腾讯云安全解决方案架构师-for海外
任职要求
1.本科及以上学历,计算机科学、信息安全或相关专业; 2.至少3年以上云安全领域的工作经验,熟悉主流云平台(如AWS、Azure、GCP等)的安全机制; 3.熟悉网络安全、信息安全、应用安全等相关领域,掌握虚拟化、容器化和DevOps等技术; 4.具备丰富的云安全解决方案设计、实施和管理经验,能够独立完成项目; 5.具备良好的沟通能力和团队合作精神,能够与客户和内部团队有效协作; 6.具备较强的分析和解决问题的能力,能够应对客户云环境面临复杂的安全威胁; 7.具备良好的英语听说读写能力,能够与海外客户进行有效沟通; 8.具备云安全相关认证(如CCSP、CISSP等)者优先; 9.有海外工作经验或跨文化沟通经验者优先。 加分项 1.在同等条件下,通过腾讯云认证或取得同等资格认证的候选人,我们会优先考虑。
工作职责
1.负责海外客户的云安全解决方案设计、架构规划和技术支持; 2.与销售团队紧密合作,参与客户需求分析,提供专业的云安全咨询服务; 3.制定并实施云安全策略,确保客户云环境的安全性和合规性; 4.跟踪云安全领域的最新技术和趋势,为客户提供前沿的解决方案; 5.参与云安全产品的市场推广和品牌建设,提升腾讯云安全产品在海外市场的知名度; 6.协调内部资源,确保解决方案的顺利交付和客户满意度; 7.建立和维护与海外客户的技术关系,提供持续的技术支持和服务。
Team Introduction: TikTok is a global short-video platform available in 150 countries and regions. Our mission is to inspire creativity and bring joy by helping users discover real and interesting moments that make life better. TikTok's global headquarters are in Los Angeles and Singapore, and we also have offices in New York City, London, Dublin, Paris, Berlin, Dubai, Jakarta, Seoul, and Tokyo. TikTok Research & Development (R&D) Team: The TikTok R&D team is dedicated to building and maintaining industry-leading products that drive the success of TikTok’s global business. By joining us, you'll work on core scenarios such as user growth, social features, live streaming, e-commerce consumer side, content creation, and content consumption, helping our products scale rapidly across global markets. You'll also face deep technical challenges in areas like service architecture and infrastructure engineering, ensuring our systems operate with high quality, efficiency, and security. Meanwhile, our team also provides comprehensive technical solutions across diverse business needs, continuously optimizing product metrics and improving user experience. Here, you'll collaborate with leading experts in exploring cutting-edge technologies and pushing the boundaries of what's possible. Every line of your code will serve hundreds of millions of users. Our team is professional and goal-oriented, with an egalitarian and easy-going collaborative environment. Research Project Introduction: As the world's leading short-video platform, TikTok faces multiple challenges in its recommendation systems, including data sparsity for new users leading to insufficient personalisation, high timeliness requirements for live steaming recommendations, difficulty in maintaining user interest diversity, and complex e-commerce recommendation system chains. Traditional recommendation methods heavily rely on historical behaviour modeling, which struggles with the cold-start problem for new users. Live-streaming recommendations demand real-time responsiveness to rapidly changing content dynamics (e.g., host interactions, traffic fluctuations) within