business goals? It’s completely different from the consultant who drops in for three months.

The reality is, ML engineering is becoming as essential as having a website was twenty years ago. Companies that can effectively deploy machine learning are seeing genuine competitive advantages, from customer retention improvements to operational efficiencies that seemed impossible before. But you need the right people to make it happen. Having dedicated ML engineers through KamelBPO means you can actually pursue those AI initiatives that have been sitting in your someday pile. You can build that recommendation engine, deploy that predictive maintenance system, or finally get serious about automating those manual processes that eat up so much time. And you can do it without breaking the bank or fighting in the talent war that’s making local hiring feel impossible. The combination of Philippines-based expertise, dedication to your business, and genuine ML engineering chops? That’s how you turn AI potential into actual business value.


All inclusive monthly cost with no hidden feesMORE DETAILS

Talk To Us About Building Your Team



KamelBPO Industries

Explore an extensive range of roles that KamelBPO can seamlessly recruit for you in the Philippines. Here's a curated selection of the most sought-after roles across various industries, highly favored by our clients.