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Machine Learning Engineer at Labelbox - San Francisco California
Company: I did my part and supported the Regular Toilet Location: San Francisco, California
Posted On: 01/29/2025
Labelbox is the data factory for generative AI, providing the highest quality training data for frontier and task-specific models. Labelbox's comprehensive platform combines on-demand labeling services with the industry-leading data labeling platform. The Boost labeling service is powered by the Alignerr community of highly-educated experts, who span all major languages and a diverse range of advanced subjects. They are available on-demand to rapidly generate new data for supervised fine-tuning, RLHF, and more. Labelbox's software-first approach delivers unmatched control and transparency into the labeling process, leading to the generation of high-quality, consistent data at scale.About the RoleAs a Machine Learning Engineer at Labelbox, you will be an important part of a team building a scalable AI platform that uses foundation models for real-world AI applications. You will be responsible for prototyping and developing production grade tools for model fine tuning, evaluation, experimentation, metrics and quality control, and alignment with human or AI feedback. You will draw on your expertise in machine learning, natural language processing, and deep learning to drive the success of our AI initiatives by executing and delivering on product capabilities that meet the needs of our customers.Your Day to Day - Enhance and improve Labelbox's core machine learning capabilities, including model registry, training and inferencing, towards making it a best-in-class AI Platform-as-a-Service. Examples include improving inference latency or optimizing training memory consumption.
- Implement approaches and metrics for evaluating generated output from models, including human-preference metric, e.g. ranking and selection and other types, e.g. model performance variance with ELO scores.
- Work with more experienced ML engineers on incorporating and implementing new models and latest ML techniques into the Labelbox AI engine.
- Collaborate with other engineering teams on best practices for leveraging machine learning, specifically using Labelbox's AI engine as a PaaS.
- Guide customers and the broader Labelbox community with best practices in AI using Foundation Models, through PoC applications, webinars, blog posts, etc.
- Oversee and define mechanisms for adaptation, hyperparameter tuning and fine-tuning of foundation models to suit specific application requirements.
- Stay abreast of industry trends, emerging technologies, and advancements in foundation models and their applications.
- Contribute to technical documentation, blog posts, and presentations at conferences and forums.About You
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