determining the bounds of a tuple returned from a database

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  • ronrsr

    determining the bounds of a tuple returned from a database

    here is my result.
    How do I determine the number of tuples in this array, returned from a
    mysql database?

    How do I determine the number of characters or entry in each tuple?

    thanks very much for your assistance,

    -rsr-


    (('Agricultural subsidies; Foreign aid',), ('Agriculture; Sustainable
    Agriculture - Support; Organic Agriculture; Pesticides, US, Childhood
    Development, Birth Defects; Toxic Chemicals',), ('Antibiotics,
    Animals',), ('Agricultural Subsidies, Global Trade',), ('Agricultural
    Subsidies',), ('Biodiversity' ,), ('Citizen Activism',), ('Community
    Gardens',), ('Cooperatives' ,), ('Dieting',), ('Agriculture, Cotton',),
    ('Agriculture, Global Trade',), ('Pesticides, Monsanto',),
    ('Agriculture, Seed',), ('Coffee, Hunger',), ('Pollution, Water,
    Feedlots',), ('Food Prices',), ('Agriculture, Workers',), ('Animal
    Feed, Corn, Pesticides',), ('Aquaculture', ), ('Chemical Warfare',),
    ('Compost',), ('Debt',), ('Consumerism', ), ('Fear',), ('Pesticides, US,
    Childhood Development, Birth Defects',), ('Corporate Reform,
    Personhood (Dem. Book)',), ('Corporate Reform, Personhood, Farming
    (Dem. Book)',), ('Crime Rates, Legislation, Education',), ('Debt,
    Credit Cards',), ('Democracy',), ('Population, World',), ('Income',),
    ('Democracy, Corporate Personhood, Porter Township (Dem. Book)',),
    ('Disaster Relief',), ('Dwellings, Slums',), ('Economics, Mexico',),
    ('Economy, Local',), ('Education, Protests',), ('Endangered Habitat,
    Rainforest',), ('Endangered Species',), ('Endangered Species,
    Extinction',), ('antibiotics, livestock',), ('Pesticides, Water',),
    ('Environment, Environmentalis t',), ('Food, Hunger, Agriculture, Aid,
    World, Development',), ('Agriculture, Cotton Trade',), ('Agriculture,
    Cotton, Africa',), ('Environment, Energy',), ('Fair Trade (Dem.
    Book)',), ('Farmland, Sprawl',), ('Fast Food, Globalization,
    Mapping',), ('depression, mental illness, mood disorders',), ('Economic
    Democracy, Corporate Personhood',), ('Brazil, citizen activism, hope,
    inspiration, labor issues',), ('citizen activism, advice, hope',),
    ('Pharmaceutica ls, Medicine, Drugs',), ('Community Investing',),
    ('Environment, Consumer Waste Reduction, Consumer Behavior and
    Taxes',), ('Hunger, US, Poverty',), ('FERTILITY, Women',),
    ('Corporatism, Environment',), ('Economic Democracy, Corporate
    Farming',), ('Economic Democracy, Inspiration',), ('FEAR
    (Fearlessness)' ,), ('Federal budget, military spending, foreign
    cultural exchange programs',), ('Fish Farming',), ('Fish population,
    commercial fishing industry',), ('GMO, BT Cotton',), ('Food borne
    Illness, Water',), ('Food Charity',), ('Food Charity, Urban Farming',),
    ('Food Consumption, Luxury',), ('Food Cost, international', ), ('Food
    Disposal, Waste',), ('Food stamps, eligibility for',), ('Food,
    expenditure on',), ('Foreign Aid',), ('Genetics, Food, Agriculture,
    International', ), ('Global Policy, Bush Administration' ,), ('Global
    Trade, food',), ('Global Trade, free trade, clothing',),
    ('Globalization ',), ('GMO, SACTO Protests',), ('GMO, Wheat, trade',),
    ('Happiness and income',), ('Health Care - Spending',), ('Hope',),
    ('Hope, inspirational quote',), ('Human Cloning',), ('Hunger',),
    ('Hunger, income',), ('IMF, Argentina',), ('IMF, failings',),
    ('Inequality',) , ('INEQUALITY, GLOBALIZATION, POVERTY',), ('Inequality,
    Globalization, Latin America',), ('Inspiration', ), ('Junk Food',),
    ('Junk Food, Soft Drinks',), ('Junk Food ,Children, Education,
    Media',), ('Junk Food, Education, Children, Nutrition',), ('Junk Food,
    Global, Coke',), ('Junk Food, McDonald\x92s', ), ('Junk Food,
    McDonald\x92s, Global',), ('Junk Food, Soft Drinks, Water',), ('Junk
    Food, Education, Nutrition, Childhood Illness',), ('Junk food,
    Nutrition, Schools',), ('Labor',), ('Labor Issues, Agriculture,
    Sustainable Agriculture Support',), ('Labor Issues, Employee
    Ownership',), ('Land Reform, Brazil, Infant mortality',),
    ('Livestock',), ('Meat',), ('Meat, Brazil, Soybeans, Deforestation', ),
    ('Meat, concentration', ), ('Meat, Recalls, Contamination', ), ('Meat,
    Recalls',), ('Media',), ('Microloans',) , ('Military Spending',),
    ('Nutrition Programs, School Meals, Snapple',), ('Nutrition,
