/
report.yaml
1045 lines (1044 loc) · 101 KB
/
report.yaml
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---
Repository: TheAlgorithms/Python
Url: https://github.com/TheAlgorithms/Python.git
Args: ["**/*.{md,py}"]
Summary:
files: 1022
filesWithIssues: 417
issues: 2991
errors: 0
Errors: []
issues:
- "arithmetic_analysis/gaussian_elimination.py:10:64 ndarray U np.matrix, vector: np.ndarray) -> np.ndarray:"
- "arithmetic_analysis/gaussian_elimination.py:30:29 dtype U np.zeros((rows, 1), dtype=float)"
- "arithmetic_analysis/gaussian_elimination.py:64:35 astype U mat = augmented_mat.astype(\"float64\")"
- "arithmetic_analysis/newton_forward_interpolation.py:8:5 ucal U def ucal(u: float, p: int) -"
- "arithmetic_analysis/newton_forward_interpolation.py:49:5 summ U summ = y[0][0]"
- "arithmetic_analysis/newton_raphson.py:1:23 Raphson U Implementing Newton Raphson method in Python"
- "arithmetic_analysis/newton_raphson.py:2:11 Syed U # Author: Syed Haseeb Shah (github"
- "arithmetic_analysis/newton_raphson.py:2:16 Haseeb U # Author: Syed Haseeb Shah (github.com/QuantumNovic"
- "arithmetic_analysis/newton_raphson.py:10:6 sympy U from sympy import diff"
- "arithmetic_analysis/newton_raphson.py:13:12 raphson U def newton_raphson("
- "arithmetic_analysis/secant_method.py:3:9 dimgrichr U Author: dimgrichr"
- "audio_filters/butterworth_filter.py:9:27 scipy U Alternatively you can use scipy.signal.butter, which"
- "audio_filters/butterworth_filter.py:20:18 coeffs U >>> filter.a_coeffs + filter.b_coeffs"
- "audio_filters/butterworth_filter.py:36:5 filt U filt = IIRFilter(2)"
- "audio_filters/butterworth_filter.py:169:5 ppmc U ppmc = (big_a + 1) + (big"
- "audio_filters/butterworth_filter.py:171:5 pmpc U pmpc = (big_a - 1) + (big"
- "audio_filters/iir_filter.py:40:37 scipy's U method works well with scipy's filter design functions"
- "audio_filters/iir_filter.py:44:58 btype U btype='lowpass',"
- "audio_filters/show_response.py:6:19 pyplot U import matplotlib.pyplot as plt"
- "audio_filters/show_response.py:55:43 nyquist U log scale from 24 to nyquist frequency"
- "audio_filters/show_response.py:56:9 xlim U plt.xlim(24, samplerate / 2"
- "audio_filters/show_response.py:57:9 xlabel U plt.xlabel(\"Frequency (Hz)\")"
- "audio_filters/show_response.py:58:9 xscale U plt.xscale(\"log\")"
- "audio_filters/show_response.py:62:9 ylim U plt.ylim(max([-80, bounds[0]"
- "audio_filters/show_response.py:63:9 ylabel U plt.ylabel(\"Gain (dB)\")"
- "backtracking/coloring.py:11:5 neighbours U neighbours: list[int], colored"
- "backtracking/coloring.py:14:14 neighbour U For each neighbour check if the coloring"
- "backtracking/coloring.py:52:18 Uncolor U 2.5. Uncolor given vertex"
- "backtracking/hamiltonian_cycle.py:12:44 curr U int]], next_ver: int, curr_ind: int, path: list"
- "backtracking/knight_tour.py:82:22 Kight U ValueError: Open Kight Tour cannot be performed"
- "backtracking/n_queens.py:3:6 nqueens U The nqueens problem is of placing"
- "backtracking/sum_of_subsets.py:12:29 soln U generate_sum_of_subsets_soln(nums: list[int], max"
- "backtracking/sum_of_subsets.py:12:34 nums U sum_of_subsets_soln(nums: list[int], max_sum"
- "bit_manipulation/count_1s_brian_kernighan_method.py:3:66 Kernighan's U integer using Brian Kernighan's way."
- "blockchain/modular_division.py:12:55 modn U 0≤x≤n−1, and b/a=x(modn) (that is, b=ax(modn"
- "boolean_algebra/quine_mc_cluskey.py:83:45 implicants U list[list[int]], prime_implicants: list[str]) -> list"
- "boolean_algebra/quine_mc_cluskey.py:130:11 implicant U def prime_implicant_chart("
- "boolean_algebra/quine_mc_cluskey.py:158:18 Implicants U print(\"Prime Implicants are:\")"
- "cellular_automata/game_of_life.py:1:41 Kumar U Life, Author Anurag Kumar(mailto:anuragkumarak"
- "cellular_automata/game_of_life.py:76:54 tolist U bool]] = current_canvas.tolist()"
- "cellular_automata/game_of_life.py:123:5 cmap U cmap = ListedColormap([\"w"
- "cellular_automata/nagel_schrekenberg.py:91:7 Beforce U # Beforce calculations, the highway"
- "ciphers/a1z26.py:13:17 myname U >>> encode(\"myname\")"
- "ciphers/affine_cipher.py:40:35 Mpyx U I}p~{HL}Gp{vp pFsH}pxMpyxIx JHL O}F{~pvuOvF{FuF"
- "ciphers/atbash.py:5:5 atbash U def atbash_slow(sequence: str)"
- "ciphers/atbash.py:8:6 ZYXWVUT U 'ZYXWVUT'"
- "ciphers/baconian_cipher.py:8:11 AAAAB U \"b\": \"AAAAB\","
- "ciphers/baconian_cipher.py:9:11 AAABA U \"c\": \"AAABA\","
- "ciphers/baconian_cipher.py:10:11 AAABB U \"d\": \"AAABB\","
- "ciphers/baconian_cipher.py:11:11 AABAA U \"e\": \"AABAA\","
- "ciphers/baconian_cipher.py:12:11 AABAB U \"f\": \"AABAB\","
- "ciphers/baconian_cipher.py:13:11 AABBA U \"g\": \"AABBA\","
- "ciphers/baconian_cipher.py:14:11 AABBB U \"h\": \"AABBB\","
- "ciphers/baconian_cipher.py:15:11 ABAAA U \"i\": \"ABAAA\","
- "ciphers/baconian_cipher.py:16:11 BBBAA U \"j\": \"BBBAA\","
- "ciphers/baconian_cipher.py:17:11 ABAAB U \"k\": \"ABAAB\","
- "ciphers/baconian_cipher.py:18:11 ABABA U \"l\": \"ABABA\","
- "ciphers/baconian_cipher.py:19:11 ABABB U \"m\": \"ABABB\","
- "ciphers/baconian_cipher.py:20:11 ABBAA U \"n\": \"ABBAA\","
- "ciphers/baconian_cipher.py:21:11 ABBAB U \"o\": \"ABBAB\","
- "ciphers/baconian_cipher.py:22:11 ABBBA U \"p\": \"ABBBA\","
- "ciphers/baconian_cipher.py:23:11 ABBBB U \"q\": \"ABBBB\","
- "ciphers/baconian_cipher.py:24:11 BAAAA U \"r\": \"BAAAA\","
- "ciphers/baconian_cipher.py:25:11 BAAAB U \"s\": \"BAAAB\","
- "ciphers/baconian_cipher.py:26:11 BAABA U \"t\": \"BAABA\","
- "ciphers/baconian_cipher.py:27:11 BAABB U \"u\": \"BAABB\","
- "ciphers/baconian_cipher.py:28:11 BBBAB U \"v\": \"BBBAB\","
- "ciphers/baconian_cipher.py:29:11 BABAA U \"w\": \"BABAA\","
- "ciphers/baconian_cipher.py:30:11 BABAB U \"x\": \"BABAB\","
- "ciphers/baconian_cipher.py:31:11 BABBA U \"y\": \"BABBA\","
- "ciphers/baconian_cipher.py:32:11 BABBB U \"z\": \"BABBB\","
- "ciphers/baconian_cipher.py:45:6 AABBBAABAAABABAABABAABBAB U 'AABBBAABAAABABAABABAABBAB'"
- "ciphers/baconian_cipher.py:47:32 BABAAABBABBAAAAABABAAAABB U AABBBAABAAABABAABABAABBAB BABAAABBABBAAAAABABAAAABB'"
- "ciphers/base32.py:8:7 JBSWY U b'JBSWY3DPEBLW64TMMQQQ===='"
- "ciphers/base32.py:8:13 DPEBLW U b'JBSWY3DPEBLW64TMMQQQ===='"
- "ciphers/base32.py:8:21 TMMQQQ U b'JBSWY3DPEBLW64TMMQQQ===='"
- "ciphers/base32.py:10:7 GEZDGNBVGY U b'GEZDGNBVGY======'"
- "ciphers/base32.py:12:7 ONXW U b'ONXW2ZJANRXW4ZZAMNXW24DMMV"
- "ciphers/base32.py:12:12 ZJANRXW U b'ONXW2ZJANRXW4ZZAMNXW24DMMV4CA43UOJUW"
- "ciphers/base32.py:12:20 ZZAMNXW U b'ONXW2ZJANRXW4ZZAMNXW24DMMV4CA43UOJUW4ZY="
- "ciphers/base32.py:12:29 DMMV U ONXW2ZJANRXW4ZZAMNXW24DMMV4CA43UOJUW4ZY='"
- "ciphers/base32.py:12:38 UOJUW U ZJANRXW4ZZAMNXW24DMMV4CA43UOJUW4ZY='"
- "ciphers/base64.py:17:53 Steganography U encoding can be used in Steganography to hide data in these"
- "ciphers/beaufort_cipher.py:2:9 Mohit U Author: Mohit Radadiya"
- "ciphers/beaufort_cipher.py:2:15 Radadiya U Author: Mohit Radadiya"
- "ciphers/beaufort_cipher.py:17:6 SECRETSECRETSECRE U 'SECRETSECRETSECRE'"
- "ciphers/beaufort_cipher.py:36:10 PAYUWL U 'BDC PAYUWL JPAIYI'"
- "ciphers/beaufort_cipher.py:36:17 JPAIYI U 'BDC PAYUWL JPAIYI'"
- "ciphers/bifid.py:57:53 qtltbdxrxlk U encode('testmessage') == 'qtltbdxrxlk'"
- "ciphers/brute_force_caesar_cipher.py:3:18 TMDETUX U >>> decrypt('TMDETUX PMDVU')"
- "ciphers/brute_force_caesar_cipher.py:3:26 PMDVU U >> decrypt('TMDETUX PMDVU')"
- "ciphers/brute_force_caesar_cipher.py:5:30 SLCDSTW U Decryption using Key #1: SLCDSTW OLCUT"
- "ciphers/brute_force_caesar_cipher.py:5:38 OLCUT U using Key #1: SLCDSTW OLCUT"
- "ciphers/brute_force_caesar_cipher.py:6:30 RKBCRSV U Decryption using Key #2: RKBCRSV NKBTS"
- "ciphers/brute_force_caesar_cipher.py:6:38 NKBTS U using Key #2: RKBCRSV NKBTS"
- "ciphers/brute_force_caesar_cipher.py:7:30 QJABQRU U Decryption using Key #3: QJABQRU MJASR"
- "ciphers/brute_force_caesar_cipher.py:7:38 MJASR U using Key #3: QJABQRU MJASR"
- "ciphers/brute_force_caesar_cipher.py:8:30 PIZAPQT U Decryption using Key #4: PIZAPQT LIZRQ"
- "ciphers/brute_force_caesar_cipher.py:8:38 LIZRQ U using Key #4: PIZAPQT LIZRQ"
- "ciphers/brute_force_caesar_cipher.py:9:30 OHYZOPS U Decryption using Key #5: OHYZOPS KHYQP"
- "ciphers/brute_force_caesar_cipher.py:9:38 KHYQP U using Key #5: OHYZOPS KHYQP"
- "ciphers/brute_force_caesar_cipher.py:10:30 NGXYNOR U Decryption using Key #6: NGXYNOR JGXPO"
- "ciphers/brute_force_caesar_cipher.py:10:38 JGXPO U using Key #6: NGXYNOR JGXPO"
- "ciphers/brute_force_caesar_cipher.py:11:30 MFWXMNQ U Decryption using Key #7: MFWXMNQ IFWON"
- "ciphers/brute_force_caesar_cipher.py:11:38 IFWON U using Key #7: MFWXMNQ IFWON"
- "ciphers/brute_force_caesar_cipher.py:12:30 LEVWLMP U Decryption using Key #8: LEVWLMP HEVNM"
- "ciphers/brute_force_caesar_cipher.py:12:38 HEVNM U using Key #8: LEVWLMP HEVNM"
- "ciphers/brute_force_caesar_cipher.py:13:30 KDUVKLO U Decryption using Key #9: KDUVKLO GDUML"
- "ciphers/brute_force_caesar_cipher.py:13:38 GDUML U using Key #9: KDUVKLO GDUML"
- "ciphers/brute_force_caesar_cipher.py:14:31 JCTUJKN U Decryption using Key #10: JCTUJKN FCTLK"
- "ciphers/brute_force_caesar_cipher.py:14:39 FCTLK U using Key #10: JCTUJKN FCTLK"
- "ciphers/brute_force_caesar_cipher.py:15:31 IBSTIJM U Decryption using Key #11: IBSTIJM EBSKJ"
- "ciphers/brute_force_caesar_cipher.py:15:39 EBSKJ U using Key #11: IBSTIJM EBSKJ"
- "ciphers/brute_force_caesar_cipher.py:16:31 HARSHIL U Decryption using Key #12: HARSHIL DARJI"
- "ciphers/brute_force_caesar_cipher.py:16:39 DARJI U using Key #12: HARSHIL DARJI"
- "ciphers/brute_force_caesar_cipher.py:17:31 GZQRGHK U Decryption using Key #13: GZQRGHK CZQIH"
- "ciphers/brute_force_caesar_cipher.py:17:39 CZQIH U using Key #13: GZQRGHK CZQIH"
- "ciphers/brute_force_caesar_cipher.py:18:31 FYPQFGJ U Decryption using Key #14: FYPQFGJ BYPHG"
- "ciphers/brute_force_caesar_cipher.py:18:39 BYPHG U using Key #14: FYPQFGJ BYPHG"
