Graduate Data Analytics Certification Program
Certified Trainers
All our trainers have been vetted carefully by industry experts for their specialisation, teaching skills as well as years of experience. We put emphasis on actual learning outcomes of attendees with varied degrees of pace, pre-existing knowledge, and potential. In short, our approach is to leave no one behind!!! We are a team of young minds with high potential, backed by our enormously experienced advisory council members. We got you covered!
certification
You don't need a PhD to become a professional data analyst. All you need is a quest for well-aligned and self-paced learning. No programming skills are required; except some elementary computer skills. We start small, re-enforce applied learning, using tools and techniques coupled with numerous hands-on exercises. Upon completion, we issue a professional certificate with an exclusive digital badge, recognising your proficiency.
HANDS-ON Projects
In today's digital economy, three important competencies, namely, Critical Thinking, Collaboration, and Communication are essential, in addition to industry specific-skills. In order to develop these abilities through social and emotional learning, we encourage our learners to undertake extensive applied projects, headed by our industry experts and trainers. These projects equip you with the knowledge you need to thrive in the world of work.
This is a signature course by Outlier Analytica that makes you a pro in data analytics if you wish to explore, analyse and solve economic and business problems with data analytics tools. This course is especially designed for young graduates and working professionals who aspire for higher education as well as decent work opportunities in the world of work.
This course is not only comparable to the university level courses, but also covers topics required to be qualified for jobs and conducting scientific research with the known national/international organisations.
In this course, you will be introduced to the intrigued yet well-established ideas and techniques of quantitative analysis and research used in the fields of economics, business, statistics, mathematics and social sciences. You will learn about fundamental principles of data analytics, data management, exploratory data analysis, graphical visualisation, statistical computation, empirical analysis. The well-known econometrics tools and techniques such as applied regression models, logistic regression models, time-series and panel-data models will be taught in this course. We, not only focus on the technical coding part but also build strong foundation in various applied data analytics techniques with much focus on empirical analysis and inferential statistics.
It is true that you will not learn data analytics just by watching videos online. Therefore, we have designed our courses with greater emphasis on applications and hands-on exercises along with technical as well as theoretical foundations. Don’t worry, all the important concepts posted under agenda tab will be discussed and explained before proceeding to the practical applications.
Further, hands-on exercises will consist of various research studies that you will perform in collaboration with fellow learners. Together you will clean the big datasets, formulate research hypothesis, perform various techniques learnt during sessions and produce final results with interpretation. In short, you will go through the entire process of data analysis and research; the invaluable experience you need, to achieve better career outcomes.
This course will teach you and make you a PRO in dealing with cross-sectional, discrete and panel data models using Stata as well as R-studio. This will help you deal with data collected at multiple times, cross-country data as well as pooled data. Additionally, it prepares you for bigger roles in the world of work.
Once you get the hang of our courses and learn valuable skills, they will become an analytical “SWISS ARMY KNIFE” valuable in just about every professional, economic and social setting. LET US LET YOU IN ON A SECRET: You just need to be two steps ahead of the rest. In short, the success lies in getting started!
IT’S TIME TO EMBARK INTO THE WORLD OF DATA ANALYTICS AND A PROMISING CAREER!
For more details, see course agenda.
For more info, give us a call or simply leave a text. Whatsapp chat box is at the top of your screen. We are open 24/7 to assist you!
