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AI Technology | Claude & ChatGPT Prompts

AI Technology | Claude & ChatGPT Prompts

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📈 نظرة تحليلية على قناة تيليجرام AI Technology | Claude & ChatGPT Prompts

تُعد قناة AI Technology | Claude & ChatGPT Prompts (@aijobss) في القطاع اللغوي الإنكليزية لاعباً نشطاً. يضم المجتمع حالياً 12 980 مشتركاً، محتلاً المرتبة 9 701 في فئة التكنولوجيات والتطبيقات والمرتبة 31 576 في منطقة الهند.

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بحسب آخر البيانات بتاريخ 13 يوليو, 2026، تحافظ القناة على نشاط مستقر. خلال آخر 30 يوماً تغيّر عدد الأعضاء بمقدار 403، وفي آخر 24 ساعة بمقدار 19، مع بقاء الوصول العام مرتفعاً.

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#1 Artificial Intelligence Channel Best AI and ML Resources on Telegram Get free resources & trending updates for Artificial intelligence (AI) technology. Admin: @mani3721

بفضل وتيرة التحديث المرتفعة (أحدث البيانات بتاريخ 14 يوليو, 2026) تحافظ القناة على حداثتها ومستوى وصول مرتفع. وتُظهر التحليلات تفاعلاً نشطاً من الجمهور، ما يجعلها نقطة تأثير مهمة ضمن فئة التكنولوجيات والتطبيقات.

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🚀 7 Real-World Python Projects You Can Build in 2026 1. AI Scam & Notice Checker Detect scam SMS, phishing messages, and fake notices with AI. 📖 https://huggingface.co 2. Multi-Agent Research Assistant Build AI agents that research the web and generate reports. 📖 https://machinelearningmastery.com 3. Breast Cancer Prediction API Train an ML model and deploy it with FastAPI. 📖 https://machinelearningmastery.com 4. AI Market Research Dashboard Automate market research and trend analysis using AI. 📖 https://www.olostep.com/blog/agentic-market-research-olostep 5. Recycling Data Analysis Analyze recycling data and create insightful visualizations. 📖 https://towardsdatascience.com 6. AI Resume & Job Match Analyzer Match resumes with jobs and identify skill gaps. 📖 https://www.datacamp.com/tutorial/kimi-k2-6-api-tutorial 7. AI Data Analysis Report Generator Generate charts, insights, and reports from datasets with AI. 📖 https://www.datacamp.com/tutorial/gemini-3-api-tutorial ❤️ Follow AIJobs for more AI drops

7 Best Small Language Models Under 10B Parameters in 2026 1. IBM Granite 4.1 8B With industry-leading coding performance and a massive context window, Granite 4.1 8B is built for enterprise applications, RAG systems, and tool-calling workflows. 🔗 Click Here: https://huggingface.co/ibm-granite/granite-4.1-8b-instruct 2. Qwen3.5-9B One of the strongest reasoning models under 10B parameters, Qwen3.5-9B excels in multilingual tasks, science QA, and advanced problem-solving. 🔗 Click Here: https://huggingface.co/Qwen/Qwen3.5-9B-Instruct 3. Gemma 4 E4B Google's Gemma 4 E4B is optimized for AI agents, tool calling, and edge deployment, delivering powerful performance with minimal hardware requirements. 🔗 Click Here: https://huggingface.co/google/gemma-4-e4b-it 4. Qwen3-8B A proven favorite for developers, Qwen3-8B offers excellent code generation capabilities and supports more than 29 languages. 🔗 Click Here: https://huggingface.co/Qwen/Qwen3-8B 5. DeepSeek-R1-Distill-Qwen-7B Built for mathematical reasoning and logical thinking, this compact model delivers exceptional step-by-step problem-solving performance. 🔗 Click Here: https://huggingface.co/deepseek-ai/DeepSeek-R1-Distill-Qwen-7B 6. Phi-4-mini Microsoft's Phi-4-mini packs impressive AI capabilities into just 3.8B parameters, making it ideal for laptops and low-resource environments. 🔗 Click Here: https://huggingface.co/microsoft/Phi-4-mini-instruct 7. Llama 3.1 8B Instruct Llama 3.1 8B remains one of the most versatile open-source models, backed by a massive ecosystem of fine-tunes and community support. 🔗 Click Here: https://huggingface.co/meta-llama/Llama-3.1-8B-Instruct 🔥 Which small LLM is your favorite in 2026? ❤️ Follow AIJobs for more AI drops

