For those who feel like they're not learning much and feeling demotivated. You should definitely read these lines from one of the book by Andrew Ng π
No one can cram everything they need to know over a weekend or even a month. Everyone I
know whoβs great at machine learning is a lifelong learner. Given how quickly our field is changing,
thereβs little choice but to keep learning if you want to keep up.
How can you maintain a steady pace of learning for years? If you can cultivate the habit of
learning a little bit every week, you can make significant progress with what feels like less effort.
Everyday it gets easier but you need to do it everyday β€οΈ
No one can cram everything they need to know over a weekend or even a month. Everyone I
know whoβs great at machine learning is a lifelong learner. Given how quickly our field is changing,
thereβs little choice but to keep learning if you want to keep up.
How can you maintain a steady pace of learning for years? If you can cultivate the habit of
learning a little bit every week, you can make significant progress with what feels like less effort.
Everyday it gets easier but you need to do it everyday β€οΈ
π18β€12π₯2π₯°1
5 Must-Learn Programming Languages for AI Careers in India
ππ
https://datasimplifier.com/programming-languages-for-ai-careers/
ππ
https://datasimplifier.com/programming-languages-for-ai-careers/
π7β€2π₯2
Software Engineers vs AI Engineers: π
Software engineers are often shocked when they learn of AI engineers' salaries. There are two reasons for this surprise.
1. The total compensation for AI engineers is jaw-dropping. You can check it out at AIPaygrad.es, which has manually verified data for AI engineers. The median overall compensation for a βNoviceβ is $328,350/year.
2. AI engineers are no smarter than software engineers. You figure this out only after a friend or acquaintance upskills and finds a lucrative AI job.
The biggest difference between Software and AI engineers is the demand for such roles. One role is declining, and the other is reaching stratospheric heights.
Here is an example.
Just last week, we saw an implosion of OpenAI after Sam Altman was unceremoniously removed from his CEO position. About 95% of their AI Engineers threatened to quit in protest. Rumor had it that these 700 engineers had an open job offer from Microsoft. π
Contrast this with the events a few months back. Microsoft laid off 10,000 Software Engineers while setting aside $10B to invest in OpenAI. They cut these jobs despite making stunning profits in 2023.
In conclusion, these events underline a significant shift in the tech industry. For software engineers, it's a call to adapt and possibly upskill in AI, while companies need to balance AI investments with nurturing their current talent. The future of tech hinges on flexibility and continuous learning for everyone involved."
Software engineers are often shocked when they learn of AI engineers' salaries. There are two reasons for this surprise.
1. The total compensation for AI engineers is jaw-dropping. You can check it out at AIPaygrad.es, which has manually verified data for AI engineers. The median overall compensation for a βNoviceβ is $328,350/year.
2. AI engineers are no smarter than software engineers. You figure this out only after a friend or acquaintance upskills and finds a lucrative AI job.
The biggest difference between Software and AI engineers is the demand for such roles. One role is declining, and the other is reaching stratospheric heights.
Here is an example.
Just last week, we saw an implosion of OpenAI after Sam Altman was unceremoniously removed from his CEO position. About 95% of their AI Engineers threatened to quit in protest. Rumor had it that these 700 engineers had an open job offer from Microsoft. π
Contrast this with the events a few months back. Microsoft laid off 10,000 Software Engineers while setting aside $10B to invest in OpenAI. They cut these jobs despite making stunning profits in 2023.
In conclusion, these events underline a significant shift in the tech industry. For software engineers, it's a call to adapt and possibly upskill in AI, while companies need to balance AI investments with nurturing their current talent. The future of tech hinges on flexibility and continuous learning for everyone involved."
π15β€5π1
π¨ππ¨π¨π π₯π πππ²π¬ $π.π ππ’π₯π₯π’π¨π§ ππ¨ ππ«π’π§π ππππ€ ππ ππ’π¨π§πππ« ππ¨ππ¦ ππ‘ππ³πππ« ππ¨π« πππ£π¨π« ππ ππ«π¨π£πππ
Google has reportedly spent $2.7 billion to rehire AI expert Noam Shazeer, who left the company in 2021 after a disagreement. Shazeer, co-founder of Character.AI, will now help lead Googleβs next major AI initiative, Gemini. This strategic move also includes acquiring Character.AIβs technology, a top AI startup with a $1 billion valuation.
