SailPoint Logo

SailPoint

Staff Machine Learning Engineer (Remote)

Sorry, this job was removed at 04:09 p.m. (CST) on Thursday, Jan 08, 2026
Remote or Hybrid
Hiring Remotely in United States
141K-262K Annually
Remote or Hybrid
Hiring Remotely in United States
141K-262K Annually

Similar Jobs at SailPoint

An Hour Ago
Remote or Hybrid
North Carolina, USA
126K-212K Annually
Expert/Leader
126K-212K Annually
Expert/Leader
Artificial Intelligence • Cloud • Sales • Security • Software • Cybersecurity • Data Privacy
The RVP of Enterprise Sales at SailPoint will manage the Enterprise sales team, drive the sales process, and cultivate relationships with clients and partners to promote identity security solutions.
Top Skills: CybersecurityIdentity SecuritySaaS
17 Hours Ago
Remote or Hybrid
United States
129K-217K Annually
Expert/Leader
129K-217K Annually
Expert/Leader
Artificial Intelligence • Cloud • Sales • Security • Software • Cybersecurity • Data Privacy
Technical lead for backend SaaS identity analytics: design and implement scalable Java/Go microservices, produce estimates and POCs, lead technical design and code reviews, and collaborate with architecture and principal engineers.
Top Skills: AngularAWSBackboneContinuous DeliveryEvent-Driven ArchitectureGoJavaJavascript (Es5/Es6)Json Web Tokens (Jwt)MicroservicesOauthReactSaaSSingle Sign-On (Sso)
17 Hours Ago
Remote or Hybrid
United States
87K-147K Annually
Senior level
87K-147K Annually
Senior level
Artificial Intelligence • Cloud • Sales • Security • Software • Cybersecurity • Data Privacy
The Senior Vulnerability Management Analyst will manage vulnerability lifecycle, perform risk analysis, automate processes, and provide strategic expertise within SailPoint's Cybersecurity team.
Top Skills: CrowdstrikeMitre Att&CkNistOrcaOwaspQualysTeneable

About SailPoint:

SailPoint is the leader in identity security for the cloud enterprise. Our identity security solutions secure and enable thousands of companies worldwide, giving our customers unmatched visibility into the entirety of their digital workforce and ensuring that workers have the right access to do their job—no more and no less.

Built on a foundation of AI and ML, our Identity Security Cloud Platform delivers the right level of access to the right identities and resources at the right time—matching the scale, velocity, and changing needs of today’s cloud-oriented, modern enterprise.

About the Role

As a Staff Machine Learning Engineer, you will play a critical role in shaping, building, and scaling SailPoint’s AI-powered capabilities. You’ll work at the intersection of AI innovation, software engineering, and platform architecture—designing robust, production-grade ML systems that deliver customer insights and intelligent automation across our identity platform.

As a senior technical leader, you’ll partner closely with engineering, AI, and product teams to drive innovation, define our ML strategy, and mentor others in applying best practices for scalable, responsible AI.

This is both a hands-on and strategic role. You will lead complex, end-to-end ML initiatives—from model design and experimentation to deployment, monitoring, and continuous improvement—while advancing the evolution of SailPoint’s AI platform, data pipelines, and model governance standards.

About the team:

The AI team at SailPoint applies AI and domain expertise to create AI solutions that solve real problems in identity security. We believe the path to success is through meaningful customer outcomes, and we leverage classical ML as well as recent innovations in Generative AI and Graph ML to bring our solutions to SailPoint’s core product lines.

Responsibilities

  • Design, implement, and optimize ML models (supervised, unsupervised, and LLM-based) that power both customer-facing and internal product capabilities.

  • Translate AI research and experimental prototypes into scalable, maintainable production systems.

  • Lead technical efforts to improve model accuracy, precision/recall trade-offs, and generalization across diverse regions and customer datasets.

  • Build and enhance ML infrastructure and pipelines for feature extraction, model training, evaluation, deployment, and monitoring.

  • Drive the technical strategy for reproducibility, model versioning, data lineage, and CI/CD automation in ML systems.

  • Collaborate with AI platform and DevOps teams to ensure reliable data access, observability, and efficient use of compute resources.

  • Set technical direction and best practices for ML engineering across the AI organization, influencing architecture and design standards.

  • Mentor and guide engineers in scalable ML design patterns, experimentation frameworks, and software craftsmanship.

  • Partner with product and engineering leaders to prioritize and deliver high-impact AI capabilities aligned with business goals.

  • Work cross-functionally with architecture, platform, and analytics teams to ensure AI components integrate seamlessly across SailPoint’s ecosystem.

  • Advance model lifecycle management, AI governance, and responsible AI practices to ensure quality, fairness, and transparency.

  • Communicate complex ML concepts into actionable insights and recommendations for technical and non-technical audiences.

  • Support day-to-day team operations in partnership with TPMs and managers, ensuring alignment and delivery across initiatives.

Requirements: 

  • 8+ years of professional experience in machine learning engineering, software development, or a related technical field.

  • Strong programming skills in Python and proficiency with ML frameworks such as PyTorch, TensorFlow, or scikit-learn.

  • Proven track record of building and deploying ML models at production scale (cloud-native environments preferred).

  • Deep understanding of data modeling, feature engineering, and statistical analysis.

  • Expertise in data pipelines, ETL, and feature engineering using frameworks like Spark, Airflow, or dbt.

