Architect - Machine Learning (MLOps Specialist)

Posted 8 Days Ago
Be an Early Applicant
2 Locations
In-Office
Senior level
Artificial Intelligence • Big Data • Machine Learning
The Role
Architect and implement enterprise-grade MLOps/LLMOps on AWS (EKS-first), building scalable pipelines for training, validation, registry, deployment, monitoring, CI/CD, observability, lineage and governance; serve as technical authority, conduct architecture reviews, troubleshoot systems, and mentor engineering teams across projects.
Summary Generated by Built In

While technology is the heart of our business, a global and diverse culture is the heart of our success. We love our people and we take pride in catering them to a culture built on transparency, diversity, integrity, learning and growth.
If working in an environment that encourages you to innovate and excel, not just in professional but personal life, interests you- you would enjoy your career with Quantiphi!

Role : Architect - Machine Learning

Experience: 7-14 Years

Location: Mumbai/Bangalore

Must have skills & Qualifications:

  • 8+ years working in ML/AI engineering or MLOps roles with strong architecture exposure.

  • Strong expertise in AWS cloud-native ML stack, including: EKS (primary), ECS, Lambda, API Gateway, CI/CD (CodeBuild/CodePipeline or equivalent)

  • Hands-on experience with at least one major MLOps toolset and awareness of alternatives: MLflow, Kubeflow, SageMaker Pipelines, Airflow, BentoML, KServe, Seldon

  • Deep understanding of model lifecycle management (training → registry → deployment → monitoring).

  • Experience implementing or supporting LLMOps pipelines, including: prompt versioning, evaluation metrics, automation frameworks

  • Deep understanding of ML lifecycle: data ingestion, feature engineering, training, evaluation, model packaging, CI/CD, drift detection, monitoring, and governance.

  • Strong experience with AWS SageMaker (Training, Processing, Batch Transform, Pipelines, Feature Store, Model Registry, Model Monitor).

  • Experience implementing ML CI/CD pipelines including automated training, testing, validation, model promotion, and endpoint deployment.

  • Ability to build dynamic and versioned pipelines using SageMaker Pipelines, Step Functions, or Kubeflow.

  • Strong SQL and data transformation experience using Snowflake, Databricks, Spark, or EMR.

  • Experience with feature engineering pipelines and Feature Store management (SageMaker or Feast).

  • Understanding of lineage tracking: training data snapshot, feature versions, code versioning, metadata tracking, reproducibility.

  • Hands-on experience with Bedrock, OpenAI, Anthropic, or Llama models.

  • Experience with CloudWatch, SageMaker Model Monitor, Prometheus/Grafana, or Datadog.

  • Strong foundation in Python and cloud-native development patterns.

  • Solid understanding of security best practices, IAM, secrets management, and artifact governance.

Good to have skills:

  • Experience with vector databases, RAG pipelines, or multi-agent AI systems.

  • Exposure to DevOps and infrastructure-as-code (Terraform, Helm, CDK).

  • Hands-on understanding of model drift detection, A/B testing, canary rollouts, and blue-green deployments.

  • Familiarity with Observability stacks (Prometheus, Grafana, CloudWatch, OpenTelemetry).

  • Knowledge of Lakehouse (Delta/Iceberg/Hudi) architecture.

  • Ability to translate business goals into scalable AI/ML platform designs.

  • Strong communication and cross-team collaboration skills.

  • Ability to guide engineering teams through technical uncertainty and design choices.

Key Responsibilities:

  • Architect and implement the MLOps strategy for the EVOKE Phase-2 programme, ensuring alignment with the project proposal and delivery roadmap.

  • Design and own enterprise-grade ML/LLM pipelines covering model training, validation, deployment, versioning, monitoring, and CI/CD automation.

  • Build container-oriented ML platforms (EKS-first) while evaluating alternative orchestration tools with similar capabilities (Kubeflow, SageMaker, MLflow, Airflow, etc.).

  • Implement hybrid MLOps + LLMOps workflows, including prompt/version governance, evaluation frameworks, and monitoring for LLM-based systems.

