top of page
web123.png

Data Analytics Training Institute in Erode

Trending

385 Google Reviews ( 4.9)


Data analytics involves examining and interpreting data sets to extract meaningful insights, patterns, and trends. Employing statistical methods, machine learning, and data mining, analysts process vast amounts of information to inform decision-making and strategy. It plays a crucial role in various industries, aiding in optimization, forecasting, and risk management. By employing tools like Python, R, or specialized platforms, professionals transform raw data into actionable intelligence, fostering data-driven decision-making. The process encompasses data cleaning, exploration, and visualization, offering valuable business intelligence. Data analytics continues to evolve, leveraging technology to enhance efficiency and uncover valuable information for organizations.

Course Details

Course :                           C programming

Duration:                         4 months

Mode of Training:          Online / offline

Assessments:                  Yes

Certifications:                 5 certifications

Placement support:      100% Assistance

Recently placed Students

Untitled design (1).png
Untitled design (1).png

How we conduct classes in Data Analytics training

In Data Analytics training, classes are conducted through a dynamic blend of theoretical lectures and hands-on practical sessions. Instructors cover fundamental concepts such as data collection, cleaning, and analysis, employing real-world examples to illustrate applications. Interactive discussions encourage student engagement, fostering a collaborative learning environment. Utilizing popular analytics tools and programming languages like Python, R, and SQL, participants gain proficiency in data manipulation and visualization. Case studies and industry-relevant projects enhance practical skills, providing a holistic understanding of analytics in various domains. Regular assessments and quizzes gauge comprehension, while guest lectures from industry experts offer insights into current trends and challenges. Virtual labs and online platforms facilitate remote learning, ensuring accessibility and flexibility. Overall, the training emphasizes a comprehensive, experiential approach to equip participants with the knowledge and skills needed for success in the dynamic field of Data Analytics.

Presenting an Award

Data Analytics certification & Exam:

Alter Certification is recognised by all significant international businesses. We offer to freshmen as well as corporate trainees once the theoretical and practical sessions are over.

Our Alter accreditation is recognised all around the world. With the aid of this qualification, you may land top jobs in renowned MNCs throughout the world, increasing the value of your CV. Only after successfully completing our training and practice-based projects will the certification be granted.

Key Features of Data Analytics Course in Erode

Skill Level

We are providing Training to the needs from Beginners level to Experts level.

Course Duration

Course will be 90 hrs to 110 hrs duration with real-time projects and covers both teaching and practical sessions.

Total Learners

We have already finished 100+ Batches with 100% course completion record.

If you have any questions or concerns, don't hesitate to reach out to our advisor. Feel free to give them a call, and they'll be more than happy to assist you.

+9043554840

Data Analytics Course in Erode syllabus

1. Introduction to Data Analytics:

  • Overview of data analytics

  • Importance of data in decision-making

  • Historical context and evolution of data analytics

2. Data Collection and Cleaning:

  • Sources of data

  • Data collection methods

  • Data cleaning and preprocessing

  • Dealing with missing data and outliers

3. Exploratory Data Analysis (EDA):

  • Descriptive statistics

  • Data visualization techniques

  • Univariate and bivariate analysis

  • EDA tools and libraries (e.g., Pandas, Matplotlib, Seaborn)

4. Statistical Concepts for Data Analytics:

  • Probability distributions

  • Hypothesis testing

  • Regression analysis

  • Inferential statistics

5. Data Wrangling and Transformation:

  • Data transformation techniques

  • Feature engineering

  • Reshaping and pivoting data

  • Handling categorical data

6. Machine Learning Basics:

  • Introduction to machine learning

  • Supervised and unsupervised learning

  • Classification and regression algorithms

  • Model evaluation and validation

7. Big Data Technologies:

  • Introduction to big data

  • Hadoop and MapReduce

  • Spark and its ecosystem

  • Distributed computing for large-scale data processing

8. Database Management Systems (DBMS):

  • Relational databases

  • NoSQL databases

  • SQL queries and data manipulation

  • Database design principles

9. Data Visualization:

  • Principles of effective data visualization

  • Tools for data visualization (e.g., Tableau, Power BI)

