We are planning to arrange the 1st ever offline meetup of the Ai India Community, where will you recommend?
Anonymous Poll
18%
Pune
27%
Benglore
20%
Hyderabad
15%
Mumbai
20%
Delhi
๐39โค4๐ฅ3
Data scientists spend 80% of their time working on the data.
Books spend 80% of their time talking about algorithms.
Today, there's a large gap between academia and reality. Between what they say is important, and what really is.
Better data is better than better models.
Books spend 80% of their time talking about algorithms.
Today, there's a large gap between academia and reality. Between what they say is important, and what really is.
Better data is better than better models.
โค71๐45
Artificial Intelligence Bootcamp by IIT & COEP Alumni ๐
+90 hrs sessions.
+26 Weeks.
+19 Tools & Technology.
+9 Case studies.
+9 Projects.
+9 Skills.
+7 Domains.
+13 Homework Assignments.
Duration: 6 months
๐Remote and weekend sessions.
๐Starting from basics.
๐Get Certificate
For registrations: https://aiindia.ai/ai-bootcamp/
To attend 1st session: https://chat.whatsapp.com/FUK3Vy89XJrHbuR5b5ApQP
+90 hrs sessions.
+26 Weeks.
+19 Tools & Technology.
+9 Case studies.
+9 Projects.
+9 Skills.
+7 Domains.
+13 Homework Assignments.
Duration: 6 months
๐Remote and weekend sessions.
๐Starting from basics.
๐Get Certificate
For registrations: https://aiindia.ai/ai-bootcamp/
To attend 1st session: https://chat.whatsapp.com/FUK3Vy89XJrHbuR5b5ApQP
๐31โค8
Ai advancement in 2023
January: AI progress in medicine & healthcare; OpenAI's & Microsoft deal
February: ChatGPT's success; Google's Bard A.I.; Microsoft's new Bing with ChatGPT
March: Adobe's Firefly; Canva's AI tools; OpenAI's GPT-4 & new APIs
April: ChatGPT with Boston Dynamics' robots; My AI on Snapchat
May: Advances in humanoid robots; FDA approval for Neuralink; creative AI developments
June: Apple's Vision Pro AR headset; OpenAI's non-U.S. office plans; AI in drug discovery
August: ChatGPT's 'Custom Instructions'; Google's AI Genesis; AI copyright discussions
September: OpenAI's web browsing in ChatGPT; Midjourney & Stability AI's creative tools; AI enhancements in YouTube & Amazon
October: ElevenLabs' AI translation technology;Dawn Phase 1
November: xAI's Grok launch; OpenAI's Assistants API, GPT-4 Turbo; Meta's AI division changes; AI Safety Summit
December: Google's Gemini release; AMD's AI hardware advancements; EU's AI Act
No doubt about 2023 was the year of Artificial Intelligence.
January: AI progress in medicine & healthcare; OpenAI's & Microsoft deal
February: ChatGPT's success; Google's Bard A.I.; Microsoft's new Bing with ChatGPT
March: Adobe's Firefly; Canva's AI tools; OpenAI's GPT-4 & new APIs
April: ChatGPT with Boston Dynamics' robots; My AI on Snapchat
May: Advances in humanoid robots; FDA approval for Neuralink; creative AI developments
June: Apple's Vision Pro AR headset; OpenAI's non-U.S. office plans; AI in drug discovery
August: ChatGPT's 'Custom Instructions'; Google's AI Genesis; AI copyright discussions
September: OpenAI's web browsing in ChatGPT; Midjourney & Stability AI's creative tools; AI enhancements in YouTube & Amazon
October: ElevenLabs' AI translation technology;Dawn Phase 1
November: xAI's Grok launch; OpenAI's Assistants API, GPT-4 Turbo; Meta's AI division changes; AI Safety Summit
December: Google's Gemini release; AMD's AI hardware advancements; EU's AI Act
No doubt about 2023 was the year of Artificial Intelligence.
โค42๐33๐ฅ11
Dear Community,
As the year draws to a close, I would like to express gratitude for being a part of the Ai India community dedicated to expanding AI education.
My prediction for 2024๐ก
1. 1B models will outperform 70B models.
