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This year, generative AI and machine learning (ML) will again be in focus, with exciting keynote announcements and a variety of sessions showcasing insights from AWS experts, customer stories, and hands-on experiences with AWS services.
" "What's better for our presentation, a live demo or a recording?" We'll always prefer a live demo!" I grabbed a microphone to emcee and AssemblyAI VP of Marketing Christy Roach, Senior ML Developer Advocate Smitha Kolan, and Peter McKee were in the front row for the judging panel.
Amazon SageMaker is a fully managed service that enables developers and data scientists to quickly and effortlessly build, train, and deploy machine learning (ML) models at any scale. For example: input = "How is the demo going?" Refer to demo-model-builder-huggingface-llama2.ipynb output = "Comment la démo va-t-elle?"
With a goal to help data science teams learn about the application of AI and ML, DataRobot shares helpful, educational blogs based on work with the world’s most strategic companies. Data Scientists of Varying Skillsets Learn AI – ML Through Technical Blogs. Watch a demo. See DataRobot in Action. Bureau of Labor Statistics.
The previous parts of this blog series demonstrated how to build an ML application that takes a YouTube video URL as input, transcribes the video, and distills the content into a concise and coherent executive summary. Before proceeding, you may want to have a look at the resulting demo or the code hosted on Hugging Face U+1F917 Spaces.
Meet Mesop : a Python-based UI framework that allows you to rapidly build web apps like demos and internal apps. To demonstrate its capabilities, Mesop includes a demo app that can be created with fewer than ten lines of code.
Now all you need is some guidance on generative AI and machine learning (ML) sessions to attend at this twelfth edition of re:Invent. In addition to several exciting announcements during keynotes, most of the sessions in our track will feature generative AI in one form or another, so we can truly call our track “Generative AI and ML.”
To demonstrate how generative AI can accelerate AWS Well-Architected reviews, we have developed a Streamlit-based demo web application that serves as the front-end interface for initiating and managing the WAFR review process. Brijesh specializes in AI/ML solutions and has experience with serverless architectures.
In this post, we create a computer use agent demo that provides the critical orchestration layer that transforms computer use from a perception capability into actionable automation. This demo deploys a containerized application using AWS Fargate across two Availability Zones in the us-west-2 Region.
Join us at this live demo, where Snorkel AI co-founder and head of technology, Braden Hancock, will show you how Fortune 500 AI/ML teams utilize Snorkel Flow to unlock the value stored in their data. Discover how they leverage their data as a key differentiator in building high-performing production models.
coder:32b The latest series of Code-Specific Qwen models, with significant improvements in code generation, code reasoning, and… ollama.com You can also try out the model on the demo page of Hugging Face: Qwen2.5 Coder Demo – a Hugging Face Space by Qwen Discover amazing ML apps made by the community huggingface.co
Many practitioners are extending these Redshift datasets at scale for machine learning (ML) using Amazon SageMaker , a fully managed ML service, with requirements to develop features offline in a code way or low-code/no-code way, store featured data from Amazon Redshift, and make this happen at scale in a production environment.
Someone hacks together a quick demo with ChatGPT and LlamaIndex. The system is inconsistent, slow, hallucinatingand that amazing demo starts collecting digital dust. Check out the graph belowsee how excitement for traditional software builds steadily while GenAI starts with a flashy demo and then hits a wall of challenges?
Implementation details and demo setup in an AWS account As a prerequisite, we need to make sure that we are working in an AWS Region with Amazon Bedrock support for the foundation model (here, we use Anthropics Claude 3.5 For this demo setup, we describe the manual steps taken in the AWS console.
Businesses are under pressure to show return on investment (ROI) from AI use cases, whether predictive machine learning (ML) or generative AI. Only 54% of ML prototypes make it to production, and only 5% of generative AI use cases make it to production. Using SageMaker, you can build, train and deploy ML models.
Watch this video demo for a step-by-step guide. Once you are ready to import the model, use this step-by-step video demo to help you get started. With a strong background in AI/ML, Ishan specializes in building Generative AI solutions that drive business value. For more information, see Handling ModelNotReadyException.
For this demo, weve implemented metadata filtering to retrieve only the appropriate level of documents based on the users access level, further enhancing efficiency and security. To get started, explore our GitHub repo and HR assistant demo application , which demonstrate key implementation patterns and best practices.
Its quick to implement and demos well. The prompt-and-pray approach is tempting because it demos well and feels fast. As enterprises mature in their AI implementations, the focus must shift from impressive demos to reliable, scalable systems. But beneath the surface, its a patchwork of brittle improvisation and runaway costs.
With features like: Interactive Demos: End-to-end application workflows to guide development. Dont Forget to join our 70k+ ML SubReddit. These SDKs have tools and templates to streamline the integration process, reducing development time. Evaluation Tools: Predefined scoring configurations to benchmark model performance.
🧰 The dummy data While Spark is famous for its ability to work with big data, for demo purposes, I have created a small dataset with an obvious duplicate issue. We will use this table to demo and test our custom functions. Do you notice that the two ID fields, ID1 and ID2, do not form a primary key? distinct().count()
Check out the GitHub Page and Demo on Hugging Face. Dont Forget to join our 60k+ ML SubReddit. With its ability to tackle complex audio environments and deliver reliable results, it sets a promising direction for the future of voice technology. All credit for this research goes to the researchers of this project.
Turn ML Models into Online Apps This course demonstrates how to transform machine learning (ML) models into online apps using the GitLab DevSecOps Platform and Vertex AI. It allows learners to gain practical insights through a detailed demo to integrate ML models into web applications seamlessly.
