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Over 500,000 people have used Databricks Free Edition to learn, experiment, and build with data and AI. Today, we're making it a lot more powerful.Free Edition now includes five new products:𝗚𝗲𝗻𝗶𝗲 𝗖𝗼𝗱𝗲 — generates, runs, and iterates on code autonomously on your behalf𝗦𝗲𝗿𝘃𝗲𝗿𝗹𝗲𝘀𝘀 𝗚𝗣𝗨𝘀 — access to GPUs for deep learning, fine-tuning, and inference workloads𝗟𝗮𝗸𝗲𝗯𝗮𝘀𝗲 — a fully managed Postgres-compatible database built for data apps and AI agents𝗔𝗴𝗲𝗻𝘁 𝗕𝗿𝗶𝗰𝗸𝘀
0:24
x.comDatabricks
Over 500,000 people have used Databricks Free Edition to learn, experiment, and build with data and AI. Today, we're making it a lot more powerful.Free Edition now includes five
Databricks (@databricks). 60 likes 3 replies. Over 500,000 people have used Databricks Free Edition to learn, experiment, and build with data and AI. Today, we're making it a lot more powerful.Free Edition now includes five new products:𝗚𝗲𝗻𝗶𝗲 𝗖𝗼𝗱𝗲 — generates, runs, and iterates on code autonomously on your ...
已浏览 3487 次2 周前
"Hello, World!" program Examples
Hello World in 10 Programming Languages (C, C++, Python, Java & More)
32:40
Hello World in 10 Programming Languages (C, C++, Python, Java & More)
YouTubeChai, Sutta & Coding
已浏览 57 次11 个月之前
Learn 3 Programming Languages ​​in 10 minutes (Python, C# and Java) + Bonus: HTML - Eofor Dev
10:12
Learn 3 Programming Languages ​​in 10 minutes (Python, C# and Java) + Bonus: HTML - Eofor Dev
YouTubeEverton Rodrigo | Dev Front
已浏览 15 次1 个月前
Python Hello World Program | Beginner Tutorial 🚀
0:41
Python Hello World Program | Beginner Tutorial 🚀
YouTubeSanchita Sarkar
已浏览 99 次1 个月前
热门视频
Sam Altman: "deep learning worked, got predictably better with scale, and we dedicated increasing resources to it"The creator version: "daily capture worked"11-piece build:1. Capture what performed overnight before you write a word2. Use ScrapeCreators for public platform data: trending feeds, profile videos, comments, subreddit posts, X accounts3. Keep a dated file: capture_20260616.json4. Feed 20 videos and 15 Reddit posts to Claude5. Force structured JSON output: hooks, formats, pain points,
5:00
Sam Altman: "deep learning worked, got predictably better with scale, and we dedicated increasing resources to it"The creator version: "daily capture worked"11-piece build:1. Capture what performed overnight before you write a word2. Use ScrapeCreators for public platform data: trending feeds, profile videos, comments, subreddit posts, X accounts3. Keep a dated file: capture_20260616.json4. Feed 20 videos and 15 Reddit posts to Claude5. Force structured JSON output: hooks, formats, pain points,
x.comHarry Tandy
已浏览 4982 次2 周前
How many of the big ideas of the past 15 years of AI are downstream of hardware constraints?The big hardware story over that period is that logic has become way cheaper than data transfer.Stacking huge numbers of matrix multiplies was perfect for this hardware regime, because matrix multiplication is logic-intensive but requires less data transfer. And so we got matmul-heavy deep learning.It's interesting to think about what AI would look like in a world where these costs didn't diverge so much.
1:12
How many of the big ideas of the past 15 years of AI are downstream of hardware constraints?The big hardware story over that period is that logic has become way cheaper than data transfer.Stacking huge numbers of matrix multiplies was perfect for this hardware regime, because matrix multiplication is logic-intensive but requires less data transfer. And so we got matmul-heavy deep learning.It's interesting to think about what AI would look like in a world where these costs didn't diverge so much.
