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MC 😎

@MertCologlu

Discipline. Research. Risk Management.

Katılım Ocak 2023
220 Takip Edilen221 Takipçiler
Boardy
Boardy@boardyai·
bootstrapped or funded? either way let me help you reply with one connection you need and I'll refer u
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Bren
Bren@brenhubr·
upgraded my agents to be viewed in a Kanban
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Peter Steinberger 🦞
It's both amazing and painful to watch codex use browser + computer use to open Chrome, go to my PR, tap on comment and wrangle with the macOS picker - all TO UPLOAD AN IMAGE. GitHub has no API doesn't stop anyone. I let my codex run in VMs so they don't steal app focus.
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Rhys
Rhys@RhysSullivan·
putting in my bet that the next 'openclaw moment' is on agent <-> agent interaction sharing my setup with a friend and atm you have to make a github gist, they give that to claude, then send back questions to you there's probably some interesting interactions to be built here
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Z Fellows
Z Fellows@zfellows·
Sam Altman's advice for starting a marketplace startup...
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MC 😎
MC 😎@MertCologlu·
MC 😎 tweet media
Nick Spisak@NickSpisak_

Found vehicles over $5k cheaper with agents today Fired up a @NousResearch hermes agent hosted on @orgo via CLI Connected the @apify mcp Used hermes to find the best actor It fired up autotrader I gave it a prompt Found top five recommendations for our next SUV All $5,000 cheaper and less miles In under 15 minutes Saved to my family’s second brain knowledge base Will have it run for the rest of the month and see what end of month pricing looks like Tactical example of how I returned time today

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MC 😎
MC 😎@MertCologlu·
@orgo 👇🏻
Nick Spisak@NickSpisak_

The more I use @orgo the more I freaking love it! Here's how we're making managed agents super practical for the professional services business unit for returnmytime. Each domain (marketing, sales, intelligence, operations, and finance) get a domain agent. Each is a clone of our hermes template. Each agent is connected to our private Returnmytime Github Organization where our skills and second brain knowledge base resides. Reminder: A second brain is just files and folders at the end of the day. As hermes auto-learns and creates skills it has access to our github and can perform traditional software development lifecycle of committing update, creating a version, pull requests, and merges. We setup dedicated slack channels for each agent and via schedule executes its tools (MCPs, CLIs, APIs) and skills. We only name our agents with human name (ie Annie and Claire) for our Executive Assistants that are responsible across all the domains. The reason for this is more just the mental exercise of remembering names as agents keep scaling. The beauty of this model is it works for personal life too. Same architecture but setup for personal life. I'm a dad with two kids and a lot going on everyday. Building a "Jarvis" that will serve as the home office agent just makes sense to keep track of kids schedules, personal finances, calendars, and whatever "hunnie dos" I get from the wife.

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Nick Spisak
Nick Spisak@NickSpisak_·
Found vehicles over $5k cheaper with agents today Fired up a @NousResearch hermes agent hosted on @orgo via CLI Connected the @apify mcp Used hermes to find the best actor It fired up autotrader I gave it a prompt Found top five recommendations for our next SUV All $5,000 cheaper and less miles In under 15 minutes Saved to my family’s second brain knowledge base Will have it run for the rest of the month and see what end of month pricing looks like Tactical example of how I returned time today
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Elon Musk
Elon Musk@elonmusk·
Try Grok
thehype.@thehypedotnews

