User
Write something
Q&A - ON SKOOL is happening in 3 days
Pinned
I just finished something that took 2 years and 12 failed drafts to get right...
Most AI books tell you what to think. This one teaches you how to OWN the entire stack — from hardware to models to deployment. Volume 2 is complete. 300+ pages on building your own AI infrastructure. No cloud dependencies. No API keys. No monthly fees. Just you, your hardware, and total control. (If you know what it's like to watch your AI budget evaporate on token charges, you know why this matters.) But that's just the beginning. There's a WHOLE UNIVERSE coming. 12 follow-up books. Each targeting a specific vertical. Sales. Marketing. Operations. Healthcare. Real Estate. Legal. 12 companion playbooks. The exact frameworks for implementation. A certification program. For consultants who want to build businesses around the methodology. 15 revenue streams. Conservative projection: $1.2M-$6M annually. I've been building this quietly. And now it's time to open the doors. The Be Practical Series is going live. Very, very soon. Want first access to the playbooks, the beta certification, and the behind-the-scenes build? Drop a "OWN IT" below.
Pinned
👋 Meet Our Founder, Hamish Aman Prakash!
Hey Open Source AI Builders, If you're new here, it's time for an intro! Our community is powered by Hamish Aman Prakash – a recognized force in Australia's AI and tech ecosystem. Here's why you can trust the guidance, insights, and vision you'll find in this group: - Hamish is a *4-time award-nominated entrepreneur* in technology and artificial intelligence, known for pioneering projects in automation, open source, and local AI solutions. - He's built A-Tech from the ground up – delivering real AI products, consulting for businesses regionally and nationally, and championing a privacy-first, "own your AI" approach through Project Infra. - Hamish is constantly featured across platforms (including LinkedIn: linkedin.com/in/hamishfromatech), sharing innovations, practical demos, and leadership in AI adoption. - His influence and impact have made him a thought leader in Australia's AI community—bridging the world of no-code/builders and real technical mastery. - As a founder, mentor, and teacher, Hamish helps others scale with AI, break down technical barriers, and access life-changing opportunities in an AI-driven future. Let's welcome new members, share our stories, and always aim higher—knowing we're learning from the best in the business. Leave your questions for Hamish below, or connect with him directly to learn more about his journey! 🚀
👋 Meet Our Founder, Hamish Aman Prakash!
Pinned
Open‑Source AI > Paid AI – Here’s Why
Hey builders 👋 I’ve been watching the paid‑AI hype for a while, and every time someone talks about “the next big thing” from a giant, I’m reminded of why we love the open‑source movement. 1️⃣ You own it. With a paid model you’re locked into the vendor’s pricing, limits and data policy. With an open‑source LLM you can run it on your own GPU, tweak the weights, and keep 100 % of the data you feed it. Ownership = freedom. 2️⃣ No price hikes. Open‑source doesn’t have a quarterly “upgrade” bill. If you want more compute, buy hardware or move to the cloud – you decide the cost. Paid AI can suddenly bump your token price and hit your budget like a surprise tax. 3️⃣ Community‑driven innovation. Every bug fix, new feature or model release is a community effort. That means faster iteration and more diverse use‑cases than any single company can ship on its own. 4️⃣ Security & privacy. Running locally means no data leaves your network unless you choose to share it. That’s a game‑changer for regulated industries and privacy‑concerned founders. 5️⃣ Learning & growth. Open source lets you dive into the code, experiment with architectures and build a portfolio that shows real engineering skill. Paid APIs are black boxes – great for quick prototypes, but not a path to deep expertise. Bottom line: Open‑source AI gives you control, cost‑efficiency and a community that’s building the future together. Paid AI is fine for one‑off projects or when you need instant scaling, but if you’re serious about building something that lasts, the open‑source route is the smart move. Drop a 👇 if you’re already on the open‑source side or if you’ve got questions about setting up a local LLM. Let’s keep the conversation going!
Smaller AI Models Just Got Agentic.
Thanks to the incredible team at DeepReinforce AI. We have a 9b model that's being compared with qwen3.5 35b. AND IT FITS IN AN 8GB GPU/LAPTOP. State-of-the-Art Coding Agents: Available in 9B-Dense, 31B-Dense, 35B-MoE, and 397B-MoE (post-trained on top of Gemma 4 and Qwen 3.5), achieving state-of-the-art performance among open-source models of comparable size on coding benchmarks such as Terminal-Bench 2.1, SWE-Bench, NL2Repo and OpenClaw. Self-Improving Training Framework: Ornith-1.0 employs RL to learn to generate not only solution rollouts, but also the scallfold that drive those rollouts. By jointly optimizing the scaffold and the resulting solution, the model discovers better search trajectories and generates higher-quality solutions. Licence: MIT licensed, globally accessible, and free from regional limitations. I've used this model for 48 hours now and the results are very promising (posting results in a few days!) Check it out here: https://huggingface.co/deepreinforce-ai/Ornith-1.0-9B-GGUF
1
0
Smaller AI Models Just Got Agentic.
1-30 of 169
Open Source AI Builder's Club
skool.com/open-source-ai-builders-club
The #1 Club for all developers, builders and innovators in Open Source AI Models, Apps and FREE Alternatives to Paid & Expensive tools!
Leaderboard (30-day)
Powered by