vinod soni
Menjadi anggota sejak 2025
Diamond League
14612 poin
Menjadi anggota sejak 2025
Complete the Extend Gemini with controlled generation and Tool use skill badge to demonstrate your proficiency in connecting models to external tools and APIs. This allows models to augment their knowledge, extend their capabilities and interact with external systems to take actions such as sending an email. A skill badge is an exclusive digital badge issued by Google Cloud in recognition of your proficiency with Google Cloud products and services and tests your ability to apply your knowledge in an interactive hands-on environment. Complete the assessment challenge lab, to receive a skill badge that you can share with your network. When you complete this course, you can earn the badge displayed here and claim it on Credly! Boost your cloud career by showing the world the skills you have developed!"
Selesaikan badge keahlian tingkat menengah Rekayasa Data untuk Pembuatan Model Prediktif dengan BigQuery ML untuk menunjukkan keterampilan Anda dalam hal berikut: membangun pipeline transformasi data ke BigQuery dengan Dataprep by Trifacta; menggunakan Cloud Storage, Dataflow, dan BigQuery untuk membangun alur kerja ekstrak, transformasi, dan pemuatan (ETL); serta membangun model machine learning menggunakan BigQuery ML.
Complete the Improve customer and agent satisfaction with Agent Assist skill badge to demonstrate your proficiency in configuring basic conversational agents that can escalate actions to human agents, and configuring Agent Assist to help human agents with customer queries. You prove your knowledge in configuring Generators for summarization, classification and recommendation of tickets as well leverage tools such as Generative Knowledge Assist, to provide further context to human agents. A skill badge is an exclusive digital badge issued by Google Cloud in recognition of your proficiency with Google Cloud products and services and tests your ability to apply your knowledge in an interactive hands-on environment. Complete the assessment challenge lab, to receive a skill badge that you can share with your network. When you complete this course, you can earn the badge displayed here and claim it on Credly! Boost your cloud career by showing the world the skills you have developed!
In this course you will learn how Agent Assist can enhance the productivity of human agents while interacting with customers through the voice channel, as well as the options available for integration with other platforms in the Conversational AI ecosystem.
This course will focus on Agent Assist, an AI-powered tool designed to enhance customer service interactions. In this course, you will learn how Agent Assist can enhance the productivity of human agents while interacting with customers through the chat channel. You’ll learn how to take full advantage of Agent Assist from Gemini Enterprise for Customer Experience, and its range of Gen AI features and functionality.
Complete the Build search and recommendations AI Applications skill badge to demonstrate your proficiency in deploying search and recommendation applications through AI Applications. Additionally, emphasis is placed on constructing a tailored Q&A system utilizing data stores. Please note that AI Applications was previously named Agent Builder, so you may encounter this older name within the lab content. A skill badge is an exclusive digital badge issued by Google Cloud in recognition of your proficiency with Google Cloud products and services and tests your ability to apply your knowledge in an interactive hands-on environment. Complete the assessment challenge lab, to receive a skill badge that you can share with your network. When you complete this course, you can earn the badge displayed here and claim it on Credly! Boost your cloud career by showing the world the skills you have developed!
This course equips learners with the essential knowledge and practical tools to develop and implement artificial intelligence (AI) responsibly. Through an exploration of ethical considerations, best practices, and governance procedures, participants will gain an understanding of how to navigate the complex landscape of AI while upholding ethical standards and minimizing potential risks.
An LLM-based application can process language in a way that resembles thought. But if you want to extend its capabilities to take actions by running other functions you have coded, you will need to use function calling. This can also be referred to as tool use. Additionally, you can give a model the ability to search Google or search a data store of documents to ground its responses. In other words, to base its answers on that information. In this course, you’ll explore these concepts.
With this course you will learn how to use different techniques to fine-tune Gemini. Model tuning is an effective way to customize large models like Gemini for your specific tasks. It's a key step to improve the model's quality and efficiency. This course will give an overview of model tuning, describe the tuning options available for Gemini, help you determine when each tuning option should be used and how to perform tuning.
