Aegistech
Associate Director of Generative AI Platform Engineering
Aegistech, New York, New York, us, 10261
Job Description:
Our client is a leader in automation and AI/ML to transform risk management.They are seeking an
Associate Director of Generative AI Platform Engineering
to join their ML team within the Data Science organization.The desired candidate is an innovative, hands-on coder with previous experience developing large-scale platforms utilizing data engineering, machine learning and cloud platforms & services.
The Associate Director of Generative AI Platform Engineering will work closely in a world class AI ML team comprised of experts in AI & ML, ML engineers and data science and data engineering teams.This role will be a critical part of leading our client's AI-driven transformation to drive value both internally and externally for our customers.
Responsibilities and Impact:This role is a unique opportunity for hands-on architects and platform engineers to grow into the next step in their career journey.
Lead the design, development, and deployment of a generative AI platform, ensuring optimal integration with enterprise systems and standards.Act as a hands-on developer and architect, creating a robust and scalable solution tailored to support AI-driven applications.Demonstrate technical leadership and hands-on expertise in generative AI technologies and cloud architecture.Responsible for the full stack development of the platform for AI products including custom architecture for batch and stream processing-based AI ML pipelines including data ingestion to preprocessing to scaled AI model compute and ensure the architecture meets all SLA requirements. Work closely with members of technology and business teams in the design, development, and implementation of Enterprise AI platform.Ensure the deployment, and management of scalable and reliable platform and application infrastructure for AI, ML, GenAI, LLM products.Lead the development, integration and testing of scalable APIs.Create and maintain robust monitoring systems to track model performance, data quality, and infrastructure health. Identify and implement optimizations to improve system efficiency.Collaborate closely with data scientists, machine learning engineers, and software engineers to ensure smooth integration of machine learning models into production systems.Collaborate closely with ML teams, business and PM stakeholders in full-stack implementation efforts and ensure technical milestones align with business requirements.Implement security measures and compliance standards of the platform and APIs to ensure adherence to industry regulations.Mentor technical engineering talent. Provide guidance and mentorship to junior engineers, fostering their professional growth and development.Maintain documentation and architecture blueprints that guide the platform strategy and operational runbooks.Ensure the use of standards, governance and best practices in ML pipeline and ML model monitoring, and adherence to model and data governance standardsQualifications:
Bachelor's or master's degree in computer science, Engineering, or a related field.Deep understanding of platform development and deployment at the scale of large enterprises.Strong distributed systems skills and knowledge, Strong system architecture skills.7+ years of hands-on cloud platform engineering experience preferably with AI/ML development experience.Significant hands-on development experience in integrating, evaluating, deploying, operationalizing scalable full-stack and web-application solutions (with some previous experience with front-end technologies such as React, Vue or Angular JS) and APIs at speed and scale, including integration with enterprise applications and APIs.Experience with MLOps tools/frameworks (e.g. MLflow or similar)Strong knowledge and deep experience of Python, proficiency in multiple programming languages and frameworks relevant to cloud development such as Kubernetes, Serverless, and cloud PaaS offerings.Experience and knowledge of foundational Generative AI principles such as prompt engineering, RAG, finetuning, etc.Experience with full-stack engineering development for deep learning and LLM solutions (Preferred)Experience contributing to Github and open-source initiatives or in research projects. (Preferred)
After you've applied, connect directly to the recruiter at linkedin.com/in/kenny-allen-815192100
Our client is a leader in automation and AI/ML to transform risk management.They are seeking an
Associate Director of Generative AI Platform Engineering
to join their ML team within the Data Science organization.The desired candidate is an innovative, hands-on coder with previous experience developing large-scale platforms utilizing data engineering, machine learning and cloud platforms & services.
The Associate Director of Generative AI Platform Engineering will work closely in a world class AI ML team comprised of experts in AI & ML, ML engineers and data science and data engineering teams.This role will be a critical part of leading our client's AI-driven transformation to drive value both internally and externally for our customers.
Responsibilities and Impact:This role is a unique opportunity for hands-on architects and platform engineers to grow into the next step in their career journey.
Lead the design, development, and deployment of a generative AI platform, ensuring optimal integration with enterprise systems and standards.Act as a hands-on developer and architect, creating a robust and scalable solution tailored to support AI-driven applications.Demonstrate technical leadership and hands-on expertise in generative AI technologies and cloud architecture.Responsible for the full stack development of the platform for AI products including custom architecture for batch and stream processing-based AI ML pipelines including data ingestion to preprocessing to scaled AI model compute and ensure the architecture meets all SLA requirements. Work closely with members of technology and business teams in the design, development, and implementation of Enterprise AI platform.Ensure the deployment, and management of scalable and reliable platform and application infrastructure for AI, ML, GenAI, LLM products.Lead the development, integration and testing of scalable APIs.Create and maintain robust monitoring systems to track model performance, data quality, and infrastructure health. Identify and implement optimizations to improve system efficiency.Collaborate closely with data scientists, machine learning engineers, and software engineers to ensure smooth integration of machine learning models into production systems.Collaborate closely with ML teams, business and PM stakeholders in full-stack implementation efforts and ensure technical milestones align with business requirements.Implement security measures and compliance standards of the platform and APIs to ensure adherence to industry regulations.Mentor technical engineering talent. Provide guidance and mentorship to junior engineers, fostering their professional growth and development.Maintain documentation and architecture blueprints that guide the platform strategy and operational runbooks.Ensure the use of standards, governance and best practices in ML pipeline and ML model monitoring, and adherence to model and data governance standardsQualifications:
Bachelor's or master's degree in computer science, Engineering, or a related field.Deep understanding of platform development and deployment at the scale of large enterprises.Strong distributed systems skills and knowledge, Strong system architecture skills.7+ years of hands-on cloud platform engineering experience preferably with AI/ML development experience.Significant hands-on development experience in integrating, evaluating, deploying, operationalizing scalable full-stack and web-application solutions (with some previous experience with front-end technologies such as React, Vue or Angular JS) and APIs at speed and scale, including integration with enterprise applications and APIs.Experience with MLOps tools/frameworks (e.g. MLflow or similar)Strong knowledge and deep experience of Python, proficiency in multiple programming languages and frameworks relevant to cloud development such as Kubernetes, Serverless, and cloud PaaS offerings.Experience and knowledge of foundational Generative AI principles such as prompt engineering, RAG, finetuning, etc.Experience with full-stack engineering development for deep learning and LLM solutions (Preferred)Experience contributing to Github and open-source initiatives or in research projects. (Preferred)
After you've applied, connect directly to the recruiter at linkedin.com/in/kenny-allen-815192100