この専門講座について

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This six course specialization is designed to prepare you to take the certification examination for IBM AI Enterprise Workflow V1 Data Science Specialist. IBM AI Enterprise Workflow is a comprehensive, end-to-end process that enables data scientists to build AI solutions, starting with business priorities and working through to taking AI into production. The learning aims to elevate the skills of practicing data scientists by explicitly connecting business priorities to technical implementations, connecting machine learning to specialized AI use cases such as visual recognition and NLP, and connecting Python to IBM Cloud technologies. The videos, readings, and case studies in these courses are designed to guide you through your work as a data scientist at a hypothetical streaming media company. Throughout this specialization, the focus will be on the practice of data science in large, modern enterprises. You will be guided through the use of enterprise-class tools on the IBM Cloud, tools that you will use to create, deploy and test machine learning models. Your favorite open source tools, such a Jupyter notebooks and Python libraries will be used extensively for data preparation and building models. Models will be deployed on the IBM Cloud using IBM Watson tooling that works seamlessly with open source tools. After successfully completing this specialization, you will be ready to take the official IBM certification examination for the IBM AI Enterprise Workflow.
共有できる証明書
修了時に証明書を取得
100%オンラインコース
自分のスケジュールですぐに学習を始めてください。
フレキシブルなスケジュール
柔軟性のある期限の設定および維持
上級レベル
約4か月で修了
推奨4時間/週
英語
字幕:英語
共有できる証明書
修了時に証明書を取得
100%オンラインコース
自分のスケジュールですぐに学習を始めてください。
フレキシブルなスケジュール
柔軟性のある期限の設定および維持
上級レベル
約4か月で修了
推奨4時間/週
英語
字幕:英語

この専門講座には6コースあります。

コース1

コース 1

AI Workflow: Business Priorities and Data Ingestion

4.2
66件の評価
19件のレビュー
コース2

コース 2

AI Workflow: Data Analysis and Hypothesis Testing

4.3
36件の評価
7件のレビュー
コース3

コース 3

AI Workflow: Feature Engineering and Bias Detection

4.4
23件の評価
4件のレビュー
コース4

コース 4

AI Workflow: Machine Learning, Visual Recognition and NLP

4.6
30件の評価
6件のレビュー

提供:

IBM ロゴ

IBM

よくある質問

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  • コースに登録すると専門講座のすべてのコースにアクセスできるようになり、コースを修了すると修了証を取得できます。コース内容の閲覧のみを希望する場合は、無料でコースを聴講することができます。受講料の支払いが難しい場合は、学資援助を申請することができます

  • このコースは完全にオンラインで提供されているため、実際に教室に出席する必要はありません。Webまたはモバイル機器からいつでもどこからでも講義、学習用教材、課題にアクセスできます。

  • It is assumed you have a solid understanding of the following topics prior to starting this course: Fundamental understanding of Linear Algebra; Understanding of sampling, probability theory, and probability distributions; Knowledge of descriptive and inferential statistical concepts; General understanding of machine learning techniques and best practices; Practiced understanding of Python and the packages commonly used in data science: NumPy, Pandas, matplotlib, scikit-learn; Familiarity with IBM Watson Studio; Familiarity with the design thinking process. If you are unsure, Course 1 includes a Readiness Exam you can take to see if you are prepared.

  • You are STRONGLY encouraged to complete these courses in order as they are not individual independent courses, but part of a workflow where each course builds on the previous ones.  

  • Sorry, you will not.

  • By the end of this specialization you will be able to:

    1. Build an end to end AI solution. 

    2. Leverage Design Thinking as a framework to work through the translation of business goals into AI technical implementations.

    3. Bring together different capabilities such as Machine Learning, and specialized AI use cases.

    4. Leverage Python as the tool of choice for building AI models, while integrating IBM technologies to facilitate enterprise tasks such as cross-collaboration for the creation of machine learning models, employing out-of-the-box trained models for natural language processing and visual recognition, and deploying models to production.  

  • This specialization targets existing data science practitioners that have expertise building machine learning models, who want to deepen their skills on building and deploying AI in large enterprises. If you are an aspiring Data Scientist, this specialization is NOT for you as you need real world expertise to benefit from the content of these courses.

  • No. The certification exam is administered by Pearson VUE and must be taken at one of their testing facilities. You may visit their site at https://home.pearsonvue.com/ibm for more information. For a direct link to the exam information click here: https://ibm.biz/ai-workflow-cert.

  • For a direct link to the exam information click here: https://ibm.biz/ai-workflow-cert.

  • It is highly recommended that you have at least a basic working knowledge of design thinking and Watson Studio prior to taking this course. Please visit the IBM Skills Gateway at http://ibm.com/training/badges and "Find a Badge" related to "design thinking" or "Watson Studio". From there you will be directed to courses covering these topics.

  • No. Most of the exercises may be completed with open source tools running on your personal computer. However, the exercises are designed with an enterprise focus and are intended to be run in an enterprise environment that allows for easier sharing and collaboration. Some of the exercises in this specialization are heavily focused on deployment and testing of machine learning models and use the IBM Watson tooling found on the IBM Cloud.

  • Yes. All IBM Cloud Data and AI services are based upon open source technologies.

  • The exercises in the course may be completed by anyone using the IBM Cloud "Lite" plan, which is free for use.

  • 1. Python version 3, including libraries for data analytics, visualization and machine learning.

    2. The Jupyter notebook libraries for Python version 3.

    3. Access to the IBM Cloud at https://cloud.ibm.com and the Watson services on the IBM Cloud.

さらに質問がある場合は、受講者向けヘルプセンターにアクセスしてください。