📚 5 Must-Read Papers to Understand LLMs 1️⃣ Attention Is All You Need 📝 Description: Introduced the Transformer, the architecture behind every modern LLM. Replaced older recurrent/convolutional models for sequences. 🔑 Key Ideas: Self-attention • Multi-head attention • Positional encoding • Transformer block 🔗 Paper: https://arxiv.org/abs/1706.03762 ━━━━━━━━━━━━━━━ 2️⃣ Language Models Are Few-Shot Learners 📝 Description: The GPT-3 paper. One 175B model handles many tasks just by reading prompts — no retraining. 🔑 Key Ideas: In-context learning • Few-shot prompting • Autoregressive next-token prediction 🔗 Paper: https://arxiv.org/abs/2005.14165 ━━━━━━━━━━━━━━━ 3️⃣ Scaling Laws for Neural Language Models 📝 Description: Showed model performance improves predictably as parameters, data & compute grow. The logic behind going big. 🔑 Key Ideas: Scaling laws • Compute-optimal training • Data vs. model size tradeoffs 🔗 Paper: https://arxiv.org/abs/2001.08361 ━━━━━━━━━━━━━━━ 4️⃣ Training LMs to Follow Instructions with Human Feedback 📝 Description: The InstructGPT paper. Turns a raw text predictor into a helpful, instruction-following assistant. 🔑 Key Ideas: RLHF • Supervised fine-tuning • Reward model • Human preference ranking 🔗 Paper: https://arxiv.org/abs/2203.02155 ━━━━━━━━━━━━━━━ 5️⃣ Retrieval-Augmented Generation (RAG) 📝 Description: LLMs fetch external documents instead of relying only on stored memory — great for facts that change over time. 🔑 Key Ideas: Dense retrieval • Document index • Grounded generation • Knowledge-intensive QA 🔗 Paper: https://arxiv.org/abs/2005.11401 ━━━━━━━━━━━━━━━ ❤️ Follow AIJobs for more AI drops

5 Must-Know Python Concepts for AI Engineers 1. 🔥 Tensors & Autograd Stop writing backprop by hand. requires_grad=True tracks every operation → .backward() applies the chain rule automatically. import torch x = torch.tensor(2.0) y = torch.tensor(5.0) w = torch.tensor(0.5, requires_grad=True) b = torch.tensor(0.1, requires_grad=True) pred = w * x + b loss = (pred - y) ** 2 loss.backward() print(w.grad.item(), b.grad.item()) ✅ Exact gradients, zero math errors. 2. ⚙️ The __call__ Method Why model(x) works, not model.forward(x). call runs hooks before forward. class LinearLayer: def __init__(self, w, b): self.w, self.b = w, b self._hooks = [] def __call__(self, x): for hook in self._hooks: hook(x) return self.forward(x) def forward(self, x): return x * self.w + self.b ⚠️ Always call model(x) — .forward() skips hooks → silent bugs. 3. 💾 Pickle vs ONNX pickle = Python-locked + code execution risk 🚨. ONNX = static, language-agnostic graph. import torch model.eval() dummy_input = torch.randn(1, 10) torch.onnx.export( model, dummy_input, "model.onnx", export_params=True, opset_version=15, input_names=["input"], output_names=["output"], dynamic_axes={"input": {0: "batch_size"}} ) ✅ Portable, fast, decoupled from training code. 4. 🧱 Abstract Base Classes @abstractmethod forces subclasses to implement methods. Miss one → fails at startup, not mid-request. from abc import ABC, abstractmethod class ModelInterface(ABC): @abstractmethod def predict(self, x: list) -> list: ... @abstractmethod def get_metadata(self) -> dict: ... ✅ Fail fast, fail safe. 5. 🔐 Env Variables & Secrets Never hardcode keys. Store in .env, gitignore it, load with python-dotenv. import os from dotenv import load_dotenv load_dotenv() api_key = os.getenv("OPENAI_API_KEY") if not api_key: raise ValueError("OPENAI_API_KEY is not set!") ✅ Same code locally + Docker/Lambda. Zero leaks. ❤️ Follow AIJobs for more AI drops

