Mindera

Machine Learning Architect

🇿🇦 Remote, ZA Remote Posted May 13, 2026
LocationRemote, ZA
WorkplaceRemote
LanguageEnglish
PostedMay 13, 2026
Last verifiedMay 14, 2026

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Key details
1 location, Remote
Current openings
13 active jobs
Original language
English
Source and freshness
Collected from public career pages and reviewed through JobGrid.eu source availability checks. Last verified: May 14, 2026.
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We are looking for an experienced Machine Learning Architect to lead the design and implementation of scalable AI and ML solutions across modern cloud data platforms. This role combines architecture, engineering, and strategic leadership to enable enterprise-scale machine learning capabilities. The ideal candidate has strong hands-on experience with Databricks and a deep understanding of ML lifecycle management, MLOps, scalable data architectures, and AI platform governance. This is a highly collaborative role working closely with Data Engineering, Data Science, Product, and Business stakeholders to design robust, scalable, and production-ready AI solutions.

This role has the responsabilities to:

    • Define and lead the architecture for scalable Machine Learning and AI platforms.
    • Design end-to-end ML workflows using Databricks, including: Feature engineering, Model training, Experimentation, Deployment, Monitoring
    • Architect scalable data pipelines for AI/ML workloads using:, Apache Spark, Python, SQL
    • Establish MLOps best practices including:, CI/CD for ML, Model versioning, Model governance, Automated retraining, Model drifting, Observability and monitoring
    • Design secure and compliant AI architectures aligned with governance and privacy standards.
    • Partner with Data Engineering teams to optimize data models and feature stores.
    • Guide Data Scientists and ML Engineers on scalable production design patterns.
    • Evaluate and integrate modern AI capabilities, including (this will be a plus): LLMs, Vector databases, Retrieval augmented generation (RAG), AI agents
    • Drive cost optimization, scalability, and operational excellence across ML platforms.
    • Define reference architectures and best practices across multiple ML teams (not just owning a single project).
    • Support stakeholder engagement and translate business needs into scalable technical solutions.

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