Name: Towards AI Legal Name: Towards AI, Inc. Description: Towards AI is the world's leading artificial intelligence (AI) and technology publication. Read by thought-leaders and decision-makers around the world. Phone Number: +1-650-246-9381 Email: pub@towardsai.net
228 Park Avenue South New York, NY 10003 United States
Website: Publisher: https://towardsai.net/#publisher Diversity Policy: https://towardsai.net/about Ethics Policy: https://towardsai.net/about Masthead: https://towardsai.net/about
Name: Towards AI Legal Name: Towards AI, Inc. Description: Towards AI is the world's leading artificial intelligence (AI) and technology publication. Founders: Roberto Iriondo, , Job Title: Co-founder and Advisor Works for: Towards AI, Inc. Follow Roberto: X, LinkedIn, GitHub, Google Scholar, Towards AI Profile, Medium, ML@CMU, FreeCodeCamp, Crunchbase, Bloomberg, Roberto Iriondo, Generative AI Lab, Generative AI Lab Denis Piffaretti, Job Title: Co-founder Works for: Towards AI, Inc. Louie Peters, Job Title: Co-founder Works for: Towards AI, Inc. Louis-François Bouchard, Job Title: Co-founder Works for: Towards AI, Inc. Cover:
Towards AI Cover
Logo:
Towards AI Logo
Areas Served: Worldwide Alternate Name: Towards AI, Inc. Alternate Name: Towards AI Co. Alternate Name: towards ai Alternate Name: towardsai Alternate Name: towards.ai Alternate Name: tai Alternate Name: toward ai Alternate Name: toward.ai Alternate Name: Towards AI, Inc. Alternate Name: towardsai.net Alternate Name: pub.towardsai.net
5 stars – based on 497 reviews

Frequently Used, Contextual References

TODO: Remember to copy unique IDs whenever it needs used. i.e., URL: 304b2e42315e

Resources

Take our 85+ lesson From Beginner to Advanced LLM Developer Certification: From choosing a project to deploying a working product this is the most comprehensive and practical LLM course out there!

Publication

Voice RAG with GPT-4O Realtime for Structured and Unstructured Data
Data Science   Latest   Machine Learning

Voice RAG with GPT-4O Realtime for Structured and Unstructured Data

Last Updated on October 19, 2024 by Editorial Team

Author(s): Naveen Krishnan

Originally published on Towards AI.

Photo from oneusefulthing.org

The accompanying code for this tutorial is: here

Introduction

In the ever-evolving landscape of artificial intelligence, the introduction of the Azure OpenAI GPT-4o Realtime API marks a significant milestone. As an AI enthusiast and developer, I was thrilled to explore this cutting-edge technology and its potential applications. This blog delves into the intricacies of the GPT-4o Realtime API, exploring its features, capabilities, and practical uses. Whether you’re a seasoned developer or an AI enthusiast, this comprehensive guide will provide you with a detailed understanding of how to leverage the GPT-4o Realtime API for creating immersive, real-time speech-to-speech experiences.

What’s GPT-4o Realtime? 🤔

The GPT-4o Realtime is designed to enable developers to build low-latency, multimodal experiences in their applications. Imagine having natural, seamless conversations with AI-powered voice assistants that understand and respond in real-time. Unlike traditional methods that required multiple models to handle speech recognition, text processing, and speech synthesis, the GPT-4o Realtime API streamlines the process into a single API call, significantly reducing latency and improving the naturalness of interactions.

Demo😱

Key Features and Capabilities

Low-Latency Speech-to-Speech Interactions

The GPT-4o Realtime API supports fast, real-time speech-to-speech interactions. This is achieved through a persistent WebSocket connection that allows for asynchronous streaming communication between the user and the model. This setup ensures that responses are generated quickly, maintaining the flow of natural conversation.

Multimodal Support

The API is capable of handling various input and output modalities, including text, audio, and function calls. This flexibility allows developers to create rich, interactive experiences that can respond to user inputs in multiple formats.

Function Calling

One of the standout features of the GPT-4o Realtime API is its support for function calling. This enables voice assistants to perform actions or retrieve context-specific information based on user requests. For example, a voice assistant could place an order or fetch customer details to personalize responses.

Voice Activity Detection (VAD)

The API includes advanced voice activity detection capabilities, which automatically handle interruptions and manage the flow of conversation. This ensures that the system can respond appropriately to user inputs without unnecessary delays.