7 Real World AI Projects to Build in 2026 🤖 Build an AI Job Search Assistant Searching for jobs is repetitive — JobFit AI reads your CV, searches live postings, and generates a ranked job-fit report automatically. 📖 Guide: Kimi K2.6 API Tutorial 🐙 GitHub: kingabzpro/JobFit-AI 🔬 Build a Multi-Agent Research Assistant Most research workflows involve several steps — this multi-agent system handles web search, source filtering, and report writing all in one pipeline. 📖 Guide: Multi-Agent Research Assistant in Python 🐙 GitHub: Multi-Agent-Research-Assistant 📈 Automate Investment Research with Olostep and n8n Investment research means checking news, financials, and public sources — this workflow automates the entire process and delivers AI-generated reports. 📖 Guide: How to Automate Investment Research Using Olostep and n8n 🐙 GitHub: kingabzpro/olostep-n8n-investment-agent 📊 Build an Agentic Market Research and Trend Analysis App Manually collecting competitor updates and trend reports takes hours — this agentic pipeline handles research, extraction, and brief writing automatically. 📖 Guide: Agentic Market Research & Trend Analysis with Olostep 🐙 GitHub: kingabzpro/agentic-market-research-olostep 🧾 Build an AI Invoice Processing Pipeline Invoice processing combines document understanding and structured extraction — this pipeline uses vision AI to pull useful fields and output clean structured data. 📖 Guide: Qwen 3.6 Plus API Tutorial 🐙 GitHub: BexTuychiev/qwen-invoice-pipeline-tutorial 📉 Build a Chart Digitizer with Claude Opus 4.7 Visual data trapped inside static charts and PDFs is now extractable — this tool reads chart images and saves the data points into a clean CSV or DataFrame. 📖 Guide: Building a Chart Digitizer 🏋️ Build an Exercise Trainer with Persistent Memory Most AI agents forget everything after a session — this exercise trainer remembers your workout history and suggests personalized sessions every time you run it. 📖 Guide: Add Persistent Memory to AI Agents ❤️ Follow AIJobs for more AI drops

10 Python Libraries for Building LLM Applications 🔹 1. Transformers Core library for loading, fine-tuning, and running LLMs with ease. 👉 Learn more: https://huggingface.co/docs/transformers 🔹 2. LangChain Connect prompts, tools, APIs, and models into powerful workflows. 👉 Learn more: https://docs.langchain.com 🔹 3. LlamaIndex Bring your own data into LLMs for smarter, grounded responses (RAG). 👉 Learn more: https://docs.llamaindex.ai 🔹 4. vLLM High-performance LLM serving with faster inference and better scaling. 👉 Learn more: https://docs.vllm.ai 🔹 5. Unsloth Efficient fine-tuning with LoRA & QLoRA — even on limited hardware. 👉 Learn more: https://github.com/unslothai/unsloth 🔹 6. CrewAI Build multi-agent systems where AI agents collaborate on tasks. 👉 Learn more: https://docs.crewai.com 🔹 7. AutoGPT Create goal-driven autonomous agents with step-by-step execution. 👉 Learn more: https://github.com/Significant-Gravitas/AutoGPT 🔹 8. LangGraph Design advanced, stateful workflows with branching logic. 👉 Learn more: https://docs.langchain.com/langgraph 🔹 9. DeepEval Test and evaluate LLM outputs for accuracy and reliability. 👉 Learn more: https://github.com/confident-ai/deepeval 🔹 10. OpenAI Python SDK Quickly integrate powerful AI features without managing infrastructure. 👉 Learn more: https://platform.openai.com/docs ❤️ Follow AIJobs for more AI drops

