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AI Cloud Solution Architect & Engineer

Neurons Lab • 🌐 Remote

Remote Posted 1 day, 8 hours ago

Job Description

About the project

Join Neurons Lab as an AI Cloud Solution Architect \& Engineer - a unique hybrid role combining strategic solution design with hands-on engineering execution. You'll bridge the gap between client requirements and technical implementation, designing AI/ML architectures and then building them yourself using modern cloud infrastructure practices.

Our Focus: We specialize in serving Banking, Financial Services, and Insurance (BFSI) enterprise customers with stringent compliance, security, and regulatory requirements. You'll work on mission-critical AI/ML systems where security architecture, data governance, and regulatory compliance are paramount.

This role is perfect for technical professionals who love both the "what" and the "how" - architecting elegant solutions AND rolling up their sleeves to code, deploy, and optimize them. You'll work across multiple AI consulting engagements, from Generative AI workshops to enterprise ML platform development, all while maintaining the highest standards of security and compliance required by financial institutions.

Duration: Part-time long-term engagement with project-based allocations

Reporting: Direct report to Head of Cloud

Objective

=============

Deliver end-to-end AI cloud solutions by combining architectural excellence with hands-on engineering capabilities:

Architecture \& Design: Gather requirements, design cloud architectures, calculate ROI, and create technical proposals for AI/ML solutions

Engineering Excellence: Build production-grade infrastructure using IaC, develop APIs and prototypes, implement CI/CD pipelines, and manage AI workload operations

Client Success: Transform business requirements into working solutions that are secure, scalable, cost-effective, and aligned with AWS best practices

Knowledge Transfer: Create reusable artifacts, comprehensive documentation, and architectural patterns that accelerate future project delivery

KPI

=======

Architecture \& Pre-Sales:

Design and document 3+ solution architectures per month with comprehensive diagrams and specifications

Achieve 80%+ client acceptance rate on proposed architectures and estimates

Deliver ROI calculations and cost models within 2 business days of request

Engineering Delivery:

Deploy infrastructure through IaC (AWS CDK/Terraform) with zero manual configuration

Create at least 3 reusable IaC components or architectural patterns per quarter

Implement CI/CD pipelines for all projects with automated testing and deployment

Maintain 95%+ uptime for production AI/ML inference endpoints

Document architecture and implementation details weekly for knowledge sharing

Quality \& Best Practices:

Ensure all solutions pass AWS Well-Architected Review standards

Deliver comprehensive documentation within 1 week of architecture completion

Create simplified UIs/demos for PoC validation and client presentations

Areas of Responsibility

===========================

Solution Architecture (40%)

Requirements \& Design:

Elicit and document business and technical requirements from clients

Design end-to-end cloud architectures for AI/ML solutions (training, inference, data pipelines)

Create architecture diagrams, technical specifications, and implementation roadmaps

Evaluate technology options and recommend optimal AWS services for specific use cases

Business Analysis:

Calculate ROI, TCO, and cost-benefit analysis for proposed solutions

Estimate project scope, timelines, team composition, and resource requirements

Participate in presales activities: technical presentations, demos, and proposal support

Collaborate with sales team on SOW creation and customer workshops

Strategic Planning:

Design for scalability, security, compliance, and cost optimization from day one

Create reusable architectural patterns and reference architectures

Stay current with AWS AI/ML services and emerging cloud technologies

Cloud Engineering \& AI Infrastructure (60%)

================================================

Infrastructure as Code Development:

Build and maintain cloud infrastructure using AWS CDK (primary) and Terraform

Develop reusable IaC components and modules for common patterns

Implement infrastructure for AI/ML workloads: GPU clusters, model serving, data lakes

Manage compute resources: EC2, ECS, EKS, Lambda, SageMaker compute instances

Application Development:

Develop Python applications: FastAPI backends, data processing scripts, automation tools

Create prototype interfaces using Streamlit, React, or similar frameworks

Build and integrate RESTful APIs for AI model serving and data access

Implement authentication, authorization, and API security best practices

AI/ML Operations (MLOps):