2. Models will be deployed on CPUs for almost free. Not API services.
3. Data quality will yield the next 10x boost in performance.
4. A combination of open source models will beat the best private models.
5. Compilers will unlock at least 80% speed up in models (both training and inference)
6. Legislation will side with content creators over model developers.
7. Local ML is going to be huge. It will be in part driven by the adoption of Apple Silicon and other innovative hardware, but also on raw CPU and mobile devices
8. In many cases except for the largest of LLMs, local inference will become a viable alternative to hosted inference.
Join WhatsApp Channel ๐
Happy New Year 2024 ๐๐
As the year draws to a close, I would like to express gratitude for being a part of the Ai India community dedicated to expanding AI education.
My prediction for 2024๐ก
1. 1B models will outperform 70B models.
2. Models will be deployed on CPUs for almost free. Not API services.
3. Data quality will yield the next 10x boost in performance.
4. A combination of open source models will beat the best private models.
5. Compilers will unlock at least 80% speed up in models (both training and inference)
6. Legislation will side with content creators over model developers.
7. Local ML is going to be huge. It will be in part driven by the adoption of Apple Silicon and other innovative hardware, but also on raw CPU and mobile devices
8. In many cases except for the largest of LLMs, local inference will become a viable alternative to hosted inference.
Join WhatsApp Channel ๐
Happy New Year 2024 ๐๐
๐36โค16๐ฅ7
Here are 300 hours of curated courses focused on Machine Learning Engineering.
There are 15 courses.
From beginner to advanced.
From Google.
For free.
Some of the topics they cover:
โข Fundamentals of Machine Learning
โข Feature Engineering
โข Production Machine Learning Systems
โข Computer Vision and Natural Language
โข Recommendation Systems
โข MLOps
โข TensorFlow, Google Cloud, VertexAI
The courses are well structured. They aren't just links to YouTube videos. You have to join the course, and they have an interface that takes you through every module.
This is good content. And it's free. https://www.cloudskillsboost.google/paths/17
There are 15 courses.
From beginner to advanced.
From Google.
For free.
Some of the topics they cover:
โข Fundamentals of Machine Learning
โข Feature Engineering
โข Production Machine Learning Systems
โข Computer Vision and Natural Language
โข Recommendation Systems
โข MLOps
โข TensorFlow, Google Cloud, VertexAI
The courses are well structured. They aren't just links to YouTube videos. You have to join the course, and they have an interface that takes you through every module.
This is good content. And it's free. https://www.cloudskillsboost.google/paths/17
๐69โค25๐ฅ8
I teach hard-core Machine Learning Engineering. ๐
Artificial Intelligence changed my life forever. There has never been a better time to build a career that will set you apart for the next 20-30 years.
I teach a program where I show people how to build Machine Learning systems.
My program is not an online course. It's not a group of videos you watch and a PDF you read.
My program is a 90-hour live class with an additional 13 Assignments and 9 projects material. It's tough.
While everyone wants to know what will happen in the next ten years, we won't waste time trying to predict that. Instead, we focus on what never changes.
The program is about the fundamental principles of building machine learning systems. It's about timeless ideas that will help you understand the future, whatever that is.
My guarantee is simple: you'll learn more than you've ever done before.
โข Cohort #1 starts this Saturday on 13th January
You can join here: www.Aiindia.ai/bootcamp.
Some of the most frequently asked questions:
How much do I have to pay?
The cost to join is a one-time payment of โน30k and for students โน10k There are no recurrent payments. Once you join, you get lifetime access to all materials and a community of engineers who went through the program.
Is every class live, or can I watch them offline?
Classes are live, but you can watch the recordings at your own pace.
What are the prerequisites to join?
Ideally, you don't need any prerequisite to join our program only required is your dedication and commitment. You don't need a machine learning experience to learn.
What are some of the topics you'll cover?
We cover a lot, but here are 10 of the most important topics we'll discuss in class:
1. Framing machine learning problems
2. How to fine tune models and transfer 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. Model deployment. Online and batch inference
9. LLMs basics with training.
10. Python programming from scratch.
Here is the link to join: www.aiindia.ai/bootcamp
Artificial Intelligence changed my life forever. There has never been a better time to build a career that will set you apart for the next 20-30 years.
I teach a program where I show people how to build Machine Learning systems.
My program is not an online course. It's not a group of videos you watch and a PDF you read.
My program is a 90-hour live class with an additional 13 Assignments and 9 projects material. It's tough.
While everyone wants to know what will happen in the next ten years, we won't waste time trying to predict that. Instead, we focus on what never changes.
The program is about the fundamental principles of building machine learning systems. It's about timeless ideas that will help you understand the future, whatever that is.
