The key focus for the senior data/AI architect is to perform planning aligned to key AI solutions build and participate in the architecture capability building perform AI architecture and design manage AI architecture risk and compliance provide design and build governance and support and communicate and share knowledge around the architecture practices guardrails blueprints and standards related to the AI solution design. A key focus of this role is partnering with the AI Technology Centre of Excellence (AI Tech COE) to build out the organisations Databricks AI platform and support the delivery of enterprise AI and generative AI use cases.
Planning
Lead AI solution requirements gathering and ensure alignment with business objectives and constraints.
Define and refine AI architecture runways for intentional architecture with the key stakeholders
Provide input into business cases and costing
Participate and provide AI architectural runway requirements into Programme Increment (PI) Planning
Architecture Capability
Design and implement enterprise-grade AI architectures leveraging Databricks and cloud-native technologies.
Develop and oversee AI architecture views and ensure alignment with enterprise architecture.
Maintain and oversee the AI solution artifacts in the set enterprise repository and knowledge portals aligned to the rest of the architecture
Manage the AI architecture processes based on the requirements for each architype
Manage change impact of the AI architecture with stakeholders
Develop and participate in the build of the AI architecture practice with embedded architects and engineers including the relevant methods repository and tools
Manage the AI architecture considering the business application information/data and technology viewpoints
Establish enforce and implement AI standards guardrails frameworks and patterns
Partner with the AI Tech COE to define and evolve the Databricks AI platform architecture ensuring alignment with enterprise data and AI strategy
Design and implement AI/ML architectures on Databricks including MLOps pipelines model lifecycle management Unity AI Gateway and Unity Catalog governance for AI/ML assets
Planning
Lead AI solution requirements gathering and ensure alignment with business objectives and constraints.
Define and refine AI architecture runways for intentional architecture with the key stakeholders
Provide input into business cases and costing
Participate and provide AI architectural runway requirements into Programme Increment (PI) Planning
Architecture Capability
Design and implement enterprise-grade AI architectures leveraging Databricks and cloud-native technologies.
Develop and oversee AI architecture views and ensure alignment with enterprise architecture.
Maintain and oversee the AI solution artifacts in the set enterprise repository and knowledge portals aligned to the rest of the architecture
Manage the AI architecture processes based on the requirements for each architype
Manage change impact of the AI architecture with stakeholders
Develop and participate in the build of the AI architecture practice with embedded architects and engineers including the relevant methods repository and tools
Manage the AI architecture considering the business application information/data and technology viewpoints
Establish enforce and implement AI standards guardrails frameworks and patterns
Partner with the AI Tech COE to define and evolve the Databricks AI platform architecture ensuring alignment with enterprise data and AI strategy
Design and implement AI/ML architectures on Databricks including MLOps pipelines model lifecycle management Unity AI Gateway and Unity Catalog governance for AI/ML assets
Solution Design
Lead and review logical and detailed AI architecture
Evaluate and approve AI solution options and technology selections
Select appropriate technology tools and build for the solution
Oversee and maintain the AI solution blueprints
Drive incremental modernisation initiatives in the delivery area
Design and evaluate architectures for AI and generative AI use cases including RAG pipelines vector stores feature stores and LLM integration patterns
Risk Governance and Compliance Identify assess and mitigate risks at a AI solution architecture level Ensure and enforce compliance with policies standards and regulations Lead AI architecture reviews and integrate with governance functions Integrate with other governance and compliance functions to ensure continuity in managing the investment and risk for the organisation pertaining to the solution architectures Establish and provide AI standards guidance and tools to delivery teams. Implementation and Collaboration Establish and provide AI solution architectures and tools to the delivery and AI engineering teams Lead and facilitate collaboration with delivery teams to achieve architecture objectives Manage and resolve deviations and ensure up-to-date AI solution design documentation Identify opportunities to optimise delivery of solutions Oversee and conduct post-implementation reviews Ensure the AI architecture supports CI/CD pipelines to facilitate rapid and reliable deployment of data solutions Implement automated testing frameworks for AI solutions to ensure quality and reliability throughout the development lifecycle. Establish performance monitoring and optimisation practices to ensure AI solutions meet performance benchmarks and can scale as needed. Integrate robust AI security measures including encryption access controls and regular security audits into the implementation process. Communication and Knowledge Sharing Communicate and advocate up-to-date AI solution architecture views Communicate the relevant AI standards practices guardrails and tools to stakeholders relevant to the solution design Ensure IT teams are well-informed and trained in architecture requirements Communicate and collaborate with stakeholders relevant views on planning technology assessments risk compliance governance and implementation assessments Foster collaboration between AI architects AI engineers and other IT teams through regular cross-functional meetings and agile ceremonies. Communicate and maintain up-to-date blueprint designs for key data solutions Ensure effective participation in the agile ceremonies (PI planning sprint planning retrospectives demos) Implement regular feedback loops with stakeholders and end-users to continuously improve data solutions based on real-world usage and requirements Create a culture of knowledge sharing by organising regular workshops training sessions and documentation updates to keep all team members informed about the latest AI architecture practices and tools Requirements and experience
Matric
Degree or diploma in Information Technology Computer Science Engineering OR relevant diploma / degree
Data and AI Experience: Required a minimum of 7 years related experience in AI data engineering data modeling and design and data management and governance
Expert-level proficiency in Databricks including Delta Lake Spark and MLflow.
Proven experience architecting and delivering AI/ML solutions on Databricks including MLOps model deployment and monitoring and Unity Catalog governance for AI/ML assets.
Hands-on experience in large-scale data and AI platform implementation (preferably cloud-based)
The key focus for the senior data/AI architect is to perform planning aligned to key AI solutions build and participate in the architecture capability building perform AI architecture and design manage AI architecture risk and compliance provide design and build governance and support and communicat...