Learn AI for free directly from top companies 1. Anthropic: anthropic.skilljar.com 2 - Google: grow.google/ai 3 - Meta: ai.meta.com/resources/ 4 - NVIDIA: developer.nvidia.com/cuda 5 - Microsoft: learn.microsoft.com/en-us/training/ 6 - OpenAI: academy.openai.com 7 - IBM: skillsbuild.org AWS: skillbuilder.aws 9 - DeepLearning.AI: deeplearning.ai 10 - Hugging Face: huggingface.co/lear

Best YouTube Channels To Learn AI in 2026 1. Fundamentals – 3Blue1Brown 2. Deep Learning – Andrej Karpathy 3. AI Research – Yannic Kilcher 4. Practical AI – AssemblyAI 5. LLMs – AI Explained 6. ML Theory – StatQuest 7. Papers Simplified – Two Minute Papers 8. GenAI – Matthew Berman 9. AI Agents – Nicholas Renotte 10. Applied ML – Krish Naik 11. PyTorch – Aladdin Persson 12. Math for ML – Serrano Academy 13. Industry Insights – Lex Fridman 14. Real-world AI – DeepLearningAI

Top 100 Claude AI Tips
Top 100 Claude AI Tips

10 YouTube channels that teach AI better than most CS degrees in 2026: 1. Andrej Karpathy Deep, intuitive walkthroughs of neural networks and modern LLMs https://youtube.com/@AndrejKarpathy 2. 3Blue1Brown Visual intuition for math, linear algebra, and neural networks https://youtube.com/@3blue1brown 3. StatQuest with Josh Starmer Clear, friendly explanations of statistics and ML fundamentals https://youtube.com/@statquest 4. Stanford Online University-grade ML and AI lecture series (Andrew Ng, CS229, etc.) https://youtube.com/@stanfordonline 5. sentdex Practical machine learning and Python projects https://youtube.com/@sentdex 6. Yannic Kilcher Deep dives into ML and AI research papers https://youtube.com/@YannicKilcher 7. MIT OpenCourseWare Rigorous academic courses on ML, AI, and applied mathematics https://youtube.com/@mitocw 8. Siraj Raval High-level overviews and motivation around AI concepts Link: https://youtube.com/@SirajRaval 9. DeepLearningAI Structured learning paths for deep learning and generative AI https://youtube.com/@DeepLearningAI 10. Two Minute Papers Fast, accessible summaries of cutting-edge AI research https://youtube.com/@TwoMinutePapers ❤️ Follow AIJobs for more AI drops

5 Lightweight and Secure OpenClaw Alternatives to Try Right Now 1️⃣ NanoClaw Container-based agent runtime focused on safer execution and isolation. Great for teams building secure Claude-based workflows with messaging and memory support. 2️⃣ PicoClaw Ultra-lightweight, portable, and easy to deploy anywhere. Perfect for developers who want fast agent automation without heavy infrastructure. 3️⃣ TrustClaw Managed agent platform designed for usability and structured deployment. Best for users who prefer hosted agent systems over complex self-hosted setups. 4️⃣ NanoBot Minimal Python-based agent framework with core tools and memory. Ideal for builders who want a clean, auditable, and easily extensible codebase. 5️⃣ IronClaw Modular framework built for structured autonomy and reusable components. Strong choice for teams building scalable, production-grade agent workflows ❤️ Follow AIJobs for more AI drops

