Applied Scientist - Multimodal

Adobe Adobe · Enterprise · San Jose, CA +2

Research Scientist role focused on developing and optimizing multimodal guardrail systems for generative AI models (like Adobe Firefly), specifically addressing IP compliance and safety through inference-time alignment, controllable generation, and advanced VLM techniques. The role involves research, experimentation, and collaboration to integrate these safety mechanisms into production-scale systems.

What you'd actually do

  1. Architect and evolve the Firefly IP Guard pipeline across first-party and third-party generative models.
  2. Collaborate with research scientists, ML engineers and other key partners like applied ethics, legal etc., to translate scientific advances into deployed systems.
  3. Communicate with other non-technical collaborators to help drive awareness about the implemented technologies.
  4. Drive end-over-end experimentation, from hypothesis formulation through model implementation and large-scale evaluation.
  5. Contribute to the broader research strategy around generative AI alignment and safety within Adobe.

Skills

Required

  • PhD or MS in Computer Science, Machine Learning, AI, or related field.
  • 5+ years of experience in applied ML or generative AI research (industry or academia).
  • Strong background in large-scale generative models (diffusion models, multimodal transformers, autoregressive systems).
  • Deep experience with model fine-tuning, alignment strategies, and representation learning.
  • Expertise in Vision-Language Models or multimodal foundation models.
  • Proficiency in Python and modern ML frameworks (e.g., PyTorch), with experience of training and deploying large models.
  • Strong experimental development and statistical evaluation skills.
  • Experience analyzing complex failure modes in multimodal systems.
  • Understanding of large-scale inference systems and production ML constraints.
  • Ability to navigate open-ended research spaces and identify high-leverage problems.
  • Demonstrated ability to use AI coding tools and AI-assisted development workflows to rapidly prototype, experiment, and scale research impact.
  • Comfort operating in an AI-augmented development environment, using generative tools to increase iteration speed, code quality, and research throughput.
  • Ability to combine scientific rigor with high-velocity execution.
  • Experience working in cross-functional research-to-product environments.
  • Ability to clearly communicate complex scientific ideas to diverse collaborators.

Nice to have

  • Research contributions in controllable generation, alignment, AI safety, or multimodal learning.
  • Publications in leading conferences (CVPR, ICCV, NeurIPS, ICML, ICLR, SIGGRAPH) or equivalent industry impact.
  • Experience deploying generative models to large user bases.
  • Background in safety evaluation frameworks, explainability or adversarial robustness.

What the JD emphasized

  • IP-aware generative modeling
  • multimodal guardrail systems
  • inference-time control techniques
  • large multimodal systems
  • Vision-Language Models
  • multimodal foundation models
  • controllable generation techniques
  • training and fine-tuning strategies
  • large-scale inference systems
  • production ML constraints
  • AI coding tools
  • AI-assisted development workflows
  • AI-augmented development environment
  • generative tools
  • safety evaluation frameworks

Other signals

  • multimodal generative models
  • IP-aware generative modeling
  • inference-time alignment
  • controllable generation