The key focus for the senior data/AI architect is to perform planning aligned to key AI solutions build and participate in the architecture capability building perform AI architecture and design manage AI architecture risk and compliance provide design and build governance and support and communicate and share knowledge around the architecture practices guardrails blueprints and standards related to the AI solution design. A key focus of this role is partnering with the AI Technology Centre of Excellence (AI Tech COE) to build out the organisations Databricks AI platform and support the delivery of enterprise AI and generative AI use cases.
Planning
Lead AI solution requirements gathering and ensure alignment with business objectives and constraints.
Define and refine AI architecture runways for intentional architecture with the key stakeholders
Provide input into business cases and costing
Participate and provide AI architectural runway requirements into Programme Increment (PI) Planning
Architecture Capability
Design and implement enterprise-grade AI architectures leveraging Databricks and cloud-native technologies.
Develop and oversee AI architecture views and ensure alignment with enterprise architecture.
Maintain and oversee the AI solution artifacts in the set enterprise repository and knowledge portals aligned to the rest of the architecture
Manage the AI architecture processes based on the requirements for each architype
Manage change impact of the AI architecture with stakeholders
Develop and participate in the build of the AI architecture practice with embedded architects and engineers including the relevant methods repository and tools
Manage the AI architecture considering the business application information/data and technology viewpoints
Establish enforce and implement AI standards guardrails frameworks and patterns
Partner with the AI Tech COE to define and evolve the Databricks AI platform architecture ensuring alignment with enterprise data and AI strategy
Design and implement AI/ML architectures on Databricks including MLOps pipelines model lifecycle management Unity AI Gateway and Unity Catalog governance for AI/ML assets
Planning
Lead AI solution requirements gathering and ensure alignment with business objectives and constraints.
Define and refine AI architecture runways for intentional architecture with the key stakeholders
Provide input into business cases and costing
Participate and provide AI architectural runway requirements into Programme Increment (PI) Planning
Architecture Capability
Design and implement enterprise-grade AI architectures leveraging Databricks and cloud-native technologies.
Develop and oversee AI architecture views and ensure alignment with enterprise architecture.
Maintain and oversee the AI solution artifacts in the set enterprise repository and knowledge portals aligned to the rest of the architecture
Manage the AI architecture processes based on the requirements for each architype
Manage change impact of the AI architecture with stakeholders
Develop and participate in the build of the AI architecture practice with embedded architects and engineers including the relevant methods repository and tools
Manage the AI architecture considering the business application information/data and technology viewpoints
Establish enforce and implement AI standards guardrails frameworks and patterns
Partner with the AI Tech COE to define and evolve the Databricks AI platform architecture ensuring alignment with enterprise data and AI strategy
Design and implement AI/ML architectures on Databricks including MLOps pipelines model lifecycle management Unity AI Gateway and Unity Catalog governance for AI/ML assets
Solution Design
Lead and review logical and detailed AI architecture
Evaluate and approve AI solution options and technology selections
Select appropriate technology tools and build for the solution
Oversee and maintain the AI solution blueprints
Drive incremental modernisation initiatives in the delivery area
Design and evaluate architectures for AI and generative AI use cases including RAG pipelines vector stores feature stores and LLM integration patterns
Risk Governance and Compliance Identify assess and mitigate risks at a AI solution architecture level Ensure and enforce compliance with policies standards and regulations Lead AI architecture reviews and integrate with governance functions Integrate with other governance and compliance functions to ensure continuity in managing the investment and risk for the organisation pertaining to the solution architectures Establish and provide AI standards guidance and tools to delivery teams. Implementation and Collaboration Establish and provide AI solution architectures and tools to the delivery and AI engineering teams Lead and facilitate collaboration with delivery teams to achieve architecture objectives Manage and resolve deviations and ensure up-to-date AI solution design documentation Identify opportunities to optimise delivery of solutions Oversee and conduct post-implementation reviews Ensure the AI architecture supports CI/CD pipelines to facilitate rapid and reliable deployment of data solutions Implement automated testing frameworks for AI solutions to ensure quality and reliability throughout the development lifecycle. Establish performance monitoring and optimisation practices to ensure AI solutions meet performance benchmarks and can scale as needed. Integrate robust AI security measures including encryption access controls and regular security audits into the implementation process. Communication and Knowledge Sharing Communicate and advocate up-to-date AI solution architecture views Communicate the relevant AI standards practices guardrails and tools to stakeholders relevant to the solution design Ensure IT teams are well-informed and trained in architecture requirements Communicate and collaborate with stakeholders relevant views on planning technology assessments risk compliance governance and implementation assessments Foster collaboration between AI architects AI engineers and other IT teams through regular cross-functional meetings and agile ceremonies. Communicate and maintain up-to-date blueprint designs for key data solutions Ensure effective participation in the agile ceremonies (PI planning sprint planning retrospectives demos) Implement regular feedback loops with stakeholders and end-users to continuously improve data solutions based on real-world usage and requirements Create a culture of knowledge sharing by organising regular workshops training sessions and documentation updates to keep all team members informed about the latest AI architecture practices and tools Requirements and experience
Matric
Degree or diploma in Information Technology Computer Science Engineering OR relevant diploma / degree
Data and AI Experience: Required a minimum of 7 years related experience in AI data engineering data modeling and design and data management and governance
Expert-level proficiency in Databricks including Delta Lake Spark and MLflow.
Proven experience architecting and delivering AI/ML solutions on Databricks including MLOps model deployment and monitoring and Unity Catalog governance for AI/ML assets.
Hands-on experience in large-scale data and AI platform implementation (preferably cloud-based)