Shazeer had left Google after clashing over his AI chatbot, Meena, which he believed could replace Google Search. His return, along with the acquisition, signals Googleβs commitment to staying at the forefront of AI innovation.
Google has reportedly spent $2.7 billion to rehire AI expert Noam Shazeer, who left the company in 2021 after a disagreement. Shazeer, co-founder of Character.AI, will now help lead Googleβs next major AI initiative, Gemini. This strategic move also includes acquiring Character.AIβs technology, a top AI startup with a $1 billion valuation.
Shazeer had left Google after clashing over his AI chatbot, Meena, which he believed could replace Google Search. His return, along with the acquisition, signals Googleβs commitment to staying at the forefront of AI innovation.
π8π₯5β€2
Future Trends in Artificial Intelligence ππ
1. AI in healthcare: With the increasing demand for personalized medicine and precision healthcare, AI is expected to play a crucial role in analyzing large amounts of medical data to diagnose diseases, develop treatment plans, and predict patient outcomes.
2. AI in finance: AI-powered solutions are expected to revolutionize the financial industry by improving fraud detection, risk assessment, and customer service. Robo-advisors and algorithmic trading are also likely to become more prevalent.
3. AI in autonomous vehicles: The development of self-driving cars and other autonomous vehicles will rely heavily on AI technologies such as computer vision, natural language processing, and machine learning to navigate and make decisions in real-time.
4. AI in manufacturing: The use of AI and robotics in manufacturing processes is expected to increase efficiency, reduce errors, and enable the automation of complex tasks.
5. AI in customer service: Chatbots and virtual assistants powered by AI are anticipated to become more sophisticated, providing personalized and efficient customer support across various industries.
6. AI in agriculture: AI technologies can be used to optimize crop yields, monitor plant health, and automate farming processes, contributing to sustainable and efficient agricultural practices.
7. AI in cybersecurity: As cyber threats continue to evolve, AI-powered solutions will be crucial for detecting and responding to security breaches in real-time, as well as predicting and preventing future attacks.
Like for more β€οΈ
Artificial Intelligence
1. AI in healthcare: With the increasing demand for personalized medicine and precision healthcare, AI is expected to play a crucial role in analyzing large amounts of medical data to diagnose diseases, develop treatment plans, and predict patient outcomes.
2. AI in finance: AI-powered solutions are expected to revolutionize the financial industry by improving fraud detection, risk assessment, and customer service. Robo-advisors and algorithmic trading are also likely to become more prevalent.
3. AI in autonomous vehicles: The development of self-driving cars and other autonomous vehicles will rely heavily on AI technologies such as computer vision, natural language processing, and machine learning to navigate and make decisions in real-time.
4. AI in manufacturing: The use of AI and robotics in manufacturing processes is expected to increase efficiency, reduce errors, and enable the automation of complex tasks.
5. AI in customer service: Chatbots and virtual assistants powered by AI are anticipated to become more sophisticated, providing personalized and efficient customer support across various industries.
6. AI in agriculture: AI technologies can be used to optimize crop yields, monitor plant health, and automate farming processes, contributing to sustainable and efficient agricultural practices.
7. AI in cybersecurity: As cyber threats continue to evolve, AI-powered solutions will be crucial for detecting and responding to security breaches in real-time, as well as predicting and preventing future attacks.
Like for more β€οΈ
Artificial Intelligence
β€15π4
2024 Nobel Physics Prize winners are John Hopfield and Geoff Hinton, Pioneers of AI and ML
#artificialintelligence #ai
#artificialintelligence #ai
β€19π6π4π₯3
πβπ¨ MIMO Neural Network Completely Transforms Characters in Videos
MIMO is a new video-to-video model from Alibaba. It can imitate anyone, anywhere, even during complex movements with object interactions.
With a reference image, MIMO can synthesize animated avatars in just a few minutes.
GitHub and neural network's main page
#artificialintelligence #ai
MIMO is a new video-to-video model from Alibaba. It can imitate anyone, anywhere, even during complex movements with object interactions.
With a reference image, MIMO can synthesize animated avatars in just a few minutes.
GitHub and neural network's main page
#artificialintelligence #ai
β€2
Physicists think AI is physics.
Statisticians think AI is statistics.
Mathematicians think AI is mathematics.
Psychologists think AI is psychology.