Check out the Technical details , GitHub Page and Demo. Also,feel free to follow us on Twitter and dont forget to join our 80k+ ML SubReddit. By open-sourcing their methodology and tools, Groundlight aims to empower the broader community to further develop visual reasoning capabilities in AI systems.
Typically, on their own, data warehouses can be restricted by high storage costs that limit AI and ML model collaboration and deployments, while data lakes can result in low-performing data science workloads. With watsonx.data, you can experience the benefits of a data lakehouse to help scale AI workloads for all your data, anywhere.
The newly launched IBM Security QRadar Suite offers AI, machine learning (ML) and automation capabilities across its integrated threat detection and response portfolio , which includes EDR , log management and observability, SIEM and SOAR. Let’s take a closer look at QRadar EDR and QRadar SIEM to show how AI, ML and automation are used.
Aggregates as predictive insights : Aggregates, which consolidate data from various sources across your business environment, can serve as valuable predictors for machine learning (ML) algorithms. Event processing helps continuously update and refine our understanding of ongoing business scenarios.
AWS ran a live demo to show how to get started in just a few clicks. Db2 Warehouse , our cloud-native data warehouse for real-time operational analytics, business intelligence (BI), reporting and machine learning (ML), is also available as a fully managed service on AWS to support customer’s data warehousing needs.
Explore a Riva-powered demo of speech-to-text in a dozen languages. Born to Roll At GDC and GTC, developers and platform partners showcased demos leveraging NVIDIA ACE microservices — from interactive NPCs in gaming to powerful digital human nurses. Ubisoft is exploring new types of interactive gameplay with dynamic NPCs.
Please note that this demo is intended for educational purposes only and should not be used as a substitute for professional clinical diagnosis. Dont Forget to join our 85k+ ML SubReddit. Copy Code Copied Use a different Browser !pip Here is the Colab Notebook.
Check out the Paper , Source Code and Live Demo. Also,feel free to follow us on Twitter and dont forget to join our 75k+ ML SubReddit. The method is scalable, hardware-efficient, and applicable to various AI applications requiring long-memory retention. All credit for this research goes to the researchers of this project.
Anthropic provides a demo as a Docker container, so you can run it safely. In essence (and I may have the essence wrong), computer use allows you to tell Claude how to use a computer: browsers, editors, shells, anything that can have a user interface on a screen (and possibly more).
Introduction to AI and Machine Learning on Google Cloud This course introduces Google Cloud’s AI and ML offerings for predictive and generative projects, covering technologies, products, and tools across the data-to-AI lifecycle. It includes labs on feature engineering with BigQuery ML, Keras, and TensorFlow.
Second, because data, code, and other development artifacts like machine learning (ML) models are stored within different services, it can be cumbersome for users to understand how they interact with each other and make changes. Under Quick setup settings , for Name , enter a name (for example, demo). Choose Continue.
Researchers have made Finer-CAMs source code and colab demo available. Check out the Paper , Github and Colab demo. Also,feel free to follow us on Twitter and dont forget to join our 80k+ ML SubReddit. All credit for this research goes to the researchers of this project.
The model’s speed and efficiency have been commended by users who have tested it through demos, making it an appealing option for a variety of AI-driven activities. Check out the Model Card and Demo. Don’t Forget to join our 42k+ ML SubReddit The post 01.AI Also, don’t forget to follow us on Twitter. AI Introduces Yi-1.5-34B
IDC 2 predicts that by 2024, 60% of enterprises would have operationalized their ML workflows by using MLOps. The same is true for your ML workflows – you need the ability to navigate change and make strong business decisions. Request a Demo. 1 IDC, MLOps – Where ML Meets DevOps, doc #US48544922, March 2022.
is versatile in its application, supporting efficient CPU inference on local devices through llama.cpp and ollama, offering quantized models in int4 and GGUF formats in 16 sizes, vLLM support for high-throughput and memory-efficient inference, domain-specific fine-tuning, quick local WebUI demo setup with Gradio, and online web demos.
Whether youre new to Gradio or looking to expand your machine learning (ML) toolkit, this guide will equip you to create versatile and impactful applications. By allowing developers to connect their models to various interactive components, Gradio transforms complex ML workflows into accessible web applications.
Just Do Something with AI: Bridging the Business Communication Gap forML This blog explores how ML practitioners can navigate AI business communication, ensuring AI initiatives align with real businessvalue. What Can You Do With a Free ODSC East ExpoPass?
Between an Expo & Demo Hall, amazing keynote speakers, and networking events, heres a rundown of everything you can do with a free ODSC East ExpoPass. What Can You Do With a Free ODSC East ExpoPass?
Copy Code Copied Use a different Browser with gr.Blocks() as demo: gr.Markdown("# AI Startup Pitch Generator (with PDF Export)") theme_input = gr.Textbox(label="Enter a theme or industry", placeholder="e.g., The share=True flag enables public access to the app, making it easy to demo or share the tool with others via a unique URL.
Grab one for access to Keynote Talks, Demo Talks, the AI Expo and Demo Hall, and Extra Events. Find Your AI Solutions at the ODSC West AI Expo Learn about the best AI solutions for your organization at the ODSC West AI Expo & Demo Hall during these Demo Theater sessions! Attend in-person or virtually!
Today, we are excited to unveil three generative AI demos, licensed under MIT-0 license : Amazon Kendra with foundational LLM – Utilizes the deep search capabilities of Amazon Kendra combined with the expansive knowledge of LLMs. Having the right setup in place is the first step towards a seamless deployment of the demos.
Request a live demo or start a proof of concept with Amazon RDS for Db2 Db2 Warehouse SaaS on AWS The cloud-native Db2 Warehouse fulfills your price and performance objectives for mission-critical operational analytics, business intelligence (BI) and mixed workloads.
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