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DTSTART:20001029T030000
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BEGIN:VEVENT
UID:20260707T004759Z - 18307@eu441a.odoo.com
DTSTART;TZID=Europe/Brussels:20240325T093000
DTEND;TZID=Europe/Brussels:20240419T163000
CREATED:20260707T004759Z
DESCRIPTION:<a href="https://www.sustain.brussels/event/opening-the-black-b
 ox-of-learning-algorithms-sustain-brussels-training-powered-by-ulb-vub-exp
 ertise-43/register">Opening the black box of learning algorithms - sustAI
 n.brussels training powered by ULB & VUB expertise</a>\nDive into the Worl
 d of Learning Algorithms! Course overview "Opening the Black Box of Learni
 ng Algorithms" unravels the mysteries behind the data deluge and big data 
 phenomena. Explore applications across diverse fields like economics\, fin
 ance\, imaging\, and bioinformatics\, and gain insights into classificatio
 n\, regression\, and mathematical methods for assessing reliability. Advan
 ced/technical track Courses dates Only the basic course (Course 1 - 6h) - 
 25 March 2024Basic course (Course day 1 - 6h) + Advanced course (Course da
 y 2 - 3h) + workshop (Course day 3 - 3h) - 25\, 29 March 2024 & 19 April 2
 024 Course content Overview of the "Big Data" world and machine learning t
 oolboxApplications across various fieldsLearning algorithms for classifica
 tion and regressionReliability assessment and error boundsBrief introducti
 on to Python by Jean CARDINAL Learning outcomes Gain familiarity with mach
 ine learning algorithmsDevelop critical insights into their potentialities
  and limitations Meet our expert instructor Christine De Mol Professor at 
 ULB\, Member of the Royal Academy of Science\, Letters\, and Fine Arts of 
 Belgium Expertise in applied mathematics\, learning theory\, and portfolio
  theory in finance Renowned for teaching "Statistical Learning" at ULB and
  other prestigious universities Register here
DTSTAMP:20260707T004759Z
SUMMARY:Opening the black box of learning algorithms - sustAIn.brussels tr
 aining powered by ULB & VUB expertise
X-ALT-DESC;FMTTYPE=text/html:<a href="https://www.sustain.brussels/event/op
 ening-the-black-box-of-learning-algorithms-sustain-brussels-training-power
 ed-by-ulb-vub-expertise-43/register">Opening the black box of learning alg
 orithms - sustAIn.brussels training powered by ULB & VUB expertise</a>\nD
 ive into the World of Learning Algorithms! Course overview "Opening the Bl
 ack Box of Learning Algorithms" unravels the mysteries behind the data del
 uge and big data phenomena. Explore applications across diverse fields lik
 e economics\, finance\, imaging\, and bioinformatics\, and gain insights i
 nto classification\, regression\, and mathematical methods for assessing r
 eliability. Advanced/technical track Courses dates Only the basic course (
 Course 1 - 6h) - 25 March 2024Basic course (Course day 1 - 6h) + Advanced 
 course (Course day 2 - 3h) + workshop (Course day 3 - 3h) - 25\, 29 March 
 2024 & 19 April 2024 Course content Overview of the "Big Data" world and m
 achine learning toolboxApplications across various fieldsLearning algorith
 ms for classification and regressionReliability assessment and error bound
 sBrief introduction to Python by Jean CARDINAL Learning outcomes Gain fami
 liarity with machine learning algorithmsDevelop critical insights into the
 ir potentialities and limitations Meet our expert instructor Christine De 
 Mol Professor at ULB\, Member of the Royal Academy of Science\, Letters\, 
 and Fine Arts of Belgium Expertise in applied mathematics\, learning theor
 y\, and portfolio theory in finance Renowned for teaching "Statistical Lea
 rning" at ULB and other prestigious universities Register here
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