Your curated collection of saved posts and media

Showing 24 posts ยท last 30 days ยท by score
N
nicksortor
@nicksortor
๐Ÿ“…
Feb 28, 2026
15d ago
๐Ÿ†”07138207

๐Ÿšจ MAJOR BREAKING โ€” ITโ€™S OFFICIAL: Iranian Ayatollah Khamenei is DEAD Holy crap. President Trump ACTUALLY did it. https://t.co/34abBm1i8e

๐Ÿ–ผ๏ธ Media
K
KobeissiLetter
@KobeissiLetter
๐Ÿ“…
Feb 28, 2026
15d ago
๐Ÿ†”44430017

BREAKING: President Trump says Iranโ€™s Supreme Leader Khamenei is dead. https://t.co/y17d7Ilncz

Media 1
๐Ÿ–ผ๏ธ Media
๐Ÿ”MMinevich retweeted
K
The Kobeissi Letter
@KobeissiLetter
๐Ÿ“…
Feb 28, 2026
15d ago
๐Ÿ†”44430017

BREAKING: President Trump says Iranโ€™s Supreme Leader Khamenei is dead. https://t.co/y17d7Ilncz

Media 1
โค๏ธ6,925
likes
๐Ÿ”832
retweets
๐Ÿ–ผ๏ธ Media
M
MarioNawfal
@MarioNawfal
๐Ÿ“…
Mar 01, 2026
15d ago
๐Ÿ†”59485979

๐Ÿšจ BREAKING: ๐Ÿ‡ฎ๐Ÿ‡ท Oil could jump 10% on Iran conflict and could spike to $100 a barrel. Source: CGTN America https://t.co/Gxdze5ATM3

Media 1
๐Ÿ–ผ๏ธ Media
B
briannekimmel
@briannekimmel
๐Ÿ“…
Feb 27, 2026
17d ago
๐Ÿ†”91962653

@pitdesi Fruit of the Loom late to the collab game compared to Uniqlo, but recent ones like Homme Girls have done well. https://t.co/yvPhCM7aMj

Media 1Media 2
๐Ÿ–ผ๏ธ Media
B
bhalligan
@bhalligan
๐Ÿ“…
Feb 27, 2026
17d ago
๐Ÿ†”81819516

Technical founders: hiring salespeople is where you will most likely get wrecked. https://t.co/AFRHh81ajI

๐Ÿ–ผ๏ธ Media
B
briannekimmel
@briannekimmel
๐Ÿ“…
Feb 27, 2026
17d ago
๐Ÿ†”29383345

While everyone is proteinmaxxing, peptidemaxxing, looksmaxxing You can find me here https://t.co/8Qs5olDTwD

Media 1
๐Ÿ–ผ๏ธ Media
B
briannekimmel
@briannekimmel
๐Ÿ“…
Feb 27, 2026
16d ago
๐Ÿ†”60057487

@alexia My โ€˜there will be signsโ€™ is running billboard campaigns with art I like from my office to home. The famous I Like You Very Much has been rented by an attorney since 2011. https://t.co/tv2qgmm4Er

Media 1
๐Ÿ–ผ๏ธ Media
T
tbpn
@tbpn
๐Ÿ“…
Feb 28, 2026
16d ago
๐Ÿ†”10179669

Stripe CEO @patrickc predicts software will shift from "mass-produced, industrial scale" made "years beforehand" to bespoke, custom software created the moment you need it. "Up until now, the economics of software have been conceived of as fixed cost, then infinitely monetized. That has these kinds winner-take-all dynamics." "But once there are inference costs and custom creation involved, it really shifts."

๐Ÿ–ผ๏ธ Media
R
rxwei
@rxwei
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”57499756

Today we are introducing a Python SDK for Mac's on-device LLM! https://t.co/LQVp2EheLO https://t.co/mcJh9M1DaW

Media 1
๐Ÿ–ผ๏ธ Media
๐Ÿ”ai_fast_track retweeted
R
Richard Wei
@rxwei
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”57499756

Today we are introducing a Python SDK for Mac's on-device LLM! https://t.co/LQVp2EheLO https://t.co/mcJh9M1DaW

Media 1
โค๏ธ1,863
likes
๐Ÿ”210
retweets
๐Ÿ–ผ๏ธ Media
A
andimarafioti
@andimarafioti
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”10559523