Integration with Existing Tools

The GPT-4o Realtime API is designed to work seamlessly with existing tools and services. For instance, it can be integrated with Twilio’s Voice APIs to build and deploy AI virtual agents that interact with customers via voice calls.

Practical Applications and Use Cases

The GPT-4o Realtime API opens up a plethora of possibilities for developers across various domains. Here are some practical applications:

Customer Support

By integrating the GPT-4o Realtime API, businesses can enhance their customer support systems with AI-powered voice assistants that provide quick and accurate responses to customer queries. This can significantly improve customer satisfaction and reduce the workload on human agents.

Language Learning

Language learning apps can leverage the API to create interactive role-play scenarios where users can practice conversations in a new language. The real-time feedback and natural interaction can make the learning process more engaging and effective.

Healthcare

In the healthcare sector, the API can be used to develop virtual health assistants that provide patients with timely information and support. For example, a nutrition and fitness coaching app could use the API to enable natural conversations with an AI coach, offering personalized advice and motivation.

Accessibility

The GPT-4o Realtime API can also be a game-changer for accessibility. It can be used to develop tools that assist individuals with disabilities, such as voice-activated interfaces for controlling smart home devices or real-time transcription services for the hearing impaired.

Personalized Shopping Assistants

E-commerce platforms can deploy virtual shopping assistants that help customers find products, answer questions, and provide personalized recommendations based on their preferences and past purchases.

Interactive Voice Response (IVR) Systems

Traditional IVR systems can be enhanced with GPT-4o Realtime to provide more natural and intuitive interactions. Instead of navigating through a series of menu options, customers can simply speak their requests, and the system can understand and respond appropriately.

Getting Started with GPT-4o Realtime API

To begin using the GPT-4o Realtime API, developers need to create an Azure OpenAI resource in a supported region (e.g., eastus2 or swedencentral) and deploy the gpt-4o-realtime-preview model. The API requires a secure WebSocket connection, which can be established using the following URI format:

wss://<your-resource-name>.openai.azure.com/openai/realtime?api-version=2024-10-01-preview&deployment=gpt-4o-realtime-preview

Authentication can be handled using either a Bearer token (for managed identity) or an API key. Once authenticated, developers can configure the session to customize input and output behaviors, such as audio format, transcription models, and turn detection settings.

In this sample implementation, we are covering both structured and unstructured data along with the capabilities of the GPT-4o Realtime. Let’s walk through the process of implementing a real-time voice assistant. This example will use the Azure OpenAI’s gpt-4o-realtime-preview model and GPT-4O for Text-SQL.

Here is the high-level design:

Image by Author

We’ll follow 4 steps to get this example running in your own environment: pre-requisites, creating an index (for Unstructured Data), Setting up SQL with data, setting up the environment, and running the app.

1. Pre-requisites

You’ll need instances of the following Azure services. You can re-use service instances you have already or create new ones.

  1. Azure OpenAI, with 3 model deployments, one of the gpt-4o-realtime-preview models, one for embeddings (e.g.text-embedding-3-large, text-embedding-3-small, or text-embedding-ada-002) and one GPT 4O
  2. Azure AI Search, any tier Basic or above will work, ideally with Semantic Search enabled
  3. Azure Blob Storage, with a container that has the content that represents your knowledge base (we include some sample data in this repo if you want an easy starting point)
  4. Azure SQL, refer data/structured/SQL DDL and Sample Data.txt in this repo for DDL and SQL Insert statements.

2. Creating an index for Unstructured Data

RAG applications use a retrieval system to get the right grounding data for LLMs. We use Azure AI Search as our retrieval system, so we need to get our knowledge base (e.g. documents or any other content you want the app to be able to talk about) into an Azure AI Search index.

If you already have an Azure AI Search index

You can use an existing index directly. If you created that index using the “Import and vectorize data” option in the portal, no further changes are needed. Otherwise, you’ll need to update the field names in the code to match your text/vector fields.

Creating a new index with sample data or your own

Follow these steps to create a new index. We’ll create a setup where once created, you can add, delete, or update your documents in blob storage and the index will automatically follow the changes.

  1. Upload your documents to an Azure Blob Storage container. An easy way to do this is using the Azure Portal: navigate to the container and use the upload option to move your content (e.g. PDFs, Office docs, etc.)
  2. In the Azure Portal, go to your Azure AI Search service and select “Import and vectorize data”, choose Blob Storage, then point at your container and follow the rest of the steps on the screen.
  3. Once the indexing process completes, you’ll have a search index ready for vector and hybrid search.

