Generative AI is redefining creativity. Ensuring that these systems are safe, controllable, and respectful of intellectual property is one of the most important open research challenges in the field. The Adobe Firefly Applied Science & Machine Learning team is building next-generation multimodal guardrail systems for building safe and compliant image, video, and audio generative models powering Firefly.com. Our goal extends beyond reactive blocking ; we are developing model-level guidance mechanisms that proactively steer generation away from IP-violating concepts while preserving creative intent and usability. We are seeking a P 4 0 Applied Scientist with strong multimodal depth and research instincts to help define and dev e lop the frontier of IP-aware generative modeling. This role sits at the intersection of generative model alignment, multimodal reasoning, and large-scale inference systems. Research Areas You Will Drive Inference-Time Alignment & Optimization Research and implement inference-time control techniques (guided decoding, constrained sampling, classifier guidance, reward-based steering). Optimize large multimodal systems for low-latency, production-scale deployment without sacrificing alignment quality. Identify and mitigate failure modes in generative pipelines at scale. Rapid Scientific Experimentation Develop and implement rigorous experiments to evaluate trade-offs between creativity, fidelity, and IP safety. Develop new evaluation methodologies and benchmarks for multimodal IP compliance. Contribute novel technical insights that may lead to publications or internal intellectual property. Vision-Language & Multimodal Reasoning Advance the use of Vision-Language Models (VLMs) and multimodal foundation models for semantic IP understanding. Explore joint reasoning between perception and generation systems to enable real-time steering. Experiment how various techniques, e.g. multimodal embeddings , cross-attention mechanisms, etc. , can be used for safety-aware inference. Multimodal IP-Aware Generative Modeling Develop novel approaches for integrating IP constraints directly into generative model behavior. Investigate controllable generation techniques that shift models from post-hoc blocking toward guided, alignment-aware synthesis. Develop training and fine-tuning strategies that embed guardrail signals into model representations.
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Job Type
Full-time
Career Level
Mid Level
Education Level
Ph.D. or professional degree