Key Features
The certificate given upon successful completion of the course will be endorsed by Koed which has industry & Govt. of india recognition.
Koed is a well known brand having Industry expert trainers with decades of working and training experience distinguished status among the companies.
Providing Job support, Interview preparation and Resume Analysis, Alumni portal access, E-learning, and lots more!
Mentors From
About Business Analytics With Python Course
- Duration/Mode: 32 Hours Live Online Training.
- E-Learning Access: Includes Recorded Videos, Projects, and Case Studies resume & placement support Job Opportunities and
- Internship: Get access to job opportunities to top MNCs.
- Job Opportunities and Internship: Get access to job opportunities to top MNCs.
- Live Projects: Experience Industry oriented Projects during the training.
- Prime Membership: Get a 1-Year Prime Membership of Koed and avail the 360o placement support.
- Trainer: Industry expert trainers with decades of working and training experience.
Benefits of Koed Business Analytics With Python Course
- 1-Yr Prime Membership of Koed and avail the 360o placement support.
- 100% Job Support exclusively entitled for BI Specialist Professionals.
- 32-Hours Live Virtual Training.
- Access to the Koed LMS.
- Recorded Videos of the Session for recap.
- Resume analysis and Interview Preparation.
Own a certificate in exchange for your merit and hard work, not just money.
-
Acquire
In your hand, will rest a Koed certificate once you test your knowledge in the exam and pass with flying colours. Once all modules of the course are done, our trainers will be greatly pleased to share your reward with you.
-
Think out of the box, go out of your comfort zone
Everybody has an option to do things the conventional way but only some have the courage to own up and do it in their own way. Once you complete all modules of the course, you will be instilled with all the required skills and knowledge to be able to carve your own way. You will see your productivity shoot up at work, during interviews and more.
-
Share and inspire others
No success story is a great story until it motivates other people to work harder. We would encourage you to highlight and show the world the reward you earned for your hardwork and consistency. Share the certificate on social media channels, alumni networking meetings and other platforms. Remember when it's your time to shine, shine brightly.
Business Analytics With Python Course Curriculum
- 1.1 What is Analytics (BI, BA, Levels, etc)
- 1.2 Why Analytics (Appl in various domains
- 1.3 Different Roles in Analytics
- 1.4 Tools and Techniques in Analytics
- 1.5 Data Science, Data Mining, Statistics, Machine Learning, Su
- 1.6 CRISP Modeling Framework
- 1.7 Scales of Measurements
- 2.1 Anaconda - Download & Setup
- 2.2 IDEs - Jupyter, Spyder, PyCharm
- 2.3 Git - Setup and Configuration with IDEs
- 2.4 Creating and Managing Analytics/ ML Projects
- 3.1 Basic Data Structures & Programming Constructs
- 3.2 Libraries
- 3.3 Numpy
- 3.4 Pandas
- 3.5 Matplotlib
- 4.1 Pre Processing Data
- 4.2 Group Summaries
- 4.3 Crosstab, Pivot and Reshape data
- 4.4 Managing Missing Values
- 4.5 Outliers Detection
- 4.6 Various types of Joins, merge
- 4.7 Managing indexes in pandas
- 4.8 Partitioning data into train and test set
- 4.9 Scaling of Data (useful for Clustering)
- 5.1 Basic Statistics (mean, median, mode)
- 5.2 Other Statistics (sd, var, quantile, skewness, kurtosis)
- 5.3 Hypothesis Tests (t-test, Chi-sq tests, etc)
- 5.4 Probability Distributions (normal, binomial, etc)
- 5.5 Sampling Techniques
- 6.1 Selection of Graph
- 6.2 Basic Graphs (histogram, barplot, boxplot, pie, etc)
- 6.3 Libraries (matplotlib, seaborn, plotline)
- 6.4 Managing plot parameters(size, title, axis, legend, etc)
- 6.5 Advanced Graphs (correlation, heatmap, mosaic, etc)
- 6.6 Exporting graphs
- 7.1 Modeling Techniques
- 7.2 Simple Linear Regression
- 7.3 Multiple Linear Regression
- 7.4 Libraries - sklearn, statsmodel
- 7.5 Predict DV on IVs
- 7.6 Metrics of Linear Regression(R2, RMSE, p-values)
- 7.7 Applications of Linear Regression
- 7.8 Assumptions of Linear Regression
- 8.1 Difference between Linear and Logistic
- 8.2 Logistic Regression
- 8.3 Metrics of Logistic Regression (confusion matrix, ROC curve
- 8.4 Predict the probability of DV on IV
- 8.5 Applications of Logistic Regression
- 9.1 Difference between classification and regression decision t
- 9.2 Understanding tree from the plot
- 9.3 Classification Tree - predict class, plot, accuracy
- 9.4 Regression Tree - predict numerical value, plot, RMSE
- 9.5 Improving tree accuracy using Random Forests
- 9.6 Bagging and Boosting
- 9.7 Applications of Decision Tree
- 9.8 KNN (k-nearest neighbors)
- 9.9 Neural Networks
- 9.10 Gradient Descent
- 9.11 SVM (Support Vector Machine)
- 10.1 Clustering for Grouping Data
- 10.2 Types - Hierarchical & Non-Hierarchical
- 10.3 K Means - output metrics (iter, error, plot)
- 10.4 Hierarchical (Agglomerative & Divisive) - Dendrogram, Visu
- 10.5 Extracting the data in clusters, Cluster Centers
- 10.6 Applications of Clustering
- 11.1 Applying AR to the grocery store for Market Basket Analysi
- 11.2 Metrics- Support, Confidence, Lift
- 11.3 Frequent Itemsets and Rules; Filtering rules
- 11.4 Applications of AR
- 12.1 Managing Unstructured Data; Unstructured to Structured Dat
- v
- 12.1 Managing Unstructured Data; Unstructured to Structured Dat
- 12.2 Extracting Tweets from Twitter
- 12.3 Extracting words for Sentiment Analysis
- 12.4 Wordcloud to visualize the frequency of occurrence of word
- 12.5 Applications of Text Mining
Know the complete offerings of our Business Analytics With Python Course
Program Features
Skills covered
Job Roles