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QLBridge - Go SQL Runtime Engine

A SQL execution engine for embedded use as a library for SQL or SQL-Like functionality. Hackable, add datasources ("Storage" can be rest apis, or anything), and add functions. See usage in https://github.com/dataux/dataux a federated Sql Engine mysql-compatible with backends (Elasticsearch, Google-Datastore, Mongo, Cassandra, Files).

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QLBridge Features and Goals

Dialects

Example of Expression Evaluation Engine

These expressions can be used stand-alone embedded usage in your app. But, are the same expressions which might be columns, where, group-by clauses in SQL. see example

func main() {

	// Add a custom function to the VM to make available to expression language
	expr.FuncAdd("email_is_valid", &EmailIsValid{})

	// This is the evaluation context which will be the data-source
	// to be evaluated against the expressions.  There is a very simple
	// interface you can use to create your own.
	evalContext := datasource.NewContextSimpleNative(map[string]interface{}{
		"int5":     5,
		"str5":     "5",
		"created":  dateparse.MustParse("12/18/2015"),
		"bvalt":    true,
		"bvalf":    false,
		"user_id":  "abc",
		"urls":     []string{"http://google.com", "http://nytimes.com"},
		"hits":     map[string]int64{"google.com": 5, "bing.com": 1},
		"email":    "bob@bob.com",
		"emailbad": "bob",
		"mt": map[string]time.Time{
			"event0": dateparse.MustParse("12/18/2015"),
			"event1": dateparse.MustParse("12/22/2015"),
		},
	})

	// Example list of expressions
	exprs := []string{
		"int5 == 5",
		`6 > 5`,
		`6 > 5.5`,
		`(4 + 5) / 2`,
		`6 == (5 + 1)`,
		`2 * (3 + 5)`,
		`todate("12/12/2012")`,
		`created > "now-1M"`, // Date math
		`created > "now-10y"`,
		`user_id == "abc"`,
		`email_is_valid(email)`,
		`email_is_valid(emailbad)`,
		`email_is_valid("not_an_email")`,
		`EXISTS int5`,
		`!exists(user_id)`,
		`mt.event0 > now()`, // step into child of maps
		`["portland"] LIKE "*land"`,
		`email contains "bob"`,
		`email NOT contains "bob"`,
		`[1,2,3] contains int5`,
		`[1,2,3,5] NOT contains int5`,
		`urls contains "http://google.com"`,
		`split("chicago,portland",",") LIKE "*land"`,
		`10 BETWEEN 1 AND 50`,
		`15.5 BETWEEN 1 AND "55.5"`,
		`created BETWEEN "now-50w" AND "12/18/2020"`,
		`toint(not_a_field) NOT IN ("a","b" 4.5)`,
		`
		OR (
			email != "bob@bob.com"
			AND (
				NOT EXISTS not_a_field
				int5 == 5 
			)
		)`,
	}

	for _, expression := range exprs {
		// Same ast can be re-used safely concurrently
		exprAst := expr.MustParse(expression)
		// Evaluate AST in the vm
		val, _ := vm.Eval(evalContext, exprAst)
		v := val.Value()
		u.Debugf("Output: %-35v T:%-15T expr:  %s", v, v, expression)
	}
}

// Example of a custom Function, that we are making available in the Expression VM
type EmailIsValid struct{}

func (m *EmailIsValid) Validate(n *expr.FuncNode) (expr.EvaluatorFunc, error) {
	if len(n.Args) != 1 {
		return nil, fmt.Errorf("Expected 1 arg for EmailIsValid(arg) but got %s", n)
	}
	return func(ctx expr.EvalContext, args []value.Value) (value.Value, bool) {
		if args[0] == nil || args[0].Err() || args[0].Nil() {
			return value.BoolValueFalse, true
		}
		if _, err := mail.ParseAddress(args[0].ToString()); err == nil {
			return value.BoolValueTrue, true
		}

		return value.BoolValueFalse, true
	}, nil
}
func (m *EmailIsValid) Type() value.ValueType { return value.BoolType }


Example SQL Runtime for Reading a Csv via Stdio, File

See example in qlcsv folder for a CSV reader, parser, evaluation engine.


./qlcsv -sql 'select 
		user_id, email, item_count * 2, yy(reg_date) > 10 
	FROM stdin where email_is_valid(email);' < users.csv


func main() {

	if sqlText == "" {
		u.Errorf("You must provide a valid select query in argument:    --sql=\"select ...\"")
		return
	}

	// load all of our built-in functions
	builtins.LoadAllBuiltins()

	// Add a custom function to the VM to make available to SQL language
	expr.FuncAdd("email_is_valid", &EmailIsValid{})

	// We are registering the "csv" datasource, to show that
	// the backend/sources can be easily created/added.  This csv
	// reader is an example datasource that is very, very simple.
	exit := make(chan bool)
	src, _ := datasource.NewCsvSource("stdin", 0, bytes.NewReader([]byte("##")), exit)
	schema.RegisterSourceAsSchema("example_csv", src)

	db, err := sql.Open("qlbridge", "example_csv")
	if err != nil {
		panic(err.Error())
	}
	defer db.Close()

	rows, err := db.Query(sqlText)
	if err != nil {
		u.Errorf("could not execute query: %v", err)
		return
	}
	defer rows.Close()
	cols, _ := rows.Columns()

	// this is just stupid hijinx for getting pointers for unknown len columns
	readCols := make([]interface{}, len(cols))
	writeCols := make([]string, len(cols))
	for i := range writeCols {
		readCols[i] = &writeCols[i]
	}
	fmt.Printf("\n\nScanning through CSV: (%v)\n\n", strings.Join(cols, ","))
	for rows.Next() {
		rows.Scan(readCols...)
		fmt.Println(strings.Join(writeCols, ", "))
	}
	fmt.Println("")
}

// Example of a custom Function, that we are adding into the Expression VM
//
//         select
//              user_id AS theuserid, email, item_count * 2, reg_date
//         FROM stdin
//         WHERE email_is_valid(email)
type EmailIsValid struct{}

func (m *EmailIsValid) Validate(n *expr.FuncNode) (expr.EvaluatorFunc, error) {
	if len(n.Args) != 1 {
		return nil, fmt.Errorf("Expected 1 arg for EmailIsValid(arg) but got %s", n)
	}
	return func(ctx expr.EvalContext, args []value.Value) (value.Value, bool) {
		if args[0] == nil || args[0].Err() || args[0].Nil() {
			return value.BoolValueFalse, true
		}
		if _, err := mail.ParseAddress(args[0].ToString()); err == nil {
			return value.BoolValueTrue, true
		}

		return value.BoolValueFalse, true
	}, nil
}
func (m *EmailIsValid) Type() value.ValueType { return value.BoolType }

[x]QL languages are making a comeback. It is still an easy, approachable way of working with data. Also, we see more and more ql's that are xql'ish but un-apologetically non-standard. This matches our observation that data is stored in more and more formats in more tools, services that aren't traditional db's but querying that data should still be easy. Examples Influx, GitQL, Presto, Hive, CQL, yql, ql.io, etc

Projects that access non-sql data via [x]ql

Go Script/VM interpreters