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  • We Got Rid of Our Forward-Deployed Engineers | S3E11
    2026/07/14

    Hedgineer stopped hiring forward-deployed engineers. Michael and Jhanvi explain why and reflect on when the FDE operating model breaks. Hedge Fund clients showed up assuming a shared context about their business that even the strongest engineers could never have. They also talk through what replaced it: forward-deployed analysts who have worked in similar roles as the teams they're deployed to (TMT research, credit underwriting, fund accounting). After going through extensive AI training with the Hedgineer team, these FDAs are much better equipped to handle building solutions in the forms of agents and skills, leveraging the platform that our AI Engineers build.

    Before getting into that, they cover the week in AI: first impressions of Fable (where it earns its cost, and where it's a bazooka for a problem that needed a scalpel), and a teardown of how Claude Tags actually works under the hood, and why Tags and Claude's separate managed-agents runtime still don't talk to each other.



    About Hedgineer

    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.


    Subscribe for weekly analysis on AI infrastructure and institutional finance.


    Watch the full episodes on Spotify at https://isht.ink/dFj5oaqbe or YouTube at youtube.com/@hedgineer.


    Audio available wherever you get your podcasts.


    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.


    Hedgineer.io


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    1 時間 2 分
  • What Does It Mean to Own Your Own Context? S3E10
    2026/07/07

    Anthropic has been quietly redacting pieces of what Claude Code and Cowork report back through its telemetry logs. First the model's own reasoning disappeared from the traces. Then, briefly, so did users' prompts. No release notes, no explanation, just a feature flag that got flipped and eventually flipped back. Michael and Jhanvi use the incident to get into a bigger question: what does it actually mean for a firm to own its own context?


    Context, in their view, is everything that happens around a model call: the reasoning traces, the prompts, the environment data, the exhaustive record of what a team did with AI. As open-source models close the gap through distillation, frontier labs have a stronger incentive to lock that context down. The conversation gets into what that means for staying model-agnostic, and why a growing field of agent harnesses and open routers adds pressure on that setup.


    The discussion then turns to what owning your context makes possible beyond avoiding vendor lock-in. Once a firm is capturing its own usage data, it can build training around what people are actually doing, rather than a generic curriculum, and use that same data to decide where AI adoption should expand next.


    About Hedgineer


    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.


    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.



    Subscribe for weekly analysis on AI infrastructure and institutional finance.


    Watch the full episodes on Spotify at https://isht.ink/dFj5oaqbe or YouTube at youtube.com/@hedgineer.


    Audio available wherever you get your podcasts.


    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.


    Hedgineer.io


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    35 分
  • Gone Looping | S3E9
    2026/06/30

    Michael and Jhanvi break down what an agentic loop actually is, how it works under the hood, and what it looks like when investment teams put it to use. From earnings recap to idea generation, the conversation covers how loops shift analysts from reactive prompting to autonomous pipelines that accelerate idea velocity.

    We also cover what's new in AI: Claude's new Slack tag feature and the vendor dependency risk it quietly introduces, hyperscaler developments making it easier to run agents at scale, and Estonia's new national policies built to position the country as an AI-forward state.

    About Hedgineer

    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.

    Subscribe for weekly analysis on AI infrastructure and institutional finance.

    Watch the full episodes on Spotify at https://isht.ink/dFj5oaqbe or YouTube at youtube.com/@hedgineer.

    Audio available wherever you get your podcasts.

    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.

    Hedgineer.io


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    54 分
  • The Future of Compute Futures | S3E8
    2026/06/16

    Overview


    The standard order book matches trades by price and time priority, one at a time. For a fund executing a basket or a pair trade, that means legging into positions sequentially, facing the exposure problem on every leg. In 2016, Kelly Littlepage began building OneChronos around a different premise: let traders express their full intent, and let a mathematical optimization engine find the best simultaneous match.

    Ten years later, the same structural problem shows up in compute markets, but worse. Compute is the most perishable commodity ever created; it can't be stored, and transporting it introduces latency that destroys its value. Current proposals for cash-settled compute futures repeat the mistakes of every opaque benchmark market, leaving buyers exposed to manipulation with no physical deliverable backing the contract.

    The episode traces a line from FCC Spectrum auctions to modern equities markets to GPU inference token, and the throughline is consistent: markets that let participants express complex, high-level intent outperform markets that force them into rigid, sequential rules. As AI inference fragments across dozens of competing models, the next smart order router won't route equities. It will route tokens.


    Guest Bio

    Kelly Littlepage is the co-founder and CEO of One Chronos, an ATS powered by combinatorial auctions. He holds a background in computer science, mathematics, control systems, and economics, with deep expertise in electronic market making and electronic capital markets structure.