  • Serve as a technical authority across multiple internal and customer projects, not limited to EVOKE, contributing architectural patterns, best practices, and reusable frameworks.

  • Enable observability, monitoring, drift detection, lineage tracking, and auditability across ML/LLM systems.

  • Collaborate with cross-functional teams — data engineering, platform, DevOps, and client stakeholders — to deliver production-ready ML solutions.

  • Ensure all solutions adhere to security, governance, and compliance expectations, particularly around handling cloud services, Kubernetes workloads, and MLOps tools.

  • Conduct architecture reviews, troubleshoot complex ML system issues, and guide teams through implementation across cloud-native ML platforms.

  • Mentor engineers and provide guidance on modern MLOps tools, platform capabilities, and best practices.

If you like wild growth and working with happy, enthusiastic over-achievers, you'll enjoy your career with us!

Skills Required

  • 8+ years working in ML/AI engineering or MLOps roles with strong architecture exposure
  • Expertise in AWS cloud-native ML stack: EKS, ECS, Lambda, API Gateway, CI/CD (CodeBuild/CodePipeline or equivalent)
  • Hands-on experience with an MLOps toolset (MLflow, Kubeflow, SageMaker Pipelines, Airflow, BentoML, KServe, Seldon)
  • Deep understanding of model lifecycle management (training, registry, deployment, monitoring)
  • Experience implementing or supporting LLMOps pipelines, including prompt versioning, evaluation metrics, and automation frameworks
  • Strong experience with AWS SageMaker (Training, Processing, Batch Transform, Pipelines, Feature Store, Model Registry, Model Monitor)
  • Experience implementing ML CI/CD pipelines: automated training, testing, validation, model promotion, and endpoint deployment
  • Ability to build dynamic/versioned pipelines using SageMaker Pipelines, Step Functions, or Kubeflow
  • Strong SQL and data transformation experience using Snowflake, Databricks, Spark, or EMR
  • Experience with feature engineering pipelines and Feature Store management (SageMaker or Feast)
  • Understanding of lineage tracking, data snapshotting, feature/code versioning, metadata tracking, and reproducibility
  • Hands-on experience with Bedrock, OpenAI, Anthropic, or Llama models
  • Experience with observability/monitoring tools: CloudWatch, SageMaker Model Monitor, Prometheus/Grafana, or Datadog
  • Strong foundation in Python and cloud-native development patterns
  • Solid understanding of security best practices, IAM, secrets management, and artifact governance
  • Experience with vector databases, RAG pipelines, or multi-agent AI systems
  • Exposure to DevOps and infrastructure-as-code (Terraform, Helm, CDK)
  • Hands-on understanding of model drift detection, A/B testing, canary rollouts, and blue-green deployments
  • Familiarity with observability stacks and OpenTelemetry
  • Knowledge of Lakehouse architectures (Delta, Iceberg, Hudi)
  • Strong communication, cross-team collaboration, and ability to guide engineering teams

Quantiphi Compensation & Benefits Highlights

The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Quantiphi and has not been reviewed or approved by Quantiphi.

  • Flexible Benefits Hybrid and work-from-home options are commonly available and perceived as meaningful perks that increase overall package value. Flexibility by team and role often enhances day-to-day experience even when cash pay is not top-tier.
  • Healthcare Strength U.S. materials indicate medical coverage that includes dental and vision, and employee accounts align with having these plans in place. The presence of core health benefits contributes to a baseline of security across key locations.
  • Parental & Family Support Paid parental leave is available in the U.S., with examples citing generous leave lengths. Family-focused policies appear alongside other flexibility features.

Quantiphi Insights

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The Company
HQ: Marlborough, MA
3,494 Employees
Year Founded: 2013

What We Do

Quantiphi is an award-winning AI-first digital engineering company driven by the desire to solve transformational problems at the heart of business. Quantiphi solves the toughest and complex business problems by combining deep industry experience, disciplined cloud, and data-engineering practices, and cutting-edge artificial intelligence research to achieve quantifiable business impact at unprecedented speed.

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