My guarantee is simple: you'll learn more than you've ever done before.
โข Cohort #1 starts this Saturday on 13th January
You can join here: www.Aiindia.ai/bootcamp.
Some of the most frequently asked questions:
How much do I have to pay?
The cost to join is a one-time payment of โน30k and for students โน10k There are no recurrent payments. Once you join, you get lifetime access to all materials and a community of engineers who went through the program.
Is every class live, or can I watch them offline?
Classes are live, but you can watch the recordings at your own pace.
What are the prerequisites to join?
Ideally, you don't need any prerequisite to join our program only required is your dedication and commitment. You don't need a machine learning experience to learn.
What are some of the topics you'll cover?
We cover a lot, but here are 10 of the most important topics we'll discuss in class:
1. Framing machine learning problems
2. How to fine tune models and transfer 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. Model deployment. Online and batch inference
9. LLMs basics with training.
10. Python programming from scratch.
Here is the link to join: www.aiindia.ai/bootcamp
๐38โค13๐ฅ2
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VIEW IN TELEGRAM
Forget Dally2 and Use HidingElephant๐ฅ
Use one of World's Best AI logo Designer Tool, HidingElephant can Quickly turn text prompts into logos, easily convert designs to vectors, and generate multiple concepts from one idea. It's ideal for designers seeking efficient, creative solutions for contests, client work, and team projects.
Check it out at: https://ai.hidingelephant.com/AiCommunity
Sign up to enter a draw for a free ChatGPT-4 premium subscription.
Use one of World's Best AI logo Designer Tool, HidingElephant can Quickly turn text prompts into logos, easily convert designs to vectors, and generate multiple concepts from one idea. It's ideal for designers seeking efficient, creative solutions for contests, client work, and team projects.
Check it out at: https://ai.hidingelephant.com/AiCommunity
Sign up to enter a draw for a free ChatGPT-4 premium subscription.
๐31๐ฅ2โค1
This is a class from Harvard University:
"Introduction to Data Science with Python."
You can take this class for free. If you want the certificate, you can pay $299 for it. You should be familiar with Python to take this course.
The course is for beginners. It's for those who want to build a fundamental understanding of machine learning and artificial intelligence.
The course will cover some of these topics:
โข Generalization and overfitting
โข Model building, regularization, and evaluation
โข Linear and logistic regression models
โข k-Nearest Neighbor
โข Scikit-Learn, NumPy, Pandas, and Matplotlib
This course is perfect if you are a software developer with experience writing Python code and want to start with Machine Learning.
Link: https://pll.harvard.edu/course/introduction-data-science-python
"Introduction to Data Science with Python."
You can take this class for free. If you want the certificate, you can pay $299 for it. You should be familiar with Python to take this course.
The course is for beginners. It's for those who want to build a fundamental understanding of machine learning and artificial intelligence.
The course will cover some of these topics:
โข Generalization and overfitting
โข Model building, regularization, and evaluation
โข Linear and logistic regression models
โข k-Nearest Neighbor
โข Scikit-Learn, NumPy, Pandas, and Matplotlib
This course is perfect if you are a software developer with experience writing Python code and want to start with Machine Learning.
Link: https://pll.harvard.edu/course/introduction-data-science-python
๐43โค12๐ฅ1
Excited to share with you some FREE but very useful NEW AI Courses!
These are great for anyone who wants to dig deeper into the topic this year.
