Negotiable
Undetermined
Remote
Remote
Summary: As a Cloud Solution Architect with strong AI/ML experience at Fusion Global Solutions, you will engage directly with enterprise customers to design and implement advanced AI/ML solutions on AWS. This role requires a high level of technical expertise in Python and AI engineering, focusing on rapid prototyping and full-stack delivery. You will be responsible for developing production-grade systems that address complex customer challenges efficiently. This position is not a pre-sales or support role but rather a hands-on engineering position at the forefront of AI technology.
Key Responsibilities:
- Embed with enterprise customers to scope, architect, and deliver end-to-end AI/ML solutions on AWS—from data layer through front-end interface
- Design and build agentic AI systems using Amazon Bedrock—including multi-agent orchestration, RAG pipelines, knowledge bases, guardrails, and fine-tuned foundation models
- Write expert-level Python to develop, train, evaluate, and deploy ML models using Amazon SageMaker, including Pipelines, Feature Store, Model Registry, and Model Monitor
- Prototype rapidly—solve customer-blocking technical scenarios within hours when required
- Lead technical discovery sessions to identify high-value AI/ML use cases, assess data readiness, and define measurable success criteria with customers
- Implement MLOps best practices on SageMaker: automated retraining pipelines, A/B testing, drift detection, model versioning, and CI/CD for ML workflows
- Leverage AWS AI services to rapidly deliver capabilities when custom models are not required
- Advise customers on responsible AI practices including bias detection, model explainability, and governance using AWS built-in tooling
- Produce clear architecture diagrams, technical runbooks, and handoff documentation for every engagement
Key Skills:
- Expert-level Python coding ability, including software design patterns, performance optimization, testing, and production-grade code quality
- Hands-on experience building agentic AI systems using Amazon Bedrock, LangChain, and/or LlamaIndex
- Demonstrated ability to solve ambiguous, blocking customer scenarios quickly by building working prototypes in hours
- Experience delivering end-to-end solutions across the stack
- 5+ years of professional software engineering experience, with at least 1 year deploying AI/ML solutions on AWS or equivalent cloud platform
- Training jobs, real-time endpoints, Pipelines, Feature Store, and/or Model Monitoring experience with Amazon SageMaker
- Strong understanding of AWS data services: S3, Glue, Athena, Redshift, Kinesis, and Lake Formation
- Solid grasp of AWS infrastructure fundamentals: IAM, VPC, Lambda, CloudWatch, and API Gateway
- Excellent communication skills—able to present complex AI system behavior and trade-offs to both technical teams and executive stakeholders
Salary (Rate): undetermined
City: undetermined
Country: undetermined
Working Arrangements: remote
IR35 Status: undetermined
Seniority Level: undetermined
Industry: IT
Job Title: Cloud Solution Architect with Strong AI/ML exp
Location: Remote
Experience: 12+ Years
Duration: Long Term
About the Role:
As an AWS Forward Deployment Engineer (FDE) at Fusion Global Solutions, you will sit at the intersection of applied AI engineering and hands-on customer partnership. You will embed directly with our most strategic enterprise customers to design, prototype, and deliver production-grade AI/ML solutions on AWS—building agentic systems with Amazon Bedrock, training and deploying models on SageMaker, and writing expert-level Python to move fast enough to unblock customers in hours, not weeks. This is not a pre-sales or support role: you are an L3-caliber software engineer and AI practitioner who works at the frontier of what AWS makes possible, turning complex customer problems into intelligent, scalable cloud solutions.
Core Competencies:
- AI Engineering: Deep expertise in AI and machine learning on AWS
- Full-Stack Delivery: End-to-end solutions from the data layer to the user interface
- Rapid Prototyping: Build and iterate on proofs of concept quickly
- Customer-Centric: Translate customer needs into precise technical solutions
Responsibilities:
- Embed with enterprise customers to scope, architect, and deliver end-to-end AI/ML solutions on AWS—from data layer through front-end interface
- Design and build agentic AI systems using Amazon Bedrock—including multi-agent orchestration, RAG pipelines, knowledge bases, guardrails, and fine-tuned foundation models
- Write expert-level Python to develop, train, evaluate, and deploy ML models using Amazon SageMaker, including Pipelines, Feature Store, Model Registry, and Model Monitor
- Prototype rapidly—solve customer-blocking technical scenarios within hours when required
- Lead technical discovery sessions to identify high-value AI/ML use cases, assess data readiness, and define measurable success criteria with customers
- Implement MLOps best practices on SageMaker: automated retraining pipelines, A/B testing, drift detection, model versioning, and CI/CD for ML workflows
- Leverage AWS AI services to rapidly deliver capabilities when custom models are not required
- Advise customers on responsible AI practices including bias detection, model explainability, and governance using AWS built-in tooling
- Produce clear architecture diagrams, technical runbooks, and handoff documentation for every engagement
Requirements:
Required Qualifications (L3 SWE Proficiency):
- Expert-level Python coding ability, including software design patterns, performance optimization, testing, and production-grade code quality
Agentic Fluency:
- Hands-on experience building agentic AI systems using Amazon Bedrock, LangChain, and/or LlamaIndex
Rapid Prototyping:
- Demonstrated ability to solve ambiguous, blocking customer scenarios quickly by building working prototypes in hours
Full-Stack Delivery:
- Experience delivering end-to-end solutions across the stack
- 5+ years of professional software engineering experience, with at least 1 year deploying AI/ML solutions on AWS or equivalent cloud platform
Hands-on experience with Amazon SageMaker:
- Training jobs, real-time endpoints, Pipelines, Feature Store, and/or Model Monitoring
- Strong understanding of AWS data services: S3, Glue, Athena, Redshift, Kinesis, and Lake Formation
Solid grasp of AWS infrastructure fundamentals:
- IAM, VPC, Lambda, CloudWatch, and API Gateway
- Excellent communication skills—able to present complex AI system behavior and trade-offs to both technical teams and executive stakeholders
Nice to Have:
- AWS Certified Machine Learning—Specialty or AWS Certified AI Practitioner certification
- Experience with Amazon Bedrock multimodal capabilities
- Background in NLP, computer vision, conversational AI, or time-series forecasting
- Familiarity with additional agentic frameworks
- Prior customer-facing experience in an applied AI or ML engineering role
- Knowledge of responsible AI practices
What Success Looks Like:
In your first 30 days, you''ll shadow existing AWS customer engagements, get hands-on with our AI delivery methodology, and build your first Bedrock-powered agent or SageMaker pipeline. Within 90 days, you''ll be leading your own engagements end-to-end—from use case discovery through full-stack deployment. Within 6 months, you''ll be the go-to technical authority on agentic AI delivery at Fusion, influencing how we build our AWS practice and setting the standard for rapid, high-quality AI deployment for our enterprise customers.
Why This Role:
- Frontier work
- Speed
- Full-stack impact
- AWS partnership
- Ownership
- Career growth