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Lead Machine Learning Engineer

Salesforce, Inc..

Ciudad de México

Presencial

MXN 1,200,000 - 1,600,000

Jornada completa

Hoy
Sé de los primeros/as/es en solicitar esta vacante

Descripción de la vacante

A leading technology company in Mexico City is seeking an experienced Lead Machine Learning Engineer to define and drive technical ML strategies that enhance marketing performance. You will own the ML lifecycle and mentor junior engineers. Ideal candidates have 8+ years of experience in ML model pipelines, expert-level knowledge of AWS services, and advanced Python programming skills. This role offers a unique opportunity to apply your expertise in a growing and impactful environment.

Formación

  • 8+ years of experience building and deploying ML model pipelines.
  • Expert-level knowledge of AWS services, particularly SageMaker.
  • Proven experience implementing end-to-end MLOps practices.

Responsabilidades

  • Define and drive the technical ML strategy for model architectures.
  • Own the ML lifecycle including governance and testing standards.
  • Lead end-to-end ML pipeline development focusing on performance.

Conocimientos

AWS services
Containerization
Python programming
MLOps practices
Collaboration skills

Educación

MS or PhD in Computer Science, AI/ML, or Software Engineering

Herramientas

SageMaker
Docker
Apache Airflow
TensorFlow
PyTorch
Snowflake
Spark
Descripción del empleo
Overview

LEAD

MACHINE LEARNING ENGINEER

Mexico City

We're Salesforce, the Customer Company, inspiring the future of business with AI + Data + CRM and pioneering the next frontier of enterprise AI with AgentForce. Leading with our core values, we help companies across every industry blaze new trails and connect with customers in a whole new way. And, we empower you to be a Trailblazer, too — driving your performance and career growth, charting new paths, and improving the state of the world. If you believe in business as the greatest platform for change and in companies doing well and doing good – you’ve come to the right place.

In this role, you\'ll have the opportunity to make an outsized impact on Salesforce\'s marketing initiatives, helping to promote our vast product portfolio to a global customer base, including 90% of the Fortune 500. By driving state-of-the-art ML solutions for our internal marketing platforms, you\'ll directly contribute to enhancing the effectiveness of Salesforce\'s marketing efforts. Your ML expertise will play a pivotal role in accelerating Salesforce\'s growth. This is a unique chance to apply your passion for ML to drive transformative business impact on a global scale, shaping the future of how Salesforce engages with potential and existing customers, and contributing to our continued innovation and industry leadership in the CRM and Agentic enterprise space.

We are seeking an experienced Lead / Staff Machine Learning Engineer to support the development and deployment of high-impact ML model pipelines that measurably improve marketing performance and deliver customer value. In this critical role, you will collaborate closely with Data Science, Data Engineering, Product, and Marketing teams to lead the design, implementation, and operations of end-to-end ML solutions at scale. As a hands-on technical leader, you will own the ML lifecycle, establish best practices, and mentor junior engineers to help grow a world-class team that stays at the forefront of ML innovation. This is a unique opportunity to apply your passion for ML and to drive transformative business impact for the world\'s #1 CRM provider, shaping the future of customer engagement through AgentForce - our groundbreaking AI agents that are setting new global standards for intelligent automation.

Responsibilities
  • Define and drive the technical ML strategy with emphasis on robust, performant model architectures and MLOps practices
  • Own the ML lifecycle including model governance, testing standards, and incident response for production ML systems
  • Establish and enforce engineering standards for model deployment, testing, version control, and code quality
  • Implement infrastructure-as-code, CI/CD pipelines, and ML automation with focus on model monitoring and drift detection
  • Design and implement comprehensive monitoring solutions for model performance, data quality, and system health
  • Lead end-to-end ML pipeline development focusing on optimizing model cost and performance as well as automating training workflows
  • Collaborate with Data Science, Data Engineering, and Product Management teams to deliver scalable ML solutions with measurable impact
  • Provide technical leadership in ML engineering best practices and mentor junior engineers in ML and MLOps principles
Position Requirements
  • MS or PhD in Computer Science, AI/ML, Software Engineering, or related field
  • 8+ years of experience building and deploying ML model pipelines at scale, with focus on marketing use cases
  • Expert-level knowledge of AWS services, particularly SageMaker and related services
  • Deep expertise in containerization and workflow orchestration (eg, Docker, Apache Airflow) for ML pipeline automation
  • Advanced Python programming with expertise in ML frameworks (TensorFlow, PyTorch) and software engineering best practices
  • Proven experience implementing end-to-end MLOps practices including CI/CD, testing frameworks, and model monitoring
  • Expert in infrastructure-as-code, monitoring solutions, and big data technologies (eg, Snowflake, Spark)
  • Experience implementing ML governance policies and ensuring compliance with data security requirements
  • Familiarity with feature engineering and feature store implementations using cloud-native technologies
  • Track record of leading ML initiatives that deliver measurable marketing impact
  • Strong collaboration skills and ability to work effectively with Data Science and Platform Engineering teams
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