Role Description
Weโre looking to hire a
Senior Machine Learning Engineer
to build models and data-driven systems that help classify, label, and enrich vast amounts of Internet data, providing direct value to customers and other parts of our organization. Censys operates distributed infrastructure for Internet-wide scanning and you will help us continue our mission to transform raw Internet telemetry into high-quality datasets, classifications, and insights about the Internet at large.
At Censys, we believe in working iteratively, while keeping the big picture in mind. Weโre expanding our data platform to enable future products and features that make the Internet more explainable by adding richer context and showing complex relationships. Weโre looking for someone who is curious, collaborative, and excited to grow while contributing to our mission.
What Youโll Do:
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Build and improve machine learning models and data-driven systems that classify, cluster, label, and enrich Internet-observed assets and services.
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Own the design and development of applied ML workflows that turn raw Internet telemetry into usable context for internal systems and customer-facing products.
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Partner with engineering, research, security, and product teams to ensure weโre building the right models, datasets, and feedback loops to improve coverage and quality.
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Leverage your experience in machine learning, data science, and software engineering to build various parts of the system, including components like: feature pipelines, training datasets, model evaluation frameworks, confidence scoring systems, and services that run in the cloud or on-prem.
Qualifications
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5+ years of experience in data science, machine learning engineering, or software engineering with applied ML responsibilities.
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Experience building and deploying machine learning or statistical models in production environments.
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Experience programming in Go/Python, and familiarity with software engineering practices for building maintainable systems.
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Experience working with large datasets and building data pipelines for feature generation, training, or inference.
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Proficiency with supervised and unsupervised learning techniques, such as classification, clustering, similarity scoring, or anomaly detection.
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Ability to evaluate models using sound statistics and understand tradeoffs related to precision, recall, accuracy, and confidence.
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Ability to write understandable, testable code with an eye towards maintainability.
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Possess strong communication skills and can explain technical concepts, model behavior, and tradeoffs to engineers, researchers, and product managers.
Requirements
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Experience building classification, enrichment, or labeling systems for messy or partially labeled data.
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Experience deploying models in containerized environments, like Kubernetes.
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Experience with at least one cloud provider, like: AWS, Azure, or GCP.
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Familiarity with feature stores, model serving, MLOps workflows, or tools for experiment tracking.
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Familiarity with security, Internet measurement, or network-derived datasets.
Benefits
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For high cost of living areas (San Francisco Bay Area, Seattle, and the New York City metro), the expected salary range for this position is $171,000 - $203,000 + bonus eligibility and equity.
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For all other locations, the expected salary range for this position is $150,000 - $188,000 + bonus eligibility and equity.
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In addition to our great compensation package, our benefits are effective on day one and include but are not limited to: 401k match, health, vision, dental, and more!