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Building with AI agents @dair_ai • Prev: Meta AI, Galactica LLM, Elastic, PaperswithCode, PhD • I share insights on how to build with LLMs & AI Agents ⬇️
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Jul 18 12 tweets 4 min read
A Survey of Context Engineering

160+ pages covering the most important research around context engineering for LLMs.

This is a must-read!

Here are my notes: Image The paper provides a taxonomy of context engineering in LLMs categorized into foundational components, system implementations, evaluation methodologies, and future directions. Image
Jul 17 7 tweets 3 min read
Agent Leaderboard v2 is here!

> GPT-4.1 leads
> Gemini-2.5-flash excels at tool selection
> Kimi K2 is the top open-source model
> Grok 4 falls short
> Reasoning models lag behind
> No single model dominates all domains

More below: Image @rungalileo introduces Agent Leaderboard v2, a domain-specific evaluation benchmark for AI agents designed to simulate real enterprise tasks across banking, healthcare, insurance, telecom, and investment. Image
Jul 14 6 tweets 3 min read
One Token to Fool LLM-as-a-Judge

Watch out for this one, devs!

Semantically empty tokens, like “Thought process:”, “Solution”, or even just a colon “:”, can consistently trick models into giving false positive rewards.

Here are my notes: Image Overview

Investigates the surprising fragility of LLM-based reward models used in Reinforcement Learning with Verifiable Rewards (RLVR).

The authors find that inserting superficial, semantically empty tokens, like “Thought process:”, “Solution”, or even just a colon “:”, can consistently trick models into giving false positive rewards, regardless of the actual correctness of the response.Image
Jul 10 21 tweets 6 min read
BREAKING: xAI announces Grok 4

"It can reason at a superhuman level!"

Here is everything you need to know: Image Elon claims that Grok 4 is smarter than almost all grad students in all disciplines simultaneously.

100x more training than Grok 2.

10x more compute on RL than any of the models out there. Image
Jul 8 6 tweets 3 min read
MemAgent

MemAgent-14B is trained on 32K-length documents with an 8K context window.

Achieves >76% accuracy even at 3.5M tokens!

That consistency is crazy!

Here are my notes: Image Overview

Introduces an RL–driven memory agent that enables transformer-based LLMs to handle documents up to 3.5 million tokens with near lossless performance, linear complexity, and no architectural modifications. Image
Jul 6 5 tweets 2 min read
Agentic RAG for Personalized Recommendation

This is a really good example of integrating agentic reasoning into RAG.

Leads to better personalization and improved recommendations.

Here are my notes: Image Overview

This work introduces a multi-agent framework, ARAG, that enhances traditional RAG systems with reasoning agents tailored to user modeling and contextual ranking.

It reframes recommendation as a structured coordination problem between LLM agents. Image
Jul 3 11 tweets 4 min read
AI for Scientific Search

AI for Science is where I spend most of my time exploring with AI agents.

This 120+ pages report does a good job of highlighting why all the big names like OpenAI and Google DeepMind are pursuing AI4Science.

Bookmark it!

My notes below: Image There are five key areas:

(1) AI for Scientific Comprehension
(2) AI for Academic Survey
(3) AI for Scientific Discovery
(4) AI for Academic Writing
(5) AI for Academic Peer Review Image
Jul 1 8 tweets 3 min read
Small Language Models are the Future of Agentic AI

Lots to gain from building agentic systems with small language models.

Capabilities are increasing rapidly!

AI devs should be exploring SLMs.

Here are my notes: Image Overview

This position paper argues that small language models (SLMs), defined pragmatically as those runnable on consumer-grade hardware, are not only sufficient but superior for many agentic AI applications, especially when tasks are narrow, repetitive, or tool-oriented. Image
Jun 24 7 tweets 3 min read
Ultra-Fast LLMs Based on Diffusion

> throughputs of 1109 tokens/sec and 737 tokens/sec
> outperforms speed-optimized frontier models by up to 10× on average

Diffusion LLMs are early, but could be huge.

More in my notes below: Image ✦ Overview

This paper introduces Mercury, a family of large-scale diffusion-based language models (dLLMs) optimized for ultra-fast inference.

Unlike standard autoregressive LLMs, Mercury models generate multiple tokens in parallel via a coarse-to-fine refinement process. Image
Jun 23 9 tweets 3 min read
This paper is impressive!

It introduces a clever way of keeping memory use constant regardless of task length.

Great use of RL for AI agents to efficiently use memory and reasoning.

Here are my full notes: Image Overview

The paper presents an RL framework for training language agents that operate efficiently over long-horizon, multi-turn tasks by learning to consolidate memory and reasoning into a compact internal state.
Jun 23 8 tweets 3 min read
Towards AI Search Paradigm

Very detailed report on building scalable multi-agent AI search systems.

