Job Description
About UsWe are a fast-growing technology company building products used by hundreds of thousands of customers, backed by a supply chain spanning multiple distribution centers and a data platform processing millions of events daily. Engineering is not a support function here it is a core driver of every major business outcome.
We move fast, hold ourselves to a high bar, and believe the best engineering decisions are made by people who are close to the business. We are embracing AI not as a trend, but as a genuine multiplier using it to ship better software, faster, while never losing sight of the craftsmanship that makes software great.
The RoleThis is a forward-deployed engineering role with AI at its core. You will architect systems, write production-grade code, design databases, and own your projects end to end with a primary focus on deploying AI capabilities directly into the business and products that serve real users. What defines this role is the expectation that you bring strong engineering fundamentals together with a hands-on, deployment-first mindset for AI-powered tools and workflows.
You are not required to be an AI researcher or an ML specialist. You are expected to be an excellent engineer who deploys AI where it creates real value using it to accelerate delivery, build intelligent features, and solve hard problems, while applying your own judgment to validate, refine, and own the outcome.
Strong Engineering CoreDesign robust, scalable systems from the ground upWrite clean, well-tested, maintainable codeOptimize database performance and data modelsDebug complex issues across the full stackOwn code quality through rigorous peer reviewDeliver reliable software with measurable outcomesAI as a Force MultiplierUse AI coding assistants to accelerate developmentLeverage LLMs to generate boilerplate, tests, and docsBuild AI-powered features where they add real user valueApply AI to improve code review, debugging, and analysisEvaluate AI outputs critically judgment still winsStay current and bring new AI tools to the teamOur CultureWhat We BelieveOutcomes over activity we measure what ships and what works.
Speed is a feature long approval chains kill great products.
Radical candor honest feedback is a form of respect.
Learning is non-negotiable every sprint is a chance to improve.
No politics, no silos collaborate openly across every team.
How We WorkFast-paced sprints with a strong bias toward shipping.
Engineers own requirements, architecture, and roadmap input.
AI tools are standard kit we share what works.
Blameless post-mortems failure is a learning event.
Async-first with intentional synchronous collaboration.
Key ResponsibilitiesCore Software Engineering (50%)Design, build, and maintain scalable, high-quality software systems and APIs that serve real users in production.
Write clean, well-structured code with appropriate test coverage unit, integration, and end-to-end.
Architect and optimize relational and non-relational database schemas, queries, and data models for performance and reliability.
Conduct meaningful code reviews that improve team quality and share knowledge, not just catch syntax errors.
Debug, profile, and resolve performance bottlenecks and production issues with urgency and rigor.
Contribute to technical architecture decisions propose solutions, evaluate tradeoffs, and document outcomes.
Participate actively in Agile ceremonies: sprint planning, standups, retrospectives, and backlog refinement.
AI-Forward Deployment (35%)Deploy AI solutions end-to-end from identifying the right use case, to building and shipping LLM-powered features directly into products and internal workflows.
Incorporate LLM APIs and AI frameworks into product features where they create genuine user value: search, summarization, recommendations, intelligent automation, and decision support.
Apply critical engineering judgment to evaluate, refine, and validate all AI-generated outputs before they reach production you own the result, not just the prompt.
Use AI coding assistants (GitHub Copilot, Cursor, Claude Code) as a daily accelerator and champion effective AI tool patterns and prompt strategies across the team.
Stay at the front edge of the AI tooling landscape evaluate new models, frameworks, and techniques and bring back deployment-ready recommendations that move the business forward.
Cross-Team Collaboration & Communication (15%)Partner with Marketing, Customer Experience, Data Science, Merchandising, Warehouse Ops, and Finance to understand requirements and deliver technical solutions.
Translate technical concepts clearly for non-technical stakeholders written documentation, presentations, and live discussions.
Present project outcomes and architectural decisions to senior leadership with confidence and clarity.
Contribute to a culture of knowledge sharing: write internal documentation, run team demos, and mentor peers.
Cross-Team CollaborationEngineering here is a visible, active partner across the business not a back-room function. You will work directly with teams who depend on the systems and data you build. Strong communication and commercial awareness are just as important as great code.
