Telexistence

Lead Machine Learning Engineer

Telexistence  •  Tokyo, JP (Onsite)  •  17 days ago
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Job Description


As the Lead Machine Learning Engineer, you will lead to design, train, and deploy large-scale multimodal models that integrate vision, language, and action components for real-world robotic applications. Leveraging data from our teleoperation systems, you will create generalizable policies for our robots to perform complex tasks autonomously and reliably—beyond lab-scale or proof-of-concept demos. You will guide the end-to-end pipeline, from data processing and model design to on-robot deployment and performance optimization.

Key Responsibilities

  • Lead to develop and refine Vision-Language-Action Models training architectures (transformers, diffusion model and flow matching).
  • Real-Time Inference to ensure low-latency and reliable control signals.
  • Continuous Field Optimization with hardware and refine model hyperparameters, and optimize inference for new or unexpected scenarios.
  • Catch up on cutting-edge research in multimodal deep learning & apply it to robot at the real market issues.
  • Performance Evaluation & Safety Checks to validate VLA models (safety, accuracy, and autonomy metrics) in real convenience store environments.
  • Lead to collaborate with the external company (Physical Intelligence) & organization (AIRoA)

Qualifications

  • Technical Skills:
  • Deep Learning Expertise: Must have deep learning based controller (Imitation Learning or Reinforcement Learning) experience. No robotics control experienced candidates (e.g., Only Perception ML Enginer) are not qualified.
  • Robotics Integration: Experience deploying AI/ML solutions onto physical robots with real-time constraints; proficiency using robotics middleware (e.g., ROS1/2) and embedded edge hardware (e.g., Jetson).
  • Data Engineering for ML: Proficiency in constructing data-processing pipelines (Python, C++, or similar with multi types datasets (images, video, text, sensor).
  • Control & Actuation: Solid understanding of  control theory and how high-level AI actions map to low-level motors, actuators, and physical robot systems.

  • Professional Experience:
  • Robust Deployment Track Record: Proven success in taking advanced ML/AI or robotics projects from initial research to stable, real-world operation (beyond Research & PoC).
  • Industry & Research Contributions: Strong portfolio or publication record in AI or robotics; comfortable presenting at conferences is a plus.
  • +3 years of experience in the industry (if you have completed Ph.D, you can count that period).

  • Soft Skills & Culture Fit:
  • Comfortable in a performance-driven environment (high rewards for results, potential demotion for underperformance).
  • Communication skills in English; Japanese proficiency is a plus.

  • Compensation:
  • 7-15M JPY as a base annual salary (with stock option)
Applications consisting solely of a standard resume without addressing these points will not proceed in our selection process. We look forward to reviewing your concrete evidence of expertise in building and deploying advanced robotics foundation models.
Telexistence

About Telexistence

“TELEXISTENCE” is a concept that was first proposed in 1980 by Dr. Susumu Tachi, Professor Emeritus of the University of Tokyo and the chairman of TX inc, which refers to the notion of humans being in a place other than where he or she actually exists and being able to act freely in that remote environment – essentially expanding the presence of human beings – as well as the technological systems that make this possible.

Our mission at TX inc is to change robotics, change structures, and change the world.

テレイグジスタンス(TELEXISTENCE/遠隔存在)とは、TX incの創業者の一人でTX会長でもある東京大学名誉教授 舘暲氏が1980年に世界で初めて提唱した、人間が、自分自身が現存する場所とは異なった場所に実質的に存在し、その場所で自在に行動するという人間の存在拡張の概念であり、また、それを可能とするための技術体系です。 TX incのミッションは、ロボットを変え、構造を変え、世界をかえることです。

Industry
Architecture & Engineering
Company Size
51-200 employees
Headquarters
Ota-ku, JP
Year Founded
2017
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