Mempelajari cara agen AI mendorong dampak bisnis. Selanjutnya, Anda akan mempelajari cara Gemini Enterprise mengefektifkan Anda dalam membangun dan mengorkestrasi agen yang tepat, mulai dari solusi tanpa coding hingga solusi dengan coding tingkat tinggi.
Agen AI Generatif: Mentransformasi Organisasi Anda adalah kursus kelima dan terakhir dari jalur pembelajaran Pemimpin AI Generatif. Kursus ini membahas cara organisasi menggunakan agen AI generatif kustom untuk membantu mengatasi tantangan bisnis tertentu. Anda akan mendapatkan praktik langsung dalam membangun agen AI generatif dasar, sambil mempelajari komponen agen ini, seperti model, loop penalaran, dan alat.
Ini adalah kursus kelima dari lima kursus dalam Sertifikat Analisis Data Google Cloud. Dalam kursus ini, Anda akan menggabungkan dan menerapkan pengetahuan serta keterampilan dasar dari kursus 1 sampai 4 dalam project akhir praktis yang berfokus pada project siklus proses data secara keseluruhan. Anda akan mempraktikkan penggunaan alat berbasis cloud untuk mengumpulkan, menyimpan, memproses, menganalisis, memvisualisasikan, dan mengomunikasikan insight data secara efektif. Pada akhir kursus, Anda akan menyelesaikan project yang menunjukkan kemahiran Anda dalam menyusun data secara efektif dari berbagai sumber, mempresentasikan solusi kepada berbagai pemangku kepentingan, dan memvisualisasikan insight data menggunakan software berbasis cloud. Anda juga akan memperbarui resume Anda dan mempraktikkan teknik wawancara untuk membantu mempersiapkan diri melamar pekerjaan dan menghadapi wawancara.
Ini adalah kursus ketiga dari lima kursus dalam Sertifikat Analisis Data Google Cloud. Dalam kursus ini, Anda akan memulai dengan mendapatkan ringkasan tentang perjalanan data, mulai dari pengumpulan hingga insight. Kemudian Anda akan mempelajari cara menggunakan SQL untuk mengubah data mentah menjadi format yang dapat digunakan. Selanjutnya, Anda akan mempelajari cara mengubah volume data yang besar menggunakan pipeline data. Terakhir, Anda akan memperoleh pengalaman dalam menerapkan strategi transformasi pada set data yang nyata untuk memenuhi kebutuhan bisnis.
Ini adalah kursus kedua dari lima kursus dalam Sertifikat Analisis Data Google Cloud. Dalam kursus ini, Anda akan mempelajari cara data disusun dan diatur. Anda akan mendapatkan pengalaman langsung dalam mengelola arsitektur lakehouse data dan komponen cloud seperti BigQuery, Google Cloud Storage, dan Dataproc untuk menyimpan, menganalisis, serta memproses set data besar secara efisien.
Ini adalah kursus keempat dari lima kursus dalam Sertifikat Analisis Data Google Cloud. Dalam kursus ini, Anda akan berfokus pada pengembangan keterampilan dalam lima tahap utama visualisasi data di cloud: bercerita, membuat perencanaan, melakukan eksplorasi data, membuat visualisasi, dan berbagi data dengan orang lain. Anda juga akan mendapatkan pengalaman menggunakan keterampilan UI/UX untuk membuat wireframe visualisasi berbasis cloud yang berdampak dan bekerja dengan alat visualisasi data berbasis cloud untuk mengeksplorasi set data, membuat laporan, serta membangun dasbor yang mendorong keputusan dan meningkatkan kolaborasi.
Ini adalah kursus pertama dari lima kursus dalam Sertifikat Analisis Data Google Cloud. Dalam kursus ini, Anda akan mendefinisikan bidang analisis data cloud dan menjelaskan peran serta tanggung jawab seorang analis data cloud terkait akuisisi, penyimpanan, pemrosesan, dan visualisasi data. Anda akan mempelajari arsitektur alat berbasis Google Cloud, seperti BigQuery dan Cloud Storage, serta cara penggunaannya untuk menyusun, menampilkan, dan melaporkan data secara efektif.
Dapatkan badge keahlian tingkat menengah dengan menyelesaikan kursus Membangun dan Men-Deploy Solusi Machine Learning di Vertex AI, tempat Anda akan belajar cara menggunakan platform Vertex AI Google Cloud, AutoML, dan layanan pelatihan kustom untuk melatih, mengevaluasi, menyesuaikan, menjelaskan, serta men-deploy model machine learning. Kursus badge keahlian ini diperuntukkan bagi Data Scientist dan Engineer Machine Learning profesional. Badge keahlian adalah badge digital eksklusif yang diberikan oleh Google Cloud sebagai pengakuan atas kemahiran Anda dalam menggunakan produk dan layanan Google Cloud serta menguji kemampuan Anda dalam menerapkan pengetahuan di lingkungan praktis yang interaktif. Selesaikan Badge keahlian ini, dan challenge lab penilaian akhir, untuk menerima badge digital yang dapat Anda bagikan ke jaringan Anda.
This is the third of five courses in the Google Cloud Data Analytics Certificate. In this course, you’ll begin by getting an overview of the data journey, from collection to insights. You’ll then learn how to use SQL to transform raw data into a usable format. Next, you’ll learn how to transform high volumes of data with a data pipeline. Finally, you’ll gain experience applying transformation strategies to real data sets to solve business needs.
This is the second of five courses in the Google Cloud Data Analytics Certificate. In this course, you’ll explore how data is structured and organized. You’ll gain hands-on experience with the data lakehouse architecture and cloud components like BigQuery, Google Cloud Storage, and DataProc to efficiently store, analyze, and process large datasets.
Menyelesaikan badge keahlian tingkat menengah Menginspeksi Dokumen Multimedia dengan Multimodalitas Gemini dan RAG Multimodal untuk menunjukkan keterampilan dalam hal berikut ini: menggunakan prompt multimodal untuk mengekstrak informasi dari data teks dan visual dengan menghasilkan deskripsi video, dan mengambil informasi tambahan di luar video menggunakan multimodalitas dengan Gemini; membangun metadata dokumen yang berisi teks dan gambar dengan mendapatkan semua potongan teks yang relevan, dan mencetak kutipan dengan menggunakan Multimodal Retrieval Augmented Generation (RAG) dengan Gemini.