    Finland',), ('Obesity',), ('Obesity, Childhood',), ('Obesity,
    Africa',), ('Organic Food',), ('Obesity, Global',), ('Obesity, related
    illnesses',), ('Obesity, related illnesses, children',), ('Oil',),
    ('Organic Agriculture',), ('Organic Agriculture, Growth',), ('Organic
    Agriculture, Nutrition',), ('Organic Agriculture, Productivity',) ,
    ('Organic food prices',), ('Community',), ('Corporate Concentration', ),
    ('Community Gardens, Urban Gardens',), ('Pollution, Air, CO2
    emissions',), ('Population, Water',), ('Poverty, Aid',), ('Poverty,
    World Bank, Hunger',), ('Organic Produce',), ('Organic Produce,
    Farmer\x92s Markets, CSA Community Initiatives (Dem. Book)',),
    ('Pakistan, Education, Poverty, Terrorism',), ('Pesticides',) ,
    ('Pollution, US',), ('Population, Women',), ('Poverty, Labor Issues',),
    ('t2',), ('Agriculture, Subsidies, Farming, Ranching, Government,
    Livestock, Cattle',), ('School, Farmers\x92 Fresh Produce Food',),
    ('School, Fast Food, Lunch Programs',), ('School, Fast Food, Lunch
    Programs, Harms',), ('Citizens Groups',), ('Public Health, Bacteria',),
    ('Violence, Impotence',), ('Private Food Aid, Food Stamps',), ('Prison
    Rates, Race',), ('Produce, Nutritional content of produce, Historical
    Perspective',), ('Public Opinion',), ('Slavery',), ('Solar, Renewable
    Energy',), ('Suicide',), ('Sustainable agriculture, Moringa tree',),
    ('Sweatshop Labor',), ('Tax Cuts, George W. Bush',), ('Economic
    Democracy (Dem. Book)',), ('Tobacco',), ('Toxic Chemicals',),
    ('Trade',), ('Trade, Agricultural Raw materials',), ('Trade, Coffee',),
    ('Trade, Cotton',), ('Trade, NAFTA, Mexico',), ('Vegetarianism ',),
    ('Veterans\x92 Benefits',), ('Violence',), ('Violence, Media,
    Children',), ('Water',), ('Water, Privatization', ), ('Welfare
    Reform',), ('Wind, Renewable Energy',), ('Words',), ('World
    Population',), ('World Bank',), ('Grassroots, Community, Living Wage,
    Poverty',), ('Subsidies',), ('Protest, Action',), ('Nuclear Power
    Plants, Emissions',), ('Media, Fear, Religion, George W. Bush',),
    ('Consciousness , Change',), ('Peace, Security, Oil',), ('Globalization ,
    Inequality, Commodity prices',), ('Water, Corporate',), ('Consumerism,
    Developing Nations',), ('Nuclear Power, Wind Power',),
    ('Sustainabilit y, Hope',), ('Ozone, CFCs, Chlorine, Atmosphere',),
    ('Hydrogen, Emissions, Ozone',), ('Water, Pesticides',), ('Iraq,
    Military, Health',), ('Toxic Waste Reduction, Toxic Waste Disposal,
    Environmental Regulation, Recycling Electronics',), ('Shareholder
    Advocacy, Social Responsibility, Community Investing (Dem. Book)',),
    ('Fair Trade',), ('Genetically Modified Food, Africa, USAID, ISAAA',),
    ('Sustainabilit y, Progress',), ('Sustainabilit y, Human Rights,
    Globalization, Corporatization ',), ('Agricultural Subsidies,
    Agricultural Policy',), ('Agricultural Subsidies, Farmers',), ('Cotton,
    Rice',), ('Agricultural Subsidies, Farmers, Livestock',),
    ('Agricultural Subsidies, Prices',), ('Food scarcity, Hunger, Urban
    Agriculture',), ('GMO farming, Toxic chemicals',), ('Hunger,
    Children',), ('Hunger, Food Insecurity',), ('Inspiration, Corporatism,
    War',), ('Inspiration, Economic Growth',), ('Land Vacancies, US Land
    Reform',), ('Local agriculture, Local produce, Nutritional content of
    local produce',), ('Local produce, Urban agriculture',), ('Pakistan,
    Religion, Education',), ('Pharmaceutica ls',), ('Privatization ',),
    ('Public panic, Altruism',), ('QA rewrite: citizen activism,
    corporatism-environment, hope, inspiration',), ('Wal-Mart, Food
    Stamps',), ('Socially Responsible Investment, Banking and Environmental
    Initiatives',), ('Terrorism, Suicide Attacks',), ('Agriculture,
    Corporate v. Family Farming',), ('Depression, Health',), ('Depression,
    Health, Employment, Work, Employee',), ('Self-Interest, Vote,
    Altruism',), ('Animal Feed',), ('Corporate Reform (Dem. Book)',),
    ('Economic Growth',), ('Corporate History, Globalization', ),
    ('Agriculture', ), ('Environment, Public Opinion (Dem. Book)',),
    ('Illiteracy, poverty',), ('Military, Arms Sales',), ('Agriculture;
    Agricultural imports; Global trade',), ('Africa; Foreign aid; Third
    World debt; Loan forgiveness; Jubilee',), ('Foreign aid; Military aid;
    Development aid; Humanitarian aid',), ('Foreign aid; Development
    assistance',), ('Agricultural Subsidies; Foreign aid; Cotton subsidies;
    Africa',))
    >>>
  • ronrsr