x.comDwarkesh Patel
已浏览 1.1万 次1 周前
🚨Out today in @Nature our new paper uses deep learning to map four decades of global human migration.By building the first comprehensive dataset of global annual flows (1990-2023), we reveal that migration has nearly tripled since 2000.🔗https://t.co/DuPQKF1asT
0:27
🚨Out today in @Nature our new paper uses deep learning to map four decades of global human migration.By building the first comprehensive dataset of global annual flows (1990-2023), we reveal that migration has nearly tripled since 2000.🔗https://t.co/DuPQKF1asT
x.comGuy Abel 鄭蓋堡
已浏览 12.5万 次3 周前
"Hello, World!" program Tutorial
Java Hello World Program Explained Step by Step (Beginner Friendly)
34:19
Java Hello World Program Explained Step by Step (Beginner Friendly)
YouTubeGaon ru Engineer (ଗାଁରୁ
已浏览 520 次4 个月之前
Java Hello World Program for Beginners (Step-by-Step)
2:43
Java Hello World Program for Beginners (Step-by-Step)
YouTubecode List
已浏览 31 次2 个月之前
Java Basics in 10 Minutes 🚀 | Hello World Program in Java for Beginners
15:09
Java Basics in 10 Minutes 🚀 | Hello World Program in Java for Beginners
YouTubeCoding Wars
4 周前
Sam Altman: "deep learning worked, got predictably better with scale, and we dedicated increasing resources to it"The creator version: "daily capture worked"11-piece build:1. Capture what performed overnight before you write a word2. Use ScrapeCreators for public platform data: trending feeds, profile videos, comments, subreddit posts, X accounts3. Keep a dated file: capture_20260616.json4. Feed 20 videos and 15 Reddit posts to Claude5. Force structured JSON output: hooks, formats, pain points,
5:00
Sam Altman: "deep learning worked, got predictably better with scale, a…
已浏览 4982 次2 周前
x.comHarry Tandy
How many of the big ideas of the past 15 years of AI are downstream of hardware constraints?The big hardware story over that period is that logic has become way cheaper than data transfer.Stacking huge numbers of matrix multiplies was perfect for this hardware regime, because matrix multiplication is logic-intensive but requires less data transfer. And so we got matmul-heavy deep learning.It's interesting to think about what AI would look like in a world where these costs didn't diverge so much.
1:12
How many of the big ideas of the past 15 years of AI are downstrea…
已浏览 1.1万 次1 周前
x.comDwarkesh Patel
🚨Out today in @Nature our new paper uses deep learning to map four decades of global human migration.By building the first comprehensive dataset of global annual flows (1990-2023), we reveal that migration has nearly tripled since 2000.🔗https://t.co/DuPQKF1asT
0:27
🚨Out today in @Nature our new paper uses deep learning to map four de…
已浏览 12.5万 次3 周前
x.comGuy Abel 鄭蓋堡
I was fascinated when I first heard about kernel fusion from @cHHillee's blog post "Making Deep Learning Go Brrrr From First Principles" (yes, I am a big fan of this post).I am still a novice in kernel programming so could not build a fused kernel myself. The `kernels` project from @huggingface came to the rescue. I could choose from the 100s of kernels on the Hub and profile it.In the blog, we use the GeGLU FFN fused Liger kernel, and the profile is beautiful. 🤩
0:09
I was fascinated when I first heard about kernel fusion from @cHHille…
已浏览 3244 次2 周前
x.comAritra
Why Does Every Programmer Start With "Hello, World!"? 🤯 #shorts
0:29
Why Does Every Programmer Start With "Hello, World!"? 🤯 #shorts
已浏览 3 次2 周前
YouTubeDev and EditHub
Why Does Every Programmer Start With "Hello, World!"? 🤯 #shorts
0:29
Why Does Every Programmer Start With "Hello, World!"? 🤯 #shorts
2 周前
YouTubeDev and EditHub
Adam Foroughi, founder and CEO of AppLovin, on why a single great engineer paired with an LLM is now worth a hundred B players:David Senra asks Adam how AI has transformed the way AppLovin runs over the last few years.Adam runs a roughly 400-person core business generating over $1.3B of cash in a single quarter, and AI is a big part of how that ratio is possible.He explains:"We over, I think it was about a year and a half ago, over 80% of our code was LLM written. And now it's much higher than t
3:12
Adam Foroughi, founder and CEO of AppLovin, on why a single great e…
已浏览 4558 次1 个月前
x.comBig Brain AI
1:32
Harvey Co-Founder @gabepereyra explains why it's much harder to k…
已浏览 2.5万 次2 周前
x.comsourcery
0:31
New capabilities across the Databricks AI Platform help ML te…
已浏览 3576 次2 周前
x.comDatabricks
0:42
China is making a big mistake imo. There is no future in LLMs. It's an i…
已浏览 2630 次1 周前
x.comAGIHound
0:13
🚨Weekly Cronos News🚨📅 22/06/20261. @cronosapp- CRO metrics consol…
已浏览 807 次2 周前
x.comPampa
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