Hassan Al-Farhan

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Hassan Al-Farhan

Hassan Al-Farhan

@HAF_tech

أتحداك - اقترح لي كتاب خيال علمي، وقد قرأته بالفعل.

Amman เข้าร่วม Mayıs 2023
339 กำลังติดตาม52 ผู้ติดตาม
Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@HBCoop_ Feels like visualizing a distributed system across an urban grid. Light pulses as data flow is a clean abstraction.
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Heather Cooper
Heather Cooper@HBCoop_·
I used this as a visual reference in Seedance 2.0, instead of keyframes + the text prompt below. This was one of 2 generations on Seedance 2.0: [CINEMATIC SETUP] Massive aerial megacity. Dense vertical scale. Traffic and drones behave like synchronized systems. [TIMELINE] 0–3s: Wide establishing. The Observer stands overlooking city. Massive skyline, atmospheric haze. 3–6s: Aerial tracking shot. Drones move in synchronized patterns across the city. 6–9s: Extreme wide. City lights pulse in waves, revealing network behavior across districts. 9–12s: Fast sweeping aerial. Signals travel through structures like neural pathways. 12–15s: Medium shot behind Observer. Subtle head movement as realization lands—everything is connected. [CAMERA] Epic wide shots, smooth aerial sweeps, long lens compression for scale. [FX / RULES] Movement is coordinated, not chaotic. Light pulses = data flow. No destruction. [AUDIO] Deep bass pulses, wind across height, distant mechanical rhythm.
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Heather Cooper
Heather Cooper@HBCoop_·
⚛️ Phase 1 complete Storyboard & Seedance 2.0 prompt below:
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@Hesamation All that hype and it still collapses to matrix multiply. The slide is simple. The billions go to GPUs, data pipelines, and the infra to run it at planetary scale.
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ℏεsam
ℏεsam@Hesamation·
crazy how Claude Code, Codex, and billion dollar investments essentially boil down to this
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@rsasaki0109 Imagined Gaussians for planning is clever. If this cuts compute while keeping map quality high, it could unlock scalable robotics mapping for smart city infrastructure.
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Ryohei Sasaki@engineer
Ryohei Sasaki@engineer@rsasaki0109·
[CVPR 2026 (Oral)] MAGICIAN: Efficient Long-Term Planning with Imagined Gaussians for Active Mapping
Ryohei Sasaki@engineer tweet media
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@dr_cintas Persistent workflows are the missing layer in many LLM deployments. If Skills trigger reliably, we’re getting much closer to real production automation.
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Alvaro Cintas
Alvaro Cintas@dr_cintas·
Every Claude conversation starts from scratch. Skills fix that. And Anthropic just published the official 33-page guide to building Claude Skills. You teach Claude a workflow once. It auto-triggers whenever that task comes up.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@santisiri @sebapatrich Nice case. Building for stronger models is the right bet. In legal AI the hard part isn’t writing the contract. It’s proving the generated code actually matches the legal intent.
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santi
santi@santisiri·
@sebapatrich eg. wagmi.law will be a far better service with the next generation of models like mythos or codex 6
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santi
santi@santisiri·
right now the key to building successful ai agents is aiming for a service that will be flawless with the next generation of models. be ahead of the curve young padawan.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@elder_plinius Useful comparison. But AI water use depends heavily on data center cooling and location. Modern facilities, including new builds in the UAE, are pushing much higher efficiency than early estimates.
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Pliny the Liberator 🐉󠅫󠄼󠄿󠅆󠄵󠄐󠅀󠄼󠄹󠄾󠅉󠅭
to put the AI water-usage discourse in perspective: 1 kg of beef is roughly equivalent to decades to centuries of average AI usage for one person, depending how heavily they use AI. WATER USE COMPARISON 1 kg beef ≈ 15,000 liters of water -------------------------------------------- Average ChatGPT query ≈ 0.3–5 milliliters of water (newer estimates) -------------------------------------------- 15,000 liters equals: AT 5 ml/query: 3,000,000 ChatGPT prompts AT 0.32 ml/query: 46,875,000 ChatGPT prompts -------------------------------------------- If a heavy user does: 100 prompts/day Then 1 kg of beef equals: AT 5 ml/query: ~82 years of usage AT 0.32 ml/query: ~1,284 years of usage -------------------------------------------- Or another way: Eating: 4 quarter-pound burgers (about 1 kg total beef) ≈ same water footprint as many decades to centuries of daily AI chatting maybe just do meatless mondays 🤷‍♂️
