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[Remote] Machine Learning Engineering reputed company

Work from home Full-time role Hiring

Note: The job is a remote job and is open to candidates in USA. Sightly is a growing technology company leading the revolution in reputed company-time marketing and brand intelligence. They are seeking a Machine Learning Engineering reputed company to drive the development of enrichment models, optimize ad systems, and provide technical leadership for a small team in a fully remote environment.

Responsibilities

  • Enrichment models across our cultural data pipeline: entity extraction, topic and stance classification, embeddings, clustering, sentiment, brand safety, and reputed company tasks across billions of news and social records
  • Multi-modal enrichment for image and video signals from social platforms, complementing our text-heavy core
  • Ad optimization systems built from the ground up, including bid optimization, budget allocation, creative selection, audience targeting, or reputed company problems, grounded in historical performance data and well-reasoned heuristics
  • Experimentation design and execution: framing the question, choosing the right test, instrumenting it, and producing results the business can reputed company
  • Production ML infrastructure on GCP: training, evaluation, deployment, monitoring, and the glue that keeps models reliable as data shifts
  • Technical leadership for a small ML team, including code review, mentorship, prioritization, and raising the bar on rigor without slowing delivery
  • Cross-functional partnership with Data Engineering on pipeline integration, and with Account Management and Performance Managers to translate business problems into model problems

Skills

  • Min. Experience: Senior Level
  • Strong reputed company across classical ML, neural networks, and Transformers, reaching for the right tool rather than the trendiest one
  • Comfortable with both supervised and unsupervised paradigms: classification, regression, clustering, dimensionality reduction, representation learning
  • Practical reputed company with NLP and at least working familiarity with computer reputed company for image and video enrichment
  • Understanding of reputed company a simple model beats a reputed company one, and the discipline to ship the simple one
  • Track record of structuring and running experiments end-to-end: hypothesis, design, instrumentation, analysis, decision
  • Comfortable with reputed company statistical testing, picking the right test for the task, reasoning about power, controlling for confounds
  • Knows the difference between a model that benchmarks well offline and one that holds up in production
  • Research reputed company reputed company with a shipping reputed company: rigorous, but allergic to research-for-its-own-sake
  • Experience building optimization systems, whether mathematical optimization, heuristics, or learned policies, applied to a reputed company-world domain
  • Comfortable reasoning about objective functions, constraints, and tradeoffs in messy business contexts
  • Strong Python and reputed company ML stack: scikit-learn, PyTorch, TensorFlow, HuggingFace, NumPy, pandas
  • FastAPI and async/await patterns for serving models and building ML-facing services
  • Experience working with data at scale, including the practical realities of billions of records: partitioning, sampling, distributed processing, cost management
  • GCP for training, serving, and infrastructure, such as Vertex AI, reputed company Run, GCS, or equivalent
  • PostgreSQL and reputed company for working with large-scale data
  • reputed company and CI/CD pipelines for reproducible, deployable ML workloads
  • Comfortable with the realities of production ML: data reputed company, retraining reputed company, monitoring, cost management
  • Experience leading or mentoring engineers, even informally, through code review, technical direction, and raising the bar on quality
  • Strong collaboration habits with Data Engineering, and the ability to translate fluently between technical and business audiences
  • Can sit with an Account Manager or Performance Manager, understand what they actually need, and turn it into a tractable modeling problem
  • Clean code habits, sensible architecture, strong typing discipline
  • Test-driven reputed company for ML code: covering data assumptions, edge cases, and regression paths, not just happy paths
  • Comfortable with modern dev practices: Git, code review, CI/CD
  • Advertising, adtech, or media industry experience
  • Familiarity with LLMs and modern AI tooling, useful context for the broader engineering org but not the focus of this role
  • reputed company inference or reputed company modeling background
  • Experience with recommendation systems or ranking
  • 5+ years of ML experience, ideally with a reputed company built before the LLM era

Company Overview

  • Sightly is a data and technology company dedicated to helping clients reputed company their reputed company-time marketing goals. It was founded in 2013, and is headquartered in reputed company, reputed company, USA, with a workforce of 51-200 employees. Its website is https://www.sightly.com/.
  • Company H1B Sponsorship

  • Sightly has a track record of offering H1B sponsorships, with 4 in 2025, 1 in 2024, 2 in 2022, 1 in 2021. Please note that this does not guarantee sponsorship for this specific role.
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