refresh

트렌딩 기업

트렌딩 기업

채용

채용SingleStore

Software Engineer (AI Platforms)

SingleStore

Software Engineer (AI Platforms)

SingleStore

India

·

On-site

·

Full-time

·

2mo ago

필수 스킬

Go

Python

Distributed Systems

Kubernetes

Cloud Infrastructure

APIs

AI/ML Fundamentals

Software Engineer (AI Platforms)

About Single Store

At Single Store, we’re not just building a database company, we’re defining the future of data management. Going beyond multi-cloud, we offer customers flexible networking, storage, and compute options to meet their requirements. With a few clicks, our cloud service spins up production grade infrastructure using the latest capabilities of major cloud providers and the industry standard Kubernetes ecosystem.

As data systems evolve, the “database” is no longer just where queries run, it’s becoming the foundation for realtime AI applications: retrieval, reasoning, agent workflows, and intelligent automation over enterprise data. That’s the direction we’re building toward.

About the AI Platform Team

We build the software platform that powers AI native experiences across Single Store: AI/ML capabilities, agent runtimes, tool integration, and the operational layer required to run these systems reliably at scale. Our work sits at the intersection of distributed systems, cloud infrastructure, and practical applied AI.

This team is not “pure research”, it’s engineering heavy. You’ll build product grade systems that let customers safely and reliably use AI on their data.

Role Summary

We are looking for a Software Engineer to design and implement core platform capabilities for AI/ML and AI Agents in Single Store Cloud. You’ll work on services that enable model/tool orchestration (e.g. MCP style tool discovery and execution), agent workflows, retrieval pipelines (embeddings/vector search), evaluation/observability, and secure multi tenant operations.

You will likely find yourself using Go and Python, Kubernetes, cloud primitives, and the right tools for the job, while applying solid AI/ML fundamentals to make correct engineering decisions.

Role and Responsibilities

  • Build and evolve backend services that power AI features: agent orchestration, tool execution, retrieval/RAG pipelines, and model serving integrations.

  • Design APIs and control plane workflows for AI platform components (tenant-aware, secure by default, observable).

  • Implement MCP style tool discovery / integration patterns so agents can safely call tools, connectors, and internal services.

  • Work closely with product managers, designers, customers, and partner engineering teams to deliver high quality AI experiences.

  • Engineer for reliability and scale: latency, cost controls, rate limiting, fallbacks, rollouts, and incident response readiness.

  • Establish best practices around evaluation: offline test sets, regression detection, prompt/model/version tracking, and quality gates.

  • Contribute to secure AI by design approaches: permissions, data access boundaries, prompt injection defenses, and auditability.

  • Mentor junior engineers and contribute to a welcoming, high ownership team environment.

Required Skills and Experience

This is a software engineering role that requires strong fundamentals plus working knowledge of AI/ML concepts.

  • Strong software engineering skills with experience in distributed systems (Go, Python, or similar).

  • Experience building cloud native services: Kubernetes, containers, service-to-service APIs, CI/CD.

  • 4+ years of experience working on a SaaS product or production platform.

  • Solid understanding of AI/ML fundamentals (you don’t need to be a researcher, but you should understand concepts well enough to build correct systems):

  • Supervised learning basics (training vs inference, overfitting, evaluation metrics, classification, anomaly detection, forecasting, regression etc.)

  • LLM basics (tokens, context windows, prompting, tool/function calling concepts)

  • Embeddings + vector search fundamentals (similarity, indexing tradeoffs, retrieval pitfalls)

  • Strong debugging and problem-solving skills, including incident-style troubleshooting across services and infrastructure.

  • Intellectual curiosity about investigating issues that impact product quality, reliability, latency, and business metrics.

  • Passion for building robust, maintainable systems in a fast-paced, team-oriented environment.

Nice to Have (Preferred)

  • Hands on experience with AI agents and orchestration frameworks (tool calling, workflows, planners/executors).

  • Practical experience with RAG systems, reranking, grounding, and evaluation strategies.

  • Experience with model serving patterns (batch/online inference, caching, streaming responses).

  • Knowledge of security considerations for AI systems (data isolation, RBAC, prompt injection threats, audit logs).

  • Familiarity with vector databases or vector capabilities in modern data platforms.

  • Experience with observability stacks (structured logging, metrics, tracing) and SLO driven engineering.

Tech Stack

Go, Python, Kubernetes, cloud infrastructure, distributed systems, APIs, and modern AI tooling (LLM providers, embeddings, retrieval systems, eval/observability pipelines), ML tooling.

총 조회수

0

총 지원 클릭 수

0

모의 지원자 수

0

스크랩

0

SingleStore 소개

SingleStore

SingleStore

Series D

Holding company.

201-500

직원 수

San Francisco

본사 위치

$940M

기업 가치

리뷰

4.0

10개 리뷰

워라밸

3.2

보상

2.8

문화

4.1

커리어

4.0

경영진

2.7

72%

친구에게 추천

장점

Supportive team and colleagues

Good growth and learning opportunities

Collaborative work environment

단점

Below market compensation and salary

Poor management and lack of direction

Work-life balance challenges and long hours

연봉 정보

21개 데이터

Senior/L5

Senior/L5 · Solution Architect

0개 리포트

$217,627

총 연봉

기본급

-

주식

-

보너스

-

$184,883

$250,371

면접 경험

3개 면접

난이도

2.0

/ 5

소요 기간

14-28주

면접 과정

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

Onsite/Virtual Interviews

5

Team Matching

6

Offer

자주 나오는 질문

Coding/Algorithm

Technical Knowledge

Behavioral/STAR

System Design

Culture Fit