Kursus ini membekali para praktisi machine learning dengan alat, teknik, dan praktik terbaik penting untuk mengevaluasi model AI generatif dan prediktif. Evaluasi model adalah disiplin ilmu yang sangat penting untuk memastikan sistem ML memberikan hasil yang andal, akurat, dan berperforma tinggi dalam produksi. Peserta akan mendapatkan pemahaman yang mendalam mengenai berbagai metrik evaluasi, metodologi, dan penerapannya yang sesuai di berbagai jenis model dan tugas. Kursus ini akan berfokus pada tantangan unik yang dibuat oleh model AI generatif dan memberikan strategi untuk mengatasinya secara efektif. Dengan memanfaatkan platform Vertex AI di Google Cloud, para peserta akan belajar cara mengimplementasikan proses evaluasi yang kuat untuk melakukan pemilihan, pengoptimalan, dan pemantauan berkelanjutan pada model.
This course delves into the complexities of assessing the quality of large language model outputs. It examines the challenges enterprises face due to the subjective and sometimes incorrect nature of LLM responses, including hallucinations and inconsistent results. The course introduces various evaluation metrics for different tasks like classification, text generation, and question answering, such as Accuracy, Precision, Recall, F1 score, ROUGE, BLEU, and Exact Match. It also explores evaluation methods offered by Vertex AI LLM Evaluation Services, including computation-based, autorater, and human evaluation, providing insights into their application and benefits. Finally, the module covers how to unit test LLM applications within Vertex AI.
In this course, you'll learn to develop AI agents that answer questions using websites, documents, or structured data. You will explore AI Applications and understand the advantages of data store agents, including their scalability and security. You'll learn about different data store types and also discover how to connect data stores to agents and add personalization for enhanced responses. Finally, you'll gain insights into common search configurations and troubleshooting techniques.
Explore the Generative AI features for Conversational Agents and how to incorporate them into stateful Flows. Discover the possibilities with Generators, Generative Fallback, and Data Stores, as well as best practices and security settings for using these features.
Discover flows in Conversational Agents and learn how to build deterministic chat and voice experiences with language models. Explore key concepts like drivers, intents, and entities, and how to use them to create conversational agents.
Model Garden is a model library that helps you discover, test, and deploy models from Google and Google partners. Learn how to explore the available models and select the right ones for your use case. And how to deploy and interact with Model Garden models through the Google Cloud console and APIs.
This lab tests your ability to develop a real-world Generative AI Q&A solution using a RAG framework. You will use Firestore as a vector database and deploy a Flask app as a user interface to query a food safety knowledge base.
Explore Playbooks and their implementation of the ReAct pattern for building conversational agents. You will learn how to construct a Playbook, set up goals and instructions to build a chatbot in natural language, and learn to test and deploy your solution.
This course explores the different products and capabilities of Gemini Enterprise for Customer Experience, including CX Agent Studio, Agent Assist and CX Insights. Additionally, it covers the foundational principles of conversation design to craft engaging and effective experiences that emulate human-like experiences specific to the Chat channel.
In this course you will learn the key architectural considerations that need to be taken into account when designing for the implementation of Conversational AI solutions.
Text Prompt Engineering Techniques introduces you to consider different strategic approaches & techniques to deploy when writing prompts for text-based generative AI tasks.
Learn a variety of strategies and techniques to engineer effective prompts for generative models
Learn how to leverage Gemini multimodal capabilities to process and generate text, images, and audio and to integrate Gemini through APIs to perform tasks such as content creation and summarization.
Complete the Create and maintain Vertex AI Search data stores skill badge to demonstrate your proficiency in building various types of data stores used in Vertex AI Search applications. A skill badge is an exclusive digital badge issued by Google Cloud in recognition of your proficiency with Google Cloud products and services and tests your ability to apply your knowledge in an interactive hands-on environment. Complete the assessment challenge lab, to receive a skill badge that you can share with your network. When you complete this course, you can earn the badge displayed here and claim it on Credly! Boost your cloud career by showing the world the skills you have developed!