extremely short time windows (typically within 30 minutes) posing higher demands on the system's real-time perception and decision-making capabilities. Additionally, the immersive single-feed format amplifies the challenge of maintaining content diversity, requiring a careful balance between multi-interest learning and the risk of content drift caused by exploratory recommendations. The current e-commerce recommendation system follows a multi-stage funnel architecture (recall–ranking–re-ranking), which often leads to inconsistent chains, high maintenance costs, and an overreliance on short-term value prediction. This leads users to fall into content homogenization fatigue. To address these pain points, this project proposes leveraging large language models (LLMs) and large model technologies to achieve significant breakthroughs. On one hand, LLMs—with their vast knowledge base and few-shot reasoning capabilities—can infer new users' potential intentions from registration data and external knowledge, thereby alleviating cold-start issues. On the other hand, by integrating graph neural networks (GNNs) and full-lifecycle user behavior sequences for modeling social preferences, we aim to improve the accuracy of interest prediction. Additionally, the project explores the generalization capabilities, long-context awareness, and end-to-end modeling strengths of large models to simplify the e-commerce recommendation chains, enhance adaptability to real-time changes, and improve exploratory recommendation effectiveness. The ultimate goal is to build a more streamlined system with more accurate recommendations, enhancing user experience and retention while driving sustainable business growth. 团队介绍 : TikTok是一个覆盖150个国家和地区的国际短视频平台,我们希望通过TikTok发现真实、有趣的瞬间,让生活更美好。TikTok 在全球各地设有办公室,全球总部位于洛杉矶和新加坡,办公地点还包括纽约、伦敦、都柏林、巴黎、柏林、迪拜、雅加达、首尔和东京等多个城市。 TikTok研发团队,旨在实现TikTok业务的研发工作,搭建及维护业界领先的产品。加入我们,你能接触到包括用户增长、社交、直播、电商C端、内容创造、内容消费等核心业务场景,支持产品在全球赛道上高速发展;也能接触到包括服务架构、基础技术等方向上的技术挑战,保障业务持续高质量、高效率、且安全地为用户服务;同时还能为不同业务场景提供全面的技术解决方案,优化各项产品指标及用户体验。 在这里, 有大牛带队与大家一同不断探索前沿, 突破想象空间。 在这里,你的每一行代码都将服务亿万用户。在这里,团队专业且纯粹,合作氛围平等且轻松。 课题介绍: TikTok作为全球领先的短视频平台,面临新用户数据稀疏导致的个性化推荐不足、直播推荐时效性要求高、用户兴趣多样性维护困难以及电商推荐系统链路复杂等多重挑战。传统推荐方法依赖历史行为建模,难以解决新用户冷启动问题,且直播推荐需在极短窗口期内(通常30分钟内)实时捕捉内容动态变化(如主播互动、流量波动),这对系统的实时感知与快速决策能力提出更高要求。此外,单列沉浸式场景放大了多样性问题,需平衡多峰兴趣学习与探索引发的内容穿越风险。当前电商推荐系统采用多阶段漏斗架构(召回-排序-混排),存在链路不一致、维护成本高、过度依赖短期价值预测等问题,导致用户易陷入内容同质化疲劳。 针对上述痛点,项目提出结合大语言模型(LLM)和大模型技术实现突破:一方面利用LLM的海量知识储备与Few-shot推理能力,通过注册信息与外部知识推理新用户潜在意图,缓解冷启动问题;另一方面,在社交偏好建模中融合GNN与用户全生命周期行为序列,提升兴趣预测精准度。同时,探索大模型的泛化能力、长上下文感知及端到端建模优势,简化电商推荐链路,增强实时动态适应性与兴趣探索能力,最终实现系统更简洁、推荐更精准、用户体验与留存双提升的目标,推动业务可持续增长。