    About Hedgineer


    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.


    Subscribe for weekly analysis on AI infrastructure and institutional finance.


    Watch the full episodes on Spotify at https://isht.ink/dFj5oaqbe or YouTube at youtube.com/@hedgineer.


    Audio available wherever you get your podcasts.


    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.


    Hedgineer.io



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    49 分
  • Broker Research Has an AI Problem | S3E7
    2026/06/09

    Sell-side research is the last data category that still resists clean AI integration. US brokers monetize through trade execution, not data sales, which means feeding analyst reports into an LLM removes the attribution that justifies the entire model. No attribution, no incentive to share. That standoff has left buy-side funds cobbling together workarounds for years.

    This week brought two competing answers. AlphaSense launched SuperAnalyst, a closed-ecosystem product that bundles research access with its own AI layer. Aiera went the opposite direction with an AI-native research platform built for open integration. The gap between those two bets is essentially the gap between controlling the context window and renting it.

    Michael and Jhanvi break down what each approach means for funds actually trying to build research pipelines, and why the choice you make now has infrastructure consequences that outlast any single model generation.

    About Hedgineer

    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.

    Subscribe for weekly analysis on AI infrastructure and institutional finance.

    Watch the full episodes on Spotify at https://isht.ink/dFj5oaqbe or YouTube at youtube.com/@hedgineer.

    Audio available wherever you get your podcasts.

    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.

    Hedgineer.io


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    54 分
  • Driving Alpha via AI Agents in Fundamental Research | S3E6
    2026/06/02

    The barrier to impressing institutional investors with artificial intelligence is high because portfolio managers and analysts already know their coverage universes deeply. Traditional chatbots that merely summarize 10-Ks or earnings transcripts often act as an enemy to true market comprehension, resulting in weak adoption across fundamental investment teams.

    In this episode of The Hedgineer Podcast, hosts Michael Watson and Jhanvi Virani sit down with Brett Caughran, founder of Fundamental Edge, to dissect the structural shift from passive chatbots to active AI agents inside institutional asset management. They explore how top-performing funds are moving past the hype to deploy targeted agent frameworks that act as an analytical exoskeleton around the fundamental research process.

    The conversation focuses heavily on the operational realities of data engineering and change management within hedge funds. The hosts break down how curated skill libraries can guide AI tools to operate like senior engineers, allowing non-technical professionals—such as CFOs and COOs—to construct production-grade data pipelines within an hour. They also address the critical necessity of context window management, highlighting why forcing messy research queries and raw data into a single session causes narrative generation to break down, and how separating workflows into distinct, token-optimized agent sessions solves the problem.

    Finally, the discussion turns to the macroeconomic and cultural implications of AI adoption on Wall Street. From the power-law distribution of alpha generation to the compression of infrastructure headcounts for new fund launches, this episode provides a realistic, problem-first evaluation of how advanced technology is actively rewriting the hedge fund playbook.

    Key Takeaways:

    • The Shift to Agentic Exoskeletons: Chatbots have seen weak adoption because generic summaries destroy institutional comprehension; alpha generation requires highly personalized agents trained on a fund’s historical trades, unique workflows, and internal models.

    • Rigorous Context and Token Management: Merging raw information gathering with narrative generation causes context bloat and degrades output quality; investment professionals must isolate clean research citations in distinct sessions to maintain deterministic control over an LLM's reasoning.

    • Inference-Time Infrastructure Elasticity: Modern frontier models allow funds to execute complex data joins at inference time through Model Context Protocol (MCP) servers, allowing starting managers to launch with leaner infrastructure teams and compress operational headcounts.

    • Observability is the Core of Change Management: Moving from an isolated "AI investor" to an integrated "AI investment firm" requires programmatic observability to track agent tool calls, intercept bad data queries, and convert individual best practices into firm-wide skills.

    About the Guest:Brett Caughran is the founder and CEO of Fundamental Edge, an institutional analyst academy providing hedge fund-style training rigor to investment professionals. Previously, he spent over a decade as a fundamental equity investor at leading asset management firms, including Maverick Capital.


    About Hedgineer:


    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.

    Subscribe for weekly analysis on AI infrastructure and institutional finance.

    Watch the full episode on Spotify or YouTube at youtube.com/@hedgineer.

    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.



    Hedgineer.io


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    1 時間 7 分
  • Dev Days & Lock-In Fears: A Frontier Model Race Check-In | S3E5
    2026/05/26

    Anthropic and Google both had massive dev days recently. And they couldn't be more different. In this episode, Jhanvi and Michael break down what each announcement signals about the frontier model race and where it's headed. Anthropic is doubling down on enterprise agents, memory stores, and "dreaming," while Google is going wide with consumer AI, a multimodal Omni model, and Spark embedded across its entire product suite.

