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Senior/Lead Machine Learning Engineer

Salesforce

Software and Technology Jobs

Senior/Lead Machine Learning Engineer

full-timePosted: Oct 30, 2025

Job Description

Description About the RoleWe are seeking a highly skilled Machine Learning Engineer to design, build, and productionalize models that drive customer growth, engagement and retention. This role will focus specifically on attrition prediction and mitigation - identifying customers at risk of churn and surfacing proactive interventions that improve customer satisfaction and lifetime value.You will work closely with data scientists, software engineers, product managers, and business stakeholders to build scalable ML systems that power attrition predictions, risk and mitigation explanations and next best action recommendations. Key Responsibilities:Design predictive models for user and customer attrition using supervised, unsupervised, deep learning and generative techniques.Design scalable data pipelines for feature generation from both structured and unstructured sources of product adoption, sales activity, and customer engagement data (e.g. product telemetry, usage logs, CRM, sales activity, etc.)Build and maintain production-grade ML services, integrating models into APIs or decision systems that support real-time and batch use cases.Continuously monitor and improve model performance through drift detection, retraining automation and impact measurement.Collaborate with product and engineering teams to integrate models into production systems and agentic experiences, ensuring scalability, robustness and efficiency.Mentor junior engineers and data scientists and provide technical leadership in model architecture, experimentation, and deployment best practices.What We’re Looking ForDemonstrated ability to take models from research to productionStrong software engineering proficiency in Python and data manipulation skills like SQL.Experience using third-party and in-house Machine learning tools and infrastructure to develop reusable, high-performing Machine Learning systems, enable fast model development, low-latency serving and ease of model quality upkeep.Exposure to architectural patterns of a large, high-scale software application (e.g. well-designed APIs, high volume data pipelines, efficient algorithms, etc.)Familiarity with ML libraries such as scikit-learn, XGBoost, Pytorch, or TensorFlowExperience with feature engineering on big data (Spark, Trino, Snowflake, etc.)Experience with ML lifecycle management tools (ML Flow, Airflow, Kubeflow or equivalents).Experience with containerization technologies (Docker) and orchestration (Kubernetes).Strong grasp of model evaluation, drift monitoring and explainability best practices.Experience with Agile development methodology, Test-Driven Development, incremental delivery, and CI/CDExperience owning and operating services throughout the software development lifecycle including design, development, release and maintenance.Experience communicating technical vision, mentoring junior engineers and managing projects.Experience developing and evaluating AI Agents that integrate with traditional ML models, (e.g. combining predictive scoring systems with generative or agentic workflows to automate customer engagement flows and recommendations.Preferred Qualifications (Bonus Points):Familiarity with retention modeling or next best action recommendation systems.Experience developing or contributing to shared ML frameworks or internal ML Ops platforms.Experience with Feature Stores like Feast

Locations

  • New York, New York

Salary

Estimated Salary Rangehigh confidence

180,000 - 250,000 USD / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • proficiency in Pythonintermediate
  • data manipulation skills like SQLintermediate
  • using third-party and in-house Machine learning tools and infrastructureintermediate
  • ML libraries such as scikit-learn, XGBoost, Pytorch, or TensorFlowintermediate
  • feature engineering on big data (Spark, Trino, Snowflake, etc.)intermediate
  • ML lifecycle management tools (ML Flow, Airflow, Kubeflow or equivalents)intermediate
  • containerization technologies (Docker)intermediate
  • orchestration (Kubernetes)intermediate
  • model evaluation, drift monitoring and explainability best practicesintermediate
  • Agile development methodologyintermediate
  • Test-Driven Developmentintermediate
  • CI/CDintermediate
  • developing and evaluating AI Agentsintermediate

Required Qualifications

  • Demonstrated ability to take models from research to production (experience)
  • Strong software engineering proficiency in Python and data manipulation skills like SQL. (experience)
  • Experience using third-party and in-house Machine learning tools and infrastructure to develop reusable, high-performing Machine Learning systems, enable fast model development, low-latency serving and ease of model quality upkeep. (experience)
  • Exposure to architectural patterns of a large, high-scale software application (e.g. well-designed APIs, high volume data pipelines, efficient algorithms, etc.) (experience)
  • Familiarity with ML libraries such as scikit-learn, XGBoost, Pytorch, or TensorFlow (experience)
  • Experience with feature engineering on big data (Spark, Trino, Snowflake, etc.) (experience)
  • Experience with ML lifecycle management tools (ML Flow, Airflow, Kubeflow or equivalents). (experience)
  • Experience with containerization technologies (Docker) and orchestration (Kubernetes). (experience)
  • Strong grasp of model evaluation, drift monitoring and explainability best practices. (experience)
  • Experience with Agile development methodology, Test-Driven Development, incremental delivery, and CI/CD (experience)
  • Experience owning and operating services throughout the software development lifecycle including design, development, release and maintenance. (experience)
  • Experience communicating technical vision, mentoring junior engineers and managing projects. (experience)
  • Experience developing and evaluating AI Agents that integrate with traditional ML models, (e.g. combining predictive scoring systems with generative or agentic workflows to automate customer engagement flows and recommendations. (experience)

