Artificial Intelligence
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πŸ”° Machine Learning & Artificial Intelligence Free Resources

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Time to have an uncomfortable conversation 😬

πŸ“Š 67.6% of developers admire Python. 58.3% admire JavaScript. That's almost a 10-point difference in favor of Python.

πŸ’‘39.8% want to learn JavaScript, but 41.9% want to learn Python. That's a 2+ difference.

πŸš€ TypeScript doesn't do better. Only 33.8% want to learn TypeScript, although it's more admired than Python, with 69.5%. πŸ€·β€β™‚οΈ

πŸ“– This data is from the 2024 Stack Overflow Survey. πŸ“‹

🌍 On top of that, Python has surpassed JavaScript as the most popular programming language on GitHub this year.

There's a clear trend here. πŸ“ˆ

This is the first chapter of what will become a complete Python dominance (likely thanks to the rise of AI). πŸ€–βœ¨
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Machine Learning Model
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This message is for all those people looking for new opportunities or learning new skills thinking if they'll earn more, sustain in this life or not.

AI will take the job.
Will there be new opportunities in 2024.
How many days will it take to learn this skill.
Why I am still not successful.

I am sharing some bit of experience with you all based on whatever I observed in this world.

Don't think too much. Everything takes some time.

Rather just focus on your goal and do something which keep you closer to that. Stay consistent & work on something that your future self will be proud of.

There will be some days when you'll find yourself doing nothing. But just ignore it and learn from the failures without thinking anything negative.

In case I can be of any help to you, feel free to reach out to me either through Instagram or Telegram.

Never stop learning ❀️

Learning can be anything - new skill or habit. So just enjoy the process even if it takes time.

ENJOY LEARNING πŸ‘πŸ‘
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15 ChatGPT Prompts for Your Career Growth!

With These Game-Changing ChatGPT Prompts
You Can Explore Your‡️

1. Career Path Exploration
2. Job Responsibilities Insight
3. Pros and Cons Analysis
4. Emerging Fields Discovery
5. Skills Demand Overview

6. Career Path Comparison
7. Career Transition Steps
8. Growth Opportunities Exploration
9. Job Market Trends Insights
10. Alternative Career Paths

11. Skill Set Requirements
12. Lesser-Known Career Opportunities
13. Education and Experience Leverage
14. Work Environment Overview
15. Personality-Based Career Suggestions

Read it here: https://t.me/aiindi/226
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Top 10 machine Learning algorithms πŸ‘‡πŸ‘‡

1. Linear Regression: Linear regression is a simple and commonly used algorithm for predicting a continuous target variable based on one or more input features. It assumes a linear relationship between the input variables and the output.

2. Logistic Regression: Logistic regression is used for binary classification problems where the target variable has two classes. It estimates the probability that a given input belongs to a particular class.

3. Decision Trees: Decision trees are a popular algorithm for both classification and regression tasks. They partition the feature space into regions based on the input variables and make predictions by following a tree-like structure.

4. Random Forest: Random forest is an ensemble learning method that combines multiple decision trees to improve prediction accuracy. It reduces overfitting and provides robust predictions by averaging the results of individual trees.

5. Support Vector Machines (SVM): SVM is a powerful algorithm for both classification and regression tasks. It finds the optimal hyperplane that separates different classes in the feature space, maximizing the margin between classes.

6. K-Nearest Neighbors (KNN): KNN is a simple and intuitive algorithm for classification and regression tasks. It makes predictions based on the similarity of input data points to their k nearest neighbors in the training set.

7. Naive Bayes: Naive Bayes is a probabilistic algorithm based on Bayes' theorem that is commonly used for classification tasks. It assumes that the features are conditionally independent given the class label.

8. Neural Networks: Neural networks are a versatile and powerful class of algorithms inspired by the human brain. They consist of interconnected layers of neurons that learn complex patterns in the data through training.

9. Gradient Boosting Machines (GBM): GBM is an ensemble learning method that builds a series of weak learners sequentially to improve prediction accuracy. It combines multiple decision trees in a boosting framework to minimize prediction errors.

10. Principal Component Analysis (PCA): PCA is a dimensionality reduction technique that transforms high-dimensional data into a lower-dimensional space while preserving as much variance as possible. It helps in visualizing and understanding the underlying structure of the data.

Credits: https://t.me/datasciencefun

Like if you need similar content πŸ˜„πŸ‘

Hope this helps you 😊
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AI and Future
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πŸ‘¨β€πŸ’» Python course from Harvard University!

βœ… A large playlist with a cool explanation of the language, perhaps one of the best courses on Python!

