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GATE Insight, Inc.

ML Architect 12+Yrs ll Chicago , IL(Onsite)

GATE Insight, Inc., Chicago, IL


Job Role : ML Architect

Location: Chicago , IL(Onsite)(
Duration: 12+ months (Possible Extension)


Linkedin & Passport Number is Mandatory for the submission

Job Description:-

The ML Architect designs and deploys scalable machine learning systems, ensuring models are production-ready, secure, and efficient. This role focuses on building ML pipelines, deploying models, and maintaining best practices for MLOps.

Qualifications:
  • Bachelor's or Master's Degree in Computer Science, Data Engineering, Machine Learning, or related field.
  • Preferred: Certification in cloud platforms (Azure, AWS, GCP) or MLOps.

Experience:
  • 7-9+ years of experience in machine learning, software engineering, or data engineering.
  • 3-4 years of experience deploying ML models in production environments.
  • Experience with cloud platforms, MLOps practices, and large-scale systems in the QSR or retail industry is highly beneficial.

Key Skills:

System Design & Architecture:
  • Experience designing and deploying machine learning systems that scale across thousands of locations.
  • Building real-time recommendation engines for digital ordering platforms.

Model Deployment & MLOps:
  • Proficiency in MLOps practices for continuous integration, delivery, and deployment (CI/CD).
  • Familiarity with cloud-based ML services (Azure ML, SageMaker, GCP Vertex AI).
  • Experience in containerization (Docker) and orchestration (Kubernetes).
  • Knowledge of serverless computing and cloud-native services.

Inventory & Supply Chain Optimization:
  • Building ML solutions for supply chain forecasting, inventory optimization, and waste reduction.

Fraud Detection & Risk Management:
  • Experience in implementing fraud detection systems for payment processing and loyalty programs.


Recommendation Systems:
  • Developing personalized upsell and cross-sell recommendations for digital ordering systems.

Performance Optimization:
  • Ability to optimize model performance and latency for real-time applications.
  • Experience with distributed computing frameworks (Spark, Dask).

Security & Compliance:
  • Ensuring deployed models comply with data privacy regulations (e.g., GDPR, CCPA) and security best practices.
  • Collaboration & Documentation:
    • Ability to collaborate with data scientists, engineers, and DevOps teams.
    • Strong documentation skills for model architecture and deployment processes.