Fixed Income Data Engineer

AG Talent
Birmingham
1 day ago
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Fixed Income Data Engineer


Capital Markets | High Ownership | Product-Led Team


Location: Remote across the UK


We’re working with a small, product-driven team building data infrastructure for fixed income markets.


They’re at a scaling point and are looking for a Fixed Income Data Engineer who can take real ownership of a core part of the product and help push it forward.


This is not a ticket-taking role. You’ll be expected to think, challenge, and lead.


What they’re looking for


You’ll come from a capital markets background and be comfortable working with fixed income data. You don’t need to be an expert in every instrument, but you should understand how this data behaves and why it matters.


From a technical perspective, you’ll have a strong coding background. The stack includes Elixir, but prior Elixir experience is not essential. What matters more is that you’re the type of engineer who can pick up a new language quickly and apply it well.


You’ll be trusted to lead on projects end-to-end, from shaping the approach through to delivery, while working closely with a small, senior team.


High agency is critical here. This suits someone who spots problems, proposes solutions, and doesn’t wait to be told what to do next.


What makes this interesting


  • Real ownership over a meaningful part of a growing product
  • Direct impact on how fixed income data is processed and delivered
  • A small, collaborative team with high standards and low ego
  • Space to influence technical direction, not just execute it


If you’re a data-minded engineer with capital markets experience and you want more autonomy and responsibility than a typical engineering role offers, this is worth a conversation.

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