For more details on ingesting data in Azure AI Search using “Import and vectorize data”, here’s a quickstart.

2.1 Prepare for Structured Data

You can use the SQL statements here audio-rag-structured-unstructured-data/data/structured at main · navintkr/audio-rag-structured-unstructured-data (github.com) and prepare for structured demo.

3. Setting up the environment

The app needs to know which service endpoints to use for the Azure OpenAI and Azure AI Search. The following variables can be set as environment variables, or you can create a “.env” file in the “app/backend/” directory with this content.

AZURE_OPENAI_ENDPOINT=wss://<your instance name>.openai.azure.com
AZURE_OPENAI_DEPLOYMENT=gpt-4o-realtime-preview
AZURE_OPENAI_API_KEY=<your api key>
AZURE_SEARCH_ENDPOINT=https://<your service name>.search.windows.net
AZURE_SEARCH_INDEX=<your index name>
AZURE_SEARCH_API_KEY=<your api key>
OPENAI_CHAT_MODEL=gpt-4o
AZURE_SQL_SERVER=<your-SQL-Server-Name>
AZURE_SQL_DB=<your-SQL-DB-Name>
AZURE_SQL_USERNAME=<your-SQL-Server-Username>
AZURE_SQL_PWD=<your-SQL-Server-Password>

To use Entra ID (your user when running locally, managed identity when deployed) simply don’t set the keys.

4. Running the app

  1. Install the required tools: Node.js, Python and Powershell.
  2. Clone the repo (git clone https://github.com/navintkr/audio-rag-structured-unstructured-data)
  3. Create a Python virtual environment and activate it.
  4. The app needs to know which service endpoints to use for the Azure OpenAI and Azure AI Search. The following variables can be set as environment variables, or you can create a “.env” file in the “app/backend/” directory with this content.
AZURE_OPENAI_ENDPOINT=wss://<your instance name>.openai.azure.com
AZURE_OPENAI_DEPLOYMENT=gpt-4o-realtime-preview
AZURE_OPENAI_API_KEY=<your api key>
AZURE_SEARCH_ENDPOINT=https://<your service name>.search.windows.net
AZURE_SEARCH_INDEX=<your index name>
AZURE_SEARCH_API_KEY=<your api key>
OPENAI_CHAT_MODEL=gpt-4o
AZURE_SQL_SERVER=<your-SQL-Server-Name>
AZURE_SQL_DB=<your-SQL-DB-Name>
AZURE_SQL_USERNAME=<your-SQL-Server-Username>
AZURE_SQL_PWD=<your-SQL-Server-Password>

To use Entra ID (your user when running locally, managed identity when deployed) simply don’t set the keys.

5. Run this command to start the app:

Windows:

cd app 
pwsh .\start.ps1

Linux/Mac:

cd app ./start.sh

The app should be available on http://localhost:8765

Once the app is running, when you navigate to the URL above you should see the start screen of the app:

You can use the dropdown to tweak between structured and unstructured data

Frontend: enabling direct communication with AOAI Realtime API

You can make the frontend skip the middle tier and talk to the WebSockets AOAI Realtime API directly if you choose to do so. However, note this’ll stop RAG from happening and will require exposing your API key in the frontend, which is very insecure. DO NOT use this in production.

Just Pass some extra parameters to the useRealtime hook:

const { startSession, addUserAudio, inputAudioBufferClear } = useRealTime({
useDirectAoaiApi: true,
aoaiEndpointOverride: "wss://<NAME>.openai.azure.com",
aoaiApiKeyOverride: "<YOUR API KEY, INSECURE!!!>",
aoaiModelOverride: "gpt-4o-realtime-preview",
...
);

Conclusion

The Azure OpenAI GPT-4o Realtime API represents a significant advancement in the field of AI, offering developers the tools to create highly responsive and natural speech-to-speech interactions. By leveraging this technology, businesses and developers can build innovative applications that enhance user experiences across various domains, from customer support and language learning to healthcare and accessibility.

For those interested in exploring the full potential of the GPT-4o Realtime API, I encourage you to dive into the detailed documentation and sample code available on GitHub. With the right approach and creativity, the possibilities are endless.

Happy coding!

