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picture1_Python Pdf 182809 | Python For Finance 2trim 1819


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File: Python Pdf 182809 | Python For Finance 2trim 1819
python for finance nd academic year 2018 2019 term 2 instructor s ana mao de ferro contact s and office hours to be announced biography ana mao de ferro is ...

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                                                    Python for Finance 
                              
                                                                
                                                                                            nd
                  Academic Year: 2018/2019                                           Term: 2  
                   
                   
                   
                  Instructor(s): Ana Mão de Ferro 
                   
                  Contact(s) and Office hours: To be announced 
                   
                  _____________________________________________________________________________ 
                  Biography:  
                   
                  Ana Mão de Ferro is a research assistant at CUBE and previously worked as a teaching assistant of 
                  Statistics, Macroeconomics and Finance (Bachelor) and Methods in Finance/Empirical Finance (Master) at 
                  Católica-Lisbon. She holds a BSc in Economics from Católica-Lisbon and a Double MSc in Business 
                  Administration  from  ESCP  Europe  and  Católica-Lisbon.  She  enrolled  in  the  first  edition  of  the  Post-
                  Graduation in Data Science at Faculdade de Ciências da Universidade de Lisboa. 
                   
                   
                  ____________________________________________________________________________ 
                  Course overview and objectives: 
                   
                  The goal of Python for Finance is to introduce students to the potential of Python as a data science tool, 
                  with an emphasis on financial applications. By the end of this course, students will be able to: 
                   
                         Read and write files with Python. 
                         Work with large amounts of financial data (e.g. compute descriptive statistics, linear regressions). 
                         Create basic charts. 
                   
                  _____________________________________________________________________________ 
                  Course Content: 
                   
                  Review of Financial Databases (mainly WRDS and Datastream). 
                  Introduction to Python 3. 
                  Introduction to the SciPy ecosystem (in particular: Pandas, NumPy and Matplotlib). 
                   
                   
                  _____________________________________________________________________________ 
                  Required background: 
                   
                         Knowledge of Python is not needed to enroll in this course. Previous contact with programming, 
                          such as VBA, R or MATLAB, is helpful but not a prerequisite. 
                       
                             Familiarity with basic concepts of Statistics and Finance (benchmark: having completed at least 
                              one Finance and one Statistics course at the undergraduate level). 
                             Completion of the course Data Science for Finance is a requirement. 
                       
                      _____________________________________________________________________________ 
                      Grading: 
                       
                      The final grade will be the nearest integer of the weighted average, with each component rounded to two 
                      decimal cases, of: 
                             Assignments – 70% 
                             Final exam – 30% 
                      All elements will be computer-based. 
                       
                      _____________________________________________________________________________ 
                      Bibliography: 
                       
                      Severance, C.R. and Blumenberg, S. and Hauser, E. (2016). Python for Everybody: Exploring Data in 
                      Python 3. CreateSpace Independent Publishing Platform. 
                      Yan, Y. (2017). Python for Finance. Packt Publishing Ltd. 
                      McKinney, W. (2017). Python for Data Analysis: Data Wrangling with Pandas, NumPy, and IPython. 
                      O'Reilly Media, Inc. 
                       
                      _____________________________________________________________________________ 
                      Extra Costs (case studies, platforms...): 
                       
                      No extra costs are expected for this course. 
                       
                       _____________________________________________________________________________ 
                      Miscellaneous information: 
                       
                      It is recommended that students install Anaconda in their personal computers. This distribution is free of 
                      charge and available for Windows, macOS and Linux. Installation will be covered in the first classes. 
                       
                      _____________________________________________________________________________ 
                      Code of conduct and ethics: 
                       
                      Católica Lisbon School of Business and Economics is a community of individuals with diverse backgrounds 
                      and interests who share certain fundamental goals. A crucial element to achieve these goals is the creation 
                      and maintenance of an atmosphere contributing to learning and personal growth for everyone in the 
                      community.  The success of CATÓLICA-LISBON in attaining its goals and in maintaining its reputation of 
                      academic excellence depends on the willingness of its members, both collectively and individually, to meet 
                      their responsibilities. 
                      Along with all the other members of our community, students are expected to follow professional standards 
                      and CATÓLICA-LISBON standards of Academic Integrity. Some details should be mentioned here: Please 
                      arrive on time for class with uninterrupted attendance for the duration of the class.  Signing attendance sheet 
                      for  anyone else in the class constitutes fraud and a violation of the CLSBE code of conduct. Use of 
                      computers and other electronic devices during the class is not allowed, unless expressly requested by the 
                          
                         instructor of the course. Students who persistently act in a disruptive and disrespectful manner during the 
                         class session may be invited to leave. 
                         Students are expected to behave at all times according to the fundamental principles of academic integrity, 
                         including honesty, trust, fairness, respect, and responsibility. In particular, 
                              a)  In individual graded assignments of any type, students may not collaborate with others or use 
                                   any materials without explicit permission from the instructor of the course; 
                              b)  In group assignments and reports, all students listed as authors shoud have performed a 
                                   substantial amount of work for that assignment; 
                              c)   It  is  dishonest  to  fabricate  or  falsify  data  in  experiments,  surveys,  papers,  reports  or  other 
                                   circumstances; fabricate source material in a bibliography or “works cited” list; or provide false 
                                   information in other documents in connection with academic efforts; 
                              d)  Plagiarizing, i.e. “to  steal  and  pass  off  the ideas  or  words  of  another as one’s own and or to 
                                   use  another’s  production  without  crediting  the  source”  (Merriam-Webster  Dictionary)  is  an 
                                   Academic Integrity breach. It can be avoided by using proper methods of documentation and 
                                   acknowledgement. Visit this guide for additional resources on how to avoid plagiarism in your 
                                   written submissions  http://en.writecheck.com/plagiarism-guide 
                              e)  In  exams  students  must  not  receive  or  provide  any  unauthorized  assistance.  During  an 
                                   examination,  students  may  use  only  material  and  items  authorized  by  the  faculty.  Use  of 
                                   smartwatches or other communication devices is not permitted during the exam.  
                         Academic integrity breaches will be dealt with in accordance with the school’s code of Academic Integrity: 
                         https://www.clsbe.lisboa.ucp.pt/system/files/assets/files/academicintegritycode.pdf  
                         _____________________________________________________________________________ 
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...Python for finance nd academic year term instructor s ana mao de ferro contact and office hours to be announced biography is a research assistant at cube previously worked as teaching of statistics macroeconomics bachelor methods in empirical master catolica lisbon she holds bsc economics from double msc business administration escp europe enrolled the first edition post graduation data science faculdade ciencias da universidade lisboa course overview objectives goal introduce students potential tool with an emphasis on financial applications by end this will able read write files work large amounts e g compute descriptive linear regressions create basic charts content review databases mainly wrds datastream introduction scipy ecosystem particular pandas numpy matplotlib required background knowledge not needed enroll previous programming such vba r or matlab helpful but prerequisite familiarity concepts benchmark having completed least one undergraduate level completion requirement gr...

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