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This teacher has a fast response time and rate, demonstrating a high quality of service to their students.
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Since June 2021
Instructor since June 2021
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Primary and secondary school support courses, all subjects, summer 2021
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From 21 € /h
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I have been giving tutoring lessons to middle school students for 6 years now. I have been working for four years with the same student who is starting her first year in September. She has made a lot of progress and gained confidence over the years. I followed a literary university course but I obtained a scientific baccalaureate with a maths option with honors, so I am as comfortable in scientific subjects as in literary subjects. I am a good teacher, patient and attentive.
I have already given lessons to several students with disabilities.
I am available during the months of July and August to offer revisions and consolidate acquired knowledge.
Location
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At student's location :
  • Around Levallois-Perret, France
About Me
I work in publishing. I have a scientific baccalaureate and I studied literature, so I am comfortable with scientific and literary subjects. I have been giving lessons for 8 years now, I am patient, educational and attentive. I like teaching, seeing my students progress throughout the year and gaining confidence in themselves. I am passionate about French and foreign literature, I like sharing my passions with my students. I know how to adapt according to the profile and the student and their specific needs (difficulties with attention, concentration, method, etc.). I have already had autistic Asperger and hyperactive students.
I am available on Friday afternoons. Ideally, I would like to find a student living in the 20th arrondissement or nearby (11th for example).
Education
Master 2 Letters and Arts
Master 2 in Literature, specializing in publishing and professional writing
3rd year English degree
Bac S maths option, obtained with honors
Experience / Qualifications
8 years of experience in tutoring and homework help, primary and secondary school level. Languages spoken: English and German.
Age
Children (7-12 years old)
Teenagers (13-17 years old)
Adults (18-64 years old)
Seniors (65+ years old)
Student level
Beginner
Intermediate
Advanced
Duration
60 minutes
The class is taught in
French
English
German
Skills
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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Dave
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In addition to my machine learning skills, I am also able to help you with mathematics, statistics and dissertation writing.
I am available to teach the following subjects:
1.Python or R
2. Data exploration
3.Machine learning
3.1. Intro ML
3.2. Linear Model
-> Linear Models for Regression and Classification
3.3. kernel
-> Kernelization
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3.5. model set,
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-> Neural network design: Activation functions, weight initialization and Optimizers
-> Neural networks in practice: Model selection, Early stopping, Memorization capacity and information bottleneck, L1/L2 regularization, Dropout, Batch normalization
3.8. Convolutional Neural Networks
-> Convolved Image
-> Convolutional neural networks
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-> Model interpretation
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3.9. Neural Networks for text
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Contact Mathilde
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arrow icon previousarrow icon next
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Dave
Hello,
I am an experienced machine learning teacher with 5 years of expertise in teaching this discipline at all levels. My expertise using Python and R allows me to teach different machine learning algorithms such as neural networks, decision trees and clustering algorithms. I am also experienced in using popular Python and R libraries such as TensorFlow, Keras, Scikit-learn and ggplot2.
In addition to my machine learning skills, I am able to help students read and understand research papers for their presentations, as well as work on projects in Python and R. My commitment to machine learning is passionate and I enjoy sharing my knowledge with my students.
If you are interested in my services as a machine learning teacher for all levels, do not hesitate to contact me.
In addition to my machine learning skills, I am also able to help you with mathematics, statistics and dissertation writing.
I am available to teach the following subjects:
1.Python or R
2. Data exploration
3.Machine learning
3.1. Intro ML
3.2. Linear Model
-> Linear Models for Regression and Classification
3.3. kernel
-> Kernelization
3.4. Model selection
3.5. model set,
-> Bagging / RandomForest, Boosting (XGBoost, LightGBM,...) , Stacking
3.6. Data preprocessing
-> Data pre-processing
-> Pipelines: choose the right preprocessing steps and models in your pipeline
-> Cross validation
3.7. Neural Networks
-> Neural architectures
-> Training neural nets: Forward pass: Tensor operations and Backward pass: Backpropagation
-> Neural network design: Activation functions, weight initialization and Optimizers
-> Neural networks in practice: Model selection, Early stopping, Memorization capacity and information bottleneck, L1/L2 regularization, Dropout, Batch normalization
3.8. Convolutional Neural Networks
-> Convolved Image
-> Convolutional neural networks
->Data increase
-> Model interpretation
-> Using pre-trained networks (transfer learning)
3.9. Neural Networks for text
-> Bag of word representations, Word embeddings, Word2Vec, FastText, GloVe
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Contact Mathilde