- مدة الدورة التدريبية: 1 To 2 Months إبدأ الآن
- طريقة تقديم الدورة: عبر عرض الفيديو
تفاصيل الدورة
This course is a really comprehensive guide to the Google Cloud Platform - it has ~20 hours of content and ~60 demos. The Google Cloud Platform is not currently the most popular cloud offering out there - that's AWS of course - but it is possibly the best cloud offering for high-end machine learning applications. That's because TensorFlow, the super-popular deep learning technology is also from Google.
You, This Course and Us (1)
- You, This Course and Us
- Theory, Practice and Tests
- Why Cloud?
- Hadoop and Distributed Computing
- On-premise, Colocation or Cloud?
- Introducing the Google Cloud Platform
- Lab: Setting Up A GCP Account
- Lab: Using The Cloud Shell
- Compute Options
- Google Compute Engine (GCE)
- More GCE
- Lab: Creating a VM Instance
- Lab: Editing a VM Instance
- Lab: Creating a VM Instance Using The Command Line
- Lab: Creating And Attaching A Persistent Disk
- Google Container Engine - Kubernetes (GKE)
- More GKE
- Lab: Creating A Kubernetes Cluster And Deploying A Wordpress Container
- App Engine
- Contrasting App Engine, Compute Engine and Container Engine
- Lab: Deploy and Run An App Engine App
- Storage (9)
- Storage Options
- Quick Take
- Cloud Storage
- Lab: Working With Cloud Storage Buckets
- Lab: Bucket And Object Permissions
- Lab: Life cycle Management On Buckets
- Lab: Running a Program On a VM Instance And Storing Results on Cloud Storage
- Transfer Service
- Lab: Migrating Data Using the Transfer Service
- Cloud SQL
- Lab: Creating A Cloud SQL Instance
- Lab: Running Commands On Cloud SQL Instance
- Lab: Bulk Loading Data Into Cloud SQL Tables
- Cloud Spanner
- More Cloud Spanner
- Lab: Working With Cloud Spanner
- BigTable Intro
- Columnar Store
- Denormalised
- Column Families
- BigTable Performance
- Lab: BigTable demo
- Datastore
- Lab: Datastore demo
- BigQuery Intro
- BigQuery Advanced
- Lab: Loading CSV Data Into Big Query
- Lab: Running Queries On Big Query
- Lab: Loading JSON Data With Nested Tables
- Lab: Public Datasets In Big Query
- Lab: Using Big Query Via The Command Line
- Lab: Aggregations And Conditionals In Aggregations
- Lab: Subqueries And Joins
- Lab: Regular Expressions In Legacy SQL
- Lab: Using The With Statement For SubQueries
- Data Flow Intro
- Apache Beam
- Lab: Running A Python Data flow Program
- Lab: Running A Java Data flow Program
- Lab: Implementing Word Count In Dataflow Java
- Lab: Executing The Word Count Dataflow
- Lab: Executing MapReduce In Dataflow In Python
- Lab: Executing MapReduce In Dataflow In Java
- Lab: Dataflow With Big Query As Source And Side Inputs
- Lab: Dataflow With Big Query As Source And Side Inputs 2
- Data Proc
- Lab: Creating And Managing A Dataproc Cluster
- Lab: Creating A Firewall Rule To Access Dataproc
- Lab: Running A PySpark Job OnDataproc
- Lab: Running ThePySpark REPL Shell And Pig Scripts On Dataproc
- Lab: Submitting A Spark Jar ToDataproc
- Lab: Working With Dataproc Using TheGCloud CLI
- Pub Sub
- Lab: Working With Pubsub On The Command Line
- Lab: Working WithPubSub Using The Web Console
- Lab: Setting Up A Pubsub Publisher Using The Python Library
- Lab: Setting Up A Pubsub Subscriber Using The Python Library
- Lab: Publishing Streaming Data IntoPubsub
- Lab: Reading Streaming Data FromPubSub And Writing To BigQuery
- Lab: Executing A Pipeline To Read Streaming Data And Write To BigQuery
- Lab: Pubsub Source BigQuery Sink
- Data Lab
- Lab: Creating And Working On A Datalab Instance
- Lab: Importing And Exporting Data Using Datalab
- Lab: Using the Charting API InDatalab
- Introducing Machine Learning
- Representation Learning
- NN Introduced
- Introducing TF
- Lab: Simple Math Operations
- Computation Graph
- Tensors
- Lab: Tensors
- Linear Regression Intro
- Placeholders and Variables
- Lab: Placeholders
- Lab: Variables
- Lab: Linear Regression with Made-up Data
- Image Processing
- Images As Tensors
- Lab: Reading and Working with Images
- Lab: Image Transformations
- Introducing MNIST
- K-Nearest Neigbors as Unsupervised Learning
- One-hot Notation and L1 Distance
- Steps in the K-Nearest-Neighbors Implementation
- Lab: K-Nearest-Neighbors
- Learning Algorithm
- Individual Neuron
- Learning Regression
- Learning XOR
- XOR Trained
- Lab: Access Data from Yahoo Finance
- Non TensorFlow Regression
- Lab: Linear Regression - Setting Up a Baseline
- Gradient Descent
- Lab: Linear Regression
- Lab: Multiple Regression in TensorFlow
- Logistic Regression Introduced
- Linear Classification
- Lab: Logistic Regression - Setting Up a Baseline
- Logit
- Softmax
- Argmax
- Lab: Logistic Regression
- Estimators
- Lab: Linear Regression using Estimators
- Lab: Logistic Regression using Estimators
- Lab: Taxicab Prediction - Setting up the dataset
- Lab: Taxicab Prediction - Training and Running the model
- Lab: The Vision, Translate, NLP and Speech API
- Lab: The Vision API for Label and Landmark Detection
- Virtual Private Clouds
- VPC and Firewalls
- XPC or Shared VPC
- VPN
- Types of Load Balancing
- Proxy and Pass-through load balancing
- Internal load balancing
- StackDriver
- StackDriver Logging
- Cloud Deployment Manager
- Cloud Endpoints
- Security and Service Accounts
- OAuth and End-user accounts
- Identity and Access Management
- Data Protection
- Introducing the Hadoop Ecosystem
- Hadoop
- HDFS
- MapReduce
- Yarn
- Hive
- Hive vs. RDBMS
- HQL vs. SQL
- OLAP in Hive
- Windowing Hive
- Pig
- More Pig
- Spark
- More Spark
- Streams Intro
- Microbatches
- Window Types
نبذة عن معهد Testprep Training
Testpreptraining aims to bring in the best assessments and training solutions for learners preparing for various important exams globally. Our tests are designed to allow the learner to practice while preparing for the exam. Tests can be taken as many times as required so that the learner can build confidence along with ability.
They can also take the test as “timed” tests simulating the pressure a learner would feel when taking the actual exam.
We offer testprep examination and elearning courses for 200 certification exams and entrance tests, with a 90% first time pass rate for people who have used testpreptraining for preparation.
TestPrepTraining provides simulated real examination tests for important professional certification exams globally including:-
AWS, Google, CompTIA, Microsoft, Linux, SAS and college entrance exams like GMAT, GRE, IELTS etc.
More than 10,000 assessments are mapped to these courses and our content library and integrated with high end analytics to track your progress with respect to examination pass marks and general pass rates. Each question comes with detailed answer.