- "ciphers/brute_force_caesar_cipher.py:19:31 EXOPEFI U Decryption using Key #15: EXOPEFI AXOGF"
- "ciphers/brute_force_caesar_cipher.py:19:39 AXOGF U using Key #15: EXOPEFI AXOGF"
- "ciphers/brute_force_caesar_cipher.py:20:31 DWNODEH U Decryption using Key #16: DWNODEH ZWNFE"
- "ciphers/brute_force_caesar_cipher.py:20:39 ZWNFE U using Key #16: DWNODEH ZWNFE"
- "ciphers/brute_force_caesar_cipher.py:21:31 CVMNCDG U Decryption using Key #17: CVMNCDG YVMED"
- "ciphers/brute_force_caesar_cipher.py:21:39 YVMED U using Key #17: CVMNCDG YVMED"
- "ciphers/brute_force_caesar_cipher.py:22:31 BULMBCF U Decryption using Key #18: BULMBCF XULDC"
- "ciphers/brute_force_caesar_cipher.py:22:39 XULDC U using Key #18: BULMBCF XULDC"
- "ciphers/brute_force_caesar_cipher.py:23:31 ATKLABE U Decryption using Key #19: ATKLABE WTKCB"
- "ciphers/brute_force_caesar_cipher.py:23:39 WTKCB U using Key #19: ATKLABE WTKCB"
- "ciphers/brute_force_caesar_cipher.py:24:31 ZSJKZAD U Decryption using Key #20: ZSJKZAD VSJBA"
- "ciphers/brute_force_caesar_cipher.py:24:39 VSJBA U using Key #20: ZSJKZAD VSJBA"
- "ciphers/brute_force_caesar_cipher.py:25:31 YRIJYZC U Decryption using Key #21: YRIJYZC URIAZ"
- "ciphers/brute_force_caesar_cipher.py:25:39 URIAZ U using Key #21: YRIJYZC URIAZ"
- "ciphers/brute_force_caesar_cipher.py:26:31 XQHIXYB U Decryption using Key #22: XQHIXYB TQHZY"
- "ciphers/brute_force_caesar_cipher.py:26:39 TQHZY U using Key #22: XQHIXYB TQHZY"
- "ciphers/brute_force_caesar_cipher.py:27:31 WPGHWXA U Decryption using Key #23: WPGHWXA SPGYX"
- "ciphers/brute_force_caesar_cipher.py:27:39 SPGYX U using Key #23: WPGHWXA SPGYX"
- "ciphers/brute_force_caesar_cipher.py:28:31 VOFGVWZ U Decryption using Key #24: VOFGVWZ ROFXW"
- "ciphers/brute_force_caesar_cipher.py:28:39 ROFXW U using Key #24: VOFGVWZ ROFXW"
- "ciphers/brute_force_caesar_cipher.py:29:31 UNEFUVY U Decryption using Key #25: UNEFUVY QNEWV"
- "ciphers/brute_force_caesar_cipher.py:29:39 QNEWV U using Key #25: UNEFUVY QNEWV"
- "ciphers/caesar_cipher.py:47:33 Jgnnq U final message would be \"Jgnnq, ecrvckp\""
- "ciphers/caesar_cipher.py:47:40 ecrvckp U message would be \"Jgnnq, ecrvckp\""
- "ciphers/caesar_cipher.py:56:11 Cqks U 'bpm yCqks jzwEv nwF rCuxA wDmz"
- "ciphers/caesar_cipher.py:62:8 qtbjwhfxj U 'f qtbjwhfxj fqumfgjy'"
- "ciphers/caesar_cipher.py:62:18 fqumfgjy U 'f qtbjwhfxj fqumfgjy'"
- "ciphers/caesar_cipher.py:188:30 IH'N U brute_force(\"jFyuMy xIH'N vLONy zILwy Gy!\")[2"
- "ciphers/decrypt_caesar_with_chi_squared.py:56:18 ifmmp U Cipher text: ifmmp"
- "ciphers/decrypt_caesar_with_chi_squared.py:112:24 jhlzhy U ... 'dof pz aol jhlzhy jpwoly zv wvwbshy? pa"
- "ciphers/decrypt_caesar_with_chi_squared.py:112:31 jpwoly U 'dof pz aol jhlzhy jpwoly zv wvwbshy? pa pz avv"
- "ciphers/decrypt_caesar_with_chi_squared.py:112:41 wvwbshy U aol jhlzhy jpwoly zv wvwbshy? pa pz avv lhzf av jyhjr"
- "ciphers/decrypt_caesar_with_chi_squared.py:112:60 lhzf U zv wvwbshy? pa pz avv lhzf av jyhjr!'"
- "ciphers/decrypt_caesar_with_chi_squared.py:112:68 jyhjr U wvwbshy? pa pz avv lhzf av jyhjr!'"
- "ciphers/decrypt_caesar_with_chi_squared.py:117:42 crybd U caesar_with_chi_squared('crybd cdbsxq')"
- "ciphers/decrypt_caesar_with_chi_squared.py:117:48 cdbsxq U with_chi_squared('crybd cdbsxq')"
- "ciphers/decrypt_caesar_with_chi_squared.py:120:42 Crybd U caesar_with_chi_squared('Crybd Cdbsxq', case_sensitive"
- "ciphers/decrypt_caesar_with_chi_squared.py:120:48 Cdbsxq U with_chi_squared('Crybd Cdbsxq', case_sensitive=True"
- "ciphers/decrypt_caesar_with_chi_squared.py:200:31 excepcted U # Get the excepcted amount of times the"
- "ciphers/deterministic_miller_rabin.py:1:30 bizzfitch U Created by Nathan Damon, @bizzfitch on github"
- "ciphers/diffie_hellman.py:1:22 hexlify U from binascii import hexlify"
- "ciphers/diffie_hellman.py:3:16 urandom U from os import urandom"
- "ciphers/diffie_hellman.py:5:40 MODP U Modular Exponential (MODP) Diffie-Hellman groups"
- "ciphers/diffie_hellman.py:5:46 Diffie U Modular Exponential (MODP) Diffie-Hellman groups for"
- "ciphers/elgamal_key_generator.py:66:21 elgamal U make_key_files(\"elgamal\", 2048)"
- "ciphers/enigma_machine2.py:11:5 randnomly U - 9 randnomly generated rotors"
- "ciphers/enigma_machine2.py:29:11 EGZWVONAHDCLFQMSIPJBYUKXTR U rotor1 = \"EGZWVONAHDCLFQMSIPJBYUKXTR\""
- "ciphers/enigma_machine2.py:30:11 FOBHMDKEXQNRAULPGSJVTYICZW U rotor2 = \"FOBHMDKEXQNRAULPGSJVTYICZW\""
- "ciphers/enigma_machine2.py:31:11 ZJXESIUQLHAVRMDOYGTNFWPBKC U rotor3 = \"ZJXESIUQLHAVRMDOYGTNFWPBKC\""
- "ciphers/enigma_machine2.py:63:11 RMDJXFUWGISLHVTCQNKYPBEZOA U rotor4 = \"RMDJXFUWGISLHVTCQNKYPBEZOA\""
- "ciphers/enigma_machine2.py:64:11 SGLCPQWZHKXAREONTFBVIYJUDM U rotor5 = \"SGLCPQWZHKXAREONTFBVIYJUDM\""
- "ciphers/enigma_machine2.py:65:11 HVSICLTYKQUBXDWAJZOMFGPREN U rotor6 = \"HVSICLTYKQUBXDWAJZOMFGPREN\""
- "ciphers/enigma_machine2.py:66:11 RZWQHFMVDBKICJLNTUXAGYPSOE U rotor7 = \"RZWQHFMVDBKICJLNTUXAGYPSOE\""
- "ciphers/enigma_machine2.py:67:11 LFKIJODBEGAMQPXVUHYSTCZRWN U rotor8 = \"LFKIJODBEGAMQPXVUHYSTCZRWN\""
- "ciphers/enigma_machine2.py:68:11 KOAEGVDHXPQZMLFTYWJNBRCIUS U rotor9 = \"KOAEGVDHXPQZMLFTYWJNBRCIUS\""
- "ciphers/enigma_machine2.py:72:29 rotsel U rotpos: RotorPositionT, rotsel: RotorSelectionT, pb"
- "ciphers/enigma_machine2.py:82:26 positon U param rotpos: rotor_positon"
- "ciphers/enigma_machine2.py:84:16 plugb U :param pb: plugb -> validated and transformed"
- "ciphers/enigma_machine2.py:109:5 pbdict U pbdict = _plugboard(pb)"
- "ciphers/enigma_machine2.py:114:16 pbstring U def _plugboard(pbstring: str) -> dict[str, str"
- "ciphers/enigma_machine2.py:143:5 tmppbl U tmppbl = set()"
- "ciphers/enigma_machine2.py:184:7 VKLEPDBGRNWTFCJOHQAMUZYIXS U | VKLEPDBGRNWTFCJOHQAMUZYIXS |"
- "ciphers/enigma_machine2.py:192:7 ABCDEFGHIJKLM U | ABCDEFGHIJKLM | e.g. E is paired to"
- "ciphers/enigma_machine2.py:193:7 ZYXWVUTSRQPON U | ZYXWVUTSRQPON | so when E goes in"
- "ciphers/enigma_machine2.py:202:6 KORYH U 'KORYH JUHHI!'"
- "ciphers/enigma_machine2.py:202:12 JUHHI U 'KORYH JUHHI!'"
- "ciphers/enigma_machine2.py:203:24 juhhi U >>> enigma('KORYH, juhhi!', (1, 2, 1), plugb"
- "ciphers/enigma_machine2.py:206:6 FPNCZ U 'FPNCZ QWOBU!'"
- "ciphers/enigma_machine2.py:206:12 QWOBU U 'FPNCZ QWOBU!'"
- "ciphers/hill_cipher.py:63:21 vectorize U modulus = numpy.vectorize(lambda x: x % 36)"
- "ciphers/hill_cipher.py:116:10 TESTINGHILLCIPHERR U 'TESTINGHILLCIPHERR'"
- "ciphers/hill_cipher.py:132:10 WHXYJOLM U 'WHXYJOLM9C6XT085LL'"
- "ciphers/mixed_keyword_cypher.py:20:6 XKJGUFMJST U 'XKJGUFMJST'"
- "ciphers/mono_alphabetic_ciphers.py:10:28 QWERTYUIOPASDFGHJKLZXCVBNM U translate_message(\"QWERTYUIOPASDFGHJKLZXCVBNM\",\"Hello World\",\"encrypt"
- "ciphers/mono_alphabetic_ciphers.py:11:6 Pcssi U 'Pcssi Bidsm'"
- "ciphers/mono_alphabetic_ciphers.py:11:12 Bidsm U 'Pcssi Bidsm'"
- "ciphers/mono_alphabetic_ciphers.py:42:6 Itssg U 'Itssg Vgksr'"
- "ciphers/mono_alphabetic_ciphers.py:42:12 Vgksr U 'Itssg Vgksr'"
- "ciphers/playfair_cipher.py:6:5 chunker U def chunker(seq: Iterable[str],"
- "ciphers/playfair_cipher.py:45:17 ABCDEFGHIKLMNOPQRSTUVWXYZ U alphabet = \"ABCDEFGHIKLMNOPQRSTUVWXYZ\""
- "ciphers/porta_cipher.py:2:29 NOPQRSTUVWXYZ U (\"ABCDEFGHIJKLM\", \"NOPQRSTUVWXYZ\"),"
- "ciphers/porta_cipher.py:4:29 ZNOPQRSTUVWXY U (\"ABCDEFGHIJKLM\", \"ZNOPQRSTUVWXY\"),"
- "ciphers/porta_cipher.py:6:29 YZNOPQRSTUVWX U (\"ABCDEFGHIJKLM\", \"YZNOPQRSTUVWX\"),"
- "ciphers/porta_cipher.py:8:29 XYZNOPQRSTUVW U (\"ABCDEFGHIJKLM\", \"XYZNOPQRSTUVW\"),"
- "ciphers/porta_cipher.py:10:29 WXYZNOPQRSTUV U (\"ABCDEFGHIJKLM\", \"WXYZNOPQRSTUV\"),"
- "ciphers/porta_cipher.py:12:29 VWXYZNOPQRSTU U (\"ABCDEFGHIJKLM\", \"VWXYZNOPQRSTU\"),"
- "ciphers/porta_cipher.py:14:29 UVWXYZNOPQRST U (\"ABCDEFGHIJKLM\", \"UVWXYZNOPQRST\"),"
- "ciphers/porta_cipher.py:16:29 TUVWXYZNOPQRS U (\"ABCDEFGHIJKLM\", \"TUVWXYZNOPQRS\"),"
- "ciphers/porta_cipher.py:18:29 STUVWXYZNOPQR U (\"ABCDEFGHIJKLM\", \"STUVWXYZNOPQR\"),"
- "ciphers/porta_cipher.py:20:29 RSTUVWXYZNOPQ U (\"ABCDEFGHIJKLM\", \"RSTUVWXYZNOPQ\"),"
- "ciphers/porta_cipher.py:22:29 QRSTUVWXYZNOP U (\"ABCDEFGHIJKLM\", \"QRSTUVWXYZNOP\"),"
- "ciphers/porta_cipher.py:24:29 PQRSTUVWXYZNO U (\"ABCDEFGHIJKLM\", \"PQRSTUVWXYZNO\"),"
- "ciphers/porta_cipher.py:26:29 OPQRSTUVWXYZN U (\"ABCDEFGHIJKLM\", \"OPQRSTUVWXYZN\"),"
- "ciphers/porta_cipher.py:44:6 QRACRWU U 'QRACRWU'"
- "ciphers/rabin_miller.py:1:3 Primality U # Primality Testing with the Rabin"
- "ciphers/rail_fence_cipher.py:11:10 olordll U 'HWe olordll'"
- "ciphers/rot13.py:8:9 frperg U \"Zl frperg onax nppbhag ahzore"
- "ciphers/rot13.py:8:16 onax U \"Zl frperg onax nppbhag ahzore vf 1"
- "ciphers/rot13.py:8:21 nppbhag U \"Zl frperg onax nppbhag ahzore vf 173-52946"
- "ciphers/rot13.py:8:29 ahzore U frperg onax nppbhag ahzore vf 173-52946 fb qba"
- "ciphers/rot13.py:8:52 qba'g U ahzore vf 173-52946 fb qba'g gryy nalbar!!\""
- "ciphers/rot13.py:8:58 gryy U vf 173-52946 fb qba'g gryy nalbar!!\""
- "ciphers/rot13.py:8:63 nalbar U 52946 fb qba'g gryy nalbar!!\""
- "ciphers/rsa_factorization.py:16:5 rsafactor U def rsafactor(d: int, e: int, N: int"
- "ciphers/shuffled_shift_cipher.py:66:10 rtype U :rtype: list"
- "ciphers/shuffled_shift_cipher.py:82:38 MLKJIHGF U shuffled parts: [A,CB,ED,MLKJIHGF,RQPON,ZYXWVUTS]"
- "ciphers/shuffled_shift_cipher.py:82:47 RQPON U parts: [A,CB,ED,MLKJIHGF,RQPON,ZYXWVUTS]"
- "ciphers/shuffled_shift_cipher.py:82:53 ZYXWVUTS U CB,ED,MLKJIHGF,RQPON,ZYXWVUTS]"
- "ciphers/shuffled_shift_cipher.py:83:35 ACBEDMLKJIHGFRQPONZYXWVUTS U shuffled __key_list : ACBEDMLKJIHGFRQPONZYXWVUTS"
- "ciphers/shuffled_shift_cipher.py:132:44 Xyqe U ShuffledShiftCipher('4PYIXyqeQZr44')"
- "ciphers/simple_keyword_cypher.py:8:6 Helo U 'Helo Wrd'"
- "ciphers/simple_keyword_cypher.py:11:12 dups U key_no_dups = \"\""
- "ciphers/simple_keyword_cypher.py:50:6 CYJJM U 'CYJJM VMQJB!!'"