Thank you for taking the time to read my story! If you enjoyed it and found it valuable, please consider giving it a clap (or 50!) to show your support. Your claps help others discover this content and motivate me to keep creating more.

Also, don’t forget to follow me for more insights and updates on AI. Your support means a lot and helps me continue sharing valuable content with you. Thank you!

Join thousands of data leaders on the AI newsletter. Join over 80,000 subscribers and keep up to date with the latest developments in AI. From research to projects and ideas. If you are building an AI startup, an AI-related product, or a service, we invite you to consider becoming a sponsor.

Published via Towards AI

Feedback ↓

Sign Up for the Course
`; } else { console.error('Element with id="subscribe" not found within the page with class "home".'); } } }); // Remove duplicate text from articles /* Backup: 09/11/24 function removeDuplicateText() { const elements = document.querySelectorAll('h1, h2, h3, h4, h5, strong'); // Select the desired elements const seenTexts = new Set(); // A set to keep track of seen texts const tagCounters = {}; // Object to track instances of each tag elements.forEach(el => { const tagName = el.tagName.toLowerCase(); // Get the tag name (e.g., 'h1', 'h2', etc.) // Initialize a counter for each tag if not already done if (!tagCounters[tagName]) { tagCounters[tagName] = 0; } // Only process the first 10 elements of each tag type if (tagCounters[tagName] >= 2) { return; // Skip if the number of elements exceeds 10 } const text = el.textContent.trim(); // Get the text content const words = text.split(/\s+/); // Split the text into words if (words.length >= 4) { // Ensure at least 4 words const significantPart = words.slice(0, 5).join(' '); // Get first 5 words for matching // Check if the text (not the tag) has been seen before if (seenTexts.has(significantPart)) { // console.log('Duplicate found, removing:', el); // Log duplicate el.remove(); // Remove duplicate element } else { seenTexts.add(significantPart); // Add the text to the set } } tagCounters[tagName]++; // Increment the counter for this tag }); } removeDuplicateText(); */ // Remove duplicate text from articles function removeDuplicateText() { const elements = document.querySelectorAll('h1, h2, h3, h4, h5, strong'); // Select the desired elements const seenTexts = new Set(); // A set to keep track of seen texts const tagCounters = {}; // Object to track instances of each tag // List of classes to be excluded const excludedClasses = ['medium-author', 'post-widget-title']; elements.forEach(el => { // Skip elements with any of the excluded classes if (excludedClasses.some(cls => el.classList.contains(cls))) { return; // Skip this element if it has any of the excluded classes } const tagName = el.tagName.toLowerCase(); // Get the tag name (e.g., 'h1', 'h2', etc.) // Initialize a counter for each tag if not already done if (!tagCounters[tagName]) { tagCounters[tagName] = 0; } // Only process the first 10 elements of each tag type if (tagCounters[tagName] >= 10) { return; // Skip if the number of elements exceeds 10 } const text = el.textContent.trim(); // Get the text content const words = text.split(/\s+/); // Split the text into words if (words.length >= 4) { // Ensure at least 4 words const significantPart = words.slice(0, 5).join(' '); // Get first 5 words for matching // Check if the text (not the tag) has been seen before if (seenTexts.has(significantPart)) { // console.log('Duplicate found, removing:', el); // Log duplicate el.remove(); // Remove duplicate element } else { seenTexts.add(significantPart); // Add the text to the set } } tagCounters[tagName]++; // Increment the counter for this tag }); } removeDuplicateText(); //Remove unnecessary text in blog excerpts document.querySelectorAll('.blog p').forEach(function(paragraph) { // Replace the unwanted text pattern for each paragraph paragraph.innerHTML = paragraph.innerHTML .replace(/Author\(s\): [\w\s]+ Originally published on Towards AI\.?/g, '') // Removes 'Author(s): XYZ Originally published on Towards AI' .replace(/This member-only story is on us\. Upgrade to access all of Medium\./g, ''); // Removes 'This member-only story...' }); //Load ionic icons and cache them if ('localStorage' in window && window['localStorage'] !== null) { const cssLink = 'https://code.ionicframework.com/ionicons/2.0.1/css/ionicons.min.css'; const storedCss = localStorage.getItem('ionicons'); if (storedCss) { loadCSS(storedCss); } else { fetch(cssLink).then(response => response.text()).then(css => { localStorage.setItem('ionicons', css); loadCSS(css); }); } } function loadCSS(css) { const style = document.createElement('style'); style.innerHTML = css; document.head.appendChild(style); } //Remove elements from imported content automatically function removeStrongFromHeadings() { const elements = document.querySelectorAll('h1, h2, h3, h4, h5, h6, span'); elements.forEach(el => { const strongTags = el.querySelectorAll('strong'); strongTags.forEach(strongTag => { while (strongTag.firstChild) { strongTag.parentNode.insertBefore(strongTag.firstChild, strongTag); } strongTag.remove(); }); }); } removeStrongFromHeadings(); "use strict"; window.onload = () => { /* //This is an object for each category of subjects and in that there are kewords and link to the keywods let keywordsAndLinks = { //you can add more categories and define their keywords and add a link ds: { keywords: [ //you can add more keywords here they are detected and replaced with achor tag automatically 'data science', 'Data science', 'Data Science', 'data Science', 'DATA SCIENCE', ], //we will replace the linktext with the keyword later on in the code //you can