Loading
Loading
Advanced AI and ML course covering deep learning, LLMs, MLOps, and deployment of scalable production ready artificial intelligence systems.
This advanced training program delivers a comprehensive understanding of machine learning engineering at scale. It covers mathematical foundations, deep learning architectures, large language model engineering, MLOps, infrastructure design, observability, and AI governance.
Participants will work with modern tools and frameworks including Python, PyTorch, Hugging Face, MLflow, Kubeflow, and cloud platforms. The course integrates hands on labs, architecture design sessions, and a capstone project that simulates real world AI system development and deployment.
Artificial intelligence and machine learning are now central to how modern organizations innovate, compete, and operate. From predictive analytics to large language models, these technologies are transforming industries at scale.
However, a significant gap remains between understanding AI concepts and building systems that work reliably in real world environments. While many professionals can develop models, far fewer can deploy, scale, and maintain production ready AI solutions aligned with business needs.
This course is designed to bridge that gap by providing a practical, end to end understanding of machine learning engineering. Participants will gain the skills to design, build, and manage scalable AI systems with confidence and real world impact.
By the end of this program, participants will be able to:
This course is ideal for:
The training methodology includes:
By enrolling participants in this training, organizations can expect:
By enrolling in this training, participants will gain:
At Strategic Revenue Africa, our certification goes beyond proof of attendance—it represents practical competence and measurable capability. Upon successful completion of our training programs, participants are awarded a Certificate of Completion from Strategic Revenue Africa, recognizing their ability to apply acquired knowledge in real-world settings. As an organization focused on architecting sustainable revenue and strengthening organizational performance, our certifications signal that participants are equipped with skills that drive results, not just theory.
Schedule & Investment
Frequently Asked Questions
This 5-day advanced AI and machine learning engineering course covers deep learning, large language models (LLMs), MLOps, and the deployment of scalable, production-ready AI systems. Participants move beyond prototypes to building, training, optimising and operating machine learning models that run reliably in real production environments.
It is built for data scientists, machine learning and software engineers, AI and analytics leads, and technical teams in banks, telcos, government and startups who want to design and deploy production-grade AI systems across African markets.
Yes. This is an advanced, hands-on engineering course, so a working knowledge of Python and core machine learning concepts is expected. It is aimed at practitioners ready to build and ship real AI systems, not absolute beginners.
You will be able to design and train deep-learning models, work with and fine-tune LLMs, apply MLOps practices for versioning, monitoring and retraining, and deploy scalable, production-ready AI systems that deliver value reliably.
It runs as a live, practitioner-led online cohort and in person in cities such as Nairobi, Lagos, Accra, Kigali and Dubai. Each delegate receives a Certificate of Completion and post-training support, and the course can be delivered in-house for technical teams across Africa.
Related Programmes
Master cybersecurity, digital risk, AI threats, and emerging technology risks in a rapidly evolving digital world.
Master the model and language beneath Power BI: dimensional modelling, DAX and decision-grade dashboard design. Five intensive, hands-on days.
Hands on cybersecurity and ethical hacking course covering penetration testing, network security, cloud security, and real world attack defense skills.