2

I am trying to create a transition in my bar chart code, that would allow the user to click on a particular and be shown a different set of data related to that bar.

This is a sample dataset:

module_category,component_category,date_repair,actual,predicted
M1,P06,2009/01,39,63
M1,P06,2009/10,3,4
M1,P06,2009/11,4,3
M1,P06,2009/12,4,2
M1,P06,2009/02,29,45
M1,P06,2009/03,29,32
M1,P06,2009/04,10,22
M1,P06,2009/05,13,15
M1,P06,2009/06,9,16
M1,P06,2009/07,7,12

The full dataset can be found here: full dataset

So based on my current code I can create this bar chart:

bar chart

but now I want to add interactivity that will allow the user after clicking on the bar for e.g "M2", they graph then updates to show the components from the "component_category" related to that module with the respective "actual" and "predicted" values shown as bar charts also.

This is my current code:

var margin = {top: 20, right: 90, bottom: 30, left: 60},
    width = 980 - margin.left - margin.right,
    height = 500 - margin.top - margin.bottom;
var x0 = d3.scale.ordinal()
        .rangeRoundBands([0, width], .1);

var x1 = d3.scale.ordinal();

var y = d3.scale.linear()
    .range([height, 0]);

var color = d3.scale.category10();

var xAxis = d3.svg.axis()
    .scale(x0)
    .orient("bottom");

var yAxis = d3.svg.axis()
    .scale(y)
    .orient("left")
    .tickFormat(d3.format(".2s"));

var svg = d3.select("#maincontent").append("svg")
    .attr('id','chart')
    .attr('viewBox', '0 0 980 500')
    .attr('perserveAspectRatio', 'xMinYMid')
    .attr('width', width + margin.right + margin.left)
    .attr('height', height + margin.top + margin.bottom)
  .append("g")
    .attr("transform", "translate(" + margin.left + "," + margin.top + ")");

var tip=d3.tip()
            .attr("class","d3-tip")
            .offset([-10, 0])
            .html(function(d) { return "No. of repairs: " + d.value; });

d3.csv("data/Consolidated_result.csv", function(error, data) {
  if (error) throw error;

  data = d3.nest()
    .key(function(d) { return d.module_category;}).sortKeys(d3.ascending)
    .rollup(function(values){
        var counts = {}, keys = ['actual', 'predicted']
        keys.forEach(function(key){
            counts[key] = d3.sum(values, function(d){ return d[key]})
        })
        return counts
    })
    .entries(data);

    console.log(data);

  x0.domain(data.map(function(d) { return d.key; }));
  x1.domain(['actual','predicted']).rangeRoundBands([0, x0.rangeBand()]);
  // store all the values in an array
  var yval = [];
    data.forEach(function(d){
        yval.push(d.values.actual);
        yval.push(d.values.predicted);
    });
  y.domain([0, d3.max(yval)]);

  svg.call(tip);

  svg.append("g")
      .attr("class", "x axis")
      .attr("transform", "translate(0," + height + ")")
      .call(xAxis);

  svg.append("g")
      .attr("class", "y axis")
      .call(yAxis)
    .append("text")
      .attr("transform", "rotate(-90)")
      .attr("y", 0 - margin.left)
      .attr("x", 0 - (height / 2))
      .attr("dy", "1em")
      .style("text-anchor", "middle")
      .text("Number of Repairs");

  var module = svg.selectAll(".module")
      .data(data)
    .enter().append("g")
      .attr("class", "g")
      .attr("transform", function(d) { return "translate(" + x0(d.key) + ",0)"; });

  module.selectAll("rect")
    .data(function(d){
        var ary = [];
        ary.push({name:"actual", value:d.values.actual});
        ary.push({name:'predicted', value: d.values.predicted});
        return ary;
      })
    .enter().append("rect")
        .on('mouseover', tip.show)
        .on('mouseout', tip.hide)
      .on("click", function(d){
        d3.select("svg")
            .style("opacity",0)
            .remove()
            tip.hide()
            setTimeout(componentgroupedchart, 1000);
      })
        /*
      .on("click", function(d){
        d3.select(this)
            setTimeout(updateChart(name), 500);
        })*/
      .attr("width", x1.rangeBand())
      .attr("x", function(d) { return x1(d.name); })
      .attr("y", function(d) { return y(d.value); })
      .attr("height", function(d) { return height - y(d.value); })
      .style("fill", function(d) { return color(d.name); });

  var legend = svg.selectAll(".legend")
      .data(['actual','predicted'])
    .enter().append("g")
      .attr("class", "legend")
      .attr("transform", function(d, i) { return "translate(0," + i * 20 + ")"; });

  legend.append("rect")
      .attr("x", width - 18)
      .attr("width", 18)
      .attr("height", 18)
      .style("fill", function(d){
        return color(d)
      });

  legend.append("text")
      .attr("x", width - 24)
      .attr("y", 9)
      .attr("dy", ".35em")
      .style("text-anchor", "end")
      .text(function(d) { return d; });


