Equities Strategy Manager

Jupiter Asset Management Ltd
London
1 year ago
Applications closed

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Responsibilities

Develop a strategic plan focused on investment performance andmercial growth with the Head of Equities and work closely with key stakeholders in execution Conduct through analysis of industry trends,petitive landscape and internal capabilities Assist the Head of Equities in aligning Jupiter's equity business with expectations of current and future client growth though analysis and research, working closely with Client Group Broad initiatives may include market and profitability analyses linked to product curation, research on thought pieces and ESG initiatives Help to build coherent equity platform marketing collateral to better articulate Jupiter's equities offering to both external and internal stakeholders Support the Head of Equities to ensure there is strong understanding among stakeholders as this relates to investment performance, product priorities, assessment of business opportunities, pricing andmunication Support the Head of Equities in themunication of investment priorities and initiatives across Equities and other areas in the business Working with key stakeholders, develop and help execute clear plans of action for addressing business issues Act as a key point of contact in co-ordinating activities of the equities teams with other areas of the business. To that end, help coordinate the activities of Jupiter's equity Investment Directors Work closely and collaboratively with the Investment COO team including but not limited to: the investment management change programme, the regulatory and controls environment, data science and trading teams. Work with key stakeholders to ensure that there is a culture of openmunication and collaboration within investment management, resulting in strong investment performance Ensure efficient and effectivemunication and prioritisation between the various internal stakeholders

Desired Skills / ExperienceStrong understanding of the Asset Management industry, client trends,petitor landscape, regulatory and operational frameworks and familiarity with and interest in the investment landscape Strong technical understanding of investing and the investment landscape Exceptionally strong analytical ability, numerate and highly data-driven Initiative - able to take decisions and proactively solve problems rather than needing instruction Excellent attention to detail Solutions focused - able to solve problems and ovee obstacles Resilient - able to cope in a fast moving and challenging environment Reliable - can be trusted with confidential and/or sensitive information Excellentmunication and interpersonal skills, with the ability to work well as part of a team and collaboratively across the business Good organisational skills - capable of working to deadlines and multi-taskingAdditional Role DetailsThis role is subject to the Conduct Rules set by the FCA. Don't meet every requirement? At Jupiter we are dedicated to building a diverse and inclusive workplace, so if you are interested in this role, but don't think your experience aligns perfectly with every listed requirement in the job description, we would encourage you to apply. You may be the right person for this role.
Job ID JR319

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