Introducing Faster Qwen3TTS! Realistic voice generation at 4x real time: - Same amazing voice quality from Qwen's model - Streaming support with <200 ms to first audio - 5x faster than the official implementation Just pip install faster-qwen3-tts Try the demo! https://t.co/Dcf9jNXz8g

๐Ÿ–ผ๏ธ Media
O
ollama
@ollama
๐Ÿ“…
Feb 26, 2026
17d ago
๐Ÿ†”42532961

Ollama can now launch Pi, a minimal coding agent which you can customize for your workflow ollama launch pi You can even ask pi to write extensions for itself https://t.co/hlUYnA3vl4

๐Ÿ–ผ๏ธ Media
H
HuggingModels
@HuggingModels
๐Ÿ“…
Feb 26, 2026
17d ago
๐Ÿ†”72446642

Meet Qwen3-Voice-Embedding: a powerful voice identity model that extracts unique speaker signatures from audio. It's like a fingerprint scanner for voices, and it's optimized for real-time applications. This is a game-changer for voice tech! https://t.co/HEPUpu0QF6

Media 1
๐Ÿ–ผ๏ธ Media
Y
YinjieW2024
@YinjieW2024
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”03363837

Train your ๐Ÿฆž@openclaw simply by talking to it. Meet OpenClaw-RL. Host your model on our RL server, and your LLM gets optimized automatically. Use it anywhere. Keep it private. Make it more personal every day. We have fully open sourced everything. Come in and have fun!

๐Ÿ–ผ๏ธ Media
A
Akashi203
@Akashi203
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”65779387

We open sourced an operating system for ai agents 137k lines of rust, MIT licensed we love @openclaw and it inspired a lot of what we built. but we wanted something that works at the kernel level so we built @openfangg agents run inside WASM sandboxes the same way processes run on linux. the kernel schedules them, isolates them, meters their resources, and kills them if they go rogue. it has 16 security layers baked into the core. WASM sandboxing, merkle hash-chain audit trails, taint tracking on secrets, signed agent manifests, prompt injection detection, SSRF protection, and more. every layer works independently. giving an LLM tools with zero isolation is insane and we're not doing it. we also created something called Hands. right now every ai agent is a chatbot that waits for you to type. Hands are different. you activate one and it runs on a schedule, 24/7, no prompting needed. your Lead Hand finds and scores prospects every morning and delivers them to your telegram before you wake up. your Researcher Hand writes cited reports while you sleep. your Collector Hand monitors targets and builds knowledge graphs continuously. they work for you. you don't babysit them https://t.co/4xYzMAYgmb โญ

Media 1Media 2
๐Ÿ–ผ๏ธ Media
A
adocomplete
@adocomplete
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”24551139

Beyond the winners of our "Built with Opus 4.6 Claude Code Hackathon," there were so many amazing projects that deserve a shoutout. Today I want to highlight Pasal by Ilham Putra. 280 million Indonesians can't easily search their own laws. Pasal fixes that. https://t.co/VJcMj3BwHO

๐Ÿ–ผ๏ธ Media
K
kunal732
@kunal732
๐Ÿ“…
Feb 25, 2026
18d ago
๐Ÿ†”53643778

Introducing MLX-Swift-TS https://t.co/TDCJXVpago An SDK for running time series foundation models fully on-device on Apple Silicon. When I joined @datadoghq , I was introduced to Toto, our time series foundation model, and got excited about zero-shot forecasting across different domains. While building a health copilot app, I realized there wasnโ€™t a simple way to run models like these locally on device. So I built one. MLX-Swift-TS exposes a common TimeSeriesForecaster interface for loading and running multiple time series architectures directly in Swift using MLX. No server required. The attached video shows on-device forecasting running inside a native Swift app. Huge thanks to @awnihannun and the MLX team for building MLX and its Swift API, @Prince_Canuma for inspiration on MLX SDK patterns, and @atalwalkar and the Datadog team for Toto.

