Technical Product Manager- BQuant Go to Market

Bloomberg
London
1 year ago
Applications closed

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Who we are:
The Bloomberg CTO Office is the future-looking technical and product arm of Bloomberg L.P. We envision, design, and prototype the next generation infrastructure, hardware, and applications. We are passionate about what we do.


What we do:

At Bloomberg, we have the richest and most comprehensive financial datasets and analytics in the world. Our powerful enterprise products serve a large and diverse client base from data intensive analytics to trading. The Bloomberg Quant Platform (BQuant) is the frontier of our work - a platform for quantitative finance professionals to rapidly analyze data and research trading strategies.

The BQuant platform brings both data and tools to the larger audience of Bloomberg users. It combines cutting-edge Machine Learning (ML) and quant techniques with financial domain expertise to empower clients to perform collaborative quant research and deploy production workflows integrated with our deep stack of enterprise products. This revolutionary product is enabling clients to rapidly accelerate their research-to-production cycle and achieve an edge in the market.


The role

We are looking for a BQuant Go to Market Technical Product Manager to join our growing product team.


We'll trust you to:

As a BQuant Go To Market Product Manager, you'll be responsible for:

  • Development of partnerships with 3rd parties to accelerate the BQuant roadmap with new data or technology partners working closely with senior leadership, legal and CFO teams;
  • Define and articulate a compelling vision for how clients can use BQuant for new workflows based on the Product roadmap;
  • Conduct analysis on our customer/ firm profiles, analyze client feedback and requirements to identify new workflows and opportunities to expand the userbase of BQuant;
  • Work with the BQuant Product team to develop BQuant notebooks to enhance the BQuant pitch and value proposition that can be shared with sales and implementation team;
  • Work closely with clients and prospective clients to demonstrate and articulate the value of BQuant Enterprise to more sophisticated workflows;
  • Work with the BQuant Product teams and key development partner clients to explore and prototype new workflows on the BQuant roadmap with prospective clients;
  • Build relationships with teams across the organization to align efforts from many departments, including our sales, implementation teams to grow the market presence of BQuant.



You'll need to have:

  • 10+ years of financial industry experience in roles working with front office quant researchers or have a strong understanding and experience of getting an idea from research to execution;
  • Strong familiarity with Python, especially Jupyter notebooks and Pandas;
  • Excellent communication and presentation skills, able to communicate effectively to senior executives and end users;
  • Be a great collaborator, work well across a broad range of teams;
  • Willingness to roll up your sleeves and help out even when it's not in your job description.



We'd love to see:

  • Experience with Spark, ML/ AI technologies, public cloud providers such as AWS or Azure.
  • Experience working with intraday, realtime or textual datasets in a financial research context.


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