Neuroscientists think AI is neuroscience.
And theyβre all right.
Statisticians think AI is statistics.
Mathematicians think AI is mathematics.
Psychologists think AI is psychology.
Neuroscientists think AI is neuroscience.
And theyβre all right.
β€15π₯4π2
Coding Project Ideas with AI ππ
1. Sentiment Analysis Tool: Develop a tool that uses AI to analyze the sentiment of text data, such as social media posts, customer reviews, or news articles. The tool could classify the sentiment as positive, negative, or neutral.
2. Image Recognition App: Create an app that uses AI image recognition algorithms to identify objects, scenes, or people in images. This could be useful for applications like automatic photo tagging or security surveillance.
3. Chatbot Development: Build a chatbot using AI natural language processing techniques to interact with users and provide information or assistance on a specific topic. You could integrate the chatbot into a website or messaging platform.
4. Recommendation System: Develop a recommendation system that uses AI algorithms to suggest products, movies, music, or other items based on user preferences and behavior. This could enhance the user experience on e-commerce platforms or streaming services.
5. Fraud Detection System: Create a fraud detection system that uses AI to analyze patterns and anomalies in financial transactions data. The system could help identify potentially fraudulent activities and prevent financial losses.
6. Health Monitoring App: Build an app that uses AI to monitor health data, such as heart rate, sleep patterns, or activity levels, and provide personalized recommendations for improving health and wellness.
7. Language Translation Tool: Develop a language translation tool that uses AI machine translation algorithms to translate text between different languages accurately and efficiently.
8. Autonomous Driving System: Work on a project to develop an autonomous driving system that uses AI computer vision and sensor data processing to navigate vehicles safely and efficiently on roads.
9. Personalized Content Generator: Create a tool that uses AI natural language generation techniques to generate personalized content, such as articles, emails, or marketing messages tailored to individual preferences.
10. Music Recommendation Engine: Build a music recommendation engine that uses AI algorithms to analyze music preferences and suggest playlists or songs based on user tastes and listening habits.
Join for more: https://t.me/Programming_experts
ENJOY LEARNING ππ
1. Sentiment Analysis Tool: Develop a tool that uses AI to analyze the sentiment of text data, such as social media posts, customer reviews, or news articles. The tool could classify the sentiment as positive, negative, or neutral.
2. Image Recognition App: Create an app that uses AI image recognition algorithms to identify objects, scenes, or people in images. This could be useful for applications like automatic photo tagging or security surveillance.
3. Chatbot Development: Build a chatbot using AI natural language processing techniques to interact with users and provide information or assistance on a specific topic. You could integrate the chatbot into a website or messaging platform.
4. Recommendation System: Develop a recommendation system that uses AI algorithms to suggest products, movies, music, or other items based on user preferences and behavior. This could enhance the user experience on e-commerce platforms or streaming services.
5. Fraud Detection System: Create a fraud detection system that uses AI to analyze patterns and anomalies in financial transactions data. The system could help identify potentially fraudulent activities and prevent financial losses.
6. Health Monitoring App: Build an app that uses AI to monitor health data, such as heart rate, sleep patterns, or activity levels, and provide personalized recommendations for improving health and wellness.
7. Language Translation Tool: Develop a language translation tool that uses AI machine translation algorithms to translate text between different languages accurately and efficiently.
8. Autonomous Driving System: Work on a project to develop an autonomous driving system that uses AI computer vision and sensor data processing to navigate vehicles safely and efficiently on roads.
9. Personalized Content Generator: Create a tool that uses AI natural language generation techniques to generate personalized content, such as articles, emails, or marketing messages tailored to individual preferences.
10. Music Recommendation Engine: Build a music recommendation engine that uses AI algorithms to analyze music preferences and suggest playlists or songs based on user tastes and listening habits.
