Rust Jobs for Rustaceans 
The hottest Rust jobs in one place. Bookmark this page and tell a friend :)
Latest jobs
Showing 81-90 of 150 jobs

Software Engineer - Build System
Fractile
Active - posted 17 days ago

Software Developer, Generalist
Imeka
Active - posted 17 days ago

Junior Software Engineer
Tracer
Active - posted 18 days ago

Rust Software Engineer
Prima
Active - posted 18 days ago

Senior Infrastructure Software Developer
Scrawlr Development Inc.
Active - posted 20 days ago

Junior Software Engineer in Algorithms & Optimization
RideCo
Active - posted 20 days ago

Software Quality Assurance Engineer
Oklo
Active - posted 21 days ago

Senior Cyber Tool and Capability Developer
Draper
Active - posted 21 days ago

Application Security Engineer
Aztec
Active - posted 21 days ago

Senior Software Engineer - Rust - Backend
Kraken
Active - posted 22 days ago

Staff Engineer
MongoDB
Active - posted 27 days ago
Job Description
About the Role
We’re looking for a Staff Engineer to join our team building the inference platform for embedding models that power semantic search, retrieval, and AI-native features across MongoDB Atlas.
This role is part of the broader Search and AI Platform team and involves close collaboration with AI engineers and researchers from our Voyage.ai acquisition, who are developing industry-leading embedding models. Together, we’re building the infrastructure that enables real-time, high-scale, and low-latency inference — all deeply integrated into Atlas and optimized for developer experience.
As a Staff Engineer, you’ll be hands-on with design and implementation, while working with engineers across experience levels to build a robust, scalable system. The focus is on latency, availability, observability, and scalability in a multi-tenant, cloud-native environment.
Key Responsibilities:
- Partner with Search Platform and Voyage.ai AI engineers and researchers to productionize state-of-the-art embedding models and rerankers, supporting both batch and real-time inference.
- Lead key projects around performance optimization, GPU utilization, autoscaling, and observability for the inference platform
- Design and build components of a multi-tenant inference service that integrates with Atlas Vector Search, driving capabilities for semantic search and hybrid retrieval
- Contribute to platform features like model versioning, safe deployment pipelines, latency-aware routing, and model health monitoring
- Collaborate with peers across ML, infra, and product teams to define architectural patterns and operational practices that support high availability and low latency at scale
- Guide decisions on model serving architecture using tools like vLLM, ONNX Runtime, and container orchestration in Kubernetes
Requirements:
- 8+ years of engineering experience in backend systems, ML infrastructure, or scalable platform development
- Expertise in serving embedding models in production environments
- Strong systems skills in languages like Go, Rust, C++, or Python, and experience profiling and optimizing performance
- Comfortable working on cloud-native distributed systems, with a focus on latency, availability, and observability
- Familiarity with inference runtimes and vector search systems (e.g., Faiss, HNSW, ScaNN)
- Proven ability to collaborate across disciplines and experience levels, from ML researchers to junior engineers
- Experience with high-scale SaaS infrastructure, particularly in multi-tenant environments
Nice to Have
- Prior experience working with model teams on inference-optimized architectures
- Background in hybrid retrieval, prompt-based pipelines, or retrieval-augmented generation (RAG)
- Contributions to relevant open-source ML serving or vector search infrastructure
Why Join Us
- Be part of shaping the future of AI-native developer experiences on the world’s most popular developer data platform
- Collaborate with ML experts from Voyage.ai to bring cutting-edge research into production at scale
- Solve hard problems in real-time inference, model serving, and semantic retrieval — in a system used by thousands of customers worldwide
- Work in a culture that values mentorship, autonomy, and strong technical craft
- Competitive compensation, equity, and career growth in a hands-on technical leadership role
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: 2263187376
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.