refresh

热门公司

Trending

招聘

JobsSlack (Salesforce)

Senior/Staff Software Engineer- Machine Learning Infrastructure, Slack

Slack (Salesforce)

Senior/Staff Software Engineer- Machine Learning Infrastructure, Slack

Slack (Salesforce)

4 Locations

·

On-site

·

Full-time

·

2w ago

Benefits & Perks

Healthcare

401(k)

Equity

Paid Parental Leave

Mental Health

Learning Budget

Healthcare

401k

Equity

Mental Health

Learning

Required Skills

Kubernetes

Distributed Systems

GPU Infrastructure

Python

Airflow

Apache Spark

Infrastructure as Code

Job Description

Job Category

Software Engineering

About Salesforce

Salesforce is the #1 AI CRM, where humans with agents drive customer success together. Here, ambition meets action. Tech meets trust. And innovation isn't a buzzword — it's a way of life. The world of work as we know it is changing and we're looking for Trailblazers who are passionate about bettering business and the world through AI, driving innovation, and keeping Salesforce's core values at the heart of it all. Ready to level-up your career at the company leading workforce transformation in the agentic era? You're in the right place! Agentforce is the future of AI, and you are the future of Salesforce.

About Slack AI

Slack AI's mission is to transform how people work by making Slack an AI-powered operating system. We're tackling significant challenges like unlocking collective knowledge and reducing noise, all while building a seamless, consumer-grade AI experience within users' existing workflows. Join us in shaping the future of work through AI.

About the Team

The AI and ML Infrastructure team is part of Slack's Core Infrastructure organization and is responsible for the foundational systems that enable machine learning and AI across the company. The team designs, builds, and operates reliable, scalable, and high performance platforms that allow product and ML teams to develop, deploy, and operate AI driven capabilities with confidence. The team owns shared infrastructure, services, and tooling that support the full ML lifecycle, including model training, deployment, inference, and monitoring.

As Slack AI continues to grow, the team is evolving from traditional ML deployments toward large scale, highly distributed systems. This work involves deep architectural decisions around scalable model deployment strategies, real time feature serving at very high throughput, GPU accelerated inference at message scale, and responsible training of models on sensitive data with strong privacy and safety requirements.

Core Focus Areas

ML Infrastructure - The ML Infrastructure focus area is responsible for the low level systems that power training and inference at scale. This includes architecting and maintaining distributed systems for model training, serving, and deployment using Kubernetes based platforms, GPU infrastructure, and open source ML stacks such as Kube Ray and vLLM. The team delivers platform capabilities that improve the speed, reliability, and quality of ML development, including training pipelines, feature generation systems, and compute orchestration.

AI Platform - The AI Platform focus area builds the tooling and platform layers that enable AI development across Slack. This includes creating developer facing tools, SDKs, and workflows that allow product teams to integrate AI into Slack features efficiently and safely. The platform supports LLM efficiency and model transition initiatives through integrations with managed services across multiple cloud providers acting as the connective layer between core infrastructure and product engineering teams.

About the Role

We are looking for a Senior or Staff Software Engineer to join the ML Infrastructure focus area and help architect and operate the core systems that power AI at Slack. In this role, you will own foundational infrastructure for large scale model training and inference, and evolve it into a reliable, secure, and self service platform used across the company. You will work at the intersection of distributed systems, GPU infrastructure, and modern ML stacks, solving complex scalability and reliability challenges. This role blends deep systems engineering with a strong understanding of the ML lifecycle, and plays a critical part in shaping the long term technical foundations of Slack's AI capabilities.