Media 2
๐Ÿ–ผ๏ธ Media
๐Ÿ”ai_fast_track retweeted
K
Kunal Batra
@kunal732
๐Ÿ“…
Feb 25, 2026
18d ago
๐Ÿ†”53643778

Introducing MLX-Swift-TS https://t.co/TDCJXVpago An SDK for running time series foundation models fully on-device on Apple Silicon. When I joined @datadoghq , I was introduced to Toto, our time series foundation model, and got excited about zero-shot forecasting across different domains. While building a health copilot app, I realized there wasnโ€™t a simple way to run models like these locally on device. So I built one. MLX-Swift-TS exposes a common TimeSeriesForecaster interface for loading and running multiple time series architectures directly in Swift using MLX. No server required. The attached video shows on-device forecasting running inside a native Swift app. Huge thanks to @awnihannun and the MLX team for building MLX and its Swift API, @Prince_Canuma for inspiration on MLX SDK patterns, and @atalwalkar and the Datadog team for Toto.

Media 1
โค๏ธ89
likes
๐Ÿ”8
retweets
๐Ÿ–ผ๏ธ Media
I
ihtesham2005
@ihtesham2005
๐Ÿ“…
Feb 25, 2026
18d ago
๐Ÿ†”73314975

๐Ÿšจ Anthropic just open-sourced the exact Skills library their own engineers use internally. Stop building Claude workflows from scratch. These are plug-and-play components that work across Claude Code, API, SDK, and VS Code copy once, deploy everywhere. What's inside: โ†’ Excel + PowerPoint generation out of the box โ†’ File handling and document workflows โ†’ MCP-ready subagent building blocks โ†’ Pre-built patterns for multi-step automation โ†’ Production templates you'd normally spend weeks writing The old way: re-explain your workflow every single chat. The new way: build a Skill once, Claude never forgets how you work. 100% Open Source. Official Anthropic release. Repo: https://t.co/XNx3i4yNy6

Media 1Media 2
๐Ÿ–ผ๏ธ Media
H
HuggingModels
@HuggingModels
๐Ÿ“…
Feb 26, 2026
18d ago
๐Ÿ†”32927592

Meet Whisper-SAM: a specialized speech recognition model that's turning heads. It's a fine-tuned version of OpenAI's Whisper-small, optimized for automatic speech transcription. Perfect for developers who need accurate, efficient audio-to-text conversion without the heavy compute.

Media 1
๐Ÿ–ผ๏ธ Media
A
Ali_TongyiLab
@Ali_TongyiLab
๐Ÿ“…
Feb 28, 2026
16d ago
๐Ÿ†”36473199

1/4 We are thrilled to announce that CoPaw is now open source! After an incredible wave of feedback, our team has completely overhauled the engine to give you full control over your personal AI partner. Key Highlights: Ultimate Model Freedom Local-First: Full native support for Ollama, llama.cpp, and MLX (Apple Silicon). Bring Your Own Model: Easily add/remove custom model providers or private API endpoints. Your data, your choice. Smarter Long-Term Memory No more "amnesia." CoPaw remembers your preferences and tasks. New Local Mode: Use vector search without complex database installsโ€”now fully compatible with Windows for an out-of-the-box experience. Modular "Lego-Like" Architecture Skill Hub Integration: Import skills from community hubs like ClawHub with one command. Agentic Workflow: Modularized Prompts, Hooks, and Tools. Supports MCP (Model Context Protocol) hot-swappingโ€”expand capabilities without restarting. Proactive Multi-Channel Connection Connect to DingTalk, Feishu, Discord, iMessage, and more. A new standardized protocol makes it easier than ever to build your own channel plugins.

Media 1
๐Ÿ–ผ๏ธ Media
U
UnslothAI
@UnslothAI
๐Ÿ“…
Feb 27, 2026
17d ago
๐Ÿ†”96545535

Qwen3.5 is now updated with improved tool-calling & coding performance! Run Qwen3.5-35B-A3B on 22GB RAM. See improvements via Claude Code, Codex. We also benchmarked GGUFs & removed MXFP4 layers from 3 quants. GGUFs: https://t.co/4lSce5zZbO Analysis: https://t.co/rHZK8JWdYM

Media 1Media 2
๐Ÿ–ผ๏ธ Media
A
ArtificialAnlys
@ArtificialAnlys
๐Ÿ“…
Feb 27, 2026
16d ago
๐Ÿ†”97777245

