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Since June 2022
Instructor since June 2022
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Homework help - Private lessons up to BAC level (English - Maths - SES)
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From 30 CNY /h
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Fresh out of 2 years of HEC preparatory classes (ECG ESH Maths), I give private lessons and homework help at all levels in Maths, SES and English. I also obtained the excellent mark of 15.5 in Mathematics 2 ESSEC at the HEC competition. I have an IELTS English level C2.
The preparation allowed me to have a certain distance and a global vision on the programs. It also allowed me to be more organized and methodical. I would like to give lessons to my cadets precisely to allow them to benefit from the rigor and methodology acquired in preparation. During these 2 years, I also understood how crucial it was to have understood and acquired the basics and fundamentals of college and high school before being able to consider higher education, and especially when they are demanding such as preparatory classes for large schools. I will therefore be happy to help you/your children.
I am patient, passionate and very attentive. I take my work very seriously and your progress very seriously. Rigor, methodology and precision are my watchwords. My participation in the Sciences Po Summer School program allowed me to progress enormously in English: all the courses were in English and the other students were all international, the main language of exchange was English.
Location
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At student's location :
  • Around Paris, France
About Me
Patient, passionate and very attentive, I take my work very seriously and your progress very much at heart. I have a very analytical and very organized mind, and I was able to discover in preparation some methods to boost your memory and better retain information. I also have many methods to progress in languages, especially in English.
My watchwords are: rigour, precision, efficiency and excellence.
Education
I obtained a general baccalaureate with a specialty in Mathematics in 2020.
I completed 2 years of HEC preparatory classes at Intégrale (8th arrondissement of Paris) between 2020 and 2022.
Experience / Qualifications
I obtained the mark of 20/20 in Maths at the BAC and 15.5/20 in Mathematics 2 ESSEC.
I am very fluent in English, both orally and in writing: it is a language that I love very much and I would like to pass on to you this love that I have for English. In SES, I obtained an ES baccalaureate and completed 2 years of ESH in preparation, which gives me a solid background and a good knowledge of the programs.
Age
Preschool children (4-6 years old)
Children (7-12 years old)
Teenagers (13-17 years old)
Student level
Beginner
Intermediate
Advanced
Duration
60 minutes
90 minutes
120 minutes
The class is taught in
French
English
Arabic
Skills
English as a second language (esl)
School
Availability of a typical week
(GMT -05:00)
New York
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At student's home
Mon
Tue
Wed
Thu
Fri
Sat
Sun
00-04
04-08
08-12
12-16
16-20
20-24
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Justine
Soon to graduate with a Master's degree in International Marketing and Business Development, I offer my services in the context of private lessons / homework help for primary / college / high school levels.

After an economic and social baccalaureate with honors and European English, I followed a 2-year training course in a preparatory class. At the end of this training, I was able to join the SKEMA business school in order to obtain my Master's degree. Thanks to many trips made before my studies but also thanks to two semesters spent in foreign universities (United States and England), I was able to improve my English at a fluent level (C1).

I offer courses entirely adapted to the needs of the student: improvement, support on the more general concerns of organization and working method, in-depth follow-up for subjects with more or less profound difficulties... We can discuss the needs of the student and build together courses adapted to his needs.

Classes generally run as follows:
1) Resumption of the course to check its good understanding & its mastery
2) Re-explanation (if necessary) of the concepts & elements of the course
3) Work on the required exercises / review with concrete exercises
4) Additional exercises to consolidate the knowledge learned / deepen the topics

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1.Python or R
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-> Linear Models for Regression and Classification
3.3. kernel
-> Kernelization
3.4. Model selection
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-> Bagging / RandomForest, Boosting (XGBoost, LightGBM,...) , Stacking
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-> Data pre-processing
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-> Training neural nets: Forward pass: Tensor operations and Backward pass: Backpropagation
-> Neural network design: Activation functions, weight initialization and Optimizers
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