});

What I want to implement will be to create a function where i update the chart and reload the data and nest it to this:

 data = d3.nest()
    .key(function(d) { return d.module_category;}).sortKeys(d3.ascending)
    .key(function(d) { return d.component_category;}).sortKeys(d3.ascending)
    .rollup(function(values){
    var counts = {}, keys = ['actual', 'predicted']
    keys.forEach(function(key){
       counts[key] = d3.sum(values, function(d){ return d[key]})
          })
       return counts
    })
    .entries(data);

This is so that I can access for each module:

  • the number of component related to that module &
  • the actual and predicted repair values

The resulting data then becomes:

var data = [{
   key: "M1"
   values: {
      key: "P06"
      values: {
        actual: 156 ,
        predicted: 228
      },
      key: "P09"
      values: {
        actual: 31,
        predicted: 20
      },
      key: "P12"
      values: {
        actual: 140,
        predicted: 176
      },
      key: "P15"
      values: {
        actual: 38,
        predicted: 40
      },
      key: "P16"
      values: {
        actual: 112,
        predicted:113
      },
      key: "P17"
      values: {
        actual: 20 ,
        predicted: 7
      },
      key: "P20"
      values: {
        actual: 98,
        predicted: 127
      },
      key: "P28"
      values: {
        actual: 143 ,
        predicted: 149
      },
      key: "P30"
      values: {
        actual: 16,
        predicted: 38
      }
  },
  key: "M5"
  values: {
      key: "P06"
      values: {
        actual: 61 ,
        predicted: 65
      },
      key: "P09"
      values: {
        actual: 83,
        predicted: 82
      },
      key: "P12"
      values: {
        actual: 45,
        predicted: 58
      },
      key: "P15"
      values: {
        actual: 26,
        predicted: 31
      },
      key: "P16"
      values: {
        actual: 152,
        predicted:174
      },
      key: "P21"
      values: {
        actual: 74 ,
        predicted: 120
      }
   }
}]

From this new data, the chart then transitions to a new bar chart display that shows the components and their repair values based on the selected module. I hope the question is much clearer now.

4
  • Your dataset is not clear you have a single record like this M1,P06,2009/01,39,63 so when you click M1 it will be showing P06? there is no M2 in the dataset.. Commented Nov 17, 2015 at 2:39
  • Hi sorry about that i've put the full dataset here : link
    – moodygeek
    Commented Nov 17, 2015 at 5:48
  • Your data for M1 has multiple values for component_category sometimes its p12 sometimes p16 and all of them have different actual,predicted values M1,P12,2009/01,35,40 M1,P12,2009/10,3,4 M1,P12,2009/11,2,3 M1,P16,2009/04,9,12 M1,P16,2009/05,10,9 so on drill down which values should be displayed ...can you clarify this on your question so that it can be helpful for people who may answer it. Commented Nov 17, 2015 at 6:19
  • okay, editing the question now
    – moodygeek
    Commented Nov 17, 2015 at 7:47

1 Answer 1

1

This can be achieved by making one function for making module graph, another for making the drill down category graph. Define the domain with in the functions, since the y axis domain x axis domain will change with with the module/category graph.

I have added comments in the code; in case you have any issues, feel free to ask.

  var margin = {
      top: 20,
      right: 90,
      bottom: 30,
      left: 60
    },
    width = 980 - margin.left - margin.right,
    height = 500 - margin.top - margin.bottom;
  var x0 = d3.scale.ordinal()
    .rangeRoundBands([0, width], .1);

  var x1 = d3.scale.ordinal();

  var y = d3.scale.linear()
    .range([height, 0]);

  var color = d3.scale.category10();

  var xAxis = d3.svg.axis()
    .scale(x0)
    .orient("bottom");

  var yAxis = d3.svg.axis()
    .scale(y)
    .orient("left")
    .tickFormat(d3.format(".2s"));

  var svg = d3.select("body").append("svg")
    .attr('width', width + margin.right + margin.left)
    .attr('height', height + margin.top + margin.bottom)
    .append("g")
    .attr("transform", "translate(" + margin.left + "," + margin.top + ")");

  var tip = d3.tip()
    .attr("class", "d3-tip")
    .offset([-10, 0])
    .html(function(d) {
      return "No. of repairs: " + d.value;
    });

  d3.csv("my.csv", function(error, data) {
    if (error) throw error;
    fullData = data;
    data = d3.nest()
      .key(function(d) {
        return d.module_category;
      })
      .rollup(function(values) {
        var counts = {},
          keys = ['actual', 'predicted']
        keys.forEach(function(key) {
          counts[key] = d3.sum(values, function(d) {
            return d[key];
          })
        })
        return counts
      })
      .entries(data);
      //make the x axis
    svg.append("g")
      .attr("class", "x axis")
      .attr("transform", "translate(0," + height + ")")
      .call(xAxis);
      //make the y axis
    svg.append("g")
      .attr("class", "y axis")
      .call(yAxis)
      .append("text")
      .attr("transform", "rotate(-90)")
      .attr("y", 0 - margin.left)
      .attr("x", 0 - (height / 2))
      .attr("dy", "1em")
      .style("text-anchor", "middle")
      .text("Number of Repairs");

