Google, Harvard, and even OpenAI are offering FREE Generative AI courses (no payment required) π
Here are 8 FREE courses to master AI in 2024:
1. Google AI Courses
5 courses covering generative AI from the ground up
https://www.cloudskillsboost.google/paths/118
2. Microsoft AI Course
Basics of AI, neural networks, and deep learning
https://microsoft.github.io/AI-For-Beginners/
3. Introduction to AI with Python (Harvard)
7-week course exploring AI concepts and algorithms
https://www.edx.org/learn/artificial-intelligence/harvard-university-cs50-s-introduction-to-artificial-intelligence-with-python
4. ChatGPT Prompt Engineering for Devs (OpenAI & DeepLearning)
Best practices and hands-on prompting experience
https://www.deeplearning.ai/short-courses/chatgpt-prompt-engineering-for-developers/
5. LLMOps (Google Cloud & DeepLearning)
Learn the LLMOps pipeline and deploy custom LLMs
https://www.deeplearning.ai/short-courses/llmops/
Here are 8 FREE courses to master AI in 2024:
1. Google AI Courses
5 courses covering generative AI from the ground up
https://www.cloudskillsboost.google/paths/118
2. Microsoft AI Course
Basics of AI, neural networks, and deep learning
https://microsoft.github.io/AI-For-Beginners/
3. Introduction to AI with Python (Harvard)
7-week course exploring AI concepts and algorithms
https://www.edx.org/learn/artificial-intelligence/harvard-university-cs50-s-introduction-to-artificial-intelligence-with-python
4. ChatGPT Prompt Engineering for Devs (OpenAI & DeepLearning)
Best practices and hands-on prompting experience
https://www.deeplearning.ai/short-courses/chatgpt-prompt-engineering-for-developers/
5. LLMOps (Google Cloud & DeepLearning)
Learn the LLMOps pipeline and deploy custom LLMs
https://www.deeplearning.ai/short-courses/llmops/
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π° 7.4 LPA Average Package
π 41 LPA Highest Package
π€ 500+ Hiring Partners
Registration link: https://tracking.acciojob.com/g/PUfdDxgHR
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Top 7 Open-Source LLMs in 2025
1οΈβ£ DeepSeek R1
An open-source reasoning model excelling in logic, math, and decision-making.
2οΈβ£ Qwen2.5-72B
Alibabaβs 72B LLM optimized for coding, multilingual tasks, and structured data.
3οΈβ£ Llama 3.3
Metaβs multilingual LLM with strong dialogue, reasoning, and 128K context.
4οΈβ£ Mistral-Large
A 123B model excelling in reasoning, coding, and high factual accuracy.
5οΈβ£ Llama-3.1-70B
A robust instruction-tuned model for research, reasoning, and enterprise use.
6οΈβ£ Phi-4
Microsoftβs efficient small-scale model for programming and logical reasoning.
7οΈβ£ Gemma-2-9b-it
Googleβs lightweight LLM for reasoning, summarization, and Q&A.
#llm
1οΈβ£ DeepSeek R1
An open-source reasoning model excelling in logic, math, and decision-making.
2οΈβ£ Qwen2.5-72B
Alibabaβs 72B LLM optimized for coding, multilingual tasks, and structured data.
3οΈβ£ Llama 3.3
Metaβs multilingual LLM with strong dialogue, reasoning, and 128K context.
4οΈβ£ Mistral-Large
A 123B model excelling in reasoning, coding, and high factual accuracy.
5οΈβ£ Llama-3.1-70B
A robust instruction-tuned model for research, reasoning, and enterprise use.
6οΈβ£ Phi-4
Microsoftβs efficient small-scale model for programming and logical reasoning.
7οΈβ£ Gemma-2-9b-it
Googleβs lightweight LLM for reasoning, summarization, and Q&A.
#llm
β€4π2
π A collection of the good Gen AI free courses
πΉ Generative artificial intelligence
1οΈβ£ Generative AI for Beginners course : building generative artificial intelligence apps.
2οΈβ£ Generative AI Fundamentals course : getting to know the basic principles of generative artificial intelligence.
3οΈβ£ Intro to Gen AI course : from learning large language models to understanding the principles of responsible artificial intelligence.
4οΈβ£ Generative AI with LLMs course : Learn business applications of artificial intelligence with AWS experts in a practical way.
5οΈβ£ Generative AI for Everyone course : This course tells you what generative artificial intelligence is, how it works, and what uses and limitations it has.
πΉ Generative artificial intelligence
1οΈβ£ Generative AI for Beginners course : building generative artificial intelligence apps.
2οΈβ£ Generative AI Fundamentals course : getting to know the basic principles of generative artificial intelligence.
3οΈβ£ Intro to Gen AI course : from learning large language models to understanding the principles of responsible artificial intelligence.
4οΈβ£ Generative AI with LLMs course : Learn business applications of artificial intelligence with AWS experts in a practical way.
5οΈβ£ Generative AI for Everyone course : This course tells you what generative artificial intelligence is, how it works, and what uses and limitations it has.
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βΊοΈ 7 Free AI Courses for High-Paying Careers
πΉ Build Your First Chatbot Using IBM :- Course Link Click Here
Create AI chatbots with IBM watsonx and NLP basics.