    #2
    Re: determining the bounds of a tuple returned from a database

    it looks like the len() function is the one I want.

    for: len(result) - i get 248,

    but for len(result[0]) or len(result[1]) i always get 0.


    ronrsr wrote:
    here is my result.
    How do I determine the number of tuples in this array, returned from a
    mysql database?
    >
    How do I determine the number of characters or entry in each tuple?
    >
    thanks very much for your assistance,
    >
    -rsr-
    >
    >
    (('Agricultural subsidies; Foreign aid',), ('Agriculture; Sustainable
    Agriculture - Support; Organic Agriculture; Pesticides, US, Childhood
    Development, Birth Defects; Toxic Chemicals',), ('Antibiotics,
    Animals',), ('Agricultural Subsidies, Global Trade',), ('Agricultural
    Subsidies',), ('Biodiversity' ,), ('Citizen Activism',), ('Community
    Gardens',), ('Cooperatives' ,), ('Dieting',), ('Agriculture, Cotton',),
    ('Agriculture, Global Trade',), ('Pesticides, Monsanto',),
    ('Agriculture, Seed',), ('Coffee, Hunger',), ('Pollution, Water,
    Feedlots',), ('Food Prices',), ('Agriculture, Workers',), ('Animal
    Feed, Corn, Pesticides',), ('Aquaculture', ), ('Chemical Warfare',),
    ('Compost',), ('Debt',), ('Consumerism', ), ('Fear',), ('Pesticides, US,
    Childhood Development, Birth Defects',), ('Corporate Reform,
    Personhood (Dem. Book)',), ('Corporate Reform, Personhood, Farming
    (Dem. Book)',), ('Crime Rates, Legislation, Education',), ('Debt,
    Credit Cards',), ('Democracy',), ('Population, World',), ('Income',),
    ('Democracy, Corporate Personhood, Porter Township (Dem. Book)',),
    ('Disaster Relief',), ('Dwellings, Slums',), ('Economics, Mexico',),
    ('Economy, Local',), ('Education, Protests',), ('Endangered Habitat,
    Rainforest',), ('Endangered Species',), ('Endangered Species,
    Extinction',), ('antibiotics, livestock',), ('Pesticides, Water',),
    ('Environment, Environmentalis t',), ('Food, Hunger, Agriculture, Aid,
    World, Development',), ('Agriculture, Cotton Trade',), ('Agriculture,
    Cotton, Africa',), ('Environment, Energy',), ('Fair Trade (Dem.
    Book)',), ('Farmland, Sprawl',), ('Fast Food, Globalization,
    Mapping',), ('depression, mental illness, mood disorders',), ('Economic
    Democracy, Corporate Personhood',), ('Brazil, citizen activism, hope,
    inspiration, labor issues',), ('citizen activism, advice, hope',),
    ('Pharmaceutica ls, Medicine, Drugs',), ('Community Investing',),
    ('Environment, Consumer Waste Reduction, Consumer Behavior and
    Taxes',), ('Hunger, US, Poverty',), ('FERTILITY, Women',),
    ('Corporatism, Environment',), ('Economic Democracy, Corporate
    Farming',), ('Economic Democracy, Inspiration',), ('FEAR
    (Fearlessness)' ,), ('Federal budget, military spending, foreign
    cultural exchange programs',), ('Fish Farming',), ('Fish population,
    commercial fishing industry',), ('GMO, BT Cotton',), ('Food borne
    Illness, Water',), ('Food Charity',), ('Food Charity, Urban Farming',),