Alibaba has expanded its Qwen3.5 model family with 3 new models - the 27B model is a standout, scoring 42 on the Artificial Analysis Intelligence Index and matching open weights models 8-25x its size @Alibaba_Qwen has expanded the Qwen3.5 family with three new models alongside the 397B flagship released earlier this month: the Qwen3.5 27B (Dense, scoring 42 on Intelligence Index), Qwen3.5 122B A10B (MoE, 42), and Qwen3.5 35B A3B (MoE, 37). The two MoE (Mixture-of-Experts) models only activate a fraction of the total parameters per forward pass (10B of 122B and ~3B of 35B respectively). The Intelligence Index is our synthesis metric incorporating 10 evaluations covering general reasoning, agentic tasks, coding, and scientific reasoning. All models are Apache 2.0 licensed, natively support 262K context, and return to the unified thinking/non-thinking hybrid architecture from the original Qwen3, after Alibaba moved to separate Instruct and Reasoning checkpoints with the Qwen3 2507 updates. Key benchmarking results for the reasoning variants: โžค Qwen3.5 27B scores 42 on Intelligence Index and is the most intelligent model under 230B. The nearest model of similar size is GLM-4.7-Flash (31B total, 3B active) which scores 30. Open weights models of equivalent intelligence are 8-25x larger in terms of total parameters: MiniMax-M2.5 (230B, 42), DeepSeek V3.2 (685B, 42), and GLM-4.7 (357B, 42). In FP8 precision it takes ~27GB to store the model weights, while in 4-bit quantization you can use laptop quality hardware with 16GB+ of RAM โžค Qwen3.5 27B scores 1205 on GDPval-AA (Agentic Real-World Work Tasks), placing it alongside larger models. For context, MiniMax-M2.5 scores 1206, GLM-4.7 (Reasoning) scores 1200, and DeepSeek V3.2 (Reasoning) scores 1194. This is particularly notable for a 27B parameter model and suggests strong agentic capability for its size. GDPval-AA tests models on real-world tasks across 44 occupations and 9 major industries โžค AA-Omniscience remains a relative weakness across the Qwen3.5 family, driven primarily by lower accuracy rather than hallucination rate. Qwen3.5 27B scores -42 on AA-Omniscience, comparable to MiniMax-M2.5 (-40) but behind DeepSeek V3.2 (-21) and GLM-4.7 (-35). Although Qwen3.5 27B's hallucination rate (80%) is lower than peers (GLM-4.7 90%, MiniMax 89%, DeepSeek 82%), its accuracy is also lower at 21% vs 34% for DeepSeek V3.2 and 29% for GLM-4.7. This is likely a consequence of model size - we have generally observed that models with more total parameters perform better on accuracy in AA-Omniscience, as broader knowledge recall benefits from larger parameter counts โžค Qwen3.5 27B is equivalently intelligent to Qwen3.5 122B A10B. The 122B A10B is a Mixture-of-Experts model that only activates 10B of its 122B total parameters per forward pass. The 27B model leads in GDPval-AA (1205 Elo vs 1145 Elo) and slightly on TerminalBench (+1.5 p.p.), while the 122B model leads on SciCode (+2.5 p.p.), HLE (+1.2 p.p.), and has a lower hallucination rate (Omniscience -40 vs -42) โžค Qwen3.5 35B A3B (Reasoning, 37) is the most intelligent model with ~3B active parameters, 7 points ahead of GLM-4.7-Flash (30). Other models in this ~3B active category include Qwen3 Coder Next (80B total, 28), Qwen3 Next 80B A3B (27), and NVIDIA Nemotron 3 Nano 30B A3B (24) โžค Qwen3.5 27B used 98M output tokens to run the Intelligence Index, costing ~$299 via Alibaba Cloud API. This is notably high token usage compared to models at similar intelligence: MiniMax-M2.5 (56M), DeepSeek V3.2 (61M), and even the larger Qwen3.5 397B (86M). Other information: โžค Context window: 262K tokens (extendable to 1M via YaRN) โžค License: Apache 2.0 โžค API pricing (Alibaba Cloud): 397B: $0.60/$3.60, 122B: $0.40/$3.20, 27B: $0.30/$2.40, 35B A3B: $0.25/$2.00 per 1M input/output tokens

Media 1
๐Ÿ–ผ๏ธ Media