- "ciphers/simple_keyword_cypher.py:50:12 VMQJB U 'CYJJM VMQJB!!'"
- "ciphers/simple_substitution_cipher.py:9:12 LFWOAYUISVKMNXPBDCRJTQEGHZ U key = \"LFWOAYUISVKMNXPBDCRJTQEGHZ\""
- "ciphers/simple_substitution_cipher.py:36:55 Harshil U LFWOAYUISVKMNXPBDCRJTQEGHZ', 'Harshil Darji')"
- "ciphers/simple_substitution_cipher.py:36:63 Darji U SVKMNXPBDCRJTQEGHZ', 'Harshil Darji')"
- "ciphers/simple_substitution_cipher.py:37:6 Ilcrism U 'Ilcrism Olcvs'"
- "ciphers/simple_substitution_cipher.py:37:14 Olcvs U 'Ilcrism Olcvs'"
- "ciphers/trafid_cipher.py:127:38 EPSDUCVWYM U encryptMessage(msg, \"EPSDUCVWYM.ZLKXNBTFGORIJHAQ\")"
- "ciphers/trafid_cipher.py:127:49 ZLKXNBTFGORIJHAQ U cryptMessage(msg, \"EPSDUCVWYM.ZLKXNBTFGORIJHAQ\")"
- "ciphers/transposition_cipher.py:28:6 Hlia U 'Hlia rDsahrij'"
- "ciphers/transposition_cipher.py:28:12 Dsahrij U 'Hlia rDsahrij'"
- "ciphers/vigenere_cipher.py:22:62 Dharmaj U is Harshil Darji from Dharmaj.')"
- "ciphers/vigenere_cipher.py:23:6 Akij U 'Akij ra Odrjqqs Gaisq muod"
- "ciphers/vigenere_cipher.py:23:14 Odrjqqs U 'Akij ra Odrjqqs Gaisq muod Mphumrs."
- "ciphers/vigenere_cipher.py:23:22 Gaisq U 'Akij ra Odrjqqs Gaisq muod Mphumrs.'"
- "ciphers/vigenere_cipher.py:23:28 muod U Akij ra Odrjqqs Gaisq muod Mphumrs.'"
- "ciphers/vigenere_cipher.py:23:33 Mphumrs U ra Odrjqqs Gaisq muod Mphumrs.'"
- "ciphers/xor_cipher.py:132:51 fout U encrypt.out\", \"w+\") as fout:"
- "compression/burrows_wheeler.py:31:31 ANANA U BANANA|', 'BANANA|^', 'ANANA|^B', 'NANA|^BA', 'ANA"
- "compression/burrows_wheeler.py:31:43 NANA U BANANA|^', 'ANANA|^B', 'NANA|^BA', 'ANA|^BAN', 'NA"
- "compression/burrows_wheeler.py:31:71 BANA U BA', 'ANA|^BAN', 'NA|^BANA',"
- "compression/burrows_wheeler.py:32:9 BANAN U 'A|^BANAN', '|^BANANA']"
- "compression/burrows_wheeler.py:34:32 casaa U asa_da_casa', '_asa_da_casaa', 'asa_da_casaa_',"
- "compression/burrows_wheeler.py:36:40 asaa U , 'casaa_asa_da_', 'asaa_asa_da_c', 'saa_asa"
- "compression/burrows_wheeler.py:39:39 namabananapa U namabanana', 'anamabananap', 'namabananapa', 'amabananapan',"
- "compression/burrows_wheeler.py:40:22 abananapanam U 'mabananapana', 'abananapanam', 'bananapanama', 'ananapanam"
- "compression/burrows_wheeler.py:41:6 nanapanamaba U 'nanapanamaba', 'anapanamaban', 'napanamaba"
- "compression/burrows_wheeler.py:41:54 apanamabanan U apanamaban', 'napanamabana', 'apanamabanan']"
- "compression/burrows_wheeler.py:65:21 aaaadss U {'bwt_string': 'aaaadss_c__aa', 'idx_original"
- "compression/burrows_wheeler.py:67:21 mnpbnnaaaaaa U {'bwt_string': 'mnpbnnaaaaaa', 'idx_original_string"
- "compression/lempel_ziv_decompress.py:2:43 Lempel U several implementations of Lempel–Ziv–Welch decompression"
- "compression/peak_signal_to_noise_ratio.py:2:30 PSNR U signal-to-noise ratio - PSNR"
- "compression/peak_signal_to_noise_ratio.py:15:5 psnr U def psnr(original: float, contrast"
- "compression/peak_signal_to_noise_ratio.py:27:20 imread U original = cv2.imread(os.path.join(dir_path"
- "computer_vision/cnn_classification.py:2:1 Convolutional U Convolutional Neural Network"
- "computer_vision/cnn_classification.py:17:22 iamges U . The labels of the iamges will be extracted from"
- "computer_vision/cnn_classification.py:26:17 Keras U # Importing the Keras libraries and packages"
- "computer_vision/cnn_classification.py:28:17 keras U from tensorflow.keras import layers, models"
- "computer_vision/cnn_classification.py:32:7 Initialising U # Initialising the CNN"
- "computer_vision/cnn_classification.py:37:16 Conv U layers.Conv2D(32, (3, 3), input"
- "computer_vision/cnn_classification.py:37:72 relu U 64, 3), activation=\"relu\")"
- "computer_vision/cnn_classification.py:43:23 convolutional U # Adding a second convolutional layer"
- "computer_vision/flip_augmentation.py:27:16 annos U img_paths, annos = get_dataset(LABEL"
- "computer_vision/flip_augmentation.py:36:13 imwrite U cv2.imwrite(f\"/{file_root}.jpg\""
- "computer_vision/flip_augmentation.py:36:54 IMWRITE U root}.jpg\", image, [cv2.IMWRITE_JPEG_QUALITY, 85])"
- "computer_vision/flip_augmentation.py:88:32 narray U new_imgs_list <type: narray>: image after resize"
- "computer_vision/harris_corner.py:15:23 neighbourhoods U window_size : neighbourhoods considered"
- "computer_vision/mosaic_augmentation.py:11:3 Parrameters U # Parrameters"
- "computer_vision/mosaic_augmentation.py:30:9 idxs U idxs = random.sample(range"
- "computer_vision/mosaic_augmentation.py:76:13 xmin U xmin = float(obj[1]) - float"
- "computer_vision/mosaic_augmentation.py:77:13 ymin U ymin = float(obj[2]) - float"
- "computer_vision/mosaic_augmentation.py:78:13 xmax U xmax = float(obj[1]) + float"
- "computer_vision/mosaic_augmentation.py:79:13 ymax U ymax = float(obj[2]) + float"
- "computer_vision/mosaic_augmentation.py:113:5 divid U divid_point_x = int(scale"
- "CONTRIBUTING.md:5:339 Gitter U ask the community in [Gitter](https://gitter.im/TheAlgorit"
- "CONTRIBUTING.md:46:8 docstrings U * have docstrings with clear explanations"
- "CONTRIBUTING.md:47:11 doctests U * contain doctests that test both valid"
- "CONTRIBUTING.md:77:334 autopep U other code formatters (autopep8, yapf) but the __black"
- "CONTRIBUTING.md:77:344 yapf U formatters (autopep8, yapf) but the __black__ formatter"
- "CONTRIBUTING.md:131:33 pytest U doctests will be run by pytest as part of our automated"
- "CONTRIBUTING.md:134:14 doctest U python3 -m doctest -v my_submission.py"
- "CONTRIBUTING.md:151:171 mypy U automated testing will run [mypy](http://mypy-lang.org"
- "CONTRIBUTING.md:182:10 poyea U Writer [@poyea](https://github.com"
- "conversions/binary_to_hexadecimal.py:39:7 Sanitising U # Sanitising parameter"
- "conversions/length_conversion.py:35:6 inche U \"inche\": \"in\", # Trailing"
- "conversions/molecular_chemistry.py:10:27 nfactor U molarity_to_normality(nfactor: int, moles: float,"
- "conversions/prefix_conversions.py:10:5 yotta U yotta = 24"
- "conversions/prefix_conversions.py:11:5 zetta U zetta = 21"
- "conversions/prefix_conversions.py:13:5 peta U peta = 15"
- "conversions/prefix_conversions.py:14:5 tera U tera = 12"
- "conversions/prefix_conversions.py:15:5 giga U giga = 9"
- "conversions/prefix_conversions.py:18:5 hecto U hecto = 2"
- "conversions/prefix_conversions.py:19:5 deca U deca = 1"
- "conversions/prefix_conversions.py:20:5 deci U deci = -1"
- "conversions/prefix_conversions.py:21:5 centi U centi = -2"
- "conversions/prefix_conversions.py:22:5 milli U milli = -3"
- "conversions/prefix_conversions.py:25:5 pico U pico = -12"
- "conversions/prefix_conversions.py:26:5 femto U femto = -15"
- "conversions/prefix_conversions.py:27:5 atto U atto = -18"
- "conversions/prefix_conversions.py:28:5 zepto U zepto = -21"
- "conversions/prefix_conversions.py:29:5 yocto U yocto = -24"
- "conversions/roman_numerals.py:7:29 CLIV U tests = {\"III\": 3, \"CLIV\": 154, \"MIX\": 1009,"
- "conversions/roman_numerals.py:7:68 MMMCMXCIX U 1009, \"MMD\": 2500, \"MMMCMXCIX\": 3999}"
- "conversions/roman_numerals.py:11:5 vals U vals = {\"I\": 1, \"V\": 5,"
- "conversions/temperature_conversions.py:4:43 ndigits U fahrenheit(celsius: float, ndigits: int = 2) -> float:"
- "conversions/temperature_conversions.py:306:5 reaumur U def reaumur_to_kelvin(reaumur: float"
- "conversions/weight_conversion.py:4:15 Anubhav U __author__ = \"Anubhav Solanki\""
- "conversions/weight_conversion.py:4:23 Solanki U author__ = \"Anubhav Solanki\""
- "data_structures/binary_tree/avl_tree.py:244:9 Ltree U class AVLtree:"
- "data_structures/binary_tree/avl_tree.py:297:26 traversale U -> str: # a level traversale, gives a more intuitive"
- "data_structures/binary_tree/binary_search_tree_recursive.py:231:9 inorder U def inorder_traversal(self) -> Iterator"
- "data_structures/binary_tree/binary_search_tree_recursive.py:598:12 Inorder U print(\"Inorder traversal:\", inorder"
- "data_structures/binary_tree/binary_search_tree.py:14:28 pformat U from pprint import pformat"
- "data_structures/binary_tree/lazy_segment_tree.py:128:5 segt U segt = SegmentTree(size)"
- "data_structures/binary_tree/lowest_common_ancestor.py:75:13 qsize U while q.qsize() != 0:"
- "data_structures/binary_tree/red_black_tree.py:711:5 pytests U def pytests() -> None:"
- "data_structures/binary_tree/treap.py:8:5 Treap's U Treap's node"
- "data_structures/binary_tree/treap.py:9:5 Treap U Treap is a binary tree by"
- "data_structures/binary_tree/treap.py:127:31 treap U value to add value into treap"
- "data_structures/binary_tree/wavelet_tree.py:18:14 maxx U self.maxx: int = -1"
- "data_structures/binary_tree/wavelet_tree.py:120:5 quantile U def quantile(node: Node | None, index"
- "data_structures/disjoint_set/alternate_disjoint_set.py:54:26 disj U def get_parent(self, disj_set: int) -> int:"
- "data_structures/heap/binomial_heap.py:54:64 logn U elements: Guaranteed logn, amoratized 1"
- "data_structures/heap/binomial_heap.py:54:70 amoratized U elements: Guaranteed logn, amoratized 1"
- "data_structures/heap/binomial_heap.py:55:56 logm U size m and n: O(logn + logm)"
- "data_structures/heap/binomial_heap.py:120:38 inplace U merged heap; (merge is inplace)"
- "data_structures/heap/binomial_heap.py:178:19 Neighbouring U # Neighbouring Nodes"
- "data_structures/heap/binomial_heap.py:327:11 Neighbour U # Neighbour nodes"
- "data_structures/heap/heap_generic.py:62:10 heapify U def _heapify_up(self, index):"
- "data_structures/linked_list/deque_doubly.py:103:8 Equeu U # DEqueu Remove Operations (At"
- "data_structures/linked_list/from_sequence.py:1:13 Prorgam U # Recursive Prorgam to create a Linked List"
- "data_structures/linked_list/singly_linked_list.py:399:10 dlrow U \"dlrow olleH\","
- "data_structures/linked_list/singly_linked_list.py:399:16 olle U \"dlrow olleH\","
- "data_structures/linked_list/skip_list.py:371:17 doesnt U def test_delete_doesnt_leave_dead_nodes():"
- "data_structures/queue/double_ended_queue.py:243:18 topop U @returns topop.val: the value of the"
- "data_structures/queue/double_ended_queue.py:379:32 deques U if the length of the deques are not the same, they"
- "data_structures/stacks/dijkstras_two_stack_algorithm.py:3:20 echoaj U GitHub: github.com/echoaj"
- "data_structures/stacks/dijkstras_two_stack_algorithm.py:39:5 dijkstras U def dijkstras_two_stack_algorithm"
- "digital_image_processing/change_brightness.py:25:9 brigt U brigt_img = change_brightness"
- "digital_image_processing/convert_to_negative.py:2:36 opencv U mplemented an algorithm using opencv to convert a colored"
- "digital_image_processing/convert_to_negative.py:4:44 imshow U destroyAllWindows, imread, imshow, waitKey"
- "digital_image_processing/edge_detection/canny.py:5:39 sobel U image_processing.filters.sobel_filter import sobel"
- "digital_image_processing/edge_detection/canny.py:12:15 mgrid U x, y = np.mgrid[0 - center : k_size"
- "digital_image_processing/filters/convolve.py:30:63 vstack U pixels into a row and np.vstack all rows"
- "digital_image_processing/filters/gabor_filter.py:1:25 Gaborfilter U Implementation of the Gaborfilter"
- "digital_image_processing/filters/gabor_filter.py:7:5 gabor U def gabor_filter_kernel("
- "digital_image_processing/filters/gabor_filter.py:8:5 ksize U ksize: int, sigma: int, theta"
- "digital_image_processing/filters/gabor_filter.py:8:41 lambd U sigma: int, theta: int, lambd: int, gamma: int, psi"
- "digital_image_processing/filters/gabor_filter.py:14:24 Gabor U of Gabor function."