    ('Food Consumption, Luxury',), ('Food Cost, international', ), ('Food
    Disposal, Waste',), ('Food stamps, eligibility for',), ('Food,
    expenditure on',), ('Foreign Aid',), ('Genetics, Food, Agriculture,
    International', ), ('Global Policy, Bush Administration' ,), ('Global
    Trade, food',), ('Global Trade, free trade, clothing',),
    ('Globalization ',), ('GMO, SACTO Protests',), ('GMO, Wheat, trade',),
    ('Happiness and income',), ('Health Care - Spending',), ('Hope',),
    ('Hope, inspirational quote',), ('Human Cloning',), ('Hunger',),
    ('Hunger, income',), ('IMF, Argentina',), ('IMF, failings',),
    ('Inequality',) , ('INEQUALITY, GLOBALIZATION, POVERTY',), ('Inequality,
    Globalization, Latin America',), ('Inspiration', ), ('Junk Food',),
    ('Junk Food, Soft Drinks',), ('Junk Food ,Children, Education,
    Media',), ('Junk Food, Education, Children, Nutrition',), ('Junk Food,
    Global, Coke',), ('Junk Food, McDonald\x92s', ), ('Junk Food,
    McDonald\x92s, Global',), ('Junk Food, Soft Drinks, Water',), ('Junk
    Food, Education, Nutrition, Childhood Illness',), ('Junk food,
    Nutrition, Schools',), ('Labor',), ('Labor Issues, Agriculture,
    Sustainable Agriculture Support',), ('Labor Issues, Employee
    Ownership',), ('Land Reform, Brazil, Infant mortality',),
    ('Livestock',), ('Meat',), ('Meat, Brazil, Soybeans, Deforestation', ),
    ('Meat, concentration', ), ('Meat, Recalls, Contamination', ), ('Meat,
    Recalls',), ('Media',), ('Microloans',) , ('Military Spending',),
    ('Nutrition Programs, School Meals, Snapple',), ('Nutrition,
    Finland',), ('Obesity',), ('Obesity, Childhood',), ('Obesity,
    Africa',), ('Organic Food',), ('Obesity, Global',), ('Obesity, related
    illnesses',), ('Obesity, related illnesses, children',), ('Oil',),
    ('Organic Agriculture',), ('Organic Agriculture, Growth',), ('Organic
    Agriculture, Nutrition',), ('Organic Agriculture, Productivity',) ,
    ('Organic food prices',), ('Community',), ('Corporate Concentration', ),
    ('Community Gardens, Urban Gardens',), ('Pollution, Air, CO2
    emissions',), ('Population, Water',), ('Poverty, Aid',), ('Poverty,
    World Bank, Hunger',), ('Organic Produce',), ('Organic Produce,
    Farmer\x92s Markets, CSA Community Initiatives (Dem. Book)',),
    ('Pakistan, Education, Poverty, Terrorism',), ('Pesticides',) ,
    ('Pollution, US',), ('Population, Women',), ('Poverty, Labor Issues',),
    ('t2',), ('Agriculture, Subsidies, Farming, Ranching, Government,
    Livestock, Cattle',), ('School, Farmers\x92 Fresh Produce Food',),
    ('School, Fast Food, Lunch Programs',), ('School, Fast Food, Lunch
    Programs, Harms',), ('Citizens Groups',), ('Public Health, Bacteria',),
    ('Violence, Impotence',), ('Private Food Aid, Food Stamps',), ('Prison
    Rates, Race',), ('Produce, Nutritional content of produce, Historical
    Perspective',), ('Public Opinion',), ('Slavery',), ('Solar, Renewable
    Energy',), ('Suicide',), ('Sustainable agriculture, Moringa tree',),
    ('Sweatshop Labor',), ('Tax Cuts, George W. Bush',), ('Economic
