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Agent Post-Training, Context Research

openai

San Francisco
Uncategorized

Job Score

70 pts
On-site model (+70)

About the Team

The Agent Post-Training team creates the frontier agents OpenAI ships to the world. We are training the models behind our agents in Codex, ChatGPT, the API, and other frontier products: persistent, proactive intelligence that can operate computers, collaborate with people and other agents, and expand what people and organizations can imagine, attempt, and achieve.

We define what the next generation of agents should be able to do, build the training signal that teaches those abilities, and run the experiments that make them real. Our work spans coding, tool use, computer use, multi-agent coordination, long-horizon execution, factuality, instruction following, calibrated reasoning, and taste.

Our team is where new model capabilities get made. We build the data, environments, graders, training methods, and feedback loops that shape what OpenAI's next agents can do, then carry those capabilities through major training runs and into the products people use.

About the Role

We believe that the final enabler for AGI is spending compute on context. As a Context Researcher on Agent Post-Training, you will scale compute spent on context. You will get to work in our frontier training stack on enabling the next paradigm of model training with a clear product interface for iterative deployment (Codex Chronicle). You will work with researchers, engineers, product teams, infrastructure teams, and safety/alignment partners to decide what should go into major model runs, measure whether it worked, and ship improvements into products used by real people. This is a high-agency role for people who want their work to land directly in frontier models.

In this role, you might

  • Design and run experiments that improve scaling of compute on context.

  • Own end-to-end improvements to the post-training stack, including RL, data pipelines, graders, reward signals, evals, diagnostics, and model-behavior analysis.

  • Build evals and environments that expose the next set of model failures, then turn those failures into training data, product fixes, or new research directions.

  • Partner with Codex and ChatGPT product teams to understand what users need and translate product signal into model improvements.

  • Work on early-training and alignment interventions, including data mixtures, objectives, synthetic data, and eval loops that shape downstream agent behavior.

  • Help decide which integrations, capabilities, and fixes are ready for inclusion in major model runs.

  • Improve the machinery for large-scale training and launch: experiment velocity, reliability, observability, reproducibility, cost, latency, and production readiness.

  • Take on cross-functional projects that touch model training, product infrastructure, and the production agent harness, such as multi-agent systems or training directly against production-like environments.

  • Debug hard failures in shipped or near-shipped models and turn messy qualitative behavior into concrete hypotheses, experiments, and fixes.

You might thrive in this role if you

  • Have strong technical fundamentals in machine learning, software engineering, systems, statistics, or a related field, and can learn quickly across the parts you have not worked in before.

  • Have hands-on experience with LLMs, RL, RLHF/RLAIF, post-training, evals, graders, synthetic data, model training, coding agents, tool-using agents, or production ML systems.

  • Are excited by open-ended problems where the path is unclear, the signal is noisy, and the right answer requires both research taste and engineering execution.

  • Care about product impact and model behavior, not just benchmark movement. You have opinions about what makes an agent useful, reliable, honest, tasteful, and easy to work with.

  • Can move from a vague behavioral problem to a concrete experiment: define the hypothesis, build the pipeline, run the model, analyze the result, and decide what to do next.

  • Are comfortable working across research, product, infrastructure, data, evals, and safety boundaries, and can communicate clearly with each group.

  • Like building load-bearing systems and processes when that is what the team needs, even if the work is not glamorous.

  • Want to train and ship the models that make agents genuinely useful for developers, enterprises, researchers, and everyday users.

About OpenAI

OpenAI is an AI research and deployment company dedicated to ensuring that general-purpose artificial intelligence benefits all of humanity. We push the boundaries of the capabilities of AI systems and seek to safely deploy them to the world through our products. AI is an extremely powerful tool that must be created with safety and human needs at its core, and to achieve our mission, we must encompass and value the many different perspectives, voices, and experiences that form the full spectrum of humanity. 

We are an equal opportunity employer, and we do not discriminate on the basis of race, religion, color, national origin, sex, sexual orientation, age, veteran status, disability, genetic information, or other applicable legally protected characteristic.

For additional information, please see OpenAI’s Affirmative Action and Equal Employment Opportunity Policy Statement.

Background checks for applicants will be administered in accordance with applicable law, and qualified applicants with arrest or conviction records will be considered for employment consistent with those laws, including the San Francisco Fair Chance Ordinance, the Los Angeles County Fair Chance Ordinance for Employers, and the California Fair Chance Act, for US-based candidates. For unincorporated Los Angeles County workers: we reasonably believe that criminal history may have a direct, adverse and negative relationship with the following job duties, potentially resulting in the withdrawal of a conditional offer of employment: protect computer hardware entrusted to you from theft, loss or damage; return all computer hardware in your possession (including the data contained therein) upon termination of employment or end of assignment; and maintain the confidentiality of proprietary, confidential, and non-public information. In addition, job duties require access to secure and protected information technology systems and related data security obligations.