- "digital_image_processing/histogram_equalization/histogram_stretch.py:4:10 Binish U @author: Binish125"
- "digital_image_processing/index_calculation.py:1:11 João U # Author: João Gustavo A. Amorim"
- "digital_image_processing/index_calculation.py:1:27 Amorim U Author: João Gustavo A. Amorim"
- "digital_image_processing/index_calculation.py:47:15 ARVI U #\"ARVI2\" -- red"
- "digital_image_processing/index_calculation.py:48:15 CCCI U #\"CCCI\" -- red"
- "digital_image_processing/index_calculation.py:51:15 NDVI U #\"NDVI\" -- red"
- "digital_image_processing/index_calculation.py:52:15 BNDVI U #\"BNDVI\" -- blue"
- "digital_image_processing/index_calculation.py:54:15 GNDVI U #\"GNDVI\" -- green"
- "digital_image_processing/index_calculation.py:55:15 GBNDVI U #\"GBNDVI\" -- green"
- "digital_image_processing/index_calculation.py:56:15 GRNDVI U #\"GRNDVI\" -- red,"
- "digital_image_processing/index_calculation.py:57:15 RBNDVI U #\"RBNDVI\" -- red,"
- "digital_image_processing/index_calculation.py:58:15 PNDVI U #\"PNDVI\" -- red"
- "digital_image_processing/index_calculation.py:60:15 BWDRVI U #\"BWDRVI\" -- blue"
- "digital_image_processing/index_calculation.py:64:15 CTVI U #\"CTVI\" -- red"
- "digital_image_processing/index_calculation.py:65:15 GDVI U #\"GDVI\" -- green"
- "digital_image_processing/index_calculation.py:67:15 GEMI U #\"GEMI\" -- red"
- "digital_image_processing/index_calculation.py:68:15 GOSAVI U #\"GOSAVI\" -- green"
- "digital_image_processing/index_calculation.py:69:15 GSAVI U #\"GSAVI\" -- green"
- "digital_image_processing/index_calculation.py:72:15 IPVI U #\"IPVI\" -- red"
- "digital_image_processing/index_calculation.py:75:15 MRVI U #\"MRVI\" -- red"
- "digital_image_processing/index_calculation.py:76:15 MSAVI U #\"MSAVI\" -- red"
- "digital_image_processing/index_calculation.py:80:15 NGRDI U #\"NGRDI\" -- red"
- "digital_image_processing/index_calculation.py:86:15 NDRE U #\"NDRE\" -- redEdge"
- "digital_image_processing/index_calculation.py:132:9 funcs U funcs = {"
- "digital_image_processing/index_calculation.py:221:34 CDVI U Index, Calibrated NDVI - CDVI"
- "digital_image_processing/index_calculation.py:339:9 ndvi U ndvi = self.NDVI()"
- "digital_image_processing/index_calculation.py:565:18 maxprec U floatmode='maxprec_equal'))"
- "digital_image_processing/test_digital_image_processing.py:13:58 conv U filters import convolve as conv"
- "DIRECTORY.md:15:6 Butterworth U * [Butterworth Filter](https://github"
- "DIRECTORY.md:35:19 Setbits U * [Binary Count Setbits](https://github.com"
- "DIRECTORY.md:41:21 Kernighan U * [Count 1S Brian Kernighan Method](https://github"
- "DIRECTORY.md:53:15 Cluskey U * [Quine Mc Cluskey](https://github.com"
- "DIRECTORY.md:56:6 Conways U * [Conways Game Of Life](https"
- "DIRECTORY.md:58:6 Nagel U * [Nagel Schrekenberg](https"
- "DIRECTORY.md:58:12 Schrekenberg U * [Nagel Schrekenberg](https://github.com"
- "DIRECTORY.md:64:6 Atbash U * [Atbash](https://github.com"
- "DIRECTORY.md:65:6 Baconian U * [Baconian Cipher](https://github"
- "DIRECTORY.md:74:6 Cryptomath U * [Cryptomath Module](https://github"
- "DIRECTORY.md:79:6 Elgamal U * [Elgamal Key Generator](https"
- "DIRECTORY.md:85:6 Onepad U * [Onepad Cipher](https://github"
- "DIRECTORY.md:86:6 Playfair U * [Playfair Cipher](https://github"
- "DIRECTORY.md:88:6 Porta U * [Porta Cipher](https://github"
- "DIRECTORY.md:98:6 Trafid U * [Trafid Cipher](https://github"
- "DIRECTORY.md:101:6 Vigenere U * [Vigenere Cipher](https://github"
- "DIRECTORY.md:149:8 Fenwick U * [Fenwick Tree](https://github"
- "DIRECTORY.md:180:8 Deque U * [Deque Doubly](https://github"
- "DIRECTORY.md:202:8 Dijkstras U * [Dijkstras Two Stack Algorithm"
- "DIRECTORY.md:230:8 Sobel U * [Sobel Filter](https://github"
- "DIRECTORY.md:252:10 Subarray U * [Max Subarray Sum](https://github"
- "DIRECTORY.md:253:6 Mergesort U * [Mergesort](https://github.com"
- "DIRECTORY.md:256:6 Strassen U * [Strassen Matrix Multiplication"
- "DIRECTORY.md:261:6 Bitmask U * [Bitmask](https://github.com"
- "DIRECTORY.md:268:12 Warshall U * [Floyd Warshall](https://github.com"
- "DIRECTORY.md:272:24 Submasks U [Iterating Through Submasks](https://github.com"
- "DIRECTORY.md:276:39 Nlogn U Increasing Subsequence O(Nlogn)](https://github.com"
- "DIRECTORY.md:324:6 Bezier U * [Bezier Curve](https://github"
- "DIRECTORY.md:336:6 Boruvka U * [Boruvka](https://github.com"
- "DIRECTORY.md:349:6 Dinic U * [Dinic](https://github.com"
- "DIRECTORY.md:351:6 Edmonds U * [Edmonds Karp Multiple Source"
- "DIRECTORY.md:351:14 Karp U * [Edmonds Karp Multiple Source And"
- "DIRECTORY.md:352:6 Eulerian U * [Eulerian Path And Circuit For"
- "DIRECTORY.md:357:11 Shapley U * [Gale Shapley Bigraph](https://github"
- "DIRECTORY.md:357:19 Bigraph U * [Gale Shapley Bigraph](https://github.com"
- "DIRECTORY.md:363:6 Kahns U * [Kahns Algorithm Long](https"
- "DIRECTORY.md:364:22 Topo U * [Kahns Algorithm Topo](https://github.com"
- "DIRECTORY.md:365:6 Karger U * [Karger](https://github.com"
- "DIRECTORY.md:369:28 Kruskal U Minimum Spanning Tree Kruskal](https://github.com"
- "DIRECTORY.md:373:22 Astar U * [Multi Heuristic Astar](https://github.com"
- "DIRECTORY.md:377:10 Kosaraju U * [Scc Kosaraju](https://github.com"
- "DIRECTORY.md:379:6 Tarjans U * [Tarjans Scc](https://github"
- "DIRECTORY.md:393:6 Luhn U * [Luhn](https://github.com"
- "DIRECTORY.md:395:6 Sdbm U * [Sdbm](https://github.com"
- "DIRECTORY.md:410:8 Polynom U * [Polynom For Points](https:/"
- "DIRECTORY.md:413:8 Schur U * [Schur Complement](https:/"
- "DIRECTORY.md:426:14 Clust U * [K Means Clust](https://github.com"
- "DIRECTORY.md:427:16 Neighbours U * [K Nearest Neighbours](https://github.com"
- "DIRECTORY.md:428:10 Sklearn U * [Knn Sklearn](https://github.com"
- "DIRECTORY.md:434:5 Lstm U * Lstm"
- "DIRECTORY.md:436:17 Perceptron U * [Multilayer Perceptron Classifier](https:/"
- "DIRECTORY.md:437:6 Polymonial U * [Polymonial Regression](https:/"
- "DIRECTORY.md:461:13 Borwein U * [Bailey Borwein Plouffe](https://github"
- "DIRECTORY.md:461:21 Plouffe U * [Bailey Borwein Plouffe](https://github.com"
- "DIRECTORY.md:472:6 Chudnovsky U * [Chudnovsky Algorithm](https://github"
- "DIRECTORY.md:473:6 Collatz U * [Collatz Sequence](https://github"
- "DIRECTORY.md:483:6 Eulers U * [Eulers Totient](https://github"
- "DIRECTORY.md:483:13 Totient U * [Eulers Totient](https://github.com"
- "DIRECTORY.md:500:12 Ramanujanalgo U * [Hardy Ramanujanalgo](https://github.com"
- "DIRECTORY.md:504:6 Jaccard U * [Jaccard Similarity](https:/"
- "DIRECTORY.md:505:6 Kadanes U * [Kadanes](https://github.com"
- "DIRECTORY.md:506:6 Karatsuba U * [Karatsuba](https://github.com"
- "DIRECTORY.md:507:6 Krishnamurthy U * [Krishnamurthy Number](https://github"
- "DIRECTORY.md:513:12 Lehmer U * [Lucas Lehmer Primality Test](https"
- "DIRECTORY.md:519:6 Mobius U * [Mobius Function](https://github"
- "DIRECTORY.md:523:6 Nevilles U * [Nevilles Method](https://github"
- "DIRECTORY.md:539:6 Primelib U * [Primelib](https://github.com"
- "DIRECTORY.md:540:6 Proth U * [Proth Number](https://github"
- "DIRECTORY.md:546:6 Relu U * [Relu](https://github.com"
- "DIRECTORY.md:547:6 Runge U * [Runge Kutta](https://github"
- "DIRECTORY.md:547:12 Kutta U * [Runge Kutta](https://github.com"
- "DIRECTORY.md:561:6 Softmax U * [Softmax](https://github.com"
- "DIRECTORY.md:574:6 Zellers U * [Zellers Congruence](https:/"
- "DIRECTORY.md:590:11 Fulkerson U * [Ford Fulkerson](https://github.com"
- "DIRECTORY.md:603:6 Davisb U * [Davisb Putnamb Logemannb Loveland"
- "DIRECTORY.md:603:13 Putnamb U * [Davisb Putnamb Logemannb Loveland]"
- "DIRECTORY.md:603:21 Logemannb U * [Davisb Putnamb Logemannb Loveland](https://github"
- "DIRECTORY.md:603:31 Loveland U Davisb Putnamb Logemannb Loveland](https://github.com"
- "DIRECTORY.md:612:13 Congruential U * [Linear Congruential Generator](https://github"
- "DIRECTORY.md:614:6 Magicdiamondpattern U * [Magicdiamondpattern](https://github.com"
- "DIRECTORY.md:618:6 Sdes U * [Sdes](https://github.com"
- "DIRECTORY.md:890:6 Deutsch U * [Deutsch Jozsa](https://github"
- "DIRECTORY.md:890:14 Jozsa U * [Deutsch Jozsa](https://github.com"
- "DIRECTORY.md:895:13 Qubit U * [Single Qubit Measure](https://github"
- "DIRECTORY.md:921:6 Bitonic U * [Bitonic Sort](https://github"
- "DIRECTORY.md:922:6 Bogo U * [Bogo Sort](https://github"
- "DIRECTORY.md:960:6 Slowsort U * [Slowsort](https://github.com"
- "DIRECTORY.md:970:10 Corasick U * [Aho Corasick](https://github.com"
- "DIRECTORY.md:978:12 Pangram U * [Check Pangram](https://github.com"
- "DIRECTORY.md:985:6 Jaro U * [Jaro Winkler](https://github"
- "DIRECTORY.md:985:11 Winkler U * [Jaro Winkler](https://github.com"
- "DIRECTORY.md:990:6 Manacher U * [Manacher](https://github.com"
- "DIRECTORY.md:1023:10 Imdb U * [Get Imdb Top 250 Movies Csv]"
- "DIRECTORY.md:1024:10 Imdbtop U * [Get Imdbtop](https://github.com"
- "DIRECTORY.md:1027:6 Giphy U * [Giphy](https://github.com"
- "DIRECTORY.md:1033:6 Recaptcha U * [Recaptcha Verification](https"
- "divide_and_conquer/closest_pair_of_points.py:5:36 ords U sorted based on Xco-ords and"
- "divide_and_conquer/closest_pair_of_points.py:112:44 Xcoords U contains the points, whose Xcoords are at a"
- "divide_and_conquer/closest_pair_of_points.py:113:45 Xcoord U pair_dis) from mid's Xcoord"
- "divide_and_conquer/convex_hull.py:409:17 melkman U def convex_hull_melkman(points: list[Point]"
- "divide_and_conquer/inversions.py:8:25 nlogn U algorithm which runs in nlogn and the brute-force"
- "divide_and_conquer/strassen_matrix_multiplication.py:75:12 strassen U def actual_strassen(matrix_a: list, matrix"
- "dynamic_programming/all_construct.py:15:34 purp U construct(\"purple\",[\"purp\",\"p\",\"ur\",\"le\",\"purpl"
- "dynamic_programming/all_construct.py:15:55 purpl U purp\",\"p\",\"ur\",\"le\",\"purpl\"])"
- "dynamic_programming/all_construct.py:51:26 jwajalapa U print(all_construct(\"jwajalapa\", [\"jwa\", \"j\", \"w\","
- "dynamic_programming/all_construct.py:51:68 lapa U j\", \"w\", \"a\", \"la\", \"lapa\"]))"
- "dynamic_programming/all_construct.py:55:14 hexagonosaurus U \"hexagonosaurus\","