We can also be reached at our email address: [email protected]
Statistical Software: STATA and R-studio
Format: Live Interactive Sessions
Part-I
Introduction
- Stata Interface
- Stata workflow and windows
- The Graphical user Interface (GUI)
- Stata resources, documentation, help and Version info
- Other online resources
- Directory structure for Projects
- Directories for Collaborative Projects
- Stata Shortcuts
Getting Started with Data Files
- Introduction to Cross-section, Time Series and Panel Data
- Introduction to various data files
- Entering data manually
- Working with preinstalled data
- Opening stata data files
- Importing non-stata files
- Opening and Saving Stata Data Files
- Exporting data to other files formats
- Data Browser and Editor
- Types of Variables in Data Files
Stata File Formats
- Do files
- Dictionary files
- Data files
- Temp file management
- output files
- Do-files management for Accuracy, Efficiency, Automation, Usability, Scalability and Standardisation
- Translation From the Command Window
- Getting the Most Out of Do Files
- Writing and Debugging Do-files
- Delimit and line breaks
- Error Detection and Correction
- Log file, Smcl and .log format
- Automating Your Work
Stata Playground
- Working with Useful Stata Commands
- Generating new variables
- Converting Between Numeric and String Formats
- Creating New Categorical and Ordinal Variables
- Labeling variable values
- Variable labels and names
- Commands for Working with Notes
- Creating random data and random samples
- Other functions
Part-II
Big Data Modification and Transformation
- Introduction to Large Datasets and Document Evaluation
- IDs, Primary keys and unique identifiers
- Truncating Dataset: Keep/drop and if/in qualifier
- Append datasets
- Merge Datasets
- Collapse Datasets
- Reshape Datasets
- Working With Labels
- Altering and replacing variables
- Cleaning observations and variables
- Systematic data cleaning
- Missing observations and codes
- Egen Command Extension
- Descriptive statistics
- Cross tabulation
- Computation by Groups
Data Cleaning
- Verifying Variables
- Verifying Values using Survey Questionnaire
- Principles for Creating New Variables
- Creating Variables with Missing Values
- Keep the Source Variable
- Evaluating Missing Observations
- Graphical Representation
- Cheat sheets
The Basics of Stata Programming
- Local Macro
- Global Macro
- Loop Constructs
- Foreach
- Forvalue
Part-III
Working with Large Datasets
- Data Extraction
- Creating Dictionary Files
- Saving dictionary files
- Importing Non-Stata Text format files
- Creating do files for extraction
- saving imported data into stata format
Data Preparation & Analysis
- Sorting and Filtering Data
- Reshaping large data files
- collapsing data on key indicators
- Merging multiple files
- Working with National Sample Surveys data
- Working with Periodic Labour force surveys data
- working with Annual Surveys of Industry data
- working with economic census data
- Survey Weights
Summary Statistics and Description of Datasets
- Summarising datasets
- Exploratory data analysis
- Graphs and visualisation
- Frequency tables
- Summarising information by categories
- Editing, combining and exporting graphs
- Correlations
- Testing for normality
Part-IV
Applied Regression Analysis
- Introduction to Sampling Methods
- Correlation Vs. Regression
- Linear Regression Analysis
- Ordinary least squares
- Goodness of fit
- Hypothesis test for slope coefficient
- Prediction in linear regression
Multiple Regression Analysis
- Estimation
- Goodness of fit and the F-test
- Adjusted R²
- Partial slope coefficients
- Prediction in multiple regression
- Standardisation and relative importance
Dummy Variables
- Creating dummy variables
- The logic behind dummy-variable regression
- Regression with one dummy variable
- Regression with one dummy variable and a covariate
- Regression with more than one dummy variable
- Comparing the included groups
- Regression with more than one dummy variable and a covariate
- Regression with two separate sets of dummy variables
Interaction/Moderation Effect using Regression
- Interaction/moderation effect
- Product-term approach
- Interaction between a continuous predictor and a continuous moderator
- Interaction between a continuous predictor and a dummy moderator
- Interaction between a dummy predictor and a dummy moderator
- Interaction between a continuous predictor and a polytomous moderator
Linear Regression Assumptions and Diagnostics
- Correct specification of the model
- All X-variables relevant, and none irrelevant
- Linearity
- Additivity
- Absence of multicollinearity
- Assumptions about residuals
- That the error term has a conditional mean of zero