πŸ”— Link: https://www.youtube.com/playlist?list=PLhQjrBD2T3817j24-GogXmWqO5Q5vYy0V

#python
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BEST AI TRANSLATORS 2024



๏ Wordvice AI Translator: AI-powered translator for instant, accurate translations between any languages using neural machine translation. Ensures natural, precise results.

๏ Alexa Translations: Top tool for legal and financial industries, often integrated into human translator's services. Translates documents in seconds.

๏ Bing Microsoft Translator: Offers text and speech translation via the cloud with over 100 language support. Distinguishes itself by options for image, voice and link translations.

๏ Taia: Combines AI with human translators for 97 language support. Provides instant rate estimates with 99.4% satisfaction. Supports long-term translation projects.

๏ Mirai Translate: Cloud-based API for neural machine translations used by large corporations. Compatible with multiple file formats and languages.

๏ Sonix: Audio translator that converts, edits and organizes audio files for video creators. Allows tweaking transcripts before automated translation.

๏ Google Lens: Real-time translation of over 100 languages using the camera. Translate text on signs, menus, and documents instantly. Integrated into Google Photos and the Google app for translating saved images and screenshots.

๏ Google Translate: Free online machine translation tool that allows you to translate text, documents, and websites from one language into another. Provides translation for over 100 languages.

๏ DeepL: Translates 25+ languages with no text limit. Known for its accurate translations, intuitive interface and integration into Windows and iOS. Retains formatting of original document.

๏ Machine Translation: Unique tool that analyzes and recommends the best machine translation for any text/language pair using GPT-4. Considers context and nuances to improve accuracy.
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Building AI agents is the new IT services πŸš€

In the ever-evolving world of technology, IT services have long been the backbone of industries worldwide, driving efficiency & scalability. However, we are now witnessing a seismic shift: building AI agents is rapidly emerging as the new IT services frontier. This transformation is not just a trend but a revolution redefining how businesses operate and innovate.

Why AI Agents?

AI agents are autonomous, intelligent systems designed to perform tasks, solve problems, and interact with humans or other systems. Unlike traditional IT solutions, which require constant human intervention, AI agents are proactive, adaptive, and capable of learning over time. From handling customer queries to automating complex workflows, AI agents are becoming the go-to solution for digital transformation.

βœ…Key Drivers of the Shift

* Cost-Effectiveness
* Scalability
* 24/7 Availability
* Customizability
* Data-Driven Insights

The Parallel to IT Services

The rise of AI agents mirrors the growth trajectory of IT services in the 1990s and 2000s. Just as IT outsourcing and managed services revolutionized businesses by offloading technical burdens, AI agents are doing the same with cognitive and operational workloads. Organizations are now building specialized AI agents to handle everything from customer support (chatbots like ChatGPT) to strategic decision-making (AI-driven analytics tools).

Opportunities for IT Service Providers
For IT service providers, this shift is an opportunity to redefine their offerings. Instead of just maintaining IT systems, they can:

- Develop AI Agents: Design and deploy customized AI solutions for clients.
- AI-as-a-Service: Offer AI agents on a subscription model, ensuring accessibility for small and medium businesses.
- Integration Expertise: Provide seamless integration of AI agents with existing IT systems.
- AI Training and Support: Educate and assist businesses in adopting AI technologies effectively.

The Road Ahead

The "AI agent" revolution is still in its early days, much like the IT services boom of the past. However, its potential is undeniable. As businesses continue to seek smarter, more efficient solutions, building AI agents will become a core competency for service providers.

For forward-thinking companies, this is the moment to lead the charge, not just as IT service providers but as AI pioneers shaping the future of industries.

The shift is hereβ€”are you ready to build the next wave of intelligent systems? 😊
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Tools Every AI Engineer Should Know

1. Data Science Tools
Python: Preferred language with libraries like NumPy, Pandas, Scikit-learn.
R: Ideal for statistical analysis and data visualization.
Jupyter Notebook: Interactive coding environment for Python and R.
MATLAB: Used for mathematical modeling and algorithm development.
RapidMiner: Drag-and-drop platform for machine learning workflows.
KNIME: Open-source analytics platform for data integration and analysis.

2. Machine Learning Tools
Scikit-learn: Comprehensive library for traditional ML algorithms.
XGBoost & LightGBM: Specialized tools for gradient boosting.
TensorFlow: Open-source framework for ML and DL.
PyTorch: Popular DL framework with a dynamic computation graph.
H2O.ai: Scalable platform for ML and AutoML.
Auto-sklearn: AutoML for automating the ML pipeline.