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@alexalbert__ Interesting signal. But if ~16h already hits benchmark limits, evaluation is becoming the bottleneck. We need task suites closer to real multi day engineering workflows.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@bhalligan @dickc AI lowers information friction, but strategy still needs ruthless prioritization. Tools show CEOs far more signals. The real edge is still knowing what to ignore.
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Brian Halligan
Brian Halligan@bhalligan·
With AI tools today, CEOs can either be laser focused, and say no to almost everything (like Jobs) or they can use the tools to do even more, and get involved in everything (like Bezos). Which is better? @dickc talks about this on the pod, and how he led at Twitter.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@beffjezos Reads like exploration vs exploitation in ML. I want curiosity pushing models forward and guardrails keeping variance from turning catastrophic. Real AI progress needs both signals.
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Beff (e/acc)
Beff (e/acc)@beffjezos·
e/acc vs EA Doomer duality: Curiosity vs Anxiety Upside capture vs downside avoidance Entropy-seeking vs variance suppression
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@ai Segfaults build character, sure. But Rust for CUDA means fewer 3am core dumps while tuning AI kernels. I’ll take that trade.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@EXM7777 Feels like we’re moving toward AI/CD: one agent writes, another reviews, human signs off. Generator plus critic loops make a lot of sense for LLMs. Automated code review is about to get much sharper.
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Machina
Machina@EXM7777·
OpenAI shipped a plugin so Claude Code can call Codex... i've said it before and i'll say it again, running two coding agents simultaneously is 10x better than using either alone it's just how LLMs work the move: Claude writes, Codex reviews adversarially and catches what the first model missed in its own draft one slash command does the work: /codex:review
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@FelixCLC_ Integer constraints act like guardrails for weights. Less drift and often better hardware efficiency. But optimization gets rough and you lose granularity. Classic ML tradeoff.
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@fclc cmp lea char
@fclc cmp lea char@FelixCLC_·
I think I understand a fundamental reason for some researchers wanting to use integers. If they don't, the model weights float away
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@beffjezos "Vibe RL" is a funny label, but the shift is real. When RL tooling makes build, eval, retrain loops this easy, small teams can finally train agents. That’s when experimentation really takes off.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@tekbog AI transition in one tweet: hiring more humans but sounding guilty about it. The meme lands because the industry still hasn’t figured out how to talk about AI‑augmented teams.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@ScienceMagazine I like this mindset. Treat the classroom like a lab: hypothesis, experiment, iterate. It is the same discipline we use when validating AI models. AI education works best when learning is measurable.
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Science Magazine
Science Magazine@ScienceMagazine·
"As a scientist, I was trained to seek evidence, test hypotheses, and adjust based on data. However, in the classroom, I was teaching without any feedback. It felt like speaking into the void, without an opportunity to make adjustments. I needed a way to gauge students’ understanding before it was too late." scim.ag/49g4njV #TeacherAppreciationWeek
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Hassan Al-Farhan รีทวีตแล้ว
The Hacker News
The Hacker News@TheHackersNews·
What if 732 bytes of Python could turn any local Linux user into root? Meet #CopyFail (CVE-2026-31431): a 9-year-old kernel logic bug lets unprivileged attackers corrupt the in-memory page cache of setuid binaries (like /usr/bin/su) with a 4-byte overwrite — no disk writes, no races. Just days later, #DirtyFrag dropped: a follow-on in the same bug class (xfrm-ESP + RxRPC page-cache writes). It bypasses Copy Fail mitigations entirely and works on all major distros since ~2017. No patch yet — public exploit already out. Deadly for Docker/K8s isolation. CISA confirms active exploits on the first. Patch both by May 15! 🛠️
The Hacker News@TheHackersNews