easily change links for each category here //(include class="ml-link" and linktext) link: 'linktext', }, ml: { keywords: [ //Add more keywords 'machine learning', 'Machine learning', 'Machine Learning', 'machine Learning', 'MACHINE LEARNING', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, ai: { keywords: [ 'artificial intelligence', 'Artificial intelligence', 'Artificial Intelligence', 'artificial Intelligence', 'ARTIFICIAL INTELLIGENCE', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, nl: { keywords: [ 'NLP', 'nlp', 'natural language processing', 'Natural Language Processing', 'NATURAL LANGUAGE PROCESSING', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, des: { keywords: [ 'data engineering services', 'Data Engineering Services', 'DATA ENGINEERING SERVICES', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, td: { keywords: [ 'training data', 'Training Data', 'training Data', 'TRAINING DATA', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, ias: { keywords: [ 'image annotation services', 'Image annotation services', 'image Annotation services', 'image annotation Services', 'Image Annotation Services', 'IMAGE ANNOTATION SERVICES', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, l: { keywords: [ 'labeling', 'labelling', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, pbp: { keywords: [ 'previous blog posts', 'previous blog post', 'latest', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, mlc: { keywords: [ 'machine learning course', 'machine learning class', ], //Change your article link (include class="ml-link" and linktext) link: 'linktext', }, }; //Articles to skip let articleIdsToSkip = ['post-2651', 'post-3414', 'post-3540']; //keyword with its related achortag is recieved here along with article id function searchAndReplace(keyword, anchorTag, articleId) { //selects the h3 h4 and p tags that are inside of the article let content = document.querySelector(`#${articleId} .entry-content`); //replaces the "linktext" in achor tag with the keyword that will be searched and replaced let newLink = anchorTag.replace('linktext', keyword); //regular expression to search keyword var re = new RegExp('(' + keyword + ')', 'g'); //this replaces the keywords in h3 h4 and p tags content with achor tag content.innerHTML = content.innerHTML.replace(re, newLink); } function articleFilter(keyword, anchorTag) { //gets all the articles var articles = document.querySelectorAll('article'); //if its zero or less then there are no articles if (articles.length > 0) { for (let x = 0; x < articles.length; x++) { //articles to skip is an array in which there are ids of articles which should not get effected //if the current article's id is also in that array then do not call search and replace with its data if (!articleIdsToSkip.includes(articles[x].id)) { //search and replace is called on articles which should get effected searchAndReplace(keyword, anchorTag, articles[x].id, key); } else { console.log( `Cannot replace the keywords in article with id ${articles[x].id}` ); } } } else { console.log('No articles found.'); } } let key; //not part of script, added for (key in keywordsAndLinks) { //key is the object in keywords and links object i.e ds, ml, ai for (let i = 0; i < keywordsAndLinks[key].keywords.length; i++) { //keywordsAndLinks[key].keywords is the array of keywords for key (ds, ml, ai) //keywordsAndLinks[key].keywords[i] is the keyword and keywordsAndLinks[key].link is the link //keyword and link is sent to searchreplace where it is then replaced using regular expression and replace function articleFilter( keywordsAndLinks[key].keywords[i], keywordsAndLinks[key].link ); } } function cleanLinks() { // (making smal functions is for DRY) this function gets the links and only keeps the first 2 and from the rest removes the anchor tag and replaces it with its text function removeLinks(links) { if (links.length > 1) { for (let i = 2; i < links.length; i++) { links[i].outerHTML = links[i].textContent; } } } //arrays which will contain all the achor tags found with the class (ds-link, ml-link, ailink) in each article inserted using search and replace let dslinks; let mllinks; let ailinks; let nllinks; let deslinks; let tdlinks; let iaslinks; let llinks; let pbplinks; let mlclinks; const content = document.querySelectorAll('article'); //all articles content.forEach((c) => { //to skip the articles with specific ids if (!articleIdsToSkip.includes(c.id)) { //getting all the anchor tags in each article one by one dslinks = document.querySelectorAll(`#${c.id} .entry-content a.ds-link`); mllinks = document.querySelectorAll(`#${c.id} .entry-content a.ml-link`); ailinks = document.querySelectorAll(`#${c.id} .entry-content a.ai-link`); nllinks = document.querySelectorAll(`#${c.id} .entry-content a.ntrl-link`); deslinks = document.querySelectorAll(`#${c.id} .entry-content a.des-link`); tdlinks = document.querySelectorAll(`#${c.id} .entry-content a.td-link`); iaslinks = document.querySelectorAll(`#${c.id} .entry-content a.ias-link`); mlclinks = document.querySelectorAll(`#${c.id} .entry-content a.mlc-link`); llinks = document.querySelectorAll(`#${c.id} .entry-content a.l-link`); pbplinks = document.querySelectorAll(`#${c.id} .entry-content a.pbp-link`); //sending the anchor tags list of each article one by one to remove extra anchor tags removeLinks(dslinks); removeLinks(mllinks); removeLinks(ailinks); removeLinks(nllinks); removeLinks(deslinks); removeLinks(tdlinks); removeLinks(iaslinks); removeLinks(mlclinks); removeLinks(llinks); removeLinks(pbplinks); } }); } //To remove extra achor tags of each category (ds, ml, ai) and only have 2 of each category per article cleanLinks(); */ //Recommended Articles var ctaLinks = [ /* ' ' + '