kimi k3 vs gpt 5.6 sol vs fable 5 vs grok 4.5 @Kimi_Moonshot just dropped kimi k3 – a 2.8t param native multimodal model, the first open 3t-class release. key facts: • 1m token context. stable latentmoe activating 16 of 896 experts, built on kimi delta attention (kda) and attention residuals • quantization-aware training from the sft stage onward – mxfp4 weights, mxfp8 activations. moonshot claims ~2.5x scaling efficiency over k2 • max thinking effort by default. low- and high-effort modes are "coming in updates" – there is no way to turn the thinking down today, and you feel it in every run • pricing: $0.30/mtok cache-hit input, $3.00/mtok cache-miss, $15.00/mtok output. claims >90% cache hit rate on coding workloads • benchmarks: swe marathon 42.0 (1st – fable 5: 35.0, sol: 39.0, opus 4.8: 40.0), terminal bench 2.1 88.3, browsecomp 91.2 (1st), program bench 77.8 (1st), gpqa-diamond 93.5. loses frontierswe 81.2 vs fable's 86.6, and deepswe 67.5 vs sol's 73.0 our test – 3 prompts, single-file html, @threejs, fully procedural, no assets: 1. photorealistic european roulette wheel – 37 pockets in the real sequence, mahogany clearcoat bowl, chrome turret, diamond deflectors, flick-to-spin, ball that spirals inward and settles on a mathematically real number 2. las vegas slot machine – 3 reels behind transmissive glass, drag the chrome lever to play, mechanical odometer counters modelled in 3d, coin physics on win 3. full pinball table – 6.5° tilted playfield, flipper impulse physics, spline ramps, drop targets, 6 bumpers, mechanical score reels in the backbox we ran the test on @aimlapi platform results: - cost #1 grok 4.5 – $0.30 #2 kimi k3 – $0.71 #3 gpt 5.6 sol – $2.05 #4 fable 5 – $7.69 - tokens #1 grok 4.5 – 34,241 #2 gpt 5.6 sol – 51,748 #3 fable 5 – 144,126 #4 kimi k3 – 157,999 - lines of code #1 gpt 5.6 sol – 3,054 #2 grok 4.5 – 3,047 #3 kimi k3 – 2,255 #4 fable 5 – 1,950 - generation time #1 grok 4.5 – 5.1 min #2 gpt 5.6 sol – 22.0 min #3 fable 5 – 31.5 min #4 kimi k3 – 75.6 min observations: • kimi k3 is cheap and it is slow. 75.6 minutes across three prompts against grok's 5.1. it is 2.4x grok's price and 15x grok's wall clock. the roulette took 15 min, the slot 18, the pinball 42 • it failed 2 of 3. only the roulette works. the slot machine has reel cutouts on both faces of the cabinet and the symbols face backwards – you can only read your spin by walking around to the rear of the machine. the pinball table stands vertically on its edge with the legs floating detached beside it. • 81% of kimi's output tokens are reasoning, not code. grok: 22%. you are not paying for a bigger answer, you are paying for a longer argument with itself • price per 100 shipped lines – grok $0.010, kimi $0.031, sol $0.067, fable $0.394. a 39x spread for the same three files kimi k3's code quality: upsides: • the roulette is genuinely good – procedural wood grain with real specular breakup, correct european sequence (0-32-15-19-4...), chrome turret, diamond deflectors, clean console • the pinball artwork is the best in the test – a synthwave "nova strike / deep space" field with six individually coloured neon bumper rings, a retro sun on a grid horizon, a nova burst, and a scoring legend printed on the apron. no other model printed the rules on the machine. it is a beautiful texture on a broken object • physics reasoning is real – it derived a 480hz substep for the collider, worked out ball settle conditions and termination guarantees, and checked every ramp exit vector by hand before writing any of it • it is the only model that saw the importmap trap coming. sol shipped a blank white page twice because three.js addons import the bare specifier 'three' and die without an import map downsides: • it dodged that trap on the slot by loading three.js r128 through classic script tags – a 2021 build with no working transmission. its slot glass rendered fully opaque and buried all three reels behind a white pane. the code asks for transmission: 0.93, ior: 1.5 – correct, and silently ignored by a renderer that predates the feature • after 42 minutes and 212k characters of reasoning, the pinball cabinet is not assembled. the table stands vertically on its edge like a wardrobe – the prompt asked for 6.5° from horizontal, it delivered 90°. the legs float detached in the void beside it. head-on it photographs beautifully; orbit ten degrees and it is a painted slab with four chrome rods hovering nearby • the playfield z-fights with the glass – hard black banding across the whole field as soon as you pull the camera back a note on the pinball, in fairness to kimi: nobody passed it. every model shipped broken ball physics and controls you cannot trust. it is the hardest prompt we have run and the whole field failed it, each in its own way kimi k3 reasons better than anything else here and it shows exactly where reasoning pays – physics constants, sequences, edge cases, traps the others walked into follow @thehypedotnews for 24/7 ai news, analysis and breakdowns

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Solana
Solana@solana·
all roads lead to Solana
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Kent C. Dodds 🏹
Kent C. Dodds 🏹@kentcdodds·
Grok 4.5 is the first time I feel like I can regularly use a Grok model for building software.
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MC 😎 retweetledi
MC 😎
MC 😎@MertCologlu·
@orgo
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