- "dynamic_programming/all_construct.py:56:52 auru U \"ag\", \"ago\", \"ru\", \"auru\", \"rus\", \"go\", \"no\""
- "dynamic_programming/catalan_numbers.py:7:20 Dyck U * - The number of Dyck words of length 2n"
- "dynamic_programming/climbing_stairs.py:6:9 Cdoe U LeetCdoe No.70: Climbing Stairs"
- "dynamic_programming/edit_distance.py:2:11 Turfa U Author : Turfa Auliarachman"
- "dynamic_programming/edit_distance.py:2:17 Auliarachman U Author : Turfa Auliarachman"
- "dynamic_programming/iterating_through_submasks.py:2:15 Faizan U Author : Syed Faizan (3rd Year Student IIIT"
- "dynamic_programming/iterating_through_submasks.py:2:40 IIIT U Faizan (3rd Year Student IIIT Pune)"
- "dynamic_programming/iterating_through_submasks.py:3:10 faizan U github : faizan2700"
- "dynamic_programming/longest_common_subsequence.py:74:10 AGGTAB U a = \"AGGTAB\""
- "dynamic_programming/longest_common_subsequence.py:75:10 GXTXAYB U b = \"GXTXAYB\""
- "dynamic_programming/longest_common_subsequence.py:77:24 GTAB U expected_subseq = \"GTAB\""
- "dynamic_programming/longest_increasing_subsequence_o%28nlogn%29.py:2:11 Aravind U # Author: Aravind Kashyap"
- "dynamic_programming/longest_increasing_subsequence_o%28nlogn%29.py:2:19 Kashyap U # Author: Aravind Kashyap"
- "dynamic_programming/longest_increasing_subsequence.py:2:11 Mehdi U Author : Mehdi ALAOUI"
- "dynamic_programming/max_sub_array.py:2:10 Mayank U author : Mayank Kumar Jha (mk9440)"
- "dynamic_programming/max_sub_array.py:84:9 strt U strt = time.time()"
- "dynamic_programming/optimal_binary_search_tree.py:72:22 CLRS U Implemented from CLRS (Introduction to Algorithms"
- "dynamic_programming/optimal_binary_search_tree.py:100:5 freqs U freqs = [nodes[i].freq for"
- "dynamic_programming/subset_generation.py:43:31 Ambuj U code is contributed by Ambuj sahu"
- "dynamic_programming/subset_generation.py:43:37 sahu U contributed by Ambuj sahu"
- "electronics/coulombs_law.py:8:5 couloumbs U def couloumbs_law("
- "electronics/coulombs_law.py:24:29 mémoire U Coulomb (1785) \"Premier mémoire sur l’électricité et"
- "electronics/coulombs_law.py:24:41 l’électricité U Premier mémoire sur l’électricité et le magnétisme,\""
- "electronics/coulombs_law.py:24:61 magnétisme U l’électricité et le magnétisme,\""
- "electronics/coulombs_law.py:25:5 Histoire U Histoire de l’Académie Royale"
- "electronics/coulombs_law.py:25:17 l’Académie U Histoire de l’Académie Royale des Sciences"
- "electronics/electric_power.py:28:38 modulei U stdin>\", line 23, in <modulei"
- "file_transfer/send_file.py:1:32 mytext U file(filename: str = \"mytext.txt\", testing: bool"
- "file_transfer/tests/test_send_file.py:18:13 ensurance U # ===== ensurance ====="
- "fractals/julia_sets.py:1:24 Zotti U Author Alexandre De Zotti"
- "fractals/julia_sets.py:14:33 ambiantly U exponential map Julia set, ambiantly homeomorphic to the"
- "fractals/julia_sets.py:14:43 homeomorphic U Julia set, ambiantly homeomorphic to the examples in"
- "fractals/julia_sets.py:60:49 imag U quadratic_polynomial(1.j, 0).imag)"
- "fractals/sierpinski_triangle.py:3:58 anuragkumarak U uragkumarak95@gmail.com | git/anuragkumarak95"
- "fractals/sierpinski_triangle.py:14:15 Wacław U mathematician Wacław Sierpinski, but appeared"
- "fuzzy_logic/fuzzy_operations.py:2:18 Jigyasa U README, Author - Jigyasa Gandhi(mailto:jigsgandhi"
- "fuzzy_logic/fuzzy_operations.py:13:12 skfuzzy U import skfuzzy as fuzz"
- "fuzzy_logic/fuzzy_operations.py:22:8 trapmf U # (trapmf(), gbellmf(), gaussmf"
- "fuzzy_logic/fuzzy_operations.py:22:18 gbellmf U # (trapmf(), gbellmf(), gaussmf(), etc)."
- "fuzzy_logic/fuzzy_operations.py:22:29 gaussmf U trapmf(), gbellmf(), gaussmf(), etc)."
- "fuzzy_logic/fuzzy_operations.py:25:29 trimf U young = fuzz.membership.trimf(X, abc1)"
- "fuzzy_logic/fuzzy_operations.py:106:25 hspace U plt.subplots_adjust(hspace=0.5)"
- "genetic_algorithm/basic_string.py:5:11 rkia U Author: D4rkia"
- "genetic_algorithm/basic_string.py:77:27 Helxo U >>> evaluate(\"Helxo Worlx\", Hello World"
- "genetic_algorithm/basic_string.py:77:33 Worlx U >>> evaluate(\"Helxo Worlx\", Hello World)"
- "genetic_algorithm/basic_string.py:169:37 abcdefghijklm U ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklm\""
- "genetic_algorithm/basic_string.py:170:10 nopqrstuvwxyz U \"nopqrstuvwxyz.,;!?+-*#@^'èéòà€ù=)"
- "genetic_algorithm/basic_string.py:170:35 èéòà U nopqrstuvwxyz.,;!?+-*#@^'èéòà€ù=)(&%$£/\\\\\""
- "geodesy/lamberts_ellipsoidal_distance.py:69:39 Pcos U sin(sigma)) * sin^2Pcos^2Q / cos^2(sigma/2)"
- "geodesy/lamberts_ellipsoidal_distance.py:71:7 demonimator U X_demonimator = cos(sigma / 2) **"
- "geodesy/lamberts_ellipsoidal_distance.py:75:39 Psin U sin(sigma)) * cos^2Psin^2Q / sin^2(sigma/2)"
- "graphics/bezier_curve.py:49:9 bezier U def bezier_curve_function(self"
- "graphics/vector3_for_2d_rendering.py:10:15 xcodz U __author__ = \"xcodz-dot, cclaus, dhruvmanila"
- "graphics/vector3_for_2d_rendering.py:10:26 cclaus U author__ = \"xcodz-dot, cclaus, dhruvmanila\""
- "graphics/vector3_for_2d_rendering.py:10:34 dhruvmanila U \"xcodz-dot, cclaus, dhruvmanila\""
- "graphs/basic_graphs.py:130:5 dijk U def dijk(G, s):"
- "graphs/basic_graphs.py:158:5 topo U def topo(G, ind=None, Q=None"
- "graphs/basic_graphs.py:188:5 adjm U def adjm():"
- "graphs/basic_graphs.py:209:5 floy U def floy(A_and_n):"
- "graphs/basic_graphs.py:264:5 edglist U def edglist():"
- "graphs/basic_graphs.py:274:5 Kruskal's U Kruskal's MST Algorithm"
- "graphs/basic_graphs.py:282:5 krusk U def krusk(E_and_n):"
- "graphs/bidirectional_a_star.py:79:9 astar U >>> astar = AStar((0, 0), (len"
- "graphs/bidirectional_a_star.py:256:5 bidir U bidir_astar = BidirectionalAStar"
- "graphs/boruvka.py:1:4 Borůvka's U \"\"\"Borůvka's algorithm."
- "graphs/boruvka.py:82:9 boruvka U def boruvka(self) -> None:"
- "graphs/breadth_first_search.py:3:13 OMKAR U \"\"\" Author: OMKAR PATHAK \"\"\""
- "graphs/breadth_first_search.py:3:19 PATHAK U \"\"\" Author: OMKAR PATHAK \"\"\""
- "graphs/breadth_first_search.py:15:49 graaph U list representation of graaph"
- "graphs/connected_components.py:24:15 verts U connected_verts = []"
- "graphs/dijkstra_2.py:11:13 mdist U def minDist(mdist, vset, V):"
- "graphs/dijkstra_2.py:11:20 vset U def minDist(mdist, vset, V):"
- "graphs/dijkstra_2.py:57:5 gsrc U gsrc = int(input(\"\\nEnter"
- "graphs/dijkstra_algorithm.py:2:11 Shubham U # Author: Shubham Malik"
- "graphs/dijkstra_algorithm.py:2:19 Malik U # Author: Shubham Malik"
- "graphs/dijkstra_algorithm.py:73:33 atmost U assuming the new_d is atmost old_d"
- "graphs/dinic.py:17:33 rcap U edge(self, a, b, c, rcap=0):"
- "graphs/dinic.py:87:20 verices U Finally we add the verices near the sink to the"
- "graphs/g_topological_sort.py:1:11 Phyllipe U # Author: Phyllipe Bezerra (https://github"
- "graphs/g_topological_sort.py:1:20 Bezerra U # Author: Phyllipe Bezerra (https://github.com"
- "graphs/gale_shapley_bigraph.py:10:5 oegan U oegan donors and recipients"
- "graphs/gale_shapley_bigraph.py:16:56 Numberphile U v=Qcv1IqHWAzg&t=13s (Numberphile YouTube)."
- "graphs/graph_list.py:3:25 Nwachukwu U Author: OMKAR PATHAK, Nwachukwu Chidiebere"
- "graphs/graph_list.py:3:35 Chidiebere U OMKAR PATHAK, Nwachukwu Chidiebere"
- "graphs/greedy_min_vertex_cover.py:2:21 Lullo U * Author: Manuel Di Lullo (https://github.com"
- "graphs/greedy_min_vertex_cover.py:3:16 Approximization U * Description: Approximization algorithm for minimum"
- "graphs/kahns_algorithm_long.py:3:5 indegree U indegree = [0] * len(graph)"
- "graphs/karger.py:2:22 Karger's U An implementation of Karger's Algorithm for partitioning"
- "graphs/karger.py:34:40 adacency U dictionary containing adacency lists for the graph"
- "graphs/minimum_spanning_tree_boruvka.py:38:13 Boruvks's U For Boruvks's algorithm the weights"
- "graphs/minimum_spanning_tree_boruvka.py:71:9 Returna U Returna all edges in the graph"
- "graphs/minimum_spanning_tree_boruvka.py:104:41 Boruvka's U set Union and Find for Boruvka's algorithm"
- "graphs/minimum_spanning_tree_kruskal.py:1:5 kruskal U def kruskal("
- "graphs/minimum_spanning_tree_kruskal2.py:51:49 neighbouring U from the node to the neighbouring nodes (with weights"
- "graphs/minimum_spanning_tree_prims2.py:2:23 Jarník's U Prim's (also known as Jarník's) algorithm is a greedy"
- "graphs/multi_heuristic_astar.py:46:18 prito U for (prito, yyy) in temp:"
- "graphs/multi_heuristic_astar.py:136:16 inad U close_list_inad,"
- "graphs/multi_heuristic_astar.py:140:9 itera U for itera in range(n_heuristic"
- "graphs/scc_kosaraju.py:24:5 kosaraju U def kosaraju():"
- "graphs/strongly_connected_components.py:41:36 strongliy U first search to find strongliy connected"
- "graphs/tarjans_scc.py:16:42 equireachable U we save it and it's equireachable vertices as a strongly"
- "graphs/tests/test_min_spanning_tree_prim.py:25:5 adjancency U adjancency = defaultdict(list)"
- "hashes/chaos_machine.py:45:7 PRNG U # PRNG (Xorshift by George"
- "hashes/chaos_machine.py:45:32 Marsaglia U (Xorshift by George Marsaglia)"
- "hashes/hamming_code.py:1:44 Kunz U A. Amorim & Gabriel Kunz"
- "hashes/hamming_code.py:24:67 Pari U many parity bits (sizePari)"
- "hashes/hamming_code.py:272:5 Receiv U dataReceiv, ack = receptorConverter"
- "hashes/luhn.py:5:8 luhn U def is_luhn(string: str) -> bool"
- "hashes/md5.py:16:30 abcdfghijklmnopqrstuvw U rearrange('1234567890abcdfghijklmnopqrstuvw')"
- "hashes/md5.py:17:6 pqrstuvwhijklmno U 'pqrstuvwhijklmno90abcdfg12345678'"
- "hashes/md5.py:17:24 abcdfg U 'pqrstuvwhijklmno90abcdfg12345678'"
- "hashes/md5.py:117:5 tvals U tvals = [int(2**32 * abs(math"
- "hashes/md5.py:211:13 dtemp U dtemp = D"
- "hashes/sdbm.py:2:36 sdbm U algorithm was created for sdbm (a public-domain reimplementa"
- "hashes/sdbm.py:2:58 reimplementation U sdbm (a public-domain reimplementation of ndbm)"
- "hashes/sha1.py:41:9 Inititates U Inititates the variables data and"
- "hashes/sha256.py:1:14 Yathurshan U # Author: M. Yathurshan"
- "knapsack/README.md:13:190 Dantzig U mathematician Tobias Dantzig (1884–1956), and refers"
- "knapsack/README.md:20:72 CLASSNAME U vector)`, and `help(CLASSNAME.METHODNAME)`."