๐ญ. Prompt Engineering Basics: https://explore.skillbuilder.aws/learn/course/external/view/elearning/17763/foundations-of-prompt-engineering
๐ฎ. ChatGPT Prompts Mastery: https://www.deeplearning.ai/short-courses/chatgpt-prompt-engineering-for-developers/
๐ฏ. Intro to Generative AI: https://www.cloudskillsboost.google/course_templates/536
๐ฐ. AI Introduction by Harvard: https://pll.harvard.edu/course/cs50s-introduction-artificial-intelligence-python/2023-05
๐ฑ. Microsoft GenAI Basics: https://www.linkedin.com/learning/what-is-generative-ai/generative-ai-is-a-tool-in-service-of-humanity
๐ฒ. Prompt Engineering Pro: https://learnprompting.org
๐ณ. Google's Ethical AI: https://www.cloudskillsboost.google/course_templates/554
๐ด. Harvard Machine Learning: https://pll.harvard.edu/course/data-science-machine-learning
๐ต. LangChain App Developer: https://www.deeplearning.ai/short-courses/langchain-for-llm-application-development/
๐ญ๐ฌ. Bing Chat Applications: https://www.linkedin.com/learning/streamlining-your-work-with-copilot-formerly-bing-chat-bing-chat-enterprise/put-your-fingers-to-work-chatting-as-a-productivity-tool
๐ญ๐ญ. Generative AI by Microsoft: https://learn.microsoft.com/en-us/training/paths/introduction-generative-ai/
๐ญ๐ฎ. Amazon's AI Strategy: https://explore.skillbuilder.aws/learn/public/learning_plan/view/1909/generative-ai-learning-plan-for-decision-makers
๐ญ๐ฏ. GenAI for Everyone: https://www.deeplearning.ai/courses/generative-ai-for-everyone/
๐ญ๐ฐ. AWS GenAI Foundation: https://www.coursera.org/learn/generative-ai-with-llms
โป๏ธ ๐๐ผ๐ป๐๐:
โข OpenCV Bootcamp: https://opencv.org/university/free-opencv-course/
โข Tensorflow Bootcamp: https://opencv.org/university/free-tensorflow-keras-course/
These are great for anyone who wants to dig deeper into the topic this year.
๐ญ. Prompt Engineering Basics: https://explore.skillbuilder.aws/learn/course/external/view/elearning/17763/foundations-of-prompt-engineering
๐ฎ. ChatGPT Prompts Mastery: https://www.deeplearning.ai/short-courses/chatgpt-prompt-engineering-for-developers/
๐ฏ. Intro to Generative AI: https://www.cloudskillsboost.google/course_templates/536
๐ฐ. AI Introduction by Harvard: https://pll.harvard.edu/course/cs50s-introduction-artificial-intelligence-python/2023-05
๐ฑ. Microsoft GenAI Basics: https://www.linkedin.com/learning/what-is-generative-ai/generative-ai-is-a-tool-in-service-of-humanity
๐ฒ. Prompt Engineering Pro: https://learnprompting.org
๐ณ. Google's Ethical AI: https://www.cloudskillsboost.google/course_templates/554
๐ด. Harvard Machine Learning: https://pll.harvard.edu/course/data-science-machine-learning
๐ต. LangChain App Developer: https://www.deeplearning.ai/short-courses/langchain-for-llm-application-development/
๐ญ๐ฌ. Bing Chat Applications: https://www.linkedin.com/learning/streamlining-your-work-with-copilot-formerly-bing-chat-bing-chat-enterprise/put-your-fingers-to-work-chatting-as-a-productivity-tool
๐ญ๐ญ. Generative AI by Microsoft: https://learn.microsoft.com/en-us/training/paths/introduction-generative-ai/
๐ญ๐ฎ. Amazon's AI Strategy: https://explore.skillbuilder.aws/learn/public/learning_plan/view/1909/generative-ai-learning-plan-for-decision-makers
๐ญ๐ฏ. GenAI for Everyone: https://www.deeplearning.ai/courses/generative-ai-for-everyone/
๐ญ๐ฐ. AWS GenAI Foundation: https://www.coursera.org/learn/generative-ai-with-llms
โป๏ธ ๐๐ผ๐ป๐๐:
โข OpenCV Bootcamp: https://opencv.org/university/free-opencv-course/
โข Tensorflow Bootcamp: https://opencv.org/university/free-tensorflow-keras-course/
AWS Skill Builder
Home - AWS Skill Builder
AWS Skill Builder is an online learning center where you can learn from AWS experts and build cloud skills online. With access to 600+ free courses, certification exam prep, and training that allows you to build practical skills there's something for everyone.
โค48๐44๐ฅ5
StackOverflow is a dinosaur that's going extinct.
I mostly use Copilot, ChatGPT, & Perplexity. I haven't found a single reason to visit StackOverflow anymore.
StackOverflow can't compete, & I don't see how they can stay relevant any longer.
I use Copilot for inline suggestions. As I type, Copilot takes care of the little things. It saves me from dozens of searches every day.
ChatGPT is the workhorse. I use it to solve more complex tasks with my code. Here are some examples:
โข Explain what this code does
โข Simplify it
โข Rewrite it in a more efficient way
โข Rewrite it in a more readable way
โข Replace the use of a library with another
โข Write documentation for it
โข Describe potential edge cases
โข Write unit tests for those edge cases
I use Perplexity to ask questions. Google is broken. If you don't believe me, try Perplexity for a day.