Preferred Qualifications

  • Familiarity with retention modeling or next best action recommendation systems. (experience)
  • Experience developing or contributing to shared ML frameworks or internal ML Ops platforms. (experience)
  • Experience with Feature Stores like Feast (experience)

Responsibilities

  • Design predictive models for user and customer attrition using supervised, unsupervised, deep learning and generative techniques.
  • Design scalable data pipelines for feature generation from both structured and unstructured sources of product adoption, sales activity, and customer engagement data (e.g. product telemetry, usage logs, CRM, sales activity, etc.)
  • Build and maintain production-grade ML services, integrating models into APIs or decision systems that support real-time and batch use cases.
  • Continuously monitor and improve model performance through drift detection, retraining automation and impact measurement.
  • Collaborate with product and engineering teams to integrate models into production systems and agentic experiences, ensuring scalability, robustness and efficiency.
  • Mentor junior engineers and data scientists and provide technical leadership in model architecture, experimentation, and deployment best practices.

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Salesforce logo

Senior/Lead Machine Learning Engineer

Salesforce

Software and Technology Jobs

Senior/Lead Machine Learning Engineer

full-timePosted: Oct 30, 2025

Job Description

Description About the RoleWe are seeking a highly skilled Machine Learning Engineer to design, build, and productionalize models that drive customer growth, engagement and retention. This role will focus specifically on attrition prediction and mitigation - identifying customers at risk of churn and surfacing proactive interventions that improve customer satisfaction and lifetime value.You will work closely with data scientists, software engineers, product managers, and business stakeholders to build scalable ML systems that power attrition predictions, risk and mitigation explanations and next best action recommendations. Key Responsibilities:Design predictive models for user and customer attrition using supervised, unsupervised, deep learning and generative techniques.Design scalable data pipelines for feature generation from both structured and unstructured sources of product adoption, sales activity, and customer engagement data (e.g. product telemetry, usage logs, CRM, sales activity, etc.)Build and maintain production-grade ML services, integrating models into APIs or decision systems that support real-time and batch use cases.Continuously monitor and improve model performance through drift detection, retraining automation and impact measurement.Collaborate with product and engineering teams to integrate models into production systems and agentic experiences, ensuring scalability, robustness and efficiency.Mentor junior engineers and data scientists and provide technical leadership in model architecture, experimentation, and deployment best practices.What We’re Looking ForDemonstrated ability to take models from research to productionStrong software engineering proficiency in Python and data manipulation skills like SQL.Experience using third-party and in-house Machine learning tools and infrastructure to develop reusable, high-performing Machine Learning systems, enable fast model development, low-latency serving and ease of model quality upkeep.Exposure to architectural patterns of a large, high-scale software application (e.g. well-designed APIs, high volume data pipelines, efficient algorithms, etc.)Familiarity with ML libraries such as scikit-learn, XGBoost, Pytorch, or TensorFlowExperience with feature engineering on big data (Spark, Trino, Snowflake, etc.)Experience with ML lifecycle management tools (ML Flow, Airflow, Kubeflow or equivalents).Experience with containerization technologies (Docker) and orchestration (Kubernetes).Strong grasp of model evaluation, drift monitoring and explainability best practices.Experience with Agile development methodology, Test-Driven Development, incremental delivery, and CI/CDExperience owning and operating services throughout the software development lifecycle including design, development, release and maintenance.Experience communicating technical vision, mentoring junior engineers and managing projects.Experience developing and evaluating AI Agents that integrate with traditional ML models, (e.g. combining predictive scoring systems with generative or agentic workflows to automate customer engagement flows and recommendations.Preferred Qualifications (Bonus Points):Familiarity with retention modeling or next best action recommendation systems.Experience developing or contributing to shared ML frameworks or internal ML Ops platforms.Experience with Feature Stores like Feast

Locations

  • New York, New York

Salary

Estimated Salary Rangehigh confidence

180,000 - 250,000 USD / yearly

Source: ai estimated

* This is an estimated range based on market data and may vary based on experience and qualifications.