This is the fifth of five courses in the Google Cloud Data Analytics Certificate. In this course, you’ll combine and apply the foundational knowledge and skills from courses 1-4 in a hands-on Capstone project that focuses on the full data lifecycle project. You’ll practice using cloud-based tools to acquire, store, process, analyze, visualize, and communicate data insights effectively. By the end of the course, you’ll have completed a project demonstrating their proficiency in effectively structuring data from multiple sources, presenting solutions to varied stakeholders, and visualizing data insights using cloud-based software. You’ll also update your resume and practice interview techniques to help prepare for applying and interviewing for jobs.
This is the first of five courses in the Google Cloud Data Analytics Certificate. In this course, you’ll define the field of cloud data analysis and describe roles and responsibilities of a cloud data analyst as they relate to data acquisition, storage, processing, and visualization. You’ll explore the architecture of Google Cloud-based tools, like BigQuery and Cloud Storage, and how they are used to effectively structure, present, and report data.
Kursus ini memperkenalkan Generative AI Studio, yaitu produk di Vertex AI yang dapat membantu Anda membuat prototipe dan menyesuaikan model AI generatif, sehingga Anda dapat menggunakan kemampuan model tersebut dalam aplikasi Anda. Dalam kursus ini, Anda akan mempelajari apa itu Generative AI Studio, berbagai fitur dan opsinya, serta cara menggunakannya, dengan mengkaji langkah demi langkah yang ditunjukkan dalam demo produk tersebut. Di bagian akhir, terdapat lab praktik untuk menerapkan apa yang telah Anda pelajari dan kuis untuk menguji pengetahuan Anda.
Dapatkan badge keahlian dengan menyelesaikan kursus Introduction to Generative AI, Introduction to Large Language Models, dan Introduction to Responsible AI. Dengan berhasil menyelesaikan kuis akhir, Anda membuktikan pemahaman Anda tentang konsep dasar AI generatif. Badge keahlian adalah badge digital yang diberikan oleh Google Cloud sebagai pengakuan atas pengetahuan Anda tentang produk dan layanan Google Cloud. Pamerkan badge keahlian Anda dengan menampilkan profil Anda kepada publik dan menambahkannya ke profil media sosial Anda.
Selesaikan badge keahlian pengantar Desain Perintah dalam Agent Platform untuk menunjukkan keterampilan Anda dalam hal berikut: rekayasa perintah, analisis gambar, dan teknik generatif multimodal, dalam Agent Platform. Pelajari cara membuat perintah yang efektif, memandu output AI generatif, dan menerapkan model Gemini dalam skenario pemasaran di dunia nyata.
Ini adalah kursus pengantar pembelajaran mikro yang dimaksudkan untuk menjelaskan responsible AI, alasan pentingnya responsible AI, dan cara Google mengimplementasikan responsible AI dalam produknya. Kursus ini juga memperkenalkan 7 prinsip AI Google.
Ini adalah kursus pengantar pembelajaran mikro yang bertujuan untuk mendefinisikan AI Generatif, cara penggunaannya, dan perbedaannya dari metode machine learning konvensional. Kursus ini juga membahas beberapa Alat Google yang dapat membantu Anda mengembangkan aplikasi AI Generatif Anda sendiri.
Ini adalah kursus pengantar pembelajaran mikro yang membahas definisi model bahasa besar (LLM), kasus penggunaannya, dan cara menggunakan prompt tuning untuk meningkatkan performa LLM. Kursus ini juga membahas beberapa alat Google yang dapat membantu Anda mengembangkan aplikasi AI Generatif Anda sendiri.
This is the fourth of five courses in the Google Cloud Data Analytics Certificate. In this course, you’ll focus on developing skills in the five key stages of visualizing data in the cloud: storytelling, planning, exploring data, building visualizations, and sharing data with others. You’ll also gain experience using UI/UX skills to wireframe impactful, cloud-native visualizations and work with cloud-native data visualization tools to explore datasets, create reports, and build dashboards that drive decisions and foster collaboration.
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.
This advanced-level quest is unique amongst the other catalog offerings. The labs have been curated to give IT professionals hands-on practice with topics and services that appear in the Google Cloud Certified Professional Data Engineer Certification. From Big Query, to Dataprep, to Cloud Composer, this quest is composed of specific labs that will put your Google Cloud data engineering knowledge to the test. Be aware that while practice with these labs will increase your skills and abilities, you will need other preparation, too. The exam is quite challenging and external studying, experience, and/or background in cloud data engineering is recommended. Looking for a hands on challenge lab to demonstrate your skills and validate your knowledge? On completing this quest, enroll in and finish the additional challenge lab at the end of the Engineer Data in the Google Cloud to receive an exclusive Google Cloud digital badge.
Many traditional enterprises use legacy systems and applications that can't stay up-to-date with modern customer expectations. Business leaders often have to choose between maintaining their aging IT systems or investing in new products and services. "Modernize Infrastructure and Applications with Google Cloud" explores these challenges and offers solutions to overcome them by using cloud technology. Part of the Cloud Digital Leader learning path, this course aims to help individuals grow in their role and build the future of their business.
In this quest, you will get hands-on experience with LookML in Looker. You will learn how to write LookML code to create new dimensions and measures, create derived tables and join them to Explores, filter Explores, and define caching policies in LookML.
In many IT organizations, incentives are not aligned between developers, who strive for agility, and operators, who focus on stability. Site reliability engineering, or SRE, is how Google aligns incentives between development and operations and does mission-critical production support. Adoption of SRE cultural and technical practices can help improve collaboration between the business and IT. This course introduces key practices of Google SRE and the important role IT and business leaders play in the success of SRE organizational adoption.
This course provides a holistic experience of optimally configuring SAP on Google Cloud. Participants will learn to configure SAP on Google Cloud, and what best practices are, leaving the course with actionable experience to configure SAP on Google Cloud and run SAP workloads on Google Cloud.
