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社区内的同学陆续出offer了......
具身智能之心· 2025-10-28 00:02
Core Insights - The article highlights the successful job placements of community members in various leading companies and emphasizes the importance of choosing top-tier firms or unique tech unicorns for career advancement [1] - The community aims to foster talent in the field of embodied intelligence through various initiatives, including technical sharing, job referrals, and industry engagement [1][2][5] Group 1: Community Initiatives - Continuous live sharing sessions are organized to discuss the latest developments and unresolved issues in the embodied intelligence industry [2] - A comprehensive technical roadmap has been developed for beginners, providing essential knowledge and skills for entering the field [3] - Valuable industry frameworks and project proposals are offered to those already engaged in related research [5] Group 2: Job Referrals and Networking - The community has established a job referral mechanism with multiple embodied intelligence companies, facilitating direct connections between job seekers and employers [7] - Members can access a wealth of resources, including open-source projects, datasets, and simulation platforms, to enhance their learning and practical skills [9][25][33] Group 3: Educational Resources - The community provides a compilation of renowned domestic and international laboratories in embodied intelligence, aiding members in their academic pursuits [12] - A collection of research reports related to large models and humanoid robots is available, keeping members informed about industry trends and applications [18] - Members can access a variety of educational materials, including books and technical documents, to support their foundational learning in robotics [20][21] Group 4: Specialized Learning Paths - Detailed learning paths for embodied intelligence perception and interaction are outlined, covering various tasks and methodologies [38][40] - The community offers insights into cutting-edge topics such as multi-modal large models and reinforcement learning, ensuring members stay updated with the latest advancements [46][53]