Skills Required

  • proficiency in Pythonintermediate
  • data manipulation skills like SQLintermediate
  • using third-party and in-house Machine learning tools and infrastructureintermediate
  • ML libraries such as scikit-learn, XGBoost, Pytorch, or TensorFlowintermediate
  • feature engineering on big data (Spark, Trino, Snowflake, etc.)intermediate
  • ML lifecycle management tools (ML Flow, Airflow, Kubeflow or equivalents)intermediate
  • containerization technologies (Docker)intermediate
  • orchestration (Kubernetes)intermediate
  • model evaluation, drift monitoring and explainability best practicesintermediate
  • Agile development methodologyintermediate
  • Test-Driven Developmentintermediate
  • CI/CDintermediate
  • developing and evaluating AI Agentsintermediate

Required Qualifications

  • Demonstrated ability to take models from research to production (experience)
  • Strong software engineering proficiency in Python and data manipulation skills like SQL. (experience)
  • Experience using third-party and in-house Machine learning tools and infrastructure to develop reusable, high-performing Machine Learning systems, enable fast model development, low-latency serving and ease of model quality upkeep. (experience)
  • Exposure to architectural patterns of a large, high-scale software application (e.g. well-designed APIs, high volume data pipelines, efficient algorithms, etc.) (experience)
  • Familiarity with ML libraries such as scikit-learn, XGBoost, Pytorch, or TensorFlow (experience)
  • Experience with feature engineering on big data (Spark, Trino, Snowflake, etc.) (experience)
  • Experience with ML lifecycle management tools (ML Flow, Airflow, Kubeflow or equivalents). (experience)
  • Experience with containerization technologies (Docker) and orchestration (Kubernetes). (experience)
  • Strong grasp of model evaluation, drift monitoring and explainability best practices. (experience)
  • Experience with Agile development methodology, Test-Driven Development, incremental delivery, and CI/CD (experience)
  • Experience owning and operating services throughout the software development lifecycle including design, development, release and maintenance. (experience)
  • Experience communicating technical vision, mentoring junior engineers and managing projects. (experience)
  • Experience developing and evaluating AI Agents that integrate with traditional ML models, (e.g. combining predictive scoring systems with generative or agentic workflows to automate customer engagement flows and recommendations. (experience)

Preferred Qualifications

  • Familiarity with retention modeling or next best action recommendation systems. (experience)
  • Experience developing or contributing to shared ML frameworks or internal ML Ops platforms. (experience)
  • Experience with Feature Stores like Feast (experience)

Responsibilities

  • Design predictive models for user and customer attrition using supervised, unsupervised, deep learning and generative techniques.
  • Design scalable data pipelines for feature generation from both structured and unstructured sources of product adoption, sales activity, and customer engagement data (e.g. product telemetry, usage logs, CRM, sales activity, etc.)
  • Build and maintain production-grade ML services, integrating models into APIs or decision systems that support real-time and batch use cases.
  • Continuously monitor and improve model performance through drift detection, retraining automation and impact measurement.
  • Collaborate with product and engineering teams to integrate models into production systems and agentic experiences, ensuring scalability, robustness and efficiency.
  • Mentor junior engineers and data scientists and provide technical leadership in model architecture, experimentation, and deployment best practices.

Target Your Resume for "Senior/Lead Machine Learning Engineer" , Salesforce

Get personalized recommendations to optimize your resume specifically for Senior/Lead Machine Learning Engineer. Takes only 15 seconds!

AI-powered keyword optimization
Skills matching & gap analysis
Experience alignment suggestions

Check Your ATS Score for "Senior/Lead Machine Learning Engineer" , Salesforce

Find out how well your resume matches this job's requirements. Get comprehensive analysis including ATS compatibility, keyword matching, skill gaps, and personalized recommendations.

ATS compatibility check
Keyword optimization analysis
Skill matching & gap identification
Format & readability score

Tags & Categories

Software EngineeringSoftware Engineering

Answer 10 quick questions to check your fit for Senior/Lead Machine Learning Engineer @ Salesforce.

Quiz Challenge
10 Questions
~2 Minutes
Instant Score

Related Books and Jobs

No related jobs found at the moment.