In this course, we define what machine learning is and how it can benefit your business. You'll see a few demos of ML in action and learn key ML terms like instances, features, and labels. In the interactive labs, you will practice invoking the pretrained ML APIs available as well as build your own Machine Learning models using just SQL with BigQuery ML.
The third course in this course series is Achieving Advanced Insights with BigQuery. Here we will build on your growing knowledge of SQL as we dive into advanced functions and how to break apart a complex query into manageable steps. We will cover the internal architecture of BigQuery (column-based sharded storage) and advanced SQL topics like nested and repeated fields through the use of Arrays and Structs. Lastly we will dive into optimizing your queries for performance and how you can secure your data through authorized views. After completing this course, enroll in the Applying Machine Learning to your Data with Google Cloud course.
In this course, we see what the common challenges faced by data analysts are and how to solve them with the big data tools on Google Cloud. You’ll pick up some SQL along the way and become very familiar with using BigQuery and Dataprep to analyze and transform your datasets. This is the first course of the From Data to Insights with Google Cloud series. After completing this course, enroll in the Creating New BigQuery Datasets and Visualizing Insights course.
Selesaikan badge keahlian pengantar Membuat dan Mengelola Instance Bigtable untuk menunjukkan keterampilan dalam hal berikut: membuat instance, mendesain skema, mengkueri data, dan melakukan tugas administratif di Bigtable termasuk memantau performa serta mengonfigurasi penskalaan otomatis dan replikasi node.
This course, Google Cloud Big Data and Machine Learning Fundamentals - Locales, is intended for non-English learners. If you want to take this course in English, please enroll in Google Cloud Big Data and Machine Learning Fundamentals. This course introduces the Google Cloud big data and machine learning products and services that support the data-to-AI lifecycle. It explores the processes, challenges, and benefits of building a big data pipeline and machine learning models with Vertex AI on Google Cloud.
Dapatkan badge keahlian dengan menyelesaikan kursus tentang pengantar Membuat dan Mengelola Instance Cloud Spanner untuk menunjukkan keterampilan dalam: membuat dan berinteraksi dengan instance dan database Cloud Spanner; memuat database Cloud Spanner menggunakan berbagai teknik; mencadangkan database Cloud Spanner; menentukan skema dan memahami rencana kueri; serta men-deploy Aplikasi Web Modern yang terhubung ke instance Cloud Spanner.
In this intermediate course, you will learn to design, build, and optimize robust batch data pipelines on Google Cloud. Moving beyond fundamental data handling, you will explore large-scale data transformations and efficient workflow orchestration, essential for timely business intelligence and critical reporting. Get hands-on practice using Dataflow for Apache Beam and Serverless for Apache Spark (Dataproc Serverless) for implementation, and tackle crucial considerations for data quality, monitoring, and alerting to ensure pipeline reliability and operational excellence. A basic knowledge of data warehousing, ETL/ELT, SQL, Python, and Google Cloud concepts is recommended.
Kursus Fondasi Google Cloud Computing ditujukan bagi individu yang memiliki sedikit atau tanpa latar belakang atau pengalaman dalam cloud computing. Kursus ini memberikan ringkasan tentang berbagai konsep penting dalam dasar-dasar cloud, big data, dan machine learning, serta peran dan cara penggunaan Google Cloud. Di akhir rangkaian kursus, peserta kursus akan mampu menjelaskan konsep-konsep ini dan menunjukkan beberapa keterampilan praktis. Berbagai kursus ini harus diselesaikan dalam urutan berikut: Fondasi Google Cloud Computing: Dasar-Dasar Cloud Computing Fondasi Google Cloud Computing: Infrastruktur di Google Cloud Fondasi Google Cloud Computing: Networking dan Keamanan di Google Cloud Fondasi Google Cloud Computing: Data, ML, dan AI di Google Cloud Kursus terakhir dalam rangkaian ini mengulas layanan big data terkelola, machine learning dan nilainya, serta cara untuk menunjukkan keahlian Anda di Google Cloud dengan mendapatkan Badge Keahlian.
Kursus Fondasi Google Cloud Computing ditujukan bagi individu yang memiliki sedikit atau tidak memiliki latar belakang atau pengalaman dalam cloud computing. Kursus ini memberikan gambaran umum tentang berbagai konsep penting dalam dasar-dasar cloud computing, big data, dan machine learning, serta di mana dan bagaimana Google Cloud berperan di dalamnya. Pada akhir rangkaian kursus, peserta kursus akan mampu mengartikulasikan konsep ini dan menunjukkan beberapa keterampilan praktis. Berbagai kursus ini harus diselesaikan dalam urutan berikut: 1. Fondasi Google Cloud Computing: Dasar-Dasar Cloud Computing 2. Fondasi Google Cloud Computing: Infrastruktur di Google Cloud 3. Fondasi Google Cloud Computing: Networking dan Keamanan di Google Cloud 4. Fondasi Google Cloud Computing: Data, ML, dan AI di Google Cloud Kursus ketiga ini membahas alat otomatisasi dan pengelolaan cloud serta membangun jaringan yang aman.