    Democracy (Dem. Book)',), ('Tobacco',), ('Toxic Chemicals',),
    ('Trade',), ('Trade, Agricultural Raw materials',), ('Trade, Coffee',),
    ('Trade, Cotton',), ('Trade, NAFTA, Mexico',), ('Vegetarianism ',),
    ('Veterans\x92 Benefits',), ('Violence',), ('Violence, Media,
    Children',), ('Water',), ('Water, Privatization', ), ('Welfare
    Reform',), ('Wind, Renewable Energy',), ('Words',), ('World
    Population',), ('World Bank',), ('Grassroots, Community, Living Wage,
    Poverty',), ('Subsidies',), ('Protest, Action',), ('Nuclear Power
    Plants, Emissions',), ('Media, Fear, Religion, George W. Bush',),
    ('Consciousness , Change',), ('Peace, Security, Oil',), ('Globalization ,
    Inequality, Commodity prices',), ('Water, Corporate',), ('Consumerism,
    Developing Nations',), ('Nuclear Power, Wind Power',),
    ('Sustainabilit y, Hope',), ('Ozone, CFCs, Chlorine, Atmosphere',),
    ('Hydrogen, Emissions, Ozone',), ('Water, Pesticides',), ('Iraq,
    Military, Health',), ('Toxic Waste Reduction, Toxic Waste Disposal,
    Environmental Regulation, Recycling Electronics',), ('Shareholder
    Advocacy, Social Responsibility, Community Investing (Dem. Book)',),
    ('Fair Trade',), ('Genetically Modified Food, Africa, USAID, ISAAA',),
    ('Sustainabilit y, Progress',), ('Sustainabilit y, Human Rights,
    Globalization, Corporatization ',), ('Agricultural Subsidies,
    Agricultural Policy',), ('Agricultural Subsidies, Farmers',), ('Cotton,
    Rice',), ('Agricultural Subsidies, Farmers, Livestock',),
    ('Agricultural Subsidies, Prices',), ('Food scarcity, Hunger, Urban
    Agriculture',), ('GMO farming, Toxic chemicals',), ('Hunger,
    Children',), ('Hunger, Food Insecurity',), ('Inspiration, Corporatism,
    War',), ('Inspiration, Economic Growth',), ('Land Vacancies, US Land
    Reform',), ('Local agriculture, Local produce, Nutritional content of
    local produce',), ('Local produce, Urban agriculture',), ('Pakistan,
    Religion, Education',), ('Pharmaceutica ls',), ('Privatization ',),
    ('Public panic, Altruism',), ('QA rewrite: citizen activism,
    corporatism-environment, hope, inspiration',), ('Wal-Mart, Food
    Stamps',), ('Socially Responsible Investment, Banking and Environmental
    Initiatives',), ('Terrorism, Suicide Attacks',), ('Agriculture,
    Corporate v. Family Farming',), ('Depression, Health',), ('Depression,
    Health, Employment, Work, Employee',), ('Self-Interest, Vote,
    Altruism',), ('Animal Feed',), ('Corporate Reform (Dem. Book)',),
    ('Economic Growth',), ('Corporate History, Globalization', ),
    ('Agriculture', ), ('Environment, Public Opinion (Dem. Book)',),
    ('Illiteracy, poverty',), ('Military, Arms Sales',), ('Agriculture;
    Agricultural imports; Global trade',), ('Africa; Foreign aid; Third
    World debt; Loan forgiveness; Jubilee',), ('Foreign aid; Military aid;
    Development aid; Humanitarian aid',), ('Foreign aid; Development
    assistance',), ('Agricultural Subsidies; Foreign aid; Cotton subsidies;
    Africa',))
    >>