(Google is still king as a navigation tool, I never type a complete URL in my browser)
Modern AI-powered tools are replacing boomer tech.
StackOverflow is dead to me.
I mostly use Copilot, ChatGPT, & Perplexity. I haven't found a single reason to visit StackOverflow anymore.
StackOverflow can't compete, & I don't see how they can stay relevant any longer.
I use Copilot for inline suggestions. As I type, Copilot takes care of the little things. It saves me from dozens of searches every day.
ChatGPT is the workhorse. I use it to solve more complex tasks with my code. Here are some examples:
โข Explain what this code does
โข Simplify it
โข Rewrite it in a more efficient way
โข Rewrite it in a more readable way
โข Replace the use of a library with another
โข Write documentation for it
โข Describe potential edge cases
โข Write unit tests for those edge cases
I use Perplexity to ask questions. Google is broken. If you don't believe me, try Perplexity for a day.
(Google is still king as a navigation tool, I never type a complete URL in my browser)
Modern AI-powered tools are replacing boomer tech.
StackOverflow is dead to me.
๐106โค18๐ฅ12
Now Bard becomes Gemini ๐
Google launches Gemini Ultra, its most powerful LLM yet
๐ Google renames Bard to Gemini, launches paid โGemini Advancedโ with Ultra 1.0
๐ Gemini is the companyโs much-anticipated response to ChatGPT and OpenAIโs GPT-4 model, which was the industry leader to this point.
๐ Based on my early testing, Gemini Ultra matches or exceeds GPT-4โs performance. In particular, thereโs one thing that Gemini Ultra does way better than ChatGPT.
๐ Geminiโs release is Googleโs biggest AI move in at least a year, and Gemini is now ChatGPTโs only true competitor.
๐ On their official launch page, Google provides three examples of the new things Gemini Ultra can do. I decided to test the modelโs performance by trying each of those thing and found that results are really good and promising.
โญ๏ธ I have canceled my OpenAI Premium subscription and now using Gemini's 2-month FREE trialโYES, a free trial is indeed available for two months.
Checkout: https://gemini.google.com/app
To Know more: https://blog.google/products/gemini/bard-gemini-advanced-app/
Google launches Gemini Ultra, its most powerful LLM yet
๐ Google renames Bard to Gemini, launches paid โGemini Advancedโ with Ultra 1.0
๐ Gemini is the companyโs much-anticipated response to ChatGPT and OpenAIโs GPT-4 model, which was the industry leader to this point.
๐ Based on my early testing, Gemini Ultra matches or exceeds GPT-4โs performance. In particular, thereโs one thing that Gemini Ultra does way better than ChatGPT.
๐ Geminiโs release is Googleโs biggest AI move in at least a year, and Gemini is now ChatGPTโs only true competitor.
๐ On their official launch page, Google provides three examples of the new things Gemini Ultra can do. I decided to test the modelโs performance by trying each of those thing and found that results are really good and promising.
โญ๏ธ I have canceled my OpenAI Premium subscription and now using Gemini's 2-month FREE trialโYES, a free trial is indeed available for two months.
Checkout: https://gemini.google.com/app
To Know more: https://blog.google/products/gemini/bard-gemini-advanced-app/
๐45โค26๐ฅ2๐ฏ1
โญ๏ธ A simple guide for those who want to learn machine learning:
These are 3 online courses you can take in order. I also have a bonus for those who need a little bit more.
First, start with freeCodeCamp's Python course.
It's a free 9-hour course. You'll find it on their YouTube channel. Search for "Python Tutorial for Beginners (with mini-projects)."
Second, cover the basics of machine learning.
Take Google's Machine Learning Crash Course. It's free, and you'll find it online.
This course starts from scratch, and it's focused on beginners. It's an excellent choice for those who want to take things slow.
There are two alternatives that I recommend to people who want to take it even slower:
โข Intro to Machine Learning
โข Intermediate Machine Learning
These are tutorials from Kaggle. These are short courses, but you will learn a ton from them.
Finally, take the Machine Learning Specialization on Coursera.
Completing this specialization will take several weeks. It's not free, but nothing that matters is.
Bonus for those who need a bigger challenge:
Explore GitHub projects, read top research papers in the field. Remember real world learning is always important.