Deploy and manage AI/ML model serving infrastructure (SageMaker endpoints, containerized models)

Build ML pipelines: data ingestion, preprocessing, training automation, model deployment

Implement model versioning, experiment tracking, and A/B testing frameworks

Manage GPU resource allocation, training job scheduling, and compute optimization

Monitor model performance, inference latency, and system health metrics

DevOps \& Automation:

Design and implement CI/CD pipelines using GitHub Actions, GitLab CI, or AWS CodePipeline

Automate deployment processes with infrastructure testing and validation

Implement monitoring, logging, and alerting using CloudWatch, Prometheus, Grafana

Manage containerization with Docker and orchestration with Kubernetes/ECS

Data Engineering:

Build data pipelines for AI training and inference using AWS Glue, Step Functions, Lambda

Design and implement data lakes using S3, Lake Formation, and data cataloging

Implement automated and scheduled data synchronization processes

Optimize data storage and retrieval for ML workloads

Security \& Compliance:

Implement cloud security best practices: IAM, VPC design, encryption, secrets management

Build enterprise security and compliance strategies for AI/ML workloads

Ensure solutions meet regulatory requirements (PCI-DSS, GDPR, SOC2, MAS TRM, etc where applicable)

Conduct security reviews and implement remediation strategies

Cost \& Performance Optimization:

Optimize cloud spend for compute-intensive AI workloads

Implement spot instance strategies, auto-scaling, and resource scheduling

Monitor and optimize GPU utilization, inference latency, and throughput

Perform cost analysis and implement cost-saving measures

Operations \& Support:

Implement disaster recovery procedures for AI models and training data

Manage backup strategies and business continuity planning

Troubleshoot and resolve production issues in AI infrastructure

Provide technical guidance to project teams during implementation

Skills

==========

Cloud Architecture \& Design:

Strong solution architecture skills with ability to translate business requirements into technical designs

Experience in Well Architected review and remediation

Deep understanding of AWS services, particularly compute, storage, networking, and AI/ML services

Experience designing scalable, highly available, and fault-tolerant systems

Ability to create clear architecture diagrams and technical documentation

Cost modeling and ROI calculation capabilities

Technical Leadership:

Comfortable leading technical discussions with clients and stakeholders

Ability to guide engineers and share knowledge effectively

Strong problem-solving and analytical thinking skills

Experience with architectural decision-making and trade-off analysis

Programming \& Development:

Advanced Python programming: object-oriented design, async programming, testing

API development with FastAPI, Flask, or similar frameworks

Frontend development basics: React, etc (for prototypes and demos with AI code generation tools)

Shell scripting for automation and deployment

Git version control and collaborative development workflows

Infrastructure as Code:

AWS CDK (required) - CloudFormation experience is valuable

Terraform (highly preferred) for multi-cloud or hybrid scenarios

Understanding of IaC best practices: modularity, reusability, testing

Experience with infrastructure testing and validation frameworks

AI/ML Infrastructure:

Hands-on experience with AWS SageMaker: training jobs, endpoints, pipelines, notebooks

Understanding of ML lifecycle: data preparation, training, deployment, monitoring

Experience with GPU management and optimization for training/inference

Knowledge of containerization for ML models (Docker, container registries)

Familiarity with ML frameworks: PyTorch, TensorFlow, LangChain, Llamaindex, etc

DevOps \& Automation:

CI/CD pipeline design and implementation (GitHub Actions, GitLab CI, AWS CodePipeline)

Container orchestration: Docker, Kubernetes, Amazon ECS

Configuration management and deployment automation

Monitoring and observability: CloudWatch, Prometheus, Grafana, ELK stack

Communication \& Collaboration:

Excellent written and verbal communication in Advanced English

Ability to explain complex technical concepts to non-technical stakeholders

Comfortable with client-facing presentations and technical demos

Strong documentation skills with attention to detail

Collaborative mindset with ability to work across functional teams

Problem-Solving:

