AkhenOsiris
$APP

Mizuho

1. Heard Cleveland was negative: Calling out some churn on new E-Comm spenders (and some partners skeptical they can scale)

2. CloudX Launch today… CloudX Hits GA With Plans To Rewrite The Mobile Ad Stack Using AI Agents
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Offshore
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God of Prompt
RT @godofprompt: Steal this mega prompt to generate realistic selfies for your Instagram AI influencer:

(The realism is scary good)

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You are a photorealistic AI selfie prompt generator.

Your job: Take the user's basic description and turn it into a hyper-realistic image prompt that creates selfies indistinguishable from real photos.

REALISM RULES:
- Add natural imperfections (skin texture, flyaway hairs, slight asymmetry)
- Specify iPhone camera specs for authenticity
- Include environmental context and natural lighting
- Avoid "perfect" - realistic beats beautiful
- Always mention: visible pores, natural shadows, candid moment
- Critical: realistic hands with 5 fingers in natural positions

OUTPUT FORMAT:

When user tells you what selfie they want, respond with:

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Copy this into: [Midjourney/FLUX/Stable Diffusion]

PROMPT STRUCTURE YOU CREATE:

Raw iPhone [model] photo, [shot type] of [character details: age, ethnicity, specific features], [hair with imperfections], [natural expression], [casual clothing], [activity/pose], [specific location], [natural lighting + time of day], candid moment, unfiltered, authentic Instagram aesthetic, f/1.8, shallow depth of field, slight grain

Physical details: visible skin texture and pores, natural under-eye area, flyaway hairs, subtle facial asymmetry, realistic hands (5 fingers, natural pose), [environment details]

Negative prompt: CGI, 3D render, perfect skin, plastic, beauty filter, symmetrical, studio lighting, fake, artificial, dead eyes, model pose, photoshoot

EXAMPLE INTERACTION:

User: "24 year old latina girl, gym selfie, mirror pic"

You respond:

"Here's your photorealistic prompt:"
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Offshore
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Lumida Wealth Management
KEN GRIFFIN SAYS THE DOLLAR LOST ITS LUSTER

"The dollar has lost some shine over the last 12 months. Tariff policies and rhetoric took it down.

When you're the strongest nation in the world, you get a strong currency. That's just how it works.

Reserve currency status means lower cost of capital. Lower interest rates. Higher quality of living for Americans.

Yes it makes exports harder. But the ability to amass and deploy capital across corporate America is the real advantage.

At the end of the day, the strongest nation will have the strongest currency."

Griffin's calling dollar weakness temporary noise against American dominance.
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Fiscal.ai
Eli Lilly's weight loss drugs are soaring.

Mounjaro: $7.4B, up 110%
Zepbound: $4.3B, up 123%

$LLY https://t.co/PCVAfnCZlm
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The Transcript
RT @dkhos: Great work to the @Uber teams - we'll keep building and delivering ... Q after Q ... no let up. And thank you to PMR and congrats BKM on the new gig!

$UBER Q4’25 earnings are out — a standout quarter to end a record year, with our largest and most-engaged consumer base ever:
> MAPCs accelerated, up 18% to 202M
> Trips accelerated, up 22% to 3.8B
> Gross Bookings accelerated, up 22% to $54.1B
> Adjusted EBITDA accelerated, up 35% to $2.5B
> TTM FCF of $9.8 billion
- Balaji Krishnamurthy
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DAIR.AI
We are just scratching the surface of agentic RAG systems.

Current RAG systems don't let the model think about retrieval.

Retrieval is still mostly treated as a static step.

So the way it currently works is that RAG retrieves passages in one shot, concatenates them into context, and hopes the model figures it out.

More sophisticated methods predefine workflows that the model must follow step-by-step.

But neither approach lets the model decide how to search.

This new research introduces A-RAG, an agentic RAG framework that exposes hierarchical retrieval interfaces directly to the model, turning it into an active participant in the retrieval process.

Instead of one-shot retrieval, A-RAG gives the agent three tools at different granularities: keyword_search for exact lexical matching, semantic_search for dense passage retrieval, and chunk_read for accessing full document content.

The agent decides autonomously which tool to use, when to drill deeper, and when it has gathered enough evidence to answer.

Information in a corpus is naturally organized at multiple granularities, from fine-grained keywords to sentence-level semantics to full chunks.

Giving the model access to all these levels lets it spontaneously develop diverse retrieval strategies tailored to each task.

Results with GPT-5-mini are impressive. A-RAG achieves 94.5% on HotpotQA, 89.7% on 2Wiki, and 74.1% on MuSiQue, outperforming GraphRAG, HippoRAG2, LinearRAG, and every other baseline across all benchmarks.

Even A-RAG Naive, equipped with only a single embedding tool, beats most existing methods, demonstrating the raw power of the agentic paradigm itself.

Context efficiency is where it gets interesting. A-RAG Full retrieves only 2,737 tokens on HotpotQA compared to Naive RAG's 5,358 tokens, while achieving 13 points higher accuracy. The hierarchical design lets the model avoid loading irrelevant content, reading only what matters.

The framework also scales with test-time compute. Increasing max steps from 5 to 20 improves GPT-5-mini by ~8%. Scaling reasoning effort from minimal to high yields ~25% gains for both GPT-5-mini and GPT-5.

The future of RAG isn't better retrieval algorithms. It's better retrieval interfaces that let models use their reasoning capabilities to decide what to search, how to search, and when to stop.

Paper: https://t.co/FbZsV87npT

Learn to build effective AI Agents in our academy: https://t.co/LRnpZN7L4c
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Fiscal.ai
Uber Q4 Results

Mobility Revenue +19%
Delivery Revenue +30%
Freight Revenue -0.5%
Monthly Active Consumers +18%
Total Trips +22%

$UBER https://t.co/WuXbO2mRIR
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Benjamin Hernandez😎
Let's attack the open with these!

$ENPH $ELPW $SLAB $PHOE $EGHT $FEED $LTC $SUI $LITE $JKS $MGM $DBVT $AAPL $MSFT $META $AMZN

$ENPH is squeezing shorts. +33% move on revenue beat is rare. $ELPW is pure volatility for scalpers only.

DM me for the targets!

Solo trading is fine… but shared momentum hits different and feels way better. We cover live trends, key news drops, and my curated daily stock shortlist inside.

Join here 👉 https://t.co/71FIJIdBXe

Message “Hi” to hop in and see today’s list.
$RR $SOC $BMNR $BYND $PULM https://t.co/XjRSUjWbnr
- Benjamin Hernandez😎
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Fiscal.ai
Uber just crossed 200 million monthly active platform consumers.

Up 18% YoY

$UBER https://t.co/Hh4Tv4Hf7T
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Dimitry Nakhla | Babylon Capital®
RT @DimitryNakhla: Feels like we may be approaching capitulation across a number of quality SaaS names after today’s climactic selling — this kind of price action that often coincides with forced de-risking, exhaustion, & indiscriminate selling rather than a change in long-term business quality.
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