Marketing:
Personalization, campaign analytics, A/B platformsCustomer Experience:
AI support tools, self-service flows, CSAT pipelinesData Science:
Model integration, feature engineering, shared infraMerchandising:
Pricing, inventory intelligence, catalog toolingWarehouse Ops:
Fulfillment automation, routing, operational dashboardsFinance & Ops:
Cost models, reporting pipelines, forecastingSupply Chain:
Vendor integrations, PO systems, logistics optimizationProduct:
Feature scoping, roadmap input, rapid prototypingSecurity:
Secure design, data privacy, compliance toolingRequired QualificationsEngineering Fundamentals Non-NegotiableExperience:
36 years of professional software engineering in a production environment, with a portfolio of real systems you have owned and shipped.Languages:
Strong proficiency in one or more of: Python, Java, TypeScript, Go, or C#. Depth matters more than breadth.Software Design:
Solid grasp of OOP, SOLID
principles, design patterns, and how to make architectural decisions with long-term maintainability in mind.Databases:
Confident with relational databases (PostgreSQL, MySQL) schema design, indexing, query optimization, and transactions. Working knowledge of at least one NoSQL store (MongoDB, Redis, DynamoDB).APIs & Integration:
Experience designing and consuming RESTful APIs; comfortable reading and writing service contracts and integration documentation.Testing:
Writes meaningful unit, integration, and end-to-end tests not for coverage metrics, but for genuine confidence in your code.Cloud & DevOps:
Familiar with at least one major cloud platform (AWS, GCP, Azure), Docker, CI/CD pipelines, and basic infrastructure practices.Version Control:
Strong Git workflow: branching strategies, pull requests, and code review culture.AI Literacy Expected & GrowingAI Tool Adoption:
Actively uses AI coding assistants in day-to-day development and can demonstrate concrete productivity or quality improvements as a result.LLM Integration:
Has built or integrated at least one LLM-powered feature or workflow in a real project even if exploratory or side-project experience counts.Prompt Awareness:
Understands the basics of prompt design, few-shot examples, and how to get reliable, structured outputs from LLM APIs.Critical Evaluation:
Applies engineering discipline to AI outputs tests them, validates them, and knows when not to trust them.Curiosity:
Genuinely interested in how AI tooling is evolving and proactively experiments with new approaches.
Preferred QualificationsExperience building RAG pipelines or working with vector databases (Pinecone, pgvector, Weaviate, etc.).Familiarity with AI frameworks such as LangChain, LlamaIndex, or similar orchestration tools.
Exposure to ML concepts: embeddings, model evaluation, fine-tuning, and working with data science teams.
Experience with observability and monitoring tooling (Datadog, Grafana, OpenTelemetry, or equivalent).Background in microservices architecture and event-driven systems (Kafka, RabbitMQ, etc.).Knowledge of security best practices:
OWASP Top 10, authentication/authorization, input validation.
Experience with Agile/Scrum methodologies and tools like Jira or Linear.
Open-source contributions or public portfolio demonstrating your engineering work.Core CompetenciesEngineering Craft:
Clean, tested, maintainable codeDatabase Acumen:
SQL, NoSQL, schema & performanceAI Fluency:
Tools + LLMs as force multipliersPerformance Mindset:
Measures, optimizes, validatesQuality Discipline:
Tests like production depends on itCross-Team Voice:
Fluent in code AND in businessSound Judgment:
Knows when and when NOT to use AIOwnership Drive:
Ships end-to-end, measures impactTechnology LandscapeLanguages:
Python, TypeScript, Java, Go, SQLDatabases:
PostgreSQL, MySQL, MongoDB, Redis, DynamoDB, pgvectorCloud & Infra:
AWS / GCP
/ Azure, Docker, Kubernetes, TerraformAPIs:
REST, GraphQL, gRPC, OpenAPI / SwaggerAI & LLM
OpenAI, Anthropic Claude, Gemini integrated as features, not the foundationAI Dev Tools:
GitHub Copilot, Cursor, Claude Code used daily to accelerate engineeringObservability:
Datadog, OpenTelemetry, Prometheus, GrafanaData:
PostgreSQL, dbt, Airflow, Spark, KafkaCI/CD:
GitHub Actions, ArgoCD, Jenkins, CircleCIEqual Opportunity EmployerCarParts.com is an equal-opportunity employer. We enthusiastically accept our responsibility to make employment decisions without regard to race, religious creed, color, age, sex, sexual orientation, national origin, religion, marital status, medical condition, physical or mental disability, military service, pregnancy, childbirth and related medical conditions, or any other classification protected by federal, state, and local laws and ordinances. Our management is dedicated to ensuring that we fulfill this policy with respect to hiring, placement, promotion, transfer, demotion, layoff, termination, recruitment advertising, pay, and other forms of compensation, training, and general treatment during employment.
The above-noted job description is not intended to describe, in detail, the multitude of tasks that may be assigned but rather to give the incumbent a general sense of the responsibilities and expectations of his/her position. As the nature of business demands change so, too, may the essential functions of this position.