GenAI Enablement Lead - Vice President

JPMorgan Chase & Co.
London
3 months ago
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. Morgan is seeking a talented candidate as a GenAI Enablement Lead for the Commercial & Investment Bank (CIB). The role sits within the CIB’s Chief Data & Analytics Office (CDAO) and is at the Vice President level. The remit is to develop the strategy for GenAI for the CIB, especially around Large Language Models (LLMs), as well as responsibility for rolling out GenAI products across the CIB.

As a GenAI Enablement Lead within Commercial & Investment Bank (CIB) Chief Data & Analytics Office (CDAO), you will be tasked with the development of AI strategy, in particular around Large Language Models (LLMs). The team contributes to the strategy for the CIB’s AI&ML initiatives, drives CIB’s adoption of GenAI and provides client advisory on the topic of GenAI to key CIB clients. This role provides an excellent opportunity to influence and shape the strategic agenda for GenAI adoption and spearhead the deployment of JPM's GenAI products within the CIB. You will gain highly technical expertise in Data, AI, and Machine Learning, and refine your problem-solving and communication skills. You will also be expected to identify emerging trends before they become widely adopted in the market, and stay updated on competitor strategies and new technologies as the AI landscape continues to evolve.

Job responsibilities 

Define and deconstruct complex problems that can be solved through GenAI Critically assess GenAI products and influence the product roadmap Identify key priority CIB use cases where GenAI can be leveraged Provide thought leadership on GenAI & LLMs to key CIB clients Assimilate information and provide synthesised views for senior management Identify emerging trends ahead of broader market adoption 

Required qualifications, capabilities, and skills

Prior experience with GenAI and knowledge of Financial Services required Significant experience with diverse problem-solving background – . top strategy consulting firm, internal strategy, investment banking, private equity Knowledge and understanding of AI&ML (esp. GenAI and Prompt Engineering) BSc or MSc degree in relevant field (. Computer Science) Outstanding ability to analyse problems and apply quantitative analytical approaches Easily assimilate new information with excellent attention to detail Strong verbal/written skills; ability to communicate effectively Proficiency in MS Excel and PowerPoint 

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