Job Description
About Centific Centific is a frontier AI data foundry that curates diverse, high-quality data, using our purpose-built technology platforms to empower the Magnificent Seven and our enterprise clients with safe, scalable AI deployment. Our team includes more than 150 PhDs and data scientists, along with more than 4,000 AI practitioners and engineers. We harness the power of an integrated solution ecosystemâcomprising industry-leading partnerships and 1.8 million vertical domain experts in more than 230 marketsâto create contextual, multilingual, pre-trained datasets; fine-tuned, industry-specific LLMs; and RAG pipelines supported by vector databases. Our zero-distance innovation⢠solutions for GenAI can reduce GenAI costs by up to 80% and bring solutions to market 50% faster. Our mission is to bridge the gap between AI creators and industry leaders by bringing best practices in GenAI to unicorn innovators and enterprise customers. We aim to help these organizations unlock significant business value by deploying GenAI at scale, helping to ensure they stay at the forefront of technological advancement and maintain a competitive edge in their respective markets. About Job Job Description: Build the Future of Perception & Embodied Intelligence Are you pushing the frontier of computer vision, multimodal large models, and embodied/physical AIâ and have the publications to show it ? Join us to translate cuttingâedge research into production systems that perceive, reason, and act in the real world. The Mission We are building stateâofâtheâart Vision AI across 2D/3D perception, egocentric/360° understanding, and multimodal reasoning. As a Ph.D. Research Intern, you will own highâleverage experiments from paper â prototype â deployable module in our platform. What Youâll Do Advance Visual Perception: Build and fineâtune models for detection, tracking, segmentation (2D/3D), pose & activity recognition, and scene understanding (incl. 360° and multiâview). Multimodal Reasoning with VLMs: Train/evaluate visionâlanguage models (VLMs) for grounding, dense captioning, temporal QA, and toolâuse; design retrievalâaugmented and agentic loops for perceptionâaction tasks. Physical AI & Embodiment: Prototype perceptionâinâtheâloop policies that close the gap from pixels to actions (simulation + real data). Integrate with planners and task graphs for manipulation, navigation, or safety workflows. Data & Evaluation at Scale: Curate datasets, author highâsignal evaluation protocols/KPIs, and run ablations that make results irreproducible impossible . Systems & Deployment: Package research into reliable services on a modern stack (Kubernetes, Docker, Ray, FastAPI), with profiling, telemetry, and CI for reproducible science. Agentic Workflows: Orchestrate multiâagent pipelines (e.g., LangGraphâstyle graphs) that combine perception, reasoning, simulation, and codeâgeneration to selfâcheck and selfâcorrect. Example Problems You Might Tackle Longâhorizon video understanding (events, activities, causality) from egocentric or 360° video. 3D scene grounding: linking language queries to objects, affordances, and trajectories. Fast, privacyâpreserving perception for onâdevice or edge inference. Robust multiâmodal evaluation: temporal consistency, openâset detection, uncertainty. Visionâconditioned policy evaluation in sim (Isaac/MuJoCo) with sim2real stress tests. Minimum Qualifications Ph.D. student in CS/EE/Robotics (or related), actively publishing in CV/ML/Robotics (e.g., CVPR/ICCV/ECCV, NeurIPS/ICML/ICLR, CoRL/RSS). Strong PyTorch (or JAX) and Python; comfort with CUDA profiling and mixedâprecision training. Demonstrated research in computer vision and at least one of: VLMs (e.g., LLaVAâstyle, videoâlanguage models), embodied/physical AI , 3D perception . Proven ability to move from paper â code â ablation â result with rigorous experiment tracking. Preferred Qualifications Experience with video models (e.g., TimeSFormer/MViT/VideoMAE), diffusion or 3D GS/NeRF pipelines, or SLAM/scene reconstruction . Prior work on multimodal grounding (referring expressions, spatial language, affordances) or temporal reasoning . Familiarity with ROS2 , DeepStream/TAO , or edge inference optimizations (TensorRT, ONNX). Scalable training: Ray , distributed data loaders, sharded checkpoints. Strong software craft: testing, linting, profiling, containers, and reproducibility. Public code artifacts (GitHub) and firstâauthor publications or strong openâsource impact. Our Stack (youâll touch a subset) Modeling: PyTorch, torchvision/lightning, Hugging Face, OpenMMLab, xFormers Perception: YOLO/Detectron/MMDet, SAM/Mask2Former, CLIPâstyle backbones, optical flow VLM / LMM: Vision encoders + LLMs, RAG for video, toolâformer/agent loops 3D / Sim: Open3D, PyTorch3D, Isaac/MuJoCo, COLMAP/SLAM, NeRF/3DGS Systems: Python, FastAPI, Ray, Kubernetes, Docker, Triton/TensorRT, Weights & Biases Pipelines: LangGraphâlike orchestration, data versioning, artifact stores What Success Looks Like A publishable or openâsourced outcome (with company approval) or a productionâready module that measurably moves a product KPI (latency, accuracy, robustness). Clean, reproducible code with documented ablations and an evaluation report that a teammate can rerun endâtoâend. A demo that clearly communicates capabilities, limits, and next steps. Why Centific Real impact: Your research shipsâpowering core features in our MVPs and products. Mentorship: Work closely with our Principal Architect and senior engineers/researchers. Velocity + Rigor: We balance topâtier research practices with pragmatic product focus. Rate: $40 per hour Centific is an equal-opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, national origin, ancestry, citizenship status, age, mental or physical disability, medical condition, sex (including pregnancy), gender identity or expression, sexual orientation, marital status, familial status, veteran status, or any other characteristic protected by applicable law. We consider qualified applicants regardless of criminal histories, consistent with legal requirements.