3. Deep Learning Tools
Keras: User-friendly high-level API for building neural networks.
PyTorch: Excellent for research and production in DL.
TensorFlow: Versatile for both research and deployment.
ONNX: Open format for model interoperability.
OpenCV: For image processing and computer vision.
Hugging Face: Focused on natural language processing.

4. Data Engineering Tools
Apache Hadoop: Framework for distributed storage and processing.
Apache Spark: Fast cluster-computing framework.
Kafka: Distributed streaming platform.
Airflow: Workflow automation tool.
Fivetran: ETL tool for data integration.
dbt: Data transformation tool using SQL.

5. Data Visualization Tools
Tableau: Drag-and-drop BI tool for interactive dashboards.
Power BI: Microsoft’s BI platform for data analysis and visualization.
Matplotlib & Seaborn: Python libraries for static and interactive plots.
Plotly: Interactive plotting library with Dash for web apps.
D3.js: JavaScript library for creating dynamic web visualizations.

6. Cloud Platforms
AWS: Services like SageMaker for ML model building.
Google Cloud Platform (GCP): Tools like BigQuery and AutoML.
Microsoft Azure: Azure ML Studio for ML workflows.
IBM Watson: AI platform for custom model development.

7. Version Control and Collaboration Tools
Git: Version control system.
GitHub/GitLab: Platforms for code sharing and collaboration.
Bitbucket: Version control for teams.

8. Other Essential Tools

Docker: For containerizing applications.
Kubernetes: Orchestration of containerized applications.
MLflow: Experiment tracking and deployment.
Weights & Biases (W&B): Experiment tracking and collaboration.
Pandas Profiling: Automated data profiling.
BigQuery/Athena: Serverless data warehousing tools.
Mastering these tools will ensure you are well-equipped to handle various challenges across the AI lifecycle.

#artificialintelligence
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An Artificial Neuron Network (ANN), popularly known as Neural Network is a computational model based on the structure and functions of biological neural networks. It is like an artificial human nervous system for receiving, processing, and transmitting information in terms of Computer Science.

Basically, there are 3 different layers in a neural network :

Input Layer (All the inputs are fed in the model through this layer)

Hidden Layers (There can be more than one hidden layers which are used for processing the inputs received from the input layers)

Output Layer (The data after processing is made available at the output layer)

Graph data can be used with a lot of learning tasks contain a lot rich relation data among elements. For example, modeling physics system, predicting protein interface, and classifying diseases require that a model learns from graph inputs. Graph reasoning models can also be used for learning from non-structural data like texts and images and reasoning on extracted structures.
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Top Bayesian Algorithms and Methods:

- Naive Bayes.
- Averages one-dependence estimators.
- Bayesian belief networks.
- Gaussian naive Bayes.
- Multinomial naive Bayes.
- Bayesian networks.
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What kind of problems neural nets can solve?

Neural nets are good at solving non-linear problems. Some good examples are problems that are relatively easy for humans (because of experience, intuition, understanding, etc), but difficult for traditional regression models: speech recognition, handwriting recognition, image identification, etc.
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AI Engineer

Deep Learning: Neural networks, CNNs, RNNs, transformers.
Programming: Python, TensorFlow, PyTorch, Keras.
NLP: NLTK, SpaCy, Hugging Face.
Computer Vision: OpenCV techniques.
Reinforcement Learning: RL algorithms and applications.
LLMs and Transformers: Advanced language models.
LangChain and RAG: Retrieval-augmented generation techniques.
Vector Databases: Managing embeddings and vectors.
AI Ethics: Ethical considerations and bias in AI.
R&D: Implementing AI research papers.
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Hard Pill To Swallow: πŸ’Š

Robots aren’t stealing your future - they’re taking the boring jobs. 

Meanwhile:

- Some YouTuber made six figures sharing what she loves. 
- A teen's random app idea just got funded.
- My friend quit banking to teach coding - he's killing it.

Here’s the thing:

Hard work still matters. But the rules of the game have changed. 

The real money is in solving problems, spreading ideas, and building cool stuff.

Call it evolution. Call it disruption. Whatever.

Crying about the old world won't help you thrive in the new one.

Create something.✨

#ai
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10 Things you need to become an AI/ML engineer:

1. Framing machine learning problems
2. Weak supervision and active learning
3. Processing, training, deploying, inference pipelines
4. Offline evaluation and testing in production
5. Performing error analysis. Where to work next
6. Distributed training. Data and model parallelism
7. Pruning, quantization, and knowledge distillation
8. Serving predictions. Online and batch inference
9. Monitoring models and data distribution shifts
10. Automatic retraining and evaluation of models
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🧠 ⌨️ 8 Essential ChatGPT Prompts for Python
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