  • Dashboard design and implementation

10. Ethics and Privacy in Data Analytics:

  • Ethical considerations in data analytics

  • Privacy concerns and regulations

  • Responsible data use and handling

11. Capstone Project:

  • Applying data analytics skills to solve a real-world problem

  • Project planning, execution, and presentation

  • Collaboration and teamwork

12. Advanced Topics (Optional):

  • Deep learning and neural networks

  • Time series analysis

  • Natural language processing

  • Advanced data analytics tools and techniques

Meeting
Corporate Training in Data Analytics course:

Eligibility Criteria

Apitude Test

Placement & Training

Mock Interviews

Interview

Scheduling Interviews

Resume Prepearation

Job Placement

Untitled design (1).png
Proficiency After Certification:

After completing a Data Analytics, one can expect to have the following skills and proficiency:

Entry-Level Proficiency:

  • Basic understanding of data analytics concepts and tools.

  • Ability to perform simple data analysis tasks using tools like Excel, SQL, or basic statistical software.

Intermediate Proficiency:

  • Comfortable working with more advanced tools and languages like Python, R, or specialized analytics software.

  • Competence in cleaning, processing, and analyzing data sets of moderate complexity.

  • Familiarity with data visualization techniques to communicate findings effectively.

Advanced Proficiency:

  • Mastery of advanced analytics techniques, such as machine learning and predictive modeling.

  • Ability to handle large and complex datasets.

  • Proficiency in data storytelling and presenting insights to both technical and non-technical stakeholders.

Practical Application:

  • Apply your skills in real-world projects or work scenarios to gain practical experience.

  • Seek out opportunities to work on diverse datasets and business problems to broaden your skill set.

Continuous Learning:

  • Stay updated on the latest developments in data analytics, including new tools, techniques, and best practices.

  • Consider pursuing additional certifications or advanced degrees to deepen your knowledge in specific areas.

Networking and Collaboration:

  • Connect with professionals in the field through networking events, online forums, and social media.

  • Collaborate with colleagues and participate in data-related projects to learn from others and share your knowledge.

Portfolio Development:

  • Build a portfolio showcasing your data analytics projects, including the problems you've solved, the techniques you've used, and the impact of your analyses.

  • Share your portfolio on professional platforms like LinkedIn to demonstrate your skills to potential employers.

Specialization:

  • Consider specializing in a specific area of data analytics, such as business analytics, healthcare analytics, or financial analytics, to differentiate yourself in the job market.

Working from Home
Staff Profile
  • Certified professional trainer.

  • More than 5+ years experience.

  • Trained students by giving real time examples.

  • Strong knowledge of theory and practical

  • Trainers are industry experience.

  • Trainers have Real time project experience in their industry.

  • Students can ask their doubts to the trainer.

  • Trainer prepares students on relevant subjects for the interview.

Our Trending Software Courses of Alter Institute in erode

Python Course in Erode

823 Google Reviews (4.7)

Fullstack(Mern)Course in Erode

776 Google Reviews (4.6)

Android Development Course in Erode

970 Google Reviews (4.9)

Fullstack Python Course in Erode

 894 Google Reviews (4.8)

Data Science Course in Erode

936 Google Reviews (4.8)

Digital Marketing Course in Erode

970 Google Reviews (4.9)

Software Testing Course in Erode

936 Google Reviews (4.8)

Cloud Computing Course in Erode

810 Google Reviews (4.5)

At the Office
Feedback from those who have taken our courses
Tableau course training institute in erode
Tableau course training institute in erode
  • Instagram
  • Youtube
  • Linkedin
  • Whatsapp
  • Facebook
bottom of page