    Comment

    • Fredrik Lundh

      #3
      Re: determining the bounds of a tuple returned from a database

      ronrsr wrote:
      it looks like the len() function is the one I want.
      >
      for: len(result) - i get 248,
      >
      but for len(result[0]) or len(result[1]) i always get 0.
      that's a bit surprising, because both items are tuples that contain
      exactly one item:
      >(('Agricultura l subsidies; Foreign aid',), ('Agriculture; Sustainable
      >Agriculture - Support; Organic Agriculture; Pesticides, US, Childhood
      >Development, Birth Defects; Toxic Chemicals',),
      </F>

      Comment

      • ronrsr

        #4
        Re: determining the bounds of a tuple returned from a database

        very sorry, that was my error - len(result[0]) and len(result[1]) both
        return 1 --

        i think I'm misunderstandin g what len() does - to me they appear to
        have 2 or 3 elements, or at least be composed of a string of some
        length.

        I guess len() isn't the function i'm looking for then. How do I tell
        how many strings, or how many bytes are in each dimension? so that I
        can iterate through them.

        Each entry in that list is a keyword - Alternately, is there any fast
        way to parse that into a sorted list of distinct keywords.

        very sorry for the error.

        bests,

        -rsr-

        Fredrik Lundh wrote:
        ronrsr wrote:
        >
        it looks like the len() function is the one I want.

        for: len(result) - i get 248,

        but for len(result[0]) or len(result[1]) i always get 0.
        >
        that's a bit surprising, because both items are tuples that contain
        exactly one item:
        >
        (('Agricultural subsidies; Foreign aid',), ('Agriculture; Sustainable
        Agriculture - Support; Organic Agriculture; Pesticides, US, Childhood
        Development, Birth Defects; Toxic Chemicals',),
        >
        </F>

        Comment

        • John Machin

          #5
          Re: determining the bounds of a tuple returned from a database

          ronrsr top-posted [uncorrected]:
          very sorry, that was my error - len(result[0]) and len(result[1]) both
          return 1 --
          >
          i think I'm misunderstandin g what len() does - to me they appear to
          have 2 or 3 elements, or at least be composed of a string of some
          length.
          len(result) is 248 because you have retrieved 248 rows from the
          database.

          len(result[0]), len(result[1]), etc etc are all each 1 because you have
          selected only one column from each row -- I'm guessing here because you
          have not supplied the SQL query [that would have been much better than
          the last 200 rows of result!]

          To get the one column out, you need to select the first (and only!)
          column from each row.

          result[0][0]
          result[1][0]
          etc
          >
          I guess len() isn't the function i'm looking for then. How do I tell
          how many strings, or how many bytes are in each dimension? so that I
          can iterate through them.
          len() *is* the function that you are looking for. The problem that
          needs to be solved before we can help you is that we don't understand
          your data. Stripped of all the Python "punctuatio n", what you would see
          if you used some user-interface tool [I'm not familiar with mysql] to
          "print" each row to your screen *might* be something like this [it
          would number lines from 1 but we'll do it from 0 to avoid doubling the
          confusion]

          0: Agricultural subsidies; Foreign aid
          1: Agriculture; Sustainable Agriculture - Support; Organic Agriculture;
          Pesticides, US, Childhood Development, Birth Defects; Toxic Chemicals
          2: Antibiotics, Animals
          3: Agricultural Subsidies, Global Trade
          4: Agricultural Subsidies
          5: Biodiversity
          etc

          Looks like each line contains one or more topics separated by
          semicolons. E.g. in line 0,
          "Agricultur al subsidies" and "Foreign aid" are 2 topics. Line 1
          contains 5 topics.

