75 Things To Do Instead Of Watching Pornography:

1. Go on walks
2. Run
3. Lift
4. Hike
5. Swim
6. Climb
7. Kayak
8. Waterski
9. Fish
10. Camp
11. Play sports (Football, baseball, basketball, hockey, soccer)
12. Fight (Wrestling, boxing, BJJ, karate, kickboxing)
13. Lay in the sun
14. Take a nap outside
15. Cook
16. Grill
17. Have a coffee
18. Make a snack
19. Hunt
20. Go to the shooting range
21. Woodwork
22. Fix-up a car
23. Cut the grass
24. Garden
25. Tend to pets and animals
26. Spend time with family
27. Friends too
28. Tell jokes
29. Give toasts
30. Smoke a cigar
31. Have a little drink
32. Donate to the poor
33. Volunteer
34. Start a side business
35. Pick up extra work
36. Start an online brand
37. Affiliate market
38. Learn copywriting
39. Invest in stocks
40. Buy crypto
41. Search for investment real estate
42. Go for a drive
43. Hop on a train
44. Go out to eat
45. Travel somewhere
46. Paint
47. Draw
48. Sculpt
49. Read nonfiction
50. Literature too
51. Don’t forget poetry
52. Write a story
53. Or a poem
54. Or a blog
55. Sing
56. Dance
57. Listen to classical music
58. Act in play
59. Write a song
60. Play a boardgame
61. Card games too
62. Watch a quality movie
63. Make a movie
64. Start a YouTube channel
65. Pray
66. Meditate
67. Go to church
68. Go to confession
69. Study the Bible
70. Look at the stars
71. Breathe the breath of life
72. Practice gratitude
73. Journal
74. Just close the tab
75. Find a real girl
X/ Please add on your ideas too

God Bless your Spirit !

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More from All

How can we use language supervision to learn better visual representations for robotics?

Introducing Voltron: Language-Driven Representation Learning for Robotics!

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

🧵👇(1 / 12)


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

Yet, an underused part of these datasets are the rich, natural language annotations accompanying each video. (2/12)

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).

The secret is *balance* (3/12)

Starting with a masked autoencoder over frames from these video clips, make a choice:

1) Condition on language and improve our ability to reconstruct the scene.

2) Generate language given the visual representation and improve our ability to describe what's happening. (4/12)

By trading off *conditioning* and *generation* we show that we can learn 1) better representations than prior methods, and 2) explicitly shape the balance of low and high-level features captured.

Why is the ability to shape this balance important? (5/12)

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