Machine Learning Engineer (Remote in South Africa)
Quick Summary
Develops software using the KnowBe4 Software Development Lifecycle and Agile Methodologies Designs, develops,
BS or equivalent plus 3 years experience MS/Ph.D. or equivalent plus no experience Training in secure coding practices (preferred) AI/ML and Core: Python (production-grade),
KnowBe4 is the global leader in Human Risk Management, trusted by over 70,000 organizations worldwide to secure their employees and AI agents for over 15 years. We're pioneering a new era of security. AI-powered since 2016. And market-leading since day one.
Our HRM+ combines continuous risk intelligence, advanced technical defenses, and personalized training to help organizations build strong security cultures. We help organizations understand, measure, and reduce human risk across their entire workforce, defending against, deepfakes, and emerging AI-powered threats.
We believe that protecting organizations from cyberthreats and creating a positive environmental impact go hand in hand. True resilience is collective, it requires us to protect our people, our data, and our planet.
Responsibilities
~1 min read- →Develops software using the KnowBe4 Software Development Lifecycle and Agile Methodologies
- →Designs, develops, and researches Machine Learning systems
- →Transforms data science prototypes by applying appropriate Machine Learning algorithms and tools
- →Performs statistical analysis and using results to improve models
- →Inference Engineering: Drive the deployment and optimization of both standard predictive models and LLM architectures, balancing trade-offs between low latency, high throughput, and cost-efficiency
- →Platform Hardening: Transition research prototypes into resilient, production-ready microservices that can handle massive traffic
- →Lifecycle Orchestration: Execute automated pipelines for data and model versioning, validation, and retraining
- →Observability: Implement advanced monitoring for model drift, data integrity, and system health to ensure production reliability
- →Collaborative Standards: Uphold clean code practices, thorough documentation, and participate in rigorous code reviews across the ML and Engineering teams
Requirements
~1 min read- BS or equivalent plus 3 years experience
- MS/Ph.D. or equivalent plus no experience
- Training in secure coding practices (preferred)
- AI/ML and Core: Python (production-grade), PyTorch
- Data and Features: Apache Spark for distributed processing; experience with Feature Stores or automated feature engineering is a plus
- Infrastructure: AWS (SageMaker, Lambda), Docker, and Terraform/IaC for environment reproducibility
- Specialized Tooling: Experience with custom inference optimization (Python-based); orchestration via lean, custom AWS and Python-based solutions using Lambda and MLflow
- Additional: C# and JavaScript (beneficial)
- Familiarity with secure coding practices
While the title says pure ML, the day-to-day is data heavy and is also focused on the AI and ML Platform Engineering around our services. Expect a roughly 90/10 split - the vast majority of your impact will come from hardening data pipelines, refining CI/CD for ML, and building world-class observability, with the remaining portion dedicated to model building, implementation and tuning.
What We Offer
~1 min readNote: An applicant assessment and background check may be part of your hiring procedure.
No recruitment agencies, please.
Listing Details
- First seen
- April 2, 2026
- Last seen
- April 26, 2026
Posting Health
- Days active
- 23
- Repost count
- 0
- Trust Level
- 31%
- Scored at
- April 26, 2026
Signal breakdown

KnowBe4 empowers employees at organizations worldwide to make smarter security decisions every day.
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