Join for more: https://t.me/Programming_experts
ENJOY LEARNING ππ
π11β€1
Python AI Roadmap
Stage 1 β Learn Python Basics (Syntax, Data Types)
Stage 2 β Data Handling (Pandas, NumPy)
Stage 3 β Machine Learning (Scikit-Learn, Basic Models)
Stage 4 β Deep Learning (TensorFlow/PyTorch, Neural Networks)
Stage 5 β Build & Train ML Models
Stage 6 β Natural Language Processing (NLTK, spaCy)
Stage 7 β Model Deployment (Flask/FastAPI)
Stage 8 β AI Testing & Optimization
π β Python AI Developer
Stage 1 β Learn Python Basics (Syntax, Data Types)
Stage 2 β Data Handling (Pandas, NumPy)
Stage 3 β Machine Learning (Scikit-Learn, Basic Models)
Stage 4 β Deep Learning (TensorFlow/PyTorch, Neural Networks)
Stage 5 β Build & Train ML Models
Stage 6 β Natural Language Processing (NLTK, spaCy)
Stage 7 β Model Deployment (Flask/FastAPI)
Stage 8 β AI Testing & Optimization
π β Python AI Developer
π18
Python + AI Entrepreneurship Roadmap
Stage 1 β Identify AI Opportunity (Solve Real-World Problems)
Stage 2 β Build Python/AI Skills (ML, Deep Learning)
Stage 3 β Design AI Product (Prototyping with Flask/TensorFlow)
Stage 4 β Validate AI Model (Data Collection & Training)
Stage 5 β Build MVP (Deploy AI App)
Stage 6 β Secure Funding (Pitch to Investors)
Stage 7 β Marketing & Growth (AI-Driven Campaigns)
Stage 8 β Scale Product (Optimize & Automate)
π β Python AI Entrepreneur
Stage 1 β Identify AI Opportunity (Solve Real-World Problems)
Stage 2 β Build Python/AI Skills (ML, Deep Learning)
Stage 3 β Design AI Product (Prototyping with Flask/TensorFlow)
Stage 4 β Validate AI Model (Data Collection & Training)
Stage 5 β Build MVP (Deploy AI App)
Stage 6 β Secure Funding (Pitch to Investors)
Stage 7 β Marketing & Growth (AI-Driven Campaigns)
Stage 8 β Scale Product (Optimize & Automate)
π β Python AI Entrepreneur
π9β€1
Uber used RAG and AI agents to build its in-house Text-to-SQL, saving 140,000 hours annually in query writing time. π
Hereβs how they built the system end-to-end:
The system is called QueryGPT and is built on top of multiple agents each handling a part of the pipeline.
1. First, the Intent Agent interprets user intent and figures out the domain workspace which is relevant to answer the question (e.g., Mobility, Billing, etc).
2. The Table Agent then selects suitable tables using an LLM, which users can also review and adjust.
3. Next, the Column Prune Agent filters out any unnecessary columns from large tables using RAG. This helps the schema fit within token limits.
4. Finally, QueryGPT uses Few-Shot Prompting with selected SQL samples and schemas to generate the query.
QueryGPT reduced query authoring time from 10 minutes to 3, saving over 140,000 hours annually!
Link to the full article
Hereβs how they built the system end-to-end:
The system is called QueryGPT and is built on top of multiple agents each handling a part of the pipeline.
1. First, the Intent Agent interprets user intent and figures out the domain workspace which is relevant to answer the question (e.g., Mobility, Billing, etc).
2. The Table Agent then selects suitable tables using an LLM, which users can also review and adjust.
3. Next, the Column Prune Agent filters out any unnecessary columns from large tables using RAG. This helps the schema fit within token limits.
4. Finally, QueryGPT uses Few-Shot Prompting with selected SQL samples and schemas to generate the query.
QueryGPT reduced query authoring time from 10 minutes to 3, saving over 140,000 hours annually!
Link to the full article
β€8π1
Generative AI Free Courses by Google, Nvidia
https://cloud.google.com/blog/topics/training-certifications/new-generative-ai-trainings-from-google-cloud
https://learn.nvidia.com/en-us/training/self-paced-courses
https://www.nvidia.com/en-us/learn/learning-path/generative-ai-llm/
Like for more
#ai
https://cloud.google.com/blog/topics/training-certifications/new-generative-ai-trainings-from-google-cloud
https://learn.nvidia.com/en-us/training/self-paced-courses
https://www.nvidia.com/en-us/learn/learning-path/generative-ai-llm/
Like for more
#ai
π18
π΄ How to MASTER a programming language using ChatGPT: π
1. Can you provide some tips and best practices for writing clean and efficient code in [lang]?
2. What are some commonly asked interview questions about [lang]?
3. What are the advanced topics to learn in [lang]? Explain them to me with code examples.
4. Give me some practice questions along with solutions for [concept] in [lang].
5. What are some common mistakes that people make in [lang]?
6. Can you provide some tips and best practices for writing clean and efficient code in [lang]?
7. How can I optimize the performance of my code in [lang]?
8. What are some coding exercises or mini-projects I can do regularly to reinforce my understanding and application of [lang] concepts?
