Cisco-Ausbildung

Insoft Services ist einer der wenigen Schulungsanbieter in EMEAR, der ein umfassendes Angebot an Cisco-Zertifizierungen und spezialisierten Technologieschulungen anbietet.

Lesen Sie mehr

Cisco Zertifizierungen

Erleben Sie einen Blended-Learning-Ansatz, der das Beste aus von Lehrern geleiteten Schulungen und E-Learning zum Selbststudium kombiniert, um sich auf Ihre Zertifizierungsprüfung vorzubereiten.

Lesen Sie mehr

Cisco Learning Credits

Cisco Learning Credits (CLCs) sind Prepaid-Schulungsgutscheine, die direkt bei Cisco eingelöst werden und die Planung für Ihren Erfolg beim Kauf von Cisco-Produkten und -Services erleichtern.

Lösen Sie Ihre CLCs ein

Cisco Continuing Education

Das Cisco Continuing Education Program bietet allen aktiven Zertifizierungsinhabern flexible Optionen zur Rezertifizierung, indem sie eine Vielzahl von in Frage kommenden Schulungselementen absolvieren.

Lesen Sie mehr

Cisco Digital Learning

Zertifizierte Mitarbeiter sind GESCHÄTZTE Vermögenswerte. Erkunden Sie die offizielle Digital Learning Library von Cisco, um sich durch aufgezeichnete Sitzungen weiterzubilden.

CDLL-Katalog

Cisco Business Enablement

Das Cisco Business Enablement Partner Program konzentriert sich auf die Verbesserung der Geschäftsfähigkeiten von Cisco Channel Partnern und Kunden.

Lesen Sie mehr

Cisco Schulungskatalog

Lesen Sie mehr

Technische Zertifizierung

Das Fortinet Network Security Expert (NSE) -Programm ist ein achtstufiges Schulungs- und Zertifizierungsprogramm, um Ingenieuren ihre Netzwerksicherheit für Fortinet FW-Fähigkeiten und -Erfahrungen beizubringen.

Technische Kurse

Fortinet-Ausbildung

Insoft ist als Fortinet Authorized Training Center an ausgewählten Standorten in EMEA anerkannt.

Lesen Sie mehr

Fortinet Schulungskatalog

Lesen Sie mehr

ATC Status

Überprüfen Sie unseren ATC-Status in ausgewählten Ländern in Europa.

Lesen Sie mehr

Fortinet Service-Pakete

Insoft Services hat eine spezielle Lösung entwickelt, um den Prozess der Installation oder Migration zu Fortinet-Produkten zu rationalisieren und zu vereinfachen.

Lesen Sie mehr

Microsoft-Ausbildung

Insoft Services bietet Microsoft-Schulungen in EMEAR an. Wir bieten technische Schulungen und Zertifizierungskurse von Microsoft an, die von erstklassigen Instruktoren geleitet werden.

Technische Kurse

Extreme-Ausbildung

Erfahren Sie außergewöhnliche Kenntnisse und Fähigkeiten von Extreme Networks.

Technische Kurse

Technische Zertifizierung

Wir bieten einen umfassenden Lehrplan für technische Kompetenzen zur Zertifizierung an.

Lesen Sie mehr

Extreme Schulungskatalog

Hier finden Sie alle Extreme Networks online und den von Lehrern geleiteten Kalender für den Klassenraum.

Lesen Sie mehr

ATP-Akkreditierung

Als autorisierter Schulungspartner (ATP) stellt Insoft Services sicher, dass Sie die höchsten verfügbaren Bildungsstandards erhalten.

Lesen Sie mehr

Lösungen & Dienstleistungen

Wir bieten innovative und fortschrittliche Unterstützung bei der Konzeption, Implementierung und Optimierung von IT-Lösungen. Unsere Kundenbasis umfasst einige der größten Telcos weltweit.

Beratungspakete

Ein weltweit anerkanntes Team von zertifizierten Experten unterstützt Sie bei einem reibungsloseren Übergang mit unseren vordefinierten Beratungs-, Installations- und Migrationspaketen für eine breite Palette von Fortinet-Produkten.

Über uns

Insoft bietet autorisierte Schulungs- und Beratungsdienstleistungen für ausgewählte IP-Anbieter. Erfahren Sie, wie wir die Branche revolutionieren.

Lesen Sie mehr
  • +49 6151 277 6496
  • Developing Generative AI Applications on AWS

    Duration
    2 Tage
    Delivery
    (Online Und Vor Ort)
    Price
    Preis auf Anfrage

    This course is designed to introduce generative AI to software developers interested in leveraging large language models without fine-tuning. The course provides an overview of generative AI, planning a generative AI project, getting started with Amazon Bedrock, the foundations of prompt engineering, and the architecture patterns to build generative AI applications using Amazon Bedrock and LangChain.