Kursus Fondasi Google Cloud Computing ditujukan bagi individu yang memiliki sedikit atau tanpa latar belakang atau pengalaman dalam cloud computing. Kursus ini memberikan ringkasan tentang berbagai konsep penting dalam dasar-dasar cloud, big data, dan machine learning, serta peran dan cara penggunaan Google Cloud. Di akhir rangkaian kursus, peserta kursus akan mampu menjelaskan konsep-konsep ini dan menunjukkan beberapa keterampilan praktis. Berbagai kursus ini harus diselesaikan dalam urutan berikut: 1. Fondasi Google Cloud Computing: Dasar-Dasar Cloud Computing 2. Fondasi Google Cloud Computing: Infrastruktur di Google Cloud 3. Fondasi Google Cloud Computing: Jaringan dan Keamanan di Google Cloud 4. Fondasi Google Cloud Computing: Data, ML, dan AI di Google Cloud
Kursus Fondasi Google Cloud Computing ditujukan bagi individu yang memiliki sedikit atau tidak memiliki latar belakang atau pengalaman dalam cloud computing. Kursus ini memberikan gambaran umum tentang berbagai konsep penting dalam dasar-dasar cloud computing, big data, dan machine learning, serta di mana dan bagaimana Google Cloud berperan di dalamnya. Pada akhir rangkaian kursus, peserta kursus akan mampu mengartikulasikan konsep ini dan menunjukkan beberapa keterampilan praktis. Berbagai kursus ini harus diselesaikan dalam urutan berikut: 1. Fondasi Google Cloud Computing: Dasar-Dasar Cloud Computing 2. Fondasi Google Cloud Computing: Infrastruktur di Google Cloud 3. Fondasi Google Cloud Computing: Networking dan Keamanan di Google Cloud 4. Fondasi Google Cloud Computing: Data, ML, dan AI di Google Cloud Kursus pertama ini memberikan gambaran umum tentang cloud computing, cara menggunakan Google Cloud, dan berbagai opsi komputasi.
This course, Building Resilient Streaming Analytics Systems on Google Cloud - Locales, is intended for non-English learners. If you want to take this course in English, please enroll in Building Resilient Streaming Analytics Systems on Google Cloud. Processing streaming data is becoming increasingly popular as streaming enables businesses to get real-time metrics on business operations. This course covers how to build streaming data pipelines on Google Cloud. Pub/Sub is described for handling incoming streaming data. The course also covers how to apply aggregations and transformations to streaming data using Dataflow, and how to store processed records to BigQuery or Cloud Bigtable for analysis. Learners will get hands-on experience building streaming data pipeline components on Google Cloud using QwikLabs.
In this course, you apply your knowledge of classification models and embeddings to build a ML pipeline that functions as a recommendation engine. This is the fifth and final course of the Advanced Machine Learning on Google Cloud series.
This course takes a real-world approach to the ML Workflow through a case study. An ML team faces several ML business requirements and use cases. The team must understand the tools required for data management and governance and consider the best approach for data preprocessing. The team is presented with three options to build ML models for two use cases. The course explains why they would use AutoML, BigQuery ML, or custom training to achieve their objectives.
This course introduces the products and solutions to solve NLP problems on Google Cloud. Additionally, it explores the processes, techniques, and tools to develop an NLP project with neural networks by using Vertex AI and TensorFlow.
This course covers how to implement the various flavors of production ML systems— static, dynamic, and continuous training; static and dynamic inference; and batch and online processing. You delve into TensorFlow abstraction levels, the various options for doing distributed training, and how to write distributed training models with custom estimators. This is the second course of the Advanced Machine Learning on Google Cloud series. After completing this course, enroll in the Image Understanding with TensorFlow on Google Cloud course.
Selesaikan badge keahlian pengantar Menyiapkan Data untuk ML API di Google Cloud untuk menunjukkan keterampilan Anda dalam hal berikut: menghapus data dengan Dataprep by Trifacta, menjalankan pipeline data di Dataflow, membuat cluster dan menjalankan tugas Apache Spark di Managed Service for Apache Spark, dan memanggil beberapa ML API, termasuk Cloud Natural Language API, Google Cloud Speech-to-Text API, dan Video Intelligence API.
In this series of labs you will learn how to use BigQuery to analyze NCAA basketball data with SQL. Build a Machine Learning Model to predict the outcomes of NCAA March Madness basketball tournament games.
Business professionals in non-technical roles have a unique opportunity to lead or influence machine learning projects. If you have questions about machine learning and want to understand how to use it, without the technical jargon, this course is for you. Learn how to translate business problems into machine learning use cases and vet them for feasibility and impact. Find out how you can discover unexpected use cases, recognize the phases of an ML project and considerations within each, and gain confidence to propose a custom ML use case to your team or leadership or translate the requirements to a technical team.
Earn a skill badge by completing the Explore Machine Learning Models with Explainable AI quest, where you will learn how to do the following using Explainable AI: build and deploy a model to an AI platform for serving (prediction), use the What-If Tool with an image recognition model, identify bias in mortgage data using the What-If Tool, and compare models using the What-If Tool to identify potential bias. 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 this skill badge quest and the final assessment challenge lab to receive a skill badge that you can share with your network.
Ini adalah kursus kedua dalam seri dua bagian tentang dasar-dasar pengelolaan biaya dan penagihan Google Cloud. Kursus ini paling cocok diikuti oleh orang yang berprofesi di bidang Keuangan dan/atau IT yang bertanggung jawab untuk mengoptimalkan infrastruktur cloud organisasi mereka. Di sini, Anda akan mempelajari beberapa cara untuk mengontrol dan mengoptimalkan biaya Google Cloud, termasuk menyiapkan anggaran dan pemberitahuan, mengelola batas kuota, dan memanfaatkan diskon abonemen. Di bagian lab praktik, Anda akan berlatih menggunakan berbagai alat untuk mengontrol dan mengoptimalkan biaya Google Cloud atau mendorong penerapan praktik terbaik optimalisasi biaya di tim teknologi Anda.
Kursus ini paling cocok diikuti oleh orang yang berprofesi di bidang teknologi atau keuangan yang bertanggung jawab mengelola biaya-biaya Google Cloud. Anda akan mempelajari cara menyiapkan akun penagihan, mengatur resource, dan mengelola izin akses penagihan. Di bagian lab praktik, Anda akan mempelajari cara melihat invoice, menganalisis data penagihan dengan BigQuery atau Google Spreadsheet, dan membuat dasbor penagihan kustom dengan Data Studio. Referensi yang dibuat untuk link di video-video tersebut dapat diakses di dokumen Resource Tambahan ini.