  • Solid knowledge of MLOps practices—including model monitoring, retraining, CI/CD, and experiment tracking.

  • Strong foundation in software engineering best practices: testing, modularization, code review, and observability.

  • Excellent communication and collaboration skills, with demonstrated experience leading cross-functional technical initiatives.

Preferred  

  • Experience with LLM-based solutions, embeddings, and retrieval-augmented generation (RAG).

  • Familiarity with identity, security, or enterprise SaaS systems.

  • Experience designing AI platforms or reusable ML services that support multiple product lines.

  • Demonstrated ability to set technical direction, influence architectural decisions, and guide organizational strategy.

Roadmap for success- 

30 days: 

  • Gain deep understanding of SailPoint’s AI vision, architecture, and active ML initiatives.

  • Familiarize with existing data pipelines, environments, and model deployment frameworks.

  • Build relationships with key stakeholders across AI, platform, DevOps, and product teams.

  • Conduct hands-on review of current ML models, data flows, and monitoring systems to identify immediate optimization or reliability gaps.

  • Begin contributing to small improvements or code reviews to gain familiarity with production practices.

90 days: 

  • Lead at least one end-to-end ML enhancement or pilot.

  • Establish and document best practices for reproducibility, observability, and CI/CD for ML systems.

  • Mentor junior engineers and support team-wide code quality and experimentation standards.

  • Present a roadmap or proposal for scaling AI components or addressing key technical debt areas.

6 months: 

  • Deliver measurable impact on model performance, reliability, or scalability for at least one core AI product.

  • Lead design and implementation of a shared ML service or reusable component (e.g., feature store, inference service, or monitoring framework).

  • Be recognized as a technical go-to for complex ML engineering and architecture decisions.

1 year: 

  • Establish SailPoint’s ML engineering foundation as robust, scalable, and production-ready across multiple AI initiatives.

  • Drive one or more flagship AI capabilities from prototype to production, with demonstrated business or customer impact.

  • Mentor and elevate other engineers, fostering a culture of technical excellence and continuous learning.

  • Influence long-term AI platform architecture and strategic investment areas as part of the broader AI leadership group.

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 

Benefits and Compensation listed vary based on the location of your employment and the nature of your employment with SailPoint.

As a part of the total compensation package, this role may be eligible for the SailPoint Corporate Bonus Plan or a role-specific commission, along with potential eligibility for equity participation. SailPoint maintains broad salary ranges for its roles to account for variations in knowledge, skills, experience, market conditions and locations, as well as reflect SailPoint’s differing products, industries, and lines of business. Candidates are typically placed into the range based on the preceding factors as well as internal peer equity. We estimate the base salary, for US-based employees, will be in this range from (min-mid-max, USD):

$141,300 - $201,800 - $262,300

Base salaries for employees based in other locations are competitive for the employee’s home location.

Benefits Overview

1. Health and wellness coverage: Medical, dental, and vision insurance

2. Disability coverage: Short-term and long-term disability

3. Life protection: Life insurance and Accidental Death & Dismemberment (AD&D)

4. Additional life coverage options: Supplemental life insurance for employees, spouses, and children

5. Flexible spending accounts for health care, and dependent care; limited purpose flexible spending account

6. Financial security: 401(k) Savings and Investment Plan with company matching

7. Time off benefits: Flexible vacation policy

8. Holidays: 8 paid holidays annually

9. Sick leave

10. Parental support: Paid parental leave

11. Employee Assistance Program (EAP) and Care Counselors

12. Voluntary benefits: Legal Assistance, Critical Illness, Accident, Hospital Indemnity and Pet Insurance options

13. Health Savings Account (HSA) with employer contribution

SailPoint is an equal opportunity employer and we welcome all qualified candidates to apply to join our team.  All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, protected veteran status, or any other category protected by applicable law.  

Alternative methods of applying for employment are available to individuals unable to submit an application through this site because of a disability. Contact [email protected] or mail to 11120 Four Points Dr, Suite 100, Austin, TX 78726, to discuss reasonable accommodations.  NOTE: Any unsolicited resumes sent by candidates or agencies to this email will not be considered for current openings at SailPoint.

What you need to know about the Chicago Tech Scene

With vibrant neighborhoods, great food and more affordable housing than either coast, Chicago might be the most liveable major tech hub. It is the birthplace of modern commodities and futures trading, a national hub for logistics and commerce, and home to the American Medical Association and the American Bar Association. This diverse blend of industry influences has helped Chicago emerge as a major player in verticals like fintech, biotechnology, legal tech, e-commerce and logistics technology. It’s also a major hiring center for tech companies on both coasts.

Key Facts About Chicago Tech

  • Number of Tech Workers: 245,800; 5.2% of overall workforce (2024 CompTIA survey)
  • Major Tech Employers: McDonald’s, John Deere, Boeing, Morningstar
  • Key Industries: Artificial intelligence, biotechnology, fintech, software, logistics technology
  • Funding Landscape: $2.5 billion in venture capital funding in 2024 (Pitchbook)
  • Notable Investors: Pritzker Group Venture Capital, Arch Venture Partners, MATH Venture Partners, Jump Capital, Hyde Park Venture Partners
  • Research Centers and Universities: Northwestern University, University of Chicago, University of Illinois Urbana-Champaign, Illinois Institute of Technology, Argonne National Laboratory, Fermi National Accelerator Laboratory

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account