Kursus ini meninjau fitur keamanan penting Model Armor dan membekali Anda untuk bekerja menggunakan layanan ini. Anda akan mempelajari risiko keamanan yang terkait dengan LLM dan cara Model Armor melindungi aplikasi AI Anda.
Selamat datang di kursus "Infrastruktur AI: Teknik Jejaring". Dalam kursus ini, Anda akan mempelajari cara memanfaatkan infrastruktur Google Cloud berbandwidth tinggi dan berlatensi rendah untuk mengoptimalkan transfer data serta komunikasi antara seluruh komponen sistem AI Anda. Di akhir kursus, Anda akan memahami peran penting jejaring di seluruh pipeline AI, mulai dari penyerapan data dan pelatihan hingga inferensi, serta mampu menerapkan praktik terbaik agar workload Anda berjalan dengan kecepatan maksimal.
Dalam kursus ini, Anda akan melakukan perjalanan komprehensif melalui solusi penyimpanan yang tersedia di Google Cloud, yang secara khusus dirancang untuk workload AI dan komputasi berperforma tinggi (HPC). Anda akan mempelajari cara memilih penyimpanan yang tepat untuk setiap tahap siklus proses ML. Anda akan mempelajari cara mengoptimalkan performa I/O selama pelatihan, mengelola set data besar untuk persiapan data, dan menyajikan artefak model dengan latensi rendah. Melalui contoh dan demonstrasi praktis, Anda akan memperoleh keahlian untuk merancang solusi penyimpanan yang andal yang mempercepat inovasi AI Anda.
Kursus ini memberikan panduan komprehensif untuk men-deploy, mengelola, dan mengoptimalkan workload AI dan komputasi berperforma tinggi (HPC) di Google Cloud. Melalui serangkaian pelajaran dan demonstrasi praktis, Anda akan menjelajahi berbagai strategi deployment, mulai dari lingkungan yang sangat mudah disesuaikan menggunakan Google Compute Engine (GCE) hingga solusi terkelola seperti Google Kubernetes Engine (GKE). Secara spesifik, Anda akan mempelajari cara membuat cluster dan men-deploy GKE untuk inferensi.
Selamat datang di kursus TPU Cloud. Kita akan mempelajari kelebihan dan kekurangan TPU dalam berbagai skenario dan membandingkan beragam akselerator TPU untuk membantu Anda memilih akselerator yang tepat. Anda akan mempelajari bermacam strategi untuk memaksimalkan performa dan efisiensi model AI serta memahami pentingnya interoperabilitas GPU/TPU untuk alur kerja machine learning yang fleksibel. Melalui konten yang menarik dan demo praktis, kami akan memandu Anda langkah demi langkah dalam memanfaatkan TPU secara efektif.
Penasaran dengan hardware canggih di balik AI? Modul ini menguraikan komputer AI yang dioptimalkan untuk performa, dan menunjukkan mengapa komputer tersebut sangat penting. Kita akan membahas bagaimana CPU, GPU, dan TPU membuat tugas AI menjadi sangat cepat, apa yang membuat masing-masing unik, dan bagaimana software AI memanfaatkannya secara maksimal. Pada akhirnya, Anda akan tahu persis cara memilih GPU yang tepat untuk project AI Anda, sehingga membantu Anda membuat pilihan cerdas untuk workload AI Anda.
Siap mulai menggunakan AI Hypercomputer? Kursus ini akan membantu Anda. Kami akan membahas dasar-dasar terkait apa itu AI Hypercomputer dan cara AI Hypercomputer membantu AI dalam menangani workload AI. Anda akan mempelajari berbagai komponen di dalam hypercomputer, seperti GPU, TPU, dan CPU, serta menemukan cara memilih pendekatan deployment yang sesuai untuk kebutuhan Anda.
