

Integration International Inc.
Machine Learning Engineer
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Senior Machine Learning Architect in Burbank, CA (Hybrid – 3 Days Onsite), with a contract length of "unknown" and a pay rate of "unknown." Key skills include AWS expertise, Python proficiency, and experience in ML platform design.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
Unknown
-
🗓️ - Date
February 27, 2026
🕒 - Duration
Unknown
-
🏝️ - Location
Hybrid
-
📄 - Contract
W2 Contractor
-
🔒 - Security
Unknown
-
📍 - Location detailed
Burbank, CA
-
🧠 - Skills detailed
#Data Science #S3 (Amazon Simple Storage Service) #Observability #Python #AWS (Amazon Web Services) #Airflow #Monitoring #Batch #Lambda (AWS Lambda) #MLflow #Snowflake #RDS (Amazon Relational Database Service) #SageMaker #Storage #Deployment #Scala #Leadership #IAM (Identity and Access Management) #ML Ops (Machine Learning Operations) #ML (Machine Learning) #Data Engineering #Strategy #Terraform #Cloud
Role description
🚀 Hiring: Senior ML Architect (AWS)
📍 Location: Burbank, CA (Hybrid – 3 Days Onsite)
Local candidate only and W2
We’re looking for a Senior Machine Learning Architect to define and own the technical vision of a scalable ML platform built in AWS. This is a senior individual contributor role — you will be the primary technical authority on ML architecture decisions, partnering closely with ML Ops, Data Science, Infrastructure, and Data Engineering teams.
This environment is evolving, with opportunities to build orchestration, deployment architecture, and standardized ML development practices from the ground up.
🔹 What You’ll Do
🏗️ Platform Architecture & Technical Vision
Own end-to-end ML platform architecture (ingestion → feature management → training → serving → observability)
Define and maintain a phased ML architecture roadmap
Document and drive architectural decisions (orchestration, serving patterns, feature store, model registry)
Ensure scalability as models, data sources, and use cases grow
⚙️ ML Development Platform Design
Define standards for ML development (environments, dependencies, packaging, repo structure)
Design CI/CD architecture for the full ML lifecycle
Establish boundaries between experimentation, staging, and production
Select tooling that enables fast, reliable DS experimentation
🔄 Orchestration & Data Flow
Design orchestration strategy (Airflow, Dagster, SageMaker Pipelines, etc.)
Architect data flow from Snowflake through preprocessing, training, and inference
Define intermediate storage patterns and data contracts
Establish lineage, monitoring, and observability standards
🚀 Deployment & Serving Architecture
Design AWS-based ML deployment strategy (batch + real-time)
Define feature store and model registry architecture
Provide architectural guardrails across ECS, SageMaker, and related services
Evaluate AWS-native and third-party tooling
🤝 Technical Leadership
Serve as senior authority on ML platform decisions
Drive alignment across engineering, DS, and infrastructure teams
Translate complex architectural trade-offs for technical and business stakeholders
✅ Must-Have Experience
8–12+ years in ML Engineering, ML Architecture, or ML Platform roles
Proven experience designing ML platforms from scratch in AWS
Deep AWS expertise (SageMaker, ECS, Lambda, Step Functions, S3, IAM, RDS)
Strong Python proficiency and production ML tooling experience (MLflow, orchestration frameworks, feature stores)
Experience with Terraform or CloudFormation
Deep understanding of the full ML lifecycle — from experimentation to production
🌟 What We’re Looking For
Senior-level technical leadership without direct people management
Ability to set standards across multiple teams
Strong communication skills and architectural clarity
Experience scaling ML systems in real-world production environments
🚀 Hiring: Senior ML Architect (AWS)
📍 Location: Burbank, CA (Hybrid – 3 Days Onsite)
Local candidate only and W2
We’re looking for a Senior Machine Learning Architect to define and own the technical vision of a scalable ML platform built in AWS. This is a senior individual contributor role — you will be the primary technical authority on ML architecture decisions, partnering closely with ML Ops, Data Science, Infrastructure, and Data Engineering teams.
This environment is evolving, with opportunities to build orchestration, deployment architecture, and standardized ML development practices from the ground up.
🔹 What You’ll Do
🏗️ Platform Architecture & Technical Vision
Own end-to-end ML platform architecture (ingestion → feature management → training → serving → observability)
Define and maintain a phased ML architecture roadmap
Document and drive architectural decisions (orchestration, serving patterns, feature store, model registry)
Ensure scalability as models, data sources, and use cases grow
⚙️ ML Development Platform Design
Define standards for ML development (environments, dependencies, packaging, repo structure)
Design CI/CD architecture for the full ML lifecycle
Establish boundaries between experimentation, staging, and production
Select tooling that enables fast, reliable DS experimentation
🔄 Orchestration & Data Flow
Design orchestration strategy (Airflow, Dagster, SageMaker Pipelines, etc.)
Architect data flow from Snowflake through preprocessing, training, and inference
Define intermediate storage patterns and data contracts
Establish lineage, monitoring, and observability standards
🚀 Deployment & Serving Architecture
Design AWS-based ML deployment strategy (batch + real-time)
Define feature store and model registry architecture
Provide architectural guardrails across ECS, SageMaker, and related services
Evaluate AWS-native and third-party tooling
🤝 Technical Leadership
Serve as senior authority on ML platform decisions
Drive alignment across engineering, DS, and infrastructure teams
Translate complex architectural trade-offs for technical and business stakeholders
✅ Must-Have Experience
8–12+ years in ML Engineering, ML Architecture, or ML Platform roles
Proven experience designing ML platforms from scratch in AWS
Deep AWS expertise (SageMaker, ECS, Lambda, Step Functions, S3, IAM, RDS)
Strong Python proficiency and production ML tooling experience (MLflow, orchestration frameworks, feature stores)
Experience with Terraform or CloudFormation
Deep understanding of the full ML lifecycle — from experimentation to production
🌟 What We’re Looking For
Senior-level technical leadership without direct people management
Ability to set standards across multiple teams
Strong communication skills and architectural clarity
Experience scaling ML systems in real-world production environments






