← All jobs · MongoDB

Security Software Engineer, Infrastructure Security (Staff or Senior)

MongoDB ·
27
AI-Agency
B25 U30
📍 US 🌐 Remote/hybrid 💰 $127K–$249K Senior 5+ yrs
JavaGolangRustPythonCC++TerraformKubernetesLinuxAWSGCPAzure
TL;DR

Security Software Engineer at MongoDB building scalable security controls and services for MongoDB Atlas multi-cloud infrastructure. Focus on secure-by-default infrastructure, runtime policies, and security automation across AWS, Azure, and GCP.

Apply at MongoDB →
share:
you'll be redirected to the company's career page

Job description

We are hiring an experienced Security Software Engineer (Staff or Senior) for our Infrastructure Security team to design and build scalable security controls and services within MongoDB Atlas multi-cloud infrastructure.

The team sits within the Site Reliability Engineering organization and works with other engineering teams to ensure that our infrastructure adheres to the highest security standards.

This role can be based out of our New York City, Austin, Seattle or San Francisco offices, or work fully remotely on standard East Coast business hours.

Responsibilities:

Qualifications:

You might be a great fit if you match some of the following:

About MongoDB

MongoDB is built for change, empowering our customers and our people to innovate at the speed of the market. We have redefined the data platform for the AI era, enabling builders to create, transform, and disrupt industries with software. MongoDB’s unified data platform, the most widely available, globally distributed data platform on the market, helps organizations modernize legacy workloads, embrace innovation, and unleash AI. Our cloud-native platform, MongoDB Atlas, is the only globally distributed, multi-cloud data platform and is available across AWS, Google Cloud, and Microsoft Azure.

With offices worldwide and over 67,000 customers, including 75% of the Fortune 100 and AI-native startups, relying on MongoDB for their most important applications, we’re powering the next era of software.

Our compass at MongoDB is our Leadership Commitment, guiding how and why we make decisions, show up for each other, and win. It’s what makes us MongoDB.

To drive the personal growth and business impact of our employees, we’re committed to developing a supportive and enriching culture for everyone. From employee affinity groups, to fertility assistance and a generous parental leave policy, we value our employees’ wellbeing and want to support them along every step of their professional and personal journeys. Learn more about what it’s like to work at MongoDB, and help us make an impact on the world!

MongoDB is committed to providing any necessary accommodations for individuals with disabilities within our application and interview process. To request an accommodation due to a disability, please inform your recruiter.

MongoDB, Inc. provides equal employment opportunities to all employees and applicants for employment and prohibits discrimination and harassment of any type and makes all hiring decisions without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state or local laws.

Req ID: 2263171228

MongoDB’s base salary range for this role is posted below. Compensation at the time of offer is unique to each candidate and based on a variety of factors such as skill set, experience, qualifications, and work location. Salary is one part of MongoDB’s total compensation and benefits package. Other benefits for eligible employees may include: equity, participation in the employee stock purchase program, flexible paid time off, 20 weeks fully-paid gender-neutral parental leave, fertility and adoption assistance, 401(k) plan, mental health counseling, access to transgender-inclusive health insurance coverage, and health benefits offerings. Please note, the base salary range listed below and the benefits in this paragraph are only applicable to U.S.-based candidates.

MongoDB’s base salary range for this role in the U.S. is:
$127,000$249,000 USD
Apply at MongoDB →

More open roles at MongoDB

MongoDB · 🔄 synced 9h ago
Head of AI Platform, GM
📍 US 🌐 Remote · Executive
Head of AI Platform and General Manager at MongoDB leading the development and scaling of a new AI Applications Platform. Owns product vision, P&L, and R&D organization (Engineering, Product, Design) for an enterprise-grade platform serving thousands of customers building production AI applications.
MongoDB AtlasAWSGoogle CloudMicrosoft Azurevector databasesembeddings
83
AI Builder
MongoDB · 🔄 synced 9h ago
Senior Staff Engineer, AMP
📍 US 🌐 Remote · Staff
Senior Staff Engineer leading MongoDB's Application Modernization Platform (AMP) team. Responsible for technical strategy, platform architecture, and multi-agent AI orchestration to transform legacy applications into modern microservices-based systems.
MongoDBmicroservicesdistributed systemsdata warehousesorchestration agents
80
AI Builder
MongoDB · 🔄 synced 9h ago
Senior Staff Engineer, AMP
📍 CA 🌐 Remote · Staff
Senior Staff Engineer leading MongoDB's Application Modernization Platform (AMP) team. Responsible for technical strategy, platform architecture, and multi-agent AI orchestration to transform legacy applications into modern microservices-based systems.
MongoDBmicroservicesdistributed systemsdata warehouses
79
AI Builder
MongoDB · 🔄 synced 9h ago
Staff Engineer, Code Generation
📍 CA 🌐 Remote-only · Staff
Staff Engineer at MongoDB leading the Code Gen team building AI-powered code transformation tools. Focus on designing orchestration layers, integrating GenAI capabilities, and modernizing legacy applications into microservices architectures.
PostgreSQLMySQLOracleMicrosoft SQL ServerGenAILLMs
79
AI Builder
MongoDB · 🔄 synced 9h ago
Staff Research Scientist
📍 Palo Alto, US 🌐 Remote 💰 $151K–$297K · Staff
Staff Research Scientist at MongoDB's Voyage AI team building embedding models and rerankers for RAG and semantic search. Focus on frontier LLMs, information retrieval, and deploying neural networks at scale.
PyTorchTensorFlowJAXembedding modelsneural networks
78
AI Builder