Fine-tuned models match frontier performance
In our research with @FireworksAI_HQ, a fine-tuned @Alibaba_Qwen outperformed all model sizes.
They’re also cheaper to run at scale
10-100x depending on trace volume and model choice
As trace volumes grow, so will cost-savings on
How do you construct, compact, and query a full-text search index when all your durable data lives in object storage? And where every GET costs 50–100ms?
@ankush_gola11 + team on how we built and run SmithDB's inverted index in production.
How do you construct, compact, and query a full-text search index when all your durable data lives in object storage? And where every GET costs 50–100ms?
@ankush_gola11 + team on how we built and run SmithDB's inverted index in production.
langchain.com/blog/full-text…
if you get 1% better every day then you're 37x better in a year (from @JamesClear's atomic habits book)
my theory is you can do this for agents if you build a good continual learning loop
which is what i'm working on at @LangChain with deepagents
Stoked to be speaking at @aiDotEngineer next week. Come catch my session at 11.40am PT. Will be doing a deep dive into agent memory - 'sleep-time compute', 'dreaming' and the critical role traces play in the entire process
excited to be speaking at @aiDotEngineer World Fair next week on Improving Agents, Continual Learning, and why we think a large part of it is...Data Mining!
Trace Mining is how we understand agent behavior at scale so we can:
- build evals/environments to hill-climb
- gather
Supporting sub-second full-text search on object storage is hard, especially when dealing with large agent observability workloads. Here is part 2 of our blog post that outlines how we accomplished this in SmithDB!
How do you construct, compact, and query a full-text search index when all your durable data lives in object storage? And where every GET costs 50–100ms?
@ankush_gola11 + team on how we built and run SmithDB's inverted index in production.
langchain.com/blog/full-text…
Agents are easy to demo locally. The hard part is shipping them inside a real app.
We published a deployment cookbook for @LangChain agents: full-stack examples with streaming UI, subagents, thread history, and production persistence notes across common JS frameworks 🚀
🧵👇
How do you construct, compact, and query a full-text search index when all your durable data lives in object storage? And where every GET costs 50–100ms?
@ankush_gola11 + team on how we built and run SmithDB's inverted index in production.
It’s been great working with LangSmith over the past year as we’ve built our agentic platform to support hundreds of millions of clinical conversations annually.
Tracing and evals are at the core of the improvement flywheel.
LangSmith for Startups Spotlight: @AbridgeHQ
✅ Transforms patient-clinician conversations into contextually aware, clinically useful, and billable AI-generated notes.
✅ Deployed across 250 of the largest health systems in the country.
✅ Uses LangSmith as its core evals
LangSmith for Startups Spotlight: @AbridgeHQ
✅ Transforms patient-clinician conversations into contextually aware, clinically useful, and billable AI-generated notes.
✅ Deployed across 250 of the largest health systems in the country.
✅ Uses LangSmith as its core evals