Nanganallur Anjaneya Temple
#Chennai
#Tamilnadutemples 🚩

Bhaktha Anjaneya temple at Nanganallur in Chennai is one among tallest Anjaneyar Vigraham. Here Anjaneyar blesses with relief to all illness. Vigraham is about 32 feet height made of single  stone.
Anjaneyar here is 👇

Sri Vishwaroopa Aadhivyathihara Baktha Anjaneya Swamy.

Sthala Puranam says that, this is the place where Indra Deva hit Hanuman on the cheek by his Vajrastram. Sri Raghavendra Swami and Sri Kanchi Paramacharyar were behind in building this temple. Temple is constructed to
Realize power of Anjaneyar who is seen both in Ramayana and Mahabharatha.
Vadamalai is important offering to Anjaneyar here. It is believed that vigraham contain powers to heal any disease. Shri Ramanavami is celebrated here.

Jai Sri Ram
Jai Hanuman
🙏🕉🙏

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Introducing Voltron: Language-Driven Representation Learning for Robotics!

Paper: https://t.co/gIsRPtSjKz
Models: https://t.co/NOB3cpATYG
Evaluation: https://t.co/aOzQu95J8z

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Videos of humans performing everyday tasks (Something-Something-v2, Ego4D) offer a rich and diverse resource for learning representations for robotic manipulation.

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The Voltron framework offers a simple way to use language supervision to shape representation learning, building off of prior work in representations for robotics like MVP (
https://t.co/Pb0mk9hb4i) and R3M (https://t.co/o2Fkc3fP0e).

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