- Homoskedasticity
- Uncorrelated errors
- Normally distributed errors
- Influential observations
- Leverage
The Functional Form Specification
- Specification error
- Omission of relevant variables from the model
- Graphically analysing regression data
- Inclusion of irrelevant variables in the model
- Functional form misspecification
- Ramsey’s RESET
- Specification plots
- Specification and interaction terms
- Outlier statistics and measures of leverage
- Endogeneity and measurement error
Part-V
Non-Linear Estimation and Linear Models Extensions
- The generalised linear regression model
- Heteroskedasticity in the error distribution
- The robust estimator of VCE
- The cluster estimator of VCE
- The Newey–West estimator of VCE
- The generalised-squares estimator
- Serial correlation in the error distribution
- Testing for serial correlation
Discrete Response Models
- Introduction to Binary Variables
- LPM Models and their limitations
- Probit and Logit Models
- Odds Ratio, Marginal Effects and Goodness of Fit
- Multinomial Models
- Testing Parallel Regression Assumption
Instrumental Variable (IV) Regression and Multi-Equation Models
- Endogeneity in economic relationships
- Two Stage Least Square Model
- The ivreg command
- Identification and tests of over-identifying restrictions
- The GMM estimator
- Testing for heteroskedasticity in the IV context
- Testing the relevance of instruments
- Durbin–Wu–Hausman tests for endogeneity in IV estimation
Part-VI
Organising and Handling Economic and Financial Data
- Time-series data
- Time-series operators
- Pooled cross-sectional time-series data
- Panel data
- Working with panel data
- Tools for manipulating panel data
- Unbalanced panels and data screening
- Combining cross-sectional and time-series datasets
- Creating long-format datasets with append
- Using merge to add aggregate characteristics
Time Series Models
- Filtering time-series data
- White noise, autocorrelation, and stationarity
- Adjusting for Various Time-Series Components
- Forecasting Fundamentals
- Univariate Time-Series Models
- Multivariate and Multiple Equation Models
- Modeling Non-Stationary Time-Series Processes
- VaR
- VaR estimation
- ARCH and GARCH models
Panel-data Models
- FE and RE models
- One-way FE
- Time effects and two-way FE
- The between estimator
- One-way RE
- Testing the appropriateness of RE
- Prediction from one-way FE and RE
- IV models for panel data
- Dynamic panel-data models
- Seemingly unrelated regression models
- SUR with identical regressors
- Moving-window regression estimates
Course Fee | Level(s) | Sections | Live Interactive Sessions |
Beginner’s Level | Part-I and Part-IV | INR 23,995 | |
Intermediate Level | Part-II and Part-III | INR 35,995 | |
Advanced Level | Part-V and Part-VI | INR 35,995 | |
Total Course Fee | All Levels | All Parts | INR 95,985 |
This is our signature course wherein we have clubbed all levels from beginners to advanced. We invest in your future.
*Learners can enrol for individual levels as well.
*Group Discount is available. Connect with our sales team: [email protected]
*For more info give us a call: +91-9871890948
This course is for all those who are in pursuit of learning advanced data skills, using advanced tools and techniques; irrespective of their educational background and level.
Basic Computer Skills such as Microsoft Suite is essential. That is it! Rest we start at a basic level, and gradually build on your pace of learning as well as pre-existing knowledge. Remember, we have your back!
Please Note: In case you are worried about joining this course with us, we want to tell you in advance… It’s going to be extremely difficult initially. And if you do join and complete the course, you will get more out of this than compared to your peers. After all, THE EARLY YOU START, THE MORE YOU GET!
Terms and Conditions
- Registration closes one week prior to the commencement of the course.
- To ensure quality, only limited number of seats are available in every batch. Register early to guarantee your spot.
- Payment of course fee is mandatory prior to the course start date.
- For student registration rates, a proof of valid student id or authorised enrolment letter is a must.
- For group discounts, contact our sales team at [email protected]
- Learners are required to bring their own laptops. However, we provide laptops under special circumstances for class-use on the availability basis.
- No fee returned for cancellations made.
- Flat 20% off on all courses for economically weaker students (TnC applied). One special discount is applied at a time.
- The cost of stata is not included, nor do we sell the software.
Reserve your seat now!
