InHire

O InHire é um sistema de recrutamento que centraliza toda a operação em um só lugar, abrangendo abertura de vaga, atração, triagem, entrevista e contratação. Com cerca de 120 pessoas, 100% remoto, espalhadas pelo Brasil, a empresa está em um momento raro de crescimento e evolução do produto.

Product Engineer

Location

Brazil

Posted

38 days ago

Salary

0

Seniority

Mid Level

Job Description

Product Engineer

InHire

Role Description Aqui, Product Engineer não é a pessoa que recebe ticket e entrega código. É alguém que assume responsabilidade por um problema de produto de ponta a ponta. - Você vai atuar em um trio autônomo com PM e designer. - O time tem missão clara, indicadores definidos e autonomia para decidir caminhos. - Participar da construção da solução desde o início, ajudando a definir specs, entendendo contexto e influenciando decisões. - Mais do que entregar features, acompanhar adoção, ler dados, investigar impacto e propor as próximas iterações. - A principal pergunta que guia o trabalho não é “o que precisa ser feito?”, mas sim: “isso realmente move o indicador que importa?” O que você vai construir: - Fluxos autônomos que eliminam tarefas manuais de recruiters, como triagem, agendamento e geração de pareceres. - Integrações críticas que destravam operações de grandes empresas. - Instrumentação e métricas que ajudam a entender se o que construímos está sendo usado e gerando impacto. Você vai trabalhar em um produto que impacta diretamente a rotina de mais de 120 mil profissionais de RH no Brasil. Qualifications - Node.js e TypeScript no backend: código limpo, sustentável e fácil de evoluir. - React no frontend: entendimento de component design e experiência do usuário para construir interfaces bem resolvidas. - DynamoDB, ClickHouse ou bancos similares: capacidade de modelar dados pensando em escala e performance. - Arquitetura de microsserviços: clareza sobre responsabilidades e limites entre serviços. - AWS (Lambda, Serverless, SQS): experiência prática com deploy, monitoramento e debugging em produção. - Integração com LLMs (OpenAI, Claude, etc.): já ter explorado ou colocado soluções em produção é um diferencial importante. Requirements - Consegue analisar dados de uso e transformar insights em hipóteses. - Questiona requisitos quando necessário e busca entender o “porquê” antes de implementar. - Faz estimativas com responsabilidade e previsibilidade. - Documenta decisões técnicas de forma clara para diferentes áreas do time. Profile - Trabalha com velocidade sem perder transparência sobre riscos e problemas. - Tem senso crítico, argumenta bem e contribui para discussões de forma construtiva. - Se sente confortável em ambientes com ambiguidade e autonomia. - Entende contexto e adapta soluções de acordo com diferentes perfis de cliente. Differential - Experiência prévia com ATS, RH Tech ou produtos para RH. Stack - Node.js - TypeScript - React - DynamoDB - ClickHouse - Typesense - AWS (Lambda, SQS, S3) - Microsserviços - LLMs (Claude, OpenAI) How We Work - 100% remoto, com equipe distribuída pelo Brasil e sede em Salvador. - Times pequenos com autonomia real. - Ciclos curtos de construção: planejamos, construímos, medimos e iteramos rapidamente. What We Offer - Plano de saúde Amil. - Gympass ou Total Pass. - Day off no dia do seu aniversário. - BemEstar (teleconsultas mensais com psicólogos, nutricionistas, médicos, etc). - Licenças maternidade e paternidade estendidas. - Descanso remunerado (30 dias por ano). - Modelo de contratação 100% Remoto, Modelo PJ.

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Microsoft logo

Principal Site Reliability Engineer

Microsoft

Microsoft is an equal opportunity employer. All qualified applicants will receive consideration for employment without regard to any characteristic protected by applicable local laws, regulations, and ordinances.

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