Team Introduction: TikTok is a global short-video platform available in 150 countries and regions. Our mission is to inspire creativity and bring joy by helping users discover real and interesting moments that make life better. TikTok's global headquarters are in Los Angeles and Singapore, and we also have offices in New York City, London, Dublin, Paris, Berlin, Dubai, Jakarta, Seoul, and Tokyo. TikTok Research & Development (R&D) Team: The TikTok R&D team is dedicated to building and maintaining industry-leading products that drive the success of TikTok’s global business. By joining us, you'll work on core scenarios such as user growth, social features, live streaming, e-commerce consumer side, content creation, and content consumption, helping our products scale rapidly across global markets. You'll also face deep technical challenges in areas like service architecture and infrastructure engineering, ensuring our systems operate with high quality, efficiency, and security. Meanwhile, our team also provides comprehensive technical solutions across diverse business needs, continuously optimizing product metrics and improving user experience. Here, you'll collaborate with leading experts in exploring cutting-edge technologies and pushing the boundaries of what's possible. Every line of your code will serve hundreds of millions of users. Our team is professional and goal-oriented, with an egalitarian and easy-going collaborative environment. Research Project Introduction: With the advancement of hardware computing and the continuous breakthroughs of large models in CV/NLP/multimodal learning and even AGI fields, the large computing driven in recommendation scenarios are increasingly capable of capturing user preferences in a more comprehensive and nuanced way. This enables a deeper understanding of user needs and the discovery of latent interests, ultimately leading to enhanced user experiences. As a critical component of short video recommendation systems, the ranking module is responsible for fine-grained matching between users and content, selecting the videos users are most likely to be engaged with. In this context, the key research focus is how to best leverage large computing to maximize the model’s memory, generalization, and reasoning capabilities. 团队介绍: TikTok是一个覆盖150个国家和地区的国际短视频平台,我们希望通过TikTok发现真实、有趣的瞬间,让生活更美好。TikTok 在全球各地设有办公室,全球总部位于洛杉矶和新加坡,办公地点还包括纽约、伦敦、都柏林、巴黎、柏林、迪拜、雅加达、首尔和东京等多个城市。 TikTok研发团队,旨在实现TikTok业务的研发工作,搭建及维护业界领先的产品。加入我们,你能接触到包括用户增长、社交、直播、电商C端、内容创造、内容消费等核心业务场景,支持产品在全球赛道上高速发展;也能接触到包括服务架构、基础技术等方向上的技术挑战,保障业务持续高质量、高效率、且安全地为用户服务;同时还能为不同业务场景提供全面的技术解决方案,优化各项产品指标及用户体验。 在这里, 有大牛带队与大家一同不断探索前沿, 突破想象空间。 在这里,你的每一行代码都将服务亿万用户。在这里,团队专业且纯粹,合作氛围平等且轻松。 课题介绍: 随着硬件算力的发展以及大模型在CV/NLP/多模态以至于AGI领域的不断突破,推荐场景下的大算力驱动能够帮助模型更全面深刻理解用户偏好,进而更好地理解用户需求,挖掘用户潜在兴趣,进而带来更好地用户体验。排序模块作为整个短视频推荐系统中非常重要的一环,承载着用户与视频之间的细粒度匹配挖掘进而挑选出用户最感兴趣的视频。如何找到合适的路径来最大化大算力下模型的记忆、泛化、推理能力,成为了研究的重中之重。