- "knapsack/README.md:20:82 METHODNAME U and `help(CLASSNAME.METHODNAME)`."
- "knapsack/tests/test_knapsack.py:4:21 Schröder U @author: Dr. Tobias Schröder"
- "linear_algebra/README.md:20:40 eulidean U length() : returns the eulidean length of the vector"
- "linear_algebra/README.md:31:12 axpy U - function axpy(scalar, vector1, vector"
- "linear_algebra/README.md:69:48 bytecode U directly use the Python bytecode file `lib.pyc`."
- "linear_algebra/src/conjugate_gradient.py:39:27 eignevectors U Get eigenvalues and eignevectors for a symmetric matrix"
- "linear_algebra/src/conjugate_gradient.py:40:5 eigen U eigen_values, _ = np.linalg"
- "linear_algebra/src/conjugate_gradient.py:40:33 eigh U values, _ = np.linalg.eigh(matrix)"
- "linear_algebra/src/conjugate_gradient.py:63:31 randn U random_matrix = np.random.randn(dimension, dimension"
- "linear_algebra/src/conjugate_gradient.py:130:25 Krylov U # Calculate new Krylov subspace scale."
- "linear_algebra/src/conjugate_gradient.py:132:27 conjuage U # Calculate new A conjuage search direction."
- "linear_algebra/src/lib.py:265:9 cofactor U cofactor(x: int, y: int): returns"
- "linear_algebra/src/polynom_for_points.py:77:13 zahlen U zahlen = 0"
- "linear_algebra/src/power_iteration.py:45:15 iscomplexobj U assert np.iscomplexobj(input_matrix) == np"
- "linear_algebra/src/power_iteration.py:55:5 lamda U lamda_previous = 0"
- "linear_algebra/src/power_iteration.py:91:22 triu U imag_matrix = np.triu(1j * complex_input_matrix"
- "linear_algebra/src/schur_complement.py:6:5 schur U def schur_complement("
- "linear_algebra/src/schur_complement.py:20:45 Vandenberghe U Optimization – Boyd and Vandenberghe, A.5.5"
- "linear_algebra/src/test_linear_algebra.py:147:9 cofactors U cofactors = [[-3, 14, -10], ["
- "machine_learning/astar.py:19:52 tupleof U the represented by tupleof x and y"
- "machine_learning/astar.py:63:13 neigbours U def get_neigbours(self, cell):"
- "machine_learning/astar.py:67:9 neughbour U neughbour_cord = ["
- "machine_learning/data_transformations.py:26:30 stdev U statistics import mean, stdev"
- "machine_learning/decision_tree.py:39:19 ndim U if labels.ndim != 1:"
- "machine_learning/decision_tree.py:162:12 arange U X = np.arange(-1.0, 1.0, 0.005)"
- "machine_learning/decision_tree.py:181:32 squarred U doctest.testmod(name=\"mean_squarred_error\", verbose=True"
- "machine_learning/forecasting/run.py:16:6 sklearn U from sklearn.preprocessing import"
- "machine_learning/forecasting/run.py:22:44 mtch U train_usr: list, train_mtch: list, test_dt: list"
- "machine_learning/forecasting/run.py:43:45 exog U data (total_user, with exog data = total_event)"
- "machine_learning/forecasting/run.py:53:27 disp U model_fit = model.fit(disp=False, maxiter=600,"
- "machine_learning/forecasting/run.py:137:14 reression U # for linear reression & sarimax"
- "machine_learning/gradient_boosting_regressor.py:29:19 iloc U X = df_boston.iloc[:, :-1]"
- "machine_learning/gradient_descent.py:119:13 atol U atol=absolute_error_limit"
- "machine_learning/gradient_descent.py:120:13 rtol U rtol=relative_error_limit"
- "machine_learning/k_means_clust.py:14:57 hetrogeneity U will be filled with hetrogeneity values if passed"
- "machine_learning/k_means_clust.py:15:8 kmeans U to kmeans func."
- "machine_learning/k_means_clust.py:52:16 CLUST U TAG = \"K-MEANS-CLUST/ \""
- "machine_learning/k_means_clust.py:237:12 fillna U df.fillna(value=FillMissingReport"
- "machine_learning/k_means_clust.py:239:30 dtypes U numeric_cols = df.select_dtypes(np.number).columns"
- "machine_learning/k_means_clust.py:317:29 clustert U concat report with clustert size and nan values"
- "machine_learning/k_means_clust.py:318:41 isin U report[\"Features\"].isin(ClusteringVariables"
- "machine_learning/linear_regression.py:7:56 CSGO U particular code, I had used a CSGO dataset (ADR vs"
- "machine_learning/local_weighted_learning/local_weighted_learning.md:32:38 preferance U \ heta$ , a higher \"preferance\" is given to points"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:13:5 xmat U xmat -->Training data"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:61:5 ypred U ypred = np.zeros(m)"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:71:50 colb U str, cola_name: str, colb_name: str) -> np.mat"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:82:5 mcol U mcol_a = np.mat(col_a)"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:89:26 hstack U training_data_x = np.hstack((one.T, mcol_a.T))"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:94:9 preds U def get_preds(training_data_x: np"
- "machine_learning/local_weighted_learning/local_weighted_learning.py:117:5 xsort U xsort = training_data_x.copy"
- "machine_learning/logistic_regression.py:14:1 Coursera U Coursera ML course"
- "machine_learning/logistic_regression.py:21:7 ipython U # get_ipython().run_line_magic('matplotlib"
- "machine_learning/logistic_regression.py:83:5 probs U probs = predict_prob(grid"
- "machine_learning/lstm/lstm_prediction.py:2:38 LSTM U Long Short Term Memory (LSTM) network model"
- "machine_learning/multilayer_perceptron_classifier.py:8:13 lbfgs U solver=\"lbfgs\", alpha=1e-5, hidden"
- "machine_learning/polymonial_regression.py:30:9 polymonial U def viz_polymonial():"
- "machine_learning/scoring_functions.py:4:15 RMSE U MAE, MSE, RMSE, RMSLE are included"
- "machine_learning/scoring_functions.py:4:21 RMSLE U MAE, MSE, RMSE, RMSLE are included."
- "machine_learning/scoring_functions.py:62:5 rmse U def rmse(predict, actual):"
- "machine_learning/scoring_functions.py:84:5 rmsle U def rmsle(predict, actual):"
- "machine_learning/scoring_functions.py:133:5 denumerator U denumerator = np.sum(actual) / len"
- "machine_learning/sequential_minimum_optimization.py:21:51 coef U kernel='poly', degree=3., coef0=1., gamma=0.5)"
- "machine_learning/sequential_minimum_optimization.py:47:30 wdbc U breast-cancer-wisconsin/wdbc.data\""
- "machine_learning/sequential_minimum_optimization.py:229:9 locis U locis = yield from self._choose"
- "machine_learning/sequential_minimum_optimization.py:239:16 voilate U voilate kkt condition."
- "machine_learning/sequential_minimum_optimization.py:382:7 Normalise U # Normalise data using min_max way"
- "machine_learning/sequential_minimum_optimization.py:470:62 MSIE U Mozilla/4.0 (compatible; MSIE 5.5; Windows NT)\"},"
- "machine_learning/sequential_minimum_optimization.py:481:17 dropna U data = data.dropna(axis=0)"
- "machine_learning/sequential_minimum_optimization.py:490:5 mykernel U mykernel = Kernel(kernel=\"rbf"
- "machine_learning/sequential_minimum_optimization.py:494:5 mysvm U mysvm = SmoSVM("
- "machine_learning/sequential_minimum_optimization.py:582:78 desity U distributed points with high desity and"
- "machine_learning/sequential_minimum_optimization.py:591:5 yrange U yrange = np.linspace(train"
- "machine_learning/support_vector_machines.py:6:55 SVM's U plementing different types of SVM's"
- "machine_learning/support_vector_machines.py:13:5 Linearsvc U def Linearsvc(train_x, train_y):"
- "machine_learning/support_vector_machines.py:36:6 virginica U 'virginica'"
- "maths/bailey_borwein_plouffe.py:1:12 borwein U def bailey_borwein_plouffe(digit_position"
- "maths/bailey_borwein_plouffe.py:1:20 plouffe U def bailey_borwein_plouffe(digit_position: int"
- "maths/binary_exponentiation_2.py:9:11 chinmoy U * @author chinmoy159"
- "maths/binary_exponentiation.py:3:12 Junth U # Author : Junth Basnet"
- "maths/check_polygon.py:26:17 Monogons U ValueError: Monogons and Digons are not polygons"
- "maths/check_polygon.py:26:30 Digons U ValueError: Monogons and Digons are not polygons in"
- "maths/chudnovsky_algorithm.py:12:28 multinomial U = constant_term / ((multinomial_term * linear_term)"
- "maths/chudnovsky_algorithm.py:44:18 prec U getcontext().prec = precision"
- "maths/collatz_sequence.py:4:5 collatz U def collatz_sequence(n: int) ->"
- "maths/entropy.py:27:27 telescreen U . \"from the telescreen was still \""
- "maths/entropy.py:28:35 overfulfilment U \"babbling and the overfulfilment\")"
- "maths/euclidean_distance.py:24:31 asarray U return np.sqrt(np.sum((np.asarray(vector_1) - np.asarray"
- "maths/euclidean_gcd.py:20:26 euclicedan U Recursive method for euclicedan gcd algorithm"
- "maths/eulers_totient.py:2:5 totient U def totient(n: int) -> list:"
- "maths/eulers_totient.py:4:5 totients U totients = [i - 1 for i in range"
- "maths/extended_euclidean_algorithm.py:5:41 Bezout's U bn = gcd(m, n) (a.k.a Bezout's Identity)"
- "maths/extended_euclidean_algorithm.py:10:15 Sharma U # @Author: S. Sharma <silentcat>"
- "maths/extended_euclidean_algorithm.py:13:24 pikulet U Last modified by: pikulet"
- "maths/extended_euclidean_algorithm.py:56:9 coeff U old_coeff_a, coeff_a = 1, 0"
- "maths/fibonacci.py:7:42 Binet U function because the Binet formula function uses"
- "maths/fibonacci.py:16:5 binet U fib_binet runtime: 0.0174 ms"
- "maths/fibonacci.py:113:29 recursuive U Cache must be outside recursuive function"
- "maths/integration_by_simpson_approx.py:29:19 fxdx U 1. integration of fxdx with limit a to b is"
- "maths/integration_by_simpson_approx.py:43:28 integraion U b : upper limit of integraion"
- "maths/is_square_free.py:18:26 repition U it simply checks for repition in the numbers."
- "maths/jaccard_similarity.py:8:38 MMDS U of Massive Datasets [MMDS 2nd Edition, Chapter"
- "maths/jaccard_similarity.py:17:5 jaccard U def jaccard_similariy(setA, setB"
- "maths/jaccard_similarity.py:17:13 similariy U def jaccard_similariy(setA, setB, alternativeUnion"
- "maths/kadanes.py:2:1 Kadane's U Kadane's algorithm to get maximum"
- "maths/kadanes.py:26:5 kadanes U def kadanes(arr: list) -> int:"
- "maths/kadanes.py:61:37 sepatated U Enter integer values sepatated by spaces\")"
- "maths/krishnamurthy_number.py:26:5 krishnamurthy U def krishnamurthy(number: int) -> bool"
- "maths/krishnamurthy_number.py:45:51 Krisnamurthy U whether a number is a Krisnamurthy Number or not.\")"
- "maths/largest_of_very_large_numbers.py:1:11 Abhijeeth U # Author: Abhijeeth S"
- "maths/least_common_multiple.py:17:12 mult U common_mult = max_num"
- "maths/lucas_lehmer_primality_test.py:2:58 primality U Lehmer test (LLT) is a primality test for Mersenne"
- "maths/lucas_lehmer_primality_test.py:2:77 Mersenne U a primality test for Mersenne"
- "maths/lucas_lehmer_primality_test.py:16:11 lehmer U def lucas_lehmer_test(p: int) -> bool"
- "maths/mobius_function.py:12:5 mobius U def mobius(n: int) -> int:"
- "maths/monte_carlo.py:2:10 Matteo U @author: MatteoRaso"
- "maths/monte_carlo.py:2:16 Raso U @author: MatteoRaso"
- "maths/primelib.py:84:14 erathostenes U sieve of erathostenes."
- "maths/primelib.py:540:74 Divisiors U Error in function getDivisiors(...)\""
- "maths/proth_number.py:10:5 proth U def proth(number: int) -> int"
- "maths/qr_decomposition.py:21:18 BLAS U version from BLAS should be used."