Top 5 Super Fast LLM API Providers 1️⃣ Cerebras Extreme throughput using wafer-scale hardware architecture. Best for high-QPS workloads, long generations, and maximum tokens per second. 2️⃣ Groq Ultra-low time to first token with deterministic execution. Perfect for chat apps, agents, copilots, and real-time responsiveness. 3️⃣ SambaNova Strong sustained performance with reconfigurable dataflow architecture. Ideal for Llama-family deployments needing stable, high throughput. 4️⃣ Fireworks AI Software-first optimization with quantization and speculative decoding. Reliable, consistent speed across multiple large model families. 5️⃣ Baseten Highly optimized serving with strong GLM-4.7 performance. Great choice when GLM speed matters more than peak GPT throughput. ❤️ Follow AIJobs for more AI drops

100 Nano Banana Prompts - 2026 Download Link: Prompt
100 Nano Banana Prompts - 2026 Download Link: Prompt

MIT offers 10 Books on AI & ML (FREE TO DOWNLOAD): 1. Foundations of Machine Learning http://cs.nyu.edu/~mohri/mlbook/ 2. Understanding Deep Learning Link: http://udlbook.github.io/udlbook/ 3. Algorithms for ML Link: http://algorithmsbook.com 4. Reinforcement Learning http://andrew.cmu.edu/course/10-703/… 5. Introduction to Machine Learning Systems http://mlsysbook.ai/book/assets/do… 6. Deep Learning http://deeplearningbook.org 7. Distributional Reinforcement Learning http://direct.mit.edu/books/oa-monog… 8. Multi Agent Reinforcement Learning http://marl-book.com 9. Agents in the Long Game of AI http://direct.mit.edu/books/oa-monog… 10. Fairness and Machine Learning http://fairmlbook.org ❤️ Follow AIJobs for more AI drops

Layers of AI
Layers of AI

5 Open Source Image Editing AI Models 🚀 FLUX.2 [klein] 9B ⚡ One model. Generation + editing. Insane speed. 🧠 Undistilled 9B powerhouse built for creators who want full control. ⸻ 🎨 Qwen-Image-Edit-2511 🎯 Sharp, stable, and insanely consistent image edits. 🏗️ Perfect for multi-person edits, product design & geometry-heavy workflows. ⸻ ⚡ FLUX.2 [dev] Turbo 🚄 8-step image generation that feels real-time. 🔥 LoRA-based turbo boost with zero quality compromise. ⸻ 🧩 LongCat-Image-Edit 📝 Follows complex edit instructions like a pro. 🎯 Keeps everything else untouched — layout, texture, identity, all safe. ⸻ 🧠 Step1X-Edit-v1p2 🤔 Thinks before it edits. Fixes before it finishes. 🏆 Built for precise, multi-step edits with benchmark-level accuracy.

5 Fun APIs for Absolute Beginners 1️⃣ OpenRouter — One API for 100+ LLMs Access OpenAI, Anthropic, Google, Meta, and open-source models with a single API key. Smart routing, fallbacks, and OpenAI-compatible SDKs make switching models effortless. 2️⃣ Olostep — Real-Time Web Data API Scrape, crawl, and search live websites and get clean, structured data instantly. Handles JavaScript pages, proxies, and anti-bot systems automatically. 3️⃣ Tinker API — Full-Control LLM Fine-Tuning Fine-tune open-weight models with direct control over the training loop. Download adapters and run them anywhere without vendor lock-in. 4️⃣ SerpApi — Search Results as JSON Get real-time Google and web search results in structured JSON format. CAPTCHAs, rendering, and proxies are handled for you at scale. 5️⃣ MOSTLY AI Generator API — Synthetic Data, Real Privacy Generate realistic, privacy-safe synthetic data from real datasets. Perfect for testing, analytics, and AI training without exposing sensitive data. 🤖 AI for the Future || Double Tap ❤️ for More