Select options This product has multiple variants. The options may be chosen on the product page
Skills You will gain
- Directory structure for Projects
- Directories for Collaborative Projects
- Stata workflow and windows
- Stata Shortcuts
- Introduction to Cross-section, Time Series and Panel Data
- Working with preinstalled data
- Importing non-stata files
- Exporting data to other files formats
- Temp file management
- Do-files management for Accuracy, Efficiency, Automation, Usability, Scalability and Standardisation
- Writing and Debugging Do-files
- Automating Your Work
- Working with Useful Stata Commands
- Creating random data and random samples
- Introduction to Large Datasets and Document Evaluation
- Truncating Dataset: Keep/drop and if/in qualifier
- Append datasets
- Merge Datasets
- Collapse Datasets
- Reshape Datasets
- Egen Command Extension
- Systematic data cleaning
- Missing observations and codes
- Computation by Groups
- Verifying Values using Survey Questionnaire
- Local and Global Macro
- Loop Constructs
- Foreach and Forvalue Functions
- Creating Dictionary Files for Big Data Analytics
- Importing Non-stata Text Format Files
- Sorting and Filtering Big Data Files
- Reshaping Large Data Files
- Collapsing Data on Key Indicators
- Working with National Sample Surveys Data
- Working with Periodic Labour Force Surveys Data
- working with Annual Survey of Industry data
- working with economic census data
- Survey Weights
- Exploratory data analysis
- Testing for normality
- Linear Regression Analysis
- Multiple Regression Analysis
- Dummy Variables
- Regression with more than one dummy variable
- Interaction/moderation effect
- Linear Regression Assumptions and Diagnostics
- Functional form misspecification
- Endogeneity and measurement error
- Outlier statistics and measures of leverage
- The generalized linear regression model
- The robust estimator of VCE
- Testing for serial correlation
- Introduction to Binary Variables
- LPM Models and their limitations
- Probit and Logit Models
- Multinomial Models
- Odds Ratio, Marginal Effects and Goodness of Fit
- Endogeneity Models
- Two Stage Least Square Model
- Time-series data
- Pooled cross-sectional time-series data
- White noise, autocorrelation, and stationarity
- Univariate Time-Series Models
- Multivariate and Multiple Equation Models
- Modeling Non-Stationary Time-Series Processes
- VaR estimation
- ARCH and GARCH models
- Fixed-effect and Random-effect Models
- One-way Fixed effect
- Testing the appropriateness of Random effect
- Instrumental variable models for panel data
Career Outcomes
- Start a new career after completing this course
- Prepare you for higher studies and meaningful decent jobs
- Complete academic and professional projects diligently
- Get a pay increase or promotion
- Prepare you for bigger roles in the organisation
- Get tangible career benefits from this course
- Prepare you for life-long learning outcomes
course timeline
Week I
Part I: Introduction
We will teach you basics of stata such as workflow, types of windows, data formats etc.
Week II-III
Getting Started With Data Files
We will cover topics such as different data file structures, importing of various non-stata format files, exporting files to other formats and data exploration.
Week IV-V
Stata file formats
To simplify analysis, stata has included various windows for efficiently working with big datasets. Different stata files structures such as do files, data files, dictionary files, output files etc. will be taught in this section.
Week VI-VII
Stata Playground
In this section, we will cover basics of data management such as generating new variables, changing existing variables, string to numeric transformation, recoding, encoding and decoding of variables for better analysis and other advanced useful stata commands.
Week VIII-X
Part II: Data Modification and Transformation
It’s relatively easy to work with single datafile. However, multiple data files make tasks little tedious if not understood the right techniques. It might distort your data while combining. We will be covering append, merge, collapse and reshape topics along with other essential commands in this section.
Week XI
Data Cleaning
No dataset is perfect. Analysts face many challenges such as missing observations, incorrect variable coding, mismatch and non-numeric observations. We will be covering techniques to overcome these problems in this section.
Week XII-XIV
The Basics of Stata Programming
Time is everything. Isn’t it amazing to cut down on repeated task and put your work on automation mode? This is what we will teach you in this section. Topics such as macros and loops will be covered.
Week XV
Part III: Working with Large Datasets: Data Extraction
You will be the first choice in the labour market, if you know how to deal with large datasets provided by national/international agencies. We will teach you everything about these datasets which often comes in the fixed file formats- not so easy to deal with. In short, we will address the elephant in the room. Skills which no one would like to share with you in the professional world.
Week XVI-XVII
Data Preparation & Analysis
Now that we got the data in the stata file format, We will learn filtering techniques to transform it as per analysis needs.
Week XVIII- XIX
Summary Statistics and Description of Datasets
Here begins the analysis and the first step in this direction is exploratory data analysis techniques using conditional functions and graphical representation. Remember, we have your back!
Week XX-XXII
Part IV: Applied Regression Analysis
Data is just a collection of numbers on different attributes unless we can extract meaningful information out of it. To do so, we need applied regression tools other than descriptive statistics and cross-tabulation. We will cover topics such as linear regression, multiple regression, dummy regression and interaction effects to produce logical analysis.
week XXIII-XXIV
Linear Regression Assumptions and Diagnostics
Not all data fulfils the assumptions of the specified regression techniques which might influence our analysis and produce different results. In this process, we need to diagnose such techniques and try to find remedial solutions. We will cover topics within the limits of linear regression models in this section.
Week XXV
The Functional Form Specification
What if we specify the wrong regression equation such an included the irrelevant variables or excluded the relevant one. Or it should have been linear but we specified non-linear. This will have serious implication for measurement errors. To error proof our models, we need to work on these techniques for accuracy and reliability.