    makeModuleGraph(data)

    var legend = svg.selectAll(".legend")
      .data(['actual', 'predicted'])
      .enter().append("g")
      .attr("class", "legend")
      .attr("transform", function(d, i) {
        return "translate(0," + i * 20 + ")";
      });

    legend.append("rect")
      .attr("x", width - 18)
      .attr("width", 18)
      .attr("height", 18)
      .style("fill", function(d) {
        return color(d);
      });

    legend.append("text")
      .attr("x", width - 24)
      .attr("y", 9)
      .attr("dy", ".35em")
      .style("text-anchor", "end")
      .text(function(d) {
        return d;
      });
  });

  function makeModuleGraph(data) {
    var yval = [];
    data.forEach(function(d) {
      yval.push(d.values.actual);
      yval.push(d.values.predicted);
    });
    x0.domain(data.map(function(d) {
      return d.key;
    }));
    x1.domain(['actual', 'predicted']).rangeRoundBands([0, x0.rangeBand()]);

    y.domain([0, d3.max(yval)]);

    svg.call(tip);

    svg.selectAll("g .x")
      .attr("class", "x axis")
      .attr("transform", "translate(0," + height + ")")
      .call(xAxis);

    svg.selectAll("g .y")
      .attr("class", "y axis")
      .call(yAxis);

    var module = svg.selectAll(".module")
      .data(data)
      .enter().append("g")
      .attr("class", "module")
      .attr("transform", function(d) {
        return "translate(" + x0(d.key) + ",0)";
      });

    module.selectAll("rect")
      .data(function(d) {
        var ary = [];
        ary.push({
          name: "actual",
          value: d.values.actual,
          key: d.key
        });
        ary.push({
          name: "predicted",
          value: d.values.predicted,
          key: d.key
        });
        return ary;
      })
      .enter().append("rect")
      .attr("width", x1.rangeBand())
      .attr("x", function(d) {
        return x1(d.name);
      })
      .attr("y", function(d) {
        return y(d.value);
      })
      .attr("height", function(d) {
        return height - y(d.value);
      })
      .style("fill", function(d) {
        return color(d.name);
      }).on("click", function(d) {
        makeComponentCategoryGraph(d);//make the graph for category
      });

  }

  function makeComponentCategoryGraph(d){
    var filtered = fullData.filter(function(k){ if(d.key == k.module_category){return true;}else {return false;}})
    var data = d3.nest()
      .key(function(d) {
        return d.component_category;
      })
      .rollup(function(values) {
        var counts = {},
          keys = ['actual', 'predicted']
        keys.forEach(function(key) {
          counts[key] = d3.sum(values, function(d) {
            return d[key];
          })
        })
        return counts
      })
      .entries(filtered);
          var yval = [];
    data.forEach(function(d) {
      yval.push(d.values.actual);
      yval.push(d.values.predicted);
    });
    x0.domain(data.map(function(d) {
      return d.key;
    }));
    x1.domain(['actual', 'predicted']).rangeRoundBands([0, x0.rangeBand()]);

    y.domain([0, d3.max(yval)]);

    svg.call(tip);

    svg.selectAll("g .x")
      .attr("class", "x axis")
      .attr("transform", "translate(0," + height + ")")
      .call(xAxis);

    svg.selectAll("g .y")
      .attr("class", "y axis")
      .call(yAxis);
    svg.selectAll(".module").remove();//remove alll the bar graphs
    var module = svg.selectAll(".module")
      .data(data)
      .enter().append("g")
      .attr("class", "module")
      .attr("transform", function(d) {
        return "translate(" + x0(d.key) + ",0)";
      });

    module.selectAll("rect")
      .data(function(d) {
        var ary = [];
        ary.push({
          name: "actual",
          value: d.values.actual,
          key: d.key
        });
        ary.push({
          name: "predicted",
          value: d.values.predicted,
          key: d.key
        });
        return ary;
      })
      .enter().append("rect")
      .attr("width", x1.rangeBand())
      .attr("x", function(d) {
        return x1(d.name);
      })
      .attr("y", function(d) {
        return y(d.value);
      })
      .attr("height", function(d) {
        return height - y(d.value);
      })
      .style("fill", function(d) {
        return color(d.name);
      })
  }

Working code here.

1
  • 1
    Yes this is what I am looking for :). Thanks a lot. Using the filter function to compare the module_category was what I was thinking of but couldn't visualize it. Thanks again
    – moodygeek
    Commented Nov 18, 2015 at 3:22

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