AI Platform Engineer

Senior Level Position

Position Overview

Join our elite engineering team to build and maintain the core AI infrastructure that powers Multisector Hubs’ revolutionary corporate governance solutions. You’ll architect scalable platforms supporting 10,000+ corporate entities while driving innovation in MLOps and real-time AI decision systems.

🏗️ Infrastructure Design

Design and implement AI infrastructure supporting 10,000+ corporate entities with enterprise-grade reliability.

🔄 MLOps Pipelines

Build continuous model deployment and monitoring systems for seamless AI operations.

⚡ Performance Optimization

Optimize AI model performance for real-time corporate governance decisions.

🤝 Cross-team Collaboration

Partner with AI/ML engineers to productionize research models at scale.

📋 Requirements

Technical Expertise

5+ years experience in platform engineering or DevOps
3+ years hands-on experience with ML/AI infrastructure.
Expert in Kubernetes, Docker, AWS/GCP
Experience with MLOps tools (MLflow, Kubeflow, Airflow, etc.)
Proficiency in Python, Go, Scala proficiency, or similar languages
CI/CD and infrastructure as code
Experience with Kubernetes, Docker, and container orchestration
Knowledge of cloud platforms (AWS, GCP, Azure)
Preferred Qualifications

Degrees in Computer Science, Engineering, or related field.
Experience with corporate governance or fintech domains.
Knowledge of model serving frameworks (TensorFlow Serving, TorchServe).
Experience with monitoring and observability tools.
Understanding of data privacy and security compliance.
Previous experience in a senior or lead engineering role.
Leadership & Impact
Led enterprise-scale AI platforms
Experience with 10,000+ user systems.
Strong architectural decision-making.
Cross-functional team leadership.
Excellent communication skills.

⚙️ Key Responsibilities

Infrastructure Architecture & Design

Lead the design and implementation of scalable AI infrastructure that supports enterprise-level corporate governance solutions.
• Design cloud-native AI platforms with high availability and fault tolerance.
• Architect data pipelines for real-time and batch processing
• Implement security best practices for AI systems handling sensitive corporate data.

Performance Optimization

Optimize AI model performance to meet real-time requirements, system performance, latency, and resource utilization for corporate governance & AI decision-making.
• Implement model serving optimizations for low-latency inference.
• Design auto-scaling solutions for variable workloads.
• Optimize resource utilization and cost efficiency.

MLOps Pipeline Development

Build and maintain comprehensive MLOps pipelines for continuous integration, deployment, and monitoring of AI models.
• Develop automated model training and validation workflows.
• Implement A/B testing frameworks for model performance evaluation.
• Create monitoring dashboards for model drift and performance metrics.


Cross-functional Collaboration

Work closely with AI/ML engineers, data scientists, and product teams to productionize research models.
• Bridge the gap between research and production environments.
• Provide technical guidance on platform capabilities and limitations.
• Mentor junior engineers and contribute to technical documentation.

Technical Leadership
Mentor engineering teams, establish best practices, and drive technical excellence across the organization.

🎯 Hiring Process

Application Review: Initial screening of resume and portfolio. We’ll review your experience with AI infrastructure and platform engineering.
Phone/Video Screening: 30-minute conversation with our talent acquisition team to discuss your background and interest in the role.
Duration: 30 minutes
Technical Assessment: Take-home assignment focusing on AI infrastructure design and MLOps pipeline implementation
Technical Interview: Deep-dive technical discussion with senior engineers covering system design, MLOps best practices, and problem-solving approaches.
Duration: 60 minutes
Leadership & Culture Interview: Discussion with team leads and product managers about leadership experience, collaboration style, and cultural fit.
Duration: 45 minutes
Final Interview: Meeting with senior leadership to discuss vision, career goals, and mutual expectations.

🌟 Onboarding Journey

Week 1: Foundation & Setup
Complete security clearance, access setup, meet your team, and dive into our platform architecture documentation.
Week 2-4: Deep Dive & Integration
Shadow senior engineers, understand our MLOps workflows, and begin contributing to ongoing infrastructure projects.
Month 2-3: Ownership & Leadership
Take ownership of key platform components, lead technical discussions, and begin mentoring junior engineers.
🌟 Ongoing Development & Support
📚 Continuous Learning

• $3,000 annual learning & development budget
• Conference attendance and industry events
• Internal tech talks and knowledge sharing
• Certification support (AWS, Azure, etc.)

🎯 Career Growth

• Quarterly performance reviews and goal setting
• Clear promotion pathways and criteria
• Leadership development opportunities
• Cross-functional project assignments

Senior AI Platform Engineer Position

Personal Information
First Name
Last Name
Email Address
Phone Number
Current Location
Education & Certifications
Highest Degree
Field of Study
Relevant Certifications
Professional Experience
Years of Experience in AI/ML Platform Engineering
Current/Most Recent Position
Key Achievements & Responsibilities
Technical Skills & Technologies
Position-Specific Questions
Describe your experience with MLOps pipeline design and implementation
How have you optimized AI model performance for real-time applications?
Experience with enterprise-scale AI infrastructure 
Corporate governance or regulatory compliance experience
Motivation & Cultural Fit
Why are you interested in this Senior AI Platform Engineer role?
How do you approach collaboration with cross-functional teams?
What interests you about Multisector Hubs’ mission?
Link to your Resume
Link to your Cover Letter
Availability
Preferred Start Date
Salary Expectations
Message or Additional Comments
The form has been submitted successfully!
There has been some error while submitting the form. Please verify all form fields again.
Review Your Cart
0
Add Coupon Code
Subtotal