Data Engineering Foundations Specialization
In summary, this course covers Python, SQL, and database administration, which are fundamentals for a career in data engineering.
Description for Data Engineering Foundations Specialization
Data Engineering Ecosystem and Lifecycle: Acquire an in-depth comprehension of the data engineering ecosystem, its lifespan, and expert advice for initiating a career in this rapidly expanding domain.
Fundamentals of Python Programming: Acquire foundational knowledge of Python, emphasizing data structures, logical operations, file manipulation, API interaction, and libraries like as Pandas and Numpy, which are crucial for ETL procedures.
Fundamentals of Relational Databases: Develop expertise in relational database design, schema development, and database management using MySQL, PostgreSQL, and IBM Db2.
Proficiency in SQL Query Language: Acquire proficiency in SQL commands such as SELECT, INSERT, UPDATE, DELETE, JOINs, and transactions to facilitate efficient data administration and manipulation across several tables.
Level: Beginner
Certification Degree: Yes
Languages the Course is Available: 24
Offered by: On Coursera provided by IBM
Duration: 2 months at 10 hours a week
Schedule: Flexible
Pricing for Data Engineering Foundations Specialization
Use Cases for Data Engineering Foundations Specialization
FAQs for Data Engineering Foundations Specialization
Reviews for Data Engineering Foundations Specialization
0 / 5
from 0 reviews
Ease of Use
Ease of Customization
Intuitive Interface
Value for Money
Support Team Responsiveness
Alternative Tools for Data Engineering Foundations Specialization
Genei is an AI-driven research and summarization tool designed to enhance writing and research processes for professionals, featuring keyword extraction, project folders, AI-powered summarization, and a 14-day free trial with high user satisfaction.
CensusGPT is an AI tool that simplifies access to census data, offering tabular data and visual representations in response to user queries. It targets economists, researchers, and individuals interested in demographic analysis, leveraging the TextSQL framework for seamless interaction with datasets.
The AI data analysis tool offers real-time insights and collaboration, integrated with security features, although users may face limitations with complex inquiries and integration requirements.
Coginiti's AI-Assisted SQL Development boosts SQL development efficiency with instant query assistance and optimization, alongside on-demand learning resources, while facing integration restrictions and an initial learning curve.
Lutra AI simplifies AI workflows and application integration, prioritizing user security and continually improving based on feedback.
Zuva Contracts AI's DocAI is an AI tool specialized in contract analysis, capable of processing PDF files, offering customizable options for various contract types, and efficiently extracting critical information.
Accio.ai is an AI data exploration tool that centralizes data warehouses, dynamically generates SQL queries, ensures data consistency, and provides an intuitive interface for data exploration, enhancing comprehension and efficiency in data analysis.
AskYourDatabase facilitates conversational interactions with SQL and NoSQL databases, offering insights, visualization, and analysis features, with support for major databases and integrations like ChatGPT and Excel.
Vanna.ai, an open-source Python-based AI SQL agent, swiftly generates complex SQL queries, supporting various databases and integration options for efficient database operations and insights extraction.
NLSQL is an AI utility that offers an intuitive text interface and NLP SQL API for personnel to make data-driven decisions, with real-time access to critical healthcare data and instant results.
Featured Tools
Gain experience creating safe, compliant GCP systems, configuring resources, streamlining procedures, and studying for the Professional Cloud Architect test.
Explore the constraints, ethical dilemmas, responsible use, and economic and social implications of generative AI.
Learn to use TensorFlow for computer vision and natural language processing, manage image data, prevent overfitting, and train RNNs, GRUs, and LSTMs on text repositories.
Learn the basics of machine learning systems, model deployment to microcontrollers, and implementation in embedded systems for predictions and decisions.
Learn the basics of Generative AI and its economic and business impact, employment consequences, potential risks, and insights from industry leaders like Google and OpenAI.