New Year Special Limited Time 70% Discount Offer - Ends in 0d 00h 00m 00s - Coupon code: cramtick70

IBM C1000-059 Exam Syllabus

IBM AI Enterprise Workflow V1 Data Science Specialist

Last Update Dec 26, 2024
Total Questions : 62

What is Included in the IBM C1000-059 Exam?

If you want to pass the IBM C1000-059 exam on the first attempt, you need an updated study guide for the syllabus and concise and comprehensive study material which is available at Cramtick. Cramtick has all the authentic study material for the IBM C1000-059 exam syllabus. You must go through all this information and study guide while doing the preparation and before appearing for the C1000-059 exam. Our IT professionals have planned and designed the IBM IBM AI Enterprise Workflow V1 Data Science Specialist certification exam preparation guide in such a way to give the exam overview, practice questions, practice test, prerequisites, and information about exam topics facilitating you to go through the IBM IBM AI Enterprise Workflow V1 Data Science Specialist exam. We endorse you to use the preparation material mentioned in this study guide to cover the entire IBM C1000-059 syllabus. Cramtick offers 2 formats of IBM C1000-059 exam preparation material. Every format that is available at Cramtick aids its customers with new practice questions in PDF format that is printable as hard copies of the syllabus. Cramtick also offers a software testing engine that is GUI based can run on Windows PC and MAC machines. Our testing engine is interactive helping you to keep your test record in your profile so that you can practice more and more until fully ready for the exam.

IBM C1000-059 Exam Overview :

Exam Name IBM AI Enterprise Workflow V1 Data Science Specialist
Exam Code C1000-059
Official Information https://www.ibm.com/certify/exam?id=C1000-059
See Expected Questions IBM C1000-059 Expected Questions in Actual Exam
Take Self-Assessment Use IBM C1000-059 Practice Test to Assess your preparation - Save Time and Reduce Chances of Failure

IBM C1000-059 Exam Topics :

Section Weight Objectives
Section 1: Scientific, Mathematical, and technical essentials for Data Science and AI  
  • Explain the difference between Descriptive, Prescriptive, Predictive, Diagnostic, and Cognitive Analytics
  • Describe and explain the key terms in the field of artificial intelligence (Analytics, Data Science, Machine Learning, Deep Learning, Artificial Intelligence etc.)
  • Distinguish different streams of work within Data Science and AI (Data Engineering, Data Science, Data Stewardship, Data Visualization etc.)
  • Describe the key stages of a machine learning pipeline.
  • Explain the fundamental terms and concepts of design thinking
  • Explain the different types of fundamental Data Science
  • Distinguish and leverage key Open Source and IBM tools and technologies that can be used by a Data Scientist to implement AI solutions
  • Explain the general properties of common probability distributions.
  • Explain and calculate different types of matrix operations
Section 2: Applications of Data Science and AI in Business  
  • Identify use cases where artificial intelligence solutions can address business opportunities
  • Translate business opportunities into a machine learning scenario
  • Differentiate the categories of machine learning algorithms and the scenarios where they can be used
  • Show knowledge of how to communicate technical results to business stakeholders
  • Demonstrate knowledge of scenarios for application of machine learning
Section 3: Data understanding techniques in Data Science and AI  
  • Demonstrate knowledge of data collection practices
  • Explain characteristics of different data types
  • Show knowledge of data exploration techniques and data anomaly detection
  • Use data summarization and visualization techniques to find relevant insight
Section 4: Data preparation techniques in Data Science and AI  
  • Demonstrate expertise cleaning data and addressing data anomalies
  • Show knowledge of feature engineering and dimensionality reduction techniques
  • Demonstrate mastery preparing and cleaning unstructured text data
Section 5: Application of Data Science and AI techniques and models  
  • Explain machine learning algorithms and the theoretical basis behind them
  • Demonstrate practical experience building machine learning models and using different machine learning algorithms
Section 6: Evaluation of AI models  
  • Identify different evaluation metrics for machine learning algorithms and how to use them in the evaluation of model performance
  • Demonstrate successful application of model validation and selection methods
  • Show mastery of model results interpretation
  • Apply techniques for fine tuning and parameter optimization
Section 7: Deployment of AI models  
  • Describe the key considerations when selecting a platform for AI model deployment
  • Demonstrate knowledge of requirements for model monitoring, management and maintenance
  • Identify IBM technology capabilities for building, deploying, and managing AI models
Section 8: Technology Stack for Data Science and AI  
  • Describe the differences between traditional programming and machine learning
  • Demonstrate foundational knowledge of using python as a tool for building AI solutions
  • Show knowledge of the benefits of cloud computing for building and deploying AI models
  • Show knowledge of data storage alternatives
  • Demonstrate knowledge on open source technologies for deployment of AI solutions
  • Demonstrate basic understanding of natural language processing
  • Demonstrate basic understanding of computer vision
  • Demonstrate basic understanding of IBM Watson AI services

Updates in the IBM C1000-059 Exam Syllabus:

Cramtick's authentic study material entails both practice questions and practice test. IBM C1000-059 exam questions and practice test are the best options to appear in the exam confidently and well-prepared. In order to pass the actual IBM AI Enterprise Workflow V1 Data Science Specialist C1000-059 exam in the first attempt, you have to work really hard on these IBM C1000-059 questions, offering you with updated study guide, for the whole exam syllabus. While you are studying actual questions, you should also make use of the IBM C1000-059 practice test for self-analysis and actual exam simulation by taking it. Studying again and again of actual exam questions will remove your mistakes with the IBM AI Enterprise Workflow V1 Data Science Specialist C1000-059 exam practice test. Online and windows-based, Mac-Based formats of the C1000-059 exam practice tests are available for self-assessment.

IBM Data and AI: Data and AI | C1000-059 Questions Answers | C1000-059 Test Prep | IBM AI Enterprise Workflow V1 Data Science Specialist Questions PDF | C1000-059 Online Exam | C1000-059 Practice Test | C1000-059 PDF | C1000-059 Test Questions | C1000-059 Study Material | C1000-059 Exam Preparation | C1000-059 Valid Dumps | C1000-059 Real Questions | IBM Data and AI: Data and AI C1000-059 Exam Questions