Computer Vision Engineer

Pangram

$230K — $260K *
Consumer Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 3-5+ years of experience building and deploying ML systems in production or a Ph.D. in a related field.
  • Proven track record in engineering with shipped production code and reliable systems.
  • Strong expertise in training neural networks using PyTorch at scale.
  • Experience with AI infrastructure and distributed systems for model serving and pipelines.
  • Deep understanding of generative image models like GANs and diffusion models.
  • Solid background in neural networks related to video, audio, and signal processing.
  • Familiarity with recent advancements in large language models (LLMs).

Responsibilities

  • Train and manage large-scale deep learning models for AI-generated content detection.
  • Develop and operate production systems that support detection models, focusing on performance metrics.
  • Design evaluation and monitoring systems to catch model regressions and observe model drift.
  • Create infrastructure for synthetic dataset generation and large-scale data processing.
  • Enhance model performance through experimentation based on real-world data and metrics.
  • Collaborate with engineering and product teams to integrate models into products and share insights with various audiences.

Benefits

  • Competitive equity package.
  • Comprehensive healthcare benefits.
  • Daily free lunch provided at the office.
Full Job Description
About the Role

Pangram Labs is hiring a Computer Vision Engineer to build and ship the multimodal AI detection systems at the core of our product. You'll own models end to end - from data and training through deployment, serving, and monitoring in production - to build the most accurate AI detection software in the industry.

You'll train deep learning models that reliably identify AI-generated images, then take responsibility for getting them into production and keeping them performant, reliable, and continuously improving against an adversarial, fast-moving threat landscape. This is an engineering-first role: research is part of the work, but the job is measured by what ships and how well it runs at scale.

Responsibilities
  • Train large-scale deep learning models to detect AI-generated content, and own the full lifecycle: data pipelines, training, evaluation, deployment, monitoring, and retraining
  • Build and operate the production systems that serve detection models - inference services, batch pipelines, and the infrastructure behind them - with attention to latency, throughput, cost, and reliability
  • Design evaluation and monitoring pipelines that catch model regressions and detect drift as new generative models emerge
  • Build infrastructure for synthetic dataset creation and large-scale data processing
  • Improve model accuracy, robustness, and efficiency through experimentation grounded in production metrics
  • Work with engineering and product teams to translate models into shipped product features, and share results with technical and non-technical audiences through documentation, whitepapers, and blog posts

Requirements
  • 3-5+ years of experience building and deploying ML systems in production, and/or a Ph.D. in AI, Machine Learning, Computer Vision, or a related area
  • A strong engineering track record: shipping production code, deploying models, and building reliable systems. This can be demonstrated through significant contributions to AI products in industry, or through first-author publications at major AI/CV venues (CVPR, ICCV, ECCV, NeurIPS, ICML, ICLR, etc.)
  • Experience training neural networks in PyTorch at scale, including distributed training
  • Experience with AI infrastructure and distributed systems - model serving, pipelines, and the tooling required to run models in production
  • Deep understanding of generative image models (diffusion models, GANs, autoregressive image models) and how they work
  • Solid understanding of neural networks for video, audio, time series, and signal processing
  • Familiarity with recent technical developments in LLMs

Nice to have
  • Experience with MLOps tooling, CI/CD for ML, or model observability and monitoring at scale
  • Experience or publications in image forensics or deepfake detection
  • Experience with synthetic data, adversarial robustness, or interpretability

What we offer
  • Salary Range: $230,000-$260,000 per year
  • Competitive equity
  • Healthcare benefits
  • Free lunch at the office

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