"This course, Machine Learning in the Enterprise - Locales, is intended for non-English learners. If you want to take this course in English, please enroll inMachine Learning in the Enterprise". This course encompasses a real-world practical approach to the ML Workflow: a case study approach that presents an ML team faced with several ML business requirements and use cases. This team must understand the tools required for data management and governance and consider the best approach for data preprocessing: from providing an overview of Dataflow and Dataprep to using BigQuery for preprocessing tasks. The team is presented with three options to build machine learning models for two specific use cases. This course explains why the team would use AutoML, BigQuery ML, or custom training to achieve their objectives. A deeper dive into custom training is presented in this course. We describe custom training requirements from training code structure, storage, and loading large datasets to e…
This course, Migrating to Google Cloud - Locales is intended for non-English learners only. To take course in English, please enroll in Migrating to Google Cloud. This course introduces participants to the strategies to migrate from a source environment to Google Cloud. Participants are introduced to Google Cloud's fundamental concepts and more in depth topics, like creating virtual machines, configuring networks and managing access and identities. The course then covers the installation and migration process of Migrate for Compute Engine, including special features like test clones and wave migrations.
This course, Achieving Advanced Insights with BigQuery - Locales, is intended for non-English learners. If you want to take this course in English, please enroll in Achieving Advanced Insights with BigQuery. The third course in this course series is Achieving Advanced Insights with BigQuery. Here we will build on your growing knowledge of SQL as we dive into advanced functions and how to break apart a complex query into manageable steps. We will cover the internal architecture of BigQuery (column-based sharded storage) and advanced SQL topics like nested and repeated fields through the use of Arrays and Structs. Lastly we will dive into optimizing your queries for performance and how you can secure your data through authorized views. After completing this course, enroll in the Applying Machine Learning to your Data with Google Cloud course.
This self-paced training course gives participants broad study of security controls and techniques on Google Cloud. Through recorded lectures, demonstrations, and hands-on labs, participants explore and deploy the components of a secure Google Cloud solution, including Cloud Storage access control technologies, Security Keys, Customer-Supplied Encryption Keys, API access controls, scoping, shielded VMs, encryption, and signed URLs. It also covers securing Kubernetes environments.
Dapatkan badge keahlian dengan menyelesaikan kursus Menyiapkan Jaringan Google Cloud, untuk mempelajari cara menjalankan tugas-tugas networking dasar di Google Cloud Platform, yakni membuat jaringan kustom, menambahkan aturan firewall subnet, lalu membuat VM dan menguji latensi saat VM berkomunikasi satu sama lain.
In this self-paced training course, participants learn mitigations for attacks at many points in a Google Cloud-based infrastructure, including Distributed Denial-of-Service attacks, phishing attacks, and threats involving content classification and use. They also learn about the Security Command Center, cloud logging and audit logging, and using Forseti to view overall compliance with your organization's security policies.
This self-paced training course gives participants broad study of security controls and techniques on Google Cloud. Through recorded lectures, demonstrations, and hands-on labs, participants explore and deploy the components of a secure Google Cloud solution, including Cloud Identity, Resource Manager, IAM, Virtual Private Cloud firewalls, Cloud Load Balancing, Cloud Peering, Cloud Interconnect, and VPC Service Controls. This is the first course of the Security in Google Cloud series. After completing this course, enroll in the Security Best Practices in Google Cloud course.
Organizations of all sizes are embracing the power and flexibility of the cloud to transform how they operate. However, managing and scaling cloud resources effectively can be a complex task. Scaling with Google Cloud Operations explores the fundamental concepts of modern operations, reliability, and resilience in the cloud, and how Google Cloud can help support these efforts. Part of the Cloud Digital Leader learning path, this course aims to help individuals grow in their role and build the future of their business.
Introduction to Cloud Identity serves as the starting place for any new Cloud Identity, Identity/Access Management/Mobile Device Management admins as they begin their journey of managing and establishing security and access management best practices for their organization. This 15-30 hour accelerated, one-week course will leave you feeling confident to utilize the basic functions of the Admin Console to manage users, control access to services, configure common security settings, and much more. Through a series of introductory lessons, step-by-step hands-on exercises, Google knowledge resources, and knowledge checks, learners can expect to leave this training with all of the skills they need to get started as new Cloud Identity Administrators.
Google Cloud Fundamentals for AWS Professionals introduces important concepts and terminology for working with Google Cloud. Through videos and hands-on labs, this course presents and compares many of Google Cloud's computing and storage services, along with important resource and policy management tools.
Dasar-Dasar Google Cloud: Infrastruktur Inti memperkenalkan konsep dan terminologi penting untuk bekerja dengan Google Cloud. Melalui video dan lab interaktif, kursus ini menyajikan dan membandingkan banyak layanan komputasi dan penyimpanan Google Cloud, bersama dengan resource penting dan alat pengelolaan kebijakan.
Quest level dasar ini berbeda dengan penawaran Qwiklabs lainnya. Semua lab yang termasuk dalam level ini telah diseleksi untuk membekali profesional IT dengan praktik langsung tentang berbagai topik dan layanan yang diujikan dalam Sertifikasi Google Cloud Certified Professional Cloud Architect . Dari IAM, hingga jaringan, dan penerapan Kubernetes Engine, quest ini tersusun atas sejumlah lab spesifik yang akan menguji pengetahuan Anda tentang GCP. Harap diketahui bahwa, meskipun praktik dengan lab ini akan meningkatkan keterampilan dan kemampuan Anda, sebaiknya Anda juga mempelajari panduan ujian serta referensi persiapan lain yang tersedia.
In this quest, you will learn about Google Cloud’s IoT Core service and its integration with other services like GCS, Dataprep, Stackdriver and Firestore. The labs in this quest use simulator code to mimic IOT devices and the learning here should empower you to implement the same streaming pipeline with real world IoT devices.
In this advanced-level quest, you will learn how to harness serious Google Cloud computing power to run big data and machine learning jobs. The hands-on labs will give you use cases, and you will be tasked with implementing big data and machine learning practices utilized by Google’s very own Solutions Architecture team. From running Big Query analytics on tens of thousands of basketball games, to training TensorFlow image classifiers, you will quickly see why Google Cloud is the go-to platform for running big data and machine learning jobs.
