SSCES Telegram 2215
مجموعه جلسات «گذر»

💠عنوان:
"Probabilistic Programming for Machine Learning"

🎙 ارائه‌دهنده:
امیرعباس اسدی

🔻توضیحات:
Bayesian Learning provides a natural framework for approaching Machine Learning problems. For a long time, due to the significant computational cost of Bayesian inference, this framework was limited to simple models and problems with a small amount of data. Probabilistic Programming is the fruit of many years of research in approximate Bayesian inference aiming to address these limitations. This presentation is a friendly introduction to Probabilistic Programming. We will explore how modern inference methods and recent advances in Differentiable Programming can help us unlock the full potential of Bayesian Machine Learning.

Presentation outline:
- Bayesian Learning and Probabilistic Programs
- Probabilistic Programming in Julia
- Approximate Bayesian Inference
-- Markov Chain Monte Carlo
-- Variational Inference
- Differentiable Programming
- Discussing some examples:
-- Bayesian Deep Learning
-- Bayesian Neural Differential Equations
-- Inverse Optimization

پیشنیاز های علمی:  آمار و احتمال مقدماتی، آشنایی با Deep Learning



🌐 فرم ثبت‌نام

مهلت ثبت‌نام : ۱۵ مهر
🗓 زمان: چهارشنبه ۱۸ مهر - ساعت ۱۶:۰۰
📍مکان: به صورت هیبرید - کلاس ۱۰۹ دانشکده ریاضی


🚀 @Gozar_SUT
🚀 @hamband_sut
Please open Telegram to view this post
VIEW IN TELEGRAM



tgoop.com/SSCES/2215
Create:
Last Update:

مجموعه جلسات «گذر»

💠عنوان:
"Probabilistic Programming for Machine Learning"

🎙 ارائه‌دهنده:
امیرعباس اسدی

🔻توضیحات:
Bayesian Learning provides a natural framework for approaching Machine Learning problems. For a long time, due to the significant computational cost of Bayesian inference, this framework was limited to simple models and problems with a small amount of data. Probabilistic Programming is the fruit of many years of research in approximate Bayesian inference aiming to address these limitations. This presentation is a friendly introduction to Probabilistic Programming. We will explore how modern inference methods and recent advances in Differentiable Programming can help us unlock the full potential of Bayesian Machine Learning.

Presentation outline:
- Bayesian Learning and Probabilistic Programs
- Probabilistic Programming in Julia
- Approximate Bayesian Inference
-- Markov Chain Monte Carlo
-- Variational Inference
- Differentiable Programming
- Discussing some examples:
-- Bayesian Deep Learning
-- Bayesian Neural Differential Equations
-- Inverse Optimization

پیشنیاز های علمی:  آمار و احتمال مقدماتی، آشنایی با Deep Learning



🌐 فرم ثبت‌نام

مهلت ثبت‌نام : ۱۵ مهر
🗓 زمان: چهارشنبه ۱۸ مهر - ساعت ۱۶:۰۰
📍مکان: به صورت هیبرید - کلاس ۱۰۹ دانشکده ریاضی


🚀 @Gozar_SUT
🚀 @hamband_sut

BY انجمن علمی دانشجویی مهندسی کامپیوتر دانشگاه بوعلی سینا




Share with your friend now:
tgoop.com/SSCES/2215

View MORE
Open in Telegram


Telegram News

Date: |

In the “Bear Market Screaming Therapy Group” on Telegram, members are only allowed to post voice notes of themselves screaming. Anything else will result in an instant ban from the group, which currently has about 75 members. The initiatives announced by Perekopsky include monitoring the content in groups. According to the executive, posts identified as lacking context or as containing false information will be flagged as a potential source of disinformation. The content is then forwarded to Telegram's fact-checking channels for analysis and subsequent publication of verified information. As five out of seven counts were serious, Hui sentenced Ng to six years and six months in jail. Hashtags The channel also called on people to turn out for illegal assemblies and listed the things that participants should bring along with them, showing prior planning was in the works for riots. The messages also incited people to hurl toxic gas bombs at police and MTR stations, he added.
from us


Telegram انجمن علمی دانشجویی مهندسی کامپیوتر دانشگاه بوعلی سینا
FROM American