To notify OpenAI that you believe this job posting is non-compliant, please submit a report through this form. No response will be provided to inquiries unrelated to job posting compliance.

We are committed to providing reasonable accommodations to applicants with disabilities, and requests can be made via this link.

OpenAI Global Applicant Privacy Policy

At OpenAI, we believe artificial intelligence has the potential to help people solve immense global challenges, and we want the upside of AI to be widely shared. Join us in shaping the future of technology.

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Guia de Carreira em Marketing

SEO, Mídia Paga, Growth, Marketing de Conteúdo. Certificações, ferramentas e estratégias para crescer no Marketing Digital.

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Guia de Carreira em Finanças

Mercado financeiro, investimentos, finanças corporativas, certificações e estratégias para crescer na área financeira.

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Guia de Carreira em Comunicacao

Jornalismo, RP, Comunicacao Corporativa, Marketing de Conteudo e Producao Multimidia.

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Guia de Carreira em Administracao

Gestao de Empresas, RH, Logistica, Consultoria, Gestao de Projetos e Empreendedorismo.

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Guia de Carreira em Dados

Ciencia de Dados, Engenharia de Dados, BI, Machine Learning e IA. Da formacao ao mercado.

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Guia de Carreira em Produto

Product Management, Product Ownership, Agile, Scrum e OKRs. Da estrategia a execucao.

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Dica do Especialista

Ferramentas de Automação para Profissionais de Finanças em 2026

A Revolução Silenciosa nas Finanças Corporativas

O mercado financeiro e a controladoria sempre foram movidos a dados. No entanto, com a complexidade dos negócios globais em 2026, o volume de informações processadas diariamente tornou impossível a análise puramente manual. Profissionais de finanças que ainda dependem exclusivamente de planilhas estáticas estão perdendo competitividade e precisão.

A adoção de ferramentas de automação deixou de ser um mero diferencial no currículo para se tornar um requisito de sobrevivência profissional, garantindo compliance, reduzindo erros humanos e liberando tempo para análises realmente estratégicas.

"A automação financeira não substitui o analista estratégico, mas substitui o analista que não sabe utilizar a automação a seu favor."

Principais Tecnologias e Softwares para Investir

Se você está planejando investir tempo (estudos) ou recursos financeiros em ferramentas de automação, estas são as tecnologias mais valorizadas atualmente pelos recrutadores e CFOs:

  • RPA (Robotic Process Automation): Softwares como UiPath e Automation Anywhere são líderes absolutos na automação de tarefas repetitivas. Eles são perfeitos para automatizar conciliação bancária, extração de dados de faturas e consolidação de balanços.
  • Linguagens Orientadas a Dados (Python): Aprender Python e dominar bibliotecas como Pandas e NumPy é o próximo passo para modelagem financeira avançada e análise preditiva, superando largamente as limitações de processamento do Excel.
  • Business Intelligence (BI) e IA: O Microsoft Power BI e o Tableau evoluíram com integrações massivas de Inteligência Artificial. Eles permitem a criação de dashboards dinâmicos que se atualizam sozinhos, eliminando a criação manual de relatórios de fechamento mensal.
  • iPaaS (Integration Platform as a Service): Ferramentas como Make (antigo Integromat) e Zapier permitem que diferentes sistemas financeiros (ERPs, CRMs, gateways de pagamento) conversem entre si criando fluxos de dados automáticos, geralmente através de interfaces No-code/Low-code.

Dicas Práticas Antes de Investir em Automação

A empolgação com as novas tecnologias pode levar a gastos desnecessários. Antes de adquirir licenças empresariais caras ou iniciar longos treinamentos, siga estas diretrizes:

  1. Mapeie o Gargalo Primeiro: Não compre uma ferramenta procurando um problema. Identifique qual processo consome mais horas da sua equipe (ex: fechamento contábil, contas a pagar) e busque a solução específica para ele.
  2. Calcule o ROI da Ferramenta: O custo da licença de software e da implementação deve ser significativamente inferior ao custo das horas operacionais salvas.
  3. Avalie a Integração com Sistemas Legados: Verifique se a nova tecnologia possui APIs abertas ou conectores nativos que conversem facilmente com o ERP atual da sua empresa (como SAP, Oracle ou Totvs).
  4. Considere a Curva de Aprendizado: Soluções Low-code costumam ter uma adoção muito mais rápida e orgânica por equipes financeiras que não possuem um forte background em programação estruturada.

Conclusão

O futuro das finanças pertence aos profissionais que sabem construir pontes entre as regras de negócio e a tecnologia. Comece pequeno, automatize uma tarefa rotineira e escale gradativamente as soluções dentro do seu departamento.