Future of Data Science and Artificial Intelligence
Data science is a process of using advanced analytics that focuses on analyzing the past or present data and eligible to predict the future outcomes. Data Science handles data analytics, artificial intelligence, Deep Learning, builds Machine Learning models and Big Data models.
In short,
Data science is all about:
- Analyzing the raw data
- Limitless Potential Gaining Critical
Insight
- Visualizing the Data to get a better
perspective
- Understanding the data to get the final
results
Benefits of Being Data Scientist
- Gain Good Communication Skill
- Mathematical and statistical
knowledge
- Innumerable career opportunities
- Good for solving a complex business
data problems
Career Opportunities of Data Science:
- Data Scientist
- Product Analyst
- Machine Learning Engineer
- Data Engineer
- Business Analyst
- Business Intelligence Manager
- Artificial Intelligence Engineer
Tools for Data Science
Following are some tools required for data science:
- Data Analysis tools: R,
Python, Statistics, SAS, Jupyter, R Studio, MATLAB, Excel, RapidMiner.
- Data Warehousing: ETL,
SQL, Hadoop, Informatica/Talend, AWS Redshift
- Data Visualization tools: R, Jupyter, Tableau, Cognos.
- Machine learning tools: Spark, Mahout, Azure ML studio.
Process of Data
Analytics:
- Requirement Understanding
- Data Preparations
- Data Explorations for Visualizations
- Decision Making: Test Data & Train Data
- Machine Learning
What does Data Analytics can do?
Descriptive Analytics: Data Analytics focused on Descriptive Analytics
that is how we can analyze the Data of a Model. Concern of getting data
analytics is to find out the type of Data i.e. Image, video, hybrid,
descriptive, statistics, etc
Predictive Analytics: It incorporates various statistical strategies
from data mining, prescient demonstrating, and AI that investigate current and historical
realities to make forecasts about future or generally unknown occasions.
Prescriptive Analytics: Prescriptive Analytics is a type of business
investigation which proposes choices for how to make the most of a future opportunity
or moderate a future gamble, and shows the implications of every choice.
Difference between Data
Science and Artificial Intelligence:
Data Science is broad chapter that includes the
study of Artificial intelligence. As Artificial Intelligence is a part of Data
Science.
Data Science
- Detailed process that mainly involves pre-processing analysis, visualization and Prediction.
- Data Science was developed to find out the hidden patterns and trends in Data.
- Data Science can built complex models for extracting various facts.
- Tools that are far more extensive than those used in AI.
- By using the concept of data science, we can build complex models about statistics and facts about data.
- Data uses the techniques of Data Analytics and Data Analysis.
- The person who works in data science is known as data scientist.
Artificial Intelligence
- It forecast the future events and trends.
- Granting of autonomy to the data model.
- Uses standardized data by embedded and vector
methods
- High levels of Complex
- Uses a lot of Machine Learning Techniques.
- Tools Used in AI: Tensor Flow, Caffe, Keras, etc
- Career as an Artificial Intelligence Engineer
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