AI and Machine Learning – Telegram
AI and Machine Learning
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Learn Data Science, Data Analysis, Machine Learning, Artificial Intelligence, and Python with Tensorflow, Pandas & more!
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😎 We found a great neural network for voice-over texts for you

🔰Hailuo.ai — AI that will read text with any voice

🔰Completely clones voice in just 10 seconds, has a library of 300+ voices in different languages ​​and with different intonations


💥 And also the neural network is absolutely free and there is no censorship!

🔗 Links: https://www.minimax.io/audio
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🔗 Vanna AI

🛠 Vanna is an MIT-licensed open-source Python RAG (Retrieval-Augmented Generation) framework for SQL generation and related functionality.


🤖Chat with your SQL database 📊.
🔰Accurate Text-to-SQL Generation via LLMs using RAG 🔄.

🔗 Links: https://github.com/vanna-ai/vanna
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🔗 RAG Developer Stack
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🔅 LLaMa for Developers

🌐 Author: Denys Linkov
🔰 Level: Intermediate

Duration: 1h 49m

🌀 Get an introduction to the architecture, process of fine tuning, deploying, and prompting in the popular open source LLaMa model.


📗 Topics: AI Software Development, LLaMA, Large Language Models

📤 Join Artificial intelligence for more courses
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📂 Full denoscription

In this course, learn how to customize open-source AI models with one of the most common open-source models, LLaMa (Large Language Model Meta AI). Instructor Denys Linkov shares a hands-on approach to working with LLaMa, explaining LLaMa architecture, prompting, deploying, and training models. He uses a series of Python notebooks to show you how to adapt LLaMa to your use cases and employ it in an enterprise or startup environment.
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If you're building AI agents, you should get familiar with these 3 common agent/workflow patterns.

Let's break it down.

🔹 Reflection
You give the agent an input.
The agent then "reflects" on its output, and based on feedback, improves and refines.

Ideal tools to use:
- Base model (e.g. GPT-4o)
- Fine-tuned model (to give feedback)
- n8n to set up the agent.

🔹 RAG-based
You give the agent a task.
The agent has the ability to query an external knowledge base to retrieve specific information needed.

Ideal tools to use:
- Vector Database (e.g. Pinecone).
- UI-based RAG (Aidbase is the #1 tool).
- API-based RAG (SourceSync is a new player on the market, highly promising).

🔹 AI Workflow
This is a "traditional" automation workflow that uses AI to carry out subtasks as part of the flow.

Ideal tools to use:
- n8n to handle the workflow.
- GPT-4o, Claude, or other models that can be accessed through API (basic HTTP requests).

If you can master these 3 patterns well, you can solve a very broad range of different problems.
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🔗 AI vs. ML

AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and decision-making.


🖥📚 ML (Machine Learning) is a subset of AI, focused on algorithms that allow machines to learn from data and improve over time without being explicitly programmed.

AI thinks, ML learns. Simple as that!
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🔗 AI vs. ML

AI (Artificial Intelligence) refers to machines simulating human intelligence 🧠, like reasoning, learning, and decision-making.


🖥📚 ML (Machine Learning) is a subset of AI, focused on algorithms that allow machines to learn from data and improve over time without being explicitly programmed.

AI thinks, ML learns. Simple as that!
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🔗 AI for Everyone: Master the Basics

Unlock the essentials of Artificial Intelligence (AI) with this free IBM course. Explore applications and key concepts like machine learning, deep learning, and neural networks.

🔗 Enroll Now
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📖 We translate any PDF documents in one click

🛠 PDFMathTranslate is a free AI-powered tool for full-text translation of PDF documents.

🔰 Neural networks will translate books, articles, diagrams and graphs, preserving their presentable appearance


🔹 Works very quickly - even a 200-page article can be translated in a minute
🔹 Completely preserves the text layout and does not make phrases clumsy
🔹 Knows 10 languages


🔗 Links: https://github.com/Byaidu/PDFMathTranslate
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🔅 LLM Foundations: Building Effective Applications for Enterprises

🌐 Author: Kumaran Ponnambalam
🔰 Level: Advanced

Duration: 1h 43m

🌀 Explore design considerations and best practices for building generative AI-powered applications at enterprise scale.


📗 Topics: Large Language Models, Artificial Intelligence, Enterprise Software

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