In summary: ๐
1. Python Tutorial for Beginners (freeCodeCamp)
2. Google's Machine Learning Crash Course
3. Coursera's Machine Learning Specialization
But what about the math? ๐
Don't rush it. You'll have plenty of opportunities to learn mathematics. Start building and pick the math as you go.
People always ask me about the timeline: How long will this take them?
My answer is always the same: how long do you have? This will take all of it.
Happy Machine Learning! ๐ค
These are 3 online courses you can take in order. I also have a bonus for those who need a little bit more.
First, start with freeCodeCamp's Python course.
It's a free 9-hour course. You'll find it on their YouTube channel. Search for "Python Tutorial for Beginners (with mini-projects)."
Second, cover the basics of machine learning.
Take Google's Machine Learning Crash Course. It's free, and you'll find it online.
This course starts from scratch, and it's focused on beginners. It's an excellent choice for those who want to take things slow.
There are two alternatives that I recommend to people who want to take it even slower:
โข Intro to Machine Learning
โข Intermediate Machine Learning
These are tutorials from Kaggle. These are short courses, but you will learn a ton from them.
Finally, take the Machine Learning Specialization on Coursera.
Completing this specialization will take several weeks. It's not free, but nothing that matters is.
Bonus for those who need a bigger challenge:
Explore GitHub projects, read top research papers in the field. Remember real world learning is always important.
In summary: ๐
1. Python Tutorial for Beginners (freeCodeCamp)
2. Google's Machine Learning Crash Course
3. Coursera's Machine Learning Specialization
But what about the math? ๐
Don't rush it. You'll have plenty of opportunities to learn mathematics. Start building and pick the math as you go.
People always ask me about the timeline: How long will this take them?
My answer is always the same: how long do you have? This will take all of it.
Happy Machine Learning! ๐ค
โค71๐59๐ฅ12
This weekโs AI news:
๐ฅ All about OpenAIโs Sora.
๐คYolov9 is out
๐ฅ๏ธ Huawei's AI chips gain traction.
๐ค Google Gemini 1.5 is out
๐คธ AI judges gymnastics with precision.
๐ธ. Google Gemma - New Open-Source LLM #ainews
I plan to share AI news updates every saturday. If you support this AI news initiative, Show your support ๐
๐ฅ All about OpenAIโs Sora.
๐คYolov9 is out
๐ฅ๏ธ Huawei's AI chips gain traction.
๐ค Google Gemini 1.5 is out
๐คธ AI judges gymnastics with precision.
๐ธ. Google Gemma - New Open-Source LLM #ainews
I plan to share AI news updates every saturday. If you support this AI news initiative, Show your support ๐
๐225โค25๐ฅ2
This week's Ai News
๐ง Krutim AI's chatbot demo failed, It said it's built upon OpenAi
๐ Apple Car Cancelled
๐ฐ Google Quietly Paying Journalists to Generate Articles Using Unreleased AI
๐ Elon Musk Sues OpenAI
๐Mistral CEO confirms โleakโ of new open source AI model nearing GPT-4 performance.
๐ง Krutim AI's chatbot demo failed, It said it's built upon OpenAi
๐ Apple Car Cancelled
๐ฐ Google Quietly Paying Journalists to Generate Articles Using Unreleased AI
๐ Elon Musk Sues OpenAI
๐Mistral CEO confirms โleakโ of new open source AI model nearing GPT-4 performance.
๐68โค22๐ฅ10
For people who have tried both GPT-4 and Claude 3, which do you prefer?
Anonymous Poll
49%
GPT4
16%
Claude 3
35%
Haven't tried both
๐31โค9
How to Build Your Career in Artificial Intelligence by Andrew Ng!
This books includes:
โ Steps to Career Growth.
โ Learning Technical Skills for a Promising AI Career.
โ Should You Learn Math to Get a Job in AI?
โ Finding Projects that Complement
โ Building a Portfolio of Projects that Shows Skill Progression.
โ A Simple Framework for Starting Your AI Job Search.
โ Finding the Right AI Job for You.
Good read for beginners ๐
This books includes:
โ Steps to Career Growth.
โ Learning Technical Skills for a Promising AI Career.
โ Should You Learn Math to Get a Job in AI?
โ Finding Projects that Complement
โ Building a Portfolio of Projects that Shows Skill Progression.
โ A Simple Framework for Starting Your AI Job Search.
โ Finding the Right AI Job for You.
Good read for beginners ๐
โค31๐31