Resumo da vaga

Senior Machine Learning Engineer

Requisitos e responsabilidades

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Responsibilities

  • Design, experiment with, and implement ML models to solve complex identity security challenges.
  • Take ownership of research and prototyping efforts in areas like embeddings, representation learning, and similarity measurement.
  • Translate AI research and prototypes into practical, effective, and production-ready systems.
  • Drive improvements in model accuracy, precision/recall, and generalization for your projects.
  • Implement and advocate for best practices in MLengineering, testing, and architecture.
  • Communicate complex ML concepts and project updates to technical and non-technical stakeholders.
  • Partner with product managers to scope and deliver high-impact AI capabilities.
  • Work cross-functionally with platform and analytics teams to ensure your components integrate seamlessly into SailPoint’s ecosystem.
  • Contribute to our model lifecycle management, AI governance, and responsible AI practices.

Requirements:

  • 5+ years of professional experience in a technical field with a focus on machine learning.
  • Proven experience applying modeling techniques such as anomaly detection, semantic search, embeddings, or similarity measurement to real-world applications.
  • Strong programming skills in Python and proficiency with ML frameworks such as PyTorch, TensorFlow, or scikit-learn.
  • Solid understanding of data modeling, feature engineering, and statistical analysis.
  • Excellent communication skills and the ability to collaborate effectively in a cross-functional team.
  • Strong foundation in software engineering best practices: testing, modularization, code review, and observability.
  • Good knowledge of MLOps practices—including model monitoring, retraining, and CI/CD.

Preferred

  • Experience in cybersecurity, identity, or enterprise SaaS systems.
  • Expertise in at least one of our core modeling areas: NLP, Behavioral Modeling, or GraphML.
  • Experience owning the technical design and delivery of complex ML components or features.
  • Hands-on experience building and deploying ML models in a cloud-native environment.

Roadmap for success-30 days:

  • Build a strong understanding of SailPoint’s AI vision, architecture, and current ML initiatives.
  • Learn existing data pipelines, environments, and model deployment frameworks.
  • Establish working relationships with key partners across AI, platform, DevOps, and product teams.
  • Review current ML models, data flows, and monitoring systems to identify optimization opportunities.
  • Contribute to initial improvements or bug fixes to gain familiarity with production workflows.

90 days:

  • Contribute to at least one end-to-end ML initiative or pilot, supporting improvements in performance, reliability, or scalability.
  • Participate in model evaluation and analysis, helping to identify gaps, edge cases, or areas for feature and data improvements to support robust production performance.
  • Collaborate with stakeholders to identify opportunities to improve scalability, reduce technical debt, or enhance ML capabilities.

6 months:

  • Deliver a significant improvement to a core AI product’s performance, scalability, or reliability.
  • Contribute to the design or enhancement of a reusable ML component (e.g., inference service, feature store, or monitoring framework).
  • Be recognized as a key contributor and technical resource for MLengineering within the AI team.

1 year:

  • Help establish a robust, scalable ML foundation across multiple AI initiatives.
  • Deliver one or more high-impact ML solutions from concept to production.
  • Mentor and elevate peers through collaboration and knowledge sharing.

The Tech Stack (if applicable):

  • Core Programming: SQL, Python, Shell/Bash, Go
  • Cloud Platform: AWS (SageMaker, Bedrock)
  • Data: Snowflake, DBT, Kafka, Airflow, Feast
  • Visualization: Tableau, Qlik
  • CI/CD: Cloudbees, Jenkins
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StackAWS, CI/CD, PythonSkills principais
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