Week XXVI-XXVII
Part V: Non-Linear Estimation and Linear Models Extensions
Beyond linear regression models, generalised linear regression models as well as tests for robustness will be covered in this section in detail.
Week XXVIII-XXIX
Discrete Response Models
Not all outcome variables can be continuous in nature. To deal with this issue, we will learn logistic regression models and their result interpretation using odds ratios as well as marginal effects for comparison across time and different model specification.
Week XXX-XXXI
Instrumental Variable (IV) Regression and Multi-Equation Models
To deal with the problem of endogeneity, we will introduce you to instrumental variable regression models as well as two-stage least square models.
Week XXXII-XXXIV
Part VI: Organising and Handling Economic and Financial Data
Time-series and panel data are quite different vis-a-vis cross-sectional data. They need different techniques for data management and manipulation. We will learn these techniques for time-series and panel data in this section.
Week XXXV-XXXVII
Time Series Models
We will teach you concepts such as stationary time-series Vs. non-stationary time series, autocorrelation, white noise and forecasting fundamentals. Further, time-series models such as ARCH, GARCH and VAR estimations will be covered in this section.
Week XXXVIII-XL
Panel Data Models
To deal with panel data, we will teach you various application of fixed effect and random effect models as well as instrumental variable models for panel data.
Week XLI-L
Hands-on Projects
All the learners will be asked to apply techniques learnt in this program and complete individual exercises as well as group project for better understanding of the data analytics tools and techniques using real time big datasets. Upon completion of the course, all the learners will be issued completion as well as proficiency certificate based on individual performance.
earn a certificate upon completion
Course Participation Statistics
FAQs
The blend of your subject knowledge and use of STATA as a tool is what makes you an expert in applied data analytics. STATA is used in over 180 countries, which makes it one of the widely used statistical software in the world. STATA provides an extensive list of statistical techniques that one can learn and take advantage of their use across various projects and day-to-day work in the fields of economics, business, education, political science, sociology, biostatistics, finance, marketing and management.
Stata is an effective analytical and statistical tool and widely used in over 180 countries, across various national and international organisations. Using stata is highly effective and its multipurpose applications are advantageos; especially in the disciplines of education, medical, economics, business, marketing, biostatistics and behavioral sciences. Researchers in these fields have relied on stata for its accuracy, efficiency, extensibility and reproducibility. This software is also extensively employed for graphical illustration and visualisation, data management, research outputs, and regression modelling analysis.
Stata is a statistical software for statistical analysis developed by statistician. On the other hand, Python is a programming language written for programming purposes by the programmers. R seems neither here nor there. In short, it is a programming language created by statisticians. With python gaining popularity for its use as a programming language, R is going through an existential crisis. If the major purpose is to do statistical analysis then, Stata is the only street boy who has beaten E-views and SPSS and all set for the big boys table with its latest Python integration support, meaning any exercise you do in Python now directly can be done in Stata. All in all, Stata is best known for its simplicity, ease of use, accuracy, efficiency and graphical user interface (GUI).
Learning stata and statistics are two different things. However, in order to learn more nuanced concepts and their applications in stata; the subject knowledge is required at the later stages of learning. Many people (irrespective of their degree courses) choose data analytics as a specialisation. Therefore, we have carefully designed our courses, keeping in mind pre-existing knowledge and acquisition pace of our learners. We start at a very basic level and cover all necessary statistical concepts using mixed approach. We don't just instruct coding skills, we teach concepts and data skills, which are rendered necessary to become skilled in data analytics.
Stata being a statistical package is user-friendly with interactive interface (GUI as well as command-based window) and easy to learn from scratch. It is widely used in the research sector as well as in the corporate world. All the research centres of the major consulting firms, universities, government institutions, NGOs, international organisations; such as united nations, International Labour Organisation, World Bank, UNDP, WHO, etc., use stata for evidence-based data analysis and econometric modelling.
Regression analysis, multivariate regression analysis, logit or probit regression, time-series models, panel-data models, structural equation models, instrumental variable models, generalised least square models, cross-sectional data management, capital asset pricing models, survey data management - you name it and it will produce results in the blink of an eye. Whether you are a political scientist, an economist, a business analyst, a statistician or a sociologist; you always need data-backed facts to support your well-thought narration, and stata makes it possible.
Because It's All About Happy Students...