πΉ DeepMind x UCL | Deep Learning :- Course Link Click Here
Learn Deep Learning fundamentals from DeepMind experts.
πΉ Machine Learning Crash Course :- Course Link Click Here
Google's hands-on intro to machine learning.
πΉ Neural networks:- Course Link Click Here
Understand neural networks and their AI applications.
πΉ Applied Machine Learning in Python:- Course Link Click Here
Practical ML techniques using scikit-learn.
πΉ Machine Learning Specialization:- Course Link Click Here
Stanford ML fundamentals course.
πΉ Computer Vision and Image Processing:- Course Link Click Here
Hands-on computer vision with Python & OpenCV.
π Bonus: π΄ Build an AI Agent in NEXT.JS 15!
Learn to integrate LangChain, Clerk, Convex, TS & IBM in AI-powered apps. - Video Link
πΉ Build Your First Chatbot Using IBM :- Course Link Click Here
Create AI chatbots with IBM watsonx and NLP basics.
πΉ DeepMind x UCL | Deep Learning :- Course Link Click Here
Learn Deep Learning fundamentals from DeepMind experts.
πΉ Machine Learning Crash Course :- Course Link Click Here
Google's hands-on intro to machine learning.
πΉ Neural networks:- Course Link Click Here
Understand neural networks and their AI applications.
πΉ Applied Machine Learning in Python:- Course Link Click Here
Practical ML techniques using scikit-learn.
πΉ Machine Learning Specialization:- Course Link Click Here
Stanford ML fundamentals course.
πΉ Computer Vision and Image Processing:- Course Link Click Here
Hands-on computer vision with Python & OpenCV.
π Bonus: π΄ Build an AI Agent in NEXT.JS 15!
Learn to integrate LangChain, Clerk, Convex, TS & IBM in AI-powered apps. - Video Link
π7
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
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
π2
Data science is a multidisciplinary field that combines techniques from statistics, computer science, and domain-specific knowledge to extract insights and knowledge from data. Here are some essential concepts in data science:
1. Data Collection: The process of gathering data from various sources, such as databases, files, sensors, and APIs.
2. Data Cleaning: The process of identifying and correcting errors, missing values, and inconsistencies in the data.
3. Data Exploration: The process of summarizing and visualizing the data to understand its characteristics and relationships.
4. Data Preprocessing: The process of transforming and preparing the data for analysis, including feature selection, normalization, and encoding.
5. Machine Learning: A subset of artificial intelligence that uses algorithms to learn patterns and make predictions from data.
6. Statistical Analysis: The use of statistical methods to analyze and interpret data, including hypothesis testing, regression analysis, and clustering.
7. Data Visualization: The graphical representation of data to communicate insights and findings effectively.
8. Model Evaluation: The process of assessing the performance of a predictive model using metrics such as accuracy, precision, recall, and F1 score.
9. Feature Engineering: The process of creating new features or transforming existing features to improve the performance of machine learning models.
10. Big Data: The term used to describe large and complex datasets that require specialized tools and techniques for analysis.
These concepts are foundational to the practice of data science and are essential for extracting valuable insights from data.
Join for more: https://t.me/datasciencefun
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1. Data Collection: The process of gathering data from various sources, such as databases, files, sensors, and APIs.
2. Data Cleaning: The process of identifying and correcting errors, missing values, and inconsistencies in the data.
3. Data Exploration: The process of summarizing and visualizing the data to understand its characteristics and relationships.
4. Data Preprocessing: The process of transforming and preparing the data for analysis, including feature selection, normalization, and encoding.
5. Machine Learning: A subset of artificial intelligence that uses algorithms to learn patterns and make predictions from data.
6. Statistical Analysis: The use of statistical methods to analyze and interpret data, including hypothesis testing, regression analysis, and clustering.
7. Data Visualization: The graphical representation of data to communicate insights and findings effectively.
8. Model Evaluation: The process of assessing the performance of a predictive model using metrics such as accuracy, precision, recall, and F1 score.
9. Feature Engineering: The process of creating new features or transforming existing features to improve the performance of machine learning models.
10. Big Data: The term used to describe large and complex datasets that require specialized tools and techniques for analysis.
These concepts are foundational to the practice of data science and are essential for extracting valuable insights from data.
Join for more: https://t.me/datasciencefun
ENJOY LEARNING ππ
π5β€2
π Mistral AI releases Mistral Small 3.1
It outperforms comparable models like Gemma 3 and GPT-4o mini
- It builds upon Mistral Small 3 with improved text performance
- Supports multimodal understanding capabilities
- It has an expanded context window of up to 128k tokens
- Achieves inference speeds of 150 tokens per second
It is described as the first open-source model to surpass leading small proprietary models in text, multimodal, multilingual processing, long-context handling, low latency, and cost efficiency.
It outperforms comparable models like Gemma 3 and GPT-4o mini
- It builds upon Mistral Small 3 with improved text performance
- Supports multimodal understanding capabilities
- It has an expanded context window of up to 128k tokens
- Achieves inference speeds of 150 tokens per second
It is described as the first open-source model to surpass leading small proprietary models in text, multimodal, multilingual processing, long-context handling, low latency, and cost efficiency.
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