Merge pull request #12 from kananinirav/Nirav/machine-learning-services
[Modified / Added] Machine Learning Document
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- [Cloud Monitoring](sections/cloud_monitoring.md)
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- [Cloud Monitoring](sections/cloud_monitoring.md)
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- [VPC](sections/vpc.md)
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- [VPC](sections/vpc.md)
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- [Security & Compliance](sections/Security-Compliance.md)
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- [Security & Compliance](sections/Security-Compliance.md)
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- [Machine Learning](sections/machine-learning.md)
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### Contributors
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### Contributors
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sections/machine-learning.md
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sections/machine-learning.md
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# Machine Learning
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- [Machine Learning](#machine-learning)
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- [Amazon Rekognition](#amazon-rekognition)
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- [Amazon Transcribe](#amazon-transcribe)
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- [Amazon Polly](#amazon-polly)
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- [Amazon Translate](#amazon-translate)
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- [Amazon Lex & Connect](#amazon-lex--connect)
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- [Amazon Lex: (same technology that powers Alexa)](#amazon-lex-same-technology-that-powers-alexa)
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- [Amazon Connect](#amazon-connect)
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- [Amazon Comprehend](#amazon-comprehend)
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- [Amazon SageMaker](#amazon-sagemaker)
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- [Amazon Forecast](#amazon-forecast)
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- [Amazon Kendra](#amazon-kendra)
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- [Amazon Personalize](#amazon-personalize)
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- [Amazon Textract](#amazon-textract)
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- [Summary](#summary)
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## Amazon Rekognition
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- Find **objects, people, text, scenes** in **images and videos** using ML
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- Facial analysis and facial search to do user verification, people counting
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- Create a database of “familiar faces” or compare against celebrities
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- Use cases:
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- Labeling
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- Content Moderation
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- Text Detection
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- Face Detection and Analysis (gender, age range, emotions…)
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- Face Search and Verification
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- Celebrity Recognition
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- <https://aws.amazon.com/rekognition/>
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## Amazon Transcribe
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- Automatically **convert speech to text**
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- Uses a deep learning process called automatic speech recognition (ASR) to convert speech to text quickly and accurately
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- Use cases:
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- transcribe customer service calls
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- automate closed captioning and subtitling
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- generate metadata for media assets to create a fully searchable archive
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## Amazon Polly
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- Turn **text into lifelike speech** using deep learning
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- Allowing you to create applications that talk
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## Amazon Translate
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- Natural and accurate **language translation**
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- Amazon Translate allows you to localize content - such as websites and applications - for international users, and to easily translate large volumes of text efficiently.
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## Amazon Lex & Connect
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### Amazon Lex: (same technology that powers Alexa)
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- Automatic Speech Recognition (ASR) to convert speech to text
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- Natural Language Understanding to recognize the intent of text, callers
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- Helps build chatbot, call center bots
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### Amazon Connect
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- Receive calls, create contact flows, cloud-based virtual contact center
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- Can integrate with other CRM systems or AWS
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- No upfront payments, 80% cheaper than traditional contact center solutions
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## Amazon Comprehend
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- For **Natural Language Processing – NLP**
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- Fully managed and serverless service
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- Uses machine learning to find insights and relationships in text
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- Language of the text
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- Extracts key phrases, places, people, brands, or events
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- Understands how positive or negative the text is
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- Analyzes text using tokenization and parts of speech
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- Automatically organizes a collection of text files by topic
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- Sample use cases:
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- analyze customer interactions (emails) to find what leads to a positive or negative experience
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- Create and groups articles by topics that Comprehend will uncover
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## Amazon SageMaker
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- Fully managed service for **developers / data scientists to build ML models**
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- Typically, difficult to do all the processes in one place + provision servers
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- Machine learning process (simplified): predicting your exam score
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## Amazon Forecast
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- Fully managed service that uses ML to deliver highly accurate forecasts
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- Example: predict the future sales of a raincoat
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- 50% more accurate than looking at the data itself
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- Reduce forecasting time from months to hours
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- Use cases: Product Demand Planning, Financial Planning, Resource Planning,etc..
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## Amazon Kendra
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- Fully managed document search service powered by Machine Learning
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- Extract answers from within a document (text, pdf, HTML, PowerPoint, MS Word, FAQs…)
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- Natural language search capabilities
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- Learn from user interactions/feedback to promote preferred results (Incremental Learning)
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- Ability to manually fine-tune search results (importance of data, freshness, custom,etc..)
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## Amazon Personalize
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- Fully managed ML-service to build apps with real-time personalized recommendations
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- Example: personalized product recommendations/re-ranking, customized direct marketing
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- Example: User bought gardening tools, provide recommendations on the next one to buy
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- Same technology used by Amazon.com
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- Integrates into existing websites, applications, SMS, email marketing systems, …
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- Implement in days, not months (you don’t need to build, train, and deploy ML solutions)
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- Use cases: retail stores, media and entertainment
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## Amazon Textract
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- Automatically extracts text, handwriting, and data from any scanned documents using AI and ML
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- Extract data from forms and tables
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- Read and process any type of document (PDFs, images, …)
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- Use cases:
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- Financial Services (e.g., invoices, financial reports)
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- Healthcare (e.g., medical records, insurance claims)
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- Public Sector (e.g., tax forms, ID documents, passports)
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## Summary
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- Rekognition: face detection, labeling, celebrity recognition
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- Transcribe: audio to text (ex: subtitles)
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- Polly: text to audio
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- Translate: translations
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- Lex: build conversational bots – chatbot
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- Connect: cloud contact center
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- Comprehend: natural language processing
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- SageMaker: machine learning for every developer and data scientist
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- Forecast: build highly accurate forecasts
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- Kendra: ML-powered search engine
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- Personalize: real-time personalized recommendations
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- Textract: detect text and data in documents
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