Top 5 Open-Source AI Model API Providers 1️⃣ Cerebras — Wafer-Scale Speed for Open Models
Cerebras uses a single wafer-scale chip instead of multi-GPU clusters, eliminating communication bottlenecks and delivering ultra-fast inference for massive open models like GPT-OSS-120B.
⚡ Performance (GPT-OSS-120B) • Speed: ~2,988 tokens/sec • Latency: ~0.26s (500 tokens) • Cost: ~$0.45 / 1M tokens • GPQA x16: ~78–79% ✅ Best for: High-traffic SaaS, agentic pipelines, and reasoning-heavy workloads needing extreme speed at scale. 2️⃣ Together.ai — Reliable High-Throughput Scaling
Together AI offers dependable GPU-based inference for large open-weight models, balancing speed, cost, and uptime for production workloads.
⚡ Performance (GPT-OSS-120B) • Speed: ~917 tokens/sec • Latency: ~0.78s • Cost: ~$0.26 / 1M tokens • GPQA x16: ~78% ✅ Best for: Production apps needing consistent throughput, strong reliability, and cost-efficient scaling. 3️⃣ Fireworks AI — Low Latency, Reasoning-First
Fireworks AI is optimized for fast, responsive inference with a strong focus on reasoning quality and developer-friendly APIs.
⚡ Performance (GPT-OSS-120B) • Speed: ~747 tokens/sec • Latency: ~0.17s (lowest) • Cost: ~$0.26 / 1M tokens • GPQA x16: ~78–79% ✅ Best for: Interactive assistants and agentic workflows where responsiveness is critical. 4️⃣ Groq — Custom Hardware for Real-Time Agents
Groq’s LPU (Language Processing Unit) is purpose-built for deterministic, ultra-low-latency AI inference, ideal for real-time systems.
⚡ Performance (GPT-OSS-120B) • Speed: ~456 tokens/sec • Latency: ~0.19s • Cost: ~$0.26 / 1M tokens • GPQA x16: ~78% ✅ Best for: Streaming copilots, real-time agents, and high-frequency AI calls. 5️⃣ Clarifai — Enterprise Control & Cost Efficiency
Clarifai provides hybrid cloud orchestration for open models, enabling cost-controlled scaling across cloud, private, and on-prem environments.
⚡ Performance (GPT-OSS-120B) • Speed: ~313 tokens/sec • Latency: ~0.27s • Cost: ~$0.16 / 1M tokens • GPQA x16: ~78% 🤖 AI for the Future || Double Tap ❤️ for More

10 Most Popular GitHub Repositories for Learning AI 1️⃣ microsoft/generative-ai-for-beginners
A beginner-friendly 21-lesson course by Microsoft that teaches how to build real generative AI apps—from prompts to RAG, agents, and deployment.
2️⃣ rasbt/LLMs-from-scratch
Learn how LLMs actually work by building a GPT-style model step by step in pure PyTorch—ideal for deeply understanding LLM internals.
3️⃣ DataTalksClub/llm-zoomcamp
A free 10-week, hands-on course focused on production-ready LLM applications, especially RAG systems built over your own data.
4️⃣ Shubhamsaboo/awesome-llm-apps
A curated collection of real, runnable LLM applications showcasing agents, RAG pipelines, voice AI, and modern agentic patterns.
5️⃣ panaversity/learn-agentic-ai
A practical program for designing and scaling cloud-native, production-grade agentic AI systems using Kubernetes, Dapr, and multi-agent workflows.
6️⃣ dair-ai/Mathematics-for-ML
A carefully curated library of books, lectures, and papers to master the mathematical foundations behind machine learning and deep learning.
7️⃣ ashishpatel26/500-AI-ML-DL-Projects-with-code
A massive collection of 500+ AI project ideas with code across computer vision, NLP, healthcare, recommender systems, and real-world ML use cases.
8️⃣ armankhondker/awesome-ai-ml-resources
A clear 2025 roadmap that guides learners from beginner to advanced AI with curated resources and career-focused direction.
9️⃣ spmallick/learnopencv
One of the best hands-on repositories for computer vision, covering OpenCV, YOLO, diffusion models, robotics, and edge AI.
🔟 x1xhlol/system-prompts-and-models-of-ai-tools
A deep dive into how real AI tools are built, featuring 30K+ lines of system prompts, agent designs, and production-level AI patterns.
🤖 AI for the Future || Double Tap ❤️ for More