    They also get into a question that comes up with clients and candidates alike: how worried should companies actually be about vendor lock-in? Plus: what happens when you run the same agentic harness with different frontier models, why tokens per second is becoming a more important metric, and why you shouldn't switch back and forth between Cowork and ChatGPT.


    Key Takeaways

    • Decouple Architecture via Open Standards: To prevent long-term vendor lock-in, firms should deploy custom skill libraries and organizational knowledge layers as open, text-based formats stored in client-owned GitHub repositories rather than within proprietary model environments.

    • Implement OpenTelemetry Early: The highest hurdle to switching model providers is the loss of historical session data; setting up an independent OpenTelemetry system up front ensures your firm owns its telemetry and interaction data, permitting smooth cross-provider migration.

    • Isolate Compute with Managed Sandboxes: Utilizing self-hosted agent tool containers allows institutional firms to keep localized data execution and tools within their secure cloud environments while securely executing the core inference loop via external APIs.

    • Focus on Immediate ROI Over Early Optimization: Many firms stall their AI adoption by over-engineering cross-cloud or cross-vendor compatibility too early. Successful deployment requires mastering one ecosystem to capture immediate time-to-value before optimizing for compute spend arbitrage.

    About Hedgineer

    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.

    Subscribe for weekly analysis on AI infrastructure and institutional finance.

    Watch the full episode on Spotify or YouTube at youtube.com/@hedgineer.

    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.

    Hedgineer.io


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    40 分
  • Beyond the Chatbot: Building Agent-Native Enterprises with Mitchell Troyanovsky | S3E4
    2026/05/19

    The transition from AI as a chatbot to AI as an autonomous agent requires more than just better models; it requires agents capable of regulating their own state and context at scale.

    In this episode of The Hedgineer Podcast, co-hosts Michael Watson and Jhanvi Virani sit down with Mitch Troyanovsky, co-founder of Basis, an agent platform specifically designed for the accounting industry. The conversation moves beyond the hype of generative AI to address the engineering realities of building "agent-native" enterprises. Mitch explains why the next frontier of applied machine learning involves closing the loop on self-improving agents—systems that can optimize their own trajectories, contexts, and tools without constant human intervention.

    We explore the "single pane of glass" debate: whether specialized platforms like Basis will remain the system of record or if frontier model interfaces will eventually consolidate all enterprise workflows. The discussion delves into the technical nuances of Recursive Language Models (RLMs) and the "Better Intelligence" approach, where models are leveraged to programmatically curate their own context windows to maintain performance over long-duration tasks.

    The episode also tackles the cultural shift required for AI adoption. From implementing "Do You Stand By This" (DYSB) protocols to ensure accountability, to the "lexical taxonomy" required to write documentation specifically for LLM consumption rather than human readers, we provide a blueprint for firms looking to move from experimental AI to production-grade agentic systems.


    Key Takeaways:

    • Closing the Applied ML Loop: Why the next generation of agents will focus on self-regulation and autonomous state management to handle production workloads.

    • The "Database-ification" of SaaS: How AI agents interacting via API threaten the value proposition of traditional software UIs, potentially reducing many SaaS tools to mere structured data stores.

    • Recursive Language Models (RLMs): A technical look at using model intelligence to dynamically curate context at every forward pass, moving beyond simple "append-only" context windows.

    • Writing for Machines: Why traditional human writing styles are inefficient for LLMs and how "information density" is becoming a critical engineering discipline.



    About the Guest:

    Mitchell Troyanovsky is the co-founder of Basis, a New York-based platform building AI agents for the accounting industry. He is a leading voice on the future of agentic systems at scale and the implementation of Recursive Language Models in production.

    About Hedgineer

    Hedgineer is building the AI platform for institutional investing — deploying agents, skills, and data connectors directly inside hedge funds and asset managers to transform investment and operational workflows.

    The Hedgineer Podcast follows CEO Michael Watson and COO Jhanvi Virani as they navigate the frontier of AI adoption in finance, sharing unfiltered perspectives from the teams, guests, and problems they work with every day.

    Subscribe for weekly analysis on AI infrastructure and institutional finance.

    Watch the full episode on Spotify or YouTube at youtube.com/@hedgineer.

    Connect with us on LinkedIn at linkedin.com/company/hedgineer-io or reach out at podcast@hedgineer.io.

    Hedgineer.io


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    1 時間 11 分