     

    • Course level: Advanced

    In this course, you will learn to:

    • Describe generative AI and how it aligns to machine learning
    • Define the importance of generative AI and explain its potential risks and benefits
    • Identify business value from generative AI use cases
    • Discuss the technical foundations and key terminology for generative AI
    • Explain the steps for planning a generative AI project
    • Identify some of the risks and mitigations when using generative AI
    • Understand how Amazon Bedrock works
    • Familiarize yourself with basic concepts of Amazon Bedrock
    • Recognize the benefits of Amazon Bedrock
    • List typical use cases for Amazon Bedrock
    • Describe the typical architecture associated with an Amazon Bedrock solution
    • Understand the cost structure of Amazon Bedrock
    • Implement a demonstration of Amazon Bedrock in the AWS Management Console
    • Define prompt engineering and apply general best practices when interacting with FMs
    • Identify the basic types of prompt techniques, including zero-shot and few-shot learning
    • Apply advanced prompt techniques when necessary for your use case
    • Identify which prompt-techniques are best-suited for specific models
    • Identify potential prompt misuses
    • Analyze potential bias in FM responses and design prompts that mitigate that bias
    • Identify the components of a generative AI application and how to customize a foundation model (FM)
    • Describe Amazon Bedrock foundation models, inference parameters, and key Amazon Bedrock APIs
    • Identify Amazon Web Services (AWS) offerings that help with monitoring, securing, and governing your Amazon Bedrock applications
    • Describe how to integrate LangChain with large language models (LLMs), prompt templates, chains, chat models, text embeddings models, document loaders, retrievers, and Agents for Amazon Bedrock
    • Describe architecture patterns that can be implemented with Amazon Bedrock for building generative AI applications
    • Apply the concepts to build and test sample use cases that leverage the various Amazon Bedrock models, LangChain, and the Retrieval Augmented Generation (RAG) approach

    Day 1

     

    Module 1: Introduction to Generative AI – Art of the Possible

    • Overview of ML
    • Basics of generative AI
    • Generative AI use cases
    • Generative AI in practice
    • Risks and benefits

    Module 2: Planning a Generative AI Project

    • Generative AI fundamentals
    • Generative AI in practice
    • Generative AI context
    • Steps in planning a generative AI project
    • Risks and mitigation

    Module 3: Getting Started with Amazon Bedrock

    • Introduction to Amazon Bedrock
    • Architecture and use cases
    • How to use Amazon Bedrock
    • Demonstration: Setting Up Amazon Bedrock Access and Using Playgrounds

    Module 4: Foundations of Prompt Engineering

    • Basics of foundation models
    • Fundamentals of prompt engineering
    • Basic prompt techniques
    • Advanced prompt techniques
    • Demonstration: Fine-Tuning a Basic Text Prompt
    • Model-specific prompt techniques
    • Addressing prompt misuses
    • Mitigating bias
    • Demonstration: Image Bias-Mitigation

     

    Day 2

     

    Module 5: Amazon Bedrock Application Components

    • Applications and use cases
    • Overview of generative AI application components
    • Foundation models and the FM interface
    • Working with datasets and embeddings
    • Demonstration: Word Embeddings
    • Additional application components
    • RAG
    • Model fine-tuning
    • Securing generative AI applications
    • Generative AI application architecture

    Module 6: Amazon Bedrock Foundation Models

    • Introduction to Amazon Bedrock foundation models
    • Using Amazon Bedrock FMs for inference
    • Amazon Bedrock methods
    • Data protection and auditability
    • Lab: Invoke Amazon Bedrock model for text generation using zero-shot prompt

    Module 7: LangChain

    • Optimizing LLM performance
    • Integrating AWS and LangChain
    • Using models with LangChain
    • Constructing prompts
    • Structuring documents with indexes
    • Storing and retrieving data with memory
    • Using chains to sequence components
    • Managing external resources with LangChain agents

    Module 8: Architecture Patterns

    • Introduction to architecture patterns
    • Text summarization
    • Lab: Using Amazon Titan Text Premier to summarize text of small files
    • Lab: Summarize long texts with Amazon Titan
    • Question answering
    • Lab: Using Amazon Bedrock for question answering
    • Chatbots
    • Lab: Build a chatbot
    • Code generation
    • Lab: Using Amazon Bedrock Models for Code Generation
    • LangChain and agents for Amazon Bedrock
    • Lab: Building conversational applications with the Converse API

    This course is intended for:

    • Software developers interested in leveraging large language models without fine-tuning

    We recommend that attendees of this course have:

    • AWS Technical Essentials
    • Intermediate-level proficiency in Python

    This course is designed to introduce generative AI to software developers interested in leveraging large language models without fine-tuning. The course provides an overview of generative AI, planning a generative AI project, getting started with Amazon Bedrock, the foundations of prompt engineering, and the architecture patterns to build generative AI applications using Amazon Bedrock and LangChain.