Subscribe to our AI newsletter!

' + */ '

Take our 85+ lesson From Beginner to Advanced LLM Developer Certification: From choosing a project to deploying a working product this is the most comprehensive and practical LLM course out there!

'+ '

Towards AI has published Building LLMs for Production—our 470+ page guide to mastering LLMs with practical projects and expert insights!

' + '
' + '' + '' + '

Note: Content contains the views of the contributing authors and not Towards AI.
Disclosure: This website may contain sponsored content and affiliate links.

' + 'Discover Your Dream AI Career at Towards AI Jobs' + '

Towards AI has built a jobs board tailored specifically to Machine Learning and Data Science Jobs and Skills. Our software searches for live AI jobs each hour, labels and categorises them and makes them easily searchable. Explore over 10,000 live jobs today with Towards AI Jobs!

' + '
' + '

🔥 Recommended Articles 🔥

' + 'Why Become an LLM Developer? Launching Towards AI’s New One-Stop Conversion Course'+ 'Testing Launchpad.sh: A Container-based GPU Cloud for Inference and Fine-tuning'+ 'The Top 13 AI-Powered CRM Platforms
' + 'Top 11 AI Call Center Software for 2024
' + 'Learn Prompting 101—Prompt Engineering Course
' + 'Explore Leading Cloud Providers for GPU-Powered LLM Training
' + 'Best AI Communities for Artificial Intelligence Enthusiasts
' + 'Best Workstations for Deep Learning
' + 'Best Laptops for Deep Learning
' + 'Best Machine Learning Books
' + 'Machine Learning Algorithms
' + 'Neural Networks Tutorial
' + 'Best Public Datasets for Machine Learning
' + 'Neural Network Types
' + 'NLP Tutorial
' + 'Best Data Science Books
' + 'Monte Carlo Simulation Tutorial
' + 'Recommender System Tutorial
' + 'Linear Algebra for Deep Learning Tutorial
' + 'Google Colab Introduction
' + 'Decision Trees in Machine Learning
' + 'Principal Component Analysis (PCA) Tutorial
' + 'Linear Regression from Zero to Hero
'+ '

', /* + '

Join thousands of data leaders on the AI newsletter. It’s free, we don’t spam, and we never share your email address. Keep up to date with the latest work in AI. From research to projects and ideas. If you are building an AI startup, an AI-related product, or a service, we invite you to consider becoming a sponsor.