Initially, I wasn’t quite sure about training programs as I already had so much on my plate and I thought degree is more than enough to help me grab any opportunity in the market. Alas, I had a little setback when I couldn’t find internship to polish what I learnt during first two college years because there is a huge gap between what is being taught at the university level and what is actually being required at the work place. I did what I could, joined graduate level course on the recommendation of my friend. Not only that the young team at the outlier analytica work on the practical aspect of what you have learnt but also prepare you for the job market through their career service program. I will always be indebted for their services.
Ankit
University of Cambridge
Being a student from small town, I was never exposed to the college culture before. I had little knowledge of skills required to succeed. Though formal higher education is a must as it increases your chances of success but we need a lot more than that in this ever changing digital economy. I had idea about data analytics as being a student of economics major but I was confused between which software or programming language to learn. I wanted to have my options open for MBA as well as MSc. But to excel in both the streams, a little more than just coding or programming is required. This gap was fulfilled by Outlier as majority of the trainers are PhDs. Their tailor-made data analytics programs are essential for higher education aspirants. I finished my masters from DSE.
Ksheerja
Delhi School of Economics
The only question that bothered me always, how can I maximise the value of my limited stock of money? Either I can borrow and take admission in some MBA institution after finishing my undergrad or learn the skills which will increase my employability, take the job, earn money and then join executive MBA side-by-side. I was not very great in studies but never stopped hustling for my future. Today I am working as a teaching assistant at ISB, Hyderabad. I will always be grateful for their guidance. They will not make any false promises. Nor they will try to teach you data analytics in 10 hours or 20 hours as claimed by many other institutions. It’s a gradual process and if you are determined they will never leave your side. They are true mentors and understand the job market.
Abhishek
ISB, Hyderabad
Excellent quality content. Variety of courses that really get you interested in the topics and approaches of data analytics and research. Choose on the basis of your understanding and requirement as I am sure one size doesn’t fit all. All the courses are designed keeping in mind the interests of various types of learners; in such a way that broadens your understanding of the complex issues and problems and also develop critical thinking. They teach you various approaches to reframe problems and find their solutions.
rishabh
university of delhi
I would highly recommend data analytics courses provided by outlier analytica to anyone curious in learning what data analytics is all about. The course instructors simplifies the contents that make you understand concepts easily. If you are a beginner, tools and materials provided by outlier are very helpful to start with. Beginning with the useful commands to manage different types of datasets to teaching econometric models and results interpretations, they cover almost everything.
Muskan
amity university
Excellent delivery of course content! The team outlier is quite vibrant in terms of knowledge, quest for learning and always ready to take challenges. I will not say that they are google or they know it all but they know “how to know” and tackle challenges and problems with creative solutions. I have worked with them previously. They always strive for excellence and never settle for anything less than anyone deserves; kind of a win-win situation for everyone.
Amit
faculty, university of delhi
They have three different types of courses which you can classify into beginners, intermediate and advanced levels. Being a researcher, I was looking to work with large government datasets which comes in many different formats. Normally, it takes over 101-12 months to cover the basics of it. However, team outlier with vast years of experience into handling these large datasets, I was able to accomplish my goals pretty soon and concentrated on the real work of research. They make it easy and less time-consuming. Team has many years of experience working with international organisations which is a plus point if you are seriously looking for career in research sector. I would recommend their advanced level courses to anyone in the research sector.
suresh
jawaharlal nehru university
I was mainly looking for career services which could help me getting into top research organisations such as UNDP, UN, World Bank, ADB, ILO etc. However, I wasn’t aware of their interview process mainly for their annual Young professional programs. Outlier not only guided me to prepare solid cover letter and CV but also helped me prepare for the competency based interview which is now becoming a norm across various international organisations. They have a long checklist of questions prepared for such interviews which is apt for anyone seeking to start their career with such organisations. It’s a thumbs up from my side if you are looking for either data analytics courses, internship, collaboration or career services. Three cheers for team outlier!
Unnaty
boston university
I did not have any background in data analytics. It becomes little hard especially when you do not have statistical background. However, with increasing demand for such skills in the investigative journalism, you need more than microsoft excel skills and joined the beginners’ level course at outlier analytica. It cleared the basics of data analytics (i.e. built strong foundation) and made me aware about the correct path to learn data analytics and its career prospects across various industries in the long run. Overall, very good learning experience with the trainers and easy to understand course content, however, still a long way to go. I would recommend courses provided by outlier to anyone who is from non-statistical background.