Team Introduction: The ByteDance Recommendation Architecture Team is responsible for the design and development of the recommendation system architecture for ByteDance's related products. It ensures the stability and high availability of the system, optimizes the performance of online services and offline data streams, resolves system bottlenecks, and reduces cost overheads. The team also abstracts the common components and services of the system, builds the recommendation middle - office and data middle - office to support the rapid incubation of new products and enable ToB services. 团队介绍: 字节跳动推荐架构团队,负责字节跳动旗下相关产品的推荐系统架构的设计和开发,保障系统稳定和高可用;负责在线服务、离线数据流性能优化,解决系统瓶颈,降低成本开销;抽象系统通用组件和服务,建设推荐中台、数据中台,支撑新产品快速孵化以及为ToB赋能。 课题背景: 在当今数字化时代,推荐系统已成为众多领域(如电商、信息资讯等)实现个性化服务、提升用户体验和竞争力的关键技术。然而,随着技术的不断发展和业务场景的日益复杂,推荐系统面临着诸多严峻挑战。 一方面,推荐系统自身的复杂性急剧增加。大量推荐策略不断演进迭代,且系统状态动态变化,但缺乏有效手段自动跟踪评估策略有效性并下线低 ROI 策略,导致系统存在较多低效策略。同时,推荐系统依赖多种基础组件,其复杂负载模型给底层组件参数配置和性能调优带来巨大困难,日常开发迭代中的问题排查等工作消耗大量人力,亟需提升开发效率、降低人力成本。 另一方面,随着电商行业等领域的激烈竞争,传统推荐系统在多样性、创新性和个性化方面的短板愈发凸显,难以满足用户日益增长的多元需求。生成式人工智能技术虽带来新突破,但在实际应用中面临成本效率、全域数据协同、数据隐私与安全以及技术变革应对等诸多难题。 此外,随着大模型的快速发展,推荐系统对用户行为序列数据的存储和质量要求不断提高,数据质量对模型性能的影响愈发关键。同时,模型规模的扩大和多模态数据的涌现,使得推荐系统在数据处理环节面临冗长、资源利用不合理以及传统数据处理框架难以满足多模态数据处理需求等问题。 课题挑战: 策略管理与优化:构建一套智能化系统,实现推荐策略的规范化定义、长期及离线评估、无效策略自动识别与下线,以及相关代码配置的下线。 自适应调优与故障诊断:针对推荐系统多样化业务负载,利用大模型能力完成系统及底层组件的参数和配置调优,并探索自适应故障诊断方案,提供全局视角的故障追踪、定位和分析能力。 成本与效率平衡:在推荐系统应用生成式技术时,解决模型训练和运行的高成本问题,平衡成本与效率,在有限资源下实现高效推荐。 全域数据处理:应对电商等横向全域场景下海量异构数据,提升和保障数据质量与准确性,标准化供给数据给全域推荐模型,并实现低成本跨端服务,同时,确保数据隐私与安全,合规使用数据。 数据存储与质量提升:研发低成本高性能存储引擎,设计灵活的Schema Evolution机制,实现数据高并发实时写入与训推一致性,深入探究数据质量与模型预测性能的量化关系,构建基于DCAI理念的数据和模型相关性分析工具及训练数据自动化处理链路。 多模态数据与异构计算:构建适用于推荐系统的多模态数据异构计算处理框架,解决数据读取、框架整合、高性能算子编排等问题,提高数据处理和模型训练效率,建立以Python为核心的开发者生态。 推荐大算力模型效率优化:随着大模型在CV/NLP/多模态以至于AGI领域的不断突破,推荐场景下的大算力驱动能够帮助模型更全面深刻理解用户偏好,进而更好地理解用户需求,挖掘用户潜在兴趣,进而带来更好地用户体验。更大规模的推荐模型需要更大的算力,如何平衡好算力开销和效果收益,需要架构和算法工程师深度Co-Design。
1、市场洞察和竞对分析 •洞察和产品相关的市场机会、市场容量和竞争格局。 •分析竞对产品核心指标、市场策略和市场价格。 •快速捕捉市场热点和客户业务痛点,挖掘产品商机,快速推动落地,形成领先竞争力。 2、产品商机判断和深度技术交流 •作为产品线代表,参与商业策略设计和商机判断。 •对复杂项目需求,协同销售团队与客户进行深度技术交流,结合对行业发展方向和技术变革方向的洞察,就具体技术场景引导客户关键决策人决策,促进商机转化。 3、产品方案设计和技术支持 •对复杂项目,理解客户的业务和功能性/非功能型需求、性能及可用性需求,基于客户场景,提供有技术竞争力和可行性、成本优势的产品组合方案,并在产品选型/POC/报价配置时, 提供技术支持。 •提炼基于客户业务场景的关键技术指标,形成领先控标项,在POC、winback等业务活动中落地验证。 •复杂项目推进方案跨团队协同优化,成本,性能,稳定性等多维度提升解决方案的竞争力。 •探索创新产品的方案和场景,推动新产品快速市场覆盖,保障产品创新活力。 •对大客户提供售后的关键技术答疑,用技术推动业务发展。 4、产品设计和优化支持 •通过对行业、场景的深入了解,参与产品的重大功能设计、定价设计、用户体验设计,协助产品在行业/场景下保持领先性。 •识别并精准提炼客户的共性需求和痛点,反哺产品设计,推动产品改进和多产品融合、新产品和功能孵化。 5、最佳实践沉淀和赋能 •沉淀面向细分场景的最佳实践,选择性输出IaC代码,通过项目实践总结标杆成功案例,提炼共性模块、统一标准化能力,加速产品方案规模化复制。 •提炼产品优势功能性能参数,并针对性的设计测试用例,放大产品和技术的影响力,沉淀基于测试用例、测试方案的解决方案竞争力。 •参与产品GTM材料编写、与伙伴共创联合解决方案、对销售团队和生态伙伴赋能。