def bio(name,surname,nick,location,job,education,company=None):
name = Ognjen
surname = Raketic
nick= []
for i in nick:
if Family==True:
return nick = Ogi
elif CloseFriend== True:
return nick = Serafim
elif Colleague==True:
return nick = Raketa
else:
return nick = name + surname
location = Vrbas, Serbia
job = Hired
education = [Masters Student in Computational Science 2022-2023,
Masters Degree in Engineering Management 2019-2020,
Bachelors Degree in Engineering Management 2015-2019]
company = Mutadich Financial Advisory & Vital A.D.
def family():
fam = {"Wife" : Irena,
"Since" : 11.01.2016,
"Kid" : Srdja
"Since": 27.11.2021
"Kid": Another boy
"Since": To be decided in May}
def projects(name,programming_language,date):
project1 = {"name": Risk Contributions On Client Portfolio,
"programming_language" : Python
"date" : 01.10.2023}
project2 = {"name": Making Real Portfolio & Prepare for MarketWatch,
"programming_language" : Python
"date" : 25.09.2023}
project3 = {"name": CAPM & Factor Models,
"programming_language" : Python
"date" : 15.09.2023}
project4 = {"name": Finding Efficient Frontier & Testing Portfolio Performances,
"programming_language" : Python
"date" : 30.08.2023}
project5 = {"name": Portfolio Optimization in Investment Part 1,
"programming_language" : Python
"date" : 26.08.2023}
def past_experiences(position, company, job_description,location,years):
company1 = { "position": Junior M&A Analyst - Sell Side,
"company": Mutadich Financial Advisory,
"job_description" : Financial Modelling, Consulting,
"location": Remote,
"year": 2024-Present}
company2 = { "position": Production Conusltant,
"company": Vital a.d.,
"job_description" : Consulting & Coaching,
"location": Vrbas,
"year": 2023-Present}
company3 = { "position": Consulting Engineer,
"company": Furni,
"job_description" : ML, Consulting & Coaching,
"location": Vrbas,
"year": 2022-2023}
company4 = { "position":Process Engineer,
"company": Vendomnia,
"job_description" : Consulting, ISO Standards & Project Management,
"location": Novi Sad,
"year": 2022-2022}
company5 = { "position":CTO & Engineer,
"company": INKO National,
"job_description" : Finance & Production,
"location": Vrbas,
"year": 2021-2022}
company6 = { "position": Research Consultant,
"company": PhiAcademy,
"job_description" : Scientific Researching & Product Management,
"location": Fully Remote,
"year": 2021-2021}
company7 = { "position": Innovation Consultant,
"company": INAT Centre,
"job_description" : Agile & DT, Project Management,
"location": Fully Remote,
"year": 2017-2021}
company8 = { "position": Shift Leader,
"company": Vital A.D Vrbas,
"job_description" : Production Planning & Agile Transformator,
"location": Vrbas,
"year": 2015-2019}
def technical_background(degree):
if degree == Msc_Engineer**2:
return ("Computer Science Engineer, Industiral Engineer")
else:
pass
def fields_of_interest(alpha,betha, gamma, research, readings, projects):
FoE = { "alpha" : Investment Banking,
"betha" : Mergers & Acquisition,
"gamma" : Data Science,
"research" : FinTech,
"readings" : Financial Computings,
"projects" : Optimizations In Investments}
def skills(languages,Frameworks, Libraries):
languages = { "language1" : Python,
"language2" : R,
"language3" : SQL,
DS libraries= {"lib1" = Pandas,
"lib2"= Matplotlib,
"lib3" = NumPy,
"lib4"= SciPy,
"lib5" = SymPy,
"lib6"= Seaborn,
"lib7" = SciKit-Learn,
"lib8"= PyFolio,
"lib9" = QuantFormulas(My Own Library)},
def currently_learning():
reading = {"Investment" : Bodie et al.,
"Storytelling with data": Cole et al,,
"Options, Futures & Other Derivatives" : John C. Hull,
"Effective Data Storytelling" : Brent Dykes,
"Robust Portfolio Optimization & Management" : Frank J.Fabozzi et al.,
"Asset Management" : Andrew Ang,
"Black Swan" : Nassim Nicholas Taleb}
testing = { "Portfolio" : Python,
"Derivatives" : Python,
"Financial Data Analysis" : R}
def hobbies():
hobby = {"Recovery" : Bike,
"Reading" : Books,
"Training" : Judo/BJJ(On Hold Due To TCL),
"Storytelling": Wines & Food,
"Academics" : Write Sci Papers,
"Travel" : Across The Globe}