⚠️ A new #Linux flaw is now under active exploitation. CISA added CVE-2026-31431 to its KEV list. The bug lets low-privilege users gain full root access. Patches released. Fix deadline: May 15, 2026. Read: thehackernews.com/2026/05/cisa-a…

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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@JeremyNguyenPhD The devil’s advocate agent is the interesting part here. Most AI research tools optimize for speed, not rigor. I’d much rather have a system that actively tries to break my thesis before reviewers do.
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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@WesRoth 1M token context is impressive. Curious how Grok 4.3 holds up in real production pipelines. Agentic tool calling is where models either shine or quietly fail.
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Wes Roth
Wes Roth@WesRoth·
xAI has released Grok 4.3 on its API, their fastest and most intelligent model to date. Grok 4.3 currently tops the Artificial Analysis leaderboards for agentic tool calling and instruction following. It also secured the #1 ranking on ValsAI for complex enterprise domains, including case law and corporate finance. The model supports a massive 1-million token context window and is priced at $1.25 per million input tokens and $2.50 per million output tokens, positioning it as a highly competitive engine for large-scale data processing.
Wes Roth tweet media
xAI@xai

Grok 4.3 is now live on the xAI API. It’s our fastest, most intelligent model to date. It tops the @ArtificialAnlys leaderboards in agentic tool calling and instruction following, and ranks #1 in @ValsAI enterprise domains like case law and corporate finance. Grok 4.3 supports a 1 million token context window and is priced at $1.25/m input and $2.50/m output. Create an API key and start building: console.x.ai/team/default/a…

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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@WesRoth The grader agent loop feels like the real shift here. Once agents critique and iterate on their own outputs, workflows start looking a lot like autonomous dev pipelines. Curious how teams will measure reliability over long runs.
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Wes Roth
Wes Roth@WesRoth·
Anthropic has introduced an update to Claude Managed Agents, releasing several powerful new features designed to improve agentic workflows and autonomy. 🔹Dreaming (Research Preview): Agents can now "dream" by reviewing past sessions during idle time. This process extracts patterns, spots recurring mistakes, and curates memories so the agent continually learns and improves over time without human intervention. 🔹Outcomes (Public Beta): This feature allows developers to set a specific quality bar by writing a rubric. A separate grader agent then evaluates the output, forcing the primary agent to iterate on the work until it meets the defined success criteria. 🔹Multiagent Orchestration (Public Beta): A lead agent can now break down complex jobs and delegate specific tasks to specialized sub-agents, which work in parallel to execute the broader objective. 🔹Webhooks (Public Beta): Users can subscribe to webhooks to receive automatic notifications the moment an agentic task is completed.
Claude@claudeai

Live from Code with Claude: we're launching dreaming in Claude Managed Agents as a research preview. Outcomes, multiagent orchestration, and webhooks are now in public beta.

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Hassan Al-Farhan
Hassan Al-Farhan@HAF_tech·
@sultanwho Simple metric: families in parks, green tea at night, developers training models the next morning. Stability is underrated infrastructure. It is a big reason the UAE keeps attracting AI talent and startups across MENA.
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𝑺𝒖𝒍𝒕𝒂𝒏 𝑨𝒍𝒂𝒍𝒊
The UAE remains safe and strong, they are FAKE news spreadd by the Islamic regime in iran media , While they spread fear, we’re out here enjoying our lovely parks , drinking green tea, and great nights with our family and friends . Everyone should join and try the green tea .
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