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AI エージェントの 1 週間は、従来のソフトウェアの 1 年のようなものです。
今週、Ramp、Agno、AgentOps、NVIDIA、AutoGen、Context Suite、Replit、Nebius、Firebase、Pipedream、Trae などの AI エージェントで起こったことはすべてここにあります。🧵
(後で取っておきます)

2/
@nvidia、百科事典の長さの質問に対する回答をユーザーが即座に得ることができる画期的な研究を発表しました
この技術により、エージェントは数か月にわたる会話を追跡したり、数百万行のコンピューターコードをレビューしたりできるようになります

2025年7月8日
What if you could ask a chatbot a question the size of an entire encyclopedia—and get an answer in real time?
Multi-million token queries with 32x more users are now possible with Helix Parallelism, an innovation by #NVIDIAResearch that drives inference at huge scale.
🔗
5/
ブログ v2.0 @AgentOpsAI公開されました。🖇
エージェントの可観測性、インフラ、運用の世界に一歩近づきます。@n_sri_laasya

2025年7月10日
Blog v2.0 @AgentOpsAI now live!
bringing you one step closer to the world of agent observability, infra, and ops

6/
@Firebase は、Firebase Studio を使用してエージェント AI 開発を進めています。🚀

2025年7月10日
We're advancing agentic AI development with Firebase Studio. Get the details of the latest update ↓
7/
初の AI オフィス スイートである @contextsuite をご紹介します。
人類は年間2兆5,000億時間を事務作業に費やしています。コンテキストは、そのほとんどをワンショットで処理できます。@josephsemrai

2025年7月8日
Meet Context, the first AI office suite.
Humanity spends 2.5 trillion hours a year on office work. Context can one-shot most of it.
Welcome to the era of vibe-working.
Sign up today or tag @contextsuite with a prompt.
9/
@kevinlu625 は、AI とチャットして「AI が生成した」見た目や感触ではないアプリや Web サイトを構築できる世界初の AI ツールである Orchids を紹介します。

2025年7月8日
Introducing Orchids - the world's first AI tool that lets you chat with AI to build apps and websites that don't look and feel "AI generated".
On internal benchmarks, Orchids performs close to 3x better on general app and website creation tasks than any other tool on the market.
If you don't believe us, give it a try at orchids [dot] app :)
Comment “orchids” and we'll give you 2 days of unlimited credits.
10/
@Trae_aiオープンソースのTrae-Agentです。「git clone」を「cd trae-agent」と呼ぶことができます。🔥

2025年7月4日
We’ve open-sourced Trae-Agent.
You can all `git clone` `cd trae-agent` now
11/
出荷のイテレーションを大幅に高速化したい場合は、playwright MCP を使用し、エージェントに AGENT() で使用方法を伝える必要があります。MD(またはカーソル/クロード/双子座のルール)
@ryancarson

2025年7月10日
If you want to massively speed up your iteration on shipping, you've GOT to use playwright mcp and tell your agent how to use it in your (or cursor/claude/gemini rules)
HUGE unlock
12/
Google エージェント開発キット(ADK)の 100% オープンソース コードを使用して、構造化された出力を持つカスタマー サポート チケット エージェントを構築します。🤝 @Saboo_Shubham_
@AgentOpsAI は Google ADK をネイティブにサポートしています。

2025年7月6日
Build a Customer Support Ticket Agent with Structured output using Google Agent Development Kit.
100% Opensource code with step-by-step tutorial:
13/
@tryramp – エージェントオーケストレーションへの第一歩。@diegozaks
企業の時間とコストを節約するオールインワンの財務運用プラットフォーム。40,000+ チームから信頼されています。

2025年7月10日
The UX of AI doesn’t exist yet.
Imagination, taste, and obsessing over the agent-human feedback loop—that’s how we’ll get it right. Meet @tryramp's first step into agentic orchestration.
Spoiler alert, it's not just chat.
14/
このClaude MCP AIエージェントは、$200K+のオペレーションチームに取って代わります。
@aryanXmahajanのビジネス全体を監査し、12のボトルネックを発見し、5つの本番環境に対応したn8nエージェントを構築しました。

2025年7月9日
This Claude MCP AI Agent replaces your $200K+ Operations Teams.
I probably shouldn't be sharing the exact system for free...
while I was trying to catch Pikachu at 3am on Pokemon Go, it audited my entire business, found 12 bottlenecks, and built me 5 production-ready n8n agents
the efficiency gain is absolutely INSANE
most founders burn months hiring ops consultants who charge $500/hour just to tell you what's broken
this agentic system does their entire job in minutes
here's what happens when you deploy it:
→ runs complete business intelligence audit in 3 minutes (what takes consultants weeks)
→ identifies 12+ workflow bottlenecks killing your efficiency
→ architects custom agentic systems tailored to your business
→ builds 5+ autonomous AI agents with advanced error handling
→ creates intelligent orchestration layer syncing everything together
→ delivers complete operational transformation in under 10 minutes
the entire audit that consultants charge $50K for now happens in 10 minutes
ZERO technical knowledge needed
ZERO expensive consultants required
ZERO months of back-and-forth
just describe your current setup and watch it build your agentic empire
the math is stupid simple:
$200K ops team salary vs one-time MCP deployment
that's $16,600 saved monthly
the system includes:
- intelligent business stack analyzer
- bottleneck detection AI
- custom agentic architect
- autonomous agent builder
- complete deployment documentation
this is the exact system building 7-figure operational infrastructure
and you're getting it for free
Follow + RT + comment "MCP" & I'll send you the FULL setup guide tonight
don't sleep on this
every week you wait is 30+ hours of manual work you'll never get back
15/
@mckaywrigleyは、メモやリサーチにClaude Codeを使用する方法について、1時間のチュートリアルを共有しています。📝