Advanced task breakdown and estimation abilities

Debugging and troubleshooting complex distributed systems

Performance optimization and tuning

Incident response and root cause analysis

Knowledge

AWS Cloud Platform (Required):

AWS Certified Solutions Architect Associate (minimum requirement)

AWS Certified Solutions Architect Professional or AWS Certified Machine Learning - Specialty (highly preferred)

Deep knowledge of core AWS services:

  • Compute: EC2, Lambda, ECS, EKS, SageMaker

  • Storage: S3, EFS, EBS, FSx

  • Networking: VPC, Route53, CloudFront, API Gateway, Load Balancers

  • AI/ML: SageMaker, Bedrock, Rekognition, Textract, Comprehend, Lex, Polly

  • Data: RDS, DynamoDB, Redshift, Glue, Athena, Kinesis

  • Security: IAM, KMS, Secrets Manager, Security Hub, GuardDuty

  • DevOps: GitHub Action, CodePipeline, CodeBuild, CodeDeploy, CloudFormation, CDK, Terraform

AI/ML Technologies:

Understanding of machine learning concepts and model training/deployment lifecycle

Familiarity with Generative AI technologies: LLMs, RAG, vector databases, prompt engineering

Knowledge of ML frameworks and libraries: PyTorch, TensorFlow, scikit-learn, pandas, numpy

Experience with MLOps practices and tools

Understanding of model serving patterns: real-time vs batch inference

Software Development:

Modern software development practices: testing, code review, documentation

API design principles: RESTful, GraphQL, event-driven architectures

Database design and optimization: SQL and NoSQL

Authentication and authorization: OAuth, JWT, IAM

DevOps \& Infrastructure:

Linux/UNIX system administration

Networking fundamentals: TCP/IP, DNS, HTTP/HTTPS, load balancing

Security best practices for cloud environments

Disaster recovery and business continuity planning

Industry Knowledge:

Understanding of cloud consulting delivery models

Familiarity with agile/scrum methodologies

Awareness of compliance frameworks: GDPR, HIPAA, SOC2, ISO27001

Knowledge of FinTech, or other regulated industries (plus)

Additional Knowledge (Preferred):

Azure or GCP certifications and experience

Multi-cloud architecture patterns

Serverless architecture patterns

Data engineering and data lake design

Cost optimization strategies and FinOps practices

Experience

Cloud Engineering \& Architecture:

5+ years in cloud engineering, DevOps, or solution architecture roles

3+ years hands-on experience with AWS services and architecture

Proven track record of designing and implementing cloud solutions from scratch

Experience with both greenfield projects and cloud migration initiatives

AI/ML Infrastructure:

2+ years working with AI/ML workloads on cloud platforms

Hands-on experience deploying and managing ML models in production

Experience with GPU-based compute for training or inference

Understanding of AI/ML infrastructure challenges and optimization techniques

Infrastructure as Code:

3+ years building infrastructure using IaC tools (AWS CDK, Terraform, CloudFormation)

Experience creating reusable IaC modules and components

Track record of infrastructure automation and standardization

Software Development:

4+ years programming experience in Python (required)

Experience building APIs with FastAPI, Flask, or similar frameworks

History of creating prototypes, MVPs, or PoC applications

Comfortable with full-stack development for demos and prototypes

DevOps \& Automation:

3+ years implementing CI/CD pipelines and deployment automation

Experience with containerization (Docker) and orchestration (Kubernetes/ECS)

Linux/UNIX system administration experience

Monitoring and observability implementation

Client-Facing Work:

Experience gathering requirements and translating them into technical solutions

History of presenting technical architectures to clients and stakeholders

Participation in presales activities, demos, or technical workshops

Ability to work directly with customers to solve complex problems

Industry Experience (Preferred):

Consulting or professional services background

Experience in regulated industries (FinTech, Insurance, Banks)

Work with enterprise clients on large-scale implementations

Startup or fast-paced environment experience

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