- "maths/radix2_fft.py:5:8 mpmath U import mpmath # for roots of unity"
- "maths/radix2_fft.py:91:14 ncol U next_ncol = self.C_max_length"
- "maths/runge_kutta.py:4:5 runge U def runge_kutta(f, y0, x0, h,"
- "maths/runge_kutta.py:4:11 kutta U def runge_kutta(f, y0, x0, h, x_end"
- "maths/sieve_of_eratosthenes.py:10:25 Simas U doctest provider: Bruno Simas Hadlich (https://github"
- "maths/sieve_of_eratosthenes.py:10:31 Hadlich U provider: Bruno Simas Hadlich (https://github.com"
- "maths/sieve_of_eratosthenes.py:11:16 Dmitry U Also thanks to Dmitry (https://github.com"
- "maths/softmax.py:6:8 exponentials U to the exponentials of the input numbers"
- "maths/square_root.py:25:20 aproximated U Square root is aproximated using Newtons method"
- "maths/two_sum.py:36:9 compl U compl = target - val"
- "maths/zellers_congruence.py:5:5 zeller U def zeller(date_input: str) ->"
- "matrix/matrix_class.py:37:23 Cofactors U Identity, Minors, Cofactors and Adjugate are returned"
- "matrix/matrix_class.py:37:37 Adjugate U Minors, Cofactors and Adjugate are returned as Matrices"
- "matrix/matrix_class.py:52:22 adjugate U >>> print(matrix.adjugate())"
- "matrix/sherman_morrison.py:216:13 ainv U >>> ainv = Matrix(3, 3, 0)"
- "matrix/spiral_print.py:42:11 horizotal U # horizotal printing increasing"
- "matrix/tests/test_matrix_operation.py:18:40 matop U matrix_operation as matop"
- "matrix/tests/test_matrix_operation.py:46:9 theo U theo = matop.add(mat1, mat"
- "neural_network/2_hidden_layers_neural_network.py:101:9 Updation U Updation is done using derivative"
- "neural_network/2_hidden_layers_neural_network.py:101:46 sogmoid U using derivative of sogmoid activation function"
- "neural_network/back_propagation_neural_network.py:53:26 asmatrix U self.weight = np.asmatrix(np.random.normal(0,"
- "neural_network/back_propagation_neural_network.py:67:35 xdata U forward_propagation(self, xdata):"
- "neural_network/back_propagation_neural_network.py:97:7 BPNN U class BPNN:"
- "neural_network/back_propagation_neural_network.py:124:28 ydata U def train(self, xdata, ydata, train_round, accuracy"
- "neural_network/back_propagation_neural_network.py:128:22 hlines U self.ax_loss.hlines(self.accuracy, 0, self"
- "neural_network/convolution_neural_network.py:42:19 thre U self.rate_thre = rate_t"
- "neural_network/convolution_neural_network.py:107:31 convs U convolute(self, data, convs, w_convs, thre_convs"
- "neural_network/convolution_neural_network.py:211:25 datas U self, patterns, datas_train, datas_teach,"
- "neural_network/convolution_neural_network.py:227:35 conved U data_focus1, data_conved1 = self.convolute("
- "neural_network/convolution_neural_network.py:297:13 yplot U yplot = [error_accuracy for"
- "neural_network/convolution_neural_network.py:305:43 Complished U -----------Training Complished--------------------"
- "other/check_strong_password.py:10:35 Hwea U strong_password_detector('Hwea7$2!')"
- "other/check_strong_password.py:19:44 udfhiaf U password_detector('Hello1238udfhiaf038fajdvjjf!jaiuFhkqi"
- "other/check_strong_password.py:19:54 fajdvjjf U 'Hello1238udfhiaf038fajdvjjf!jaiuFhkqi1')"
- "other/check_strong_password.py:19:63 jaiu U 8udfhiaf038fajdvjjf!jaiuFhkqi1')"
- "other/check_strong_password.py:19:67 Fhkqi U udfhiaf038fajdvjjf!jaiuFhkqi1')"
- "other/davisb_putnamb_logemannb_loveland.py:4:33 DPLL U Putnam–Logemann–Loveland (DPLL) algorithm is a complete"
- "other/davisb_putnamb_logemannb_loveland.py:5:35 satisfiability U algorithm for deciding the satisfiability of propositional logic"
- "other/davisb_putnamb_logemannb_loveland.py:6:73 Tisfiability U Conjunctive Normal Form SATisfiability"
- "other/davisb_putnamb_logemannb_loveland.py:153:21 uncomplemented U A symbol is the uncomplemented form of a literal."
- "other/davisb_putnamb_logemannb_loveland.py:258:13 Fcount U Fcount, Ncount = 0, 0"
- "other/davisb_putnamb_logemannb_loveland.py:258:21 Ncount U Fcount, Ncount = 0, 0"
- "other/davisb_putnamb_logemannb_loveland.py:276:5 dpll U def dpll_algorithm("
- "other/dijkstra_bankers_algorithm.py:4:13 Biney U # \"Author: \"Biney Kingsley (bluedistro"
- "other/dijkstra_bankers_algorithm.py:80:27 alloc U max_claim[i][j] - alloc_table[i][j] <= avail"
- "other/doomsday.py:42:5 centurian U centurian = year % 100"
- "other/gauss_easter.py:24:5 metonic U metonic_cycle = year % 19"
- "other/graham_scan.py:43:5 minidx U minidx = 0"
- "other/graham_scan.py:44:5 miny U miny, minx = maxsize, maxsize"
- "other/graham_scan.py:166:54 straigh U previous points on those straigh line is not convex hull"
- "other/greedy.py:45:18 Sambhar U ... \"Sambhar\", \"Chicken\", \"Fries"
- "other/linear_congruential_generator.py:13:27 accptable U in this case, it is accptable because `LinearCongruentialGe"
- "other/lru_cache.py:252:17 pythonic U # Note: pythonic interface would throw"
- "other/password_generator.py:24:3 ctbi U # ctbi= characters that must"
- "other/password_generator.py:45:19 generalised U # random is a generalised function for letters"
- "other/scoring_algorithm.py:2:15 markmelnic U developed by: markmelnic"
- "other/scoring_algorithm.py:5:34 percentual U using a range based percentual proximity algorithm"
- "other/scoring_algorithm.py:26:5 procentual U def procentual_proximity("
- "other/scoring_algorithm.py:50:9 dlist U for dlist, weight in zip(data"
- "other/scoring_algorithm.py:52:9 maxd U maxd = max(dlist)"
- "other/scoring_algorithm.py:80:12 slist U for i, slist in enumerate(score_lists"
- "other/sdes.py:36:11 sbox U def apply_sbox(s, data):"
- "other/sdes.py:97:29 decypting U print(\"Plain text after decypting is:\", PT)"
- "physics/n_body_simulation.py:248:41 blit U interval=INTERVAL, blit=True"
- "physics/newtons_second_law_of_motion.py:14:14 Fnet U Formulation: Fnet = m • a"
- "project_euler/problem_001/sol4.py:27:5 xmulti U xmulti = []"
- "project_euler/problem_001/sol4.py:28:5 zmulti U zmulti = []"
- "project_euler/problem_005/sol1.py:57:9 nfound U nfound = 0"
- "project_euler/problem_011/sol1.py:43:13 horz U horzProduct = grid[i][j]"
- "project_euler/problem_014/sol2.py:30:1 COLLATZ U COLLATZ_SEQUENCE_LENGTHS ="
- "project_euler/problem_020/sol1.py:48:5 nfact U nfact = factorial(num)"
- "project_euler/problem_023/sol1.py:31:8 Divs U sumDivs = [1] * (limit + 1)"
- "project_euler/problem_023/sol1.py:38:5 abundants U abundants = set()"
- "project_euler/problem_035/sol1.py:14:27 Seive U 1 million using the Seive of Eratosthenes. Then"
- "project_euler/problem_035/sol1.py:20:1 seive U seive = [True] * 1000001"
- "project_euler/problem_037/sol1.py:6:54 truncatable U primes that are both truncatable from left to right"
- "project_euler/problem_038/sol1.py:21:61 concactenation U the solution will be a concactenation of"
- "project_euler/problem_039/sol1.py:8:57 maximised U number of solutions maximised?"
- "project_euler/problem_044/sol1.py:11:37 minimised U and D = |Pk − Pj| is minimised; what is the value of"
- "project_euler/problem_045/sol1.py:11:5 trinagle U All trinagle numbers are hexagonal"
- "project_euler/problem_047/sol1.py:2:1 Combinatoric U Combinatoric selections"
- "project_euler/problem_050/sol1.py:23:14 Erotosthenes U Sieve of Erotosthenes"
- "project_euler/problem_050/sol1.py:55:42 celing U biggest prime, below the celing, that can be written"
- "project_euler/problem_054/sol1.py:114:50 ueen U 9, T(en), J(ack), Q(ueen), K(ing), A(ce)"
- "project_euler/problem_054/sol1.py:117:11 pades U S(pades), H(earts), D(iamonds"
- "project_euler/problem_054/sol1.py:117:21 earts U S(pades), H(earts), D(iamonds), C(lubs"
- "project_euler/problem_054/sol1.py:117:31 iamonds U pades), H(earts), D(iamonds), C(lubs)"
- "project_euler/problem_054/sol1.py:117:43 lubs U earts), D(iamonds), C(lubs)"
- "project_euler/problem_054/sol1.py:145:53 Stright U 2H 3H 4H 5H 6H\") # Stright flush"
- "project_euler/problem_054/test_poker_hand.py:140:11 oppo U play, oppo = randrange(len(SORTED"
- "project_euler/problem_055/sol1.py:2:1 Lychrel U Lychrel numbers"
- "project_euler/problem_055/sol1.py:58:30 lychrel U Returns the count of all lychrel numbers below limit"
- "project_euler/problem_059/sol1.py:92:30 asfla U filter_common_word(['asfla adf', 'I am here',"
- "project_euler/problem_059/sol1.py:94:30 athla U filter_common_word(['athla amf', 'I am here',"
- "project_euler/problem_065/sol1.py:14:21 convergents U Let us consider the convergents for sqrt(2)."
- "project_euler/problem_087/sol1.py:42:17 tetr U tetr = prime3 * prime3 *"
- "project_euler/problem_089/sol1.py:13:1 VVIIIIII U VVIIIIII"
- "project_euler/problem_089/sol1.py:15:1 VVVI U VVVI"
- "project_euler/problem_091/sol1.py:5:43 ΔOPQ U origin, O(0,0), to form ΔOPQ."
- "project_euler/problem_107/sol1.py:16:28 optimise U However, it is possible to optimise the network by removing"
- "project_euler/problem_107/sol1.py:111:5 adjaceny U adjaceny_matrix = [line.split"
- "project_euler/problem_113/sol1.py:50:16 upto U def non_bouncy_upto(n: int) -> int:"
- "project_euler/problem_113/sol1.py:65:5 Caclulate U Caclulate the number of non-bouncy"
- "project_euler/problem_135/sol1.py:45:52 divisble U difference % 4: # d must be divisble by 4"
- "project_euler/problem_180/sol1.py:40:75 uniquq U <= 0. We use a set \"uniquq_s\""
- "project_euler/problem_188/sol1.py:23:6 modexpt U def _modexpt(base: int, exponent"
- "project_euler/problem_188/sol1.py:58:39 assiciative U base↑↑height by right-assiciative repeated modular"
- "project_euler/problem_191/sol1.py:15:6 OOOA U OOOO OOOA OOOL OOAO OOAA OOAL"
- "project_euler/problem_191/sol1.py:15:11 OOOL U OOOO OOOA OOOL OOAO OOAA OOAL OOLO"
- "project_euler/problem_191/sol1.py:15:16 OOAO U OOOO OOOA OOOL OOAO OOAA OOAL OOLO OOLA"
- "project_euler/problem_191/sol1.py:15:21 OOAA U OOOO OOOA OOOL OOAO OOAA OOAL OOLO OOLA OAOO"
- "project_euler/problem_191/sol1.py:15:26 OOAL U OOOA OOOL OOAO OOAA OOAL OOLO OOLA OAOO OAOA"
- "project_euler/problem_191/sol1.py:15:31 OOLO U OOOL OOAO OOAA OOAL OOLO OOLA OAOO OAOA"
- "project_euler/problem_191/sol1.py:15:36 OOLA U OOAO OOAA OOAL OOLO OOLA OAOO OAOA"
- "project_euler/problem_191/sol1.py:15:41 OAOO U OOAA OOAL OOLO OOLA OAOO OAOA"
- "project_euler/problem_191/sol1.py:15:46 OAOA U OOAL OOLO OOLA OAOO OAOA"
- "project_euler/problem_191/sol1.py:16:1 OAOL U OAOL OAAO OAAL OALO OALA"
- "project_euler/problem_191/sol1.py:16:6 OAAO U OAOL OAAO OAAL OALO OALA OLOO"
- "project_euler/problem_191/sol1.py:16:11 OAAL U OAOL OAAO OAAL OALO OALA OLOO OLOA"
- "project_euler/problem_191/sol1.py:16:16 OALO U OAOL OAAO OAAL OALO OALA OLOO OLOA OLAO"
- "project_euler/problem_191/sol1.py:16:21 OALA U OAOL OAAO OAAL OALO OALA OLOO OLOA OLAO OLAA"
- "project_euler/problem_191/sol1.py:16:26 OLOO U OAAO OAAL OALO OALA OLOO OLOA OLAO OLAA AOOO"
- "project_euler/problem_191/sol1.py:16:31 OLOA U OAAL OALO OALA OLOO OLOA OLAO OLAA AOOO"
- "project_euler/problem_191/sol1.py:16:36 OLAO U OALO OALA OLOO OLOA OLAO OLAA AOOO"
- "project_euler/problem_191/sol1.py:16:41 OLAA U OALA OLOO OLOA OLAO OLAA AOOO"
- "project_euler/problem_191/sol1.py:16:46 AOOO U OLOO OLOA OLAO OLAA AOOO"
- "project_euler/problem_191/sol1.py:17:1 AOOA U AOOA AOOL AOAO AOAA AOAL"
- "project_euler/problem_191/sol1.py:17:6 AOOL U AOOA AOOL AOAO AOAA AOAL AOLO"
- "project_euler/problem_191/sol1.py:17:11 AOAO U AOOA AOOL AOAO AOAA AOAL AOLO AOLA"
- "project_euler/problem_191/sol1.py:17:16 AOAA U AOOA AOOL AOAO AOAA AOAL AOLO AOLA AAOO"
- "project_euler/problem_191/sol1.py:17:21 AOAL U AOOA AOOL AOAO AOAA AOAL AOLO AOLA AAOO AAOA"
- "project_euler/problem_191/sol1.py:17:26 AOLO U AOOL AOAO AOAA AOAL AOLO AOLA AAOO AAOA AAOL"
- "project_euler/problem_191/sol1.py:17:31 AOLA U AOAO AOAA AOAL AOLO AOLA AAOO AAOA AAOL"
- "project_euler/problem_191/sol1.py:17:36 AAOO U AOAA AOAL AOLO AOLA AAOO AAOA AAOL"
- "project_euler/problem_191/sol1.py:17:41 AAOA U AOAL AOLO AOLA AAOO AAOA AAOL"
- "project_euler/problem_191/sol1.py:17:46 AAOL U AOLO AOLA AAOO AAOA AAOL"
- "project_euler/problem_191/sol1.py:18:1 AALO U AALO AALA ALOO ALOA ALAO"
- "project_euler/problem_191/sol1.py:18:6 AALA U AALO AALA ALOO ALOA ALAO ALAA"
- "project_euler/problem_191/sol1.py:18:11 ALOO U AALO AALA ALOO ALOA ALAO ALAA LOOO"
- "project_euler/problem_191/sol1.py:18:16 ALOA U AALO AALA ALOO ALOA ALAO ALAA LOOO LOOA"
- "project_euler/problem_191/sol1.py:18:21 ALAO U AALO AALA ALOO ALOA ALAO ALAA LOOO LOOA LOAO"
- "project_euler/problem_191/sol1.py:18:26 ALAA U AALA ALOO ALOA ALAO ALAA LOOO LOOA LOAO LOAA"
- "project_euler/problem_191/sol1.py:18:31 LOOO U ALOO ALOA ALAO ALAA LOOO LOOA LOAO LOAA"
- "project_euler/problem_191/sol1.py:18:36 LOOA U ALOA ALAO ALAA LOOO LOOA LOAO LOAA"
- "project_euler/problem_191/sol1.py:18:41 LOAO U ALAO ALAA LOOO LOOA LOAO LOAA"
- "project_euler/problem_191/sol1.py:18:46 LOAA U ALAA LOOO LOOA LOAO LOAA"
- "project_euler/problem_191/sol1.py:19:1 LAOO U LAOO LAOA LAAO"
- "project_euler/problem_191/sol1.py:19:6 LAOA U LAOO LAOA LAAO"
- "project_euler/problem_191/sol1.py:19:11 LAAO U LAOO LAOA LAAO"
- "project_euler/problem_191/sol1.py:82:11 ontime U state_ontime = _calculate(days -"
- "project_euler/problem_493/sol1.py:6:62 bcdefghij U the decimal point (a.bcdefghij)."
