Data is the new cash cow if utilized to its full potential. This statement demonstrates how every modern IT system is powered by data capture, storage, and analysis for a variety of purposes. Whether it’s making commercial decisions, forecasting the weather, investigating protein structures in biology, or developing a marketing strategy. All of these cases require a multidisciplinary approach that includes the use of mathematical models, statistics, graphs, databases, and, of course, the business or scientific reasoning underlying the data analysis. As a result, we require a programming language that can address all of the different demands of data science. Python stands out as one such language since it includes a plethora of libraries and built-in capabilities that make it simple to address the demands of data research.
We will discuss the many strategies used in data science using the Python programming language in this course. Know All About Data Science With Python Syllabus, Eligibility, and More Here!
The course
This course will acquaint the learner with the fundamentals of the Python programming environment, including lambdas, the NumPy library and much more. The course will form a fundamental introduction to data manipulation and cleaning techniques with the aid of Python pandas data science library, as well as the abstraction of the Series and DataFrame as the central data structures for data analysis, as well as tutorials on how to effectively use functions such as groupby, merge, and pivot tables. Learners will grasp python basics and will be able to take tabular data, clean it, alter it, and execute basic inferential statistical analyses at the end of the basics module. After that, they will be taught advanced topics and by this course, they will master Python.
In case of any difficulties or dissatisfaction, the learners are provided with a 100% money-back guarantee wherein if they decide to halt their learning prior to the course date, they can avail the facility of a 100% refund. They can also change their batch. This is done so that they can avail the modules of the course as per their own requirement and set their own timetable as well.
Eligibility
This course is intended for Computer Science grads and Software Professionals who want to understand data science in basic and straightforward stages using Python as a programming language. This Data Science programme is ideal for all working professionals because it thoroughly covers job-critical topics like R, Python programming, Machine Learning algorithms, and NLP concepts, as well as Data Visualization with Tableau, through an interactive learning model that includes live sessions from global practitioners, practical labs, IBM Hackathons, and industry projects.
Before beginning this lesson, you should have a basic understanding of the Python programming language, as well as the use of any Python IDE and the execution of Python programmes. If you are absolutely new to Python, we recommend that you read our Python tutorial to gain a solid knowledge of the language. The examples in this lesson will be detailed and intriguing, so take full advantage of this opportunity and enjoy your learning.
Why Data Science?
Data Science is a rapidly developing area, and Python has become a needed ability for 46% of Data Science employment. Data Science specialists will be in high demand, with an estimated 137,630 job opportunities in India by 2025, and those with Python abilities would have an advantage.
The first step in mastering Python for data science is to comprehend the fundamental ideas. This includes understanding the most popular data types, variables, and how to utilize lists and dictionaries correctly.
Conditional statements (if/else statements) and loops are also vital to understand (for, while, etc). They are essential for conducting more complex Python tasks.
Remember that Jupyter Notebook is the text editor you should use as an aspiring data scientist. This editor allows us to not only write code, but also equations, plot graphs, add text, and do other things to make our Python script appear like a notebook.
Pandas and NumPy data analysis packages serve as the foundation for tackling common data science activities such as data cleansing and exploratory data analysis (EDA).
Machine learning models should be able to be built by every data scientist. This is why we must become acquainted with libraries such as sklearn, Keras, and Tensorflow. They will assist us in developing, evaluating, and selecting the optimal model for our projects.
You’ll soon learn that creating such models in Python isn’t too difficult. The most difficult aspect of this for most individuals is understanding the underlying principles behind each algorithm and appropriately applying them in a project.
Why is Python essential for Data Science?
Despite the fact that there are other programming languages available, Python is a must-learn programming language for professionals working in the Data Science industry. In the IT business, there is a rising demand for qualified Data Scientists, and Python has emerged as the most popular programming language. With the aid of this Python for Data Science lesson, you will grasp why Python is the most popular language. Now, let’s take a look at Python’s fundamental features and domain situations.
Python code is written in a highly ‘natural’ language, which makes it easy to read and understand.
The largest response to the question – Why Python for Data Science? – is the availability of several Data Science/Data Analytics libraries such as Pandas, StatsModels, NumPy, and so on. These are a few of the popular libraries accessible for aspirants in the Data Science community.
The Python community has addressed the limits that developers encountered a year ago with a strong solution that addresses difficulties of a specific sort.
The ecosystem is one of the key reasons behind Python’s meteoric rise in the business. Many volunteers are producing Python libraries these days, as Python has reached out to the Data Science community, paving the path for the development of cutting-edge tools and processing in Python. The Python community assists these Python hopefuls by providing appropriate answers to their coding issues.
Python includes a variety of graphical and visualization features that are quite useful for creating insights from accessible data. Matplotlib is a Python charting library that serves as a stable foundation for other libraries such as Seaborn, pandas, and ggplot.
CRITERIA | GUIDELINE | CHECKLIST | |
Trademark Compliance | Trademark compliance is required for all certifications (we have provided the list of courses with trademarks); please ensure this is used | Do the certification names have trademarks? | Done |
General Guidelines | When talking about KH, refer to it in third-person | Is KnowledgeHut mentioned in third person? | Done |
When quoting statistics of any kind, mention its source too | Are sources cited wherever statistics are included? | Done | |
Structure | Ensure headings and content are related to the subject being discussed | Is there a clear flow of content across the blog? | Done |
Open the blog with an introduction | Is there an introductory paragraph? | Done | |
Finish the blog with a closing paragraph | Is there a closing paragraph? | Done | |
Grammar, Style | Keep main and all subheadings in title case | Are all headings in title case? | Done |
Ensure all sentences are grammatically correct | Are all the sentences grammatically correct? | Done | |
Information Accuracy | Ensure that all information provided is accurate | Is all the information provided accurate? | Done |