Job Description – AI / ML Engineer | 0–12+ Years ExperiencePosition
AI / ML Engineer (T1–T5)
LocationRiyadh, Kingdom of Saudi Arabia (KSA)
Relocation Required: Yes
Experience0–12+ Years
Job SummaryWe are seeking AI / ML Engineers across multiple experience levels (T1–T5) to design, develop, train, deploy, and optimize machine learning models and AI solutions throughout the complete machine learning lifecycle. Candidates will work on data preparation, feature engineering, model development, evaluation, deployment, monitoring, and continuous improvement using modern cloud AI platforms and open-source machine learning frameworks.
The role offers opportunities ranging from entry-level implementation to enterprise AI architecture and technical leadership.
Key Responsibilities- Design, develop, train, evaluate, and deploy machine learning and AI solutions.
- Build scalable ML pipelines from data preparation through production deployment.
- Develop supervised, unsupervised, deep learning, and generative AI models.
- Perform feature engineering, data preprocessing, model validation, and hyperparameter optimization.
- Integrate ML models into enterprise applications and cloud-native environments.
- Deploy AI models using managed cloud ML services and MLOps practices.
- Monitor model performance, drift, accuracy, and production reliability.
- Collaborate with Data Scientists, Data Engineers, Software Engineers, and DevOps teams.
- Optimize model performance, scalability, and inference latency.
- Document models, experiments, evaluation metrics, deployment processes, and governance standards.
- Follow AI security, responsible AI, and model governance best practices.
- GCP Vertex AI or BigQuery ML or Dataflow
- Azure ML or Azure OpenAI
- AWS SageMaker or Amazon Bedrock
- Python
- TensorFlow or PyTorch
- HuggingFace or LangChain
- Databricks
- Machine Learning
- Deep Learning
- NLP
- Computer Vision
- Model Evaluation
- Feature Engineering
- API Development
- Git
Role Focus: Learning, implementation, and execution under supervision.
Responsibilities- Assist in data preparation, cleansing, and feature engineering.
- Develop simple machine learning models using established frameworks.
- Support model training, testing, and validation activities.
- Deploy models under senior guidance.
- Maintain documentation for datasets, experiments, and models.
- Debug ML pipelines and resolve basic issues.
- Learn cloud AI platforms and development best practices.
- Follow coding standards, security policies, and project guidelines.
Role Focus: Independent development and delivery.
Responsibilities- Build and deploy production-ready machine learning models.
- Perform feature engineering and model optimization.
- Develop reusable ML components and inference APIs.
- Implement model evaluation and performance monitoring.
- Integrate ML models into enterprise applications.
- Collaborate with cross-functional engineering teams.
- Troubleshoot production AI issues.
- Contribute to model documentation and deployment automation.
Role Focus: Technical ownership and solution development.
Responsibilities- Design end-to-end AI and machine learning solutions.
- Lead development of complex ML pipelines and AI applications.
- Optimize training pipelines for performance and scalability.
- Guide junior engineers and perform technical reviews.
- Implement Responsible AI, explainability, and governance practices.
- Improve model reliability, monitoring, and lifecycle management.
- Collaborate with business stakeholders to translate requirements into AI solutions.
- Support architecture decisions for enterprise AI initiatives.
Role Focus: Technical leadership and enterprise solution delivery.
Responsibilities- Lead architecture and delivery of enterprise AI platforms and machine learning solutions.
- Define technical standards, reusable frameworks, and engineering best practices.
- Lead multiple AI initiatives across business domains.
- Drive cloud-native AI solution design and deployment.
- Review solution architecture, model performance, and production readiness.
- Mentor engineering teams and provide technical leadership.
- Collaborate with enterprise architects, product owners, and business leaders.
- Improve AI platform scalability, governance, security, and operational excellence.
Role Focus: Enterprise AI strategy, architecture, and innovation.
Responsibilities- Define enterprise AI/ML strategy and long-term technology roadmap.
- Own architecture decisions for large-scale AI and machine learning platforms.
- Lead enterprise-wide AI transformation initiatives.
- Establish standards for Responsible AI, governance, security, and compliance.
- Evaluate emerging AI technologies, frameworks, and cloud services.
- Drive innovation in Generative AI, LLMs, and advanced machine learning solutions.
- Provide executive-level technical guidance and strategic recommendations.
- Lead technical communities, architecture reviews, and cross-functional AI governance.
- Influence organizational AI adoption and engineering excellence across multiple programs.
One or more of the following certifications is highly preferred:
- Google Professional Machine Learning Engineer
- AWS Certified Machine Learning – Specialty
- Microsoft Certified: Azure AI Engineer Associate
- TensorFlow Developer Certificate
- Machine Learning Model Documentation
- Model Training & Evaluation Reports
- Feature Engineering Documentation
- Model Cards
- Production Deployment Pipelines
- Monitoring & Performance Dashboards
- AI Solution Design Documents
- Model Validation Reports
- Inference APIs
- Production-Ready ML Models
- Bachelor's or Master's degree in Computer Science, Artificial Intelligence, Machine Learning, Data Science, Software Engineering, or a related field.
- Strong understanding of statistics, machine learning algorithms, deep learning, and generative AI concepts.
- Experience with cloud AI platforms and modern ML frameworks.
- Knowledge of MLOps, CI/CD, model deployment, and production monitoring is an advantage.
- Strong analytical, communication, and problem-solving skills.
- Ability to work in Agile, cross-functional, and enterprise-scale environments.
Skills Required
- Python
- GCP Vertex AI
- BigQuery ML
- Dataflow
- Azure ML
- Azure OpenAI
- AWS SageMaker
- Amazon Bedrock
- TensorFlow
- PyTorch
- HuggingFace
- LangChain
- Databricks
- Machine Learning
- Deep Learning
- NLP
- Computer Vision
- Model Evaluation
- Feature Engineering
- API Development
- Git
- Google Professional Machine Learning Engineer certification
- AWS Certified Machine Learning - Specialty certification
- Microsoft Certified: Azure AI Engineer Associate certification
- TensorFlow Developer Certificate
- Bachelor's or Master's degree in Computer Science, AI, ML, Data Science, Software Engineering, or related field
- Knowledge of MLOps, CI/CD, model deployment, and production monitoring
Datamatics Technologies Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Datamatics Technologies and has not been reviewed or approved by Datamatics Technologies.
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Flexible Benefits — Feedback suggests flexible timings and work-from-home options are available in some roles. This flexibility is highlighted as part of the employment experience across certain postings and materials.
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Wellbeing & Lifestyle Benefits — Feedback suggests flexibility around time off and remote work supports work-life balance. These elements can help offset leaner cash components for some individuals.
Datamatics Technologies Insights
What We Do
Datamatics Technologies (DMT) was established in Dubai. We specialize in providing onsite and offshore professional services, covering the full spectrum of Data Analytics and Data Science domains. Our experience of working with diverse industry sectors such as Telecoms, Finance, Government and Manufacturing, across multiple regions enables us to engage and deliver for our clients with confidence. We can offer our full portfolio of services through resource augmentation, managed services, both on T&M or fixed price financial arrangements. Through our end-to-end managed services offering we enable our clients to cut down costs, increase profitability and focus on value addition to their core business activities. Our project and delivery management team are certified in Agile, PMI and ITIL to ensure the planning and execution are carried out using industry best practices. We are working with our clients across Middle East and Africa Region.









