AI/ML Architect

Philadelphia, PA, US • Posted 19 days ago • Updated 19 days ago
Full Time
No Travel Required
On-site
$170,000 - $200,000/yr
Fitment

Dice Job Match Score™

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Job Details

Skills

  • Artificial Intelligence
  • Machine Learning Operations (ML Ops)
  • Machine Learning (ML)
  • API
  • Amazon Web Services
  • Google Cloud Platform
  • Real-time

Summary

Description:

  • Seeking a senior AI/ML platform leader to design an operationalize a scalable production ready AI/ML architecture across multiple business units.
  • This role is responsible for moving the organization from proof of concept AI efforts to repeatable governed delivery of models in production.
  • The ideal candidate has built and deployed machine learning systems at scale, understands both ML development, and platform engineering, and can define the environments pipelines and architectural standards that enable team to safely and efficiently ship AI.
  • This is a hands-on architectural leadership role with significant influence across product, engineering, data and security teams.

Key responsibilities:

  • Include AIML architecture and platform design define the end to end AI/ML reference architecture from Data injection through model serving and monitoring. Establish standards for data storage, access patterns and lineage, including separation of raw, curated and feature ready data. Assess and define the need for shared platform capabilities such as
    • feature stores
    • model registries
    • AIML catalogues
    • experiment tracking
    • design for scale across multiple business units with differing data sensitivity, regulatory and operational needs
  • Environment and delivery pipeline: Define standard development, validation and production environments for AIML workloads. Designer a repeatable ML delivery pipeline covering
    • model development and training,
    • validation, approval and promotion,
    • deployment (batch and/or real time)
    • monitoring drift detection and retraining
    • establish CI/CD (and continuous training where appropriate) best practices for ML systems
  • MLOps governance and production readiness: Define what production read means for AIML models, including:
    • testing and validation requirements,
    • monitoring and alerting
    • rollback and incident response patterns,
    • partner with security, legal and compliance team to integrate governance without slowing delivery
    • ensure models are discoverable auditable and traceable across environment and business units
  • Enablement and operating model: Create a paved road for AI development
    • shared standards, templates and tooling that business unit can serve against
    • advise and enable product teams and engineering teams moving models from POC to production
    • help define the long-term operating model for AI/ML ownership across central platform teams and federated BU teams

Required qualifications:

  • 10+ years of experience in software engineering, data platforms or ML engineering
  • 5+ years of hands-on experience deploying machine learning systems into production
  • proving experience in designing AI/ML platform or MLOps architectures (not just individual models)
  • strong understanding of:
    • ML life cycle management data,
    • Data pipelines and feature engineering
    • model serving patterns (batch, real time, API’s )
    • experience working across organizational boundaries (multiple business teams and units)
    • Ability to communicate architectural designs and decisions clearly to both technical and non-technical stakeholders

Preferred qualification:

  • Experience designing or operating features stores model registries and experiment tracking platforms, AI governance and risk framework.
  • familiarity with cloud, native ML platforms and infrastructure (AWS, Google Cloud Platform, Azure or similar)
  • Experience monitoring teams and establishing standards at scale
  • background in regulated or data sensitive environment

What does success looks like in 12 to 18 months:

  • A documented adopted AIML reference architecture used cross business units
  • Clear standardize environment and pipelines enabling faster promotion from POC to production
  • Reduced the duplication of feature engine engineering, and model deployment efforts
  • consistent visibility into which models are running in production and how they perform performing
  • Increase confidence from leadership and organization’s ability to deliver AI responsibly and scale.

The pay range for this role is $170,000- $200,000 per annum including any bonuses or variable pay. Tech Mahindra also offers benefits like medical, vision, dental, life, disability insurance and paid time off (including holidays, parental leave, and sick leave, as required by law). Ask our recruiters for more details on our Benefits package. The exact offer terms will depend on the skill level, educational qualifications, experience and location of the candidate.

Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.
  • Dice Id: 10117699
  • Position Id: 8886115
  • Posted 19 days ago
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