9. Are there any specific tools or frameworks that are commonly used in [lang]? How can I learn and utilize them effectively?
10. What are the debugging techniques and tools available in [lang] to help troubleshoot and fix code issues?
11. Are there any coding conventions or style guidelines that I should follow when writing code in [lang]?
12. How can I effectively collaborate with other developers in [lang] on a project?
13. What are some common data structures and algorithms that I should be familiar with in [lang]?
How to Create Resume using ChatGPT ππ
https://t.me/free4unow_backup/687
Master DSA ππ
https://t.me/dsabooks/156
Like for more β€οΈ
#ai
1. Can you provide some tips and best practices for writing clean and efficient code in [lang]?
2. What are some commonly asked interview questions about [lang]?
3. What are the advanced topics to learn in [lang]? Explain them to me with code examples.
4. Give me some practice questions along with solutions for [concept] in [lang].
5. What are some common mistakes that people make in [lang]?
6. Can you provide some tips and best practices for writing clean and efficient code in [lang]?
7. How can I optimize the performance of my code in [lang]?
8. What are some coding exercises or mini-projects I can do regularly to reinforce my understanding and application of [lang] concepts?
9. Are there any specific tools or frameworks that are commonly used in [lang]? How can I learn and utilize them effectively?
10. What are the debugging techniques and tools available in [lang] to help troubleshoot and fix code issues?
11. Are there any coding conventions or style guidelines that I should follow when writing code in [lang]?
12. How can I effectively collaborate with other developers in [lang] on a project?
13. What are some common data structures and algorithms that I should be familiar with in [lang]?
How to Create Resume using ChatGPT ππ
https://t.me/free4unow_backup/687
Master DSA ππ
https://t.me/dsabooks/156
Like for more β€οΈ
#ai
π13π1
Powerful Impacts of AI on the Job Market You Need to Know
Artificial Intelligence is not a recent innovation. Even though its current application is highly groundbreaking, It has been transforming jobs for decades. In what ways did AI transform jobs in the early years?
Initially, Artificial Intelligence and machine learning applied automation only to repetitive, manual tasks in industries such as manufacturing and retail.
However, with the increasing maturity of AI, the tasks it performed and took over became progressively more complex, shifting from finance and other healthcare-related sectors where human judgment came into the picture.
....read full article
Artificial Intelligence is not a recent innovation. Even though its current application is highly groundbreaking, It has been transforming jobs for decades. In what ways did AI transform jobs in the early years?
Initially, Artificial Intelligence and machine learning applied automation only to repetitive, manual tasks in industries such as manufacturing and retail.
However, with the increasing maturity of AI, the tasks it performed and took over became progressively more complex, shifting from finance and other healthcare-related sectors where human judgment came into the picture.
....read full article
π10
You can use ChatGPT to make money online.
Here are 10 prompts by ChatGPT
1. Develop Email Newsletters:
Make interesting email newsletters to keep audience updated and engaged.
Prompt: "I run a local community news website. Can you help me create a weekly email newsletter that highlights key local events, stories, and updates in a compelling way?"
2. Create Online Course Material:
Make detailed and educational online course content.
Prompt: "I'm creating an online course about basic programming for beginners. Can you help me generate a syllabus and detailed lesson plans that cover fundamental concepts in an easy-to-understand manner?"
Read more......
Here are 10 prompts by ChatGPT
1. Develop Email Newsletters:
Make interesting email newsletters to keep audience updated and engaged.
Prompt: "I run a local community news website. Can you help me create a weekly email newsletter that highlights key local events, stories, and updates in a compelling way?"
2. Create Online Course Material:
Make detailed and educational online course content.
Prompt: "I'm creating an online course about basic programming for beginners. Can you help me generate a syllabus and detailed lesson plans that cover fundamental concepts in an easy-to-understand manner?"
Read more......
π9β€1
Machine Learning with Decision Trees and Random Forest π.pdf
1.8 MB
Machine Learning with Decision Trees and Random Forest π.pdf
π8