Responsibilities

  • Design, build, and operate systems to train, serve, and deploy machine learning models at scale, with a focus on reliability, performance, and operational simplicity
  • Evolve GPU backed inference infrastructure to support high throughput, latency sensitive workloads, including large scale model serving
  • Architect and optimize distributed training and data processing systems using platforms such as Ray, Airflow, Spark, or similar technologies
  • Build and maintain Kubernetes based platforms and orchestration layers using tools such as Kube Ray, vLLM, and internally developed services
  • Architect solutions that bridge legacy systems with modern technologies while maintaining monolithic application stability
  • Develop robust monitoring, observability, and alerting for production ML workloads to ensure operational excellence
  • Partner closely with AI Platform, ML modeling, security, and product engineering teams to design infrastructure that supports evolving AI use cases
  • Provide technical leadership through design reviews, mentorship, and by setting engineering standards and long term architectural direction for ML infrastructure
  • Author technical design and architecture documentation, and contribute thought leadership through engineering blog posts

Qualifications

  • Significant professional experience in software engineering with a strong focus on infrastructure, backend systems, platform engineering, or MLOps
  • Deep experience building and operating distributed systems, including expert level knowledge of Kubernetes and container based platforms
  • Hands on experience with modern ML infrastructure and serving stacks such as Ray or Kube Ray, vLLM, or similar training and inference orchestration frameworks
  • Experience working with GPU infrastructure, including performance optimization and operational management at scale
  • Strong experience with data infrastructure and orchestration technologies such as Airflow, Spark, or similar systems
  • Experience building and operating cloud native systems on public cloud platforms such as AWS, GCP, or Azure, including infrastructure as code
  • A demonstrated ability to drive technical direction for complex systems and balance short term delivery with long term architectural goals
  • Excellent written communication, as well as ability to thrive in an asynchronous and globally distributed infrastructure team
  • A related technical degree required

Benefits

When you join Salesforce, you'll be limitless in all areas of your life. Our benefits and resources support you to find balance and be your best, and our AI agents accelerate your impact so you can do your best. Together, we'll bring the power of Agentforce to organizations of all sizes and deliver amazing experiences that customers love.

Accommodations

If you require assistance due to a disability applying for open positions please submit a request via this Accommodations Request Form.

Equal Opportunity Statement

Salesforce is an equal opportunity employer and maintains a policy of non-discrimination with all employees and applicants for employment. It means that at Salesforce, we believe in equality for all. And we believe we can lead the path to equality in part by creating a workplace that's inclusive, and free from discrimination. Know your rights: workplace discrimination is illegal. Any employee or potential employee will be assessed on the basis of merit, competence and qualifications – without regard to race, religion, color, national origin, sex, sexual orientation, gender expression or identity, transgender status, age, disability, veteran or marital status, political viewpoint, or other classifications protected by law. This policy applies to current and prospective employees, no matter where they are in their Salesforce employment journey. It also applies to recruiting, hiring, job assignment, compensation, promotion, benefits, training, assessment.

Note: To get the best candidate experience, please consider applying for a maximum of 3 roles within 12 months to ensure you are not duplicating efforts.

Total Views

0

Apply Clicks

0

Mock Applicants

0

Scraps

0

About Slack (Salesforce)

Slack (Salesforce)

The Customer Company - CRM, AI, Data, Trust.

10,001+

Employees

San Francisco

Headquarters

Reviews

2.4

9 reviews

Work Life Balance

1.5

Compensation

2.5

Culture

1.2

Career

1.8

Management

1.0

5%

Recommend to a Friend

Pros

Team collaboration and working well together

Company growth and business performance

Job satisfaction when helping people

Cons

Invasive employee monitoring and surveillance systems

Toxic and unprofessional management behavior

Poor work-life balance with unrealistic expectations

Salary Ranges

421 data points

Mid/L4

Senior/L5

Mid/L4 · Data Engineer, Platform

1 reports

$142,906

total / year

Base

$109,928

Stock

-

Bonus

-

$142,906

$142,906

Interview Experience

3 interviews

Difficulty

3.0

/ 5

Duration

14-28 weeks

Offer Rate

33%

Experience

Positive 33%

Neutral 0%

Negative 67%

Interview Process

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

Multiple Technical Interviews

5

System Design Interview

6

Behavioral Interview

7

Offer

8

Background Check

Common Questions

Coding/Algorithm

System Design

Technical Knowledge

Behavioral/STAR

Past Experience