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Machine Learning Engineer

Machine Learning Engineer

CompanyInvisible Technologies
LocationSan Francisco, CA, USA, New York, NY, USA
Salary$128000 – $151000
TypeFull-Time
Degrees
Experience LevelJunior, Mid Level

Requirements

  • 2+ years of experience in software engineering, ML engineering, or data-focused development roles.
  • Exposure to deploying machine learning models or supporting AI/ML workloads in production environments.
  • Experience in client-facing roles or comfort working with external stakeholders.
  • Proficient in Python, with experience building ML models or working with frameworks like PyTorch, TensorFlow, or similar.
  • Familiarity with building or supporting production-grade ML systems, such as RAG pipelines or agent-based applications, is a plus.
  • Solid understanding of core data science concepts, including statistical modeling, hypothesis testing, and data exploration techniques to inform model development and evaluation.
  • Experience with cloud platforms (AWS, GCP, Azure), and a solid grasp of deployment workflows and infrastructure best practices.
  • Familiarity with containerization tools (e.g., Docker, Kubernetes) is beneficial.
  • Ability to write clean, modular code and contribute to automated tests (unit, integration, and end-to-end).
  • Comfortable working with relational and/or NoSQL databases.
  • Familiarity with MLOps concepts, including model tracking, monitoring, and versioning.
  • Understanding of how DevOps principles apply to ML model development and deployment.
  • Strong communication skills and a collaborative mindset, with the ability to engage effectively across internal teams and external client environments.

Responsibilities

  • Contribute to the development of reliable, scalable backend systems that power machine learning workflows and data pipelines.
  • Help manage and improve cloud infrastructure to support efficient model deployment and operational stability in real-world environments.
  • Participate in identifying and addressing engineering challenges, including those surfaced through direct client feedback and usage.
  • Work closely with ML engineers, data scientists, and external stakeholders to integrate machine learning capabilities into production systems.
  • Assist in developing internal tools and infrastructure to streamline experimentation, training, and model serving across varied use cases.

Preferred Qualifications

  • Familiarity with building or supporting production-grade ML systems, such as RAG pipelines or agent-based applications, is a plus.
  • Familiarity with containerization tools (e.g., Docker, Kubernetes) is beneficial.