Demonstrate the ability to create and deploy generative virtual agents with natural language using Vertex AI Agent Builder and augment responses by integrating Gemini responses with third party APIs and your own data stores You will use the following technologies and Google Cloud services: Vertex AI Agent Builder Gemini Cloud Functions
Learn how to create Hybrid Search applications using Vertex AI Vertex Search to combine semantic searching with keyword search to return results based on both semantic meaning and keyword matching.
Learn how to build your own Retrieval-Augmented Generation (RAG) solutions for greater control and flexibility than out-of-the-box implementations. Create a custom RAG solution using Vertex AI APIs, vector stores, and the LangChain framework.
Kursus ini mengeksplorasi solusi Retrieval-Augmented Generation (RAG) di BigQuery untuk memitigasi halusinasi AI. Kursus ini akan memperkenalkan alur kerja RAG yang mencakup pembuatan embedding, penelusuran ruang vektor, dan pembuatan jawaban yang lebih baik. Kursus ini akan menjelaskan alasan konseptual di balik langkah-langkah ini dan implementasi praktisnya dengan BigQuery. Di akhir kursus, peserta akan dapat membangun pipeline RAG menggunakan BigQuery dan model AI generatif seperti Gemini dan model embedding untuk menangani kasus penggunaan halusinasi AI mereka sendiri.
Selesaikan badge keahlian pengantar Desain Perintah dalam Vertex AI untuk menunjukkan keterampilan Anda dalam hal berikut: rekayasa perintah, analisis gambar, dan teknik generatif multimodal, dalam Vertex AI. Pelajari cara membuat perintah yang efektif, memandu output AI generatif, dan menerapkan model Gemini dalam skenario pemasaran di dunia nyata.
Dalam kursus ini, Anda akan mempelajari cara mengembangkan aplikasi menggunakan Flutter, yakni toolkit UI portabel dari Google, dan mengintegrasikan aplikasi dengan Gemini, yakni rangkaian produk model AI generatif Google. Anda juga akan menggunakan Vertex AI Agent Builder, yakni platform Google untuk membangun dan mengelola Agen dan aplikasi AI.
In this course, you'll dive deep into the essential topics you need to know to design, build, and maintain a powerful CES solution. Get ready to transform your understanding of what's possible and create an architecture that drives customer satisfaction. This course is designed to introduce you to the architecture of the Customer Engagement Suite (CES). You'll explore the main considerations for building and implementing Conversational AI solutions including key architectural components and integrations. You'll also explore how Conversational AI interacts with Vertex AI and get a high-level overview of the key features of the Conversational AI Platform.
Kursus ini memperkenalkan Gemini Enterprise, platform canggih yang menggabungkan agen AI, penelusuran lingkup perusahaan, NotebookLM, dan akses data cerdas untuk menyelesaikan tantangan organisasi. Melalui contoh nyata dan eksplorasi langsung, peserta kursus akan dapat mengaitkan kemampuan Gemini Enterprise dengan kebutuhan bisnis nyata, mendeskripsikan arsitekturnya, dan menjelaskan caranya menangani akses data dan privasi di berbagai peran.
In this challenge lab, you will demonstrate your ability to author agents using Agent Development Kit (ADK), deploy those agents to Agent Engine, and use them from a web app. Complete the challenge lab to earn a Google Cloud skill badge.
Dalam kursus ini, Anda akan mempelajari cara menggunakan Agent Development Kit Google untuk membangun sistem multi-agen yang kompleks. Anda akan membangun agen yang dilengkapi dengan berbagai alat. Anda juga akan menghubungkannya melalui hubungan dan alur induk-turunan untuk menentukan interaksi antara berbagai agen. Anda akan menjalankan agen secara lokal dan men-deploy-nya ke Agent Engine Vertex AI untuk dijalankan sebagai alur agen terkelola. Agent Engine akan menangani keputusan infrastruktur dan penskalaan resource. Lab ini didasarkan pada versi pra-rilis produk ini. Lab ini mungkin mengalami jeda saat kami melakukan update pemeliharaan.