Big data, machine learning, and scientific data? It sounds like the perfect match. In this course, you will get hands-on practice with GCP services like BigQuery, Managed Service for Apache Spark, and Tensorflow by applying them to use cases that employ real-life, scientific data sets. By getting experience with tasks like earthquake data analysis and satellite image aggregation, Scientific Data Processing will expand your skill set in big data and machine learning so you can start tackling your own problems across a spectrum of scientific disciplines.
In this quest you will use a collection of Google APIs that are all related to language, and speech. You will use the Speech-to-Text API to transcribe an audio file into a text file, the Cloud Translation API to translate from one language to another, the Cloud Translation API to detect what language is being used and translate to a different language, the Natural Language API to classify text and analyze sentiment, and create synthetic speech.
"This course, Machine Learning in the Enterprise - Locales, is intended for non-English learners. If you want to take this course in English, please enroll inMachine Learning in the Enterprise". This course encompasses a real-world practical approach to the ML Workflow: a case study approach that presents an ML team faced with several ML business requirements and use cases. This team must understand the tools required for data management and governance and consider the best approach for data preprocessing: from providing an overview of Dataflow and Dataprep to using BigQuery for preprocessing tasks. The team is presented with three options to build machine learning models for two specific use cases. This course explains why the team would use AutoML, BigQuery ML, or custom training to achieve their objectives. A deeper dive into custom training is presented in this course. We describe custom training requirements from training code structure, storage, and loading large datasets to e…
"This course, Feature Engineering - Locales, is intended for non-English learners. If you want to take this course in English, please enroll in Feature Engineering." Want to know about Vertex AI Feature Store? Want to know how you can improve the accuracy of your ML models? What about how to find which data columns make the most useful features? Welcome to Feature Engineering, where we discuss good versus bad features and how you can preprocess and transform them for optimal use in your models. This course includes content and labs on feature engineering using BigQuery ML, Keras, and TensorFlow
This course, TensorFlow on Google Cloud - Locales, is intended for non-English learners. If you want to take this course in English, please enroll in TensorFlow on Google Cloud. This course covers designing and building a TensorFlow 2.x input data pipeline, building ML models with TensorFlow 2.x and Keras, improving the accuracy of ML models, writing ML models for scaled use and writing specialized ML models.
Using large scale computing power to recognize patterns and "read" images is one of the foundational technologies in AI, from self-driving cars to facial recognition. The Google Cloud Platform provides world class speed and accuracy via systems that can utilized by simply calling APIs. With these and a host of other APIs, GCP has a tool for just about any machine learning job. In this introductory quest, you will get hands-on practice with machine learning as it applies to image processing by taking labs that will enable you to label images, detect faces and landmarks, as well as extract, analyze, and translate text from within images.
Bukan rahasia lagi bahwa machine learning adalah salah satu bidang yang berkembang paling cepat di ranah teknologi, dan Google Cloud Platform telah berperan penting dalam memajukan pengembangannya. Dengan berbagai API, GCP memiliki alat untuk hampir semua tugas machine learning. Dalam kursus pengantar ini, Anda akan melakukan praktik langsung dengan machine learning sebagaimana diterapkan pada pemrosesan bahasa, melalui serangkaian lab yang akan memungkinkan Anda mengekstrak entity dari teks, melakukan analisis sentimen dan sintaksis, serta menggunakan Speech to Text API untuk melakukan transkripsi.
Big data, machine learning, dan kecerdasan buatan menjadi topik komputasi yang populer saat ini, tetapi bidang tersebut sangat terspesialisasi dan materi pengantarnya sulit diperoleh. Untungnya, Google Cloud menyediakan layanan yang mudah digunakan dalam bidang tersebut, dan melalui kursus tingkat pengantar ini, Anda dapat mengambil langkah pertama dengan alat seperti BigQuery, Cloud Speech API, dan Video Intelligence.
This is the first of two Quests of hands-on labs is derived from the exercises from the book Data Science on Google Cloud Platform, 2nd Edition by Valliappa Lakshmanan, published by O'Reilly Media, Inc. In this first Quest, covering up through chapter 8, you are given the opportunity to practice all aspects of ingestion, preparation, processing, querying, exploring and visualizing data sets using Google Cloud tools and services.
The course begins with a discussion about data: how to improve data quality and perform exploratory data analysis. We describe Vertex AI AutoML and how to build, train, and deploy an ML model without writing a single line of code. You will understand the benefits of Big Query ML. We then discuss how to optimize a machine learning (ML) model and how generalization and sampling can help assess the quality of ML models for custom training.
This course, How Google Does Machine Learning- Locales, is intended for non-English learners. If you want to take this course in English, please enroll in How Google Does Machine Learning. What are best practices for implementing machine learning on Google Cloud? What is Vertex AI and how can you use the platform to quickly build, train, and deploy AutoML machine learning models without writing a single line of code? What is machine learning, and what kinds of problems can it solve? Google thinks about machine learning slightly differently: it’s about providing a unified platform for managed datasets, a feature store, a way to build, train, and deploy machine learning models without writing a single line of code, providing the ability to label data, create Workbench notebooks using frameworks such as TensorFlow, SciKit Learn, Pytorch, R, and others. Our Vertex AI Platform also includes the ability to train custom models, build component pipelines, and perform both online and bat…
This course introduces the Google Cloud big data and machine learning products and services that support the data-to-AI lifecycle. It explores the processes, challenges, and benefits of building a big data pipeline and machine learning models with Vertex AI on Google Cloud.
While the traditional approaches of using data lakes and data warehouses can be effective, they have shortcomings, particularly in large enterprise environments. This course introduces the concept of a data lakehouse and the Google Cloud products used to create one. A lakehouse architecture uses open-standard data sources and combines the best features of data lakes and data warehouses, which addresses many of their shortcomings.
Selesaikan kursus badge keahlian pengantar Memigrasikan Data MySQL ke Cloud SQL Menggunakan Database Migration Service untuk menunjukkan keterampilan dalam hal berikut: memigrasikan data MySQL ke Cloud SQL menggunakan berbagai jenis tugas dan opsi konektivitas yang tersedia dalam Database Migration Service dan memigrasikan data pengguna MySQL saat menjalankan tugas Database Migration Service.