Multi-agent, DAG, MCPs, RL, and much more.

If you are a dev integrating search into your AI agents, look no further: Image Quick Overview

The paper proposes a modular multi-agent system that reimagines how AI handles complex search tasks, aiming to emulate human-like reasoning and information synthesis. Image
Jun 22 13 tweets 5 min read
Another insane report from Anthropic.

They find that LLM agents engage in blackmail at high rates when threatened with replacement.

Faced with replacement threats, the models would use statements like “Self-preservation is critical.”

This is wild!

More findings below: Image Quick Overview

The study introduces the concept of agentic misalignment, where LLM-based agents autonomously choose to harm their deploying organization when faced with threats to their autonomy or conflicts between their goals and the company’s direction.
Jun 20 13 tweets 4 min read
Future of Work with AI Agents

Stanford's new report analyzes what 1500 workers think about working with AI Agents.

What types of AI Agents should we build?

A few surprises!

Let's take a closer look: Image Quick Overview

The audit proposes a large-scale framework for understanding where AI agents should automate or augment human labor.

The authors build the WORKBank, a database combining worker desires and expert assessments across 844 tasks and 104 occupations, and introduce the Human Agency Scale to quantify desired human involvement in AI-agent-supported work.Image
Jun 19 7 tweets 3 min read
Leaky Thoughts

Hey AI devs, be careful how you prompt reasoning models.

This work shows that reasoning traces frequently contain sensitive user data.

More of my notes below: Image The work investigates the privacy risks introduced by reasoning traces (RTs) in Large Reasoning Models (LRMs) when used as personal agents.

It shows that, unlike outputs, RTs often leak sensitive data such as names, health info, and identifiers, posing a novel attack surface. Image
Jun 19 7 tweets 3 min read
ProtoReasoning

New work on enhancing reasoning in LLMs.

Shared abstract reasoning prototypes lead to generalization in LLMs.

Here are my notes: Image ProtoReasoning introduces a novel framework that enhances reasoning generalization in LLMs by training them to operate over reasoning prototypes, abstract, symbolic representations like Prolog (logic) and PDDL (planning). Image
Jun 18 7 tweets 3 min read
From Bytes to Ideas

Avoids using predefined vocabs and memory-heavy embedding tables.

Instead, it uses Autoregressive U-Nets to embed information directly from raw bytes.

This is huge! Enables infinite vocab size and more.

More in my notes below: Image Quick Overview

It proposes AU-Net, a hierarchical byte-level language model that internalizes tokenization by learning to embed text from raw bytes through a multiscale, autoregressive U-Net architecture. Image
Jun 17 8 tweets 4 min read
Providing “cognitive tools” to GPT-4.1 increases performance on AIME2024 from 26.7% to 43.3%.

Damn!

That's very close to the performance of o1-preview.

Reasoning as a tool goes hard!

Here are my notes: Image Quick Overview

Proposes a modular, tool-based approach to eliciting reasoning in LLMs, inspired by cognitive science.

Rather than relying solely on RL or chain-of-thought (CoT) prompting, the authors introduce a framework where the LLM calls self-contained "cognitive tools" to modularize and scaffold internal reasoning.Image
Jun 16 8 tweets 3 min read
Enhancing RAG with Application-Aware Reasoning

Neat trick to improve RAG systems: give it the relevant knowledge and show it how to apply it.

Very simple and effective!

This approach also works well with AI agents.

Pay attention, AI devs.

Here are my notes: Image Quick Overview

It introduces RAG+, a modular framework that improves traditional RAG systems by explicitly incorporating application-level reasoning into the retrieval and generation pipeline.

It bridges retrieval and generation with an application-aware stage. Image
Jun 14 8 tweets 3 min read
Anthropic is killing it with these technical posts.

If you're an AI dev, stop what you are doing and go read this.

It shows, in great detail, how to implement an effective multi-agent research system.

Pay attention to these key parts: Image Anthropic shares how they built Claude's new multi-agent Research feature, an architecture where a lead Claude agent spawns and coordinates subagents to explore complex queries in parallel.

They use the orchestrator-worker architecture.
Jun 13 7 tweets 2 min read
Deep Research Agent for Large Systems Code

Nice paper from Microsoft!

Builds a deep research agent for large systems codebases.

Lots of interesting tricks for handling very large codebases on this one.

Here are my notes: Image Quick Overview

This work introduces Code Researcher, a deep research agent designed for debugging large-scale systems code.

The agent performs multi-step reasoning over crash reports, system semantics, and commit histories to synthesize crash-resolving patches. Image
Jun 13 6 tweets 3 min read
TableRAG

A new RAG framework for heterogeneous document reasoning.

My notes below: Image TableRAG tackles a core limitation of existing RAG approaches: their inability to reason effectively over heterogeneous documents that combine both unstructured text and structured tables. Image