Data Analysis in Python - London - 3-Day Training Course

Date:

08/11/2017 - 10/11/2017

Organised by:

Mind Project Ltd

Presenter:

Simon Walkowiak MBPsS

Level:

Entry (no or almost no prior knowledge)

Contact:

Mind Project Ltd
Simon Walkowiak MBPsS
Phone: 02033223786
Email: info@mindproject.co.uk

Map:

View in Google Maps  (EC1A 9HA)

Venue:

CAP House, 1st Floor, 9-12 Long Lane, London, EC1A 9HA

Description:

1. Course description.

The “Data Analysis in Python” course will introduce you to all most essential and practical applications of Python programming language for data manipulation, management, analysis and basic visualisations. The course will provide you with practical skills in general Python programming language a number of Python’s libraries designed for scientific computing and data analysis e.g. NumPy, pandas, matplotlib, IPython, SciPy etc. During the course you will learn to:

  • Use Python’s Anaconda distribution and its integrated development environment Spyder with Jupyter Notebooks to manage, develop and share a Python analytics project,

  • Understand and differentiate between a variety of data structures within the core Python language as well as a highly-efficient and optimised data structures from NumPy and pandas libraries,

  • Perform basic mathematical and more advanced control flow operations,

  • Import and export data from/to various data file formats e.g. Excel spreadsheets, CSV, tab-delimited, text files, and also SQL databases,

  • Prepare, transform and manage datasets and their variables, add/delete rows, create samples and subsets, identify specific cases based on conditional search, sort cases, add/edit value and variable labels, deal with missing data, standardise, normalise and reshape data, merge datasets and use joins,

  • Carry out an extensive Exploratory Data Analysis (EDA): inspect the structure of datasets and their variables, calculate cross-tabulations and descriptive statistics to summarise the data e.g. pivot tables, summary tables and data aggregations,

  • Introduction to EDA plotting and graphical visualisations: histograms, density plots, scatterplots, box plots, bar plots, line graphs etc.,

  • Perform simple hypothesis testing and inference statistics: tests of differences and correlations. Run tests for normality assumptions, t-tests, analyses of variance (ANOVA), correlations and simple regressions.

  • Carry out simple data modelling tasks using multiple linear regressions.

 

2. Programme.

The course will run for three days (Wednesday to Friday) between 9:30am and 5:00pm and will consist of alternating lecture-style presentations and practical tutorials. The example datasets used during tutorial sessions will come from social sciences, psychology and business fields, however the contents may vary depending on specific interests of participants (based on the Participant's Skills Inventory). There will be two 15-minute coffee/tea breaks and one 1-hour lunch break on each day of the course.

 

3. What is included?

Apart from the contents of the course, Mind Project will provide the participants with the following:

  • a digital (USB memory stick) Course Manual including all presentation slides, Python course script files and a list of reference books and online resources,
  • additional home exercises and all data sets available to download,
  • Wi-Fi access,
  • Central London location - at the CAP House, next to the Barbican station,
  • networking opportunity,
  • Mind Project course attendance certificate.

 

4. Further instructions.

  • In order to benefit from the contents of the course, we recommend that attendees have the most recent version of Anaconda distribution of Python (by Continuum Analytics) installed on their laptops (any operating system). As Anaconda’s Python is a free and fully-supported distribution you can download it directly from https://www.continuum.io/downloads. Please contact us should you have any questions or issues with the installation process.
  • No prior knowledge of Python and its libraries is required from participants enrolling on this course, however a keen interest in data analysis is assumed.
  • Participants are encouraged to complete the online Participant's Skills Inventory at https://www.mindproject.io/participants-skills-inventory/ to allow Mind Project and our course tutors to customise the contents of the course depending on the level of participants' knowledge and their areas of interest. The data obtained through the Participant's Skills Inventory will be held fully-confidential and will only be used to provide a quality data analysis training.
  • By purchasing a place on one of our courses you agree to the Terms and Conditions. Please read the Terms and Conditions available at https://www.mindproject.io/services/data-science-training/training-tcs/ before making a booking.
  • The deadline for registrations on this training course is Monday, 6th of November 2017 at 16:00 London (UK) time, however Mind Project reserves the right to end the registration process earlier if all places are booked before the deadline.

 

Should you have any questions please contact Mind Project Ltd at info@mindproject.co.uk or by phone on 0203 322 3786. Please visit the course website at https://www.mindproject.io/product/data-analysis-in-python-london-november-2017/. 

Cost:

£475 + VAT (£570) per person for the whole course (regular fee).
£325 + VAT (£390) per person for the whole course for UK registered undergraduate and postgraduate students, and representatives of registered charitable organisations (discounted fee).
For group bookings of 4 and more participants, please contact us directly.

Website and registration:

Region:

Greater London

Keywords:

Data Quality and Data Management , Quantitative Data Handling and Data Analysis, Descriptive Statistics, Statistical Theory and Methods of Inference, Regression Methods, Ordinary least squares (OLS), ANOVA, Linear regression, Data Mining, Quantitative Approaches (other), ICT and Software, Quantitative Software, Python, Data Visualisation

Related publications and presentations:

Data Quality and Data Management
Quantitative Data Handling and Data Analysis
Descriptive Statistics
Statistical Theory and Methods of Inference
Regression Methods
Ordinary least squares (OLS)
ANOVA
Linear regression
Data Mining
Quantitative Approaches (other)
ICT and Software
Quantitative Software
Python
Data Visualisation

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