Image
EAN-130637390945064   EAN-13 barcode 0637390945064
UPC-A637390945064   UPC-A barcode 637390945064
Product NameMcKesson Lac-Hydrin Moisturizer for Dry Skin, 8 Ounce
LanguageEnglish
CategoryBath / Beauty / Hygiene
Amazon.comA Buy on Amazon ~ B00ZQDWNEM
Price New19.75 US Dollars    (curriencies)
Width2.76 inches    (convert)
Height1.57 inches    (convert)
Length7.68 inches    (convert)
Weight4.8 ounces    (convert)
BindingHealth and Beauty
Published07/25/2016
Features
  • Item#: 10631028605
  • Sold Per Piece
  • Actual product image may vary. See product details and features for specifications.
Long DescriptionMoisturizer Lac-Hydrin 8 oz. Bottle for Dry Scaly Skin
Similar Items8851142233809: Amlactin 12 % Moisturizing Lotion - 500 G / 20 Oz
7922470511745: Amlactin 12 % Moisturizing Lotion - 567 G / 20 Oz
0887718477733: AmLactin 12 % Moisturizing Lotion - 567 g / 20 oz
0788581491744: Kp Elements Keratosis Pilaris Body Scrub
0345802525260: Ammonium Lactate Lotion 12%C-P , Fliptop - (400grams/14oz)
0302450068228: AmLactin Alpha-Hydroxy Therapy Cerapeutic Restoring Body Lotion for Arms Legs Best Dermatologist Moisturizer for Dry Skin, 7.9 Ounce
0302450023159: Amlactin 12 % Moisturizing Lotion - 500 G / 17.6 Oz
0081642525267: Ammonium Lactate Lotion 12%c-P , Fliptop - (400grams/14oz)
Created04-19-2017 4:28:02am
Modified05-16-2017 9:55:39pm
MD51a68671a28de66c87a7b42ed382580ca
SHA2566ab2343ba54b27890a4728217a8296849f25d1682826e134b5f6d4e2abb3879c
Search Googleby EAN or by Title
Query Time0.0192020

Article of interest

Here we will demonstrate the most basic example of importing the CSV data files that we produce on this site into your MySQL database.

For information about various databases you can use and how to import CSV files into them, please view the overview article "Importing CSV data into your database".

For this example, we are going to import the product data CSV file out of the sample_ean_data.zip but this same process will work on the full data download file. We will also be executing the commands in the MySQL Workbench but you can also use the command line tool with the same commands if you like.

First, start by creating a blank table. Use the table layout described in the read_me file for the most up-to-date table layout. It is suggested that you not use any indexing at this point. You can add indexes later. It is most likely that you will have your own tables where you want to store your data so importing the CSV files can be done into temporary tables and then later copied over to your tables. Leaving off the indexes and constraints on these import tables reduces the risk of import errors. Here is an example:

create table ean_product
(
    EAN13             varchar(13),
    UPCA              varchar(12),
    UPCE              varchar(8),
    SKU               varchar(200),
    PriceNew          numeric(15,2),
    PriceUsed         numeric(15,2),
    PriceDate         date,
    company           varchar(13),
    product           varchar(100),
    description       varchar(100),
    category          int,
    url               varchar(500),
    created           datetime,
    modified          datetime
);

Next we perform the import using the LOAD DATA INFILE command. The path to the file depends on where you saved the data and which operating system you are on. For Windows users you might find your file on the C: drive and Linux users may find your date in your home (~) folder. This example shows a Linux import. Only the path would be different between the operating systems.

LOAD DATA LOCAL
    INFILE '~/sample_ean_data/sample_ean_product.csv' 
    INTO TABLE ean_product
    FIELDS TERMINATED BY ',' ENCLOSED BY '"' ESCAPED BY '\\'
    LINES TERMINATED BY '\r\n'
    IGNORE 1 LINES;

Finally, lets look at the data that we just imported.

SELECT * FROM EAN_PRODUCT;

You may have seen some warnings after the import command. If you are concerned about these warnings, examine the data. It could be that some data has grown beyond the size specified in the read_me file. If you are worried, make the fields larger and try the process again after deleting all of the data out of the table.

Close

Search

Close

Share

Close

Dialog