- "project_euler/problem_493/sol1.py:12:51 cominations U of possible picking cominations"
- "project_euler/problem_493/sol1.py:13:18 binom U [combinations := binom_coeff(70, 20)]"
- "project_euler/problem_551/sol1.py:35:20 calulcated U Term are calulcated until c > 10^k or the"
- "project_euler/README.md:66:4 Stackoverflow U - [Stackoverflow link]"
- "project_euler/README.md:81:6 Doctest U [Doctest]"
- "quantum/deutsch_jozsa.py:3:9 Josza U Deutsch-Josza Algorithm is one of"
- "quantum/deutsch_jozsa.py:25:8 qiskit U import qiskit as q"
- "quantum/deutsch_jozsa.py:28:30 qubits U oracle(case: str, num_qubits: int) -> q.QuantumCircuit"
- "quantum/deutsch_jozsa.py:35:23 qubit U # plus one output qubit"
- "quantum/deutsch_jozsa.py:40:62 CNOTs U that tells us which CNOTs to"
- "quantum/deutsch_jozsa.py:46:11 correspopnds U # correspopnds to a qubit, if the digit"
- "quantum/deutsch_jozsa.py:75:26 Deustch U Returns the complete Deustch-Jozsa Quantum Circuit"
- "quantum/deutsch_jozsa.py:76:41 Hadamard U Output registers and Hadamard & Measurement Gates"
- "quantum/deutsch_jozsa.py:98:13 jozsa U def deutsch_jozsa(case: str, num_qubits"
- "quantum/deutsch_jozsa.py:107:11 Aer's U # Use Aer's qasm_simulator"
- "quantum/deutsch_jozsa.py:107:17 qasm U # Use Aer's qasm_simulator"
- "quantum/half_adder.py:38:11 cnots U # use cnots to write XOR of the"
- "quantum/half_adder.py:42:17 toffoli U # use ccx / toffoli gate to write AND of"
- "quantum/not_gate.py:6:1 Qiskit U Qiskit Docs: https://qiskit"
- "quantum/not_gate.py:25:29 Qubits U Apply X (NOT) Gate to Qubits 0 & 1"
- "quantum/quantum_entanglement.py:42:22 CNOT U # Adding CX (CNOT) gate"
- "quantum/README.md:8:3 Rigetti U * Rigetti: https://rigetti.com"
- "quantum/ripple_adder_classic.py:72:50 hadamard'd U from doing this with hadamard'd bits :)"
- "scheduling/shortest_job_first.py:32:5 minm U minm = 999999999"
- "scheduling/shortest_job_first.py:63:13 finar U finar = finish_time - arrival"
- "scheduling/shortest_job_first.py:138:5 fcfs U fcfs = pd.DataFrame("
- "scripts/build_directory_md.py:15:59 ipynb U filename)[1] in (\".py\", \".ipynb\"):"
- "scripts/validate_filenames.py:27:1 nodir U nodir_files = [file for file"
- "searches/fibonacci_search.py:109:13 fibb U fibb_k = i"
- "sorts/bitonic_sort.py:40:5 bitonic U def bitonic_merge(array: list[int"
- "sorts/bogo_sort.py:2:45 bogosort U implementation of the bogosort algorithm,"
- "sorts/bogo_sort.py:4:1 Bogosort U Bogosort generates random permutations"
- "sorts/bogo_sort.py:9:22 bogo U python -m doctest -v bogo_sort.py"
- "sorts/comb_sort.py:3:75 Wlodzimierz U originally designed by Wlodzimierz"
- "sorts/comb_sort.py:4:1 Dobosiewicz U Dobosiewicz in 1980. It was rediscovered"
- "sorts/counting_sort.py:62:6 eghhiiinrsssttt U 'eghhiiinrsssttt'"
- "sorts/external_sort.py:85:9 unshift U def unshift(self, index):"
- "sorts/gnome_sort.py:34:8 Gadeimnoprstu U ' !Gadeimnoprstu'"
- "sorts/iterative_merge_sort.py:3:9 Aman U Author: Aman Gupta"
- "sorts/msd_radix_sort.py:79:5 Inplace U Inplace implementation of the"
- "sorts/natural_sort.py:27:9 alphanum U def alphanum_key(key):"
- "sorts/normal_distribution_quick_sort.md:16:12 numpy U >>> import numpy as np"
- "sorts/normal_distribution_quick_sort.md:17:10 tempfile U >>> from tempfile import TemporaryFile"
- "sorts/normal_distribution_quick_sort.md:18:5 outfile U >>> outfile = TemporaryFile()"
- "sorts/normal_distribution_quick_sort.md:36:97 linewidth U / (2 * sigma**2) ),linewidth=2, color='r')"
- "sorts/normal_distribution_quick_sort.md:58:11 matplotlib U >>>import matplotlib.pyplot as plt"
- "sorts/normal_distribution_quick_sort.md:61:14 Disrtibution U # Normal Disrtibution QuickSort is red"
- "sorts/quick_sort_3_partition.py:21:16 lomuto U def quick_sort_lomuto_partition(sorting: list"
- "sorts/quick_sort_3_partition.py:24:10 Lomuto U with Lomuto partition scheme:"
- "sorts/shell_sort.py:19:7 Marcin U # Marcin Ciura's gap sequence"
- "sorts/shell_sort.py:19:14 Ciura's U # Marcin Ciura's gap sequence"
- "sorts/slowsort.py:5:53 Stolfi U Andrei Broder and Jorge Stolfi"
- "sorts/slowsort.py:6:40 Simplexity U Pessimal Algorithms and Simplexity Analysis"
- "strings/aho_corasick.py:8:14 adlist U self.adlist: list[dict] = list("
- "strings/alternative_string_arrange.py:8:6 AXBYCD U 'AXBYCD'"
- "strings/alternative_string_arrange.py:10:6 XAYBCD U 'XAYBCD'"
- "strings/alternative_string_arrange.py:12:6 AXBYZ U 'AXBYZ'"
- "strings/anagrams.py:11:6 estt U 'estt'"
- "strings/anagrams.py:13:9 aehiisssttt U ' aehiisssttt'"
- "strings/anagrams.py:15:6 aefilnstt U 'aefilnstt'"
- "strings/anagrams.py:29:17 bysig U return word_bysig[signature(my_word)]"
- "strings/can_string_be_rearranged_as_palindrome.py:1:14 susmith U # Created by susmith98"
- "strings/can_string_be_rearranged_as_palindrome.py:17:57 Momo U palindrome_counter(\"Momo\")"
- "strings/detecting_english_programmatically.py:48:20 llold U >>> isEnglish('llold HorWd')"
- "strings/frequency_finder.py:32:1 ETAOIN U ETAOIN = \"ETAOINSHRDLCUMWFGYPBVKJXQZ"
- "strings/frequency_finder.py:32:11 ETAOINSHRDLCUMWFGYPBVKJXQZ U ETAOIN = \"ETAOINSHRDLCUMWFGYPBVKJXQZ\""
- "strings/is_contains_unique_chars.py:10:11 compexity U Space compexity: O(1) 19320 bytes as"
- "strings/jaro_winkler.py:4:5 jaro U def jaro_winkler(str1: str, str"
- "strings/jaro_winkler.py:4:10 winkler U def jaro_winkler(str1: str, str2: str"
- "strings/jaro_winkler.py:10:33 marhta U jaro_winkler(\"martha\", \"marhta\")"
- "strings/jaro_winkler.py:14:31 dbdbdbdb U jaro_winkler(\"test\", \"dbdbdbdb\")"
- "strings/knuth_morris_pratt.py:62:14 alskfjaldsabc U text1 = \"alskfjaldsabc1abc1abc12k23adsfabcabc"
- "strings/knuth_morris_pratt.py:62:40 adsfabcabc U alskfjaldsabc1abc1abc12k23adsfabcabc\""
- "strings/knuth_morris_pratt.py:63:14 alskfjaldsk U text2 = \"alskfjaldsk23adsfabcabc\""
- "strings/knuth_morris_pratt.py:67:16 ABABX U pattern = \"ABABX\""
- "strings/knuth_morris_pratt.py:68:13 ABABZABABYABABX U text = \"ABABZABABYABABX\""
- "strings/knuth_morris_pratt.py:72:16 AAAB U pattern = \"AAAB\""
- "strings/knuth_morris_pratt.py:73:13 ABAAAAAB U text = \"ABAAAAAB\""
- "strings/knuth_morris_pratt.py:77:16 abcdabcy U pattern = \"abcdabcy\""
- "strings/knuth_morris_pratt.py:78:13 abcxabcdabxabcdabcdabcy U text = \"abcxabcdabxabcdabcdabcy\""
- "strings/knuth_morris_pratt.py:82:16 aabaabaaa U pattern = \"aabaabaaa\""
- "strings/lower.py:8:6 hellzo U 'hellzo'"
- "strings/manacher.py:4:6 abbba U 'abbba'"
- "strings/manacher.py:5:29 ababa U palindromic_string('ababa')"
- "strings/naive_string_search.py:14:31 ABAAABCDBBABCDDEBCABC U naive_pattern_search(\"ABAAABCDBBABCDDEBCABC\", \"ABC\")"
- "strings/naive_string_search.py:22:31 ABCDEGFTEST U naive_pattern_search(\"ABCDEGFTEST\", \"TEST\")"
- "strings/prefix_function.py:22:26 aabcdaabc U >> prefix_function(\"aabcdaabc\")"
- "strings/prefix_function.py:24:26 asdasdad U >> prefix_function(\"asdasdad\")"
- "strings/prefix_function.py:54:25 abcab U >>> longest_prefix(\"abcab\")"
- "strings/rabin_karp.py:7:11 karp U def rabin_karp(pattern: str, text:"
- "strings/rabin_karp.py:82:13 Lüsai U text = \"Lüsai\""
- "strings/reverse_letters.py:7:10 kciuq U 'ehT kciuq nworb xof depmuj revo"
- "strings/reverse_letters.py:7:16 nworb U 'ehT kciuq nworb xof depmuj revo eht"
- "strings/reverse_letters.py:7:26 depmuj U ehT kciuq nworb xof depmuj revo eht yzal .god'"
- "strings/reverse_letters.py:7:33 revo U kciuq nworb xof depmuj revo eht yzal .god'"
- "strings/reverse_letters.py:7:42 yzal U xof depmuj revo eht yzal .god'"
- "strings/reverse_letters.py:9:9 siht U 'sI siht ?eurt'"
- "strings/reverse_letters.py:9:15 eurt U 'sI siht ?eurt'"
- "strings/reverse_letters.py:11:8 evol U 'I evol nohtyP'"
- "strings/reverse_letters.py:11:13 nohty U 'I evol nohtyP'"
- "strings/reverse_long_words.py:5:33 wollef U reverse_long_words(\"Hey wollef sroirraw\")"
- "strings/reverse_long_words.py:5:40 sroirraw U long_words(\"Hey wollef sroirraw\")"
- "strings/wildcard_pattern_matching.py:37:24 dabc U >>> match_pattern(\"dabc\", \"*abc\")"