     

    • Course level: Advanced

    In this course, you will learn to:

    • Describe generative AI and how it aligns to machine learning
    • Define the importance of generative AI and explain its potential risks and benefits
    • Identify business value from generative AI use cases
    • Discuss the technical foundations and key terminology for generative AI
    • Explain the steps for planning a generative AI project
    • Identify some of the risks and mitigations when using generative AI
    • Understand how Amazon Bedrock works
    • Familiarize yourself with basic concepts of Amazon Bedrock
    • Recognize the benefits of Amazon Bedrock
    • List typical use cases for Amazon Bedrock
    • Describe the typical architecture associated with an Amazon Bedrock solution
    • Understand the cost structure of Amazon Bedrock
    • Implement a demonstration of Amazon Bedrock in the AWS Management Console
    • Define prompt engineering and apply general best practices when interacting with FMs
    • Identify the basic types of prompt techniques, including zero-shot and few-shot learning
    • Apply advanced prompt techniques when necessary for your use case
    • Identify which prompt-techniques are best-suited for specific models
    • Identify potential prompt misuses
    • Analyze potential bias in FM responses and design prompts that mitigate that bias
    • Identify the components of a generative AI application and how to customize a foundation model (FM)
    • Describe Amazon Bedrock foundation models, inference parameters, and key Amazon Bedrock APIs
    • Identify Amazon Web Services (AWS) offerings that help with monitoring, securing, and governing your Amazon Bedrock applications
    • Describe how to integrate LangChain with large language models (LLMs), prompt templates, chains, chat models, text embeddings models, document loaders, retrievers, and Agents for Amazon Bedrock
    • Describe architecture patterns that can be implemented with Amazon Bedrock for building generative AI applications
    • Apply the concepts to build and test sample use cases that leverage the various Amazon Bedrock models, LangChain, and the Retrieval Augmented Generation (RAG) approach

    Day 1

     

    Module 1: Introduction to Generative AI – Art of the Possible

    • Overview of ML
    • Basics of generative AI
    • Generative AI use cases
    • Generative AI in practice
    • Risks and benefits

    Module 2: Planning a Generative AI Project

    • Generative AI fundamentals
    • Generative AI in practice
    • Generative AI context
    • Steps in planning a generative AI project
    • Risks and mitigation

    Module 3: Getting Started with Amazon Bedrock

    • Introduction to Amazon Bedrock
    • Architecture and use cases
    • How to use Amazon Bedrock
    • Demonstration: Setting Up Amazon Bedrock Access and Using Playgrounds

    Module 4: Foundations of Prompt Engineering

    • Basics of foundation models
    • Fundamentals of prompt engineering
    • Basic prompt techniques
    • Advanced prompt techniques
    • Demonstration: Fine-Tuning a Basic Text Prompt
    • Model-specific prompt techniques
    • Addressing prompt misuses
    • Mitigating bias
    • Demonstration: Image Bias-Mitigation

     

    Day 2

     

    Module 5: Amazon Bedrock Application Components

    • Applications and use cases
    • Overview of generative AI application components
    • Foundation models and the FM interface
    • Working with datasets and embeddings
    • Demonstration: Word Embeddings
    • Additional application components
    • RAG
    • Model fine-tuning
    • Securing generative AI applications
    • Generative AI application architecture

    Module 6: Amazon Bedrock Foundation Models

    • Introduction to Amazon Bedrock foundation models
    • Using Amazon Bedrock FMs for inference
    • Amazon Bedrock methods
    • Data protection and auditability
    • Lab: Invoke Amazon Bedrock model for text generation using zero-shot prompt

    Module 7: LangChain

    • Optimizing LLM performance
    • Integrating AWS and LangChain
    • Using models with LangChain
    • Constructing prompts
    • Structuring documents with indexes
    • Storing and retrieving data with memory
    • Using chains to sequence components
    • Managing external resources with LangChain agents

    Module 8: Architecture Patterns

    • Introduction to architecture patterns
    • Text summarization
    • Lab: Using Amazon Titan Text Premier to summarize text of small files
    • Lab: Summarize long texts with Amazon Titan
    • Question answering
    • Lab: Using Amazon Bedrock for question answering
    • Chatbots
    • Lab: Build a chatbot
    • Code generation
    • Lab: Using Amazon Bedrock Models for Code Generation
    • LangChain and agents for Amazon Bedrock
    • Lab: Building conversational applications with the Converse API

    This course is intended for:

    • Software developers interested in leveraging large language models without fine-tuning

    We recommend that attendees of this course have:

    • AWS Technical Essentials
    • Intermediate-level proficiency in Python
      Termine
      Datum auf Anfrage

    Follow Up Courses

    Filter
    • 2 Tage
      Datum auf Anfrage
      Price on Request
      Book Now
    • 1 Tag
      Datum auf Anfrage
      Price on Request
      Book Now
    • 3 Tage
      Datum auf Anfrage
      Price on Request
      Book Now
    • 1 Tag
      Datum auf Anfrage
      Price on Request
      Book Now
    • 1 Tag
      Datum auf Anfrage
      Price on Request
      Book Now
    • 1 Tag
      Datum auf Anfrage
      Price on Request
      Book Now
    • 1 Tag
      Datum auf Anfrage
      Price on Request
      Book Now
    • 2 Tage
      Datum auf Anfrage
      Price on Request
      Book Now
    • 3 Tage
      Datum auf Anfrage
      Price on Request
      Book Now
    • 3 Tage
      Datum auf Anfrage
      Price on Request
      Book Now

    Know someone who´d be interested in this course?
    Let them know...

    Use the hashtag #InsoftLearning to talk about this course and find students like you on social media.