Y
AI

AI/ML Engineer

Yzarc Consulting · Remote, US · $115k - $160k

Actively hiring Posted 25 days ago

Job Summary

The AI/ML Engineer is a core member of the AI/AWS Team responsible for designing and deploying machine learning models and data pipelines on the cloud/AWS. This role focuses on the technical setup, configuration, and management of large-scale data ingestion and transformation processes on the cloud/AWS, leveraging automation to accelerate the data science and ML operationalization (MLOps) journey.

Key Responsibilities

Data Transformation and ML Pipeline Management

○ Configure and manage the cloud/AWS services (e.g., AWS Glue, Sagemaker Data Wrangler) to set up data connectors and execute large-scale data transformation jobs.

○ Select and execute AI/ML capabilities such as feature engineering, data quality checks, model training, performance analysis, and model deployment pipelines (MLOps).

○ Review and assess model training job outputs, including feature importance reports, data drift metrics, and model performance baselines, to inform deployment decisions.

Platform and Infrastructure

○ Set up and secure the cloud/AWSaccounts, S3 buckets, and configure necessary IAM permissions to enable secure data transfer and access for ML workflows.

○ Provision and manage target cloud infrastructure for ML model serving and data processing using Infrastructure as Code (IaC) templates (AWS CloudFormation, the cloud/AWS Cloud Development Kit (CDK), or Terraform).

○ Manage CI/CD/CD (or MLOps) pipelines to facilitate the deployment and continuous integration of models and microservices.

Model and Data Handling

○ Organize and manage large datasets and required code artifacts—including training data, feature stores, Python scripts, and Jupyter notebooks—into secure data repositories (e.g., S3).

○ Develop and review production-grade model code and associated scripts (e.g., for inference) to ensure performance and maintainability, optionally enabling monitoring tools for model quality and drift detection.

Model Testing and Validation

○ Generate test artifacts, including model validation metrics and test automation scripts, to support functional and performance testing of deployed ML models.

Required Skills and Experience

● Experience configuring and managing the cloud/AWSservices, specifically Amazon S3 and IAM permissions, and ML services like Amazon SageMaker, within an enterprise environment.

● Technical understanding of machine learning principles, model lifecycle management, and MLOps practices.

● Proficiency with Infrastructure as Code (IaC) tooling, such as AWS CloudFormation, AWS CDK, or Terraform.

● Knowledge of cloud-native development and deployment practices, including microservices, CI/CD, and AWS compute services (ECS, EKS, Lambda, Fargate).

● Familiarity with data transformation and processing methodologies (e.g., Spark, AWS Glue, EMR) and the phases of the ML lifecycle (Data Prep, Training, Tuning, Deployment, Monitoring).

Pay: $115,000.00 - $160,000.00 per year

Work Location: Remote

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Remote Ai Engineer Machine Learning Data Science Mlops Ai

Next step

Ready to Join the Team?

Apply once with DevFound. We'll route your profile to Yzarc Consulting and keep you informed when matching AI roles go live.

  • Single profile, multiple curated AI opportunities
  • No spam roles — only vetted AI positions
  • You choose which roles to apply to
Sign up to apply

No CV uploads. We never share your profile without your consent.

Common Questions

Frequently asked questions

Quick answers about how DevFound's AI matching, resumes, and referrals work.

DevFound's AI Copilot ingests your profile, goals, and live job data to deliver curated matches in seconds. Every match includes a resume variant, suggested referrals, and interview prep so you can act immediately. The more feedback you provide, the sharper the Copilot becomes.

AI-led job searches shrink the hours spent sifting through boards and formatting resumes. DevFound pairs automation with your personal outreach, so you reserve energy for interviews and negotiation. Traditional networking still matters, but AI gives you a lift before you even send a message.

Modern AI roles expect comfort with production-grade code, data fluency, and practical ML tooling. The strongest candidates pair deep technical chops with storytelling—translating model impact to product, GTM, and exec partners. Continuous learning keeps you ahead as stacks evolve.

DevFound rewards active seekers. Keep your profile fresh, respond to match quality prompts, and enable alerts so you never miss a role. The AI prioritizes companies and teams that align with your feedback, accelerating both introductions and interview invites.

High-density tech hubs continue to host the deepest AI talent pools, yet distributed teams are catching up fast. Use DevFound filters to hone in on onsite, hybrid, or fully remote roles and watch openings expand across time zones.

DevFound aggregates thousands of remote AI openings and flags the nuances—core hours, async culture, and visa needs—up front. The Copilot also recommends how to position your distributed work experience so hiring managers know you can thrive on a remote team.