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We are looking for a AI Engineer to design, build, and operate AI agent systems that integrate large language models, vision models, internal data platforms, and external tools. You will work closely with Data, Product, and Engineering teams to deliver scalable, reliable, and observable AI systems.
1. Design and implement LLM-based AI agents that support multi-step reasoning, tool / function calling, and contextual decision-making.
2. Build and maintain agent workflows that interact with:
3. Integrate computer vision and multi-modal models (vision + language) into agent workflows and product features.
4. Apply vision models for use cases such as content understanding, classification, moderation, or personalization.
5. Own the end-to-end lifecycle of AI systems, including:
6. Implement LLMOps practices, including:
7. Collaborate with Data Engineers to integrate AI systems into existing infrastructure, CI/CD pipelines, and observability platforms.
8. Work closely with Data Scientists, Product Managers, and Software Engineers to translate business requirements into production-ready AI solutions.
Requirements
1. 5+ years of experience building and operating production AI or ML systems.
2. Hands-on experience with LLM-based systems or AI agents, including:
3. Strong Python skills and solid software engineering fundamentals.
4. Experience operating AI systems with real users, including awareness of:
5. Familiarity with LLMOps / MLOps practices, such as:
6. Solid understanding of machine learning fundamentals (training, evaluation, inference).
7. Experience integrating:
8. Experience deploying AI services using Docker, Kubernetes, and major cloud platforms (AWS, GCP, or Azure).
1. Experience designing or contributing to shared AI platforms or internal frameworks.
2. Experience acting as a technical lead or mentoring other engineers.
3. Hands-on experience training or fine-tuning vision or multi-modal models.
4. Experience with RAG systems, vector databases, or knowledge-augmented agents.
5. Experience operating high-scale or real-time AI systems.
3 Rounds
1. HR Phone Interview
2. Take-Home Assignment (90mins)
3. Onsite Interview
SWAG 創立於 2016 年 8 月,最初的產品構想,是要打造一個能串連網紅創作者及用戶的 PGC 流量變現的平台,讓粉絲可以無時無刻的與心儀的網紅互動、讓網紅可以透過人氣實現獲利。
透過豐富多元的內容及強大的行銷推廣,目前平台有超過 400 萬註冊用戶及數千位內容提供者,用戶遍及臺灣、香港、澳門、新加坡、馬來西亞及歐美等,並獲得數十位 YouTuber 網紅大力推薦;成為亞洲最大的影音串流平台。
官方在 2018 上半年開啟了 swag.live ,使用者可以透過網頁直接開啟 SWAG,並陸續加入了直播、一對一私訊聊天以及影片解鎖等新功能。
如今 SWAG 定位為亞洲最大的影音串流社交平台,並且持續的拓展國際市場