Intro to Data Science for Business and Finance (Advanced Python)
June 12: 5:30 pm – June 13: 9:00 pm Virtual
- This event has passed.
Overview
The amount of data available to organizations and individuals is unprecedented. Financial services sectors, including securities & investment services and banking, have the most digital data stored per firm on average. As a result, financial companies have been on an innovation and technology push to create new, disruptive technologies that can maximize use of these data assets to solve some of the industry’s toughest problems.
This one-day, hands-on course provides a structured teaching environment where students learn classic data science methods, which are used as the bases for many financial technologies including Generative AI. At the end of the workshop, course participants will have applied the Python programming language and essential data science techniques to solve complex finance problems.
Specific areas in finance where the data science skills acquired from this course can be effectively applied include: sentiment analysis, advanced time series analysis, risk management, real-time pricing and economic data analysis, customer segmentation analysis, machine learning algorithm creation for financial technologies, and Generative AI.
What This Course Offers
- An overview of data science methods relevant to finance and fintech
- Explanation of the hype around data science, machine learning & big data
- Hands-on Python programming experience
- Understanding of effective data visualization techniques using Python
- Course notes, certificate of completion, and post-seminar email support for 1 year
- An engaging and practical training approach with a qualified instructor with relevant technical, business, and educational experiences
Who This Is For
This course is relevant for professionals who want to gain a hands-on introduction to essential data science methods that are utilized in finance and fintech.
Please note that you must have introductory Python programming skills before attending this workshop. Cognitir offers an online Introduction to Python course that you can enroll in and complete if you don’t have basic Python skills. Our specific introductory Python course is not required; any introductory course is fine. You must have basic Python skills before the start of this data science workshop.
Course and Contact Information
Level: Beginner
Prerequisite: Introduction to Python or the equivalent
Duration: 1 Day (7 hours)
info@cognitir.com
+1 908 505 5991 (US)
www.cognitir.com
Course Curriculum
- Introduction to Data Science for Finance & Fintech
- What is data science, why is it relevant to finance and fintech?
- Applications of data science to finance and fintech industries
- The Data Science Process
- What does the data science process typically look like within an organization?
- Overview of the main steps
- Pitfalls & recommendations
- Overview of the Most Common Data Science Methods
- Supervised vs. unsupervised learning
- Classification in Python for Finance and Fintech
- When to use classification tasks
- Overview and implementation of decision tree classification in Python to
obtain better customer insights - Evaluation of classification tasks using accuracy, confusion matrices,
expected value, etc. - Visualization classification tasks using profit curves, ROC curves, AUC, etc.
- Selecting informative attributes via information gain and entropy analyses
- Clustering in Python for Finance and Fintech
- When to use clustering tasks
- Overview and implementation of k-means clustering in Python to understand
stock data and optimize portfolios - Improving k-means and using similarity for predictive modeling
- Big Data for Finance
- What is big data and why is big data relevant to finance & fintech?
- How does big data relate to the concepts taught in this course?
- Overview of most common big data technologies
- Wrap-Up and Summary
Course Content Developers
David Haber
David has led programming workshops at the undergraduate and graduate levels, at blue
chip companies, and world renowned management consulting firms.
David has experience working with both startups and large corporations. He has filled
several leading roles in technology startups. David also worked on optimizing large-scale
payment processing systems at Deutsche Bank in Singapore.
David holds an MEng (First-Class Honours) in Computer Science from Imperial College
London (UK) where he focused on statistical machine learning. He presented his work at
international conferences and won several awards for his work. During his studies, he also
served as a teaching assistant at Imperial College where he helped undergraduate students
master fundamental computer science concepts.
Neal Kumar, CFA
At Cognitir, Neal leads strategy & business development initiatives as well as product management.
Outside of Cognitir, Neal consults C-level teams and senior business managers on a variety of strategic topics ranging from M&A to marketing. He also leads training seminars (financial modeling) for Wall Street Prep and has consistently received top reviews from attendees and created two training courses that were used in seminars worldwide. Before his consulting and training careers, Neal taught secondary mathematics in St. Louis Public Schools (USA) as a Teach for America Corps Member. Prior to joining Teach For America, Neal worked in investment banking at Lazard, JPMorgan, and Houlihan Lokey.
Neal received his MBA from London Business School (UK) and BBA in Finance from the University of Notre Dame (USA). He is also a CFA Charterholder and a Member of the CFA Institute Education Advisory Committee (EAC) Working Body where he helps shape CFA Program Content.
Early Bird Registration Fee (Closes May 12th):
-
- CFA Member: $419
- Non-Member: $519
Registration Fee (Closes June 7th):
-
- CFA Member: $519
- Non-Member: $623
Timeline:
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- June 12, 2024: 5:30 pm – 9:00 pm
- June 13, 2024: 5:30 pm – 9:00 pm