Senior Director, AI Engineering
Equinix · Dallas, TX · 1 wk ago
HybridEngineeringFull-time
Responsibilities
- Lead and Scale the MLE Organization
- Build, lead, and mentor a global team of Machine Learning Engineers and technical leaders
- Establish a high-performance engineering culture focused on quality, velocity, and accountability
- Deliver Production-Grade AI/ML Systems
- Own end-to-end delivery of ML platforms, pipelines, and services (training, inference, monitoring)
- Operationalize models into scalable, reliable, and secure production systems
- Partner with Data Science and Product to move from experimentation to deployment
- Define AI Engineering Strategy & Architecture
- Set the vision for ML platform architecture, MLOps, and GenAI enablement
- Standardize tools, frameworks, and best practices for model development and deployment
- Ensure systems are built for scale, performance, and cost efficiency
- Lead Development of GenAI Capabilities
- Enable reusable AI services and APIs to accelerate use case delivery
- Stay ahead of industry trends and translate them into enterprise-ready capabilities
- Cross-Functional Leadership & Stakeholder Alignment
- Partner with Product, Data, Engineering, and Business leaders to prioritize high-impact use cases
- Communicate strategy, progress, and outcomes to executive stakeholders
- Align AI initiatives with business goals, including revenue growth, efficiency, and customer experience
- Governance, Risk, and Responsible AI
- Establish best practices for model governance, monitoring, and lifecycle management
- Ensure compliance with security, privacy, and ethical AI standards
- Implement guardrails for safe and responsible use of AI technologies
Qualifications
- 12–15+ years in software engineering, data engineering, or ML engineering
- 5+ years leading large, distributed engineering teams (including managers of managers)
- Proven track record of delivering ML/AI systems at scale in production environments
- Deep knowledge of machine learning systems, MLOps, and cloud-native architectures
- Experience with ML frameworks (e.g., TensorFlow, PyTorch) and data platforms
- Strong understanding of GenAI/LLMs, prompt engineering, and retrieval-augmented systems
- Familiarity with distributed systems, APIs, and microservices architecture
- Strong ability to translate business strategy into technical execution
- Excellent communication and stakeholder management skills
Preferred
- Experience building enterprise AI platforms or internal AI products
- Experience in global delivery models (e.g., US + India engineering hubs)
- Master’s or PhD in Computer Science, Engineering, or related field