Technology Project Manager

MBR Partners
1 year ago
Applications closed

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We are hiring for a Technology Project Manager who will play a key role in driving the execution of our client's blockchain-agnostic AI, LLM, and blockchain initiatives. The successful candidate will manage and coordinate cross-functional teams, ensuring timely delivery of innovative AI and Web3 projects.Project Management and Execution:● Manage AI, LLM, and blockchain-related projects from conception to delivery,ensuring they are completed on time, within budget, and to the desired qualitystandards.● Work closely with development teams to ensure the successful implementation of AI,LLM, and blockchain solutions, providing oversight and strategic guidance to ensurealignment with project goals.● Lead the lifecycle of LLM projects, from design and development to integration anddeployment, ensuring coordination across teams and external stakeholders.● Ensure that all technical and functional requirements are captured, communicated,and met throughout the project cycle, managing risks and addressing issues as theyarise.Technical Oversight and Collaboration:● Collaborate with technical teams to define the scope and technical requirements ofLLM projects, including data collection, training, and model deployment.● Provide strategic direction for projects involving LLMs, Web3, and blockchain,ensuring that technical solutions align with business goals and are scalable for futuredevelopments.● Facilitate collaboration between AI, ML, and blockchain teams, ensuring smoothintegration of technologies and alignment of project deliverables.● Oversee the implementation of AI and blockchain-related technologies, offeringguidance on best practicesTechnology and Architecture Leadership:● Support the implementation of technical architecture for AI/LLM projects, ensuringthat appropriate frameworks and technologies are employed.● Lead discussions with technical and business stakeholders to ensure AI andblockchain projects are aligned with the organisation’s strategic objectives.● Ensure the development and maintenance of efficient CI/CD pipelines, working withteams to implement automation and cloud-based solutions (e.g., AWS, Azure). Qualifications:● Advanced degree in Computer Science, Artificial Intelligence, or a related field.● Proven experience in managing projects involving Large Language Models (LLMs),AI, and blockchain technologies.● Strong understanding of Web3, blockchain technologies, and their intersection withAI and LLM projects.● Demonstrated ability to manage complex projects and cross-functional teams, drivingsuccess in a fast-paced, innovative environment.● Strong technical background in AI/ML, LLM architectures, and blockchaintechnologies, with the ability to provide strategic guidance during implementationphases.● Excellent communication and interpersonal skills, capable of bridging the gapbetween technical and non-technical stakeholders.Additional Considerations:● Experience working in a blockchain, AI, or emerging technology start-up environmentis highly desirable.● Familiarity with cloud platforms (e.g., AWS, Azure, GCP) and modern softwarearchitectures is beneficial.● A passion for driving innovation and working at the intersection of AI, LLMs, andblockchain is essential.Please ignore any reference to the salary which is subject to the individual circumstances of the applicantDo not apply if you require Sponsorship

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