          Note carefully:
          [1] Line 4 has 1 topic; it is essentially the *same* topic as the first
          topic in line 0 but note "S" versus "s"
          [2] Either Line 3 has 1 topic which is a *subtopic* of "Agricultur al
          Subsidies" *OR* the comma should be a semi-colon [so that it would have
          2 topics, very similar to line 0] -- in any case, this is a
          complication ....
          >
          Each entry in that list is a keyword
          What do you mean by "entry" and "list" and "keyword"? Give examples.

          - Alternately, is there any fast
          way to parse that into a sorted list of distinct keywords.
          Quite possibly, if only you could say what you mean by "keywords".
          Please give a *small* example, like what you would expect from the
          first 6 lines as quoted above.

          Multi-topic lines can be split up by using line.split(";") -- but
          understanding (at least partial) should come before coding, IMHO.

          HTH,
          John
          Fredrik Lundh wrote:
          ronrsr wrote:
          it looks like the len() function is the one I want.
          >
          for: len(result) - i get 248,
          >
          but for len(result[0]) or len(result[1]) i always get 0.
          that's a bit surprising, because both items are tuples that contain
          exactly one item:

          Comment

          • Fredrik Lundh

            #6
            Re: determining the bounds of a tuple returned from a database

            ronrsr wrote:
            very sorry, that was my error - len(result[0]) and len(result[1]) both
            return 1 --
            >
            i think I'm misunderstandin g what len() does - to me they appear to
            have 2 or 3 elements, or at least be composed of a string of some
            length.
            from python's perspective, the data structure you're looking at looks
            like

            tuple of
            tuple of
            one string
            tuple of
            one string
            tuple of
            one string
            etc

            so len(result) is the number of tuples, and len(result[index]) is the
            number of strings in the inner tuples (=1). to get at an individual
            string, do

            s = result[index][0]

            to look inside the string, you need to apply the appropriate string
            operations to extract the data, or split it up in some suitable way.
            there's no way Python can figure out how a string appears to you; from
            Python's perspective, it's just a bunch of characters.

            </F>

            Comment

            • mensanator@aol.com

              #7
              Re: determining the bounds of a tuple returned from a database


              ronrsr wrote:
              very sorry, that was my error - len(result[0]) and len(result[1]) both
              return 1 --
              >
              i think I'm misunderstandin g what len() does - to me they appear to
              have 2 or 3 elements, or at least be composed of a string of some
              length.
              One string composed of multiple data elements means
              the problem is in your database design, not in your Python code.
              >
              I guess len() isn't the function i'm looking for then. How do I tell
              how many strings, or how many bytes are in each dimension?
              You have to split the strings based on some delimiter, but your
              delimiters seem inconsistent. Unless the different delimiters actually
              have different meanings which, again, implies bad database design.
              so that I
              can iterate through them.
              >
              Each entry in that list is a keyword - Alternately, is there any fast
              way to parse that into a sorted list of distinct keywords.
              That could easily be done in the database itself, but only if it is
              designed properly.
              >
              very sorry for the error.
              >
              bests,
              >
              -rsr-
              >
              Fredrik Lundh wrote:
              ronrsr wrote:
              it looks like the len() function is the one I want.
              >
              for: len(result) - i get 248,
              >
              but for len(result[0]) or len(result[1]) i always get 0.
              that's a bit surprising, because both items are tuples that contain
              exactly one item:
              >(('Agricultura l subsidies; Foreign aid',), ('Agriculture; Sustainable
              >Agriculture - Support; Organic Agriculture; Pesticides, US, Childhood
              >Development, Birth Defects; Toxic Chemicals',),
              </F>

              Comment

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