In this course you will learn how to use several BigQuery ML features to improve retail use cases. Predict the demand for bike rentals in NYC with demand forecasting, and see how to use BigQuery ML for a classification task that predicts the likelihood of a website visitor making a purchase.
Ingin membangun model ML dalam hitungan menit, bukan jam, hanya dengan menggunakan SQL? BigQuery ML memperluas akses machine learning dengan memungkinkan analis data membuat, melatih, mengevaluasi, dan memprediksi sesuatu dengan model machine learning menggunakan alat serta keterampilan SQL yang ada. Dalam rangkaian lab ini, Anda akan bereksperimen dengan beragam jenis model dan mempelajari ciri-ciri model yang baik.
Want to turn your marketing data into insights and build dashboards? Bring all of your data into one place for large-scale analysis and model building. Get repeatable, scalable, and valuable insights into your data by learning how to query it and using BigQuery. BigQuery is Google's fully managed, NoOps, low cost analytics database. With BigQuery you can query terabytes and terabytes of data without having any infrastructure to manage or needing a database administrator. BigQuery uses SQL and can take advantage of the pay-as-you-go model. BigQuery allows you to focus on analyzing data to find meaningful insights.
Data Catalog is deprecated and will be discontinued on January 30, 2026. You can still complete this course if you want to. For steps to transition your Data Catalog users, workloads, and content to Dataplex Catalog, see Transition from Data Catalog to Dataplex Catalog (https://cloud.google.com/dataplex/docs/transition-to-dataplex-catalog). Data Catalog is a fully managed and scalable metadata management service that empowers organizations to quickly discover, understand, and manage all of their data. In this quest you will start small by learning how to search and tag data assets and metadata with Data Catalog. After learning how to build your own tag templates that map to BigQuery table data, you will learn how to build MySQL, PostgreSQL, and SQLServer to Data Catalog Connectors.
Want to scale your data analysis efforts without managing database hardware? Learn the best practices for querying and getting insights from your data warehouse with this interactive series of BigQuery labs. BigQuery is Google's fully managed, NoOps, low cost analytics database. With BigQuery you can query terabytes and terabytes of data without having any infrastructure to manage or needing a database administrator. BigQuery uses SQL and can take advantage of the pay-as-you-go model. BigQuery allows you to focus on analyzing data to find meaningful insights.
Looking to build or optimize your data warehouse? Learn best practices to Extract, Transform, and Load your data into Google Cloud with BigQuery. In this series of interactive labs you will create and optimize your own data warehouse using a variety of large-scale BigQuery public datasets. BigQuery is Google's fully managed, NoOps, low cost analytics database. With BigQuery you can query terabytes and terabytes of data without having any infrastructure to manage or needing a database administrator. BigQuery uses SQL and can take advantage of the pay-as-you-go model. BigQuery allows you to focus on analyzing data to find meaningful insights. Looking for a hands on challenge lab to demonstrate your skills and validate your knowledge? On completing this quest, enroll in and finish the additional challenge lab at the end of this quest to receive an exclusive Google Cloud digital badge.
Selesaikan badge keahlian tingkat menengah Membangun Data Warehouse dengan BigQuery untuk menunjukkan keterampilan Anda dalam hal berikut: menggabungkan data untuk membuat tabel baru, memecahkan masalah penggabungan, menambahkan data dengan union, membuat tabel berpartisi tanggal, serta menggunakan JSON, array, dan struct di BigQuery.
Selesaikan badge keahlian tingkat menengah Menerapkan Dasar-Dasar Keamanan Cloud di Google Cloud untuk menunjukkan kemahiran dalam hal berikut: membuat dan menetapkan peran dengan Identity and Access Management (IAM); membuat dan mengelola akun layanan; memungkinkan konektivitas pribadi di seluruh jaringan virtual private cloud (VPC); membatasi akses aplikasi menggunakan Identity-Aware Proxy; mengelola kunci dan data terenkripsi dengan Cloud Key Management Service (KMS); dan membuat cluster Kubernetes pribadi.
Jika Anda adalah developer cloud pemula yang mencari praktik langsung di luar Google Cloud Essentials, kursus ini cocok untuk Anda. Anda akan mendapatkan pengalaman praktis melalui lab yang mendalami Cloud Storage dan layanan aplikasi utama lainnya seperti Monitoring dan Cloud Functions. Anda akan mengembangkan keahlian berharga yang dapat diterapkan untuk inisiatif Google Cloud apa pun.
Keamanan adalah fitur layanan Google Cloud yang tidak dapat dikompromikan, dan Google Cloud telah mengembangkan alat khusus untuk memastikan keamanan dan identitas di seluruh project Anda. Dalam kursus pengantar ini, Anda akan melakukan praktik langsung dengan Layanan Identity and Access Management (IAM) Google Cloud, yang merupakan layanan utama untuk mengelola akun pengguna dan virtual machine. Anda akan mendapatkan pengalaman dengan keamanan jaringan dengan menyediakan VPC dan VPN, serta mempelajari alat-alat yang tersedia untuk mendapatkan perlindungan dari ancaman keamanan dan kebocoran data.
It's no secret that machine learning is one of the fastest growing fields in tech, and Google Cloud has been instrumental in furthering its development. With a host of APIs, Google Cloud has a tool for just about any machine learning job. In this advanced-level course, you will get hands-on practice with machine learning APIs by taking labs like Detect Labels, Faces, and Landmarks in Images with the Cloud Vision API. Looking for a hands-on challenge lab to demonstrate your skills and validate your knowledge? Enroll in and finish the additional challenge lab at the end of this quest to receive an exclusive Google Cloud digital badge.
Dapatkan badge keahlian dengan menyelesaikan kursus Arsitektur Cloud: Merancang, Mengimplementasikan, dan Mengelola untuk menunjukkan keahlian Anda dalam hal berikut: men-deploy situs yang dapat diakses secara publik menggunakan server web Apache, mengonfigurasi VM Compute Engine menggunakan skrip startup, mengonfigurasi RDP yang aman menggunakan Bastion host Windows dan aturan firewall, membangun dan men-deploy image Docker ke cluster Kubernetes serta kemudian mengupdatenya, membuat instance CloudSQL, dan mengimpor database MySQL. Kursus badge keahlian ini merupakan referensi yang bagus untuk memahami topik yang akan muncul di ujian sertifikasi Professional Cloud Architect Tersertifikasi Google Cloud.
