MIT OCW 6.100L Introduction to CS and Programming using Python (Fall 2022)
Ana Bell

folder MIT OCW 6.100L Introduction to CS and Programming using Python (Fall 2022) (52 files)
fileLecture 26: List Access, Hashing, Simulations, and Wrap-Up.mp4 209.72MB
fileLecture 26: List Access, Hashing, Simulations, and Wrap-Up.en.vtt 106.42kB
fileLecture 25: Plotting.mp4 268.31MB
fileLecture 25: Plotting.en.vtt 110.89kB
fileLecture 24: Sorting Algorithms.mp4 228.93MB
fileLecture 24: Sorting Algorithms.en.vtt 71.16kB
fileLecture 23: Complexity Classes Examples.mp4 277.42MB
fileLecture 23: Complexity Classes Examples.en.vtt 119.36kB
fileLecture 22: Big Oh and Theta.mp4 319.47MB
fileLecture 22: Big Oh and Theta.en.vtt 118.37kB
fileLecture 21: Timing Programs and Counting Operations.mp4 127.71MB
fileLecture 21: Timing Programs and Counting Operations.en.vtt 48.33kB
fileLecture 20: Fitness Tracker Object-Oriented Programming Example.mp4 301.28MB
fileLecture 20: Fitness Tracker Object-Oriented Programming Example.en.vtt 113.29kB
fileLecture 19: Inheritance.mp4 257.98MB
fileLecture 19: Inheritance.en.vtt 110.44kB
fileLecture 18: More Python Class Methods.mp4 277.24MB
fileLecture 18: More Python Class Methods.en.vtt 110.75kB
fileLecture 17: Python Classes.mp4 134.11MB
fileLecture 17: Python Classes.en.vtt 74.61kB
fileLecture 16: Recursion on Non-numerics.mp4 250.69MB
fileLecture 16: Recursion on Non-numerics.en.vtt 114.00kB
fileLecture 15: Recursion.mp4 185.76MB
fileLecture 15: Recursion.en.vtt 66.49kB
fileLecture 14: Dictionaries.mp4 282.54MB
fileLecture 14: Dictionaries.en.vtt 112.98kB
fileLecture 13: Exceptions and Assertions.mp4 173.25MB
fileLecture 13: Exceptions and Assertions.en.vtt 63.21kB
fileLecture 12: List Comprehension, Functions as Objects, Testing, and Debugging.mp4 269.64MB
fileLecture 12: List Comprehension, Functions as Objects, Testing, and Debugging.en.vtt 110.84kB
fileLecture 11: Aliasing and Cloning.mp4 136.74MB
fileLecture 11: Aliasing and Cloning.en.vtt 66.46kB
fileLecture 10: Lists and Mutability.mp4 244.27MB
fileLecture 10: Lists and Mutability.en.vtt 106.14kB
fileLecture 9: Lambda Functions, Tuples, and Lists.mp4 158.70MB
fileLecture 9: Lambda Functions, Tuples, and Lists.en.vtt 63.88kB
fileLecture 8: Functions as Objects.mp4 285.61MB
fileLecture 8: Functions as Objects.en.vtt 109.26kB
fileLecture 7: Decomposition, Abstraction, and Functions.mp4 171.24MB
fileLecture 7: Decomposition, Abstraction, and Functions.en.vtt 69.58kB
fileLecture 6: Bisection Search.mp4 368.34MB
fileLecture 6: Bisection Search.en.vtt 102.21kB
fileLecture 5: Floats and Approximation Methods.mp4 145.83MB
fileLecture 5: Floats and Approximation Methods.en.vtt 65.42kB
fileLecture 4: Loops over Strings, Guess-and-Check, and Binary.mp4 314.99MB
fileLecture 4: Loops over Strings, Guess-and-Check, and Binary.en.vtt 107.36kB
fileLecture 3: Iteration.mp4 136.35MB
fileLecture 3: Iteration.en.vtt 69.47kB
fileLecture 2: Strings, Input⧸Output, and Branching.mp4 327.29MB
Too many files! Click here to view them all.
Type: Course

Bibtex:
@article{,
title= {MIT OCW 6.100L Introduction to CS and Programming using Python (Fall 2022)},
journal= {},
author= {Ana Bell},
year= {},
url= {https://ocw.mit.edu/courses/6-100l-introduction-to-cs-and-programming-using-python-fall-2022/},
abstract= {https://ocw.mit.edu/courses/6-100l-introduction-to-cs-and-programming-using-python-fall-2022/},
keywords= {mit ocw, cs, python, programming},
terms= {},
license= {CC BY-NC-SA 4.0},
superseded= {}
}

10 day statistics (8 downloads)
Average Time 41 mins, 33 secs
Average Speed 2.40MB/s
Best Time 29 mins, 59 secs
Best Speed 3.32MB/s
Worst Time 1 hrs, 58 mins, 43 secs
Worst Speed 838.73kB/s

Send Feedback Start
   0.000006
DB Connect
   0.000441
Lookup hash in DB
   0.000371
Get torrent details
   0.000113
Get torrent details, finished
   0.000191
Get authors
   0.000016
Parse bibtex
   0.000057
Write header
   0.000181
get stars
   0.000101
home tab
   0.000384
render right panel
   0.000007
render ads
   0.000330
fetch current hosters
   0.000229
Start get stats
   0.000902
End get stats
   0.000001
related datasets
   0.003418
Done