',*/ ]; var replaceText = { '': '', '': '', '
': '
' + ctaLinks + '
', }; Object.keys(replaceText).forEach((txtorig) => { //txtorig is the key in replacetext object const txtnew = replaceText[txtorig]; //txtnew is the value of the key in replacetext object let entryFooter = document.querySelector('article .entry-footer'); if (document.querySelectorAll('.single-post').length > 0) { //console.log('Article found.'); const text = entryFooter.innerHTML; entryFooter.innerHTML = text.replace(txtorig, txtnew); } else { // console.log('Article not found.'); //removing comment 09/04/24 } }); var css = document.createElement('style'); css.type = 'text/css'; css.innerHTML = '.post-tags { display:none !important } .article-cta a { font-size: 18px; }'; document.body.appendChild(css); //Extra //This function adds some accessibility needs to the site. function addAlly() { // In this function JQuery is replaced with vanilla javascript functions const imgCont = document.querySelector('.uw-imgcont'); imgCont.setAttribute('aria-label', 'AI news, latest developments'); imgCont.title = 'AI news, latest developments'; imgCont.rel = 'noopener'; document.querySelector('.page-mobile-menu-logo a').title = 'Towards AI Home'; document.querySelector('a.social-link').rel = 'noopener'; document.querySelector('a.uw-text').rel = 'noopener'; document.querySelector('a.uw-w-branding').rel = 'noopener'; document.querySelector('.blog h2.heading').innerHTML = 'Publication'; const popupSearch = document.querySelector$('a.btn-open-popup-search'); popupSearch.setAttribute('role', 'button'); popupSearch.title = 'Search'; const searchClose = document.querySelector('a.popup-search-close'); searchClose.setAttribute('role', 'button'); searchClose.title = 'Close search page'; // document // .querySelector('a.btn-open-popup-search') // .setAttribute( // 'href', // 'https://medium.com/towards-artificial-intelligence/search' // ); } // Add external attributes to 302 sticky and editorial links function extLink() { // Sticky 302 links, this fuction opens the link we send to Medium on a new tab and adds a "noopener" rel to them var stickyLinks = document.querySelectorAll('.grid-item.sticky a'); for (var i = 0; i < stickyLinks.length; i++) { /* stickyLinks[i].setAttribute('target', '_blank'); stickyLinks[i].setAttribute('rel', 'noopener'); */ } // Editorial 302 links, same here var editLinks = document.querySelectorAll( '.grid-item.category-editorial a' ); for (var i = 0; i < editLinks.length; i++) { editLinks[i].setAttribute('target', '_blank'); editLinks[i].setAttribute('rel', 'noopener'); } } // Add current year to copyright notices document.getElementById( 'js-current-year' ).textContent = new Date().getFullYear(); // Call functions after page load extLink(); //addAlly(); setTimeout(function() { //addAlly(); //ideally we should only need to run it once ↑ }, 5000); }; function closeCookieDialog (){ document.getElementById("cookie-consent").style.display = "none"; return false; } setTimeout ( function () { closeCookieDialog(); }, 15000); console.log(`%c 🚀🚀🚀 ███ █████ ███████ █████████ ███████████ █████████████ ███████████████ ███████ ███████ ███████ ┌───────────────────────────────────────────────────────────────────┐ │ │ │ Towards AI is looking for contributors! │ │ Join us in creating awesome AI content. │ │ Let's build the future of AI together → │ │ https://towardsai.net/contribute │ │ │ └───────────────────────────────────────────────────────────────────┘ `, `background: ; color: #00adff; font-size: large`); //Remove latest category across site document.querySelectorAll('a[rel="category tag"]').forEach(function(el) { if (el.textContent.trim() === 'Latest') { // Remove the two consecutive spaces (  ) if (el.nextSibling && el.nextSibling.nodeValue.includes('\u00A0\u00A0')) { el.nextSibling.nodeValue = ''; // Remove the spaces } el.style.display = 'none'; // Hide the element } }); // Add cross-domain measurement, anonymize IPs 'use strict'; //var ga = gtag; ga('config', 'G-9D3HKKFV1Q', 'auto', { /*'allowLinker': true,*/ 'anonymize_ip': true/*, 'linker': { 'domains': [ 'medium.com/towards-artificial-intelligence', 'datasets.towardsai.net', 'rss.towardsai.net', 'feed.towardsai.net', 'contribute.towardsai.net', 'members.towardsai.net', 'pub.towardsai.net', 'news.towardsai.net' ] } */ }); ga('send', 'pageview'); -->