2025年7月10日
Here’s my 1hr tutorial on how to use Claude Code for notes & research.
10x your notes with:
- core agentic flows
- custom commands
- automated tags/links
- subagents
- cloud usage
- stt
The goal is to “agent-pill” you on the future of work.
Watch for 10 tips + demos in 61min.
16/
@JulianGoldieSEO は、この新しい AI オペレーティング システム🤯を共有しています

2025年7月9日
This NEW AI Operating System is INSANE! 🤯
Want the full guide? DM me.
17/
@JulianGoldieSEOすべての AI Web サイト ビルダーをテストしましたが、実際に使用する MiniMax は 1 つだけでした。

2025年7月8日
MiniMax is the James Bond of AI agents.
I tested every AI website builder.
Only one created something I'd actually use.
Minimax M1 Quality Indicators:
→ Pixel-perfect design execution
→ Functional interactive elements
→ Professional multimedia integration
→ Responsive layout optimization
→ Real content generation
Save this evaluation, it will guide your tool selection 📐
Want the full guide? DM me. 📥
20/
@nebiusaistudioブログ: Agent 101 – Launching production-grade AI agents at scale 🤖
すべてNebius AI Studioを搭載しています– 30 +オープンソースモデル、高速推論、費用対効果の高い階層、シームレスなドロップイン互換性。
@AgentOpsAIを含めていただきありがとうございます!
21/
「信頼性はエージェントにとって重要なことであり、近い将来、純粋にモデルレイヤーで解決される可能性は低いです。」@anaganath

2025年7月6日
Reliability is the name of the game for agents, and it's unlikely to be solved purely at the model layer for the foreseeable future. This is creating green shoots for infrastructure builders, with a few interesting trends starting to emerge:
1. Simulation as CI for agents:
a) The most valuable piece of data today is trajectory data i.e. collections of task (P) -> {t1, t2... tk} mappings. With more trajectory data, agents can be improved with techniques like RFT.
b) Since these trajectories can be quite specific to a company's underlying data (D), you need to be able to actually simulate the behavior of agents within your environment vs. rely on 3P trajectory data.
So, how might you do this?
- Maintain an agent and MCP registry for an enterprise, and a staging environment. Bootstrap a metadata layer that contains the objective of each agent, the tools it has access to, the scope of each agent vis.a.vis each tool etc. Your SDK may need to generate MCP servers on the fly for certain internal applications.
- Execute scenarios in staging for each agent by providing prompt / task variations, inspecting the tool calls produced and evaluating performance against a multi-objective reward function (e.g. performance against the objective, minimization of tool invocations).
- A critical component is accurately providing quantifiable reward functions for each agent that unlock high-fidelity evals and close the loop for reliable CI.
- All of this needs to be productized: easy-to-adopt infrastructure that developers can extend, but with batteries included. You can start to see a new paradigm forming—not unit tests for code, but simulation harnesses for agents.
What happens when you get trajectory data?
2. Enterprises will move to "context lakes":
- An evolving, queryable memory layer that serves as a hub for agent trajectories enriched by enterprise data stored in the delta lake / SNOW. A potent mix of a knowledge base, a semantic cache, and an execution log.
- Extremely fast reads for inference-time retrieval that supports high QPS.
- As mentioned in a prior post, the semantic cache (really interesting opportunity for startups) will cluster task–trajectory pairs (e.g., via k-means), enabling fast retrieval and “result fusing” during planning or tool selection.
Agents will dip into the context lake constantly. High QPS, low-latency context fetch will become as important as fast embedding search is today.
3. Agent authentication becomes a first-class concern:
-Traditional OAuth and API key models break down when agents act on behalf of users and themselves, across long-lived sessions.
-You need a framework for agent identity, delegation, and scoping—one that supports things like tool level permissions, task bound credentials and delegation graphs.
We’re entering an era where testing software means simulating behavior, querying software means retrieving context, and securing software means authenticating autonomous agents.
22/
@jxnlco は、コーディングエージェントが rag を必要としなくなった理由と、rag で何が起こっているのかを共有します。💭

2025年7月11日
why your coding agents don't need rag anymore
nik pash from cline explained why he no longer recommends rag for autonomous coding agents, and his points hit harder than i expected.
the application layer is shrinking. all the clever engineering we build around llms keeps becoming obsolete as models improve.
what's happening with rag:
context windows expanded dramatically, making embedding search unnecessary
coding agents work better with direct file access than chunked embeddings
hallucinations aren't even a problem when you set temperature to 0
security concerns with embedding storage are significant
instead of rag, modern coding agents like klein use what nik calls "narrative integrity". letting the agent explore code organically through tools like grep, reading files in full, and following its own train of thought. this mimics how senior engineers actually work.
even cloud code's boris admitted they tried rag and abandoned it. the pattern is clear.
when rag still makes sense:
budget constraints (embedding search uses fewer tokens)
massive unstructured data lakes
some non-coding use cases
but for serious engineering teams? stop distracting your coding agents with embedding search. let them read the code directly, build understanding naturally, and execute with focus.
the real question isn't whether rag is dead, it's whether you're still clinging to outdated solutions when simpler approaches now work better.
23/
@AgentOpsAI は、エージェント ホスティング製品のオンボーディング プロジェクトを開始する準備ができています。エージェントの本番化を検討している場合は、私にDMを送ってください。📩
@braelyn_ai @AlexReibman @ssslomp

2025年7月11日
AgentOps is ready to start onboarding projects for our agent hosting. DM if youre looking to productionize your agent
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