Resumo da vaga

Machine Learning Engineer Lead

Requisitos e responsabilidades

Conteúdo da vaga extraído em seções para revisão mais rápida.

🚀 What We Do

  • Leveraging our expertise, we build modern Machine Learning systems for demand planning and budget forecasting.
  • Developing scalable data infrastructures, we enhance high-level decision-making, tailored to each client.
  • Offering comprehensive Data Engineering and custom AI solutions, we optimize cloud-based systems.
  • Using Generative AI, we help e-commerce platforms and retailers create higher-quality ads, faster.
  • Building deep learning models, we enhance visual recognition and automation for various industries, improving product categorization, quality control, and information retrieval.
  • Developing recommendation models, we personalize user experiences in e-commerce, streaming, and digital platforms, driving engagement and conversions.

🌟 Our Partnerships

  • Amazon Web Services
  • Astronomer
  • Databricks

🌟 Our Values

  • 📊 We are Data Nerds
  • 🤗 We are Open Team Players
  • 🚀 We Take Ownership
  • 🌟 We Have a Positive Mindset

Responsibilities 🤓

  • Lead and mentor the team, fostering skill development and best practices.
  • Guide the creation of SPECs and ensure clear documentation.
  • Act as the main point of contact for stakeholders, ensuring alignment between technical and business goals.
  • Develop and optimize data and ML solutions, integrating best practices for scalability and monitoring.
  • Oversee the full lifecycle of data pipelines and models—from EDA and feature engineering to deployment and continuous improvement.
  • Build Proof of Concepts (POCs) to validate and refine solutions.
  • Optimize performance, latency, memory, and throughput across data systems.
  • Design and maintain feature stores and data pipelines to support workflows.
  • Research and implement emerging technologies to enhance solutions.
  • Participate in candidate interviews and evaluations to help Mutt grow.

Required Skills 💻

  • Experience leading and mentoring teams in Data projects, guiding technical decisions, and fostering team growth.
  • Proven ability to collaborate with stakeholders, translate business needs into technical solutions, and align priorities across teams.
  • Experience implementing ML-based systems, including model lifecycle management, monitoring, and MLOps pipeline setup.
  • Strong proficiency in Python (Pandas, Numpy, Jupyter, Scikit-Learn, XGBoost, Plotly).
  • Knowledge of SQL.
  • Experience with cloud platforms (AWS, GCP, Azure).

Nice to Have ✨

  • Experience with ML workflows (Airflow, MLflow, H2OAI, Databricks).
  • Background in AdTech or Generative AI projects.
  • Understanding of Deep Learning frameworks (Keras, PyTorch, TensorFlow).
  • Solid command of English for understanding and communicating technical concepts (Design Documents, etc.).
  • Basic knowledge of Docker.

🎁 Perks

  • Remote-first culture – work from anywhere! 🌍
  • AWS, DBT, Google Cloud, Azure & Databricks certifications fully covered
  • In-Company English Lessons.
  • Birthday off + an extra vacation week (Mutt Week! 🏖️)
  • Referral bonuses – help us grow the team & get rewarded!
  • Maslow: Monthly credits to spend in our benefits marketplace.
  • ✈️🏝️ Annual Mutters' Trip – an unforgettable getaway with the team!
Vagas similares

Mantenha uma lista reserva.

Ver stack
FocoMachine Learning EngineeringÁrea da vaga
Sinal de senioridadeSenior, LeadNível do candidato
StackAWS, Azure, DockerSkills principais
Localização1 país aceitoElegibilidade

Stack

Use estas tags para comparar vagas remotas similares.

Elegibilidade de localização

Candidatos devem aplicar apenas quando o país do perfil estiver listado aqui.

Seu perfilPaís não definidoEntre para comparar seu país com esta vaga.

Fluxo de contratação

O WithMira mostra a vaga e depois envia candidatos para a aplicação da empresa.

1Confira fit da vaga, stack e elegibilidade de localização no WithMira.
2Abra a página de aplicação da empresa pelo link rastreado.
3Salve a vaga ou assine oportunidades similares antes de sair.
Aplicar no site da empresaSite da empresaAbrir link