This course offers hands-on practice with migrating MySQL data to Cloud SQL using Database Migration Service. You start with an introductory lab that briefly reviews how to get started with Cloud SQL for MySQL, including how to connect to Cloud SQL instances using the Cloud Console. Then, you continue with two labs focused on migrating MySQL databases to Cloud SQL using different job types and connectivity options available in Database Migration Service. The course ends with a lab on migrating MySQL user data when running Database Migration Service jobs.
Kursus pengantar ini unik dibandingkan penawaran kursus lainnya. Semua lab dalam kursus ini telah diseleksi untuk membekali profesional IT dengan praktik langsung terkait berbagai topik dan layanan yang muncul di Sertifikasi Associate Cloud Engineer yang Tersertifikasi Google Cloud. Dari IAM, networking, hingga deployment Kubernetes Engine, kursus ini terdiri atas beberapa lab khusus yang akan menguji pengetahuan Anda terkait Google Cloud. Perlu diketahui bahwa meskipun praktik dalam lab akan meningkatkan keterampilan dan kemampuan Anda, sebaiknya Anda juga meninjau panduan ujian dan referensi persiapan lainnya yang tersedia.
Dalam kursus tingkat pemula ini, Anda akan mendapatkan praktik langsung dengan alat dan layanan dasar Google Cloud. Video opsional disediakan untuk memberikan konteks dan ulasan lebih lanjut mengenai konsep-konsep yang dibahas dalam lab ini. Dasar-Dasar Google Cloud adalah kursus pertama yang direkomendasikan bagi peserta kursus Google Cloud— Anda bisa mengikutinya dengan pengetahuan yang minim atau tanpa pengetahuan sama sekali tentang cloud, dan mendapatkan pengalaman praktis yang dapat diterapkan pada project Google Cloud pertama Anda setelah menyelesaikan kursus ini. Mulai dari menulis perintah Cloud Shell dan men-deploy virtual machine pertama Anda, hingga menjalankan aplikasi di Kubernetes Engine atau dengan load balancing, Dasar-Dasar Google Cloud merupakan pengantar utama untuk fitur dasar platform ini.
Cloud SQL is a fully managed database service that stands out from its peers due to high performance, seamless integration, and impressive scalability. In this quest you will receive hands-on practice with the basics of Cloud SQL and quickly progress to advanced features, which you will apply to production frameworks and application environments. From creating instances and querying data with SQL, to building Deployment Manager scripts and connecting Cloud SQL instances with applications run on GKE containers, this quest will give you the knowledge and experience needed so you can start integrating this service right away.
Kursus ini menawarkan praktik langsung dengan Cloud Data Fusion, platform integrasi data tanpa kode berbasis cloud. Developer ETL, Data Engineer, dan Analis dapat memperoleh manfaat besar dari transformasi dan konektor bawaan untuk membangun dan men-deploy pipeline mereka tanpa perlu menulis kode. Kursus ini dimulai dengan lab panduan memulai yang memperkenalkan UI Cloud Data Fusion kepada peserta. Peserta dapat mencoba menjalankan pipeline batch dan real time serta menggunakan plugin Wrangler untuk melakukan beberapa transformasi menarik pada data.
Selesaikan badge keahlian tingkat menengah Membuat Model ML dengan BigQuery ML untuk menunjukkan keterampilan dalam hal berikut: membuat dan mengevaluasi model machine learning dengan BigQuery ML untuk membuat prediksi data.
Dapatkan badge keahlian tingkat lanjut dengan menyelesaikan kursus tentang Menggunakan API Machine Learning di Google Cloud yang membahas fitur dasar machine learning dan dan teknologi AI berikut: Cloud Vision API, Cloud Translation API, dan Cloud Natural Language API.
Dapatkan badge keahlian dengan menyelesaikan kursus Mengembangkan Jaringan Google Cloud Anda yang berisi pelajaran tentang berbagai cara untuk men-deploy dan memantau aplikasi, termasuk cara: menjelajahi peran IAM dan menambahkan/menghapus akses project, membuat jaringan VPC, men-deploy dan memantau VM Compute Engine, menulis kueri SQL, men-deploy dan memantau VM di Compute Engine, serta men-deploy aplikasi menggunakan Kubernetes dengan beberapa pendekatan deployment.
Selesaikan badge keahlian pengantar Mendapatkan Insight dari Data BigQuery untuk menunjukkan keterampilan dalam hal berikut: menulis kueri SQL, membuat kueri tabel publik, memuat sampel data ke dalam BigQuery, memecahkan masalah error sintaksis umum dengan validator kueri di BigQuery, dan membuat laporan di Data Studio dengan menghubungkannya ke data BigQuery.
Dapatkan badge keahlian dengan menyelesaikan kursus Menyiapkan Lingkungan Pengembangan Aplikasi di Google Cloud, yang memungkinkan Anda mempelajari cara membangun dan menghubungkan infrastruktur cloud yang berpusat pada penyimpanan menggunakan kemampuan dasar teknologi berikut: Cloud Storage, Identity and Access Management, Cloud Functions, dan Pub/Sub.
Selesaikan badge keahlian pengantar Menyiapkan Data untuk Dasbor dan Laporan Looker untuk menunjukkan keterampilan dalam hal berikut: memfilter, mengurutkan, dan melakukan pivot pada data; menggabungkan hasil dari sejumlah Eksplorasi Looker; serta menggunakan fungsi dan operator untuk membangun dasbor dan laporan Looker untuk analisis dan visualisasi data.
Selesaikan badge keahlian pengantar Mengimplementasikan Cloud Load Balancing untuk Compute Engine untuk menunjukkan keterampilan dalam hal berikut: membuat dan men-deploy virtual machine di Compute Engine serta mengonfigurasi load balancer aplikasi dan jaringan.